Dynamic Circuits for the Quantum Lattice-Boltzmann Method
- URL: http://arxiv.org/abs/2502.02131v1
- Date: Tue, 04 Feb 2025 09:04:24 GMT
- Title: Dynamic Circuits for the Quantum Lattice-Boltzmann Method
- Authors: David Wawrzyniak, Josef Winter, Steffen Schmidt, Thomas Indiniger, Christian F. Janßen, Uwe Schramm, Nikolaus A. Adams,
- Abstract summary: We propose a quantum algorithm for the linear advection-diffusion equation (ADE) Lattice-Boltzmann method (LBM)
Dynamic quantum circuits allow for an optimized collision-operator quantum algorithm, introducing partial measurements as an integral step.
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- Abstract: We propose a quantum algorithm for the linear advection-diffusion equation (ADE) Lattice-Boltzmann method (LBM) that leverages dynamic circuits. Dynamic quantum circuits allow for an optimized collision-operator quantum algorithm, introducing partial measurements as an integral step. Efficient adaptation of the quantum circuit during execution based on digital information obtained through mid-circuit measurements is achieved. The proposed new collision algorithm is implemented as a fully unitary operator, which facilitates the computation of multiple time steps without state reinitialization. Unlike previous quantum collision operators that rely on linear combinations of unitaries, the proposed algorithm does not exhibit a probabilistic failure rate. Moreover, additional qubits no longer depend on the chosen velocity set, which reduces both qubit overhead and circuit complexity. Validation of the quantum collision algorithm is performed by comparing results with digital LBM in one and two dimensions, demonstrating excellent agreement. Performance analysis for multiple time steps highlights advantages compared to previous methods. As an additional variant, a hybrid quantum-digital approach is proposed, which reduces the number of mid-circuit measurements, therefore improving the efficiency of the quantum collision algorithm.
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