Walking and Survival AI Using Reinforcement Learning - Simulation

Bharate Nandan Lahudeo, Makarand Vayadande, Rohit Malviya, Atharva Haldule
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Abstract

This research paper presents a novel approach to training an AI agent for walking and survival tasks using reinforcement learning (RL) techniques. The primary research question addressed in this study is how to develop an AI system capable of autonomously navigating diverse terrains and environments while ensuring survival through adaptive decision-making. To investigate this question, we employ RL algorithms, specifically deep Q-networks (DQN) and proximal policy optimization (PPO), to train an AI agent in simulated environments that mimic real-world challenges. Our methodology involves designing a virtual environment where the AI agent learns to walk and make survival-related decisions through trial and error. The agent receives rewards or penalties based on its actions, encouraging the development of strategies that optimize both locomotion and survival skills. We evaluate the performance of our approach through extensive experimentation, testing the AI agent's adaptability to various terrains, obstacles, and survival scenarios.              
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使用强化学习的行走和生存人工智能 - 模拟
本研究论文介绍了一种利用强化学习(RL)技术训练人工智能代理执行行走和生存任务的新方法。本研究探讨的主要问题是如何开发一种能够自主导航各种地形和环境的人工智能系统,同时通过自适应决策确保生存。为了研究这个问题,我们采用了 RL 算法,特别是深度 Q 网络(DQN)和近端策略优化(PPO),在模拟真实世界挑战的模拟环境中训练人工智能代理。我们的方法包括设计一个虚拟环境,让人工智能代理学会行走,并通过试错做出与生存相关的决定。人工智能代理会根据自己的行动获得奖励或惩罚,从而鼓励开发优化运动和生存技能的策略。我们通过大量实验来评估我们方法的性能,测试人工智能代理对各种地形、障碍和生存场景的适应性。
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