Variational Inverse Discovery of Scalar Field Lagrangians: Automated Physics Law Recovery via Neural Networks

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Abstract

This paper introduces a variational framework for the automated discovery of physical laws from observational field data. By framing the discovery process as an inverse variational problem, we utilize Physics-Informed Neural Networks (PINNs) to recover the underlying Lagrangian density L(phi, d_mu phi) of a phi^4 scalar field. Unlike traditional methods that approximate solutions to differential equations, our LagrangianNet identifies the fundamental functional generator of the dynamics by minimizing the Euler-Lagrange residual. We demonstrate that the Principle of Least Action serves as a universal regularizer, allowing for the accurate reconstruction of non-linear potentials (parameters m^2 and lambda)…

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Topics & keywords

Keywords
  • Artificial neural network
  • Inverse problem
  • Scalar (mathematics)
  • Scalar field
  • Variational principle
  • Convergence (economics)
  • Inverse
UN Sustainable Development Goals
  • Peace, Justice and strong institutions
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