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Gearbox fault diagnosis using RMS based probability density function and entropy measures for fluctuating speed conditions

机译:使用基于RMS的概率密度函数和熵测度对变速箱条件进行变速箱故障诊断

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Fault diagnosis of gearbox which operates on low rotating speed with high fluctuations is highly important because its ignorance can led to a catastrophe. The uncertainty within the vibration signal of the gearbox can be identified by the entropy measures, on the basis of probability density function of a signal. But, under fluctuating speeds, entropies may show insignificant results, hence making them non-reliable. The aim of this article is to develop a reliable and stable technique for gear fault detection under such fluctuating speeds. Therefore, a root mean square-based probability density function is proposed to improve the efficiency of entropy measures. The fault detection capabilities of proposed technique were demonstrated experimentally. Various entropy measures, namely, Shannon entropy, Renyi entropy, approximate entropy, and sample entropy, were compared as well as evaluated for both Gaussian and proposed probability density function. The proposed technique was further validated using two condition indicators based on amplitude of probability density function. Results suggest the effective fault diagnosis using proposed method.
机译:在低转速下波动较大的齿轮箱的故障诊断非常重要,因为其无知会导致灾难。变速箱振动信号内的不确定性可以根据信号的概率密度函数通过熵测度来识别。但是,在速度波动的情况下,熵可能会显示无关紧要的结果,因此使其不可靠。本文的目的是开发一种在如此波动的速度下可靠且稳定的齿轮故障检测技术。因此,提出了一种基于均方根的概率密度函数,以提高熵测度的效率。实验证明了所提技术的故障检测能力。比较了各种熵测度,即Shannon熵,Renyi熵,近似熵和样本熵,并对高斯和建议的概率密度函数进行了评估。基于概率密度函数幅度的两个条件指标进一步验证了所提出的技术。结果表明使用所提出的方法可以进行有效的故障诊断。

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