Noise Prediction and Reduction of Single Electron Spin by Deep-Learning-Enhanced Feedforward Control

Nano Lett. 2023 Apr 12;23(7):2460-2466. doi: 10.1021/acs.nanolett.2c03449. Epub 2023 Mar 21.

Abstract

Noise-induced control imperfection is an important problem in applications of diamond-based nanoscale sensing, where measurement-based strategies are generally utilized to correct low-frequency noises in realtime. However, the spin-state readout requires a long time due to the low photon-detection efficiency. This inevitably introduces a delay in the noise-reduction process and limits its performance. Here we introduce the deep learning approach to relax this restriction by predicting the trend of noise and compensating for the delay. We experimentally implement feedforward quantum control of the nitrogen-vacancy center in diamond to protect its spin coherence and improve the sensing performance against noise. The new approach effectively enhances the decoherence time of the electron spin, which enables exploration of more physics from its resonant spectroscopy. A theoretical model is provided to explain the improvement. This scheme could be applied in general sensing schemes and extended to other quantum systems.

Keywords: NV center in diamond; deep learning; feedforward; magnetic resonance; noise reduction; quantum sensing.