Forecasting meteorological impacts on the environmental sustainability of a large-scale solar plant via artificial intelligence-based life cycle assessment

Although large-scale solar (LSS) is a promising renewable energy technology, it causes adverse impacts on the ecosystem, human health, and resource depletion throughout its upstream (i.e., raw material extraction to solar panel production) and downstream (i.e., plant demolition and waste management)...

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Published in:SCIENCE OF THE TOTAL ENVIRONMENT
Main Authors: Wan, Martin Jianyuan; Phuang, Zhen Xin; Hoy, Zheng Xuan; Dahlan, Nofri Yenita; Azmi, Azlin Mohd; Woon, Kok Sin
Format: Article; Early Access
Language:English
Published: ELSEVIER 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001134171500001
author Wan
Martin Jianyuan; Phuang
Zhen Xin; Hoy
Zheng Xuan; Dahlan
Nofri Yenita; Azmi
Azlin Mohd; Woon
Kok Sin
spellingShingle Wan
Martin Jianyuan; Phuang
Zhen Xin; Hoy
Zheng Xuan; Dahlan
Nofri Yenita; Azmi
Azlin Mohd; Woon
Kok Sin
Forecasting meteorological impacts on the environmental sustainability of a large-scale solar plant via artificial intelligence-based life cycle assessment
Environmental Sciences & Ecology
author_facet Wan
Martin Jianyuan; Phuang
Zhen Xin; Hoy
Zheng Xuan; Dahlan
Nofri Yenita; Azmi
Azlin Mohd; Woon
Kok Sin
author_sort Wan
spelling Wan, Martin Jianyuan; Phuang, Zhen Xin; Hoy, Zheng Xuan; Dahlan, Nofri Yenita; Azmi, Azlin Mohd; Woon, Kok Sin
Forecasting meteorological impacts on the environmental sustainability of a large-scale solar plant via artificial intelligence-based life cycle assessment
SCIENCE OF THE TOTAL ENVIRONMENT
English
Article; Early Access
Although large-scale solar (LSS) is a promising renewable energy technology, it causes adverse impacts on the ecosystem, human health, and resource depletion throughout its upstream (i.e., raw material extraction to solar panel production) and downstream (i.e., plant demolition and waste management) processes. The LSS operational performance also fluctuates due to meteorological conditions, leading to uncertainty in electricity generation and raising concerns about its overall environmental performance. Hitherto, there has been no evidence backed study that evaluates the ecological sustainability of LSS with the consideration of meteorological uncertainties. In this study, a novel integrated Life Cycle Assessment (LCA) and Artificial Neural Network (ANN) framework is developed to forecast the meteorological impacts on LSS's electricity generation and its life cycle environmental sustainability. For LCA, 18 impact categories and three damage categories are characterised and assessed by ReCiPe 2016 via SimaPro v. 9.1. For ANN, a feedforward neural network is applied via Neural Designer 5.9.3. Taking an LSS plant in Malaysia as a case study, the photovoltaic panel production stage contributes the highest environmental impact in LSS (30 % of human health, 30 % of ecosystem quality, and 34 % of resource scarcity). Aluminium recycling reduces by 10 % for human health, 10 % for ecosystem quality, and 9 % for resource scarcity. The emissions avoided by the forecasted LSS-generated electricity offset the environmental burden for human health, ecosystem quality, and resource scarcity 12-68 times, 13-73 times, and 18-98 times, respectively. The developed ANN-LCA framework can provide LSS stakeholders with data-backed insights to effectively design an environmentally conscious LSS facility, considering meteorological influences.
ELSEVIER
0048-9697
1879-1026
2024
912

10.1016/j.scitotenv.2023.168779
Environmental Sciences & Ecology

WOS:001134171500001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001134171500001
title Forecasting meteorological impacts on the environmental sustainability of a large-scale solar plant via artificial intelligence-based life cycle assessment
title_short Forecasting meteorological impacts on the environmental sustainability of a large-scale solar plant via artificial intelligence-based life cycle assessment
title_full Forecasting meteorological impacts on the environmental sustainability of a large-scale solar plant via artificial intelligence-based life cycle assessment
title_fullStr Forecasting meteorological impacts on the environmental sustainability of a large-scale solar plant via artificial intelligence-based life cycle assessment
title_full_unstemmed Forecasting meteorological impacts on the environmental sustainability of a large-scale solar plant via artificial intelligence-based life cycle assessment
title_sort Forecasting meteorological impacts on the environmental sustainability of a large-scale solar plant via artificial intelligence-based life cycle assessment
container_title SCIENCE OF THE TOTAL ENVIRONMENT
language English
format Article; Early Access
description Although large-scale solar (LSS) is a promising renewable energy technology, it causes adverse impacts on the ecosystem, human health, and resource depletion throughout its upstream (i.e., raw material extraction to solar panel production) and downstream (i.e., plant demolition and waste management) processes. The LSS operational performance also fluctuates due to meteorological conditions, leading to uncertainty in electricity generation and raising concerns about its overall environmental performance. Hitherto, there has been no evidence backed study that evaluates the ecological sustainability of LSS with the consideration of meteorological uncertainties. In this study, a novel integrated Life Cycle Assessment (LCA) and Artificial Neural Network (ANN) framework is developed to forecast the meteorological impacts on LSS's electricity generation and its life cycle environmental sustainability. For LCA, 18 impact categories and three damage categories are characterised and assessed by ReCiPe 2016 via SimaPro v. 9.1. For ANN, a feedforward neural network is applied via Neural Designer 5.9.3. Taking an LSS plant in Malaysia as a case study, the photovoltaic panel production stage contributes the highest environmental impact in LSS (30 % of human health, 30 % of ecosystem quality, and 34 % of resource scarcity). Aluminium recycling reduces by 10 % for human health, 10 % for ecosystem quality, and 9 % for resource scarcity. The emissions avoided by the forecasted LSS-generated electricity offset the environmental burden for human health, ecosystem quality, and resource scarcity 12-68 times, 13-73 times, and 18-98 times, respectively. The developed ANN-LCA framework can provide LSS stakeholders with data-backed insights to effectively design an environmentally conscious LSS facility, considering meteorological influences.
publisher ELSEVIER
issn 0048-9697
1879-1026
publishDate 2024
container_volume 912
container_issue
doi_str_mv 10.1016/j.scitotenv.2023.168779
topic Environmental Sciences & Ecology
topic_facet Environmental Sciences & Ecology
accesstype
id WOS:001134171500001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001134171500001
record_format wos
collection Web of Science (WoS)
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