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Dynamic observers - a neural approach

机译:动态观察者-一种神经方法

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Design of static observers employing neural network has already appeared in the literature. In this paper neural networks are exploited to design nonlinear dynamic observers for estimating the states of a nonlinear system. A number of schemes using Multi-layered Feed-forward Neural Network (MFNN) are presented. In the first approach, the neural network is used to approximate the nonlinear Kalman gain of the observer. Two different training schemes are proposed in this structure. Full and reduced order observer schemes based on a more direct approach are then considered. These schemes utilize the neural nets to assume the nonlinear dynamic mapping from the system input and output in order to obtain the estimated states. The network training for all the schemes is based on a gradient algorithm that uses the recently proposed Block Partial Derivatives (BPD). Simulation results are presented to validate the usefulness of the proposed schemes.
机译:使用神经网络的静态观察者的设计已经出现在文献中。本文利用神经网络设计非线性动态观测器,以估计非线性系统的状态。提出了许多使用多层前馈神经网络(MFNN)的方案。在第一种方法中,神经网络用于近似观察者的非线性卡尔曼增益。在此结构中提出了两种不同的训练方案。然后考虑基于更直接方法的全阶和降阶观测器方案。这些方案利用神经网络来假设系统输入和输出的非线性动态映射,以获得估计状态。所有方案的网络训练都是基于梯度算法的,该梯度算法使用了最近提出的块偏导数(BPD)。仿真结果表明了所提方案的有效性。

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