Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
413639 | Robotics and Computer-Integrated Manufacturing | 2013 | 12 Pages |
•We model an energy-efficient scheduling with makespan and energy consumption.•We give an improved genetic-simulated annealing algorithm to get Pareto solutions.•The relationship between makespan and energy consumption is identified conflict.•We examine an energy saving decision for multi-machines in a feasible scheduling.
The traditional production scheduling problem considers performance indicators such as processing time, cost, and quality as optimization objectives in manufacturing systems; however, it does not take energy consumption or environmental impacts completely into account. Therefore, this paper proposes an energy-efficient model for flexible flow shop scheduling (FFS). First, a mathematical model for a FFS problem, which is based on an energy-efficient mechanism, is described to solve multi-objective optimization. Since FFS is well known as a NP-hard problem, an improved, genetic-simulated annealing algorithm is adopted to make a significant trade-off between the makespan and the total energy consumption to implement a feasible scheduling. Finally, a case study of a production scheduling problem for a metalworking workshop in a plant is simulated. The experimental results show that the relationship between the makespan and the energy consumption may be apparently conflicting. In addition, an energy-saving decision is performed in a feasible scheduling. Using the decision method, there could be significant potential for minimizing energy consumption.