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Adaptive robust optimization for the energy management of the grid- connected energy hubs based on hybrid meta-heuristic algorithm

机译:基于混合元启发式算法的网络连接能集线器的能量管理自适应鲁棒优化

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This paper describes the energy management of energy hubs connected to electricity, gas, and heating networks in which the hub is incorporated as a coordination framework between distributed generations and energy storage systems. The deterministic model of the proposed scheme minimizes the total operating cost of these energy networks in the presence of energy hubs constrained to the optimal power flow equations of different networks and the formulation of hubs with sources and storages. The problem is subject to uncertainties of load, energy prices, renewable sources, and consumption energy of mobile storages. Additionally, the scheme inherently is a non-convex mixed-integer nonlinear pro-gramming framework. Adaptive robust optimization is used to model these uncertainties, which is based on a hybrid metaheuristic algorithm due to the nonlinear and non-convex nature of the proposed problem. Hence, a combination of Ant-lion Optimizer and Krill herd Optimization algorithm has been employed, which provides a robust optimal solution with approximate unique response conditions in the worst-case scenario. Eventually, the numerical results obtained by implementing the proposed scheme on a sample test system confirm the capability of the mentioned scheme in improving the operation condition of different energy networks in the worst-case scenario. Consequently, the total energy loss in all mentioned networks and maximum voltage and temperature drop decrease by roughly 8%, 44%, and 74% with respect to power flow analysis in this scenario. (c) 2021 Elsevier Ltd. All rights reserved.
机译:本文介绍了连接到电力,气体和加热网络的能量毂的能量管理,其中集线器被纳入分布式代和能量存储系统之间的协调框架。所提出的方案的确定性模型最小化这些能量网络的总运营成本,在能量集线器的存在中受到不同网络的最佳功率流程方程以及具有源和存储器的集线器的制定。该问题符合移动商店的负荷,能源价格,可再生能源和消费能源的不确定性。另外,该方案固有是非凸混合整数非线性的非线性Pro-Gramming框架。自适应稳健优化用于模拟这些不确定性,这是基于混合成群质算法,这是由于所提出的问题的非线性和非凸性性质。因此,采用了抗狮优化器和磷虾群优化算法的组合,为最坏情况场景中的近似独特的响应条件提供了一种强大的最佳解决方案。最终,通过在样本测试系统上实施所提出的方案获得的数值结果证实了提到的方案在最坏情况场景中提高了不同能量网络的操作条件。因此,在这种情况下,所有提到的网络的总能量损失和最大电压和温度降低约为8%,44%和74%。 (c)2021 elestvier有限公司保留所有权利。

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