Implementasi Sistem Kendali Keseimbangan Statis Pada Robot Quadruped Menggunakan Reinforcement Learning

Hidayat Eko Saputro, Nur Achmad Sulistyo Putro, S. Hartati, Ilona Usuman
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Abstract

The basic thing to consider when building a quadruped robot is the issue of balance. These factors greatly determine the success of the quadruped robot in carrying out movements such as stabilizing the body on an inclined plane, walking movements and others. Conventional feedback control methods by performing mathematical modeling can be used to balance the robot. However, this method still has weaknesses. The application of conventional feedback control methods often results in an inaccurate controller, so it must be manually tuned for its application. In this study, reinforcement learning methods were used using Q-Learning algorithms. The use of reinforcement learning methods was chosen because no mathematical calculations are needed to control the balance of quadruped robots. The process of learning the system to train the agent's abilities is carried out using a Gazebo simulator. The learning results show that the system could run well as evidenced by the higher value of sum rewards per episode.
基于强化学习的四足机器人静态平衡控制系统的实现
制造四足机器人时要考虑的基本问题是平衡问题。这些因素在很大程度上决定了四足机器人在执行诸如在斜面上稳定身体、行走运动等运动时的成功。传统的反馈控制方法可以通过数学建模来实现机器人的平衡。然而,这种方法仍然有缺点。传统的反馈控制方法的应用往往导致不准确的控制器,因此必须手动调整它的应用。在本研究中,使用Q-Learning算法使用强化学习方法。选择使用强化学习方法是因为不需要数学计算来控制四足机器人的平衡。使用Gazebo模拟器来学习系统以训练代理的能力。学习结果表明,系统运行良好,每集的总奖励值较高。
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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