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Improving Reliability of Particle Filter-Based Localization in Wireless Sensor Networks via Hybrid Particle/FIR Filtering

机译:通过混合粒子/ FIR滤波提高无线传感器网络中基于粒子滤波器的定位的可靠性

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摘要

The need for accurate, fast, and reliable indoor localization using wireless sensor networks (WSNs) has recently grown in diverse areas of industry. Accurate localization in cluttered and noisy environments is commonly provided by means of a mathematical algorithm referred to as a state estimator or filter. The particle filter (PF), which is the most commonly used filter in localization, suffers from the sample impoverishment problem under typical conditions of real-time localization based on WSNs. This paper proposes a novel hybrid particle/finite impulse response (FIR) filtering algorithm for improving reliability of PF-based localization schemes under harsh conditions causing sample impoverishment. The hybrid particle/FIR filter detects the PF failures and recovers the failed PF by resetting the PF using the output of an auxiliary FIR filter. Combining the regularized particle filter (RPF) and the extended unbiased FIR (EFIR) filter, the hybrid RP/EFIR filter is constructed in this paper. Through simulations, the hybrid RP/EFIR filter demonstrates its improved reliability and ability to recover the RPF from failures.
机译:使用无线传感器网络(WSN)进行准确,快速和可靠的室内本地化的需求最近在工业的各个领域中日益增长。通常在被称为状态估计器或滤波器的数学算法的帮助下,在杂乱和嘈杂的环境中提供准确的定位。粒子过滤器(PF)是定位中最常用的过滤器,在基于WSN的实时定位的典型条件下会遇到样品贫乏的问题。本文提出了一种新颖的混合粒子/有限冲激响应(FIR)滤波算法,以提高在恶劣条件下导致样本贫困的基于PF的定位方案的可靠性。混合粒子/ FIR滤波器可检测到PF故障,并通过使用辅助FIR滤波器的输出重置PF来恢复出现故障的PF。结合正则化粒子滤波器(RPF)和扩展无偏FIR(EFIR)滤波器,构建了混合式RP / EFIR滤波器。通过仿真,混合RP / EFIR滤波器证明了其提高的可靠性和从故障中恢复RPF的能力。

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