论文标题
岛屿综合能源系统的最佳调度,考虑多仪式和水热同时传播:一种深厚的加固学习方法
Optimal scheduling of island integrated energy systems considering multi-uncertainties and hydrothermal simultaneous transmission: A deep reinforcement learning approach
论文作者
论文摘要
电力和负载的多申请人为岛屿各种资源的稳定需求供应带来了重大挑战。为了应对这些挑战,提出了一个全面的调度框架,通过引入基于建模岛屿综合能源系统(IES)的无模型深度强化学习(DRL)方法。除了引入海水淡化系统外,还提出了“同时传播”(HST)的传输结构,以应对岛上的淡水短缺。 IES调度问题的本质是每个单元的输出的最佳组合,这是一个典型的定时控制问题,并符合Markov Decudmenting Solution Solution Solution Solution Solution Solution框架的深入加强学习框架。深度强化学习适应了各种变化,并通过代理和环境的相互作用及时调整策略,避免了复杂的建模和对多项式的预测。仿真结果表明,所提出的调度框架适当地处理了电源和负载的多级别,可为各种资源实现稳定的需求供应,并且比其他实时调度方法具有更好的性能,尤其是在计算效率方面。此外,HST模型构成了一种积极的探索,以提高岛屿淡水的利用效率。
Multi-uncertainties from power sources and loads have brought significant challenges to the stable demand supply of various resources at islands. To address these challenges, a comprehensive scheduling framework is proposed by introducing a model-free deep reinforcement learning (DRL) approach based on modeling an island integrated energy system (IES). In response to the shortage of freshwater on islands, in addition to the introduction of seawater desalination systems, a transmission structure of "hydrothermal simultaneous transmission" (HST) is proposed. The essence of the IES scheduling problem is the optimal combination of each unit's output, which is a typical timing control problem and conforms to the Markov decision-making solution framework of deep reinforcement learning. Deep reinforcement learning adapts to various changes and timely adjusts strategies through the interaction of agents and the environment, avoiding complicated modeling and prediction of multi-uncertainties. The simulation results show that the proposed scheduling framework properly handles multi-uncertainties from power sources and loads, achieves a stable demand supply for various resources, and has better performance than other real-time scheduling methods, especially in terms of computational efficiency. In addition, the HST model constitutes an active exploration to improve the utilization efficiency of island freshwater.