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System identification of nonlinear dynamical models: Application to wastewater treatment plant

机译:非线性动力学模型的系统辨识:在污水处理厂中的应用

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The paper presents a novel approach to identification of stochastic nonlinear dynamic systems using efficient approximation methods. The motivation behind this work is to develop a computationally efficient and robust algorithm for estimation of wastewater treatment plant model parameters. The mathematical model of the plant is required for the application of advanced predictive control algorithms and condition monitoring. The presented algorithm employs the Expectation-Maximization algorithm to compute the Maximum likelihood estimates of the unknown model parameters. The algorithm uses the Unscented Transformation (UT) to approximate the posterior distribution of the random variable that undergoes a nonlinear transformations. The advantage of this approach lies in efficient approximation methods that greatly reduce the computational load of the algorithm and is therefore suitable for on-line implementation.
机译:本文介绍了使用有效近似方法识别随机非线性动态系统的新方法。这项工作背后的动机是开发一种估计污水处理厂模型参数的计算高效且稳健的算法。植物的数学模型是应用先进预测控制算法和条件监测所必需的。呈现的算法采用期望最大化算法来计算未知模型参数的最大似然估计。该算法使用Unstented的变换(UT)来近似经过非线性变换的随机变量的后部分布。这种方法的优点在于有效地降低了算法的计算负荷,因此适用于在线实现。

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