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Photonic nanoarchitectonics with stimuli-responsive 2D materials

Pirmin Ganter a and Bettina V. Lotsch *abc
aMax Planck Institute for Solid State Research, Heisenbergstrasse 1, 70569 Stuttgart, Germany. E-mail: b.lotsch@fkf.mpg.de
bDepartment of Chemistry, Ludwig-Maximilians-Universität (LMU) München, Butenandtstrasse 5-13, 81377 Munich, Germany
cNanosystems Initiative Munich (NIM) and Center for Nanoscience, Schellingstraße 4, 80799 Munich, Germany

Received 15th December 2018 , Accepted 6th March 2019

First published on 11th March 2019


Abstract

The ability to produce structural color from inherently colorless materials, similar to that in butterfly wings and beetle shells, has attracted considerable research interest over the last three decades. Despite their extraordinary properties and performances, the field of structural colors based on inherently functional 2D materials only took off recently. In this minireview, we highlight the diversity of 2D materials utilized for achieving structural coloration in different architectures. We summarize the large tunability of photonic architectures based on 2D materials and emphasize their extraordinary dynamic response induced by external stimuli. Subsequently, recent strategies to tailor their properties with molecular and structural approaches are discussed. Finally, we point out promising future directions in this emerging field.


image file: c8me00112j-p1.tif

Pirmin Ganter

Pirmin Ganter obtained his PhD degree under the supervision of Bettina V. Lotsch from the University of Munich (LMU Munich) in 2018. He is currently working as a scientist in the Lotsch group at the Max Planck Institute for Solid State Research. His research interests include the synthesis, assembly and functionalization of 2D materials for various applications.

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Bettina V. Lotsch

Bettina V. Lotsch received her Ph.D. from LMU Munich in 2006. After a postdoctoral stay at the University of Toronto she was appointed associate professor at LMU Munich. Since 2017 she has been Director at the Max Planck Institute for Solid State Research in Stuttgart. Her research interests are at the interface between solid-state chemistry, nanochemistry, and molecular chemistry and include porous frameworks and 2D materials for sensing and energy conversion. Bettina was named Fellow of the Royal Society of Chemistry in 2014 and is recipient of an ERC Starting grant (2014) and the EU-40 Materials Prize 2017 from the European Materials Research Society (EMRS).



Design, System, Application

As 2D materials are coming of age, their richness in composition, structure and properties offer a unique platform for the design of tailor-made nanoscale building blocks for functional devices. Combining the chemical scope, diverse optical properties and stimuli-responsive nature of 2D materials and their ensembles with the recent advancement in liquid-assisted assembly strategies, 2D materials have emerged as versatile building blocks in thin film-based photonic architectures, including Fabry–Pérot interference filters and 1D photonic crystals. To impart such architectures with maximum functionality, design strategies range from molecular level approaches such as ion exchange and intercalation, to morphology engineering such as porosity tuning. The integration of 2D materials into photonic architectures has opened up new horizons in the realization of smart devices, ranging from vapor and pressure sensors to functional surfaces allowing for the touchless tracking of finger motions. On a more fundamental level, thin films exhibiting tunable structural color allow for the observation of otherwise optically silent processes with the naked eye, such as intercalation into 2D materials. Cast into photonic architectures, the unique versatility of 2D materials and their molecularly engineered counterparts can be harvested to push the limits of label-free sensing, anticounterfeiting, radiation shielding, photovoltaics, display technology, and beyond.

Structural color – overview and concepts

Iridescent soap bubbles, opals, beetle shells and butterfly wings are naturally occurring nanostructures that fascinate due to their ability of producing a wide range of colors from inherently colorless materials (Fig. 1a–c).1–4 Over the last three decades, substantial progress has been achieved in creating such structural colors in the laboratory.5–15 As opposed to the colors of dyes and pigments, which are based on the absorption of light, structural color arises due to diffraction, refraction and reflection of light by submicron scale structures.1,7,8,10 The various artificial architectures that produce structural colors in the laboratory range from simple thin films to more complex 1D, 2D and 3D periodic assemblies of dielectric materials, termed photonic crystals (PC) Fig. 1d.8,10 A major driving force accelerating the fabrication of complex photonic architectures has been the rapid development of assembly strategies for nanomaterials that exploit and maximize novel functionalities originating from mutual interactions between the individual building blocks.16–19 Such emerging functionalities in hierarchically organized nanostructures can be considered a hallmark of the design principle known as nanoarchitectonics.16,17
image file: c8me00112j-f1.tif
Fig. 1 Structural color in nature and everyday life serve as inspiration for artificial photonic architectures: a) interference color of a soap bubble, b) Tmesisternus isabellae beetle shell showing structural color,2 c) Morpho butterfly wing.1 d) Common photonic architectures realized in the laboratory to achieve structural coloration.21 From left to right: thin film on silicon substrate, 1D PC, 2D PC and 3D PC. e) Visualization of Bragg–Snell law. Panel a) reprinted and adapted with permission from Wikimedia Commons, Copyright 2007 Brocken Inaglory. Panel b) reprinted with permission from ref. 2, Copyright 2017 Springer Nature. Panel c) Reprinted with permission from ref. 1, copyright 2018 American Chemical Society.

The origin of the displayed structural color of the simplest photonic architectures like thin films and one-dimensional photonic crystals (1D PCs), can be derived from the condition for constructive interference by a combination of the Bragg and Snell laws (see Fig. 1e):11,15,20

 
image file: c8me00112j-t1.tif(1)

Hereby, m is an integer value, λ is the wavelength for which constructive interference occurs, neff is the effective refractive index (RI) of the layer (in Fabry–Pérot sensors) or bilayer (in case of a 1D PC; neff = (n1l1 + n2l2)/(l1 + l2), with l1 + l2 = l),12 and θ the illumination angle. Under normal incidence, this equation transforms to:

 
= 2neffl(2)
for a thin film,22–24 and
 
= 2 (n1l1 + n2l2)(3)
for a 1D PC.9,12 For the latter, l1 and l2 are the layer thicknesses and n1 and n2 are the RIs of the individual layers contributing to the bilayer. The condition of constructive interference leading to maximum reflectance in a 1D PC is equivalent to the photonic stop band or photonic band gap. From eqn (2) and (3), one can see that by changing the material thickness or the RI, a color change can be achieved. Hence, stimuli which induce a change in either ni, or li, or both, can be detected (Fig. 2).9,10,12,14,25


image file: c8me00112j-f2.tif
Fig. 2 Stimulus sensing with a photonic thin film. A change caused by a stimulus in the refractive index a), or layer thickness b), or both c), can result in a change of the displayed structural color d). In the case of c), which is the default situation in nanosheet-based thin films, the change in the layer thickness is much more pronounced compared to the decrease of the refractive index. Therefore, an overall redshift in the reflectance spectrum is observed, d).

The first generation of stimuli-responsive 1D PC was based on changes in the RI of porous nanoparticles.9,26–29 Although some progress regarding selectivity could be achieved through functionalization27,30,31 and use of inherently functional MOFs32,33 or zeolite NPs,34 a major drawback remained: the intrinsically limited sensitivity due to small RI changes in the layers (typical solids and liquids have refractive indices between 1 and 3, with most solvents having RIs around 1.3–1.5). This low sensitivity could be circumvented in the second generation of 1D PCs by utilizing swellable polymers as their active component.35–39 The polymer-based 1D PC show higher sensitivities as they are operated on layer thickness change; however, they exhibit rather long response times on the order of several seconds up to minutes and, being soft materials, have intrinsic stability issues, for example, to mechanical deformation, temperature and chemicals. Therefore, the search for stable stimuli responsive materials for 1D PCs, operating based on fast and reversible layer thickness changes, led to the third generation of 1D PCs based on inorganic 2D materials (nanosheets).40,41 The advantages for creating structural colors based on 2D materials include their tunable 2D morphology, inherent responsiveness to stimuli by swelling, diversity in composition and structure, and existence of methods to tailor and fine-tune their properties.42–49 However, they remained almost unexplored until recent times due to the limited availability of nanosheets and efficient processing techniques for 2D materials, despite early efforts with 2D materials in thin film interference sensors.50 With the recent advances in nanosheet processing protocols and tailoring methods,43,51–54 2D materials made their way into the field of structural colors.41,55–59

Although there are excellent recent reviews on structural colors and their applications,7,8,10–12 2D materials appear only as minor points in these reviews as most of the research in this field is still carried out with nanoparticles and polymers despite considerable drawbacks compared to 2D materials.

