...
【24h】

Multiple adaptive agents for tactical driving

机译:多种用于战术驾驶的自适应代理

获取原文
获取原文并翻译 | 示例

摘要

Recent research in automated highway systems has ranged from low-level vision-based controllers to high-level route-guidance software. However, there is currently no system for tactical-level reasoning. Such a system should address tasks such as passing cars, making exits on time, and merging into a traffic stream. Many previous approaches have attempted to hand construct large rule-based systems which capture the interactions between multiple input sensors, dynamic and potentially conflicting subgoals, and changing roadway conditions. However, these systems are extremely difficult to design due to the large number of rules, the manual tuning of parameters within the rules, and the complex interactions between the rules. Our approach to this intermediate-level planning is a system which consists of a collection of autonomous agents, each of which specializes in a particular aspect of tactical driving. Each agent examines a subset of the intelligent vehicle's sensors and independently recommends driving decisions based on their local assessment of the tactical situation. This distributed framework allows different reasoning agents to be implemented using different algorithms. When using a collection of agents to solve a single task, it is vital to carefully consider the interactions between the agents. Since each reasoning object contains several internal parameters, manually finding values for these parameters while accounting for the agents' possible interactions is a tedious and error-prone task. In our system, these parameters, and the system's overall dependence on each agent, is automatically tuned using a novel evolutionary optimization strategy, termed Population-Based Incremental Learning (PBIL). Our system, which employs multiple automatically trained agents, can competently drive a vehicle, both in terms of the user-defined evaluation metric, and as measured by their behavior on several driving situations culled from real-life experience. In this article, we describe a method for multiple agent integration which is applied to the automated highway system domain. However, it also generalizes to many complex robotics tasks where multiple interacting modules must simultaneously be configured without individual module feedback. [References: 24]
机译:自动化高速公路系统的最新研究范围从低级的基于视觉的控制器到高级的路线引导软件。但是,目前还没有战术级推理系统。这样的系统应该解决诸如超车,准时退出出口以及合并到交通流之类的任务。许多先前的方法已经尝试手工构建基于大型规则的系统,该系统捕获多个输入传感器,动态的和潜在冲突的子目标以及不断变化的道路状况之间的交互。但是,由于存在大量规则,规则内参数的手动调整以及规则之间的复杂交互,因此这些系统的设计极为困难。我们对这种中级计划的方法是一个系统,该系统由一组自主代理组成,每个代理专门研究战术驾驶的特定方面。每个代理检查智能车辆传感器的一个子集,并根据其对战术情况的本地评估独立建议驾驶决策。这种分布式框架允许使用不同的算法实现不同的推理代理。当使用代理程序集合来解决单个任务时,至关重要的是仔细考虑代理程序之间的交互。由于每个推理对象都包含多个内部参数,因此在考虑代理可能的交互作用的同时手动查找这些参数的值是一项繁琐且容易出错的任务。在我们的系统中,这些参数以及系统对每个代理的整体依赖关系是使用一种新颖的进化优化策略(称为基于人口的增量学习(PBIL))自动调整的。我们的系统采用了多个经过自动培训的代理,可以根据用户定义的评估指标,以及根据他们根据现实生活经验得出的几种驾驶情况下的行为来衡量,从而有能力驾驶车辆。在本文中,我们描述了一种用于多智能体集成的方法,该方法已应用于自动化高速公路系统领域。但是,它也泛化为许多复杂的机器人任务,其中必须同时配置多个交互模块,而无需单独的模块反馈。 [参考:24]

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号