Machine Learning Enables Prediction of Halide Perovskites' Optical Behavior with >90% Accuracy.
Meghna SrivastavaAbigail R HeringYu AnJuan Pablo Correa BaenaMarina S LeitePublished in: ACS energy letters (2023)
The composition-dependent degradation of hybrid organic-inorganic perovskites (HOIPs) due to environmental stressors still precludes their commercialization. It is very difficult to quantify their behavior upon exposure to each stressor by exclusively using trial-and-error methods due to the high-dimensional parameter space involved. We implement machine learning (ML) models using high-throughput, in situ photoluminescence (PL) to predict the response of Cs y FA 1- y Pb(Br x I 1- x ) 3 while exposed to relative humidity cycles. We quantitatively compare three ML models while generating forecasts of environment-dependent PL responses: linear regression, echo state network, and seasonal autoregressive integrated moving average with exogenous regressor algorithms. We achieve accuracy of >90% for the latter, while tracking PL changes over a 50 h window. Samples with 17% of Cs content consistently showed a PL increase as a function of cycle. Our precise time-series forecasts can be extended to other HOIP families, illustrating the potential of data-centric approaches to accelerate material development for clean-energy devices.
Keyphrases
- machine learning
- big data
- high throughput
- artificial intelligence
- solar cells
- deep learning
- high resolution
- clinical trial
- human health
- quantum dots
- heavy metals
- electronic health record
- phase iii
- single cell
- high speed
- phase ii
- risk assessment
- magnetic resonance imaging
- computed tomography
- data analysis
- energy transfer