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A novel multilayer neural network model for TOA-based localization in wireless sensor networks

机译:无线传感器网络中基于TOA定位的新型多层神经网络模型

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A novel multilayer neural network model, called artificial synaptic network, was designed and implemented for single sensor localization with time-of-arrival (TOA) measurements. In the TOA localization problem, the location of a source sensor is estimated based on its distance from a number of anchor sensors. The measured distance values are noisy and the estimator should be able to handle different amounts of noise. Three neural network models: the proposed artificial synaptic network, a multi-layer perceptron network, and a generalized radial basis functions network were applied to the TOA localization problem. The performance of the models was compared with one another. The efficiency of the models was calculated based on the memory cost. The study result shows that the proposed artificial synaptic network has the lowest RMS error and highest efficiency. The robustness of the artificial synaptic network was compared with that of the least square (LS) method and the weighted least square (WLS) method. The Cramer-Rao lower bound (CRLB) of TOA localization was used as a benchmark. The model's robustness in high noise is better than the WLS method and remarkably close to the CRLB.
机译:针对到达时间(TOA)测量的单传感器定位,设计并实现了一种新型的多层神经网络模型,称为人工突触网络。在TOA定位问题中,基于源传感器与多个锚定传感器的距离来估计源传感器的位置。测得的距离值有噪声,估计器应能够处理不同数量的噪声。三种神经网络模型:拟议的人工突触网络,多层感知器网络和广义径向基函数网络被应用于TOA定位问题。将模型的性能相互比较。模型的效率是根据内存成本计算的。研究结果表明,所提出的人工突触网络具有最低的RMS误差和最高的效率。将人工突触网络的鲁棒性与最小二乘法(LS)和加权最小二乘(WLS)方法进行了比较。 TOA本地化的Cramer-Rao下界(CRLB)被用作基准。该模型在高噪声下的鲁棒性优于WLS方法,并且非常接近CRLB。

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