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Optimisation of GaN LEDs and the reduction of efficiency droop using active machine learning

机译:利用主动机器学习优化GaN LED并降低效率下降

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摘要

A fundamental challenge in the design of LEDs is to maximise electro-luminescence efficiency at high current densities. We simulate GaN-based LED structures that delay the onset of efficiency droop by spreading carrier concentrations evenly across the active region. Statistical analysis and machine learning effectively guide the selection of the next LED structure to be examined based upon its expected efficiency as well as model uncertainty. This active learning strategy rapidly constructs a model that predicts Poisson-Schrödinger simulations of devices, and that simultaneously produces structures with higher simulated efficiencies.
机译:LED设计的基本挑战是在高电流密度下最大化电致发光效率。我们模拟了基于GaN的LED结构,该结构通过在整个有源区均匀分布载流子浓度来延迟效率下降的开始。统计分析和机器学习可根据其预期效率以及模型不确定性有效地指导选择下一个要检查的LED结构。这种主动的学习策略可以快速构建一个模型,该模型可以预测设备的Poisson-Schrödinger仿真,并同时生成具有更高仿真效率的结构。

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