Evolutionary Chromatographic Law Identification by Recurrent Neural Nets

Analytic chromatography is a physical process whose aim is the separation of the components of a chemical mixture, based on their different aanities for some porous medium through which they are percolated. This paper presents an application of evolutionary recurrent neural nets optimization to the identiication of the internal law of chromatography. New mutation operators involving the parameters of a single neuron are introduced. Furthermore, the strategy for using of the diierent kind of mutation takes into account the past history of the neural net at hand. The rst results for one-and two-component mixtures demonstrate the basic feasibility of the recurrent neural net approach. A strategy to improve the robustness of the results is presented .

[1]  X. Yao A Review of Evolutionary Artiicial Neural Networks 1 2 , 1993 .

[2]  D. E. Rumelhart,et al.  chapter Parallel Distributed Processing, Exploration in the Microstructure of Cognition , 1986 .

[3]  Peter J. Angeline,et al.  An evolutionary algorithm that constructs recurrent neural networks , 1994, IEEE Trans. Neural Networks.

[4]  Pierre Rouchon,et al.  Numerical Simulation of Band Propagation in Nonlinear Chromatography , 1987, Preparative-Scale Chromatography.

[5]  François James Sur la modelisation mathematique des equilibres diphasiques et des colonnes de chromatographie , 1990 .

[6]  Lawrence J. Fogel,et al.  Artificial Intelligence through Simulated Evolution , 1966 .

[7]  W. Daniel Hillis,et al.  Co-evolving parasites improve simulated evolution as an optimization procedure , 1990 .

[8]  Michèle Sebag,et al.  Controlling Crossover through Inductive Learning , 1994, PPSN.

[9]  Thomas G. Dietterich What is machine learning? , 2020, Archives of Disease in Childhood.

[10]  Yves Grandvalet,et al.  Comments on "Noise injection into inputs in back propagation learning" , 1995, IEEE Trans. Syst. Man Cybern..

[11]  Elijah Polak,et al.  Computational methods in optimization , 1971 .

[12]  Randall D. Beer On the Dynamics of a Continuous Hopfield Neuron with Self-Connection , 1994 .

[13]  Peter J. Angeline Evolutionary algorithms and emergent intelligence , 1993 .

[14]  Mauricio Sepulveda Cortes Identification de paramètres pour un système hyperbolique : application à l'estimation des isothermes en chromatographie , 1993 .

[15]  Halbert White,et al.  Connectionist nonparametric regression: Multilayer feedforward networks can learn arbitrary mappings , 1990, Neural Networks.

[16]  Kiyotoshi Matsuoka,et al.  Noise injection into inputs in back-propagation learning , 1992, IEEE Trans. Syst. Man Cybern..

[17]  Marc Schoenauer,et al.  Neuro-genetic truck backer-upper controller , 1994, Proceedings of the First IEEE Conference on Evolutionary Computation. IEEE World Congress on Computational Intelligence.