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Optimal demand response scheduling of an industrial air separation unit using data-driven dynamic models

机译:使用数据驱动的动态模型的工业空分设备的最佳需求响应调度

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摘要

Managing electricity demand has become a key consideration in power grid operations. Industrial demand response (DR) is an important component of demand-side management, and electricity-intensive chemical processes can both support power grid operations and derive economic benefits from electricity price fluctuations. For air separation units (ASUs), DR participation calls for frequent production rate changes, over time scales that overlap with the dominant dynamics of the plant. Production scheduling calculations must therefore explicitly consider process dynamics. We introduce a data-driven approach for learning the DR scheduling-relevant dynamics of an industrial ASU from its operational history, and present a dynamic optimization-based DR scheduling framework. We show that a class of low-order Hammerstein-Wiener models can accurately represent the dynamics of the industrial ASU and its model predictive control system. We evaluate the economic benefits of the proposed scheduling framework, and analyze their sensitivity to electricity price uncertainty. (C) 2019 Elsevier Ltd. All rights reserved.
机译:管理电力需求已成为电网运营中的关键考虑因素。工业需求响应(DR)是需求侧管理的重要组成部分,电力密集型化学过程既可以支持电网运营,又可以从电价波动中获得经济利益。对于空分设备(ASU),DR的参与要求在与工厂主要动态重叠的时间范围内频繁更改生产率。因此,生产调度计算必须明确考虑过程动态。我们引入了一种数据驱动的方法来从其运行历史中了解工业ASU的DR调度相关动态,并提出了一种基于动态优化的DR调度框架。我们表明,一类低阶的Hammerstein-Wiener模型可以准确地表示工业ASU及其模型预测控制系统的动力学。我们评估了拟议的调度框架的经济效益,并分析了其对电价不确定性的敏感性。 (C)2019 Elsevier Ltd.保留所有权利。

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