In order to solve the problems of weak prediction stability and generalization ability of a neural network algorithm model in the yarn quality prediction research for small samples,a prediction model based on an AdaBo...In order to solve the problems of weak prediction stability and generalization ability of a neural network algorithm model in the yarn quality prediction research for small samples,a prediction model based on an AdaBoost algorithm(AdaBoost model) was established.A prediction model based on a linear regression algorithm(LR model) and a prediction model based on a multi-layer perceptron neural network algorithm(MLP model) were established for comparison.The prediction experiments of the yarn evenness and the yarn strength were implemented.Determination coefficients and prediction errors were used to evaluate the prediction accuracy of these models,and the K-fold cross validation was used to evaluate the generalization ability of these models.In the prediction experiments,the determination coefficient of the yarn evenness prediction result of the AdaBoost model is 76% and 87% higher than that of the LR model and the MLP model,respectively.The determination coefficient of the yarn strength prediction result of the AdaBoost model is slightly higher than that of the other two models.Considering that the yarn evenness dataset has a weaker linear relationship with the cotton dataset than that of the yarn strength dataset in this paper,the AdaBoost model has the best adaptability for the nonlinear dataset among the three models.In addition,the AdaBoost model shows generally better results in the cross-validation experiments and the series of prediction experiments at eight different training set sample sizes.It is proved that the AdaBoost model not only has good prediction accuracy but also has good prediction stability and generalization ability for small samples.展开更多
针对传统油中溶解气体分析(dissolved gas analysis,DGA)在油浸变压器故障诊断过程中不能够有效地利用故障信息,以及变压器故障样本类型不平衡致使模型诊断结果较差的情况,提出了基于数据扩充和故障特征优化的SCNGO-SVM-AdaBoost变压器...针对传统油中溶解气体分析(dissolved gas analysis,DGA)在油浸变压器故障诊断过程中不能够有效地利用故障信息,以及变压器故障样本类型不平衡致使模型诊断结果较差的情况,提出了基于数据扩充和故障特征优化的SCNGO-SVM-AdaBoost变压器故障诊断技术。首先,针对不平衡样本数据集利用安全级别合成少数过采样技术(safelevel synthetic minority over-sampling technique,Safe-Level SMOTE)对原始的变压器故障样本集进行了数据扩充,然后利用核主成分分析(kernel principal component analysis,K-PCA)算法对比值化后的油色谱数据进行故障特征优化提取。其次在北方苍鹰优化算法(northern goshawk optimization,NGO)中融合了正余弦和折射反向学习策略,利用测试函数验证该算法的稳定性和利用SCNGO优化算法提高其寻优能力。最后通过实际的对未扩充样本诊断和其他方法诊断进行对比分析,结果证明该方法能够有效地提高变压器故障诊断的性能。展开更多
文摘In order to solve the problems of weak prediction stability and generalization ability of a neural network algorithm model in the yarn quality prediction research for small samples,a prediction model based on an AdaBoost algorithm(AdaBoost model) was established.A prediction model based on a linear regression algorithm(LR model) and a prediction model based on a multi-layer perceptron neural network algorithm(MLP model) were established for comparison.The prediction experiments of the yarn evenness and the yarn strength were implemented.Determination coefficients and prediction errors were used to evaluate the prediction accuracy of these models,and the K-fold cross validation was used to evaluate the generalization ability of these models.In the prediction experiments,the determination coefficient of the yarn evenness prediction result of the AdaBoost model is 76% and 87% higher than that of the LR model and the MLP model,respectively.The determination coefficient of the yarn strength prediction result of the AdaBoost model is slightly higher than that of the other two models.Considering that the yarn evenness dataset has a weaker linear relationship with the cotton dataset than that of the yarn strength dataset in this paper,the AdaBoost model has the best adaptability for the nonlinear dataset among the three models.In addition,the AdaBoost model shows generally better results in the cross-validation experiments and the series of prediction experiments at eight different training set sample sizes.It is proved that the AdaBoost model not only has good prediction accuracy but also has good prediction stability and generalization ability for small samples.