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一种基于云模型和改进证据理论的多传感器数据融合方法

A Multi-Sensor Data-Fusion Method Based on Cloud Model and Improved Evidence Theory.

作者信息

Xiang Xinjian, Li Kehan, Huang Bingqiang, Cao Ying

机构信息

School of Automation and Electrical Engineering, Zhejiang University of Science and Technology, Hangzhou 310023, China.

出版信息

Sensors (Basel). 2022 Aug 7;22(15):5902. doi: 10.3390/s22155902.

Abstract

The essential factors of information-aware systems are heterogeneous multi-sensory devices. Because of the ambiguity and contradicting nature of multi-sensor data, a data-fusion method based on the cloud model and improved evidence theory is proposed. To complete the conversion from quantitative to qualitative data, the cloud model is employed to construct the basic probability assignment (BPA) function of the evidence corresponding to each data source. To address the issue that traditional evidence theory produces results that do not correspond to the facts when fusing conflicting evidence, the three measures of the Jousselme distance, cosine similarity, and the Jaccard coefficient are combined to measure the similarity of the evidence. The Hellinger distance of the interval is used to calculate the credibility of the evidence. The similarity and credibility are combined to improve the evidence, and the fusion is performed according to Dempster's rule to finally obtain the results. The numerical example results show that the proposed improved evidence theory method has better convergence and focus, and the confidence in the correct proposition is up to 100%. Applying the proposed multi-sensor data-fusion method to early indoor fire detection, the method improves the accuracy by 0.9-6.4% and reduces the false alarm rate by 0.7-10.2% compared with traditional and other improved evidence theories, proving its validity and feasibility, which provides a certain reference value for multi-sensor information fusion.

摘要

信息感知系统的核心要素是异构多传感设备。由于多传感器数据具有模糊性和矛盾性,提出了一种基于云模型和改进证据理论的数据融合方法。为实现从定量数据到定性数据的转换,采用云模型构建各数据源对应证据的基本概率分配(BPA)函数。针对传统证据理论在融合冲突证据时产生与事实不符结果的问题,结合Jousselme距离、余弦相似度和Jaccard系数这三种测度来衡量证据的相似度。利用区间的Hellinger距离计算证据的可信度。将相似度和可信度相结合对证据进行改进,并根据Dempster规则进行融合,最终得到结果。数值算例结果表明,所提改进证据理论方法具有更好的收敛性和聚焦性,对正确命题的置信度高达100%。将所提多传感器数据融合方法应用于早期室内火灾探测,与传统及其他改进证据理论相比,该方法的准确率提高了0.9 - 6.4%,误报率降低了0.7 - 10.2%,证明了其有效性和可行性,为多传感器信息融合提供了一定的参考价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3cd0/9371418/a9cc3f4e9312/sensors-22-05902-g001.jpg

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