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首页> 外文期刊>International Journal of Distributed Sensor Networks >An improved belief entropy–based uncertainty management approach for sensor data fusion
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An improved belief entropy–based uncertainty management approach for sensor data fusion

机译:改进的基于信念熵的传感器数据融合不确定性管理方法

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In real applications, sensors may work in complicated environments; thus, how to measure the uncertain degree of sensor reports before applying sensor data fusion is a big challenge. To address this issue, an improved belief entropy–based uncertainty management approach for sensor data fusion is proposed in this article. First, the sensor report is modeled as the body of evidence in Dempster–Shafer framework. Then, the uncertainty measure of each body of evidence is based on the subjective uncertainty represented as the evidence sufficiency and evidence importance, and the objective uncertainty measure is expressed as the improved belief entropy. Evidence modification of conflict sensor data is based on the proposed uncertainty management approach before evidence fusion with Dempster’s rule of combination. Finally, the fusion result can be applied in real applications. A case study on sensor data fusion for fault diagnosis is presented to show the rationality of the proposed method.
机译:在实际应用中,传感器可能在复杂的环境中工作。因此,在应用传感器数据融合之前如何测量传感器报告的不确定程度是一个很大的挑战。为了解决这个问题,本文提出了一种改进的基于信念熵的传感器数据融合不确定性管理方法。首先,传感器报告被建模为Dempster-Shafer框架中的证据。然后,基于证据的充足性和重要性的主观不确定性,对每个证据主体的不确定性度量,将客观的不确定性度量表示为改进的置信熵。冲突传感器数据的证据修改基于证据与Dempster合并规则融合之前提出的不确定性管理方法。最后,融合结果可以应用于实际应用中。通过对传感器数据融合进行故障诊断的案例研究,证明了该方法的合理性。

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