A hybrid quantum solver for the Lorenz system
- URL: http://arxiv.org/abs/2410.15417v3
- Date: Tue, 19 Nov 2024 16:27:45 GMT
- Title: A hybrid quantum solver for the Lorenz system
- Authors: Sajad Fathi Hafshejani, Daya Gaur, Arundhati Dasgupta, Robert Benkoczi, Narasimha Gosala, Alfredo Iorio,
- Abstract summary: We develop a hybrid classical-quantum method for solving the Lorenz system.
We use the forward Euler method to discretize the system in time, transforming it into a system of equations.
We present numerical results comparing the hybrid method with the classical approach for solving the Lorenz system.
- Score: 0.2770822269241974
- License:
- Abstract: We develop a hybrid classical-quantum method for solving the Lorenz system. We use the forward Euler method to discretize the system in time, transforming it into a system of equations. This set of equations is solved using the Variational Quantum Linear Solver (VQLS) algorithm. We present numerical results comparing the hybrid method with the classical approach for solving the Lorenz system. The simulation results demonstrate that the VQLS method can effectively compute solutions comparable to classical methods. The method is easily extended to solving similar nonlinear differential equations.
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