Heuristic and Bio-inspired Neural Network Model

E-nose technology for detecting indoor harmful gases and concentration estimation of harmful gases and estimating the concentration become feasible by using a multi-sensor system. The estimation accuracy in actual application is concerned too much by manufacturers and researchers. This chapter analyzes the application of different bio-inspired and heuristic techniques to improve the concentration estimation in experimental electronic nose application. In this chapter, seven different particle swarm optimization models are studied including six models used for numerical function optimization, and a novel hybrid model of particle swarm optimization and adaptive genetic algorithm, for optimizing back-propagation multilayer perceptron neural network. We present the performance of a particle swarm optimization technique, an adaptive genetic strategy, and a back-propagation artificial neural network approach to perform concentration estimation of chemical gases and improve the intelligence of an E-nose.

[1]  Arvind D. Shaligram,et al.  Embedded Electronic Nose and Supporting Software Tool for its Parameter Optimization , 2010 .

[2]  S. D. Jong SIMPLS: an alternative approach to partial least squares regression , 1993 .

[3]  I. Sayago,et al.  Analysis of VOCs with a tin oxide sensor array , 1997 .

[4]  Mahdi Vasighi,et al.  Genetic Algorithms for architecture optimisation of Counter-Propagation Artificial Neural Networks , 2011 .

[5]  Chia-Feng Juang,et al.  On the hybrid of genetic algorithm and particle swarm optimization for evolving recurrent neural network , 2004, 2004 IEEE International Joint Conference on Neural Networks (IEEE Cat. No.04CH37541).

[6]  Gregory A. Bakken,et al.  Computational methods for the analysis of chemical sensor array data from volatile analytes. , 2000, Chemical reviews.

[7]  Zulfiqur Ali,et al.  Data analysis for electronic nose systems , 2006 .

[8]  W. Ping,et al.  A novel method for diabetes diagnosis based on electronic nose. , 1997 .

[9]  Wen-Jye Shyr,et al.  Optimizing Multiple Interference Cancellations of Linear Phase Array Based on Particle Swarm Optimization , 2010, J. Inf. Hiding Multim. Signal Process..

[10]  R. J. Kuo,et al.  Application of a hybrid of genetic algorithm and particle swarm optimization algorithm for order clustering , 2010, Decis. Support Syst..

[11]  Randall S. Sexton,et al.  Comparing backpropagation with a genetic algorithm for neural network training , 1999 .

[12]  Özgür Kişi,et al.  Multi-layer perceptrons with Levenberg-Marquardt training algorithm for suspended sediment concentration prediction and estimation / Prévision et estimation de la concentration en matières en suspension avec des perceptrons multi-couches et l’algorithme d’apprentissage de Levenberg-Marquardt , 2004 .

[13]  Jeng-Shyang Pan,et al.  A Parallel Particle Swarm Optimization Algorithm with Communication Strategies , 2005, J. Inf. Sci. Eng..

[14]  Vittorio Maniezzo,et al.  Genetic evolution of the topology and weight distribution of neural networks , 1994, IEEE Trans. Neural Networks.

[15]  J E Haugen,et al.  Electronic nose and artificial neural network. , 1998, Meat science.

[16]  Wang Ping,et al.  A novel recognition method for electronic nose using artificial neural network and fuzzy recognition , 1996 .

[17]  Goldberg,et al.  Genetic algorithms , 1993, Robust Control Systems with Genetic Algorithms.

[18]  Yunlong Zhu,et al.  An Improved Particle Swarm Optimization Based on Bacterial Chemotaxis , 2006, 2006 6th World Congress on Intelligent Control and Automation.

[19]  Adrian D. C. Chan,et al.  Using a metal oxide sensor (MOS)-based electronic nose for discrimination of bacteria based on individual colonies in suspension , 2011 .

[20]  Jeng-Shyang Pan,et al.  An Extensible Particles Swarm Optimization for Energy-Effective Cluster Management of Underwater Sensor Networks , 2010, ICCCI.

[21]  Ángel M. Pérez-Bellido,et al.  Curve fitting using heuristics and bio-inspired optimization algorithms for experimental data processing in chemistry , 2009 .

[22]  Kenneth Alan De Jong,et al.  An analysis of the behavior of a class of genetic adaptive systems. , 1975 .

[23]  Michael R. Lyu,et al.  A hybrid particle swarm optimization-back-propagation algorithm for feedforward neural network training , 2007, Appl. Math. Comput..

[24]  Weigang Jiang,et al.  A Particle Swarm Optimization Algorithm Based on Diffusion-Repulsion and Application to Portfolio Selection , 2008, 2008 International Symposium on Information Science and Engineering.

[25]  O. Ks Multi-layer perceptrons with Levenberg-Marquardt training algorithm for suspended sediment concentration prediction and estimation , 2004 .

[26]  Philip Drake,et al.  Real-time electronic nose based pathogen detection for respiratory intensive care patients , 2010 .

[27]  Doron Lancet,et al.  An eNose algorithm for identifying chemicals and determining their concentration , 2003 .

[28]  Wei Wu,et al.  Convergence analysis of online gradient method for BP neural networks , 2011, Neural Networks.

[29]  Adisorn Tuantranont,et al.  Portable electronic nose based on carbon nanotube-SnO2 gas sensors and its application for detection of methanol contamination in whiskeys , 2010 .

[30]  Ricardo Gutierrez-Osuna,et al.  Pattern analysis for machine olfaction: a review , 2002 .

[31]  Jatinder N. D. Gupta,et al.  Comparative evaluation of genetic algorithm and backpropagation for training neural networks , 2000, Inf. Sci..

[32]  R. Eberhart,et al.  Comparing inertia weights and constriction factors in particle swarm optimization , 2000, Proceedings of the 2000 Congress on Evolutionary Computation. CEC00 (Cat. No.00TH8512).

[33]  Hanying Zhou,et al.  Nonlinear Least-Squares Based Method for Identifying and Quantifying Single and Mixed Contaminants in Air with an Electronic Nose , 2005, Sensors (Basel, Switzerland).

[34]  Alberto Tesi,et al.  On the Problem of Local Minima in Backpropagation , 1992, IEEE Trans. Pattern Anal. Mach. Intell..

[35]  James Kennedy,et al.  Particle swarm optimization , 2002, Proceedings of ICNN'95 - International Conference on Neural Networks.