Accelerated design of AgNbO3-based ceramics with high energy storage performance via machine learning†
Abstract
Silver niobate-based lead-free antiferroelectric (AFE) ceramics exhibit tremendous potential in energy storage applications, but large-scale experimental investigations are always required to achieve high performance. In this work, we employed a machine learning method to accelerate the development of high-performance AgNbO3-based AFE ceramics using the (Ag1−x−3y−4z−3m−3n−3tNaxLayCezNdmSmnTbt)(Nb1−sTas)O3 component system as a representative, in which supporting vector regression with the radial basis function kernel model and lowest cross-validation error was assigned as the preferred machine learning model. Based on the predicted outcomes, the highest recoverable energy storage density of 7.0 J cm−3 was successfully achieved in the (Ag0.94Sm0.02)(Nb0.6Ta0.4)O3 ceramic experimentally, which was close to its predicted value of 6.76 ± 0.55 J cm−3, indicating the good reliability of this machine learning technique. Moreover, the (Ag0.94Sm0.02)(Nb0.6Ta0.4)O3 ceramic exhibited excellent temperature, frequency and cycling stabilities, thereby possessing outstanding practical application potential. This study exhibits a paradigm for the rapid achievement of a good energy storage performance in AgNbO3-based and other related materials through the employment of machine learning techniques.
- This article is part of the themed collection: Journal of Materials Chemistry C HOT Papers