Treffer: Bi-level scheduling in high-end equipment R&D: when more algorithm strategies may not be better.

Title:
Bi-level scheduling in high-end equipment R&D: when more algorithm strategies may not be better.
Authors:
Pei, Jun1,2 (AUTHOR) feiyijun.ufl@gmail.com, Wang, Haoxin1 (AUTHOR), Kong, Min3 (AUTHOR) hfutkm@126.com, Mladenovic, Nenad4 (AUTHOR), Pardalos, Panos M.5 (AUTHOR)
Source:
International Journal of Production Research. Aug2023, Vol. 61 Issue 16, p5436-5467. 32p. 13 Diagrams, 11 Charts, 8 Graphs.
Database:
Business Source Premier

Weitere Informationen

Motivated by the practical research and development (R&D) process in high-end equipment manufacturing, this study investigates a bi-level scheduling problem in a complex R&D project network, where each project contains multiple modules with a complete task network. In the bi-level scheduling problem, the upper-level problem is that the R&D project leader makes the decision on allocating all R&D project modules to limited R&D researchers and the objective is to minimise the total penalty cost of all projects, and the lower-level problem is that the researchers schedule and sort the assigned tasks to minimise their minimum makespan. The different capacity of researchers is considered, and some structural properties are derived based on the capacity analytics. To tackle this complex scheduling problem, an effective Variable Neighborhood Search algorithm based on the 'less is more' concept is proposed, where a Multi-Greedy Heuristic is incorporated. Interestingly, we observe that simpler algorithmic strategies may lead to better algorithmic performance. Computational experiments are carried out to demonstrate that the performance of the proposed algorithm is efficient and stable. [ABSTRACT FROM AUTHOR]

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