TY - JOUR
T1 - Enhancing precision in PANI/Gr nanocomposite design
T2 - Robust machine learning models, outlier resilience, and molecular input insights for superior electrical conductivity and gas sensing performance
AU - Boublia, Abir
AU - Guezzout, Zahir
AU - Haddaoui, Nacerddine
AU - Badawi, Michael
AU - Darwish, Ahmad S.
AU - Lemaoui, Tarek
AU - Banat, Fawzi
AU - Yadav, Krishna Kumar
AU - Jeon, Byong Hun
AU - Elboughdiri, Noureddine
AU - Benguerba, Yacine
AU - Al Nashef, Inas M.
N1 - Publisher Copyright:
© 2023 Royal Society of Chemistry. All rights reserved.
PY - 2023/12/11
Y1 - 2023/12/11
N2 - This study employs various machine learning algorithms to model the electrical conductivity and gas sensing responses of polyaniline/graphene (PANI/Gr) nanocomposites based on a comprehensive dataset gathered from over 100 references. Artificial neural networks (ANNs) demonstrated superior predictive accuracy among the models. The investigation delves into identifying and mitigating outliers, both structural and response-related, showcasing the robustness of the proposed ANN models. The study emphasizes the critical role of applicability domain (AD) analysis in evaluating model reliability. Results indicate high accuracy for electrical conductivity (RMSE: 0.408, R2: 0.984) and gas sensing responses for ammonia, toluene, and benzene gases (RMSE: 0.350, 0.232, and 0.081, R2: 0.967, 0.983, and 0.976, respectively). Input contribution analysis highlights key parameters influencing performance. The s-profiles of additives emerge as significant contributors, emphasizing the importance of molecularinput understanding in machine learning models. These findings contribute to developing highperformance PANI/Gr nanocomposites with implications for diverse applications like supercapacitors, gas sensors, and energy storage devices. The study underscores the need for further research to deepen the understanding of molecular inputs impact on PANI/Gr system performance, enabling more precise material design.
AB - This study employs various machine learning algorithms to model the electrical conductivity and gas sensing responses of polyaniline/graphene (PANI/Gr) nanocomposites based on a comprehensive dataset gathered from over 100 references. Artificial neural networks (ANNs) demonstrated superior predictive accuracy among the models. The investigation delves into identifying and mitigating outliers, both structural and response-related, showcasing the robustness of the proposed ANN models. The study emphasizes the critical role of applicability domain (AD) analysis in evaluating model reliability. Results indicate high accuracy for electrical conductivity (RMSE: 0.408, R2: 0.984) and gas sensing responses for ammonia, toluene, and benzene gases (RMSE: 0.350, 0.232, and 0.081, R2: 0.967, 0.983, and 0.976, respectively). Input contribution analysis highlights key parameters influencing performance. The s-profiles of additives emerge as significant contributors, emphasizing the importance of molecularinput understanding in machine learning models. These findings contribute to developing highperformance PANI/Gr nanocomposites with implications for diverse applications like supercapacitors, gas sensors, and energy storage devices. The study underscores the need for further research to deepen the understanding of molecular inputs impact on PANI/Gr system performance, enabling more precise material design.
UR - http://www.scopus.com/inward/record.url?scp=85181719048&partnerID=8YFLogxK
U2 - 10.1039/d3ta06385b
DO - 10.1039/d3ta06385b
M3 - Article
AN - SCOPUS:85181719048
SN - 2050-7488
VL - 12
SP - 2209
EP - 2236
JO - Journal of Materials Chemistry A
JF - Journal of Materials Chemistry A
IS - 4
ER -