基于agent的多能系统最优协同运行

Bohan Xu, Yue Xiang, Li Pan, Mengqiu Fang, Junyong Liu, You-bo Liu, Tianhao Wang
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引用次数: 1

摘要

随着分布式可再生能源的快速发展,传统的能源节点模型已经难以适应能源信息耦合系统。针对传统能量节点模型难以将信息流和能量流结合起来建立快速响应机制的问题,本文利用机器学习技术构建了一个基于数据和模型的智能体模型,该模型能够自动平衡干扰并趋于自动良好运行。首先对多能系统(MES)的调度目标和能量转换器进行建模,然后引入智能体模型,定义智能体的观察变量和动作空间,构造奖励函数。然后介绍了DDPG算法的求解过程,完成了DDPG算法的参数设置。最后通过一个算例验证了所提方法的有效性。
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Agent-Based Optimal Cooperative Operation of Multi-energy System
With the rapid development of distributed renewable energy, the traditional energy node model has been difficult to adapt to the energy information coupling system. Aiming at the problem that traditional energy node model is difficult to combine information flow and energy flow to establish a rapid response mechanism, this paper uses machine learning to build an agent model based on data and model, which can balance disturbance automatically and tend to run well automatically. Firstly, the scheduling objective and energy converter of the multi-energy system (MES) are modeled, then the agent model is introduced, the observation variables and action space of agent are defined, and the reward function is constructed. After that, the solution process of DDPG algorithm is introduced, and the parameter of DDPG algorithm is completed. Finally, an example is given to verify the effectiveness of the proposed method.
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