利用多传感器数据融合处理数据不确定性和不一致性

Waleed A. Abdulhafiz, A. Khamis
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引用次数: 25

摘要

传感器提供的数据总是存在一定程度的不确定性和不一致性。多传感器数据融合算法通过结合多个来源的数据来减少不确定性。然而,如果这几个数据源提供的数据不一致,则可能发生灾难性融合,其中多传感器数据融合的性能明显低于每个单个传感器的性能。本文提出了一种多传感器数据融合方法,通过识别和处理不一致的能力来降低数据的不确定性。该方法将改进的贝叶斯融合算法与卡尔曼滤波相结合。根据滤波如何应用于传感器数据、融合数据或两者,描述了三种不同的方法,即预滤波、后滤波和预后滤波。给出了一个使用四个传感器通过估计移动机器人的x和y坐标来确定其位置的实例研究。仿真结果表明,融合与滤波相结合有助于处理数据的不确定性和不一致性问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Handling Data Uncertainty and Inconsistency Using Multisensor Data Fusion
Data provided by sensors is always subjected to some level of uncertainty and inconsistency. Multisensor data fusion algorithms reduce the uncertainty by combining data from several sources. However, if these several sources provide inconsistent data, catastrophic fusion may occur where the performance of multisensor data fusion is significantly lower than the performance of each of the individual sensor. This paper presents an approach tomultisensor data fusion in order to decrease data uncertainty with ability to identify and handle inconsistency. The proposed approach relies on combining a modified Bayesian fusion algorithm with Kalman filtering. Three different approaches, namely, prefiltering, postfiltering and pre-postfiltering are described based on how filtering is applied to the sensor data, to the fused data or both. A case study to find the position of a mobile robot by estimating its x and y coordinates using four sensors is presented. The simulations show that combining fusion with filtering helps in handling the problem of uncertainty and inconsistency of the data.
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