Experimental graybox quantum system identification and control
- URL: http://arxiv.org/abs/2206.12201v4
- Date: Wed, 29 Nov 2023 07:22:01 GMT
- Title: Experimental graybox quantum system identification and control
- Authors: Akram Youssry, Yang Yang, Robert J. Chapman, Ben Haylock, Francesco
Lenzini, Mirko Lobino, Alberto Peruzzo
- Abstract summary: We experimentally demonstrate a "graybox" approach to construct a physical model of a quantum system and use it to design optimal control.
Our approach combines physics principles with high-accuracy machine learning and is effective with any problem where the required controlled quantities cannot be directly measured in experiments.
This method naturally extends to time-dependent and open quantum systems, with applications in quantum noise spectroscopy and cancellation.
- Score: 2.92406842378658
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Understanding and controlling engineered quantum systems is key to developing
practical quantum technology. However, given the current technological
limitations, such as fabrication imperfections and environmental noise, this is
not always possible. To address these issues, a great deal of theoretical and
numerical methods for quantum system identification and control have been
developed. These methods range from traditional curve fittings, which are
limited by the accuracy of the model that describes the system, to machine
learning methods, which provide efficient control solutions but no control
beyond the output of the model, nor insights into the underlying physical
process. Here we experimentally demonstrate a "graybox" approach to construct a
physical model of a quantum system and use it to design optimal control. We
report superior performance over model fitting, while generating unitaries and
Hamiltonians, which are quantities not available from the structure of standard
supervised machine learning models. Our approach combines physics principles
with high-accuracy machine learning and is effective with any problem where the
required controlled quantities cannot be directly measured in experiments. This
method naturally extends to time-dependent and open quantum systems, with
applications in quantum noise spectroscopy and cancellation.
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