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Decentralized direct I-term fuzzy-neural control of an anaerobic digestion bioprocess plant

机译:厌氧消化生物过程设备的分散I项直接模糊神经控制

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The paper proposed to use recurrent Fuzzy-Neural Multi-Model (FNMM) identifier for decentralized identification of distributed parameter anaerobic wastewater treatment digestion bioprocess, carried out in fixed bed and recirculation tank. The distributed parameter analytical model of the digestion bioprocess is used as a plant data generator. It is reduced to a lumped system using the orthogonal collocation method, applied in four collocation points (plus one point of the recirculation tank), which are used as centres of the membership functions of the fuzzyfied plant output variables with respect to the space variable. The local and global weight parameters and states of the proposed FNMM identifier are learnt by the Levenberg-Marquardt learning algorithm and they are implemented by a Hierarchical Fuzzy-Neural Multi-Model Direct Controller with Integral Term. The graphical simulation results of the digestion system direct fuzzy-neural I-term learning control, exhibited a good convergence, and precise reference tracking.
机译:提出在固定床和循环水箱中,采用递归模糊神经网络多模型(FNMM)识别器进行分布式参数化厌氧废水消化生物工艺的分散识别。消化生物过程的分布式参数分析模型用作工厂数据生成器。它被简化为使用正交配置方法的集总系统,应用于四个配置点(再循环罐的一个点),这些点被用作模糊化植物输出变量相对于空间变量的隶属函数的中心。所提出的FNMM标识符的局部和全局权重参数和状态由Levenberg-Marquardt学习算法学习,并由带有积分项的层次模糊神经多模型直接控制器实现。消化系统的图形仿真结果直接用于模糊神经I项学习控制,显示出良好的收敛性和精确的参考跟踪。

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