Study on data fuzzy breakpoint detection in massive dynamic data flow

Ma Yingying, Yuan Hao
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Abstract

The current method obtains the frequency of occurrence of abnormal data detected in the adjacent regions through reading between the sensor and the adjacent conversion data, and uses the frequency of occurrence of abnormal data to describe the spatial correlation, according to readings of sensor data using the Bayesian analysis method of sensor to determine whether the sensor is abnormal. But this method has the problem of low detection accuracy. For this reason, this paper proposes a method to detect the fuzzy breakpoint of data in the massive dynamic data flow. Firstly, this method used the amplitude difference method to determine the abnormal data amplitude and the discrete point difference of data fuzzy breakpoint, and then used the wavelet transform to extract the features of inflection point of the data fuzzy breakpoint. Combined with the features of inflection point of the extracted data fuzzy breakpoint, we carried out the support vector machine classification, and detected the data fuzzy breakpoints in the massive dynamic data flow. Experimental results show that the proposed method can effectively improve the accuracy of fuzzy breakpoint detection.
海量动态数据流中数据模糊断点检测研究
目前的方法是通过读取传感器与相邻转换数据之间的数据,得到相邻区域检测到的异常数据的发生频率,并用异常数据的发生频率来描述空间相关性,根据传感器数据的读数,利用传感器的贝叶斯分析方法来判断传感器是否异常。但该方法存在检测精度低的问题。为此,本文提出了一种在海量动态数据流中检测数据模糊断点的方法。该方法首先利用幅值差法确定异常数据幅值和数据模糊断点的离散点差,然后利用小波变换提取数据模糊断点的拐点特征。结合提取的数据模糊断点的拐点特征,进行支持向量机分类,在海量动态数据流中检测数据模糊断点。实验结果表明,该方法能有效提高模糊断点检测的精度。
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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