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Agent Collaborative Target Localization and Classification in Wireless Sensor Networks

机译:无线传感器网络中的Agent协作目标定位和分类

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摘要

Wireless sensor networks (WSNs) are autonomous networks that have been frequently deployed to collaboratively perform target localization and classification tasks. Their autonomous and collaborative features resemble the characteristics of agents. Such similarities inspire the development of heterogeneous agent architecture for WSN in this paper. The proposed agent architecture views WSN as multi-agent systems and mobile agents are employed to reduce in-network communication. According to the architecture, an energy based acoustic localization algorithm is proposed. In localization, estimate of target location is obtained by steepest descent search. The search algorithm adapts to measurement environments by dynamically adjusting its termination condition. With the agent architecture, target classification is accomplished by distributed support vector machine (SVM). Mobile agents are employed for feature extraction and distributed SVM learning to reduce communication load. Desirable learning performance is guaranteed by combining support vectors and convex hull vectors. Fusion algorithms are designed to merge SVM classification decisions made from various modalities. Real world experiments with MICAz sensor nodes are conducted for vehicle localization and classification. Experimental results show the proposed agent architecture remarkably facilitates WSN designs and algorithm implementation. The localization and classification algorithms also prove to be accurate and energy efficient.
机译:无线传感器网络(WSN)是自治网络,经常被部署以协作执行目标本地化和分类任务。它们的自治和协作功能类似于代理的特征。这些相似之处激发了WSN异构代理体系结构的发展。提出的代理体系结构将WSN视为多代理系统,并采用了移动代理来减少网络内通信。根据该架构,提出了一种基于能量的声学定位算法。在定位中,目标位置的估计是通过最速下降搜索获得的。搜索算法通过动态调整其终止条件来适应测量环境。使用代理架构,目标分类是通过分布式支持向量机(SVM)完成的。移动代理用于特征提取和分布式SVM学习,以减少通信负载。通过组合支持向量和凸包向量,可以保证理想的学习性能。融合算法旨在合并由各种模式做出的SVM分类决策。使用MICAz传感器节点进行了真实世界的实验,以进行车辆定位和分类。实验结果表明,所提出的代理架构极大地促进了无线传感器网络的设计和算法的实现。本地化和分类算法也被证明是准确且节能的。

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