Anomaly detection of large data stream in energy internet based on high-order statistical features

Ju Tian, Xiaohui Zhang, Luzhou Cao, Q. Xie, Qi Wu, Haiyan Liu
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引用次数: 0

Abstract

In the energy Internet integration mechanism, any abnormal data behaviour may affect the operation security of the network system. In order to accurately detect the abnormal transmission behaviour of data stream samples, this paper studies the abnormal detection method of the large data streams in energy Internet based on high-order statistical features. According to the principle of higher-order statistics, this paper defines statistical indicators. Combined with the characteristic function expression, the range of phase space parameters is determined, and the verification of abnormal large data stream information is realized. Hadoop distributed detection framework is set, and the accurate calculation result of abnormal scheduling coefficient is obtained by solving the vector of the high-dimensional large data stream, and the design of abnormal detection method for large data stream of energy Internet based on high-order statistical characteristics is completed. The experimental results show that under the high-order statistical principle, the detection accuracy of abnormal information of data stream samples by energy Internet hosts is improved, which has outstanding value in maintaining the running security of the network system.
基于高阶统计特征的能源互联网大数据流异常检测
在能源互联网融合机制中,任何异常的数据行为都可能影响网络系统的运行安全。为了准确检测数据流样本的异常传输行为,本文研究了基于高阶统计特征的能源互联网大数据流异常检测方法。根据高阶统计原理,定义了统计指标。结合特征函数表达式,确定相空间参数范围,实现对异常大数据流信息的验证。设置Hadoop分布式检测框架,通过求解高维大数据流向量得到异常调度系数的准确计算结果,完成了基于高阶统计特征的能源互联网大数据流异常检测方法的设计。实验结果表明,在高阶统计原理下,能源互联网主机对数据流样本异常信息的检测精度得到了提高,对维护网络系统的运行安全具有突出的价值。
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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