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首页> 外文期刊>European Journal of Operational Research >Multistage stochastic demand-side management for price-making major consumers of electricity in a co-optimized energy and reserve market
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Multistage stochastic demand-side management for price-making major consumers of electricity in a co-optimized energy and reserve market

机译:多级随机需求侧管理,为共同优化能源和储备市场进行价格制造电力的主要消费者

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In this paper, we take an optimization driven heuristic approach, motivated by dynamic programming, to solve a class of non-convex multistage stochastic optimization problems. We apply this to the problem of optimizing the timing of energy consumption for a large manufacturer who is a price-making major consumer of electricity. We introduce a mixed-integer program that co-optimizes consumption bids and interruptible load reserve offers, for such a major consumer over a finite time horizon. By utilizing Lagrangian methods, we decompose our model through approximately pricing the constraints that link the stages together. We construct look-up tables in the form of consumption-utility curves, and use these to determine optimal consumption levels. We also present heuristics, in order to tackle the non-convexities within our model, and improve the accuracy of our policies. In the second part of the paper, we present stochastic solution methods for our model in which, we reduce the size of the scenario tree by utilizing a tailor-made scenario clustering method. Furthermore, we report on a case study that implements our models for a major consumer in the (full) New Zealand Electricity Market and present numerical results. (C) 2019 Elsevier B.V. All rights reserved.
机译:在本文中,我们采用了一种优化的驱动启发式方法,通过动态规划动机,解决了一类非凸多级随机优化问题。我们将这适用于优化一家大型制造商的能源消耗时间的问题,他们是一种价格制造主要消费者的电力。我们介绍了一个混合整数的程序,该计划共同优化了消费投标和可中断的负载储备,在有限时间范围内的主要消费者。通过利用拉格朗日方法,我们通过近似定价将阶段链接在一起的约束来分解模型。我们以消耗实用曲线的形式构建查询表,并使用这些来确定最佳消耗水平。我们还提出了启发式,以解决我们模型内的非凸,并提高我们政策的准确性。在本文的第二部分中,我们提出了用于我们模型的随机解决方案方法,通过利用量制的场景聚类方法减少方案树的大小。此外,我们报告了一个案例研究,为(满)新西兰电力市场的主要消费者实施了模型,并提出了数值效果。 (c)2019 Elsevier B.v.保留所有权利。

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