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An Agent-Based Hierarchical Bargaining Framework for Power Management of Multiple Cooperative Microgrids

机译:基于代理的多层协作微电网电源管理层次协商框架

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摘要

In this paper, we propose an agent-based hierarchical power management model in a power distribution system composed of several microgrids (MGs). At the lower level of the model, multiple MGs bargain with each other to cooperatively obtain a fair, and Pareto-optimal solution to their power management problem, employing the concept of Nash bargaining solution and using a distributed optimization framework. At the highest level of the model, a distribution system power supplier, e.g., a utility company, interacts with both the cluster of the MGs and the wholesale market. The goal of the utility company is to facilitate power exchange between the regional distribution network consisting of multiple MGs and the wholesale market to achieve its own private goals. The power exchange is controlled through dynamic energy pricing at the distribution level, at the day-ahead and real-time stages. To implement energy pricing at the utility company level, an iterative machine learning mechanism is employed, where the utility company develops a price-sensitivity model of the aggregate response of the MGs to the retail price signal through a learning process. This learned model is then used to perform optimal energy pricing. To verify its applicability, the proposed decision model is tested on a system with multiple MGs, with each MG having different load/generation data.
机译:在本文中,我们提出了由多个微电网(MG)组成的配电系统中基于代理的分层电源管理模型。在模型的较低级别,多个MG相互讨价还价,以采用纳什讨价还价解决方案的概念并使用分布式优化框架来共同获得公平,帕累托最优的电源管理问题解决方案。在模型的最高级别,配电系统电源供应商(例如,公用事业公司)与MG集群和批发市场互动。公用事业公司的目标是促进由多个MG组成的区域配电网络与批发市场之间的电力交换,以实现自己的私人目标。在日前和实时阶段,通过配电级别的动态能源定价来控制功率交换。为了在公用事业公司一级实施能源定价,采用了迭代机器学习机制,公用事业公司通过学习过程开发了MG对零售价格信号的总体响应的价格敏感度模型。然后,该学习的模型将用于执行最佳能源定价。为了验证其适用性,在具有多个MG的系统上测试了建议的决策模型,每个MG具有不同的负载/发电数据。

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