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首页> 外文期刊>Chemical Engineering Research & Design: Transactions of the Institution of Chemical Engineers >Artificial Neural Networks for dynamic optimization of stochastic multiscale systems subject to uncertainty
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Artificial Neural Networks for dynamic optimization of stochastic multiscale systems subject to uncertainty

机译:随机多尺度系统的动态优化人工神经网络,但不确定性

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The purpose of this study was to employ Artificial Neural Networks (ANNs) to develop data-driven models that would enable optimal control of a stochastic multiscale system subject to parametric uncertainty. The system used for the case study was a simulation of thin film formation by chemical vapour deposition, where a solid-on-solid kinetic Monte Carlo model was coupled with continuum transport equations. The ANNs were trained to estimate the dynamic responses of statistical moments of the system's observables and subsequently employed in a dynamic optimization scheme to identify the optimal profiles of the manipulated variables that would attain the desired thin film properties at the end of the batch. The resulting profiles were validated using the stochastic multiscale system and a close agreement with ANN-based predictions was observed. Due to their computational efficiency, accuracy, and the ability to reject disturbances, the ANNs appear to be an attractive approach for the optimization and control of computationally demanding multiscale process systems. (C) 2020 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:本研究的目的是采用人工神经网络(ANNS)来开发数据驱动的模型,该模型将能够实现对参数不确定度的随机多尺度系统的最佳控制。用于案例研究的系统是通过化学气相沉积进行薄膜形成的模拟,其中固体活性动力学蒙特卡罗模型与连续输送方程联接。培训ANNS以估计系统可观察到的统计时刻的动态响应,并且随后在动态优化方案中使用,以识别将在批次末端达到所需薄膜特性的被操纵变量的最佳轮廓。使用随机多尺度系统进行验证所得到的轮廓,并观察到与基于安基的预测的密切协议。由于它们的计算效率,准确性和拒绝干扰的能力,ANN似乎是一种有吸引力的方法,用于提供计算苛刻的多尺度过程系统的优化和控制。 (c)2020化学工程师机构。 elsevier b.v出版。保留所有权利。

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