With this review, we thus shine a light on photonic nanostructures based on 2D materials in order to reveal their potential as colorimetric sensors. We first give an overview of the tunable structural colors realized with a large variety of 2D materials. As nearly all of the 2D material based structures are able to change their thickness by swelling, we highlight recent examples of stimuli responsive behaviour enabling the tracking of otherwise optically silent processes. This is followed by strategies to tailor their swelling behaviour leading to rationally designed sensors and micron scale patterns of nanosheets. In the last section, promising future directions are presented for structural colors based on such 2D materials. With this review we thus illustrate the enormous potential of 2D materials as tailorable building blocks for nanostructured color sensors and beyond.

2D materials for structural coloration

Large quantities of 2D materials can be derived from solvent-based delamination of layered materials,43,60,61 of which the most efficient routes are liquid-phase, redox-mediated and ion exchange exfoliation.42–44,51,60,62,63 Details on these methods have been covered in recent review articles.43–45,51 A wide variety of nanosheets with diverse composition and properties has been obtained by these exfoliation methods.42,44,45,62 Right after exfoliation some nanosheets can form liquid crystals which coherently scatter light, leading to structural colors (see Fig. 3a).64,65 However, to make more efficient use of the structural color for sensing, the nanosheets need to be assembled into solvent-free photonic architectures.40,50,66,67 To achieve this, the most important, liquid-assisted strategies for nanosheets are spin or dip-coating.27,40,41,50,56,58,68–70 The crucial parameters for nanosheet deposition using these methods are the concentration, wetting properties and volatility of the solvent.40,41,56,68 The thickness of the nanosheet layer can be altered by adjusting the spin-coating speed, concentration of the nanosheets, or by repeating the deposition procedure.41,55,59,68 This control of the layer thickness allows to adjust the structural color throughout the visible spectral range (Fig. 3b–f).40,41,55,56,59
image file: c8me00112j-f3.tif
Fig. 3 Modulation of structural colors from 2D materials. For all panels a formula of the nanosheet composition and top and side view of the respective nanosheet structure is shown. The TiO6 octahedra are light blue, SbO6 octrahedra dark blue, PO4 tetrahedra red, Li0.2Sn0.8S2 octahedra orange, TaO6 octahedra green, Mg1−xAlxO6 octahedra dark green, SiO4 tetrahedra black and (MgxLiy)O4F2 octahedra purple. The tunable structural colors result from variations in the spin-coating speed or repetition except of a). a) Lepidocrocite-type Ti0.87O20.52− forming a highly oriented liquid crystal in the presence of a magnetic field. Depending on the nanosheet concentration, the interlayer spacing changes and hence, the structural color.65 b) H3Sb3P2O14/SiO2 1D PCs with different nanosheet layer thicknesses including a SEM cross-section image to highlight the morphology difference of the nanoparticle (NP) and nanosheet layer.41 c) Lithium tin sulfide (LTS) 1D PCs with different nanosheet layer thicknesses. As seen in the SEM cross-section compared to H3Sb3P2O14/SiO2 1D PCs a lower number of total layers is sufficient for achieving a high reflectance due to the higher refractive index contrast in the LTS/SiO2 1D PCs.55 d) SEM cross-section of a H1−xTBAxTaP2O8 thin film on a silicon substrate and images of films with different thicknesses.56 e) Mg–Al–NO3 LDH/TiO2 1D PCs with adjustable structural colors.59 f) LAPONITE®/TiO2 1D PCs with different layers thickness and representative SEM cross-section image of the sample. As a structural model a closely related hectorite layer is depicted instead of LAPONITE®.40 Panel a) reprinted and adapted with permission from ref. 65, Copyright 2016 Springer Nature. Panel b) reprinted and adapted with permission from ref. 41, Copyright 2015 John Wiley and Sons. Panel c) reprinted and adapted with permission from ref. 55, Copyright 2018 John Wiley and Sons. Panel d) reprinted and adapted with permission from ref. 56, Copyright 2017 John Wiley and Sons. Panel e) reprinted and adapted with permission from ref. 59, Copyright 2012 the Royal Society of Chemistry. Panel f) reprinted and adapted with permission from ref. 40, Copyright 2008 John Wiley and Sons.

Until now, a wide variety of nanosheets has been utilized to achieve structural color, as summarized in Fig. 3 and Table 1.40,41,55–59,65,67,71,72 However, an even larger, rapidly growing library of 2D materials exists, which holds promise for a yet more diverse and powerful set of sensing properties that can be harnessed in the future.42,44,73–78 The variety of nanosheets used for achieving structural colors range from antimony phosphates,41,56,72 layered double hydroxides59,79 to layered silicates such as clays,40,50,66,80 and the architectures include thin films, 1D and 3D PCs, besides liquid crystals (Fig. 3, Table 1). Taking a closer look at the optical properties of 2D materials, one can see that low to medium RI materials (Mg–Al–NO3 LDH, H3Sb3P2O14, H1−xTBAxTaP2O8, LAPONITE®)41,50,56 and high RI materials (e.g. lithium tin sulfide (LTS) or HCa2Nb3O10)55,57,81 are available alike, allowing for a large optical contrast with other materials in 1D, 2D and 3D PCs (Table 2). The precise control of the stop band position can be utilized in wavelength selective mirrors, e.g. dichroic mirrors, which find applications in photovoltaics, for instance in perovskite and dye sensitized solar cells, in lasers, in bank note security features or for the colourful design of buildings with radiation shielding properties.8,11–13

