Integrating sustainability into production scheduling in hybrid flow-shop environments
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https://hdl.handle.net/10037/29057Date
2023-04-24Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Global energy consumption is projected to grow by nearly 50% as of 2018, reaching a peak of 910.7 quadrillion BTU in
2050. The industrial sector accounts for the largest share of the energy consumed, making energy awareness on the shop
foors imperative for promoting industrial sustainable development. Considering a growing awareness of the importance
of sustainability, production planning and control require the incorporation of time-of-use electricity pricing models into
scheduling problems for well-informed energy-saving decisions. Besides, modern manufacturing emphasizes the role of
human factors in production processes. This study proposes a new approach for optimizing the hybrid fow-shop scheduling
problems (HFSP) considering time-of-use electricity pricing, workers’ fexibility, and sequence-dependent setup time (SDST).
Novelties of this study are twofold: to extend a new mathematical formulation and to develop an improved multi-objective
optimization algorithm. Extensive numerical experiments are conducted to evaluate the performance of the developed solution
method, the adjusted multi-objective genetic algorithm (AMOGA), comparing it with the state-of-the-art, i.e., strength Pareto
evolutionary algorithm (SPEA2), and Pareto envelop-based selection algorithm (PESA2). It is shown that AMOGA performs
better than the benchmarks considering the mean ideal distance, inverted generational distance, diversifcation, and quality
metrics, providing more versatile and better solutions for production and energy efciency.
Publisher
SpringerCitation
Mokhtari-Moghadam, Pourhejazy P, Gupta D. Integrating sustainability into production scheduling in hybrid flow-shop environments. Environmental Science and Pollution Research International. 2023Metadata
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