A Distributed Adjustable Resource Clustering Method Based on Covariance Proxy

Lipan Fan, Yan Xu, Dongyue Ming, Cheng Zhang
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Abstract

This paper involves a method based on covariance agent to cluster distributed adjustable resources, including photovoltaic, wind power, energy storage and other potentially adjustable resources, including the following specific steps: collecting DAR data and external characteristic data such as solar radiation intensity, wind speed, ambient temperature and humidity; Analyze the correlation between the external features and the DAR set, select the external features with the highest correlation as the correlation coefficient, replace the correlation coefficient with the covariance and multiply the variance of the DAR distribution; With the goal of minimizing the maximum variance of all DAR clusters, the clustering model and characterization parameters are determined to form a faster and more reliable clustering method; Compared with the variance of brute force calculation, the reliability and timeliness of multi-resource clustering are verified by Python simulation. This method does not need to enumerate and calculate all DAR combinations, and has the advantages of simplicity and accuracy, and is more guaranteed than brute force calculation.
基于协方差代理的分布式可调资源聚类方法
本文涉及一种基于协方差代理的分布式可调资源聚类方法,包括光伏、风电、储能等潜在可调资源,具体步骤如下:采集雷达数据和太阳辐射强度、风速、环境温度、湿度等外部特征数据;分析外部特征与DAR集的相关性,选取相关性最高的外部特征作为相关系数,用协方差代替相关系数,乘以DAR分布的方差;以使所有DAR聚类方差最小为目标,确定聚类模型和表征参数,形成更快、更可靠的聚类方法;与蛮力计算的方差进行比较,通过Python仿真验证了多资源聚类的可靠性和时效性。该方法不需要枚举和计算所有的DAR组合,具有简单、准确的优点,比蛮力计算更有保障。
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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