学术报告
Prof. Biao Li: The data-driven discovery of partial differential equations by symbolic genetic algorithm-(I)

Speaker: Prof. Biao Li, Ningbo University          

Title: The data-driven discovery of partial differential equations by symbolic genetic algorithm-(I)

Language: Chinese 

Time & Venue: 2024.11.15  10:00-10:40  N702

Abstract: This report introduces a symbolic genetic algorithm (SGA) for discovering the PDEs capable of independently deriving PDEs directly from data, devoid of prior knowledge regarding equation structure. Primarily, SGA employs a flexible symbol representation of PDEs, transforming these into a forest with each PDEs segment forming a binary tree. Subsequently, SGA utilizes a novel algorithm to update the node attributes of the tree, and optimizes the binary tree (the terms of PDEs), obtaining the definitive form. It is worth mentioning that SGA adopts the sparse regression algorithm in error optimization and finite difference method in derivative approximation, combining the traditional numerical method with the modern method. SGA successfully discovered the KdV equation and two kinds of NLS equations. This algorithm can not only be extended to find out some complex differential equations based on partial data of existing solutions, but also be expected to automatically match some known differential equations or even discover new differential equations.