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Distributed estimation using online semi-supervised particle filter for mobile sensor networks

机译:使用在线半监督粒子滤波器的移动传感器网络分布式估计

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摘要

This study proposes an improved particle filter by incorporating semi-supervised machine learning for location estimation in mobile sensor networks (MSNs). A time-varying prior model is learned online as the likelihood of particle filter in order to adapt to dynamic characteristics of state and observation. Thanks to semi-supervised learning, the proposed particle filter can improve efficiency and accuracy, where the amount of available labelled training data is limited. The authors compare the proposed algorithm with the particle filter based on supervised learning. The algorithms are evaluated for received signal strength indicator (RSSI)-based distributed location estimation for MSN in which communication bandwidth and accuracy of the range measurement are limited. First, experimental results show that the semi-supervised algorithm can learn suddenly-changed RSSI characteristics while the supervised learning cannot. Second, the proposed particle filter is more accurate and robust against variations of the environment such as new obstacle configurations. Furthermore, the suggested particle filter shows low statistical variability during repeated experiments, confirmed by much smaller error deviation than the compared particle filter.
机译:这项研究提出了一种通过结合半监督机器学习来改进移动传感器网络(MSN)位置估计的粒子滤波器。在线学习时变先验模型作为粒子滤波的可能性,以适应状态和观察的动态特征。多亏了半监督学习,提出的粒子滤波器可以提高效率和准确性,而可用的标记训练数据数量有限。作者将提出的算法与基于监督学习的粒子滤波器进行了比较。对算法进行评估,以用于基于MSN的接收信号强度指示器(RSSI)的分布式位置估计,其中通信带宽和范围测量的精度受到限制。首先,实验结果表明,半监督算法可以学习突然变化的RSSI特征,而监督学习则不能。其次,所提出的粒子过滤器对于诸如新的障碍物配置之类的环境变化而言更加精确和耐用。此外,建议的颗粒过滤器在重复实验中显示出较低的统计变异性,这是由比对比颗粒过滤器小得多的误差偏差所证实的。

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