Table 1 Overview of photonic architectures showing structural coloration based on 2D materials. Details are given on the type of architectures, their composition, respective role of the nanosheet component and main applications
Composition (Nanosheet) Type of architecture Role of nanosheet Main points
a MMO mixed metal oxide.
LAPONITE®/PDDA (ref. 50) Thin film Stimuli responsive, swelling Humidity sensing
LAPONITE® (Na0.7[(Si8Mg5.5Li0.3)O20(OH)4]) (ref. 40) Thin film Stimuli responsive, swelling Surfactant detection and concentration determination based on ion exchange
LAPONITE®/SiO2 (ref. 40)LAPONITE®/TiO2 (ref. 40) 1D PC Stimuli responsive, swelling Uptake and release kinetics of surfactants & cyclability (mainly ion exchange)
LAPONITE® (ref. 80) Thin film Stimuli responsive, swelling Uptake and release kinetics of surfactants & cyclability (mainly ion exchange)
Porous LAPONITE®/TiO2 (ref. 80) 1D PC and
TiO2/SiO2 with defect LAPONITE® (ref. 80)
Defect 1D PC Stimuli responsive, swelling
Porous LAPONITE®/LAPONITE® (ref. 66) 1D PC Stimuli responsive, swelling Porous LAPONITE® layers by templating
Porous LAPONITE® (ref. 66) 3D PC Stimuli responsive, swelling Porous LAPONITE® layers by templating
Mg–Al–NO3 LDH/TiO2 (ref. 59) 1D PC Stimuli responsive, refractive index change by phase transition Temperature sensing
MMO (derived from Mg–Al–NO3 LDH)/TiO2 (ref. 79) 1D PC Converted into MMOa Sensing of vapors & humidity based on refractive index changes of MMOa
H0.52−xTMAxTi0.87O2 (lepidocrocite-type) (ref. 65) Liquid crystal Stimuli responsive, swelling Sensing of pH, temperature and magnetic field orientation
Silk/silk-TiOx (ref. 71) 1D PC Provide refractive index contrast, stimuli responsive, swelling and refractive index change Humidity sensing
H3Sb3P2O14/SiO2 (ref. 41) 1D PC Stimuli responsive, swelling Humidity sensing, touchless positioning interface, transparency switching
H3Sb3P2O14/TiO2 (ref. 41) 1D PC Stimuli responsive, swelling Humidity sensing, touchless positioning interface
HSbP2O8/TiO2 (ref. 72) 1D PC Stimuli responsive, swelling Humidity and vapor sensing
H3−xTBAxSb3P2O14 (ref. 56) Thin film Stimuli responsive, swelling, host for ion exchange Impact of interlayer cation on humidity and vapor sensing characteristics
H3Sb3P2O14 (ref. 56) Thin film
H1−xTBAxTaP2O8 (ref. 56) Thin film
H1−xTBPxTaP2O8 (ref. 56) Thin film
H3Sb3P2O14 with amines (ref. 82) Thin film Stimuli responsive, swelling, host for intercalation of primary and tertiary alkylamines Differentiation of primary and tertiary alkylamines, area resolved intercalation, utilization of amine functionalization for vapor sensing
H3Sb3P2O14/TiO2 with amines (ref. 83) 1D PC Stimuli responsive, swelling, host for intercalation of primary amines In situ observation and analysis of vertical analyte diffusion
H1−xTBAxCa2Nb3O10 (ref. 57) Thin film Stimuli responsive, UV-light decomposition of interlayer species Vapor sensing, patterning film in microscale structures
TiO2/SiO2 with defect H3Sb3P2O14 containing a dye layer (ref. 84) Defect 1D PC Control of the “photonic window” by swelling of the defect layer Fluorescent humidity sensor (switch on and off)
LTS/TiO2 (ref. 55)LTS/SiO2 (ref. 55) 1D PC Ultrahigh refractive index layer, stimuli responsive, swelling Humidity sensing transparency switching
LTS/H3Sb3P2O14 (ref. 55) 1D PC Stimuli responsive, swelling Humidity sensing, transparency switching
Graphene (ref. 67) Thin film Stimuli responsive, sensitive to strain Tensile strain sensor
Graphene oxide (GO) (ref. 58) Thin film Stimuli responsive, swelling Humidity sensor
Graphene oxide (GO) (ref. 68) Thin film Stimuli responsive, swelling Vapor sensor, primarily for ethanol
GO/TiO2 (ref. 85) 1D PC Optical contrast/unspecified DMSO liquid sensor and alkali pH sensor (both irreversible)
GO/TiO2/(PEG-cross-linked PMVE-co-MA) (ref. 86) 1D PC Optical contrast/unspecified DMSO liquid sensor and alkali pH sensor (reversible)
GO/TiO2 with PANI defect functionalized with Congo red (ref. 87) Defect 1D PC Non-responsive Beta-glucan detection in liquids
GO hydrogel/TiO2 with PANI defect functionalized with Congo red (ref. 87) Defect 1D PC Stimuli responsive, swelling, refractive index change Beta-glucan detection in liquids


Table 2 Overview of the refractive index range of selected 2D materials at 633 nm. Note that the effective refractive indices are dependent on the relative humidity level
2D material Refractive index @ 633 nm
LAPONITE® 1.47–1.51 (ref. 50)
LTS 1.75–2.50 (ref. 55)
H3Sb3P2O14 1.52–1.56 (ref. 41 and 55)
HSbP2O8 1.50–1.57 (ref. 72)
H1−xTBAxTaP2O8 1.38–1.55 (ref. 56)
H3−xTBAxSb3P2O14 1.37–1.53 (ref. 56)
Mg–Al–NO3 LDH 1.53 (ref. 59)
H0.52−xTMAxTi0.87O2 2 (@ 600 nm) (ref. 65)
Graphene 2–2.65 (ref. 67)


Stimuli induced color changes based on 2D material structures

Besides making use of the “static” structural color of photonic structures, applications relying on dynamic color changes triggered by external stimuli are heavily investigated.7,11 The main utilization of dynamic structural color changes is in the field of sensing.7,10,11,25 Sensors based on structural colors can offer significant advantages compared to other sensor systems: They are label free sensors requiring no external power supply, offer a simple optical readout and are small, portable and inexpensive.10,25

Current challenges in the field of photonic sensors include the design of sensors with better selectivity, sensitivity, speed, stability and alternative readout schemes.10,25 Due to their fast swelling behaviour and tunability, 2D materials show great potential for improving these characteristics of photonic sensors.46,47,49,88–91

In terms of functionality, stimuli responsive sensors based on 2D materials can be grouped into different categories depending on the stimuli they can detect, e.g. vapor, liquid, temperature, and mechanically or magnetically responsive sensors.7,10 In the following, we will highlight the different types of photonic sensors based on 2D materials, putting special emphasis on humidity, ion and vapor sensors, as these are currently the most investigated ones.

One of the very few examples of a colorimetric mechanical sensor (Fig. 4a)67 based on 2D materials is derived from multilayer graphene nanoplatelets coated on a glass fibre. Under tensile strain or compressive stress, the thickness of the graphene layer decreases, resulting in a blue shift of the interference-based color (see eqn (1)).67


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Fig. 4 Dynamic structural color changes in photonic architectures based on 2D materials, induced through various stimuli (see text). a) Variation in structural color of a graphene nanoplatelet interference sensor under different axial strain values;67 b) sensing of temperature with a H0.52−xTMAxTi0.87O2 liquid crystal65 and c) with Mg–Al–NO3 LDH/TiO2 1D PC.59 d) Sensing of the magnetic flux direction65 and e) pH with H0.52−xTMAxTi0.87O2 liquid crystals.65 f) Humidity sensing with a graphene oxide thin film on a silicon substrate59 and g) with a H3Sb3P2O14/SiO2 1D PC.58 In g) also the reversible transparency switching is shown, which happens due to the cancellation of refractive index contrast upon water infiltration of the structure. In addition, due to their fast response time and high sensitivity to moisture the H3Sb3P2O14/SiO2 1D PC can be utilized to detect human finger motions in a touchless fashion, h).41 Panel a) reprinted and adapted with permission from ref. 67, Copyright 2017 The Royal Society of Chemistry. Panel b), d) and e) reprinted and adapted with permission from ref. 65, Copyright 2016 Springer Nature. Panel c) reprinted and adapted with permission from ref. 59, Copyright 2012 The Royal Society of Chemistry. Panel f) reprinted with permission from ref. 58, Copyright 2015 American Chemical Society. Panel g) and h) reprinted and adapted with permission from ref. 41, Copyright 2015 John Wiley and Sons.

Photonic temperature sensors based on 2D materials include liquid crystalline H0.52−xTMAxTi0.87O2 and 1D PC Mg–Al–NO3 LDH/TiO2 sensors (Fig. 4b and c).59,65 For these systems, the mechanisms behind the color changes are different. The Mg–Al–NO3 LDH/TiO2 1D PC relies on a conversion of the LDH to a mixed metal oxide (MMO) upon calcination.59 Due to the structural change of the LDH to MMO, the RI decreases from 1.5 to 1.2, leading to a blue shift in the displayed color. However, the reverse phase change from MMO back to LDH is not spontaneous and requires hydrothermal treatment. Instead, the gradual and reversible color change with increasing temperature in the H0.52−xTMAxTi0.87O2 (TMA: tetramethylammonium) liquid crystal is based on a gradual thermoresponsive ionic density change.65 Increasing the temperature leads to dissociation of TMA from the nanosheet surface with concomitant protonation of the nanosheets. This triggers a decrease in the surface potential of the nanosheets which causes a decrease in the distance between the charged sheets, hence a blue shift is observed with increasing temperature. In addition, the color change is reversible and fast, i.e. completed within 200 ms.65

