基于自适应量化信息的卡尔曼滤波

Xianfeng Tang, Quanbo Ge, Chenglin Wen
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引用次数: 0

摘要

在处理传感器网络中动态随机过程的分散估计问题时,由于带宽的限制,降低局部信息的通信成本是很重要的。因此,只有来自本地传感器的原始信息的量化消息可用。针对一类矢量状态向量观测模型,引入自适应量化策略和序列滤波技术设计融合算法。根据原始信息的不同形式,分别提出了两种基于量化测量和量化创新的次优卡尔曼滤波器。相比之下,后者在相同带宽约束下具有更好的估计精度,因为量化创新时信息损失较小。计算机仿真结果表明了两种方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kalman filter based on adaptive quantized information
When dealing with decentralized estimation problem of dynamic stochastic process in a sensor network, it is important to reduce the cost of communicating the local information due to bandwidth constraints. Thus, only quantized messages of the original information from local sensor are available. For a class of vector state-vector observation model, an adaptive quantization strategy and sequential filter technique are introduced to design fusion algorithms in this paper. According to different forms of original information, two suboptimal Kalman filters are presented based on quantized measurements (KFQM) and quantized innovations (KFQI) respectively. In contrast, the latter has better estimation accuracy under the same bandwidth constraints because of the less information loss while quantizing innovations. Computer simulations show the effectiveness of both methods.
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