Distributed least square support vector regression for environmental field estimation

Bowen Lu, Dongbing Gu, Huosheng Hu
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引用次数: 2

Abstract

A distributed approach to monitoring the environmental field function with mobile sensor networks is presented in this paper. With this approach, a mobile sensor network is capable to estimate a model of field functions in real-time. This approach consists of two stages, a field function learning stage and a locational optimising stage. A distributed least square support vector regression (LS-SVR) is developed for the field function learning stage. On the locational optimising stage, a gradient based method: centroidal Voronoi tessellation (CVT) is used to allocate each sensor node's position. These two stages are running alternately in a loop so that the field function learning stage can keep updating the field function with new sensor readings resulted from the locational optimising stage, and simultaneously, the locational optimising stage can relocate sensor nodes according to a more accurate field function model. Eventually, the field function is estimated and the sensor nodes are distributed based on the estimated model. The simulation results given in this paper show the effectiveness of this approach.
环境场估计的分布式最小二乘支持向量回归
提出了一种利用移动传感器网络对环境场函数进行分布式监测的方法。利用这种方法,移动传感器网络能够实时估计场函数模型。该方法包括两个阶段,即场函数学习阶段和位置优化阶段。针对场函数学习阶段,提出了分布式最小二乘支持向量回归(LS-SVR)方法。在位置优化阶段,使用基于梯度的方法:质心Voronoi镶嵌(CVT)来分配每个传感器节点的位置。这两个阶段交替循环运行,使得场函数学习阶段可以不断地用位置优化阶段产生的新的传感器读数更新场函数,同时,位置优化阶段可以根据更精确的场函数模型重新定位传感器节点。最后,对场函数进行估计,并根据估计模型对传感器节点进行分布。仿真结果表明了该方法的有效性。
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