Savitha R, Suresh S, Sundararajan N
School of Electrical and Electronics Engineering, Nanyang Technological University, Singapore.
Int J Neural Syst. 2009 Aug;19(4):253-67. doi: 10.1142/S0129065709002026.
In this paper, a fully complex-valued radial basis function (FC-RBF) network with a fully complex-valued activation function has been proposed, and its complex-valued gradient descent learning algorithm has been developed. The fully complex activation function, sech(.) of the proposed network, satisfies all the properties needed for a complex-valued activation function and has Gaussian-like characteristics. It maps C(n) --> C, unlike the existing activation functions of complex-valued RBF network that maps C(n) --> R. Since the performance of the complex-RBF network depends on the number of neurons and initialization of network parameters, we propose a K-means clustering based neuron selection and center initialization scheme. First, we present a study on convergence using complex XOR problem. Next, we present a synthetic function approximation problem and the two-spiral classification problem. Finally, we present the results for two practical applications, viz., a non-minimum phase equalization and an adaptive beam-forming problem. The performance of the network was compared with other well-known complex-valued RBF networks available in literature, viz., split-complex CRBF, CMRAN and the CELM. The results indicate that the proposed fully complex-valued network has better convergence, approximation and classification ability.
本文提出了一种具有全复值激活函数的全复值径向基函数(FC-RBF)网络,并开发了其复值梯度下降学习算法。所提出网络的全复激活函数sech(.)满足复值激活函数所需的所有属性,并具有类似高斯的特征。它将C(n)映射到C,这与现有的将C(n)映射到R的复值RBF网络激活函数不同。由于复RBF网络的性能取决于神经元数量和网络参数的初始化,我们提出了一种基于K均值聚类的神经元选择和中心初始化方案。首先,我们使用复异或问题进行收敛性研究。接下来,我们提出一个合成函数逼近问题和双螺旋分类问题。最后,我们给出了两个实际应用的结果,即非最小相位均衡和自适应波束形成问题。将该网络的性能与文献中其他知名的复值RBF网络进行了比较,即分裂复CRBF、CMRAN和CELM。结果表明,所提出的全复值网络具有更好的收敛性、逼近能力和分类能力。