IEEE Trans Neural Netw Learn Syst. 2014 Feb;25(2):265-77. doi: 10.1109/TNNLS.2013.2272594.
The multikernel least-mean-square algorithm is introduced for adaptive estimation of vector-valued nonlinear and nonstationary signals. This is achieved by mapping the multivariate input data to a Hilbert space of time-varying vector-valued functions, whose inner products (kernels) are combined in an online fashion. The proposed algorithm is equipped with novel adaptive sparsification criteria ensuring a finite dictionary, and is computationally efficient and suitable for nonstationary environments. We also show the ability of the proposed vector-valued reproducing kernel Hilbert space to serve as a feature space for the class of multikernel least-squares algorithms. The benefits of adaptive multikernel (MK) estimation algorithms are illuminated in the nonlinear multivariate adaptive prediction setting. Simulations on nonlinear inertial body sensor signals and nonstationary real-world wind signals of low, medium, and high dynamic regimes support the approach.
多内核最小均方算法被引入到矢量值非线性非平稳信号的自适应估计中。这是通过将多变量输入数据映射到时变矢量值函数的 Hilbert 空间来实现的,其内积(核)以在线方式组合。所提出的算法配备了新颖的自适应稀疏化标准,以确保有限的字典,并且计算效率高,适用于非平稳环境。我们还展示了所提出的矢量值再生核 Hilbert 空间作为多内核最小二乘算法类的特征空间的能力。自适应多核 (MK) 估计算法的优势在非线性多变量自适应预测设置中得到了说明。对非线性惯性体传感器信号和低、中、高动态范围的非平稳实际风信号的仿真支持了这种方法。