Continuous Maintenance System for Optimal Scheduling Based on Real-Time Machine Monitoring

Liliana Antão, João C. P. Reis, G. Gonçalves
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引用次数: 2

Abstract

Manufacturing companies are seeking forms of maximizing profits, where reduction of maintenance costs plays a critical part. Avoiding unexpected breakdowns while maintaining productivity is possible through continuously monitoring machine performance, predicting when and where a failure will occur. This allows not only to reduce downtime but also to apply the best maintenance strategy and assure production targets. In this paper, a Continuous Maintenance System to achieve this is proposed. This system joins a Predictive Maintenance module with optimization and simulation modules. The Predictive Maintenance module makes use of a Gradient Boosting Classifier to predict which machine component will fail and schedule its maintenance. The optimization module uses a Genetic Algorithm to find the throughput values that reveal the best balance between production and degradation rates, and therefore, changing maintenance schedules according to production targets and machine degradation. Finally, a statistical simulation model based on real data distribution was used to examine effects of a certain throughput and maintenance schedule for each machine. Several classifiers were tested for the predictor, comparing their performance. Also, 3 different scenarios of a parallel production line were used to evaluate the proposed system.
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基于机器实时监控的最优调度连续维修系统
制造公司正在寻求利润最大化的形式,其中降低维护成本起着至关重要的作用。通过持续监控机器性能,预测故障发生的时间和地点,可以在保持生产力的同时避免意外故障。这不仅可以减少停机时间,还可以应用最佳维护策略并确保生产目标。本文提出了一个连续维护系统来实现这一目标。该系统由预测维护模块、优化模块和仿真模块组成。预测性维护模块使用梯度增强分类器来预测哪个机器部件将失效并安排其维护。优化模块使用遗传算法来找到显示生产和退化率之间最佳平衡的吞吐量值,从而根据生产目标和机器退化改变维护计划。最后,利用基于真实数据分布的统计仿真模型,考察了一定的吞吐量和维护计划对每台机器的影响。对几个分类器进行了预测测试,比较了它们的性能。同时,利用平行生产线的3种不同场景来评估所提出的系统。
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