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Device Simulation-Based Multiobjective Evolutionary Algorithm for Process Optimization of Semiconductor Solar Cells

机译:基于设备仿真的多目标进化算法在半导体太阳能电池工艺优化中的应用

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摘要

This article implements for the first time a numerical semiconductor device simulation-based multiobjective evolutionary algorithm (MOEA) for the characteristic optimization of amorphous silicon thin-film solar cells, based upon a unified optimization framework (UOF). To calculate the device's characteristic, a set of coupled solar cell transport equations consisting of the Poisson equation, the electron-hole current continuity equations, and the photo-generation model is solved numerically. Electrical characteristics, the short-circuited current, the open-circuited voltage, and the conversion efficiency are calculated to analyze the properties of the explored solar cells. The aforementioned device simulation results are used to evaluate the fitness score and access the evolutionary quality of designing parameters via the implemented non-dominating sorting genetic algorithm (NSGA-II) in the UOF. Notably, designing parameters including the material and structural parameters, and the doping concentrations are simultaneously optimized for the explored solar cells. The simulation-based MOEA methodology is useful in optimal structure design and manufacturing of semiconductor solar cells.
机译:本文首次基于统一优化框架(UOF),实现了基于数值半导体器件仿真的多目标进化算法(MOEA),用于非晶硅薄膜太阳能电池的特性优化。为了计算器件的特性,对由泊松方程,电子-空穴电流连续性方程和光生模型组成的一组耦合的太阳能电池输运方程进行了数值求解。计算电气特性,短路电流,开路电压和转换效率,以分析所探查太阳能电池的特性。前面提到的设备仿真结果用于评估适应性评分,并通过UOF中实施的非支配排序遗传算法(NSGA-II)访问设计参数的进化质量。值得注意的是,同时针对所探索的太阳能电池优化包括材料和结构参数的设计参数以及掺杂浓度。基于仿真的MOEA方法论可用于半导体太阳能电池的最佳结构设计和制造。

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