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Diagnostic methodology for incipient system disturbance based on a neural wavelet approach.

机译:基于神经小波方法的早期系统故障诊断方法。

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Since incipient system disturbances are easily mixed up with other events or noise sources, the signal from the system disturbance can be neglected or identified as noise. Thus, as available knowledge and information is obtained incompletely or inexactly from the measurements; an exploration into the use of artificial intelligence (AI) tools to overcome these uncertainties and limitations was done. A methodology integrating the feature extraction efficiency of the wavelet transform with the classification capabilities of neural networks is developed for signal classification in the context of detecting incipient system disturbances. The synergistic effects of wavelets and neural networks present more strength and less weakness than either technique taken alone. A wavelet feature extractor is developed to form concise feature vectors for neural network inputs. The feature vectors are calculated from wavelet coefficients to reduce redundancy and computational expense. During this procedure, the statistical features based on the fractal concept to the wavelet coefficients play a role as crucial key in the wavelet feature extractor. To verify the proposed methodology, two applications are investigated and successfully tested. The first involves pump cavitation detection using dynamic pressure sensor. The second pertains to incipient pump cavitation detection using signals obtained from a current sensor. Also, through comparisons between three proposed feature vectors and with statistical techniques, it is shown that the variance feature extractor provides a better approach in the performed applications.
机译:由于初期系统干扰很容易与其他事件或噪声源混合在一起,因此可以忽略或识别来自系统干扰的信号为噪声。因此,由于可用的知识和信息是从测量中不完全或不精确地获得的;探索了使用人工智能(AI)工具克服这些不确定性和局限性的方法。开发了一种将小波变换的特征提取效率与神经网络的分类能力相结合的方法,用于在检测初始系统扰动的情况下进行信号分类。小波和神经网络的协同作用比单独使用任何一种技术都具有更大的优势和更少的劣势。开发了小波特征提取器以形成用于神经网络输入的简明特征向量。从小波系数计算特征向量以减少冗余和计算费用。在此过程中,基于分形概念的小波系数统计特征在小波特征提取器中起着至关重要的作用。为了验证所提出的方法,对两个应用程序进行了研究并成功进行了测试。第一个涉及使用动态压力传感器的泵气蚀检测。第二类涉及使用从电流传感器获得的信号进行的初始泵空化检测。此外,通过比较三个提出的特征向量并使用统计技术,结果表明方差特征提取器在执行的应用程序中提供了更好的方法。

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