Abstract

The engineer-to-order (ETO) production strategy plays an important role in today’s manufacturing industry. This paper studies integrated multi-project scheduling and hierarchical workforce allocation in the assembly process of ETO products. The multi-project scheduling problem involves the scheduling of tasks of different projects under many constraints, and the workforce allocation problem involves assigning hierarchical workers to each task. These two problems are interrelated. The task duration depends on the number of hierarchical workers assigned to the task. We developed a mathematical model to represent the problem. In order to solve this issue with the minimization of the makespan as the objective, we propose a hybrid algorithm combining particle swarm optimization (PSO) and Tabu search (TS). The improved PSO is designed as the global search process and the Tabu search is introduced to improve the local searching ability. The proposed algorithm is tested on different scales of benchmark instances and a case that uses industrial data from a collaborating steam turbine company. The results show that the solution quality of the hybrid algorithm outperforms the other three algorithms proposed in the literature and the experienced project manager.

Highlights

  • In today’s competitive manufacturing industry, there is a constantly increasing demand for customized products, especially within advanced, capital intensive, large-equipment industries [1].In order to respond to this demand, companies must manufacture and assemble based on specific customer requirements

  • ETOmulti-mode projects areresource-constrained assembled in parallel, project scheduling problem (MRCPSP), which is a complex non-deterministic polynomial-time we extend the problem as the multi-mode resource-constrained multi-project scheduling problem (MRCMPSP)

  • The particle swarm optimization (PSO)–Tabu search (TS) algorithm we proposed can assist in scheduling the assembly process of steam turbines

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Summary

Introduction

In today’s competitive manufacturing industry, there is a constantly increasing demand for customized products, especially within advanced, capital intensive, large-equipment industries [1]. Lian et al presented program to solve the integrated single-project scheduling and multi-skilled workforce the non-dominated sorting genetic algorithm II (NSGA-II) to solve hierarchical worker allocation allocation issue [16]. The previous works concentrate on single-project scheduling and hierarchical workforce special class of the project scheduling problem, called allocation which is not suitable for ETO assembly. To the best of our knowledge, the integrated multi-project scheduling and hierarchical workforce allocation in the ETO assembly process has not been tackled before in the existing literature. This has been a motivation of the current work.

Mathematical Formulation
Solution Procedure
Combining All the Projects and Relabeling the Tasks
Encoding and Decoding
Initial Population
Evolve
Two-point crossover operator
Generate the Neighborhood Solution
Aspiration Criterion
The Tabu List
Termination Criterion
Case Study
Implementation Details
Performance Evaluation of the Proposed Algorithm
Industrial Application
10. Sequence
Conclusions
Full Text
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