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Missing Value Imputation for Industrial IoT Sensor Data With Large Gaps

机译:缺少具有大差距的工业物联网传感器数据的价值估算

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摘要

In recent years, the Internet-of-Things (IoT)-oriented smart manufacturing has become a prominent solution in realizing evolutional digital transformation. Missing data are one of the biggest problems for data preprocessing in an IoT architecture, and it is crucial that missing values are recovered to improve the reliability of monitoring applications. However, due to the high-frequency collection of sensor data, missing data in IoT bring new challenges. Several methods have been developed to recover missing IoT data by utilizing data from sensors that are geographically close to the sensor which is responsible for the missing data, or from sensors which provide data that are highly correlated to the missing data. In IoT systems, because of the transmission of a large volume of data over networks, common mode failures need to be considered where a single event can lead to the loss of data from a large number of sensors. In this situation, it would be infeasible to recover missing data from other sensors. To address this issue, in this article, we focus on missing data imputation for large gaps in univariate time-series data and propose an iterative framework using multiple segmented gap iteration called Itr-MS-STLecImp to provide the most appropriate values. The gap is first segmented into several pieces to initialize the missing value imputation process and then, we iteratively run gap reconstruction and gap concatenation to obtain the final imputation results. We validate the proposed approach using sensor data collected from real manufacturing plants in Australia and the comparison results show that the proposed Itr-MS-STLecImp outperforms the state-of-the-art methods in terms of root-mean-square error. Under different gap-length conditions, the proposed approach consistently reduces the error rate more than the baseline algorithm, and the error reduction is greater when the lengths of the gaps increase, indicating that the performance is significantly improved. These analysis results further prove the effectiveness of the multiple segmentation of missing gaps and the iteration operation.
机译:近年来,互联网的东西(物联网) - 客户端智能制造已经成为实现进化数字转换的突出解决方案。缺少数据是IOT架构中数据预处理的最大问题之一,并且恢复缺失值是至关重要的,以提高监视应用程序的可靠性。但是,由于传感器数据的高频集合,IOT中缺少数据带来了新的挑战。已经开发了几种方法来通过利用来自传感器的传感器的数据来恢复缺失的物联网数据,该传感器靠近对缺失数据负责的传感器,或者从提供与缺失数据高度相关的数据的传感器。在IOT系统中,由于通过网络传输大量数据,需要考虑共模故障,其中单个事件可能导致来自大量传感器的数据丢失。在这种情况下,从其他传感器恢复缺失数据是不可行的。要解决此问题,请在本文中,我们专注于单变量时间序列数据中的大型空白的数据归档,并使用名为ITR-MS-Stlecimp的多个分段间隙迭代提出迭代框架,以提供最合适的值。首先将间隙分段为几个部分以初始化缺失的值归档过程,然后,我们迭代地运行间隙重建和间隙连接以获得最终的估算结果。我们使用澳大利亚的真实制造工厂收集的传感器数据验证了所提出的方法,并且比较结果表明,所提出的ITR-MS-Stlecimp在根均方误差方面优于最先进的方法。在不同的间隙长度条件下,所提出的方法始终如一地减少了基线算法的误差率,并且当间隙的长度增加时,误差减少更大,表明性能显着提高。这些分析结果进一步证明了缺失差距和迭代操作的多分割的有效性。

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