A Self-Learning Sensor Fault Detection Framework for Industry Monitoring IoT

Many applications based on Internet of Things (IoT) technology have recently founded in industry monitoring area. Thousands of sensors with different types work together in an industry monitoring system. Sensors at different locations can generate streaming data, which can be analyzed in the data center. In this paper, we propose a framework for online sensor fault detection. We motivate our technique in the context of the problem of the data value fault detection and event detection. We use the Statistics Sliding Windows (SSW) to contain the recent sensor data and regress each window by Gaussian distribution. The regression result can be used to detect the data value fault. Devices on a production line may work in different workloads and the associate sensors will have different status. We divide the sensors into several status groups according to different part of production flow chat. In this way, the status of a sensor is associated with others in the same group. We fit the values in the Status Transform Window (STW) to get the slope and generate a group trend vector. By comparing the current trend vector with history ones, we can detect a rational or irrational event. In order to determine parameters for each status group we build a self-learning worker thread in our framework which can edit the corresponding parameter according to the user feedback. Group-based fault detection (GbFD) algorithm is proposed in this paper. We test the framework with a simulation dataset extracted from real data of an oil field. Test result shows that GbFD detects 95% sensor fault successfully.

[1]  Qi Han,et al.  Journal of Network and Systems Management ( c ○ 2007) DOI: 10.1007/s10922-007-9062-0 A Survey of Fault Management in Wireless Sensor Networks , 2022 .

[2]  Christoph Schroth,et al.  The Internet of Things in an Enterprise Context , 2009, FIS.

[3]  Xiuzhen Cheng,et al.  Localized fault-tolerant event boundary detection in sensor networks , 2005, Proceedings IEEE 24th Annual Joint Conference of the IEEE Computer and Communications Societies..

[4]  Renxia Wan,et al.  A Fast Incremental Clustering Algorithm , 2009 .

[5]  Ian F. Akyildiz,et al.  Sensor Networks , 2002, Encyclopedia of GIS.

[6]  Ming Dong,et al.  Progress on event related potential from sensory stimulation for brain computer interface , 2009 .

[7]  Edward Y. Chang,et al.  Adaptive stream resource management using Kalman Filters , 2004, SIGMOD '04.

[8]  Chen Hai-ming Key Technologies and Applications of Internet of Things , 2010 .

[9]  Gao Jian-Liang,et al.  Weighted-Median Based Distributed Fault Detection for Wireless Sensor Networks , 2007 .

[10]  D. Marquardt An Algorithm for Least-Squares Estimation of Nonlinear Parameters , 1963 .

[11]  Gregory J. Pottie,et al.  Sensor network data fault types , 2007, TOSN.

[12]  Michele Zorzi,et al.  Web Services for the Internet of Things through CoAP and EXI , 2011, 2011 IEEE International Conference on Communications Workshops (ICC).

[13]  Xia Zhao,et al.  Distributed structural health monitoring system based on smart wireless sensor and multi-agent technology , 2006 .

[14]  Graham J. Williams,et al.  On-Line Unsupervised Outlier Detection Using Finite Mixtures with Discounting Learning Algorithms , 2000, KDD '00.

[15]  S. Sitharama Iyengar,et al.  Distributed Bayesian algorithms for fault-tolerant event region detection in wireless sensor networks , 2004, IEEE Transactions on Computers.

[16]  Lap-Kei Lee,et al.  Continuous Monitoring of Distributed Data Streams over a Time-Based Sliding Window , 2011, Algorithmica.

[17]  Michele Zorzi,et al.  The Deployment of a Smart Monitoring System Using Wireless Sensor and Actuator Networks , 2010, 2010 First IEEE International Conference on Smart Grid Communications.

[18]  Jeffrey Considine,et al.  Robust approximate aggregation in sensor data management systems , 2009, TODS.

[19]  Sanjeev Khanna,et al.  Power-conserving computation of order-statistics over sensor networks , 2004, PODS.

[20]  Samuel Madden,et al.  Distributed regression: an efficient framework for modeling sensor network data , 2004, Third International Symposium on Information Processing in Sensor Networks, 2004. IPSN 2004.

[21]  Jennifer Widom,et al.  Adaptive filters for continuous queries over distributed data streams , 2003, SIGMOD '03.

[22]  Michele Zorzi,et al.  Health care applications: a solution based on the internet of things , 2011, ISABEL '11.

[23]  Nirvana Meratnia,et al.  Outlier Detection Techniques for Wireless Sensor Networks: A Survey , 2008, IEEE Communications Surveys & Tutorials.