动态定价下电池储能的最优能源交易

Xiaoqi Tan, Yuan Wu, D. Tsang
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引用次数: 9

摘要

本文提出了在动态定价环境下寻找电池储能最优能源交易策略的数学框架。我们之前已经证明,在已知的历史价格数据下,寻找BES的套利值可以通过迭代线性规划来解决。本文的目的是证明,在价格信息未知的情况下,寻找受寿命约束的最优经济价值属于随机最短路径问题的范畴,且最优策略具有阈值结构的性质。为了克服维数困难,我们提出了一种基于结构的聚合方法,即层和组,来构造最优交易策略。这种方法的优雅之处在于它避免了对整个状态空间进行耗尽值迭代的需要。相反,该方法以分层并行的方式工作,从而大大加快了收敛到最优性的速度。大量的实验结果表明,该方法可以显著降低计算复杂度,从而在不需要任何近似的情况下实现计算可处理的最优性。数值模拟也验证了所提框架的有效性,并对实际的BES系统形成了各种交易见解。
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Optimal energy trading with battery energy storage under dynamic pricing
This paper proposes a mathematical framework for finding the optimal energy trading policy with battery energy storage (BES) under a dynamic pricing environment. We have previously shown that finding the arbitrage value of BES with known historical price data can be solved by iterative linear programming. The objective of the present paper is to show that, when the price information remains unknown, finding the optimal economic value of lifetime-constrained BES falls within the purview of stochastic shortest path problems, and the optimal policy presents the property of a threshold structure. To overcome the dimensionality difficulty, we propose a structure-based aggregation method, i.e., Layer and Group, to construct optimal trading policies. The elegance of this approach lies in its circumventing of the need for exhausted value iteration over the entire state space. Instead, the approach works in a hierarchical and parallel fashion, thus significantly speeding up the convergence to the optimality. Extensive experimental results show that this approach can dramatically reduce the computational complexity, thus contributing to the computationally tractable optimality without requiring any approximation. Numerical simulation also demonstrates the validity of the proposed framework, and various trading insights for practical BES systems have been formed.
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