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Control strategy for a non-perfect mixed livestock building, based on adaptive on-line identification

Control strategy for a non-perfect mixed livestock building, based on adaptive on-line identification

Latest developments in livestock housing Proceedings of the Seminar of the 2nd Technical Section of the CIGR [Commission Internationale du Genie Rural], University of Illinois, Urbana Champaign, Illinois, USA, 22-26 June 1987: 271-280

A model based on physical laws and in which every parameter has a physical meaning, is proposed to calculate the inside climate in confined spaces, e.g. a modern pig house. This model makes the assumption of a non-perfectly mixed airspace. Ventilating rate and heat supply are presumed to change as a non-linear function of inside temp. To estimate the model-parameters the technique of singular value decomposition was used.

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