典型文献
A hybrid artificial bee colony algorithm and support vector machine for predicting blast-induced ground vibration
文献摘要:
Because nearby construction has harmful effects,precisely predicting blast-induced ground vibration is critical.In this paper,a hybrid artificial bee colony(ABC)and support vector machine(SVM)model was proposed for predicting the value of peak particle velocity(PPV),which is used to describe blast-induced ground vibration.To construct the model,5 potentially relevant factors,including controllable and uncontrollable parameters,were considered as input parameters,and PPV was set as the output parameter.Forty-five samples were recorded from the Hongling lead-zinc mine.An ABC-SVM model was developed and trained on 35 samples via 5-fold cross-validation(CV).A testing set(10 samples)was used to evaluate the prediction performance of the ABC-SVM model.SVM and four empirical models(United States Bureau of Mines(USBM),Amraseys-Hendron(A-H),Langefors-Kihstrom(L-K),and Central Mining Research Institute(CMRI))also were introduced for comparison.Next,the performances of the models were analyzed by using 3 statistical parameters:the correlation coefficient(R2),root-mean-square error(RMSE),and variance accounted for(VAF).ABC-SVM had the highest R2 and VAF values followed by the SVM,A-H,USBM,CMRI,and L-K methods.The results demonstrated that ABC-SVM outperformed SVM and the empirical predictors for predicting PPV.Moreover,the best results from the R2,RMSE,and VAF indices were 0.9628,0.2737,and 96.05%for the ABC-SVM model.The sensitivities of the parameters also were investigated,and the height difference between the blast point and the monitoring station was found to be the parameter that had the most influence on PPV.
文献关键词:
中图分类号:
作者姓名:
Zhu Chun;Xu Yingze;Wu Yongxin;He Manchao;Zhu Chuanqi;Meng Qingxiang;Lin Yun
作者机构:
School of Earth Sciences and Engineering,Hohai University,Nanjing 210098,China;State Key Laboratory of Mining Response and Disaster Prevention and Control in Deep Coal Mines,Anhui University of Science and Technology,Huainan 232001,China;College of Petroleum Engineering,Xi'an Shiyou University,Xi'an 710065,China;State Key Laboratory for Geomechanics&Deep Underground Engineering,China University of Mining and Technology(Beijing),Beijing 100083,China;School of Resources and Safety Engineering,Central South University,Changsha 410083,China
文献出处:
引用格式:
[1]Zhu Chun;Xu Yingze;Wu Yongxin;He Manchao;Zhu Chuanqi;Meng Qingxiang;Lin Yun-.A hybrid artificial bee colony algorithm and support vector machine for predicting blast-induced ground vibration)[J].地震工程与工程振动(英文版),2022(04):861-876
A类:
Hongling,Mines,Amraseys,Hendron,Langefors,Kihstrom
B类:
hybrid,artificial,bee,colony,algorithm,support,vector,machine,predicting,blast,induced,ground,vibration,Because,nearby,construction,has,harmful,effects,precisely,critical,this,paper,ABC,was,proposed,peak,particle,velocity,PPV,which,used,describe,To,potentially,relevant,factors,including,uncontrollable,parameters,were,considered,input,set,output,Forty,five,samples,recorded,from,lead,zinc,mine,An,developed,trained,via,fold,cross,validation,CV,testing,evaluate,prediction,four,empirical,models,United,States,Bureau,USBM,Central,Mining,Research,Institute,CMRI,also,introduced,comparison,Next,performances,analyzed,using,statistical,correlation,coefficient,root,mean,square,error,RMSE,variance,accounted,VAF,had,highest,values,followed,methods,results,demonstrated,that,outperformed,predictors,Moreover,best,indices,sensitivities,investigated,height,difference,between,point,monitoring,station,found,most,influence
AB值:
0.505222
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