A dynamic feedforward neural network based on gaussian particle swarm optimization and its application for predictive control.

IEEE transactions on neural networks Pub Date : 2011-09-01 Epub Date: 2011-07-29 DOI:10.1109/TNN.2011.2162341
Min Han, Jianchao Fan, Jun Wang
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引用次数: 84

Abstract

A dynamic feedforward neural network (DFNN) is proposed for predictive control, whose adaptive parameters are adjusted by using Gaussian particle swarm optimization (GPSO) in the training process. Adaptive time-delay operators are added in the DFNN to improve its generalization for poorly known nonlinear dynamic systems with long time delays. Furthermore, GPSO adopts a chaotic map with Gaussian function to balance the exploration and exploitation capabilities of particles, which improves the computational efficiency without compromising the performance of the DFNN. The stability of the particle dynamics is analyzed, based on the robust stability theory, without any restrictive assumption. A stability condition for the GPSO+DFNN model is derived, which ensures a satisfactory global search and quick convergence, without the need for gradients. The particle velocity ranges could change adaptively during the optimization process. The results of a comparative study show that the performance of the proposed algorithm can compete with selected algorithms on benchmark problems. Additional simulation results demonstrate the effectiveness and accuracy of the proposed combination algorithm in identifying and controlling nonlinear systems with long time delays.

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基于高斯粒子群优化的动态前馈神经网络及其在预测控制中的应用。
提出了一种用于预测控制的动态前馈神经网络(DFNN),该网络在训练过程中采用高斯粒子群算法(GPSO)调整自适应参数。在DFNN中加入自适应时滞算子,提高了DFNN对已知的长时滞非线性动态系统的泛化能力。此外,GPSO采用高斯函数的混沌映射来平衡粒子的探测和利用能力,在不影响DFNN性能的前提下提高了计算效率。基于鲁棒稳定性理论,在没有任何约束假设的情况下,分析了粒子动力学的稳定性。推导了GPSO+DFNN模型的稳定性条件,该条件保证了GPSO+DFNN模型在不需要梯度的情况下具有令人满意的全局搜索和快速收敛性。在优化过程中,粒子速度范围可以自适应变化。对比研究结果表明,该算法在基准问题上的性能可与所选算法相媲美。仿真结果验证了该组合算法在识别和控制长时滞非线性系统方面的有效性和准确性。
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来源期刊
IEEE transactions on neural networks
IEEE transactions on neural networks 工程技术-工程:电子与电气
自引率
0.00%
发文量
2
审稿时长
8.7 months
期刊最新文献
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