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Fuzzy modelling and model reference neural adaptive control of the concentration in a chemical reactor (CSTR)

机译:化学反应器(CSTR)中浓度的模糊建模和模型参考神经自适应控制

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This simulation study is a fuzzy model-based neural network control method. The basic idea is to consider the application of a special type of neural networks based on radial basis function, which belongs to a class of associative memory neural networks. The novelty of this approach is the use of an RBF neural network controller in a model reference adaptive control architecture, based on a one-step-ahead Takagi–Sugeno fuzzy model. The objective is to control the concentration in a continuous stirred-tank reactor highly non-linear system and to assure its stability by limiting the temperature rise generated from the irreversible exothermic reaction. This contribution will help to reduce environmental impact of chemical waste.
机译:该仿真研究是基于模糊模型的神经网络控制方法。基本思想是考虑基于径向基函数的一种特殊类型的神经网络的应用,该神经网络属于一类联想记忆神经网络。这种方法的新颖之处在于,在基于参考的Takagi-Sugeno模糊模型的模型参考自适应控制体系结构中使用RBF神经网络控制器。目的是控制连续搅拌釜反应器高度非线性系统中的浓度,并通过限制不可逆放热反应产生的温度升高来确保其稳定性。这一贡献将有助于减少化学废物对环境的影响。

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