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Research Challenges in Intelligent Robotic Systems: From Evolutionary Methods to KASER's and KANSEI

机译:智能机器人系统中的研究挑战:从进化方法到KASER和KANSEI

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Research in the area of robotics continues to be a rich and exciting field. Further, the need for robotic systems with more capabilities for the growing number of complex applications drive this research. For example, autonomous intelligent robot colonies may be used in reconnaissance missions or seek-and-capture scenarios involving a complex set of interactions between machines as well as between machines and humans and may cover long distances to remote sites. Because of the nature of the tasks, new classes of robotic systems will be required that have a high level of specification for efficiency and reliability. This, we believe, can only be accomplished through sophisticated intelligent control and efficient sensor integration as an integral part of the design of the robot and the robot's supporting systems. In this seminar, a brief historical perspective of robotic systems, particularly some projects developed by the author, will be presented. Some key research issues such as parametric versus non-parametric system models as well as types of controllers are discussed. As robotic systems evolve to more sophisticated architectures to address the needs for various applications, the requirements for enhanced intelligence as well as integration of larger sets of different sensors also grows. We will discuss the characteristics of intelligence and offer some approaches to implement this feature, including some evolutionary methods developed by the author, the Knowledge Amplification by Structural Expert Randomization (KASER) and KANSEI Engineering. Finally, we will consider some applications which offer challenges that continue to drive some of the research in the exciting area of intelligent robotic systems.
机译:机器人技术领域的研究仍然是一个丰富而激动人心的领域。此外,对具有越来越多的复杂应用程序功能的机器人系统的需求推动了这项研究。例如,自治智能机器人殖民地可用于侦察任务或寻求捕获场景,其中涉及机器之间以及机器与人之间的复杂交互集,并且可能覆盖远距离站点。由于任务的性质,将需要新型的机器人系统,这些系统必须具有高水平的效率和可靠性规范。我们相信,这只能通过复杂的智能控制和有效的传感器集成来实现,这是机器人和机器人支撑系统设计的组成部分。在本次研讨会中,将简要介绍机器人系统的历史历史,特别是作者开发的一些项目。讨论了一些关键的研究问题,例如参数系统模型与非参数系统模型以及控制器的类型。随着机器人系统发展为更复杂的体系结构来满足各种应用程序的需求,对增强智能以及集成更多不同传感器的需求也不断增长。我们将讨论智能的特征,并提供实现该特征的一些方法,包括作者开发的一些进化方法,结构专家随机化知识扩增(KASER)和KANSEI Engineering。最后,我们将考虑一些面临挑战的应用,这些挑战将继续推动智能机器人系统激动人心的领域中的一些研究。

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