Graduate School of Bioresources, Mie University, 1577 Kurimamachiya-cho, Tsu, Mie 514-8507, Japan.
Sensors (Basel). 2012;12(5):5919-39. doi: 10.3390/s120505919. Epub 2012 May 8.
This study proposes a new condition diagnosis method for rotating machinery developed using least squares mapping (LSM) and a fuzzy neural network. The non-dimensional symptom parameters (NSPs) in the time domain are defined to reflect the features of the vibration signals measured in each state. A sensitive evaluation method for selecting good symptom parameters using detection index (DI) is also proposed for detecting and distinguishing faults in rotating machinery. In order to raise the diagnosis sensitivity of the symptom parameters the synthetic symptom parameters (SSPs) are obtained by LSM. Moreover, possibility theory and the Dempster & Shafer theory (DST) are used to process the ambiguous relationship between symptoms and fault types. Finally, a sequential diagnosis method, using sequential inference and a fuzzy neural network realized by the partially-linearized neural network (PLNN), is also proposed, by which the conditions of rotating machinery can be identified sequentially. Practical examples of fault diagnosis for a roller bearing are shown to verify that the method is effective.
本研究提出了一种基于最小二乘映射(LSM)和模糊神经网络的旋转机械状态诊断新方法。定义无量纲症状参数(NSP)来反映在每个状态下测量的振动信号的特征。还提出了一种使用检测指标(DI)选择良好症状参数的敏感评估方法,用于检测和区分旋转机械中的故障。为了提高症状参数的诊断灵敏度,通过 LSM 获得综合症状参数(SSPs)。此外,可能性理论和 Dempster & Shafer 理论(DST)用于处理症状和故障类型之间的模糊关系。最后,还提出了一种顺序诊断方法,使用顺序推理和通过部分线性神经网络(PLNN)实现的模糊神经网络,通过该方法可以顺序识别旋转机械的状态。通过故障诊断的实际例子,验证了该方法的有效性。