The H0.52−xTMAxTi0.87O2 liquid crystal, representing a special class of fluid photonic structures, can be applied to detect the direction of magnetic flux as well as pH changes (Fig. 4d and e).65 The detection of the magnetic flux direction is based on the fact that the H0.52−xTMAxTi0.87O2 sheets orient themselves orthogonal to the magnetic flux. This unusual alignment has only been reported for this kind of nanosheet. When the magnetic flux direction is changed, the sheets also change their orientation, leading to a change in illumination angle θ (see eqn (1)) and, hence, a color shift. H0.52−xTMAxTi0.87O2 liquid crystals have further been utilized as pH sensors. The pH detection is based on the protonation of the oxoanionic groups of H0.52−xTMAxTi0.87O2 with decreasing pH value. This leads to a decrease in electrostatic repulsion between the sheets, resulting in a color change. Note that even a small change in pH of 0.1 causes significant color changes detectable with the naked eye.65

The most common transduction mechanism in 2D nanosheet-based photonic sensors relies on changes in the dimensionality of the active component.40,41,50,58 Changes in thickness of the nanosheet layer causing the color change are either due to intercalation41,50,58 or ion exchange reactions.40,66,80 The observed changes are typically large as they are maximized due to the preferred alignment of the nanosheets parallel to the substrate. The most common stimulus that is sensed with such architectures is humidity.41,50,55,56,58,71,72 The first example of reversible humidity sensing by a photonic architecture based on 2D materials dates back to the 1990s, where LAPONITE® thin films were assembled by the sequential deposition of nanosheets from colloidal suspensions.50 This was followed later with graphene oxide thin films (Fig. 4f) prepared by dip-coating,58 and by various 1D PCs including H3Sb3P2O14/SiO2 (Fig. 4g),41 H3Sb3P2O14/TiO2,41 HSbP2O8/TiO2,72 LTSLTS/TiO2,55 LTS/SiO255 and silk/silk-TiOx71 1D PCs prepared by spin-coating. Most of these architectures show extremely fast response times on the order of milliseconds to a few seconds and an ultrahigh sensitivity (defined as colorshift (nm)/% RH) to the humidity stimulus.41,50,58,72 Interestingly, for some of the structures, e.g. H3Sb3P2O14/SiO2 and LTS/SiO2 1D PCs, the RI contrast is cancelled at high relative humidity,41,55 and as a consequence, the photonic structure turns transparent. This transparency switching is due to RI matching upon water intercalation into the structure as the high-RI nanosheet layer swells upon water uptake (effective RI decreases) and the textural pores of the low-RI layer are filled with water (effective RI increases).41,55 The combination of fast response times and giant color shift in response to humidity enables the touchless tracking of the motion of a finger across the surface of a 1D PC (Fig. 4h), based on the humid atmosphere surrounding a human finger.41 Touchless tracking of finger motion may be interesting in both touch- and touchless user interfaces for input or as feedback mechanism.

While humidity sensors continue to be of utmost importance, sensors that are capable of detecting and differentiating between volatile organic compounds (VOCs) are likewise of immense practical interest due to their broad application range, e.g. in environmental monitoring and medical diagnostics.10,25,87–94 Photonic structures based on unmodified 2D materials have shown some potential in the field of vapor differentiation, i.e. as photonic noses.68,72 We were able to show that different polar protic vapors could be distinguished from non-polar vapors by recording the time dependent optical shift of a HSbP2O8/TiO2 1D PC.72 Using this combined read-out of spectral shift and response time, even constitutional isomers among the polar and protic vapors could be differentiated (Fig. 5a). In fact, the observed degree of vapor differentiation with a single-element photonic nose is among the best reported so far. The main reason for this high selectivity is due to the acidic nature of the nanosheet layer, which is able to selectively interact with polar protic analytes through hydrogen bonding and acid–base interactions.72 Graphene oxide thin films were also able to distinguish between polar protic vapors (see Fig. 5b).68 For both graphene oxide thin films and HSbP2O8/TiO2 1D PC the sensing response is reversible.


image file: c8me00112j-f5.tif
Fig. 5 Dynamic structural color changes caused by gaseous and liquid stimuli in 2D material based structures. Differentiation of polar and protic vapors with HSbP2O8/TiO2 1D PCs, a),72 and graphene oxide thin films, b).68 c) Identification of bulky ionic surfactants and molecules with different functional groups with LAPONITE® thin films and 1D PCs.40 d) Primary alkylamine recognition with H3Sb3P2O14 thin films. The linear increase in the alkyl chain length results in linearly increasing d-spacing and hence, optical shift.82 Panel a) reprinted with permission from ref. 72, Copyright 2016 John Wiley and Sons. Panel b) reprinted and adapted with permission from ref. 68, Copyright 2018 Elsevier. Panel c) reprinted and adapted with permission from ref. 40, Copyright 2008 John Wiley and Sons. Panel d) reprinted and adapted with permission from ref. 82, Copyright 2018 American Chemical Society.

Irreversible detection of analytes under certain conditions has also been used advantageously, especially for sensing trace amounts of analytes or to monitor analyte uptake processes in real-time. The latter is particularly intriguing as it allows for the label-free detection of otherwise optically silent processes.40,80,82 2D materials are ideally suited for such a detection scheme through intercalation and ion exchange. LAPONITE® thin films and LAPONITE®/TiO2 1D PCs were utilized to differentiate between differently sized positively charged surfactants and between analytes with different functional groups by Lotsch and Ozin (Fig. 5c).40 Here, the dominant detection mechanism is based on ion exchange of the interlayer alkali cations by organic alkylammonium species.40,80 Following the concomitant color shift, the uptake kinetics of the analytes were investigated and it was demonstrated that the initial state of the sensor could be recovered by the reverse ion exchange process.40,80

Recently, we were able to extend this theme to the intercalation of various primary and tertiary alkylamine vapors into H3Sb3P2O14 photonic thin films (Fig. 5d).82 As the amines are protonated during intercalation, they are trapped in the interlayer space. Since the layer charge density of H3Sb3P2O14 is higher compared to LAPONITE® layers, we obtained a clearer correlation with the analyte size.40,82 This is due to the fact that the layer charge density governs the orientation and, hence, packing of the charged surfactant in the interlayer space. With increasing number of carbon atoms in the alkylchain we observed a linear increase in the intergallery spacing (i.e. d-values) and, as a consequence, in the optical shift for primary alkyl amines. Moreover, we could differentiate between similarly sized primary and tertiary alkylamines based on the intercalation time.82 Intriguingly, by simulating the time-evolution of the optical spectra, we were able to monitor vertical diffusion of primary alkyamines into H3Sb3P2O14/TiO2 1D PCs in real time. In essence, this allows us study processes occurring at the molecular level like diffusion and layer expansion with a simple macroscopic optical read-out.83 Therefore, optical architectures with 2D materials might help to add to the general understanding of diffusion phenomena and intercalation mechanisms of molecules in 2D materials.

