A simple mechanical measurement system for the posture evaluation of wing components using the PSO and ICP algorithms
Author:
Yukan Hou,Yuan Li,Jie Zhang,Tang Wen-Bin,Shoushan Jiang
Abstract
Purpose
– The purpose of this study is to present a new and relatively inexpensive method for posture evaluation of the positioning of the wing-body assembly. Positioning is an essential process to guarantee alignment accuracy in an assembly line.
Design/methodology/approach
– The studied method includes a structural set-up and a software algorithm used to process a set of experimental input data to compute the actual position of the wing with respect to the ideal position, which is proposed considering measurement uncertainty, the deviation caused by large errors in measurement points and the different tolerance requirements.
Findings
– The studied method has been found to be simple and effective in addition to being highly accurate. Compared with most of the current methods that have been developed with optical equipment, it is more cost- and space-efficient. The automation process determines how much operation time will be saved.
Practical implications
– The studied method has been applied in an actual assembly line, and the economic and time savings illustrate its benefits.
Originality/value
– This method provides an attractive wing-body assembly solution for those enterprises that want to find a low-cost option or have limited measuring space for optical equipment. It can also be the basis for the accurate assembly of other large parts for aircraft and other vessels.
Subject
Industrial and Manufacturing Engineering,Control and Systems Engineering
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