Heave compensation prediction based on echo state network with correntropy induced loss function.
Journal: PloS One
Published:
Abstract
In this paper, a new prediction approach is proposed for ocean vessel heave compensation based on echo state network (ESN). To improve the prediction accuracy and enhance the robustness against noise and outliers, a generalized similarity measure called correntropy is introduced into ESN training, which is referred as corr-ESN. An iterative method based on half-quadratic minimization is derived to train corr-ESN. The proposed corr-ESN is used for the heave motion prediction. The experimental results verify its effectiveness.
Authors
Xiaogang Huang, Dongge Lei, Lulu Cai, Tianhao Tang, Zhibin Wang