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LS-SVC based recognition method of the centrifugal pump cavitation intensity

机译:基于LS-SVC的离心泵空化强度识别方法。

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For Least Squares Support Vector Classification (LS-SVC) has prominent advantages in selecting model, overcoming over-fitting and local minimum, and solving the problems of the nonlinear and high-dimensional pattern recognition and etc. by employing structural risk minimization criterion, the method which the centrifugal pump cavitations intensity are identified by using LS-SVC is proposed. It is found that waveform factor, peak factor, impulse factor, margin factor and kurtosis factor can be used as LS-SVC input which recognize five cavitations operating conditions and identify its intensity from weak to strong by simulating calculation successfully. The vibration of centrifugal pump and underwater acoustic signals was regarding as the cavitations feature in the experiment. Five working states, such as the normal condition, the pump lift declining 1%, 2%, and 3% respectively, and performance collapse, were distinguished through the method mentioned in the paper. Finally, compared with identify result of BP and RBF neural networks, the reorganization rate of the LS-SVC is the highest and the operation time is largely reduced.
机译:对于最小二乘支持向量分类法(LS-SVC)在选择模型,克服过度拟合和局部极小以及通过采用结构风险最小化准则来解决非线性和高维模式识别等问题方面具有显着优势。提出了一种利用LS-SVC确定离心泵空化强度的方法。结果发现,波形因子,峰值因子,脉冲因子,余量因子和峰度因子可以作为LS-SVC输入,通过模拟计算成功识别出五种空化工况并确定其强度从弱到强。离心泵的振动和水下声信号被认为是实验中的空化特征。通过本文提到的方法,可以区分出五个工作状态,例如正常状态,泵升程分别下降1%,2%和3%,以及性能下降。最后,与BP和RBF神经网络的识别结果相比,LS-SVC的重组率最高,并且大大减少了操作时间。

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