Quantized Kalman Filtering

Shu-Li Sun, Jianyong Lin, Lihua Xie, Wendong Xiao
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引用次数: 46

Abstract

This paper is concerned with the estimation problem for a dynamic stochastic estimation in a sensor network. Firstly, the quantized Kalman filter based on the quantized observations (QKFQO) is presented. Approximate solutions for two optimal bandwidth scheduling problems are given, where the tradeoff between the number of quantization levels or the bandwidth constraint and the energy consumption is considered. However, for a large observed output, quantizing observations will result in large information loss under the limited bandwidth. To reduce the information loss, another quantized Kalman filter based on quantized innovations (QKFQI) is developed, which requires that the fusion center broadcast the one-step prediction of state and innovation variances to the tasking sensor nodes. Compared with QKFQO, QKFQI has better accuracy. Simulations show the effectiveness.
量化卡尔曼滤波
研究了传感器网络中动态随机估计的估计问题。首先,提出了基于量化观测的量化卡尔曼滤波(QKFQO)。给出了两个最优带宽调度问题的近似解,其中考虑了量化层次数或带宽约束与能量消耗之间的权衡。然而,对于大的观测输出,在有限的带宽下,量化观测会导致大的信息损失。为了减少信息损失,提出了一种基于量化创新的量化卡尔曼滤波器(QKFQI),该滤波器要求融合中心将状态和创新方差的一步预测广播到任务传感器节点。与QKFQO相比,QKFQI具有更好的准确性。仿真结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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