| Authors | سعید دهنوی آرانی,هادی مختاری,محمد تقی رضوان |
| Journal | Scientific Reports |
| Page number | 11 |
| Volume number | 16 |
| IF | 3.9 |
| Paper Type | Full Paper |
| Published At | 2025-12-15 |
| Journal Grade | Scientific - research |
| Journal Type | Electronic |
| Journal Country | Iran, Islamic Republic Of |
| Journal Index | JCR ,SCOPUS |
| Keywords | Energy, Efficient Scheduling, Flexible Flowshop, Automated Guided Vehicle (AGV), Learning Effect, NSGAII, NSGA |
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Abstract
This study addresses an energy-efficient flexible flow shop scheduling problem (EEFFSP) that
integrates automated guided vehicles (AGVs), sequence-dependent setup times, and the learning
effect under fuzzy uncertainty in processing times and learning coefficients. The energy consumption
is related to both machines and AGVs in such a way that higher speeds result in higher energy
consumption. A mixed-integer programming model is developed to simultaneously minimize
makespan and total energy consumption, considering the operation of both machines and AGVs. To
handle uncertainty, a fuzzy programming approach based on Jiménez’s ranking method is employed.
The problem’s multi-objective nature is tackled using approaches: the classical AUGMECON method,
NSGA, and the NSGA-II algorithms. The proposed hybrid optimization framework effectively captures
realistic production features while ensuring computational efficiency. Extensive experiments on
benchmark instances demonstrate that the fuzzy-based NSGA-II provides high-quality Pareto
solutions with a balanced trade-off between energy efficiency and production performance. Compared
with other methods, NSGA-II achieves superior solution diversity and robustness while maintaining
acceptable computational time. In this study, an integration of fuzziness, learning effects, and AGV
scheduling within an EEFFSP context is provided, a combination not previously addressed in the
literature, which provides managerial insights for sustainable manufacturing system design.