首页> 外文会议>Networking, Sensing and Control, 2009. ICNSC '09 >Statistic information tracking of Non-Gaussian systems: A data-driven control framework based on adaptive NN modeling
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Statistic information tracking of Non-Gaussian systems: A data-driven control framework based on adaptive NN modeling

机译:非高斯系统的统计信息跟踪:基于自适应NN建模的数据驱动控制框架

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A new type of data-driven control framework for non-Gaussian stochastic systems is established in this paper. Different from the traditional feedback style, the driven information for tracking problem is the statistic information set (SIS) of the output rather than the output value. The set of statistical information (including the moments and the entropy) or probability density functions (PDFs) of the output are the measured information and the controlled objective. Under this framework, a mixed two-step adaptive neural network (NN) modeling is established with combining a static NN for description of the statistic information or PDFs and a dynamic one for identification of the relationship between input and output weight vectors. An adaptive PI tracking controller based on the proposed dynamic NNs is designed so as to track a target stochastic distribution. Finally, simulation results on a model in paper-making processes are given to demonstrate the effectiveness.
机译:本文建立了一种新型的非高斯随机系统数据驱动控制框架。与传统的反馈方式不同,用于跟踪问题的驱动信息是输出的统计信息集(SIS),而不是输出值。输出的一组统计信息(包括弯矩和熵)或概率密度函数(PDF)是测量信息和受控目标。在此框架下,建立了混合两步自适应神经网络(NN)建模,其中结合了用于描述统计信息或PDF的静态NN和用于识别输入和输出权重向量之间关系的动态模型。设计了一种基于提出的动态神经网络的自适应PI跟踪控制器,以跟踪目标的随机分布。最后,给出了造纸过程中模型的仿真结果以证明其有效性。

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