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On-line estimation of vapour pressure of stabilized gasoline via ANN’s
引用本文:何小荣,赵晓光,陈丙珍.On-line estimation of vapour pressure of stabilized gasoline via ANN’s[J].中国化学工程学报,1997,5(1):23-28.
作者姓名:何小荣  赵晓光  陈丙珍
作者单位:He Xiaorong Zhao Xiaoguang and Chen Bingzhen Department of Chemical Engineering,Tsinghua University,Beijing 100084,China
基金项目:Supported by the National Nature Science Foundation of China and the Research Foundation of General Corporation of China Petro-Chemical Industry.
摘    要:The use of artificial neural network based model for the on-line estimation of the Reid Va-por Pressure of stabilized gasoline in a stabilizer after the stripper-reabsorber in the fluid catalyticcracking unit is investigated.The quadratic basis function network(QBFN)which uses a simplequadratic function instead of sigmoid function typically used in back-propagation network is em-ployed.180 sets of historical operation data have been selected for training and testing the QBFN.To overcome the local minimum point which often occurs during the training phase,a new algorithmcombining the simulated annealing approach with the improved GDR has been applied.Furthermore,the developed model has been installed on-line in a refinery for on-line testing.Thetesting results show that the model is sufficiently accurate and it can be used on site as an on-lineanalyzer.

关 键 词:neural  network  Reid  Vapor  Pressure  quadratic  basis  function  simulated  annealing  approach
收稿时间:1996-1-16
修稿时间: 

ON-LINE ESTIMATION OF VAPOUR PRESSURE OF STABILIZED GASOLINE VIA ANN'S
HE Xiaorong,ZHAO Xiaoguang,CHEN Bingzhen.ON-LINE ESTIMATION OF VAPOUR PRESSURE OF STABILIZED GASOLINE VIA ANN'S[J].Chinese Journal of Chemical Engineering,1997,5(1):23-28.
Authors:HE Xiaorong  ZHAO Xiaoguang  CHEN Bingzhen
Affiliation:Department of Chemical Engineering, Tsinghua University, Beijing 100084, China
Abstract:The use of artificial neural network based model for the on-line estimation of the Reid Vapor Pressure of stabilized gasoline in a stabilizer after the stripper-reabsorber in the fluid catalytic cracking unit is investigated. The quadratic basis function network (QBFN) which uses a simple quadratic function instead of sigmoid function typically used in back-propagation network is employed. 180 sets of historical operation data have been selected for training and testing the QBFN. To overcome the local minimum point which often occurs during the training phase, a new algorithm combining the simulated annealing approach with the improved GDR has been applied. Furthermore, the developed model has been installed on-line in a refinery for on-line testing. The testing results show that the model is sufficiently accurate and it can be used on site as an on-line analyzer.
Keywords:neural network  Reid Vapor Pressure  quadratic basis function  simulated annealing approach
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