Streaming Data Preprocessing via Online Tensor Recovery for Large Environmental Sensor Networks

Yue Hu, Ao Qu, Yanbing Wang, D. Work
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引用次数: 4

Abstract

Measuring the built and natural environment at a fine-grained scale is now possible with low-cost urban environmental sensor networks. However, fine-grained city-scale data analysis is complicated by tedious data cleaning including removing outliers and imputing missing data. While many methods exist to automatically correct anomalies and impute missing entries, challenges still exist on data with large spatial-temporal scales and shifting patterns. To address these challenges, we propose an online robust tensor recovery (OLRTR) method to preprocess streaming high-dimensional urban environmental datasets. A small-sized dictionary that captures the underlying patterns of the data is computed and constantly updated with new data. OLRTR enables online recovery for large-scale sensor networks that provide continuous data streams, with a lower computational memory usage compared to offline batch counterparts. In addition, we formulate the objective function so that OLRTR can detect structured outliers, such as faulty readings over a long period of time. We validate OLRTR on a synthetically degraded National Oceanic and Atmospheric Administration temperature dataset, and apply it to the Array of Things city-scale sensor network in Chicago, IL, showing superior results compared with several established online and batch-based low-rank decomposition methods.
基于在线张量恢复的大型环境传感器网络流数据预处理
通过低成本的城市环境传感器网络,现在可以在细粒度尺度上测量建筑和自然环境。然而,细粒度的城市规模数据分析由于繁琐的数据清理(包括去除异常值和输入缺失数据)而变得复杂。虽然已有许多方法可以自动纠正异常和输入缺失条目,但对于大时空尺度和变化模式的数据仍然存在挑战。为了解决这些挑战,我们提出了一种在线鲁棒张量恢复(OLRTR)方法来预处理高维城市环境数据集。计算一个捕获数据底层模式的小型字典,并用新数据不断更新它。OLRTR支持提供连续数据流的大型传感器网络的在线恢复,与离线批处理相比,其计算内存使用量更低。此外,我们制定了目标函数,使OLRTR可以检测结构化的异常值,例如长时间的错误读数。我们在综合退化的美国国家海洋和大气管理局温度数据集上验证了OLRTR,并将其应用于伊利诺伊州芝加哥的Array of Things城市规模传感器网络,与几种已建立的在线和基于批处理的低秩分解方法相比,显示出更好的结果。
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