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ISSN print edition: 0366-6352
ISSN electronic edition: 1336-9075
Registr. No.: MK SR 9/7
Published monthly
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Software sensors for monitoring of a solid waste composting process
N. Bolf, N. Kopčić, F. Briški, and Z. Gomzi
Faculty of Chemical Engineering and Technology, University of Zagreb, Marulićev trg 19, HR-10 000 Zagreb, Croatia
E-mail: bolf@fkit.hr
Received: 3 April 2006 Revised: 1 October 2006 Accepted: 8 October 2006
Abstract: Process identification for composting of tobacco solid waste in an aerobic, adiabatic batch reactor was carried out using neural network-based models which utilized the nonlinear finite impulse response and nonlinear autoregressive model with exogenous inputs identification methods. Two soft sensors were developed for the estimation of conversion. The neural networks were trained by the adaptive gradient method using cascade learning. The developed models showed that the neural networks could be applied as intelligent software sensors giving a possibility of continuous process monitoring. The models have a potential to be used for inferential control of composting process in batch reactors.
Keywords: software sensor - neural network - modeling - solid waste composting - aerobic bioreactor
Full paper is available at www.springerlink.com.
DOI: 10.2478/s11696-007-0005-8
Chemical Papers 61 (2) 98–102 (2007)
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