RF-Squad: A radiofrequency simulator for quantum dot arrays
- URL: http://arxiv.org/abs/2511.11504v1
- Date: Fri, 14 Nov 2025 17:25:08 GMT
- Title: RF-Squad: A radiofrequency simulator for quantum dot arrays
- Authors: Tara Murphy, Katarina Brlec, Giovanni Oakes, Lorenzo Peri, Henning Sirringhaus, Henry Moss, M. Fernando Gonzalez Zalba, David Wise,
- Abstract summary: We introduce RF-Squad, a physics-based simulator designed to realistically replicate radiofrequency (RF) reflectometry measurements of quantum dot arrays.<n>RF-Squad achieves high computational speed, enabling the simulation of a 100x100 pixel charge stability diagram of a double quantum dot (DQD) in 52.1 $pm$0.2 milliseconds.
- Score: 2.2798735223689044
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Spins in semiconductor quantum dots offer a scalable approach to quantum computing; however, precise control and efficient readout of large quantum dot arrays remain challenging, mainly due to the hyperdimensional voltage space required for tuning multiple gates per dot. To automate this process, large datasets are required for testing and training autotuning algorithms. To address the demand for such large datasets, we introduce RF-Squad, a physics-based simulator designed to realistically replicate radiofrequency (RF) reflectometry measurements of quantum dot arrays, with the ability to go beyond the Constant Interaction Model (CIM) and simulate physical phenomena such as tunnel coupling, tunnel rates, and quantum confinement. Implemented in JAX, an accelerated linear algebra library, RF-Squad achieves high computational speed, enabling the simulation of a 100x100 pixel charge stability diagram of a double quantum dot (DQD) in 52.1 $\pm$0.2 milliseconds at the CIM level. Using optimization algorithms, combined with it's layered architecture, RF-Squad allows users to balance physical accuracy with computational speed, scaling from simple to highly detailed models.
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