Abstract

The deployment of large-scale wireless sensor networks (WSNs) for the Internet of Things (IoT) applications is increasing day-by-day, especially with the emergence of smart city services. The sensor data streams generated from these applications are largely dynamic, heterogeneous, and often geographically distributed over large areas. For high-value use in business, industry and services, these data streams must be mined to extract insightful knowledge, such as about monitoring (e.g., discovering certain behaviors over a deployed area) or network diagnostics (e.g., predicting faulty sensor nodes). However, due to the inherent constraints of sensor networks and application requirements, traditional data mining techniques cannot be directly used to mine IoT data streams efficiently and accurately in real-time. In the last decade, a number of works have been reported in the literature proposing behavioral pattern mining algorithms for sensor networks. This paper presents the technical challenges that need to be considered for mining sensor data. It then provides a thorough review of the mining techniques proposed in the recent literature to mine behavioral patterns from sensor data in IoT, and their characteristics and differences are highlighted and compared. We also propose a behavioral pattern mining framework for IoT and discuss possible future research directions in this area.

Highlights

  • In recent years wireless sensor networks have demonstrated promising applications in many diverse areas including precision agriculture, environment monitoring, industrial automation, asset management, remote health monitoring, and military applications [1]–[3]

  • This paper presents a survey of recent research works on behavioral patterns in sensor data to help researchers locate some seminal works in this area

  • TAXONOMY FRAMEWORK FOR BEHAVIORAL PATTERNS MINING TECHNIQUES FOR IOT Data mining techniques are mainly divided into four categories: (i) clustering (ii) classification (iii) sequential pattern mining and (iv) association rules

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Summary

A Survey on Behavioral Pattern Mining From Sensor Data in Internet of Things

MAMUNUR RASHID 1, (Member, IEEE), JOARDER KAMRUZZAMAN 2, (Senior Member, IEEE), MOHAMMAD MEHEDI HASSAN 3, (Senior Member, IEEE), SAKIB SHAHRIAR SHAFIN 4, AND MD.

INTRODUCTION
RELATED SURVEY WORKS
MAJOR CHALLENGES IN RELATION TO KNOWLEDGE DISCOVERY FROM IOT
TAXONOMY FRAMEWORK FOR BEHAVIORAL PATTERNS MINING TECHNIQUES FOR IOT
BEHAVOIRAL PATTERN MINING FROM IOT
10: Update support value in the SO-list
VIII. CONCLUSION
Full Text
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