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Deep reinforcement learning-based approach for optimizing energy conversion in integrated electrical and heating system with renewable energy

机译:基于深度强化学习的方法,可再生能源优化电气和供热系统中的能量转换

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With advanced information technologies applied in integrated energy systems (IESs), controlling the energy conversion has become an effective method for improving grid flexibility and reducing the operating cost of IESs. This study proposes a dynamic energy conversion strategy for the energy management of an IES with renewable energy, which considers the system operator's (SO) operating cost. Deep reinforcement learning (DRL) is used to illustrate the hierarchical decision-making process, in which the dynamic energy conversion problem is formulated as a discrete finite Markov decision process, and proximal policy optimization (PPO) is adopted to solve the decision-making problem. Using DRL, the SO can adaptively decide the wind power conversion ratio during the online learning process, where the uncertainties of customers' load demand profiles, flexibility of spot electricity prices, and wind power generation are addressed. Simulations show that the proposed PPO-based renewable energy conversion algorithm can effectively reduce the SO's operating cost.
机译:随着先进信息技术应用于集成能源系统(IESs)中,控制能量转换已成为提高电网灵活性和降低IESs运营成本的有效方法。这项研究提出了一种动态能源转换策略,用于具有可再生能源的IES的能源管理,其中考虑了系统运营商(SO)的运营成本。用深度强化学习(DRL)来说明分层决策过程,其中动态能量转换问题被表述为离散的有限马尔可夫决策过程,而近端策略优化(PPO)解决了决策问题。 。通过使用DRL,SO可以在在线学习过程中自适应地确定风能转换率,从而解决了客户负荷需求曲线的不确定性,现货电价的灵活性以及风力发电的不确定性。仿真结果表明,所提出的基于PPO的可再生能源转换算法可以有效降低SO的运行成本。

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