Reliability-based complexity in intelligent machines

L. Carmichael, G. Saridis
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引用次数: 0

Abstract

This paper introduces a novel methodology, reliability-based complexity (RBC), that uses system models and a priori statistics in order to regulate the sensor measurements and algorithms (static and dynamic information) utilized by intelligent machines during the execution of some task. The objective is to produce tasks with the greatest level of performance and the least amount of cost. Task performance is evaluated through the development of reliability estimates that measure the individual types of uncertainties present in the task. These reliability estimates, in conjunction with cost measures, are incorporated into the mathematical framework developed in RBC. Within this framework, the optimal information selected for each task ensures that the task will be executed with maximum reliability and minimum cost. A case study involving robotic assembly is presented in order to illustrate these results.
智能机器中基于可靠性的复杂性
本文介绍了一种新的方法,基于可靠性的复杂性(RBC),它使用系统模型和先验统计来调节智能机器在执行某些任务时使用的传感器测量和算法(静态和动态信息)。目标是生成具有最高性能水平和最低成本的任务。通过可靠性评估的发展来评估任务绩效,可靠性评估衡量任务中存在的各种不确定性。这些可靠性估计,连同成本措施,被纳入RBC开发的数学框架。在这个框架中,为每个任务选择的最优信息确保任务将以最大的可靠性和最小的成本执行。为了说明这些结果,提出了一个涉及机器人装配的案例研究。
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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