Department of Automatic Control and Systems Engineering, The University of Sheffield, Mappin Street, Sheffield, UK.
Neural Netw. 2010 Dec;23(10):1286-99. doi: 10.1016/j.neunet.2010.07.006. Epub 2010 Aug 3.
Starting from the basic concept of coupled map lattices, a new family of adaptive wavelet neural networks (AWNN) is introduced for spatio-temporal system identification, by combining an efficient wavelet representation with a coupled map lattice model. A new orthogonal projection pursuit (OPP) method, coupled with a particle swarm optimization (PSO) algorithm, is proposed for augmenting the proposed network. A novel two-stage hybrid training scheme is developed for constructing a parsimonious network model. In the first stage, by applying the orthogonal projection pursuit algorithm, significant wavelet neurons are adaptively and successively recruited into the network, where adjustable parameters of the associated wavelet neurons are optimized using a particle swarm optimizer. The resultant network model, obtained in the first stage, may however be redundant. In the second stage, an orthogonal least squares algorithm is then applied to refine and improve the initially trained network by removing redundant wavelet neurons from the network. The proposed two-stage hybrid training procedure can generally produce a parsimonious network model, where a ranked list of wavelet neurons, according to the capability of each neuron to represent the total variance in the system output signal is produced. Two spatio-temporal system identification examples are presented to demonstrate the performance of the proposed new modelling framework.
从耦合映射格子的基本概念出发,通过将有效的小波表示与耦合映射格子模型相结合,提出了一种新的自适应小波神经网络(AWNN)家族,用于时空系统辨识。提出了一种新的正交投影寻踪(OPP)方法,并结合粒子群优化(PSO)算法对所提出的网络进行扩展。开发了一种新颖的两阶段混合训练方案,用于构建简约的网络模型。在第一阶段,通过应用正交投影寻踪算法,自适应地、连续地将重要的小波神经元招募到网络中,使用粒子群优化器优化相关小波神经元的可调参数。然而,在第一阶段获得的网络模型可能是冗余的。在第二阶段,然后应用正交最小二乘法通过从网络中删除冗余的小波神经元来改进和优化初始训练的网络。所提出的两阶段混合训练过程通常可以生成一个简约的网络模型,根据每个神经元表示系统输出信号总方差的能力,生成一个小波神经元的排序列表。提出了两个时空系统辨识示例,以验证所提出的新建模框架的性能。