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Energy Scheduling for Multi-Energy Systems via Deep Reinforcement Learning

机译:通过深度加强学习对多能量系统的能量调度

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With the development of smart infrastructures, especially energy hubs (EHs), traditional power systems transform into the multi-energy systems. This paper investigates a long term profit maximizing energy scheduling problem for multi-energy systems from the perspective of prosumers. Most existing methods assume that future market prices or demand information of prosumers are known to the decision makers. In this paper, we model the multi-energy scheduling strategy in the presence of unknown information as a Markov Decision Process (MDP) problem. We first establish an energy scheduling mechanism by exploring the unique features of EHs. The concept of valid actions is then proposed to ensure the balance between supply and demand. A deep Q-learning algorithm is developed to obtain the scheduling strategy without any prior information. Simulation results demonstrate the effectiveness and efficiency of the proposed strategy.
机译:随着智能基础设施的发展,尤其是能量中心(EHS),传统电力系统转换为多能量系统。本文从监管的角度调查了多能源系统的长期利润最大化能源调度问题。大多数现有方法都认为决策者已知未来的市场价格或需求的资料。在本文中,我们在存在未知信息的情况下为Markov决策过程(MDP)问题的存在来模拟多能量调度策略。我们首先通过探索EHS的独特功能来建立能源调度机制。然后提出了有效行动的概念,以确保供需之间的平衡。开发了一种深度Q学习算法,无法在没有任何先前信息的情况下获得调度策略。仿真结果展示了拟议策略的有效性和效率。

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