Shunwen Baia,
Xiuheng Wanga,
Xuedong Zhangb,
Xinyue Zhaoa and
Nanqi Ren*a
aState Key Laboratory of Urban Water Resource and Environment, School of Environment, Harbin Institute of Technology, Harbin 150090, China. E-mail: rnq@hit.edu.cn; baishunwen@163.com; Fax: +86-04516282099; Tel: +86-04516282099
bSection Sanitary Engineering, Department of Water Management, Delft University of Technology, Stevinweg 1, 2628CN, Delft, The Netherlands
First published on 17th May 2017
This present study aims to analyze the differences in results of different site-directional life cycle assessment (LCA) methods applied in the field of wastewater treatment. Site-generic methods were employed and compared with China-specific methods on a full-scale wastewater treatment case. A set of Chinese normalized factors were developed and employed to compare with world normalization factors. No substantial discrepancies in results were obtained from the two different sets of normalization factors. In the phase of life cycle impact assessment, the e-Balance showed substantial discrepancies in results, compared with the CML method that is widely applied in LCA. The discrepancies were mainly attributed to the cause that in e-Balance more emphasis is on regional water pollution potential (that is: chemical oxygen demand (COD) as an independent impact category). Moreover, discrepancies in the results were also investigated by applying different site-directional weighting methods. Besides the specific locations where the weighting methods were designed for, this study showed that employing different environmental indicators in impact categories was another important factor that resulted in differences in the LCA results of the different weighting methods.
In wastewater treatment, this method can be used to evaluate the impacts of the changes that are happening or will happen.6–16 For example, the related LCA studies include the improvement of the operation of municipal wastewater plant (WWTP),17 the comparison of alternative wastewater sludge treatment systems, and the development of technologies for wastewater recycling.18 Nowadays, due to the stringent regulations for pollutants removal in WWTPs, LCA results are conductive to and needed to compare the environmental effects of different control strategies that aim to reduce emissions of pollutants.19
Intensive LCA studies have been carried out in wastewater treatment. However, most of the studies applied only one type of LCA methods to carry out the trade-off analysis to obtain suggestions and further provide guidance from the LCA results. Different methods have been developed in various LCA steps,20–25 but few LCA studies in wastewater treatment explained why a specific method was chosen. Furthermore, little attention was given to the influence of the chosen LCA methods on the results and the comparisons among the methods. In the study of Ortiz et al. (2007), three methods (CML 2000, Eco-Points 97, Eco-Indicator 99) were employed, but no comparative discussions concerning influence of methods were addressed. Only Renou et al. (2008) studied the influence of method selection in a case study of a full-scale WWTP. The authors concluded that no substantial discrepancies in results were observed within impact categories representing global environmental impact, while a great variation was generated by various LCIA methodologies associated with the categories of toxic impact. It should be noted that for wastewater treatment the scenarios have direct impacts on the regional environments. Different site-directional LCA methods (the methods engaging different regions) may have different influences on the final LCA results. However, the study of Renou et al. (2008) did not take it into account. Some site-specific eutrophication characterization methods have been developed to characterize the regional effect of nutrients into LCA calculation framework,26–30 including the site-specific factors for eutrophication potential, the fate model for phosphorus emissions on different scales, and the spatially differentiated factors with respect to different emission sources. However, no comparative studies were performed for these site-specific methods (the methods engaging specific regions) to examine how and to what extent these methods would generate results and the results vary with the site-generic methods (the methods engaging no specific regions). Additionally, these site-specific methods all focused on the eutrophication potential, but eutrophication was not the single reason why contaminated aquatic environment was formed.
The aim of this study was to systematically compare the results from the site-generic LCA methods and the China-specific LCA methods (the methods engaging specific China context) in terms of normalization factors, LCIA methods, and weighting methods on a full-scale Chinese wastewater treatment case. Firstly, a set of normalization factors were developed for China context, and a comparative study was performed to explore whether different site-directional normalization factors would produce discrepancies in results. Secondly, a site-generic LCIA method (CML) and a China-specific LCIA method (e-Balance) were selected to carry out the comparison to examine the differences in outputs generated from the methods. Thirdly, different site-directional weighting methods were compared using BEES, EPS and EDIP as the site-generic weighting approaches and ECER-115, ECER-125 and ISCP-2009 as the China-specific weighting approaches.