Tuning dynamic color changes based on 2D materials

As both ion exchange and amine intercalation techniques in 2D materials as described above are irreversible under certain conditions, they can be used to permanently modify and fine-tune the sensor chemically. To highlight the effect of ion exchange on the vapor response characteristics, we studied the effect of exchanging the interlayer protons for TBA (tetrabutylammonium) on the vapor response characteristics.56 The response of H1−xTBAxTaP2O8, H3−xTBAxSb3P2O14 and H3Sb3P2O14 photonic thin films towards humidity and different organic vapors were recorded (Fig. 6a and b). The interlayer cation increased the sensitivity towards humidity in the high humidity regime (compare Fig. 6a, images 88% and 95% RH) and endowed the sensor with better performance in discriminating between and among non-polar and moderately polar vapors (Fig. 6b).56 Comparable sensitivity and selectivity was observed for H1−xTBAxCa2Nb3O10 photonic thin films.57 Besides enhancing the sensitivity towards humidity, TBA modification allowed for fast (ms) tracking of polar and protic vapors.56 All of these changes can be attributed to the role of the interlayer cation that acts as the gatekeeper by controlling the chemical nature as well as width of the interlayer space.56,57
image file: c8me00112j-f6.tif
Fig. 6 Controlling the properties of nanosheet sensors by non-covalent functionalization. Effect of ion exchanging layered phosphate thin films with TBA on a) the sensitivity towards humidity, and b) the capability to distinguish between vapors with varying polarity.56 c) Influence of primary alkylamine intercalation on the selectivity of H3Sb3P2O14 thin films.82 d) Area resolved intercalation of primary alkylamines (DA decylamine, BA, butylamine and EA ethylamine) for creating a sensor array on a single H3Sb3P2O14 thin film and identification of vapor through characteristic color patterns with the functionalized thin films.82 e) H1−xTBAxCa2Nb3O10 area resolved control of the interlayer cation by photocatalytic decomposition of the interlayer species under UV-light with a mask. In the development step from the second to third picture the TBA containing areas get washed away.57 f) Micron-scale structures obtained by this technique (photocatalytic nanosheet lithography), utilizing H1−xTBAxCa2Nb3O10 as a negative photoresist.57 Panel a) and b) reprinted and adapted with permission from ref. 56, Copyright 2017 John Wiley and Sons. Panel c) and d) reprinted and adapted with permission from ref. 82, Copyright 2018 American Chemical Society. Panel e) and f) reprinted and adapted with permission from ref. 57, Copyright 2017 John Wiley and Sons.

At the same time, the vapor-phase amine intercalation into H3Sb3P2O14 thin films is a versatile chemical tool to fine tune the sensor's selectivity over an even large polarity range (Fig. 6c).82 The vapor intercalation strategy is highly beneficial because it is a post-assembly modification approach requiring no optimization of the spin-coating procedure, which hence is generic for all subsequent amine modifications.82,95 Due to the intercalation of amines with long alkyl chain lengths, considerably large responses for non-polar vapors were obtained for photonic structures based on 2D materials for the first time. Another attractive feature of the amine intercalation method is its local resolution. Hence, area resolved intercalation using a mask allows for the straightforward construction of an array sensor, which was used to distinguish between various vapors by the naked eye (Fig. 6d).82

We also utilized the concept of area resolved control of the interlayer species in H1−xTBAxCa2Nb3O10 photonic thin films.57 However, here the control was achieved by inducing locally resolved photocatalytic decomposition of the interlayer species TBA by the photocatalytically active host layer (i.e. Ca2Nb3O10 nanosheets) under UV illumination (Fig. 6e). Therefore, the H1−xTBAxCa2Nb3O10 photonic thin films can be used as a single UV-test strip with the areas exposed to UV-light getting thinner due to the decomposition of the interlayer species. Moreover, as the interlayer cation dictates the swelling properties of the photonic nanosheet thin films, the TBA containing areas were selectively etched away leaving behind the photocatalytically modified H1−x(NH4)xCa2Nb3O10 areas. Structures with lateral features of sizes smaller than 100 μm could be produced by this technique, termed photocatalytic nanosheet lithography (PNL). It is important to note that reproducibly achieving small lateral feature sizes with nanosheets is still difficult at the current stage. Research carried out with photonic structures based on modified 2D materials can therefore be useful also beyond sensing.57

Intercalation and ion exchange are both effective methods to tailor the functions of structures assembled from 2D materials.56,82 However, other possibilities of tuning the photonic response of such structures exist, such as realizing different compositional structures55 or changes in the design of the architectures leading to altered functions (Fig. 7).66,80,84,87 Recent approaches include the fabrication of 1D PCs based on two different swellable 2D materials (“all-nanosheet Bragg stacks”, Fig. 7a) and the creation of hybrid 1D PCs with organic polymers.55,86,87 An alternative way to modify the optical response is by altering the porosity of the nanosheet layer through templating (Fig. 7b).66,80 By carefully controlling the assembly conditions, this can lead to 1D PCs made out of the same materials having different porosities and, hence, effective RIs. Besides 1D PCs, also inverse opal-type 3D PC architectures have been realized with LAPONITE® nanosheets.66


image file: c8me00112j-f7.tif
Fig. 7 Tailoring the functions of 2D material based photonic architectures by changing the composition and modifying the photonic lattice. a) 1D PCs based on LTS/H3Sb3P2O14 nanosheets with a schematic and a cross-section image including an EELS map.55 b) Changing the porosity of 2D materials by templating with organic spheres. SEM cross-section images of different examples: top, LAPONITE®/TiO2 1D PC, middle, all-LAPONITE® 1D PC based on different porosities,80 and bottom, LAPONITE® 3D PC.66 c) Utilizing nanosheet layers as defect layers in resonator structures: In the displayed case a TiO2/SiO2 1D PC with a H3Sb3P2O14 defect (green) containing a dye layer (red) was utilized to construct fluorescence turn-on and -off humidity sensors.84 Panel a) reprinted and adapted with permission from ref. 55, Copyright 2018 John Wiley and Sons. Panel b) reprinted and adapted with permission from ref. 66 and 80, Copyright 2008 American Chemical Society. Panel c) reprinted and adapted with permission from ref. 84, Copyright 2017 John Wiley and Sons.

Another possibility is the design of photonic defect architectures based on 2D materials (Fig. 7c).84,87 Such cavity-type structures with purposefully designed electrical field distributions across the multilayer can be used to create sensors with higher resolution or alternative read-out schemes. For example, a defect layer in a 1D PCs located in the middle of the stack induces creates optical states in the band gap, leading to a dip in the reflectance spectrum. As the narrow dip position can be read out with a higher precision compared to the broad reflectance maximum, this can lead to enhanced analyte resolution.27,80 Alternatively, placing polymer spheres loaded with fluorescent molecules in the defect layer was used to design fluorescence turn-on and turn-off sensors. Here, the operating mode depends on the relative spectral positions of the humidity-tunable stopband and the fluorescence maximum, respectively. An example for the design of a photonic cavity structure based on 2D materials is shown in Fig. 7c.84

A bright future for 2D materials

As illustrated based on the above examples, a fine selection of inorganic 2D materials has already been used as the source of tunable structural color, with many more to come.

And yet, there is plenty of room left for innovation as the field matures. In the final section, some promising future directions will be highlighted (Fig. 8).


image file: c8me00112j-f8.tif
Fig. 8 Overview of future directions in photonic nanoarchitectonics based on stimuli-responsive 2D materials.

Although several 2D materials have been integrated into architectures for structural coloration, a plethora of new and existing 2D materials with stimuli-responsive properties are at hand, including for example layered Zintl phases, MXenes and Xenes, metal halogenides, and transition metal (di)chalcogenides.42,44,49,76,77 Introducing these families of compounds with widely differing properties can result in novel functionalities. Moreover, combining different 2D materials with each other, with functional nanoparticles or with polymers in complex photonic architectures is still in its infancy and will unleash complex and enhanced functionality.

Besides cation exchange and spontaneous intercalation, smart strategies are needed to customize the sensor response by individually fine tuning the composition of the layers and the interlayer space. Besides cation exchange or intercalation,56,82 anion exchange properties (e.g. in LDHs) can be used to detect anionic analytes. Moreover, the layer charge density of charged nanosheets can be adjusted to achieve different orientations of the interlayer species, thereby gradually fine tuning the interlayer spacing. In addition, intercalation by electrochemical methods are promising. Here, one can tailor the d-spacing, e.g. redox intercalation of Li96–98 or bulky ammonium ions,99 induce phase transitions (e.g. 2H → 1T MoS2) and, hence, dynamically change the structural colors over a large range, which might be suitable for display technologies.100,101

A large and essentially unexplored area is the integration of covalently modified nanosheets into photonic architectures. Pre- or post-assembly covalent modification of the nanosheet layers through grafting is an excellent tool to endow them with analyte specific functionality. There are now many reports available describing how to tailor the properties of the nanosheets and parent layered materials by covalent modifications.48,49,89,90,102–106 The reactions are as diverse as the different nanosheet compositions and structures and comprise reactions with thiols, including click reactions, electrophiles, such as alkyl iodides and diazonium salts, isocyanates, epoxides and coordination with metal salts.

