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Machine Learning Approach to Delineate the Impact of Material Properties on Solar Cell Device Physics

[Image: see text] In this research, solar cell capacitance simulator-one-dimensional (SCAPS-1D) software was used to build and probe nontoxic Cs-based perovskite solar devices and investigate modulations of key material parameters on ultimate power conversion efficiency (PCE). The input material par...

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Autores principales: Islam, Md. Shafiqul, Islam, Md. Tohidul, Sarker, Saugata, Jame, Hasan Al, Nishat, Sadiq Shahriyar, Jani, Md. Rafsun, Rauf, Abrar, Ahsan, Sumaiyatul, Shorowordi, Kazi Md., Efstathiadis, Harry, Carbonara, Joaquin, Ahmed, Saquib
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2022
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9260917/
https://www.ncbi.nlm.nih.gov/pubmed/35811908
http://dx.doi.org/10.1021/acsomega.2c01076
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author Islam, Md. Shafiqul
Islam, Md. Tohidul
Sarker, Saugata
Jame, Hasan Al
Nishat, Sadiq Shahriyar
Jani, Md. Rafsun
Rauf, Abrar
Ahsan, Sumaiyatul
Shorowordi, Kazi Md.
Efstathiadis, Harry
Carbonara, Joaquin
Ahmed, Saquib
author_facet Islam, Md. Shafiqul
Islam, Md. Tohidul
Sarker, Saugata
Jame, Hasan Al
Nishat, Sadiq Shahriyar
Jani, Md. Rafsun
Rauf, Abrar
Ahsan, Sumaiyatul
Shorowordi, Kazi Md.
Efstathiadis, Harry
Carbonara, Joaquin
Ahmed, Saquib
author_sort Islam, Md. Shafiqul
collection PubMed
description [Image: see text] In this research, solar cell capacitance simulator-one-dimensional (SCAPS-1D) software was used to build and probe nontoxic Cs-based perovskite solar devices and investigate modulations of key material parameters on ultimate power conversion efficiency (PCE). The input material parameters of the absorber Cs-perovskite layer were incrementally changed, and with the various resulting combinations, 63,500 unique devices were formed and probed to produce device PCE. Versatile and well-established machine learning algorithms were thereafter utilized to train, test, and evaluate the output dataset with a focused goal to delineate and rank the input material parameters for their impact on ultimate device performance and PCE. The most impactful parameters were then tuned to showcase unique ranges that would ultimately lead to higher device PCE values. As a validation step, the predicted results were confirmed against SCAPS simulated results as well, highlighting high accuracy and low error metrics. Further optimization of intrinsic material parameters was conducted through modulation of absorber layer thickness, back contact metal, and bulk defect concentration, resulting in an improvement in the PCE of the device from 13.29 to 16.68%. Overall, the results from this investigation provide much-needed insight and guidance for researchers at large, and experimentalists in particular, toward fabricating commercially viable nontoxic inorganic perovskite alternatives for the burgeoning solar industry.
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spelling pubmed-92609172022-07-08 Machine Learning Approach to Delineate the Impact of Material Properties on Solar Cell Device Physics Islam, Md. Shafiqul Islam, Md. Tohidul Sarker, Saugata Jame, Hasan Al Nishat, Sadiq Shahriyar Jani, Md. Rafsun Rauf, Abrar Ahsan, Sumaiyatul Shorowordi, Kazi Md. Efstathiadis, Harry Carbonara, Joaquin Ahmed, Saquib ACS Omega [Image: see text] In this research, solar cell capacitance simulator-one-dimensional (SCAPS-1D) software was used to build and probe nontoxic Cs-based perovskite solar devices and investigate modulations of key material parameters on ultimate power conversion efficiency (PCE). The input material parameters of the absorber Cs-perovskite layer were incrementally changed, and with the various resulting combinations, 63,500 unique devices were formed and probed to produce device PCE. Versatile and well-established machine learning algorithms were thereafter utilized to train, test, and evaluate the output dataset with a focused goal to delineate and rank the input material parameters for their impact on ultimate device performance and PCE. The most impactful parameters were then tuned to showcase unique ranges that would ultimately lead to higher device PCE values. As a validation step, the predicted results were confirmed against SCAPS simulated results as well, highlighting high accuracy and low error metrics. Further optimization of intrinsic material parameters was conducted through modulation of absorber layer thickness, back contact metal, and bulk defect concentration, resulting in an improvement in the PCE of the device from 13.29 to 16.68%. Overall, the results from this investigation provide much-needed insight and guidance for researchers at large, and experimentalists in particular, toward fabricating commercially viable nontoxic inorganic perovskite alternatives for the burgeoning solar industry. American Chemical Society 2022-06-22 /pmc/articles/PMC9260917/ /pubmed/35811908 http://dx.doi.org/10.1021/acsomega.2c01076 Text en © 2022 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by-nc-nd/4.0/Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Islam, Md. Shafiqul
Islam, Md. Tohidul
Sarker, Saugata
Jame, Hasan Al
Nishat, Sadiq Shahriyar
Jani, Md. Rafsun
Rauf, Abrar
Ahsan, Sumaiyatul
Shorowordi, Kazi Md.
Efstathiadis, Harry
Carbonara, Joaquin
Ahmed, Saquib
Machine Learning Approach to Delineate the Impact of Material Properties on Solar Cell Device Physics
title Machine Learning Approach to Delineate the Impact of Material Properties on Solar Cell Device Physics
title_full Machine Learning Approach to Delineate the Impact of Material Properties on Solar Cell Device Physics
title_fullStr Machine Learning Approach to Delineate the Impact of Material Properties on Solar Cell Device Physics
title_full_unstemmed Machine Learning Approach to Delineate the Impact of Material Properties on Solar Cell Device Physics
title_short Machine Learning Approach to Delineate the Impact of Material Properties on Solar Cell Device Physics
title_sort machine learning approach to delineate the impact of material properties on solar cell device physics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9260917/
https://www.ncbi.nlm.nih.gov/pubmed/35811908
http://dx.doi.org/10.1021/acsomega.2c01076
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