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A new design method for adaptive IIR system identification using hybrid particle swarm optimization and gravitational search algorithm

机译:混合粒子群优化和引力搜索算法的自适应IIR系统辨识的新设计方法

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摘要

Design of adaptive infinite impulse response (IIR) filter is the process of utilizing adaptive algorithm to iteratively determine the filter parameters to obtain an optimal model for the unknown plant based on minimizing the error cost function. However, the error cost surface of IIR filter is generally nonlinear, non-differentiable and multimodal. Hence, an efficient global optimization technique is required to minimize the error cost objective. A novel hybrid particle swarm optimization and gravitational search algorithm (HPSO-GSA) is proposed in this paper for IIR filter design. The proposed HPSO-GSA updates particle positions through obeying the influence of gravity acceleration in GSA and receiving direction of cognitive memory and social sharing information from PSO by means of coevolutionary strategy. The effect of key parameters on the performance of the proposed algorithm is firstly studied, and the proper parameters in HPSO-GSA are established using five benchmark plants along with the same-order model. The simulation studies have been performed for the performance comparison of eight algorithms such as PSO, GSA, QPSO, DPSO, FO-DPSO, GAPSO, PSOGSA and the proposed HPSO-GSA for unknown IIR system identification with the same-order and reduced-order filters. Simulation results show that the proposed algorithm has advantages over PSO, GSA and other PSO-based variants in terms of the convergence speed and the MSE levels.
机译:自适应无限冲激响应(IIR)滤波器的设计是利用自适应算法迭代确定滤波器参数以获得基于最小误差成本函数的未知工厂最优模型的过程。然而,IIR滤波器的误差成本面通常是非线性的,不可微的和多峰的。因此,需要一种有效的全局优化技术来最小化错误成本目标。针对IIR滤波器的设计,提出了一种新颖的混合粒子群优化与引力搜索算法(HPSO-GSA)。拟议的HPSO-GSA通过遵循GSA中的重力加速度的影响以及通过协进化策略从PSO接收认知记忆和社会共享信息的方向来更新粒子位置。首先研究了关键参数对所提出算法性能的影响,并使用五个基准工厂和相同阶次模型建立了HPSO-GSA中合适的参数。已经进行了仿真研究,以比较8种算法的性能,例如PSO,GSA,QPSO,DPSO,FO-DPSO,GAPSO,PSOSGSA和建议的HPSO-GSA,用于未知IIR系统的相同阶次和降阶次识别过滤器。仿真结果表明,该算法在收敛速度和MSE水平上均优于PSO,GSA和其他基于PSO的变体。

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