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Growing Science » Authors » Leilei Meng

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Sort articles by: Volume | Date | Most Rates | Most Views | Reviews | Alphabet
1.

An enhanced dung beetle optimization algorithm based-on multi-strategies for solving global optimization problems Pages 1289-1306 Right click to download the paper Download PDF

Authors: Xinyu Liu, Lili Liu, Leilei Meng, Biao Zhang, Yuyan Han

DOI: 10.5267/j.ijiec.2025.6.001

Keywords: Optimization Algorithm, Dung Beetle Optimizer, Dynamic Opposition-Based Learning, Wave Search Algorithm, Benchmark functions

Abstract:
The Dung Beetle Optimization (DBO) algorithm exhibits rapid convergence and robust search capabilities, yet its performance is constrained by excessive reliance on global best and worst solutions. To resolve these weaknesses, this paper introduces an enhanced DBO that incorporates multiple strategies, named DCWDBO. The dynamic opposition-based learning mechanism improves the quality of the initial population. Horizontal and vertical crossover strategies are incorporated to strengthen search capabilities. To preserve high population diversity throughout iterations, the original boundary-control mechanism is replaced with rules from the Wave Search Algorithm. To evaluate DCWDBO’s effectiveness, it was compared with PSO, SCA, SCSO, and standard DBO using benchmark functions from CEC 2017, 2020, and 2022. Results indicate that DCWDBO achieves reliable performance, demonstrating robust global exploration, stable convergence, and superior large-scale optimization capability.
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Journal: IJIEC | Year: 2025 | Volume: 16 | Issue: 4 | Views: 167 | Reviews: 0

 
2.

A novel hybrid algorithm of cooperative variable neighborhood search and constraint programming for flexible job shop scheduling problem with sequence dependent setup time Pages 21-36 Right click to download the paper Download PDF

Authors: Yajie Wu, Shiming Yang, Leilei Meng, Weiyao Cheng, Biao Zhang, Peng Dua

DOI: 10.5267/j.ijiec.2024.11.003

Keywords: Flexible job shop scheduling problem, Sequence dependent setup time, Constraint programming, Variable neighborhood search

Abstract:
This study focuses on the flexible job shop scheduling problem with sequence-dependent setup times (FJSP-SDST), and the goal is minimizing the makespan. To solve FJSP-SDST, first, we develop a constraint programming (CP) model to obtain optimal solutions. Due to the NP-hardness of FJSP-SDST, a CP assisted meta-heuristic algorithm (C-VNS-CP) is designed to make use of the advantages of both CP model and cooperative variable neighborhood search (C-VNS). The C-VNS-CP algorithm consists of two stages. The first stage involves C-VNS, for which eight neighborhood structures are defined. In the second stage, CP is used to further optimize the good solution obtained from C-VNS. In order to prove the efficiency of the C-VNS algorithm, CP model, and C-VNS-CP algorithm, experiments of 20 instances are conducted.
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Journal: IJIEC | Year: 2025 | Volume: 16 | Issue: 1 | Views: 1078 | Reviews: 0

 
3.

A novel hybrid algorithm of genetic algorithm, variable neighborhood search and constraint programming for distributed flexible job shop scheduling problem Pages 813-832 Right click to download the paper Download PDF

Authors: Leilei Meng, Weiyao Cheng, Biao Zhang, Wenqiang Zou, Peng Duan

DOI: 10.5267/j.ijiec.2024.3.001

Keywords: Distributed flexible job shop scheduling problem, Genetic algorithm, Variable neighborhood search, Constraint programming, Makespan minimization

