Data-Driven Anomaly Detection Based on Multi-Sensor Data Fusion

Di Wang, Ahmad Al-Rubaie, Sandra Stincic, John Davies, A. Aljasmi
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Abstract

In the age of IoT, a huge amount of real time data is produced every second from the colossal number and different types of sensors deployed. A generic and intelligent method to monitor these large data streams from a wide range of sources without human supervision or the use of expert knowledge is a big challenge. In this paper we propose, develop, and test a generic method for anomaly detection which is completely data-driven without human supervision. The proposed method is able to detect the underlying correlations amongst multiple sensors and detect the data patterns from all correlated sensor data through time. Anomalies are detected from marginal deviations from the normal identified patterns. The proposed method is applied to Building Management System’s data which include various types of sensors and proves the generality of the proposed method.
基于多传感器数据融合的数据驱动异常检测
在物联网时代,每秒都有大量的实时数据从部署的大量不同类型的传感器中产生。在没有人工监督或使用专家知识的情况下,从广泛的来源监测这些大数据流的通用和智能方法是一个巨大的挑战。在本文中,我们提出、开发并测试了一种完全由数据驱动而无需人工监督的通用异常检测方法。该方法能够检测多个传感器之间的潜在相关性,并从所有相关传感器数据中检测出随时间变化的数据模式。异常是从正常识别模式的边际偏差中检测出来的。将该方法应用于楼宇管理系统中包含各种类型传感器的数据,证明了该方法的通用性。
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