流车间调度问题的一种新的拉格朗日松弛概率近似次梯度方法

Lei Shi, Yongheng Jiang, Dexian Huang
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摘要

人们普遍认为,调度在企业制造系统中发挥着关键作用,它极大地提高了企业的效率和竞争力。流水车间调度问题是一类典型的问题,它涉及到许多实际问题。由于流车间调度问题是np困难的,因此在大规模的情况下,在较短的CPU时间内获得满意的解具有实用价值。拉格朗日松弛(LR)是一种可以处理大规模可分离问题的方法。通过LR方法,一个复杂的问题可以被分解成几个更容易解决的子问题。然而,有一个关键的挑战,拉格朗日乘子可能收敛缓慢。本文提出了一种新的概率近似子梯度(PASG)方法,利用智能优化算法获得合适的方向来改进拉格朗日乘法器。PASG方法可以合理分配计算时间,在有限的计算时间内得到满意的调度结果。随着计算时间的增加,得到最优解的概率收敛于1。数值试验结果证明了PASG方法对大尺度、长时间范围问题的有效性。
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A novel probabilistic approximate subgradient method in Lagrangian Relaxation for flow-shop scheduling problems
It is widely accepted that scheduling plays a key role in enterprise manufacturing systems as it greatly improves the efficiency and competitiveness. The flow-shop scheduling problem is a kind of typical problem which relates to many kinds of practical problems. Since the flow-shop scheduling problems are NP-hard, it is of practical value to obtain satisfying solutions within short CPU time for large-scale cases. Lagrangian Relaxation (LR) is known as an approach which can handle large-scale separable problems. By the LR approach, a complex problem can be separated into several small subproblems which are easier to solve. However, there is a key challenge that the Lagrangian multipliers may converge slowly. In this paper, a novel probability approximate subgradient (PASG) method is developed, where intelligent optimization algorithms are used to obtain proper directions to improve the Lagrangian multipliers. The PASG method can allocate computation time reasonably and get satisfying schedules in limited computation time. As the computation time goes on, the probability of obtaining optimal solution converges to 1. The effectiveness of the PASG method is demonstrated by numerical testing results for large-scale and long-time-horizon problems.
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