Characterization results calculated by CML method were normalized with the NFworld and ChNE, respectively (Table S3†). Using BEES as weighting method, normalization results were aggregated and similar comparative assessments were generated for the overall results obtained from both NFworld (Fig. 1a) and ChNE (Fig. 1b). Both the total impact results indicated that raw wastewater (scenario-4) had the lowest total environmental impact despite that the effect of eutrophication potential was higher than other scenarios. Although scenario-1 had the highest total impact results, the contribution of impact categories to the total impact results presented different change trends. With the increase of treatment levels from scenario-4 to scenario-1, indicators of GW, FAET, ADF and HT became more dominated in the overall results (Fig. 1a), accounting for 43.27%, 17.11%, 12.22% and 6.88% in scenario-1, compared with 2.16%, 5.92%, 0.92% and 1.07% in scenario-4. However, FAET was the only dominant indicator increasing with the changes of the scenarios (Fig. 1b), from 28.41% (scenario-4) to 82.26% (scenario-1).
Different comparative results occurred between CML method (Fig. 1b) and e-Balance method (Fig. 1c), with the same normalization factor (ChNE) and weighting method (BEES). The results from e-Balance showed that scenario-4 had the highest aggregated score, indicating the highest total environmental impact which was opposite to the indication from results of CML. The substantial difference probably resulted from setting COD as an independent category in e-Balance, which could explain why the result of scenario-4 from e-Balance was 1.1 times higher than that from CML. When analyzing the contribution of main substances to eutrophication potential or water pollution potential (shown in Fig. 2), the COD in an independent category plus COD in eutrophication accounted totally for 62.0% in the aggregated score of scenario-4 from e-Balance, while COD only contributed to 20.25% of aggregated score of scenario-4 from CML. As for scenario-1, Fig. 1c showed the lowest aggregated score, suggesting that tertiary treatment had the lowest total environmental implication. This was significantly different from the implication of Fig. 1b. The main reason for the difference was lack of FAET category in e-Balance calculation, which would underestimate the negative environmental impact caused by the upgrading of treatment levels.
Fig. 2 Analysis of the contribution of the main substances involved in normalization results of eutrophication potential (CML) and water pollution potential (e-Balance). |
With the same CML method and ChNE, different weighting methods were employed and investigated to examine how they would impact the final results of the CML and ChNE (Table S4†). Similar comparative results using weighting methods of EPA and BEES were obtained (Fig. 3, EPA and BEES). That is, scenario-4 with the lowest ranking and scenario-1 with the highest ranking. During the increase of treatment levels, GW became the major contributor for both methods: 28.38% in scenario-1 and 27.88% in scenario-2 for the EPA method; 43.27% in scenario-1 and 41.99% scenario-2 for the BEES method. Using the EDIP method, however, different overall results were obtained. Scenario-4 presented the highest result and scenario-2 had the lowest result (Fig. 3, EDIP).
Fig. 3 Aggregated weighting results (representing total environmental impacts) from methods of EPA, BEES, EDIP, ecer-115, ECER-125 and ISCP-2009. |
By applying China-specific weighting methods, similar or comparable results with the EDIP method were harvested (Fig. 3, ECER-115, ECER-125 and ISCP-2009). COD was the main contributor to scenario-4 for both ECER-115 and ECER-125 methods, with the average percentage more than 96%. Accompanying the increase of treatment levels to scenario-1, GW accounted for the overall impact was also increased to more than 40% when the ECER-115 method was applied, whereas ADF and GW accounted for more than 34% using the ECER-125 as weighting method.
Synthesized factors were obtained from the following calculation to perform comparative estimates of total impact and eutrophication effect with the changes of scenarios under different weighting methods. With each weighting method, quantitative differences of weighting results among scenarios were calculated as follows:
(1) |
Eutroi,i−1 = WRi−1,E − WRi,E | (2) |
Synthesized factors were calculated as follows:
(3) |
(4) |
The synthesized factors of eutrophication potential showed the similar results among all the weighting methods. The shift from scenario-4 to scenario-3 seemed to be the most desirable paradigm changing in terms of wastewater control only. For synthesized factors of total impact, the shift from scenario-4 to scenario-3 showed the maximum environmental burden in results of EPA (Fig. 4A) and BEES (Fig. 4B), but the maximum environmental benefit in all three China-specific weighting methods (Fig. 4D–F). All the weighting methods demonstrated that increasing levels from scenario-2 to scenario-1 would generate negative total environmental impacts, with synthesized factors ranging from −0.11 to −0.82. With respect to the change from scenario-3 to scenario-2, the synthesized factors of EPA, BEES and EDIP exhibited the highest positive environmental implication, and all three China-specific methods also showed positive values around 0.13 to 0.15.
