Quantum force sensing by digital twinning of atomic Bose-Einstein condensates
Journal article, 2024

High sensitivity detection plays a vital role in science discoveries and technological applications. While intriguing methods utilizing collective many-body correlations and quantum entanglements have been developed in physics to enhance sensitivity, their practical implementation remains challenging due to rigorous technological requirements. Here, we propose an entirely data-driven approach that harnesses the capabilities of machine learning, to significantly augment weak-signal detection sensitivity. In an atomic force sensor, our method combines a digital replica of force-free data with anomaly detection technique, devoid of any prior knowledge about the physical system or assumptions regarding the sensing process. Our findings demonstrate a significant advancement in sensitivity, achieving an order of magnitude improvement over conventional protocols in detecting a weak force of approximately 10^−25N. The resulting sensitivity reaches . Our machine learning-based signal processing approach does not rely on system-specific details or processed signals, rendering it highly applicable to sensing technologies across various domains.

quantum technology

Author

Tangyou Huang

Quantum Technology Postdocs

Zhongcheng Yu

Zhongyi Ni

Xiaoji Zhou

Xiaopeng Li

Communications Physics

23993650 (eISSN)

Vol. 7 172

Areas of Advance

Information and Communication Technology

Subject Categories (SSIF 2025)

Condensed Matter Physics

Signal Processing

DOI

10.1038/s42005-024-01662-1

More information

Created

4/22/2026