首页 /研究 /A Decision Model for the Robot Selection Problem Using Robust Regression*
OTHER

A Decision Model for the Robot Selection Problem Using Robust Regression*

Moutaz Khouja, David E. Booth

发表年份
1991
引用次数
19

摘要

Industrial robots are increasingly used by many manufacturing firms. The number of robot manufacturers has also increased with many of these firms now offering a wide range of models. A potential user is thus faced with many options in both performance and cost. This paper proposes a decision model for the robot selection problem. The proposed model uses robust regression to identify, based on manufacturers' specifications, the robots that are the better performers for a given cost. Robust regression is used because it identifies and is resistant to the effects of outlying observations, key components in the proposed model. The robots selected by the model become candidates for testing to verify manufacturers' specifications. The model is tested on a real data set and an example is presented.

关键词

RobotComputer scienceSelection (genetic algorithm)Set (abstract data type)Model selectionDecision modelKey (lock)Regression analysisLinear regressionRange (aeronautics)

相关论文

查看 OTHER 分类全部论文