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Application of compressive sensing and variance considered machine to condition monitoring

机译:压缩感知和方差机器在状态监测中的应用

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摘要

A significant data problem is encountered with condition monitoring because the sensors need to measure vibration data at a continuous and sometimes high sampling rate. In this study, compressive sensing approaches for condition monitoring are proposed to demonstrate their efficiency in handling a large amount of data and to improve the damage detection capability of the current condition monitoring process. Compressive sensing is a novel sensing/sampling paradigm that takes much fewer data than traditional data sampling methods. This sensing paradigm is applied to condition monitoring with an improved machine learning algorithm in this study. For the experiments, a built-in rotating system was used, and all data were compressively sampled to obtain compressed data. The optimal signal features were then selected without the signal reconstruction process. For damage classification, we used the Variance Considered Machine, utilizing only the compressed data. The experimental results show that the proposed compressive sensing method could effectively improve the data processing speed and the accuracy of condition monitoring of rotating systems.
机译:由于传感器需要以连续且有时高采样率测量振动数据,因此在状态监视中会遇到严重的数据问题。在这项研究中,提出了用于状态监视的压缩感测方法,以证明其在处理大量数据方面的效率,并提高了当前状态监视过程的损坏检测能力。压缩感测是一种新颖的感测/采样范例,与传统的数据采样方法相比,它需要更少的数据。在本研究中,该感测范式通过改进的机器学习算法应用于状态监测。对于实验,使用了内置旋转系统,并对所有数据进行压缩采样以获得压缩数据。然后选择最佳信号特征,而无需信号重建过程。对于损坏分类,我们使用了“仅考虑压缩数据”的“考虑方差的机器”。实验结果表明,所提出的压缩感知方法可以有效地提高数据处理速度和旋转系统状态监测的准确性。

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