Optimization of a Bayesian game for Peer-to-Peer trading among prosumers under incomplete information via a CNN-LSTM-ATT

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2024-11-06 DOI:10.1016/j.egyai.2024.100437
Hongjie Jia , Wanxin Tang , Xiaolong Jin , Yunfei Mu , Dengxin Ai , Xiaodan Yu , Wei Wei
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Abstract

In modern low-carbon industrial parks, various distributed renewable energy resources are employed to fulfill production needs. Despite the growing capacity of renewable energy generation, a significant portion of the power produced by these renewable resources remains unconsumed, resulting in a waste of resources. Within an industrial park, microgrids that both generate and consume energy resources act as energy prosumers. Peer-to-peer (P2P) trading provides an efficient means of utilizing renewable energy among these energy prosumers, who possess both power generation and consumption capabilities. However, within the current market mechanism, each prosumer retains private information that is not disclosed on the network. To address the issue of incomplete information among multiple prosumers during the decision-making process, we develop a Bayesian game model based on the CNN-LSTM-ATT prediction method for P2P electricity transactions among multiple prosumers. The energy prosumers in each industrial park aim to minimize their energy consumption costs by adjusting strategies that include P2P energy trading and managing thermal loads. Prosumers make decisions on the basis of their own characteristics and estimates of other prosumer characteristics, which are obtained from the joint probability distribution predicted by the CNN-LSTM-ATT method. These decisions are aimed at minimizing each prosumer's electricity costs. The simulation results demonstrate the effectiveness of the Bayesian game model proposed in this study.

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通过 CNN-LSTM-ATT,优化不完全信息条件下的贝叶斯博弈,促进消费者之间的点对点交易
在现代低碳工业园区中,各种分布式可再生能源被用来满足生产需求。尽管可再生能源发电能力不断提高,但这些可再生能源产生的电能仍有很大一部分未被消耗,造成资源浪费。在工业园区内,既产生又消耗能源资源的微电网充当了能源消费者的角色。点对点(P2P)交易为这些同时具备发电和消费能力的能源消费商提供了有效利用可再生能源的手段。然而,在当前的市场机制中,每个能源消费者都保留着不在网络上公开的私人信息。为了解决决策过程中多个能源消费者之间信息不完整的问题,我们开发了一种基于 CNN-LSTM-ATT 预测方法的贝叶斯博弈模型,用于多个能源消费者之间的 P2P 电力交易。每个工业园区的能源消费商都希望通过调整策略(包括 P2P 能源交易和热负荷管理)最大限度地降低能耗成本。消费者根据自身特征和对其他消费者特征的估计做出决策,这些特征来自 CNN-LSTM-ATT 方法预测的联合概率分布。这些决策旨在最大限度地降低每个消费者的电费。模拟结果证明了本研究提出的贝叶斯博弈模型的有效性。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
期刊最新文献
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