More about HKUST
A Survey on Data Quality Analysis in Wireless Sensor Networks
PhD Qualifying Examination Title: "A Survey on Data Quality Analysis in Wireless Sensor Networks" by Mr. Xin MIAO Abstract: Wireless sensor networks (WSNs) have been widely used in many fields such as environmental surveillance, emergency navigation, traffic monitoring, and industrial control. Data collected from WSNs, however, often contain incomplete, inaccurate, incorrect or inconsistent parts. Users may draw false conclusions from data and then make wrong decisions, which can severely hamper the usage of WSNs. Therefore, how to clean and repair sensor data is becoming an important task in recent years. This survey provides an overview of state-of-art techniques to analyze and improve the quality of sensor data. In general, existing approaches can be divided into two categories: anomaly detection and data repairing. In the first category, abnormal data (a.k.a., outliers) are detected using statistical models, while in the second category, contradictions in the data are detected and fixed with editing rules or master data. Among all these techniques, no one is a clear favorite since they address the problem from different aspects. This survey elaborates these approaches in depth and also compares their design tradeoffs, advantages and disadvantages. Moreover, the unsolved issues and future research directions in this open area are also discussed. Date: Tuesday, 11 January 2011 Time: 10:00am - 12:00noon Venue: Room 3501 lifts 25/26 Committee Members: Dr. Yunhao Liu (Supervisor) Prof. Dimitris Papadias (Supervisor) Dr. Lei Chen (Chairperson) Dr. Lin Gu Prof. Lionel Ni **** ALL are Welcome ****