论文标题

在多元工业时间序列数据中应用的子序列修复放错了位置修复

Misplaced Subsequences Repairing with Application to Multivariate Industrial Time Series Data

论文作者

Ding, Xiaoou, Wang, Hongzhi, Su, Jiaxuan, Wang, Chen

论文摘要

通过监视传感器生成的时间序列的音量和集合速度在物联网(IoT)中都在增加。数据管理和分析需要物联网数据的高质量和适用性。但是,在原始时间序列数据中,错误很普遍。时间序列的不一致是物联网中广泛存在的严重数据质量问题。现有技术几乎无法解决此类问题。在此激励的情况下,我们在多元时间序列中定义了一个不一致的子序列问题,并提出了一种完整性数据修复方法来解决不一致的问题。我们提出的维修方法包括两个部分:(1)我们设计有效的异常检测方法,以发现物联网时间序列中潜在的不一致子序列; (2)我们开发了维修算法,以精确定位不一致间隔的开始和结束时间,并提供可靠的维修策略。与其他实际方法相比,对两个现实生活数据集进行了彻底的实验,可以验证我们方法的优势。实验结果还表明,我们的方法在复杂的IIT方案中有效地捕获和修复了不一致问题。

Both the volume and the collection velocity of time series generated by monitoring sensors are increasing in the Internet of Things (IoT). Data management and analysis requires high quality and applicability of the IoT data. However, errors are prevalent in original time series data. Inconsistency in time series is a serious data quality problem existing widely in IoT. Such problem could be hardly solved by existing techniques. Motivated by this, we define an inconsistent subsequences problem in multivariate time series, and propose an integrity data repair approach to solve inconsistent problems. Our proposed repairing method consists of two parts: (1) we design effective anomaly detection method to discover latent inconsistent subsequences in the IoT time series; and (2) we develop repair algorithms to precisely locate the start and finish time of inconsistent intervals, and provide reliable repairing strategies. A thorough experiment on two real-life datasets verifies the superiority of our method compared to other practical approaches. Experimental results also show that our method captures and repairs inconsistency problems effectively in industrial time series in complex IIoT scenarios.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源