典型文献
Real-time probabilistic sediment concentration forecasting using integrated dynamic network and error distribution heterogeneity
文献摘要:
Sediment forecasting at a dam site is important for the operation and management of water and sedi-ment in a reservoir.However,the forecast results generally have some uncertainties,which may hinder the operation of the dam.In this study,a real-time sediment concentration probabilistic forecasting model is proposed based on a dynamic network model.Under this framework,the Elman neural network(ENN)and nonlinear auto-regressive with exogenous inputs(NARX)neural network models were established for sediment concentration forecasting with different lead times.A hybrid algorithm,which combined the Levenberg-Marquardt algorithm and real-time recurrent learning,was used to train the model.Using the aforementioned method,the sediment concentration was forecast for at the Sanmenxia Dam,China,and,subsequently,the forecast results were evaluated.Among the selected lead time,the results at 5 h exhibited the highest accuracy and practical significance.Compared with the ENN model,the sediment concentration peak error using the NARX neural network was reduced by 4.5%,and the sediment yield error was reduced by 0.043%.Therefore,the NARX neural network was selected as the deterministic sediment forecasting model.Additionally,the probability density function of the sediment concentration was derived based on the heterogeneity of the error distribution,and the sediment concentration interval,with different confidence levels,expected values,and median values,was fore-cast.The Nash—Sutcliffe coefficient of efficiency for the sediment concentration,as forecasted based on the median value,was the highest(0.04 higher than that using a deterministic model),whereas the error of the sediment concentration peak and sediment yield remained unaltered.These results indicated the accuracy and superiority of the proposed real-time sediment probabilistic forecasting hybrid model.
文献关键词:
中图分类号:
作者姓名:
Fangzheng Zhao;Xinyu Wan;Xiaolin Wang;Qingyang Wu;Yan Wu
作者机构:
College of Hydrology and Water Resources,Hohai University,Nanjing 210098,China
文献出处:
引用格式:
[1]Fangzheng Zhao;Xinyu Wan;Xiaolin Wang;Qingyang Wu;Yan Wu-.Real-time probabilistic sediment concentration forecasting using integrated dynamic network and error distribution heterogeneity)[J].国际泥沙研究(英文版),2022(06):766-779
A类:
Sanmenxia
B类:
Real,probabilistic,sediment,concentration,forecasting,using,integrated,dynamic,network,error,distribution,heterogeneity,Sediment,dam,site,important,operation,management,water,reservoir,However,results,generally,have,some,uncertainties,which,may,hinder,In,this,study,real,proposed,Under,framework,Elman,neural,ENN,nonlinear,auto,regressive,exogenous,inputs,NARX,models,were,established,different,lead,times,hybrid,algorithm,combined,Levenberg,Marquardt,recurrent,learning,was,used,train,Using,aforementioned,method,Dam,China,subsequently,evaluated,Among,selected,exhibited,highest,accuracy,practical,significance,Compared,peak,reduced,by,yield,Therefore,deterministic,Additionally,probability,density,function,derived,interval,confidence,levels,expected,values,median,Nash,Sutcliffe,coefficient,efficiency,forecasted,higher,than,that,whereas,remained,unaltered,These,indicated,superiority
AB值:
0.439951
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