Prediction of Operational Lifetime of Perovskite Light Emitting Diodes by Machine Learning

Author:

Zhang Liang1,Lu Feiyue1,Tao Guanhong2,Li Mengmeng1,Yang Zhen1,Wang Airu1,Zhu Wei1,Cao Yu34,Jin Yizheng5,Zhu Lin16ORCID,Huang Wei347,Wang Jianpu1ORCID

Affiliation:

1. Key Laboratory of Flexible Electronics (KLOFE) Institute of Advanced Materials (IAM) & School of Flexible Electronics (Future Technologies) Nanjing Tech University (NanjingTech) Nanjing 211816 China

2. Chengdu Spaceon Group Co., Ltd. Chengdu 610036 China

3. Strait Laboratory of Flexible Electronics (SLoFE) Fuzhou 350117 China

4. Strait Institute of Flexible Electronics (SIFE, Future Technologies) Fujian Normal University Fuzhou 350117 China

5. Center for Chemistry of High‐Performance and Novel Materials State Key Laboratory of Silicon Materials, and Department of Chemistry Zhejiang University Hangzhou 310058 China

6. State Key Laboratory of Coordination Chemistry Nanjing University Nanjing 210023 China

7. Shaanxi Institute of Flexible Electronics (SIFE) Xi'an Institute of Biomedical Materials & Engineering (IBME) Northwestern Polytechnical University (NPU) Xi'an 710072 China

Abstract

Perovskite light‐emitting diodes (LEDs) with advantages of high electroluminescence efficiency at high brightness, good color purity, and tunable bandgap, are believed to have potential applications in the next generation display and lighting technologies. Due to the complex degradation process, mathematic models to describe the degradation process of perovskite LEDs are absent. In this work, it is found that the mathematical fitting methods which have been widely used to describe the decay trend of organic LEDs and quantum‐dot LEDs, are unable to accurately predict the lifetime of perovskite LEDs. Then an ensemble machine learning model is developed, which utilizes data augmentation technique to predict T50 of perovskite LEDs based on features before T80, achieving an accuracy of 0.995. Furthermore, the model can also accurately predict the T90 lifetime of quantum‐dot LEDs (QLEDs) using features before T98, suggesting it is a useful tool to efficiently evaluate LED lifetimes.

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

Publisher

Wiley

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