2022
DOI: 10.1109/access.2022.3185244
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Joint Optimization Via Deep Reinforcement Learning in Wireless Networked Controlled Systems

Abstract: This paper proposes a deep Reinforcement Learning (RL) based co-design approach for jointoptimization of wireless networked control systems (WNCS) where the co-design approach can help achieve optimal control performance under network uncertainties e.g. delay and variable throughput. Compared to traditional and modern control methods where the dynamics of the system are important for predicting a system's future response, a model-free approach can adapt to many applications of stochastic behaviour. Our work pr… Show more

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References 54 publications
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