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A new approach for multi-source data prediction in Wireless Sensor Networks: Collaborative filtering

机译:无线传感器网络中多源数据预测的一种新方法:协作滤波

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The prime shortcoming of Wireless Sensor Networks (WSNs) is their energy constraint. The main energy consumer in a sensor node is its radio transmitter. One of the most effective methods to reduce the data transmission rate is data prediction. By data prediction, the amount of transmitted data is reduced; which results in energy saving and the longevity of the network life. Environmental variations almost have similar effects on different sensor sources in a sensor device. So, considering the correlation between different sources reduces the noise impact and increases data prediction accuracy. In this paper, temporal and multi-source correlations are used, to reduce data transmission in WSNs. We have used item-based collaborative filtering for extracting the relationship between different phenomena sensed by sensors in consequent time points. The extracted information is used to predict data value for the next time points. We conducted our simulations on the actual data collected from 54 sensors deployed in the Intel Berkeley Research lab. According to the simulation results, collaborative filtering reduces transmission rate and computational cost, in comparison to the other state of the art methods. When the error threshold is greater than 0.5, it can decrease more than 98% of data transmissions.
机译:无线传感器网络(WSNS)的主要缺点是它们的能量约束。传感器节点中的主要能量消耗器是其无线电发射器。降低数据传输速率的最有效方法之一是数据预测。通过数据预测,传输数据的量减少;这导致节能和网络生活的寿命。环境变化几乎对传感器装置中的不同传感器源具有类似的影响。因此,考虑到不同来源之间的相关性降低了噪声影响并提高了数据预测精度。在本文中,使用时间和多源相关性,以减少WSN中的数据传输。我们使用基于项目的协作滤波来提取由随后的时间点感测的不同现象之间的关系。提取的信息用于预测下一个时间点的数据值。我们对从Intel Berkeley Research Lab中部署的54个传感器收集的实际数据进行了模拟。根据仿真结果,与其他现有技术相比,协作滤波降低了传输速率和计算成本。当误差阈值大于0.5时,它可以降低超过98%的数据传输。

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