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A NOVEL POTENTIAL FIELD ALGORITHM AND AN INTELLIGENT MULTI-CLASSIFIER FOR THE AUTOMATED CONTROL AND GUIDANCE SYSTEM (ACOS)

机译:一种新型潜在场算法和用于自动控制和引导系统的智能多分类器(ACOS)

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The ACOS project seeks to improve and develop novel robot guidance and control systems integrating Novel Potential Field autonomous navigation techniques, multi-classifier design with direct hardware implementation. The project development brings together a number of complementary technologies to form an overall enhanced system. The work is aimed at guidance and collision avoidance control systems for applications in air, land and water based vehicles for passengers and freight. Specifically, the paper addresses the generic nature of the previously presented novel Potential Field Algorithm based on the combination of the associated rule based mathematical algorithm and the concept of potential field. The generic nature of the algorithm allows it to be efficient, not only when applied to multi-autonomous robots, but also when applied to collision avoidance between a single autonomous agent and an obstacle displaying random velocity. In addition, the mathematical complexity, which is inherent when a large number of autonomous vehicles and dynamic obstacles are present, is reduced via the incorporation of an intelligent weightless multi-classifier system which is also presented.
机译:ACOS项目寻求改进和开发新颖的机器人指导和控制系统,整合新颖的潜在场自主导航技术,具有直接硬件实现的多分类器设计。项目开发汇集了许多互补技术来形成整体增强系统。该工作旨在指导和碰撞避免控制系统,用于乘客和货运的空气,陆地和水车的应用。具体地,本文基于基于相关规则的数学算法和潜在场的概念的组合来解决先前呈现的新颖潜在场算法的通用性质。算法的通用性质允许它有效,不仅在应用于多自治机器人时,而且还要在单个自主代理和显示随机速度之间的障碍物之间避免碰撞时。另外,当存在大量自主车辆和动态障碍物时是固有的数学复杂性,通过掺入也呈现的智能失重多分类器系统来降低。

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