LGMar 29, 2024

General Machine Learning Models for Interpreting and Predicting Efficiency Degradation in Organic Solar Cells

arXiv:2404.00173v34 citationsh-index: 18Expert syst appl
Originality Synthesis-oriented
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This work addresses the need for reliable prediction of degradation in organic solar cells, which is crucial for improving their performance and stability in renewable energy applications, though it is incremental as it applies existing ML methods to a specific dataset.

The authors tackled the problem of predicting efficiency degradation in organic solar cells by developing machine learning models that achieved high accuracy, with R2 values exceeding 0.90 and errors like RMSE around 1% of the target value, and validated models for unseen data reached R2 of 0.96-0.97.

This work presents a set of optimal machine learning (ML) models to represent the temporal degradation suffered by the power conversion efficiency (PCE) of polymeric organic solar cells (OSCs) with a multilayer structure ITO/PEDOT:PSS/P3HT:PCBM/Al. To that aim, we generated a database with 996 entries, which includes up to 7 variables regarding both the manufacturing process and environmental conditions for more than 180 days. Then, we relied on a software framework that brings together a conglomeration of automated ML protocols that execute sequentially against our database by simply command-line interface. This easily permits hyper-optimizing and randomizing seeds of the ML models through exhaustive benchmarking so that optimal models are obtained. The accuracy achieved reaches values of the coefficient determination (R2) widely exceeding 0.90, whereas the root mean squared error (RMSE), sum of squared error (SSE), and mean absolute error (MAE)>1% of the target value, the PCE. Additionally, we contribute with validated models able to screen the behavior of OSCs never seen in the database. In that case, R2~0.96-0.97 and RMSE~1%, thus confirming the reliability of the proposal to predict. For comparative purposes, classical Bayesian regression fitting based on non-linear mean squares (LMS) are also presented, which only perform sufficiently for univariate cases of single OSCs. Hence they fail to outperform the breadth of the capabilities shown by the ML models. Finally, thanks to the standardized results offered by the ML framework, we study the dependencies between the variables of the dataset and their implications for the optimal performance and stability of the OSCs. Reproducibility is ensured by a standardized report altogether with the dataset, which are publicly available at Github.

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