收稿日期: 2009-12-07
修回日期: 2010-02-25
网络出版日期: 2010-06-25
基金资助
广东省自然科学基金资助项目(9151052101000013); 茂名市重点科技计划项目(20091010)
Task Allocation Method of Sensor Nodes Based on MEMSOM Neural Network in WSN
Received date: 2009-12-07
Revised date: 2010-02-25
Online published: 2010-06-25
Supported by
广东省自然科学基金资助项目(9151052101000013); 茂名市重点科技计划项目(20091010)
关键词: 无线传感器网络; 多目标跟踪; 任务分配; 多弹性子模自组织神经网络; 模糊聚类
刘美 黄道平 . WSN中传感器节点的弹性神经网络任务分配方法[J]. 华南理工大学学报(自然科学版), 2010 , 38(6) : 66 -72 . DOI: 10.3969/j.issn.1000-565X.2010.06.013
In order to reconcile the competition conflict in the task allocation of sensor nodes during the multi-target tracking in wireless sensor networks(WSN),a novel task allocation method is proposed based on the fuzzy clustering and the multiple-elastic module(MEM) self-organizing neural network.In this method,first,the target number is estimated via fuzzy clustering.Next,an integrated performance index is presented to describe the tracking precision and the energy consumption in the multi-target tracking.Then,a self-organizing neural network with non-fully-connected elastic neuron-ring structure is constructed.Moreover,the elastic submodule of neurons are initia-lized by means of the nearest neighbor method,whose receptive field is finally adjusted dynamically according to the WTA(Winner Take All) principle so as to quickly lock the optimal node alliance and ensure an accurate multi-target tracking.Experimental results show that the proposed method effectively reconciles the competition conflict in the task allocation of sensor nodes during the multi-target tracking,avoids further increase in energy consumption and prevents any possible real-time performance degradation due to the competition conflict;and that,in the conditions of random uniform node topology and linear target movement,the proposed method is superior to both the nearest neighbor method and the conventional MEM neural network method,respectively with an energy consumption decrease by 48.2%~55.9% and 37.4%~42.5%,and with a calculation speed increment of 19.0%~27.4%.
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