Multi-objective optimization of energy-efficient production schedules using genetic algorithms

被引:0
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作者
Tobias Küster
Philipp Rayling
Robin Wiersig
Francisco Denis Pozo Pardo
机构
[1] Technische Universität Berlin,DAI
[2] TWT GmbH Science & Innovation,Labor
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关键词
Industrial optimization; Genetic algorithms; Energy modeling; Schedule optimization;
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摘要
The optimization of production schedules to be more energy efficient while still meeting production goals is a difficult task: How to schedule and distribute production tasks to meet production goals, while making best use of fluctuating energy market prices and availability of locally installed energy sources? Although a large body of related work exists in this domain, most of those seem to focus on individual aspects and not the whole picture. In this paper, a genetic algorithm for optimization of production schedules with respect to energy consumption, peak shaving, and makespan is presented, that also takes into account that tasks can be performed in different ways, having different characteristics. The algorithm has been successfully employed within the SPEAR project by applying it for optimization of an automotive production line and for the pathway of an automated guided vehicle.
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页码:447 / 468
页数:21
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