Bayesian inference enables rapid detection of quantum dot charge states

New Bayesian method enables rapid detection of quantum dot charge states
Above is a simulated charge sensor signal and its histogram. Below is a time integration that reduces noise and enables state identification (called threshold judgment, a conventional method). Credit: Motoya Shinozaki et al

A research team at Tohoku University's Advanced Institute for Materials Research (WPI-AIMR) has developed a new technique to rapidly and accurately determine the charge state of electrons confined in semiconductor quantum dots鈥攆undamental components of quantum computing systems. The method is based on Bayesian inference, a statistical framework that estimates the most likely state of a system using observed data.

Led by Dr. Motoya Shinozaki (Specially Appointed Assistant Professor, WPI-AIMR) and Associate Professor Tomohiro Otsuka (also affiliated with the Research Institute of Electrical Communication), the team demonstrated that their Bayesian sequential estimation method significantly outperforms traditional threshold-based techniques, especially in situations where measurement noise varies depending on the electron's charge state.

Their findings were in the journal 麻豆淫院ical Review Applied on March 26, 2025.

In quantum computing, the accurate and rapid detection of a single electron's presence or absence鈥攊ts charge state鈥攊s crucial for reading out quantum bits, or qubits. However, fluctuating noise in the readout process can make this task especially challenging.

The team's Bayesian method allows for real-time tracking of charge states in , providing more robust and reliable measurements than conventional approaches. Notably, the technique maintains high performance even near transition points between charge states, where distinguishing signals is often most difficult.

New Bayesian method enables rapid detection of quantum dot charge states
(a) Comparison of the estimated error rate using the Bayesian approach with the threshold method. (b) Sequential state estimation by the Bayesian method. More estimation points are obtained near the state transition points than with the conventional threshold method. Credit: Motoya Shinozaki et al

"This work demonstrates how data-driven approaches can improve the precision of quantum measurements," said Dr. Shinozaki. "By enhancing the readout process, this method contributes to the broader effort to make semiconductor-based quantum computing more practical."

In addition to potential applications in , the technique may also benefit the development of high-performance nanoscale sensors and support the study of local electronic properties in condensed matter systems.

The researchers plan to apply their Bayesian estimation approach to a wider range of measurement systems characterized by complex noise, and to integrate the method with FPGA (Field-Programmable Gate Array) hardware for real-time implementation. Such advances could accelerate readout speeds and open new avenues for material exploration using quantum dot-based charge sensors.

More information: Motoya Shinozaki et al, Charge-state estimation in quantum dots using a Bayesian approach, 麻豆淫院ical Review Applied (2025). . On arXiv:

Journal information: 麻豆淫院ical Review Applied , arXiv

Provided by Tohoku University

Citation: Bayesian inference enables rapid detection of quantum dot charge states (2025, May 1) retrieved 17 May 2025 from /news/2025-05-bayesian-inference-enables-rapid-quantum.html
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