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Application of Affine Gray-Box Neural Models for Nonlinear Control of Chemical Processes
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نویسنده
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Bazaei A. ,Johari Majd V.
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منبع
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iranian journal of chemical engineering - 2006 - دوره : 3 - شماره : 1 - صفحه:65 -76
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چکیده
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In this paper, an affine neural model is used to model the unknown part of siso processes with un-modeled actuator dynamics. it is assumed that a partially known first-principles based model of the process, which is invertible with respect to the unknown part, is available. using this available knowledge, i/o training data of the process, and affine neural networks, a serial gray-box model is generated which is suitable for applying feedback linearization. hence, the resulting nonlinear controller works in a large operating region. the superiority of the gray-box over the blackbox approach is investigated for a fermentor using the experimental data borrowed from the literature. simulation results of our case study show that the proposed affine gray-box method is superior to the conventional affine black-box method and preserves extrapolation property.
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کلیدواژه
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Feedback Linearization ,Neural Modeling ,Gray-Box ,Affine Modeling ,Non-linear Control
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آدرس
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tarbiat modares university, Electrical Engineering Department, ایران, tarbiat modares university, Electrical Engineering Department, ایران
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پست الکترونیکی
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majd@modares.ac.ir
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Authors
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