A Variable Granularity Optimization Approach for Task Decomposition

Di Dai, Wanwen Zheng, Yuxiang Sun, Chengcheng Xu, Xianjun Zhu, Xianzhong Zhou
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Abstract

In recent years, task decomposition has drawn great attention in the equipment maintenance field. However, many investigations are qualitative, which are hard to execute due to the uneven and irregular resource distribution. To solve this problem, a novel variable granularity method is proposed, which develops a quantitative strategy for a task decomposition issue. First, an initial decomposition is operated based on the maintenance technology and internal structure. Then, three quantitative models are formulated to optimize the task set, which is recursively decomposed until the result satisfies the thresholds of granularity, coupling and equilibrium. Finally, a real experiment is analyzed to validate the effectiveness of the proposed method.
一种任务分解的变粒度优化方法
近年来,任务分解在设备维修领域受到了广泛的关注。然而,许多调查是定性的,由于资源分配不均和不规律,难以执行。为了解决这一问题,提出了一种新的变粒度方法,为任务分解问题提供了一种量化策略。首先,根据维修技术和内部结构进行初步分解。然后,建立三个定量模型对任务集进行优化,并对任务集进行递归分解,直到结果满足粒度、耦合和均衡阈值。最后,通过实际实验验证了所提方法的有效性。
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