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A spatiotemporal decomposition algorithm for fully decentralized dynamic economic dispatch in a microgrid

机译:一种时空分解算法在微电网中完全分散的动态经济派遣

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摘要

In this paper, we present a spatiotemporal decomposition solution approach to the fully decentralized dynamic economic dispatch (DED) problem in a microgrid. Our approach divides the centralized DED problem into a series of sub-problems in the spatiotemporal dimensions and relies on multiple agents to solve those sub-problems. The proposed method requires no central operator intervention, preserving the decision independence and information privacy of each unit. Approximate value functions are used to describe the interaction among those sub-problems. With the approximate value functions, one agent not only knows the impact of its decision on the decisions of other agents in the same period, but also knows the impact of this decision on the decisions of its subsequent periods. Unlike the existing value function update strategy, which updates the state variables and value functions in one direction, we update the state variables and value functions in two directions based on a forward-push-back strategy. In this manner, the time-delayed problem can be solved, and the iteration speed of the algorithm is greatly improved. Moreover, the proposed algorithm does not require parameter tuning and has good accuracy and adaptability. Numerical simulations for multiple cases demonstrate the effectiveness of the proposed algorithm.
机译:在本文中,我们在微电网中提出了一种时尚分解解决方案方法,以微电网中的完全分散的动态经济派遣(DED)问题。我们的方法将集中式DED问题划分为时空尺寸的一系列子问题,并依赖于多个代理来解决这些子问题。该方法不需要中央操作员干预,保留每个单位的决策独立性和信息隐私。近似值函数用于描述这些子问题之间的交互。通过近似值职能,一个代理商不仅知道其在同一时期内的其他代理人的决定的影响,而且还知道这一决定对后续期间的决定的影响。与现有的值函数更新策略不同,该函数更新策略在一个方向上更新状态变量和值函数,我们根据前向推回策略在两个方向上更新状态变量和值函数。以这种方式,可以解决时间延迟问题,并且大大提高了算法的迭代速度。此外,所提出的算法不需要参数调谐并且具有良好的准确性和适应性。多种情况的数值模拟展示了所提出的算法的有效性。

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