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Monitoring and classifying animal behavior using ZigBee-based mobile ad hoc wireless sensor networks and artificial neural networks.

机译:使用基于ZigBee的移动自组织无线传感器网络和人工神经网络对动物行为进行监视和分类。

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Animal welfare is an issue of great importance in modern food production systems. Because animal behavior provides reliable information about animal health and welfare, recent research has aimed at designing monitoring systems capable of measuring behavioral parameters and transforming them into their corresponding behavioral modes. However, network unreliability and high-energy consumption have limited the applicability of those systems. In this study, a 2.4-GHz ZigBee-based mobile ad hoc wireless sensor network (MANET) that is able to overcome those problems is presented. The designed MANET showed high communication reliability, low energy consumption and low packet loss rate (14.8%) due to the deployment of modern communication protocols (e.g. multi-hop communication and handshaking protocol). The measured behavioral parameters were transformed into the corresponding behavioral modes using a multilayer perceptron (MLP)-based artificial neural network (ANN). The best performance of the ANN in terms of the mean squared error (MSE) and the convergence speed was achieved when it was initialized and trained using the Nguyen-Widrow and Levenberg-Marquardt back-propagation algorithms, respectively. The success rate of behavior classification into five classes (i.e. grazing, lying down, walking, standing and others) was 76.2% ( sigmamean=1.06) on average. The results of this study showed an important improvement regarding the performance of the designed MANET and behavior classification compared to the results of other similar studies. All rights reserved, Elsevier.
机译:动物福利是现代食品生产系统中非常重要的问题。由于动物行为可提供有关动物健康和福利的可靠信息,因此最近的研究旨在设计能够测量行为参数并将其转换为相应行为模式的监视系统。但是,网络的不可靠性和高能耗限制了这些系统的适用性。在这项研究中,提出了一种能够克服这些问题的基于2.4 GHz ZigBee的移动自组织无线传感器网络(MANET)。由于部署了现代通信协议(例如多跳通信和握手协议),因此设计的MANET具有较高的通信可靠性,较低的能耗和较低的丢包率(14.8%)。使用基于多层感知器(MLP)的人工神经网络(ANN)将测得的行为参数转换为相应的行为模式。当分别使用Nguyen-Widrow和Levenberg-Marquardt反向传播算法进行初始化和训练时,就均方误差(MSE)和收敛速度而言,ANN的性能最佳。行为分类分为五类(即放牧,躺下,步行,站立和其他)的成功率平均为76.2%(sigma mean = 1.06)。与其他类似研究的结果相比,这项研究的结果表明,在设计的MANET的性能和行为分类方面有重要的改进。保留所有权利,Elsevier。

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