Title :
Estimation of molecular weight distribution of CIS-polyisoprene melts from dielectric loss spectra using neural networks
Author :
Kozek, Martin ; Miklau, Denis ; Jorgl, H. Peter
Author_Institution :
Inst. for Machine- & Process-Autom., Vienna Univ. of Technol., Vienna, Austria
Abstract :
While the prediction of dielectric loss spectra (DLS) from molecular weight distributions (MWD) is relatively straightforward the inversion is known to be an intrinsically ill-posed problem with high sensitivity to measurement noise. We propose artificial neural networks to solve this problem in two steps: First, the measured DLS is approximated by a special basis function network (BFN), thus reducing the data considerably and inherently smoothing the spectra. Second, a group of simple feedforward networks is employed to estimate the parameters of another BFN. The output of this second BFN is the estimate of the MWD. A simulation demonstrates the performance of the new method.
Keywords :
dielectric losses; neural nets; polymer melts; production engineering computing; MWD; artificial neural networks; basis function network; cis -polyisoprene melts; dielectric loss spectra; measurement noise; molecular weight distribution estimation; Approximation methods; Dielectrics; Neural networks; Noise measurement; Polymers; Shape; Training; Neural Networks; Process Automation; Signal and Systems;
Conference_Titel :
Control Conference (ECC), 2001 European
Conference_Location :
Porto
Print_ISBN :
978-3-9524173-6-2