Quantum Computing and Neuromorphic Computing for Safe, Reliable, and explainable Multi-Agent Reinforcement Learning: Optimal Control in Autonomous Robotics

Mazyar Taghavi
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Abstract

This paper investigates the utilization of Quantum Computing and Neuromorphic Computing for Safe, Reliable, and Explainable Multi_Agent Reinforcement Learning (MARL) in the context of optimal control in autonomous robotics. The objective was to address the challenges of optimizing the behavior of autonomous agents while ensuring safety, reliability, and explainability. Quantum Computing techniques, including Quantum Approximate Optimization Algorithm (QAOA), were employed to efficiently explore large solution spaces and find approximate solutions to complex MARL problems. Neuromorphic Computing, inspired by the architecture of the human brain, provided parallel and distributed processing capabilities, which were leveraged to develop intelligent and adaptive systems. The combination of these technologies held the potential to enhance the safety, reliability, and explainability of MARL in autonomous robotics. This research contributed to the advancement of autonomous robotics by exploring cutting-edge technologies and their applications in multi-agent systems. Codes and data are available.
量子计算和神经形态计算用于安全、可靠和可解释的多代理强化学习:自主机器人技术中的最优控制
本文以自主机器人技术中的最优控制为背景,研究了利用量子计算和神经形态计算实现安全、可靠和可解释的多代理强化学习(MARL)。量子计算技术,包括量子近似优化算法(QAOA),被用来高效地探索大型求解空间,并为复杂的MARL问题找到近似解。神经形态计算受到人脑结构的启发,提供了并行和分布式处理能力,可用于开发智能和自适应系统。这些技术的结合有望提高自主机器人技术中 MARL 的安全性、可靠性和可解释性。这项研究通过探索前沿技术及其在多代理系统中的应用,为自主机器人技术的发展做出了贡献。可提供代码和数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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