Adjusted Iterated Greedy for the optimization of additive manufacturing scheduling problems
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https://hdl.handle.net/10037/24523Date
2022-03-19Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
As a disruptive technology, additive manufacturing (AM) is revolutionizing manufacturing supply chains. AM
consists of producing 3-dimensional objects through layer-by-layer addition of compound material based on
digital models. The scheduling of additive manufacturing operations differs from traditional (i.e., subtractive and
injection molding) manufacturing with a single production run involving several parts/geometries;::; this makes
the jobs heterogeneous. Limited studies have investigated the Additive Manufacturing Scheduling Problems
(AMSP). This study extends the Iterated Greedy algorithm to solve the AMSPs considering a single-machine
production setting. For this purpose, several computational mechanisms are customized to account for AMspecific characteristics of production scheduling. Numerical analysis shows that the vast majority of the bestfound solutions are yielded by the Adjusted Iterated Greedy (AIG) algorithm considering both solution quality
and stability; the outperformance becomes more significant with an increase in problem size. Statistical analysis
confirms that AIG’s performance is notably better than that of the existing solution algorithm in terms of solution
quality and stability. This study is concluded by providing directions for future development of AM and AMSPs to
extend the industrial reach of 3D printing technology.
Publisher
ElsevierCitation
Kuo-Ching, Fabio, Pourhejazy P, Bo-Yun. Adjusted Iterated Greedy for the optimization of additive manufacturing scheduling problems. Expert Systems With Applications. 2022;198Metadata
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