MOPINNs: An Evolutionary Multi-Objective Approach to Physics-Informed Neural Networks

de Wolff, Taco; Lincopi, Hugo Carrillo; Carrillo Lincopi, Hugo; Marti, Luis; Sanchez-Pi, Nayat; ACM

Abstract

This paper introduces Multi-Objective Physics-Informed Neural Networks (MOPINNs). MOPINNs use an EMO algorithm to find the set of trade-offs between the data and physical losses of PINNs and therefore allow practitioners to correctly identify which of these trade-offs better represent the solution they want to reach. We discuss how MOPINNs overcome the complexity of weighting the different loss functions and to the best of our knowledge this is the first work relating multi-objective optimization problems (MOPs) and PINNs via evolutionary algorithms. We provide an exploratory analysis of this technique in order to determine its feasibility by applying MOPINNs on PDEs of particular interest: the heat, waves, and Burgers equations.

Más información

Título según WOS: MOPINNs: An Evolutionary Multi-Objective Approach to Physics-Informed Neural Networks
Título según SCOPUS: ID SCOPUS_ID:85136322417 Not found in local SCOPUS DB
Título de la Revista: GECCO: Genetic and Evolutionary Computation Conference
Editorial: Association for Computing MachineryNew YorkNYUnited States
Fecha de publicación: 2022
Página de inicio: 228
Página final: 231
Financiamiento/Sponsor: SIGEVO
DOI:

10.1145/3520304.3529071

Notas: ISI, SCOPUS