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Using a Novel Transfer Learning Method for Designing Thin Film Solar Cells with Enhanced Quantum Efficiencies

机译:使用新颖的转移学习方法设计具有增强量子效率的薄膜太阳能电池

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摘要

In this study a new method for design optimization is proposed that is based on “transfer learning”. The proposed framework improves the accuracy and efficiency of surrogate-based optimization. A surrogate model is an approximation to a costly black-box function that can be used for more efficient search of optimal points. When design specifications change, the objective function changes too. Therefore, there is a need for a new surrogate model. However, the concept of transfer learning can be applied to refit the new surrogate more efficiently. In other words insights from previous experiences can be applied to learning and optimizing the new function. We use the proposed method in a particular problem pertaining to the design of “thin film multilayer solar cells”, where the goal is to maximize the external quantum efficiency of photoelectric conversion. The results show that the accuracy of the surrogate model is improved by 2–3 times using the transfer learning approach, using only half as many training data points as the original model. In addition, by transferring the design knowledge from one particular set of materials to another similar set of materials in the thin film structure, the surrogate-based optimization is improved, and is it obtained with far less computational time.
机译:在这项研究中,提出了一种基于“转移学习”的设计优化新方法。所提出的框架提高了基于代理的优化的准确性和效率。替代模型是昂贵的黑匣子函数的近似值,该函数可用于更有效地搜索最佳点。当设计规格改变时,目标功能也改变。因此,需要一种新的替代模型。但是,可以将转移学习的概念应用于更有效地适应新代理的情况。换句话说,可以将先前经验中的见解应用于学习和优化新功能。我们将提出的方法用于与“薄膜多层太阳能电池”设计有关的特定问题,其目标是使光电转换的外部量子效率最大化。结果表明,使用转移学习方法,替代模型的准确性提高了2-3倍,而使用的训练数据点仅为原始模型的一半。另外,通过将设计知识从一组特定的材料转移到薄膜结构中的另一组相似的材料,基于代理的优化得到了改进,并且可以用更少的计算时间来获得。

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