Application of machine learning for predicting strong phonon blockade

Observing the phonon blockade in a nanomechanical oscillator is clear evidence of its quantum nature. However, it is still a severe challenge to measure the strong phonon blockade in an optomechanical system with effective nonlinear coupling. In this paper, we put forward a theoretical proposal for...

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Veröffentlicht in:Applied physics letters 2021-04, Vol.118 (16), p.164003
Hauptverfasser: Zeng, Ye-Xiong, Gebremariam, Tesfay, Shen, Jian, Xiong, Biao, Li, Chong
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Sprache:eng
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Zusammenfassung:Observing the phonon blockade in a nanomechanical oscillator is clear evidence of its quantum nature. However, it is still a severe challenge to measure the strong phonon blockade in an optomechanical system with effective nonlinear coupling. In this paper, we put forward a theoretical proposal for predicting the phonon blockade effect in a quadratically coupled optomechanical system by exploiting supervised machine learning. The detected optical signals are injected into the neural network as the input, while the output is the mechanical equal-time second-order correlation. Our results show that our scheme has great advantages in predicting phonon blockade. Specifically, it is effective and feasible for nonlinear coupling systems; it shows a high precision for predicting strong phonon blockade; it is robust against the slight disturbance of systemic parameters. The trained neural network is convenient for measuring phonon blockade directly in the experiment. Our work provides a promising way to predict phonon blockade in nonlinear coupled quantum systems.
ISSN:0003-6951
1077-3118
DOI:10.1063/5.0035498