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Direct shape optimization through deep reinforcement learning

机译:通过深度加强学习直接塑造优化

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Deep Reinforcement Learning (DRL) has recently spread into a range of domains within physics and engineering, with multiple remarkable achievements. Still, much remains to be explored before the capabilities of these methods are well understood. In this paper, we present the first application of DRL to direct shape optimization. We show that, given adequate reward, an artificial neural network trained through DRL is able to generate optimal shapes on its own, without any prior knowledge and in a constrained time. While we choose here to apply this methodology to aerodynamics, the optimization process itself is agnostic to details of the use case, and thus our work paves the way to new generic shape optimization strategies both in fluid mechanics, and more generally in any domain where a relevant reward function can be defined. (c) 2020 Elsevier Inc. All rights reserved.
机译:深度强化学习(DRL)最近已扩展到物理学和工程学的一系列领域,并取得了多项显著成就。尽管如此,在充分理解这些方法的功能之前,仍有许多有待探索的地方。在本文中,我们介绍了DRL在直接形状优化中的首次应用。我们证明,在给予足够奖励的情况下,通过DRL训练的人工神经网络能够在没有任何先验知识的情况下,在有限的时间内自行生成最优形状。虽然我们选择在这里将这种方法应用于空气动力学,但优化过程本身对用例的细节是不可知的,因此我们的工作为新的通用形状优化策略铺平了道路,无论是在流体力学中,还是在可以定义相关奖励函数的任何领域。(c) 2020爱思唯尔公司版权所有。

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