Machine Learning Prediction of Perovskite Solar Cell Propertiesunder High Pressure
POSTER
Abstract
Halide perovskites are promising solar cell materials due to their suitable bandgap range and high tunability. However, materials based on the organic-inorganic (MA)PbI3 (MA = CH3NH3+) suffer a chemical instability issue to heat and moisture due to the volatile MA cation, while the all-inorganic Cs-based analogs present a phase instability challenge where the functional perovskite phases are unstable at ambient conditions and spontaneously convert into the thermodynamically stable non-perovskite phase. Therefore, stabilizing the perovskite phases at room conditions is crucial to achieving higher efficiency and commercialization. Tuning the structure by applying pressure and strain is an effective way to modify the stability and electrical properties of perovskite phases. In this work, we investigate the leading structural features that determine the material properties of the perovskites upon compression. We use various machine learning models to train the large-scale dataset obtained from first-principles DFT calculations. This study will provide insights into developing general models to predict the relationship between structural and electrical properties of similar perovskite structures using cost-effective machine learning approaches.
Presenters
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Minkyung Han
Stanford University
Authors
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Minkyung Han
Stanford University
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Chunjing Jia
University of Florida
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Yu Lin
SLAC National Accelerator Laboratory
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Cheng Peng
SLAC, SLAC National Accelerator Laboratory
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Feng Ke
Stanford University
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Youssef Nashed
SLAC National Accelerator Laboratory