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Particle Swarm Optimization Iterative Identification Algorithm and Gradient Iterative Identification Algorithm for Wiener Systems with Colored Noise

机译:有色噪声维纳系统的粒子群优化迭代识别算法和梯度迭代识别算法

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This paper considers the parameter identification of Wiener systems with colored noise. The difficulty in the identification is that the model is nonlinear and the intermediate variable cannot be measured. Particle swarm optimization is an artificial intelligence evolutionary method and is effective in solving nonlinear optimization problem. In this paper, we obtain the identification model of the Wiener system and then transfer the parameter identification problem into an optimization problem. Then, we derive a particle swarm optimization iterative (PSOI) identification algorithm to identify the unknown parameter of the Wiener system. Furthermore, a gradient iterative identification algorithm is proposed to compare with the particle swarm optimization iterative algorithm. Numerical simulation is carried out to evaluate the performance of the PSOI algorithm and the gradient iterative algorithm. The simulation results indicate that the proposed algorithms are effective and the PSOI algorithm can achieve better performance over the gradient iterative algorithm.
机译:本文考虑了有色噪声的维纳系统的参数辨识。识别的困难在于模型是非线性的,中间变量无法测量。粒子群算法是一种人工智能的进化方法,可以有效地解决非线性优化问题。在本文中,我们获得了维纳系统的识别模型,然后将参数识别问题转化为优化问题。然后,我们推导了粒子群优化迭代(PSOI)识别算法,以识别Wiener系统的未知参数。提出了一种梯度迭代辨识算法,与粒子群优化迭代算法进行了比较。进行了数值模拟,以评估PSOI算法和梯度迭代算法的性能。仿真结果表明,所提出的算法是有效的,并且PSOI算法比梯度迭代算法具有更好的性能。

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