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Using Deep Machine Learning to Understand the Physical Performance Bottlenecks in Novel Thin-Film Solar Cells

机译:使用深度机器学习了解新型薄膜太阳能电池的物理性能瓶颈

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摘要

There is currently a worldwide effort to develop materials for solar energy harvesting which are efficient and cost effective, and do not emit significant levels of CO2 during manufacture. When a researcher fabricates a novel device from a novel material system, it often takes many weeks of experimental effort and data analysis to understand why any given device/material combination produces an efficient or poorly optimized cell. It therefore takes the community tens of years to transform a promising material system to a fully optimized cell ready for production (perovskites are a contemporary example). Herein, developed is a new and rapid approach to understanding device/material performance, which uses a combination of machine learning, device modeling, and experiment. Providing a set of electrical device parameters (charge carrier mobilities, recombination rates, trap densities, etc.) in a matter of seconds thus offers a fast way to directly link fabrication conditions to device/material performance, pointing a way to further and more rapid optimization of light harvesting devices. The method is demonstrated by using it to understand annealing temperature and surfactant choice and in terms of charge carrier dynamics in organic solar cells made from the P3HT:PCBM, PBTZT-stat-BDTT-8:PCBM, and PTB7:PCBM material systems.
机译:当前,世界范围内正在努力开发用于太阳能收集的材料,该材料有效且具有成本效益,并且在制造过程中不会排放大量的二氧化碳。当研究人员从新颖的材料系统制造新颖的设备时,通常需要花费数周的实验工作和数据分析才能了解为什么任何给定的设备/材料组合都会产生有效的或优化效果差的电池。因此,社区需要数十年的时间才能将有前途的材料系统转换为可用于生产的完全优化的单元(钙钛矿就是一个现代示例)。本文中,开发了一种新的快速了解设备/材料性能的方法,该方法结合了机器学习,设备建模和实验的功能。只需几秒钟即可提供一组电气设备参数(电荷载流子迁移率,复合率,陷阱密度等),从而提供了一种直接将制造条件与设备/材料性能直接联系起来的快速方法,为进一步更快地发展指明了道路优化光收集设备。通过使用该方法可以了解退火温度和表面活性剂的选择,并可以了解由P3HT:PCBM,PBTZT-stat-BDTT-8:PCBM和PTB7:PCBM材料系统制成的有机太阳能电池中的载流子动力学,从而证明了该方法。

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