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网络中的商人能源交易

Merchant Energy Trading in a Network

Operations Research · 2018
被引 27
人大 AFT50UTD24ABS 4*

中文导读

将能源存储和运输网络中的商人交易建模为马尔可夫决策过程,提出启发式算法和上下界,在天然气实例中接近最优解,对单资产软件有改进价值。

Abstract

We formulate the merchant trading of energy in a network of storage and transport assets as a Markov decision process with uncertain energy prices, generalizing known models. Because of the intractability of our model, we develop heuristics and both lower and dual (upper) bounds on the optimal policy value estimated within Monte Carlo simulation. We achieve tractability using linear optimization, extending near optimal approximate dynamic programming techniques for the case of a single storage asset, versions of two of which are commercially available. We propose (i) a generalization of a deterministic reoptimization heuristic, (ii) an iterative version of the least squares Monte Carlo approach, and (iii) a perfect information dual bound. We apply our methods to a set of realistic natural gas instances. The combination of our reoptimization heuristic and dual bound emerges as a practical approach to nearly optimally solve our model. Our iterative least squares Monte Carlo heuristic is also close to optimal. Compared to our other heuristic, it exhibits slightly larger optimality gaps and requires some tuning, but is faster to execute in some cases. Our methods could enhance single energy storage asset software and have potential relevance beyond our specific application. The e-companion is available at https://doi.org/10.1287/opre.2018.1732 .

运筹学能源经济动态规划蒙特卡洛方法