Markidis, Stefano (2022) On physics-informed neural networks for quantum computers. Frontiers in Applied Mathematics and Statistics, 8. ISSN 2297-4687
pubmed-zip/versions/2/package-entries/fams-08-1036711-r1/fams-08-1036711.pdf - Published Version
Download (1MB)
Abstract
Physics-Informed Neural Networks (PINN) emerged as a powerful tool for solving scientific computing problems, ranging from the solution of Partial Differential Equations to data assimilation tasks. One of the advantages of using PINN is to leverage the usage of Machine Learning computational frameworks relying on the combined usage of CPUs and co-processors, such as accelerators, to achieve maximum performance. This work investigates the design, implementation, and performance of PINNs, using the Quantum Processing Unit (QPU) co-processor. We design a simple Quantum PINN to solve the one-dimensional Poisson problem using a Continuous Variable (CV) quantum computing framework. We discuss the impact of different optimizers, PINN residual formulation, and quantum neural network depth on the quantum PINN accuracy. We show that the optimizer exploration of the training landscape in the case of quantum PINN is not as effective as in classical PINN, and basic Stochastic Gradient Descent (SGD) optimizers outperform adaptive and high-order optimizers. Finally, we highlight the difference in methods and algorithms between quantum and classical PINNs and outline future research challenges for quantum PINN development.
Item Type: | Article |
---|---|
Subjects: | European Scholar > Mathematical Science |
Depositing User: | Managing Editor |
Date Deposited: | 11 Feb 2023 05:34 |
Last Modified: | 12 Jul 2024 09:31 |
URI: | http://article.publish4promo.com/id/eprint/589 |