提出基于Laplacian双联最小二乘支持向量机(Laplacian Twin Least Squares Support Vector Machine,LapTLSSVM)半监督模式识别的新型早期故障诊断方法。用时、频域特征集广泛收集旋转机械不同早期故障的特征信息,再用提升半监督局部Fis...提出基于Laplacian双联最小二乘支持向量机(Laplacian Twin Least Squares Support Vector Machine,LapTLSSVM)半监督模式识别的新型早期故障诊断方法。用时、频域特征集广泛收集旋转机械不同早期故障的特征信息,再用提升半监督局部Fisher判别分析(Enhanced Semi-Supervised Local Fisher Discriminant Analysis,ESSLFDA)将高维时、频域特征集约简为具有更好类区分度的低维特征向量,并输入到Lap-TLSSVM中进行早期故障诊断。Lap-TLSSVM引入了包含大量无标签数据信息的流形规则实现半监督学习;其目标函数只含等式约束条件,且用共轭梯度法求解目标函数的线性方程组以加速训练过程。所提出的方法在训练样本非常稀少的情况下具有较高的诊断精度和计算效率。深沟球轴承早期故障诊断实验验证了该方法的有效性。展开更多
Machine learning techniques are finding more and more applications in the field of load forecasting. A novel regression technique,called support vector machine (SVM),based on the statistical learning theory is applied...Machine learning techniques are finding more and more applications in the field of load forecasting. A novel regression technique,called support vector machine (SVM),based on the statistical learning theory is applied in this paper for the prediction of natural gas demands. Least squares support vector machine (LS-SVM) is a kind of SVM that has different cost function with respect to SVM. SVM is based on the principle of structure risk minimization as opposed to the principle of empirical risk minimization supported by conventional regression techniques. The prediction result shows that the prediction accuracy of SVM is better than that of neural network. Thus,SVM appears to be a very promising prediction tool. The software package NGPSLF based on SVM prediction has been put into practical business application.展开更多
文摘提出基于Laplacian双联最小二乘支持向量机(Laplacian Twin Least Squares Support Vector Machine,LapTLSSVM)半监督模式识别的新型早期故障诊断方法。用时、频域特征集广泛收集旋转机械不同早期故障的特征信息,再用提升半监督局部Fisher判别分析(Enhanced Semi-Supervised Local Fisher Discriminant Analysis,ESSLFDA)将高维时、频域特征集约简为具有更好类区分度的低维特征向量,并输入到Lap-TLSSVM中进行早期故障诊断。Lap-TLSSVM引入了包含大量无标签数据信息的流形规则实现半监督学习;其目标函数只含等式约束条件,且用共轭梯度法求解目标函数的线性方程组以加速训练过程。所提出的方法在训练样本非常稀少的情况下具有较高的诊断精度和计算效率。深沟球轴承早期故障诊断实验验证了该方法的有效性。
文摘Machine learning techniques are finding more and more applications in the field of load forecasting. A novel regression technique,called support vector machine (SVM),based on the statistical learning theory is applied in this paper for the prediction of natural gas demands. Least squares support vector machine (LS-SVM) is a kind of SVM that has different cost function with respect to SVM. SVM is based on the principle of structure risk minimization as opposed to the principle of empirical risk minimization supported by conventional regression techniques. The prediction result shows that the prediction accuracy of SVM is better than that of neural network. Thus,SVM appears to be a very promising prediction tool. The software package NGPSLF based on SVM prediction has been put into practical business application.