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A Soft Computing Approach for Modeling of Nonlinear Dynamical Systems

机译:一种用于非线性动力系统建模的软计算方法

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A procedure based on the use of radial basis function network (RBFN) is presented for black box modeling of nonlinear dynamical systems. The generalization ability of RBFN is invoked to approximate the mathematical model of the given unknown nonlinear plant. This approximate model will then be used to predict the output of the plant at any given time instant. The parameters associated with RBFN are updated using the recursive equations obtained through the gradient-descent principle. The other benefit of using gradient descent principle is that it exhibits the clustering effect while adjusting the radial centers of RBFN. Real-time data of two benchmark problems: Box-Jenkins gas furnace data and Chemical process (polymer production), were used to show the application of RBFN for modeling purpose. Simulation results show that RBFN is well suited as a modeling tool for capturing the unknown nonlinear dynamics of the plant.
机译:基于使用径向基函数网络(RBFN)的过程用于非线性动力系统的黑匣子建模。 RBFN的泛化能力被调用以近似于给定的未知非线性植物的数学模型。 然后,该近似模型将用于在任何给定的时间瞬间预测工厂的输出。 使用通过梯度 - 下降原理获得的递归方程更新与RBFN相关联的参数。 使用梯度下降原理的另一个好处是它在调整RBFN的径向中心时它表现出聚类效果。 两个基准问题的实时数据:Box-Jenkins气体炉数据和化学过程(聚合物生产),用于展示RBFN应用于造型目的。 仿真结果表明,RBFN非常适合作为捕获植物未知非线性动态的建模工具。

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