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2013 IEEE 33rd International Conference on Distributed Computing Systems (2007)
Toronto, Canada
June 25, 2007 to June 27, 2007
ISBN: 0-7695-2837-3
pp: 38
Yongzhen Zhuang , Hong Kong University of Science and Technology
Lei Chen , Hong Kong University of Science and Technology
X. Sean Wang , University of Vermont, Burlington, Vermont
Jie Lian , University of Waterloo, Waterloo
<p>Nowadays, wireless sensor networks have been widely used in many monitoring applications. Due to the low quality of sensors and random effects of the environments, however, it is well known that the collected sensor data are noisy. Therefore, it is very critical to clean the sensor data before using them to answer queries or conduct data analysis. Popular data cleaning approaches, such as the moving average, cannot meet the requirements of both energy efficiency and quick response time in many sensor related applications.</p> <p>In this paper, we propose a hybrid sensor data cleaning approach with confidence. Specifically, we propose a smart weighted moving average (WMA) algorithm that collects confidence data from sensors and computes the weighted moving average. The rationale behind the WMA algorithm is to draw more samples for a particular value that is of great importance to the moving average, and provide higher confidence weight for this value, such that this important value can be quickly reflected in the moving average. Based on our extensive simulation results, we demonstrate that, compared to the simple moving average (SMA), our WMA approach can effectively clean data and offer quick response time.</p>
Yongzhen Zhuang, Lei Chen, X. Sean Wang, Jie Lian, "A Weighted Moving Average-based Approach for Cleaning Sensor Data", 2013 IEEE 33rd International Conference on Distributed Computing Systems, vol. 00, no. , pp. 38, 2007, doi:10.1109/ICDCS.2007.83
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