Furthermore, with the recent focus on improving existing strategies and inventing new ones for quantitative nanosheet exfoliation, processing, and assembly, it is likely that scalable, as well as more complex photonic architectures based on 2D materials become readily available, like for example printable nanostructures and systems amenable to roll-to-roll processes.51–54,107,108 This development will also enable the fabrication of more complex 2D and 3D photonic architectures based on 2D materials and the fabrication of free-standing photonic architectures based on 2D materials.109

In summary, this review highlights a new area in which 2D materials have the potential to excel, but unlike other directions, the use of 2D materials as building blocks for photonic architectures is still in its infancy. We have highlighted the diversity in composition and structures of the 2D materials used for structural coloration, and summarized the dynamic sensing response of 2D materials to various stimuli, which enables the tracking of otherwise optically silent processes. We discussed different strategies to tailor the functionality of photonic architectures based on 2D materials on the atomic scale by ion exchange and intercalation, as well as by changing the composition and design of the photonic architectures. To conclude, the future for creating tunable structural colors based on 2D materials is bright.

Conflicts of interest

There are no conflicts to declare.

Acknowledgements

Open Access funding provided by the Max Planck Society. Financial support was granted by the Max Planck Society, the University of Munich (LMU), the Center for NanoScience (CeNS), and the Deutsche Forschungsgemeinschaft (DFG) through the Cluster of Excellence Nanosystems Initiative Munich (NIM).

