交互式机械臂模拟

Dipali Ghatge, Pratham Patil, Atharva Algude, Shubhangi Chikane, Atharv Dhotre, Karmaveer Bhaurao
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引用次数: 0

摘要

在机器人和人工智能的动态领域,这项研究开创性地将模拟技术和先进的机器学习(特别是强化学习)融合在一起,以增强机械臂的能力。研究重点是利用由 PyBullet 物理引擎驱动的尖端模拟器,在数字环境中忠实再现机械臂的复杂动态。作为实验场地,模拟器使机械臂能够导航、操纵物体并动态地与周围环境互动。通过模拟技术与强化学习之间的共生关系,这项研究重点关注自适应学习方法。这种方法可以加速机械臂的技能学习,提高精度、速度和适应性等关键方面的能力。该项目促进了机械臂能力的发展,为人工智能和机器人领域更自主、更多才多艺和更精通的机器人系统铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interactive Robotic Arm Simulation
In the dynamic landscape of robotics and artificial intelligence, this research pioneers a groundbreaking fusion of simulation technology and advanced machine learning, specifically reinforcement learning, to enhance robotic arm capabilities. The focus centers on the utilization of a cutting-edge simulator, powered by the PyBullet physics engine, to faithfully replicate the intricate dynamics of a robotic arm within a digital environment. Serving as an experimental ground, the simulator enables the robotic arm to navigate, manipulate objects, and dynamically engage with its surroundings. Through a symbiotic relationship between simulation technology and reinforcement learning, this research focuses on an adaptive learning approach. This approach accelerates the robotic arm's skill acquisition, refining critical aspects such as precision, speed, and adaptability. The project contributes to the evolution of robotic arm capabilities, paving the way for more autonomous, versatile, and adept robotic systems in the realm of artificial intelligence and robotics.
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