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Multi-objective energy-aware batch scheduling using ant colony optimization algorithm

机译:基于蚁群算法的多目标能量感知批量调度

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A Abstracted from industrial manufacturing process, scheduling on batch processing machines (BPMs) is known to be an NP-hard discrete optimization problem. Therefore, researchers have resorted to meta-heuristics to tackle such challenging tasks. This paper investigates the scheduling problem on a set of BPMs, arranged in parallel, which have different processing powers. The jobs have different sizes, processing times and release times. A bi-objective ant colony optimization algorithm is proposed to minimize the makespan and the total energy consumption. Due to the complex constraints in the problem, how to find a feasible solution is a challenging issue in discrete optimization. Thus, an effective method to construct the feasible solutions is presented so that the ant colony only needs to focus on the promising area in the search space. Additionally, the user's preferences are incorporated to build the solutions. Furthermore, a neighborhood-based local optimization is used to improve the solutions so that the exploration and exploitation capabilities of the ant colony are able to be exerted adequately. The proposed algorithm is verified by elaborately designed simulations. The results show that the proposed algorithm provides the better solutions than the state-of-the-art algorithms, especially on large-scale problems.
机译:从工业制造过程中抽象出来,在批处理机器(BPM)上进行调度是已知的NP难离散优化问题。因此,研究人员已采用元启发式方法来解决此类挑战性任务。本文研究了并行处理,具有不同处理能力的一组BPM的调度问题。作业具有不同的大小,处理时间和释放时间。提出了一种双目标蚁群优化算法,以最小化制造周期和总能耗。由于问题的复杂约束,在离散优化中如何找到可行的解决方案是一个具有挑战性的问题。因此,提出了一种构建可行解的有效方法,使得蚁群只需要关注搜索空间中有希望的区域即可。另外,结合了用户的偏好来构建解决方案。此外,基于邻域的局部优化用于改进解决方案,从而能够充分发挥蚁群的探索和开发能力。通过精心设计的仿真验证了所提出的算法。结果表明,所提出的算法提供了比最新算法更好的解决方案,尤其是在大规模问题上。

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