Notes and references

  1. B. A. Bober, J. K. Ogata, V. E. Martinez, J. J. Hallinan, T. A. Leach and B. Negru, J. Chem. Educ., 2018, 95, 1004–1011 CrossRef CAS .
  2. H. Seo and S. Lee, Sci. Rep., 2017, 7, 44927 CrossRef CAS PubMed .
  3. Y. D. Afanasyev, G. T. Andrews and C. G. Deacon, Am. J. Phys., 2011, 79, 1079–1082 CrossRef CAS .
  4. R. A. Potyrailo, H. Ghiradella, A. Vertiatchikh, K. Dovidenko, J. R. Cournoyer and E. Olson, Nat. Photonics, 2007, 1, 123 CrossRef CAS .
  5. E. Yablonovitch, Phys. Rev. Lett., 1987, 58, 2059–2062 CrossRef CAS PubMed .
  6. S. John, Phys. Rev. Lett., 1987, 58, 2486–2489 CrossRef CAS PubMed .
  7. G. Isapour and M. Lattuada, Adv. Mater., 2018, 30, 1707069 CrossRef PubMed .
  8. G. von Freymann, V. Kitaev, B. V. Lotsch and G. A. Ozin, Chem. Soc. Rev., 2013, 42, 2528–2554 RSC .
  9. L. D. Bonifacio, B. V. Lotsch, D. P. Puzzo, F. Scotognella and G. A. Ozin, Adv. Mater., 2009, 21, 1641–1646 CrossRef CAS .
  10. C. Fenzl, T. Hirsch and O. S. Wolfbeis, Angew. Chem., Int. Ed., 2014, 53, 3318–3335 CrossRef CAS PubMed .
  11. P. Lova, G. Manfredi and D. Comoretto, Adv. Opt. Mater., 2018, 0, 1800730 CrossRef .
  12. M. E. Calvo, S. Colodrero, N. Hidalgo, G. Lozano, C. Lopez-Lopez, O. Sanchez-Sobrado and H. Miguez, Energy Environ. Sci., 2011, 4, 4800–4812 RSC .
  13. H. Shen, Z. Wang, Y. Wu and B. Yang, RSC Adv., 2016, 6, 4505–4520 RSC .
  14. J. Ge and Y. Yin, Angew. Chem., Int. Ed., 2011, 50, 1492–1522 CrossRef CAS PubMed .
  15. Y. Zhao, Z. Xie, H. Gu, C. Zhu and Z. Gu, Chem. Soc. Rev., 2012, 41, 3297–3317 RSC .
  16. K. Ariga and M. Ebara, Materials Nanoarchitectonics, Wiley-VCH, Weinheim, 2018 Search PubMed .
  17. K. Ariga, Q. Ji, J. P. Hill, Y. Bando and M. Aono, NPG Asia Mater., 2012, 4, e17 CrossRef .
  18. Y. J. Li, Y. Yan, Y. S. Zhao and J. Yao, Adv. Mater., 2016, 28, 1319–1326 CrossRef CAS PubMed .
  19. Y. Yan, J. Ye, K. Wang, J. Yao and Y. S. Zhao, Small, 2016, 14, 1702698 CrossRef PubMed .
  20. O. Stenzel, in The Physics of Thin Film Optical Spectra: An Introduction, Springer International Publishing, Cham, 2016, pp. 131–161,  DOI:10.1007/978-3-319-21602-7_7 .
  21. K. Szendrei-Temesi, PhD thesis, University of Munich, 2018 Search PubMed .
  22. T. Gao, J. Gao and M. J. Sailor, Langmuir, 2002, 18, 9953–9957 CrossRef CAS .
  23. J. Gao, T. Gao, Y. Y. Li and M. J. Sailor, Langmuir, 2002, 18, 2229–2233 CrossRef CAS .
  24. G. Lu and J. T. Hupp, J. Am. Chem. Soc., 2010, 132, 7832–7833 CrossRef CAS PubMed .
  25. H. Xu, P. Wu, C. Zhu, A. Elbaz and Z. Z. Gu, J. Mater. Chem. C, 2013, 1, 6087–6098 RSC .
  26. S. Y. Choi, M. Mamak, G. von Freymann, N. Chopra and G. A. Ozin, Nano Lett., 2006, 6, 2456–2461 CrossRef CAS PubMed .
  27. M. C. Fuertes, F. J. López-Alcaraz, M. C. Marchi, H. E. Troiani, V. Luca, H. Míguez and G. J. A. A. Soler-Illia, Adv. Funct. Mater., 2007, 17, 1247–1254 CrossRef CAS .
  28. M. E. Calvo, O. Sánchez-Sobrado, S. Colodrero and H. Míguez, Langmuir, 2009, 25, 2443–2448 CrossRef CAS PubMed .
  29. Z. Wu, D. Lee, M. F. Rubner and R. E. Cohen, Small, 2007, 3, 1445–1451 CrossRef CAS PubMed .
  30. L. D. Bonifacio, D. P. Puzzo, S. Breslav, B. M. Willey, A. McGeer and G. A. Ozin, Adv. Mater., 2010, 22, 1351–1354 CrossRef CAS PubMed .
  31. L. D. Bonifacio, G. A. Ozin and A. C. Arsenault, Small, 2011, 7, 3153–3157 CrossRef CAS PubMed .
  32. F. M. Hinterholzinger, A. Ranft, J. M. Feckl, B. Rühle, T. Bein and B. V. Lotsch, J. Mater. Chem., 2012, 22, 10356–10362 RSC .
  33. A. Ranft, F. Niekiel, I. Pavlichenko, N. Stock and B. V. Lotsch, Chem. Mater., 2015, 27, 1961–1970 CrossRef CAS .
  34. B. V. Lotsch, F. Scotognella, K. Moeller, T. Bein and G. A. Ozin, Proc. SPIE, 2010, 7713 DOI:10.1117/12.854703 .
  35. Y. Kang, J. J. Walish, T. Gorishnyy and E. L. Thomas, Nat. Mater., 2007, 6, 957 CrossRef CAS PubMed .
  36. Z. Wang, J. Zhang, J. Xie, C. Li, Y. Li, S. Liang, Z. Tian, T. Wang, H. Zhang, H. Li, W. Xu and B. Yang, Adv. Funct. Mater., 2010, 20, 3784–3790 CrossRef CAS .
  37. Z. Wang, J. Zhang, J. Li, J. Xie, Y. Li, S. Liang, Z. Tian, C. Li, Z. Wang, T. Wang, H. Zhang and B. Yang, J. Mater. Chem., 2011, 21, 1264–1270 RSC .
  38. Z. Wang, J. Zhang, Z. Wang, H. Shen, J. Xie, Y. Li, L. Lin and B. Yang, J. Mater. Chem. C, 2013, 1, 977–983 RSC .
  39. P. Lova, G. Manfredi, L. Boarino, A. Comite, M. Laus, M. Patrini, F. Marabelli, C. Soci and D. Comoretto, ACS Photonics, 2015, 2, 537–543 CrossRef CAS .
  40. B. V. Lotsch and G. A. Ozin, Adv. Mater., 2008, 20, 4079–4084 CrossRef CAS .
  41. K. Szendrei, P. Ganter, O. Sànchez-Sobrado, R. Eger, A. Kuhn and B. V. Lotsch, Adv. Mater., 2015, 27, 6341–6348 CrossRef CAS PubMed .
  42. R. Ma and T. Sasaki, Adv. Mater., 2010, 22, 5082–5104 CrossRef CAS PubMed .
  43. R. Ma and T. Sasaki, Acc. Chem. Res., 2015, 48, 136–143 CrossRef CAS PubMed .
  44. V. Nicolosi, M. Chhowalla, M. G. Kanatzidis, M. S. Strano and J. N. Coleman, Science, 2013, 340, 1226419 CrossRef .
  45. S. Z. Butler, S. M. Hollen, L. Cao, Y. Cui, J. A. Gupta, H. R. Gutierrez, T. F. Heinz, S. S. Hong, J. Huang, A. F. Ismach, E. Johnston-Halperin, M. Kuno, V. V. Plashnitsa, R. D. Robinson, R. S. Ruoff, S. Salahuddin, J. Shan, L. Shi, M. G. Spencer, M. Terrones, W. Windl and J. E. Goldberger, ACS Nano, 2013, 7, 2898–2926 CrossRef CAS PubMed .
  46. F. Geng, R. Ma, Y. Ebina, Y. Yamauchi, N. Miyamoto and T. Sasaki, J. Am. Chem. Soc., 2014, 136, 5491–5500 CrossRef CAS PubMed .
  47. J. Wan, S. D. Lacey, J. Dai, W. Bao, M. S. Fuhrer and L. Hu, Chem. Soc. Rev., 2016, 45, 6742–6765 RSC .
  48. S. Bertolazzi, M. Gobbi, Y. Zhao, C. Backes and P. Samorì, Chem. Soc. Rev., 2018, 47, 6845–6888 RSC .
  49. S. Jiang, M. Q. Arguilla, N. D. Cultrara and J. E. Goldberger, Acc. Chem. Res., 2015, 48, 144–151 CrossRef CAS PubMed .
  50. E. R. Kleinfeld and G. S. Ferguson, Chem. Mater., 1995, 7, 2327–2331 CrossRef CAS .
  51. F. Bonaccorso, A. Bartolotta, J. N. Coleman and C. Backes, Adv. Mater., 2016, 28, 6136–6166 CrossRef CAS PubMed .
  52. K. Matsuba, C. Wang, K. Saruwatari, Y. Uesusuki, K. Akatsuka, M. Osada, Y. Ebina, R. Ma and T. Sasaki, Sci. Adv., 2017, 3, e1700414 CrossRef PubMed .
  53. J. Kang, V. K. Sangwan, J. D. Wood and M. C. Hersam, Acc. Chem. Res., 2017, 50, 943–951 CrossRef CAS PubMed .
  54. J. Zhu and M. C. Hersam, Adv. Mater., 2017, 29, 1603895 CrossRef PubMed .
  55. K. Szendrei-Temesi, O. Sanchez-Sobrado, S. B. Betzler, K. M. Durner, T. Holzmann and B. V. Lotsch, Adv. Funct. Mater., 2018, 28, 1705740 CrossRef .
  56. P. Ganter, L. M. Schoop and B. V. Lotsch, Adv. Mater., 2017, 29, 1604884 CrossRef PubMed .
  57. P. Ganter and B. V. Lotsch, Angew. Chem., Int. Ed., 2017, 56, 8389–8392 CrossRef CAS PubMed .
  58. H. Chi, Y. J. Liu, F. Wang and C. He, ACS Appl. Mater. Interfaces, 2015, 7, 19882–19886 CrossRef CAS PubMed .
  59. J. Han, Y. Dou, M. Wei, D. G. Evans and X. Duan, RSC Adv., 2012, 2, 10488–10491 RSC .
  60. C. Backes, T. M. Higgins, A. Kelly, C. Boland, A. Harvey, D. Hanlon and J. N. Coleman, Chem. Mater., 2017, 29, 243–255 CrossRef CAS .
