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Evolutionary Optimization of Catalysts Assisted by Neural-Network Learning

机译:神经网络学习辅助催化剂的进化优化

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This paper presents an important real-world application of both evolutionary computation and learning, an application to the search for optimal catalytic materials. In this area, evolutionary and especially genetic algorithms are encountered most frequently However, their application is far from any standard methodology, due to problems with mixed optimization and constraints. The paper describes how these difficulties are dealt with in the evolutionary optimization system GENACAT, recently developed for searching optimal catalysts. It also recalls that the costly evaluation of objective functions in this application area can be tackled through learning suitable regression models of those functions, called surrogate models. Ongoing integration of neural-networks-based surrogate modelling with GENACAT is illustrated on two brief examples.
机译:本文介绍了进化计算和学习的重要现实世界应用,该应用于寻求最佳催化材料的应用。在该区域中,最常见的是进化和尤其是遗传算法然而,由于混合优化和约束的问题,它们的应用远离任何标准方法。本文介绍了在最近开发的用于搜索最佳催化剂的进化优化系统Genacat中如何处理这些困难。它还回顾说,可以通过学习所谓的替代模型的合适的回归模型来解决该应用领域客观函数的昂贵评估。在两个简短的例子中说明了基于神经网络的代理建模的持续集成。

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