Control of Continuous Quantum Systems with Many Degrees of Freedom based on Convergent Reinforcement Learning
Zhikang Wang

TL;DR
This paper introduces a new convergent deep Q-learning algorithm, C-DQN, to improve stability and reproducibility in quantum control tasks, demonstrating its effectiveness on quantum systems and benchmarks.
Contribution
The paper develops and proves the convergence of C-DQN, an alternative to DQN, specifically tailored for quantum control problems, enhancing stability and performance.
Findings
C-DQN converges where DQN fails.
C-DQN achieves more stable control in quantum systems.
C-DQN outperforms DQN in complex control tasks.
Abstract
With the development of experimental quantum technology, quantum control has attracted increasing attention due to the realization of controllable artificial quantum systems. However, because quantum-mechanical systems are often too difficult to analytically deal with, heuristic strategies and numerical algorithms which search for proper control protocols are adopted, and, deep learning, especially deep reinforcement learning (RL), is a promising generic candidate solution for the control problems. Although there have been a few successful applications of deep RL to quantum control problems, most of the existing RL algorithms suffer from instabilities and unsatisfactory reproducibility, and require a large amount of fine-tuning and a large computational budget, both of which limit their applicability. To resolve the issue of instabilities, in this dissertation, we investigate the…
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Taxonomy
TopicsAdvanced Thermodynamics and Statistical Mechanics · Neural Networks and Reservoir Computing
Methodsfail · Dense Connections · Convolution · Deep Q-Network · Q-Learning