Fig. 4 Comparative estimates of total impact and eutrophication effect: (A) EPA; (B) BEES; (C) EDIP; (D) ECER-115; (E) ECER-125; (F) ISCP-2009. |
Moreover, the choice of LCIA method and weighting methods did affect the final outcome. In particular with applying the LCA methods in combination with the weighting methods, the most substantial difference was the ranking of scenario-4: the lowest for site-generic methods, but the highest for the China-specific methods. With respect to the scenario-4 that represented the situation of discharging wastewater directly into local water bodies without any treatment, the lowest overall result meant that this situation had the most desirable total environmental implication and any levels of wastewater treatment would diminish the total environmental quality. This implication was largely against our common sense that the emission of raw wastewater would cause severe water pollution and ecological perturbation. If we assume the lowest overall result of scenario-4 as the abnormal LCA result, the application of China-specific LCIA methods or weighting methods in this sense would make the LCA results more reasonable and applicable.
COD being defined as an independent category was identified as the major cause that the result of scenario-4 for e-Balance was higher than CML. Traditionally in LCA scientific background, COD was only considered as a contributor to eutrophication potential. Under the circumstance, nitrogen or phosphorus was often regarded as the limiting factor to the potential growth of alga, while the contribution of COD was insignificant. In fact, it was the potential depletion of oxygen that was measured to quantify eutrophication potential in LCA characterization models. However, besides eutrophication, another type of water pollution causing depletion of oxygen is the growth of bacteria in receiving waters. The released organic matter in wastewater can trigger the growth of bacteria, and the bacterial metabolic activity would consume large quantity of dissolved oxygen. Once the environmental capacity was not enough to contain the organic matter, it would results in severely contaminated state of the receiving waters. Integration of this type of water pollution to LCA assessing framework (i.e., setting COD as an independent category) is one possible approach. This addition of COD category needs to be determined according to the specific conditions of LCA case analysis. The design of e-Balance categories was on the basis of Chinese practice, and thereby seemingly the application of e-Balance obtained a more reasonable LCA overall result.
Regarding the weighting methods, although using China-specific methods different results were obtained with site-generic methods (EPA and BEES), the results of EDIP were similar with those of ECER-115, ECER-125 and ISCP-2009. The similarity means where the weighting methods stood for was not the only factor affecting the final LCA results. The common features between EDIP and China-specific methods were that the impact category of FAET was not included into the weighting factors. The lack of FAET category would make the contribution of other impact categories relatively higher, for example the contribution of E to scenario-4 shown in Fig. 1c, and lead to the relatively less negative environmental impact caused by the increase of treatment levels. There was one similarity in the final results between China-specific methods and site-generic methods. Regarding the scenario shift from scenario-2 to scenario-1, all results showed negative synthesized factors, indicating that the upgradation from intermediate treatment to tertiary treatment would not be recommended by all the weighting results, no matter which weighting methods were used.
The application of China-specific LCIA method and weighting methods has been demonstrated to be able to obtain quite different LCA results associated with different implications, compared with site-generic LCA methods. The key feature relevant to wastewater treatment case was the direct impact of pollutants on local aquatic environment, which means that the site-generic results of generic LCA were likely not enough to obtain reasonable assessment results. The effect of aquatic pollutants on regional environment was influenced by many factors such as the emission point, the water temperature, the self-cleaning ability of receiving waters, et cetera. In future, more region-specific characterization models are needed to consider the migration and transformation of water pollutants and to characterize the accurate effect on local aquatic environment. Moreover, weighting factors for Chinese LCA application need to be further developed based on societal preferences as a whole and the national average indexes need to be considered in the design of weighting factors. Thereby, the LCA practitioner can apply them in a wide range of products and service.
Footnote |
† Electronic supplementary information (ESI) available. See DOI: 10.1039/c7ra01016h |
This journal is © The Royal Society of Chemistry 2017 |