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Deep Reinforcement Learning Based Controller for Active Heave Compensation

机译:基于深度加强学习的主动升降补偿控制器

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Heave compensation is an essential part in various offshore operations. It is used in various applications, which include on-loading or offloading systems, offshore drilling, landing helicopter on oscillating structures, and deploying and retrieving manned submersibles. In this paper, a reinforcement learning (RL) based controller is proposed for active heave compensation using a deep deterministic policy gradient (DDPG) lgorithm. A DDPG algorithm which is a model-free, online reinforcement learning method, is adopted to capture the experience of the agent during the training trials. The simulation results demonstrate up to 10 % better heave compensation performance of RL controller as compared to a tuned Proportional-Derivative Control. The performance of the proposed method is compared with respect to heave compensation, offset tracking, disturbance rejection, and noise attenuation.
机译:升降赔偿是各种海上业务的重要组成部分。 它用于各种应用,包括装载或卸载系统,海上钻井,振荡结构上的着陆直升机,以及部署和检索载人的潜水线。 本文采用深度确定性政策梯度(DDPG)LGorithm,提出了一种基于加强学习(RL)的控制器,用于主动升降补偿。 采用DDPG算法,是无模型的在线强化学习方法,以捕捉培训试验期间代理商的经验。 与调谐比例衍生物控制相比,仿真结果展示了RL控制器的更好的升温补偿性能。 相对于升降补偿,偏移跟踪,扰动抑制和噪声衰减进行比较所提出的方法的性能。

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