  61. K. R. Paton, E. Varrla, C. Backes, R. J. Smith, U. Khan, A. O'Neill, C. Boland, M. Lotya, O. M. Istrate, P. King, T. Higgins, S. Barwich, P. May, P. Puczkarski, I. Ahmed, M. Moebius, H. Pettersson, E. Long, J. Coelho, S. E. O'Brien, E. K. McGuire, B. M. Sanchez, G. S. Duesberg, N. McEvoy, T. J. Pennycook, C. Downing, A. Crossley, V. Nicolosi and J. N. Coleman, Nat. Mater., 2014, 13, 624–630 CrossRef CAS PubMed .
  62. J. N. Coleman, M. Lotya, A. O'Neill, S. D. Bergin, P. J. King, U. Khan, K. Young, A. Gaucher, S. De, R. J. Smith, I. V. Shvets, S. K. Arora, G. Stanton, H.-Y. Kim, K. Lee, G. T. Kim, G. S. Duesberg, T. Hallam, J. J. Boland, J. J. Wang, J. F. Donegan, J. C. Grunlan, G. Moriarty, A. Shmeliov, R. J. Nicholls, J. M. Perkins, E. M. Grieveson, K. Theuwissen, D. W. McComb, P. D. Nellist and V. Nicolosi, Science, 2011, 331, 568–571 CrossRef CAS PubMed .
  63. S. Manzeli, D. Ovchinnikov, D. Pasquier, O. V. Yazyev and A. Kis, Nat. Rev. Mater., 2017, 2, 17033 CrossRef CAS .
  64. J.-C. P. Gabriel, F. Camerel, B. J. Lemalre, H. Desvaux, P. Davidson and P. Batail, Nature, 2001, 413, 504–508 CrossRef CAS PubMed .
  65. K. Sano, Y. S. Kim, Y. Ishida, Y. Ebina, T. Sasaki, T. Hikima and T. Aida, Nat. Commun., 2016, 7, 12559 CrossRef CAS PubMed .
  66. B. V. Lotsch and G. A. Ozin, J. Am. Chem. Soc., 2008, 130, 15252–15253 CrossRef CAS PubMed .
  67. Y. Deng, S. Gao, J. Liu, U. Gohs, E. Mäder and G. Heinrich, Mater. Horiz., 2017, 4, 389–395 RSC .
  68. T. Gong, X. Zhang, Y. Fu, G. Zhou, H. Chi and T. Li, Sens. Actuators, B, 2018, 261, 83–90 CrossRef CAS .
  69. S. Colodrero, M. Ocaña and H. Míguez, Langmuir, 2008, 24, 4430–4434 CrossRef CAS PubMed .
  70. M. C. Fuertes, S. Colodrero, G. Lozano, A. R. González-Elipe, D. Grosso, C. Boissière, C. Sánchez, G. J. D. A. A. Soler-Illia and H. Míguez, J. Phys. Chem. C, 2008, 112, 3157–3163 CrossRef CAS .
  71. E. Colusso, G. Perotto, Y. Wang, M. Sturaro, F. Omenetto and A. Martucci, J. Mater. Chem. C, 2017, 5, 3924–3931 RSC .
  72. P. Ganter, K. Szendrei and B. V. Lotsch, Adv. Mater., 2016, 28, 7436–7442 CrossRef CAS PubMed .
  73. A. Molle, J. Goldberger, M. Houssa, Y. Xu, S.-C. Zhang and D. Akinwande, Nat. Mater., 2017, 16, 163–169 CrossRef CAS PubMed .
  74. M. Q. Arguilla, J. Katoch, K. Krymowski, N. D. Cultrara, J. Xu, X. Xi, A. Hanks, S. Jiang, R. D. Ross, R. J. Koch, S. Ulstrup, A. Bostwick, C. Jozwiak, D. W. McComb, E. Rotenberg, J. Shan, W. Windl, R. K. Kawakami and J. E. Goldberger, ACS Nano, 2016, 10, 9500–9508 CrossRef CAS PubMed .
  75. M. Q. Arguilla, N. D. Cultrara, Z. J. Baum, S. Jiang, R. D. Ross and J. E. Goldberger, Inorg. Chem. Front., 2017, 4, 378–386 RSC .
  76. B. Anasori, M. R. Lukatskaya and Y. Gogotsi, Nat. Rev. Mater., 2017, 2, 16098 CrossRef CAS .
  77. M. Chhowalla, H. S. Shin, G. Eda, L.-J. Li, K. P. Loh and H. Zhang, Nat. Chem., 2013, 5, 263–275 CrossRef PubMed .
  78. D. Weber, L. M. Schoop, V. Duppel, J. M. Lippmann, J. Nuss and B. V. Lotsch, Nano Lett., 2016, 16, 3578–3584 CrossRef CAS PubMed .
  79. Y. Dou, J. Han, T. Wang, M. Wei, D. G. Evans and X. Duan, J. Mater. Chem., 2012, 22, 14001–14007 RSC .
  80. B. V. Lotsch and G. A. Ozin, ACS Nano, 2008, 2, 2065–2074 CrossRef CAS PubMed .
  81. M. Osada and T. Sasaki, Adv. Mater., 2012, 24, 210–228 CrossRef CAS PubMed .
  82. P. Ganter, L. M. Schoop, M. Däntl and B. V. Lotsch, Chem. Mater., 2018, 30, 2557–2565 CrossRef CAS .
  83. K. Szendrei-Temesi, A. Jiménez-Solano and B. V. Lotsch, Adv. Mater., 2018, 30, 1803730 CrossRef PubMed .
  84. K. Szendrei, A. Jiménez-Solano, G. Lozano, B. V. Lotsch and H. Míguez, Adv. Opt. Mater., 2017, 5, 1700663 CrossRef .
  85. C. Yao, J. Zhao, H. Ge, J. Ren, T. Yin, Y. Zhu and L. Ge, Colloids Surf., A, 2014, 452, 89–94 CrossRef CAS .
  86. C. Yao, J. Ren, C. Liu, T. Yin, Y. Zhu and L. Ge, ACS Appl. Mater. Interfaces, 2014, 6, 16727–16733 CrossRef CAS PubMed .
  87. J. Ren, H. Xuan, C. Liu, C. Yao, Y. Zhu, X. Liu and L. Ge, RSC Adv., 2015, 5, 77211–77216 RSC .
  88. X. Liu, T. Ma, N. Pinna and J. Zhang, Adv. Funct. Mater., 2017, 1702168,  DOI:10.1002/adfm.201702168 .
  89. S. Presolski and M. Pumera, Mater. Today, 2016, 19, 140–145 CrossRef CAS .
  90. X. Chen and A. R. McDonald, Adv. Mater., 2016, 28, 5738–5746 CrossRef CAS PubMed .
  91. W. Yang, L. Gan, H. Li and T. Zhai, Inorg. Chem. Front., 2016, 3, 433–451 RSC .
  92. J. Zhang, X. Liu, G. Neri and N. Pinna, Adv. Mater., 2016, 28, 795–831 CrossRef CAS PubMed .
  93. S. Yang, C. Jiang and S.-H. Wei, Appl. Phys. Rev., 2017, 4, 021304 Search PubMed .
  94. P. K. Kannan, D. J. Late, H. Morgan and C. S. Rout, Nanoscale, 2015, 7, 13293–13312 RSC .
  95. A. von Mankowski, K. Szendrei-Temesi, C. Koschnick and B. V. Lotsch, Nanoscale Horiz., 2018, 3, 383–390 RSC .
  96. A. M. Dimiev, G. Ceriotti, N. Behabtu, D. Zakhidov, M. Pasquali, R. Saito and J. M. Tour, ACS Nano, 2013, 7, 2773–2780 CrossRef CAS PubMed .
  97. W. Bao, J. Wan, X. Han, X. Cai, H. Zhu, D. Kim, D. Ma, Y. Xu, J. N. Munday, H. D. Drew, M. S. Fuhrer and L. Hu, Nat. Commun., 2014, 5, 4224 CrossRef CAS PubMed .
  98. F. Xiong, H. Wang, X. Liu, J. Sun, M. Brongersma, E. Pop and Y. Cui, Nano Lett., 2015, 15, 6777–6784 CrossRef CAS PubMed .
  99. C. Wang, Q. He, U. Halim, Y. Liu, E. Zhu, Z. Lin, H. Xiao, X. Duan, Z. Feng, R. Cheng, N. O. Weiss, G. Ye, Y.-C. Huang, H. Wu, H.-C. Cheng, I. Shakir, L. Liao, X. Chen, W. A. Goddard Iii, Y. Huang and X. Duan, Nature, 2018, 555, 231 CrossRef CAS PubMed .
  100. A. C. Arsenault, D. P. Puzzo, I. Manners and G. A. Ozin, Nat. Photonics, 2007, 1, 468 CrossRef CAS .
  101. D. P. Puzzo, A. C. Arsenault, I. Manners and G. A. Ozin, Angew. Chem., Int. Ed., 2009, 48, 943–947 CrossRef CAS PubMed .
  102. S. Jiang, K. Krymowski, T. Asel, M. Q. Arguilla, N. D. Cultrara, E. Yanchenko, X. Yang, L. J. Brillson, W. Windl and J. E. Goldberger, Chem. Mater., 2016, 28, 8071–8077 CrossRef CAS .
  103. C. R. Ryder, J. D. Wood, S. A. Wells, Y. Yang, D. Jariwala, T. J. Marks, G. C. Schatz and M. C. Hersam, Nat. Chem., 2016, 8, 597–602 CrossRef CAS PubMed .
  104. D. Mochizuki, K. Kumagai, M. M. Maitani and Y. Wada, Angew. Chem., Int. Ed., 2012, 51, 5452–5455 CrossRef CAS PubMed .
  105. F. Kishimoto, T. Ano, D. Mochizuki, T. Terauchi, M. M. Maitani, E. Suzuki and Y. Wada, RSC Adv., 2016, 6, 73830–73841 RSC .
  106. B. M. Mosby, A. Diaz and A. Clearfield, Dalton Trans., 2014, 43, 10328–10339 RSC .
  107. D. McManus, S. Vranic, F. Withers, V. Sanchez-Romaguera, M. Macucci, H. Yang, R. Sorrentino, K. Parvez, S.-K. Son, G. Iannaccone, K. Kostarelos, G. Fiori and C. Casiraghi, Nat. Nanotechnol., 2017, 12, 343–350 CrossRef CAS PubMed .
  108. H.-L. Liang, M. M. Bay, R. Vadrucci, C. H. Barty-King, J. Peng, J. J. Baumberg, M. F. L. De Volder and S. Vignolini, Nat. Commun., 2018, 9, 4632 CrossRef PubMed .
  109. M. E. Calvo, O. Sánchez Sobrado, G. Lozano and H. Míguez, J. Mater. Chem., 2009, 19, 3144–3148 RSC .

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