基于多维特征信息融合的第三方负载聚合平台交互数据异常检测方法

Xiao Zhang, Chenghao Zheng, Xianglong Wu, Tianpeng Wang, Hailong Gao, Jing Guo
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引用次数: 0

摘要

随着清洁能源的开发和利用,包括光伏板在内的越来越多的分布式发电机组接入到该系统中,这些分布式发电机组可以利用新能源和可再生能源发电。然而,电网系统由于其较大的负荷压力和安全风险,极易受到攻击。提出了一种基于多维特征信息融合和深度残差网络分析的第三方负载聚合平台交互式数据异常检测方法。我们提出的方法可以对第三方负载聚合平台的交互数据进行采集、提取和分析,然后从多维特征融合分析的角度对平台采集的负载数据进行异常分析和检测。具体而言,通过提取多维第三方负荷平台的初始数据特征,利用电力负荷数据的海量性和动态采集特性,采用小波变换和谱聚类技术对数据进行去噪、伪数据特征滤波和特征聚类分析;然后,利用深度残差网络的跨层直连边特征,构建深度学习中的误差反向传播衰减,训练异常数据检测的深度网络模型,实现第三方负载聚合平台交互数据的异常数据检测任务。本文的主要贡献是提出了基于多维特征信息融合和深度残差网络的第三方负载聚合平台交互式数据异常检测方法,并通过实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection Method For Interactive Data of Third-Party Load Aggregation Platform Based on Multidimensional Feature Information Fusion
With the development and using of clean energy, more and more distributed generations including photovoltaic panels, which can generate the power by consuming the new and renewable energy are connected to the system. However, the power grid system is vulnerable to attack due to the greater load pressure and security risks. This paper presents a third-party load aggregation platform interactive data anomaly detection method based on multi-dimensional feature information fusion and deep residual network analysis in a comprehensive energy scenario. The method we proposed can collect, extract and analyze the interactive data of the third-party load aggregation platform, and then analyze and detect the anomaly of the load data collected by the platform from the perspective of multi-dimensional feature fusion analysis. Specifically, by extracting the initial data features of the multi-dimensional third-party load platform, this paper adopts wavelet transform and spectral clustering technology to denoise, filter pseudo data features and perform feature clustering analysis due to the magnanimity and dynamic acquisition characteristics of power load data; Then, by using the cross layer direct connected edge characteristics of the depth residual network, the error back propagation attenuation in the depth learning is constructed, and the depth network model of abnormal data detection is trained to achieve the task of abnormal data detection of the third-party load aggregation platform interactive data. The main contribution of this paper is that the method of the third-party load aggregation platform interactive data anomaly detection based on multi-dimensional feature information fusion and deep residual network is presented, and the test results have shown the efficient of the method.
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