Machine maintenance is a challenging operational problem, where the goal is to plan sufficient preventive maintenance to avoid machine failures and overhauls. Maintenance is often imperfect in reality and does not make the asset as good as new. Although a variety of imperfect maintenance policies have been proposed in the literature, these rely on strong assumptions regarding the effect of maintenance on the machine's condition, assuming the effect is (1) deterministic or governed by a known probability distribution, and (2) machine-independent. This work proposes to relax both assumptions by learning the effect of maintenance conditional on a machine's characteristics from observational data on similar machines using existing methodologies for causal inference. By predicting the maintenance effect, we can estimate the number of overhauls and failures for different levels of maintenance and, consequently, optimize the preventive maintenance frequency to minimize the total estimated cost. We validate our proposed approach using real-life data on more than 4,000 maintenance contracts from an industrial partner. Empirical results show that our novel, causal approach accurately predicts the maintenance effect and results in individualized maintenance schedules that are more accurate and cost-effective than supervised or non-individualized approaches.
翻译:机器维修是一个具有挑战性的操作问题,目标是规划足够的预防性维修以避免机器故障和大修; 维修在现实中往往不完善,没有使资产达到新的程度; 虽然文献中提出了各种不完善的维修政策,但这些政策依赖于对机器状况的维护效果的有力假设,假设效果是(1) 确定性或受已知概率分布的制约,和(2) 机器独立; 这项工作提议放松两种假设,通过利用现有因果推断方法从类似机器的观察数据中了解维护机器特征的影响; 通过预测维护效果,我们可以估计不同维护水平的大修和故障次数,从而优化预防性维护频率,以尽量减少估计费用总额; 我们用工业伙伴4 000多项维护合同的实时数据验证我们的拟议方法; 经验性结果显示,我们的新颖的、因果的方法准确预测了维护效果,并得出了与监督或非个体化方法相比更准确、更具有成本效益的个体维护时间表。