Critical analysis of smart environment sensor data behavior pattern based on sequential data mining techniques
Abstract
Purpose
Behavioral pattern mining for intelligent system such as SmEs sensor data are vitally important in many applications and performance optimizations. Sensor pattern mining (SPM) is also dynamic and a hot research issue to pervasive and ubiquitous of smart technologies toward improving human life. However, in large-scale sensor data, exploring and mining pattern, which leads to detect the abnormal behavior is challenging. The paper aims to discuss these issues.
Design/methodology/approach
Sensor data are complex and multivariate, for example, which data captured by the sensors, how it is precise, what properties are recorded or measured, are important research issues. Therefore, the method, the authors proposed Sequential Data Mining (SDM) approach to explore pattern behaviors toward detecting abnormal patterns for smart space fault diagnosis and performance optimization in the intelligent world. Sensor data types, modeling, descriptions and SPM techniques are discussed in depth using real sensor data sets.
Findings
The outcome of the paper is measured as introducing a novel idea how SDM technique’s scale-up to sensor data pattern mining. In the paper, the approach and technicality of the sensor data pattern analyzed, and finally the pattern behaviors detected or segmented as normal and abnormal patterns.
Originality/value
The paper is focussed on sensor data behavioral patterns for fault diagnosis and performance optimizations. It is other ways of knowledge extraction from the anomaly of sensor data (observation records), which is pertinent to adopt in many intelligent systems applications, including safety and security, efficiency, and other advantages as the consideration of the real-world problems.
Keywords
Acknowledgements
The authors are very thankful to the anonymous reviewers for their useful comments. The works is supported by the National Natural Science Foundation of China under Grant No. 61004112 and the Third Stage Building of “211 Project“ under Grant No. S-10218 and the project of Innovative Team Building under the Grant No. 2009091011.
Citation
Gebremeskel, G.B., Yi, C., Wang, C. and He, Z. (2015), "Critical analysis of smart environment sensor data behavior pattern based on sequential data mining techniques", Industrial Management & Data Systems, Vol. 115 No. 6, pp. 1151-1178. https://doi.org/10.1108/IMDS-12-2014-0386
Publisher
:Emerald Group Publishing Limited
Copyright © 2015, Emerald Group Publishing Limited