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首页> 外文期刊>IEEE transactions on industrial informatics >Data-Driven Game-Based Pricing for Sharing Rooftop Photovoltaic Generation and Energy Storage in the Residential Building Cluster Under Uncertainties
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Data-Driven Game-Based Pricing for Sharing Rooftop Photovoltaic Generation and Energy Storage in the Residential Building Cluster Under Uncertainties

机译:基于数据驱动的基于游戏,用于在不确定因素下分享住宅建筑物集群中的屋顶光伏发电和能量存储的定价

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摘要

In this article, a novel machine learning based data-driven pricing method is proposed for sharing rooftop photovoltaic (PV) generation and energy storage in an electrically interconnected residential building cluster (RBC). In the studied problem, the energy sharing process is modeled by the leader-follower Stackelberg game where the owner of the rooftop PV system is responsible for pricing self-generated PV energy and operating ES devices. Meanwhile, local electricity consumers in the RBC choose their energy consumption with the given internal electricity prices. To track the stochastic rooftop PV panel outputs, the long short-term memory network based rolling-horizon prediction function is developed to dynamically predict future trends of PV generation. With system information, the predicted information is fed into a Q-learning based decision-making process to find near-optimal pricing strategies. The simulation results verify the effectiveness of the proposed approach in solving energy sharing problems with partial or uncertain information.
机译:在本文中,提出了一种新型机器学习的数据驱动定价方法,用于在电互连的住宅建筑集群(RBC)中共享屋顶光伏(PV)生成和能量存储。在研究的问题中,能量共享过程由领导者 - 跟随者Stackelberg游戏建模,其中屋顶PV系统的所有者负责定价自我产生的PV能量和操作ES设备。同时,RBC中的当地电力消费者选择了他们的内部电价的能源消耗。为了跟踪随机屋顶光伏面板输出,开发了长的短期内存网络的滚动地平线预测功能,以动态预测光伏生成的未来趋势。利用系统信息,预测信息被馈送到基于Q学习的决策过程中,以找到近最佳定价策略。仿真结果验证了拟议方法在解决部分或不确定信息的能量共享问题方面的有效性。

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