Deep Reinforcement Learning Control of Quantum Cartpoles
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Authors | Masahito Ueda, Zhikang T. Wang, Yuto Ashida |
Journal/Conference Name | arXiv preprint |
Paper Category | Artificial Intelligence |
Paper Abstract | We generalize a standard benchmark of reinforcement learning, the classical cartpole balancing problem, to the quantum regime by stabilizing a particle in an unstable potential through measurement and feedback. We use state-of-the-art deep reinforcement learning to stabilize a quantum cartpole and find that our deep learning approach performs comparably to or better than other strategies in standard control theory. Our approach also applies to measurement-feedback cooling of quantum oscillators, showing the applicability of deep learning to general continuous-space quantum control. |
Date of publication | 2019 |
Code Programming Language | Python |
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