Data-driven forward-inverse problems for the variable coefficients Hirota equation using deep learning method
Abstract
Data-driven forward-inverse problems for the variable coefficients Hirota (VCH) equation are discussed in this paper. The main idea is to use the improved physics-informed neural networks (IPINN) algorithm with neuron-wise locally adaptive activation function, slope recovery term and parameter regularization to recover the data-driven solitons and high-order soliton of the VCH equation with initial-boundary conditions, as well as the data-driven parameters discovery for VCH equation with unknown parameters under noise of different intensity. Numerical results are shown to demonstrate two facts: (i) data-driven soliton solutions of the VCH equation are successfully learned by adjusting the network layers, neurons, the original training data, spatiotemporal regions and other parameters of the IPINN algorithm; (ii) the prediction parameter can be trained stably and accurately by introducing a parameter regularization strategy with an appropriate weight coefficients into the IPINN algorithm. The results achieved in this work verify the effectiveness of the IPINN algorithm in solving the forward-inverse problems of the variable coefficients equation.
Cite
@article{arxiv.2210.09656,
title = {Data-driven forward-inverse problems for the variable coefficients Hirota equation using deep learning method},
author = {Huijuan Zhou and Juncai Pu and Yong Chen},
journal= {arXiv preprint arXiv:2210.09656},
year = {2022}
}
Comments
21pages,19figures. arXiv admin note: text overlap with arXiv:2109.09266