Hard constraint learning approaches with trainable influence functions for evolutionary equations
Yushi Zhang, Shuai Su, Yong Wang, Yanzhong Yao

TL;DR
This paper introduces a deep learning method that combines sequential learning, trainable influence functions, and improved hard constraints to solve evolutionary equations more accurately and efficiently over large temporal domains.
Contribution
It proposes a novel influence function with trainable parameters and an adaptive time partitioning algorithm to enhance PINN performance for evolutionary equations.
Findings
Improved accuracy over standard PINNs in large time domains
Enhanced stability and continuity of solutions at time nodes
Significant computational efficiency gains
Abstract
This paper develops a novel deep learning approach for solving evolutionary equations, which integrates sequential learning strategies with an enhanced hard constraint strategy featuring trainable parameters, addressing the low computational accuracy of standard Physics-Informed Neural Networks (PINNs) in large temporal domains.Sequential learning strategies divide a large temporal domain into multiple subintervals and solve them one by one in a chronological order, which naturally respects the principle of causality and improves the stability of the PINN solution. The improved hard constraint strategy strictly ensures the continuity and smoothness of the PINN solution at time interval nodes, and at the same time passes the information from the previous interval to the next interval, which avoids the incorrect/trivial solution at the position far from the initial time. Furthermore, by…
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Taxonomy
TopicsConstraint Satisfaction and Optimization · Scheduling and Timetabling Solutions · Metaheuristic Optimization Algorithms Research