Abstract:
With a decentral and global economy, distributed scheduling problems are getting a lot of attention. This paper addresses a distributed flexible job shop scheduling problem (DFJSP) with minimizing makespan, in which three subproblems, namely operations sequencing, factory selection and machine selection must be determined. To solve the DFJSP, a novel mixed-integer linear programming (MILP) model is first developed, which can solve the small-scaled instances to optimality. Since the NP-hard characteristic of DFJSP, a hybrid algorithm (GA-VNS-CP) of genetic algorithm (GA), variable neighborhood search (VNS) and constraint programming (CP). Specifically, the GA-VNS-CP is divided into two stages. The first stage uses the hybrid meta-heuristic algorithms of GA and VNS (GA-VNS), and the VNS is designed to improve the local search ability of GA. In GA-VNS, the encoding only considers the factory selection and the operations sequencing problems, and the machine selection problem is determined by the decoding rule. Because the solution space may be limited by the decoding rule, the second stage uses the CP to extend the solution and further improve the solution. Numerical experiments based on benchmark instances are conducted to evaluate the effectiveness of the MILP model, VNS, CP and GA-VNS-CP. The experimental results show effectiveness of the MILP model, VNS and CP. Moreover, the GA-VNS-CP algorithm has better performance than traditional algorithms and improves 6 current best solutions for benchmark instances
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Journal: IJIEC | Year: 2024 | Volume: 15 | Issue: 3 | Views: 1129 | Reviews: 0

 
4.

Modeling and optimization of the hybrid flow shop scheduling problem with sequence-dependent setup times Pages 473-490 Right click to download the paper Download PDF

Authors: Huiting Xue, Leilei Meng, Peng Duan, Biao Zhang, Wenqiang Zou, Hongyan Sang

DOI: 10.5267/j.ijiec.2024.1.001

Keywords: Hybrid flow shop scheduling problem, Sequence-dependent setup times, Artificial bee colony algorithm, Mixed-integer linear programming

Abstract:
The hybrid flow shop scheduling problem (HFSP) is an extension of the classic flow shop scheduling problem and widely exists in real industrial production systems. In real production, sequence-dependent setup times (SDST) are very important and cannot be neglected. Therefore, this study focuses HFSP with SDST (HFSP-SDST) to minimize the makespan. To solve this problem, a mixed-integer linear programming (MILP) model to obtain the optimal solutions for small-scale instances is proposed. Given the NP-hard characteristics of HFSP-SDST, an improved artificial bee colony (IABC) algorithm is developed to efficiently solve large-sized instances. In IABC, permutation encoding is used and a hybrid representation that combines forward decoding and backward decoding methods is designed. To search for the solution space that is not included in the encoding and decoding, a problem-specific local search strategy is developed to enlarge the solution space. Experiments are conducted to evaluate the effectiveness of the MILP model and IABC. The results indicate that the proposed MILP model can find the optimal solutions for small-scale instances. The proposed IABC performs much better than the existing algorithms and improves 61 current best solutions of benchmark instances.
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Journal: IJIEC | Year: 2024 | Volume: 15 | Issue: 2 | Views: 1274 | Reviews: 0

 
5.

Heterogeneous-vehicle distribution logistics planning for assembly line station materials with multiple time windows and multiple visits Pages 473-490 Right click to download the paper Download PDF

Authors: Weikang Fang, Zailin Guan, Lei Yue, Zhengmin Zhang, Hao Wang, Leilei Meng

DOI: 10.5267/j.ijiec.2022.8.002

Keywords: Assembly workshop, Heterogeneous-vehicle, Multiple time windows, Ant colony optimization algorithm

Abstract:
Aiming at distribution logistics planning in green manufacturing, heterogeneous-vehicle vehicle routing problems are identified for the first time with multiple time windows that meet load constraints, arrival time window constraints, material demand, etc. This problem is expressed by a mathematical model with the characteristics of the vehicle routing problem with split deliveries by order. A hybrid ant colony optimization algorithm based on tabu search is designed to solve the problem. The search time is reduced by a peripheral search strategy and an improved probability transfer rule. Parameter adaptive design is used to avoid premature convergence, and the local search is enhanced through a variety of neighborhood structures. Based on the problem that the time window cannot be violated, the time relaxation rule is designed to update the minimum wait time. The algorithm has the best performance that meets the constraints by comparing with other methods.
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Journal: IJIEC | Year: 2022 | Volume: 13 | Issue: 4 | Views: 1252 | Reviews: 0

 

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