关联简单时态网络的列生成方法

Andrew Murray, A. Arulselvan, Michael Cashmore, M. Roper, J. Frank
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引用次数: 0

摘要

概率简单时态网络(PSTN)代表了时间不确定性下的调度问题。PSTN的强可控性(SC)涉及找到一个最大概率满足所有约束的PSTN调度(鲁棒性)。以前解决这个问题的方法假设概率持续时间的独立性,并通过使用布尔不等式将其限定在上面来近似风险。这不能保证找到调度优化鲁棒性,并且不能考虑在实际应用中经常出现的概率持续时间之间的相关性。在本文中,我们正式定义了相关简单时态网络(Corr-STN),它通过消除独立性的限制来推广PSTN。我们证明了Corr-STN SC问题对于一大类多元(log-凹)分布是凸的。然后,我们介绍了一种能够使用列生成方法为Corr-STNs找到最优SC调度的算法。最后,我们在许多corr - stn上验证了我们的方法,并发现与之前的方法相比,我们的方法提供了更健壮的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Column Generation Approach to Correlated Simple Temporal Networks
Probabilistic Simple Temporal Networks (PSTN) represent scheduling problems under temporal uncertainty. Strong controllability (SC) of PSTNs involves finding a schedule to a PSTN that maximises the probability that all constraints are satisfied (robustness). Previous approaches to this problem assume independence of probabilistic durations, and approximate the risk by bounding it above using Boole’s inequality. This gives no guarantee of finding the schedule optimising robustness, and fails to consider correlations between probabilistic durations that frequently arise in practical applications. In this paper, we formally define the Correlated Simple Temporal Network (Corr-STN) which generalises the PSTN by removing the restriction of independence. We show that the problem of Corr-STN SC is convex for a large class of multivariate (log-concave) distributions. We then introduce an algorithm capable of finding optimal SC schedules to Corr-STNs, using the column generation method. Finally, we validate our approach on a number of Corr-STNs and find that our method offers more robust solutions when compared with prior approaches.
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