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A Weighted Belief Entropy-Based Uncertainty Measure for Multi-Sensor Data Fusion

机译:基于加权信念熵的多传感器数据融合不确定性度量

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In real applications, how to measure the uncertain degree of sensor reports before applying sensor data fusion is a big challenge. In this paper, in the frame of Dempster–Shafer evidence theory, a weighted belief entropy based on Deng entropy is proposed to quantify the uncertainty of uncertain information. The weight of the proposed belief entropy is based on the relative scale of a proposition with regard to the frame of discernment (FOD). Compared with some other uncertainty measures in Dempster–Shafer framework, the new measure focuses on the uncertain information represented by not only the mass function, but also the scale of the FOD, which means less information loss in information processing. After that, a new multi-sensor data fusion approach based on the weighted belief entropy is proposed. The rationality and superiority of the new multi-sensor data fusion method is verified according to an experiment on artificial data and an application on fault diagnosis of a motor rotor.
机译:在实际应用中,如何在应用传感器数据融合之前测量传感器报告的不确定程度是一个很大的挑战。本文在Dempster-Shafer证据理论的框架下,提出了一种基于Deng熵的加权置信熵来量化不确定信息的不确定性。所提出的信念熵的权重基于命题相对于识别框架(FOD)的相对规模。与Dempster-Shafer框架中的其他不确定性度量相比,新度量不仅关注由质量函数表示的不确定信息,还关注FOD的规模,这意味着信息处理中的信息丢失更少。然后,提出了一种基于加权置信熵的多传感器数据融合新方法。通过对人工数据的实验以及在电机转子故障诊断中的应用,验证了新型多传感器数据融合方法的合理性和优越性。

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