Rolling optimization method of virtual power plant demand response based on Bayesian Stackelberg game

Q2 Energy
Binxi Huang
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引用次数: 0

Abstract

To optimize the interaction effect between internal units and demand response of virtual power plants and enhance their transaction profit, a study on the the rolling optimization method of demand response for virtual power plants based on Bayesian Stackelberg game is conducted. Following the construction of a virtual power plant model and analysis of its operation strategy and process content, this method employs a power demand forecasting approach based on multidimensional fusion and Bayesian probability update to forecast the demand-side power requirements within the jurisdiction of the virtual power plant. Utilizing the forecast results of dynamic electricity demand, a demand response elastic matrix for virtual power plant is constructed through a rolling optimization model based on Stackelberg game. The two optimization objective functions, maximizing the supply-side income and minimizing the demand-side electricity purchase cost of virtual power plant, are transformed into maximizing the profit of power transaction for the virtual power plant. This is iteratively solved using the whale algorithm to determine the optimal power generation distribution scheme for each unit on both the supply side and demand sides. Upon testing, this method demonstrates not only the capability for peak shaving and valley filling but also improves the operating profit of the virtual power plant and optimizes user satisfaction, resulting in a relatively high comprehensive benefit index.

基于贝叶斯-斯塔克尔伯格博弈的虚拟电厂需求响应滚动优化方法
为了优化虚拟电厂内部机组与需求响应的交互效果,提高虚拟电厂的交易利润,研究了基于贝叶斯Stackelberg博弈的虚拟电厂需求响应滚动优化方法。该方法在构建虚拟电厂模型,分析其运行策略和过程内容的基础上,采用基于多维融合和贝叶斯概率更新的电力需求预测方法,对虚拟电厂管辖范围内的需求侧电力需求进行预测。利用动态电力需求预测结果,通过基于Stackelberg博弈的滚动优化模型,构建了虚拟电厂的需求响应弹性矩阵。将虚拟电厂供给侧收益最大化和需求侧购电成本最小化这两个优化目标函数转化为虚拟电厂电力交易利润最大化。采用鲸鱼算法迭代求解,确定供需双方各机组的最优发电分配方案。经测试,该方法不仅具有调峰填谷能力,而且提高了虚拟电厂的运营利润,优化了用户满意度,综合效益指标较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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