Search-Based Planning and Reinforcement Learning for Autonomous Systems and Robotics

Than D. Le
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引用次数: 1

Abstract

In this chapter, we address the competent Autonomous Vehicles should have the ability to analyze the structure and unstructured environments and then to localize itself relative to surrounding things, where GPS, RFID or other similar means cannot give enough information about the location. Reliable SLAM is the most basic prerequisite for any further artificial intelligent tasks of an autonomous mobile robots. The goal of this paper is to simulate a SLAM process on the advanced software development. The model represents the system itself, whereas the simulation represents the operation of the system over time. And the software architecture will help us to focus our work to realize our wish with least trivial work. It is an open-source meta-operating system, which provides us tremendous tools for robotics related problems. Specifically, we address the advanced vehicles should have the ability to analyze the structured and unstructured environment based on solving the search-based planning and then we move to discuss interested in reinforcement learning-based model to optimal trajectory in order to apply to autonomous systems.
自主系统和机器人的基于搜索的规划和强化学习
在本章中,我们讨论了胜任的自动驾驶汽车应该具有分析结构和非结构化环境的能力,然后相对于周围事物进行定位,而GPS, RFID或其他类似手段无法提供有关位置的足够信息。可靠的SLAM是自主移动机器人进一步完成人工智能任务的最基本前提。本文的目标是模拟高级软件开发中的SLAM过程。模型代表系统本身,而仿真则代表系统随时间的运行。软件架构将帮助我们集中精力,用最少的琐碎工作来实现我们的愿望。它是一个开源的元操作系统,为解决机器人相关问题提供了大量的工具。具体来说,我们讨论了先进车辆应该具有分析基于搜索的规划的结构化和非结构化环境的能力,然后我们讨论了对基于强化学习的模型的最优轨迹的兴趣,以便应用于自主系统。
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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