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Automatic baseline-sample-selection scheme for baseline predictive maintenance

机译:用于基线预测维护的自动基线样本选择方案

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A virtual-metrology-based (VM-based) baseline-predictive-maintenance (BPM) scheme was proposed by the authors recently. By applying the BPM scheme, fault diagnosis and prognosis can be accomplished and the requirement of massive historical failure data can also be released. The accuracy of the BPM scheme highly depends on the correctness of the baseline models in the BPM scheme. The samples of creating the target-device (TD) baseline model consist of the concise and healthy (C&H) historical samples and the fresh samples just after maintenance. Originally, each one of the C&H samples was checked manually to ensure that the sample was generated under healthy status and its data quality is good. However, this health-&-quality check process is so tedious and may also neglect deleting contradictory samples, which may deteriorate the BPM results and prohibit the usage of the BPM scheme. The purpose of this paper is to develop an automatic baseline-sample-selection (ABSS) scheme for selecting the C&H samples and deleting the contradictory samples automatically.
机译:作者最近提出了一种基于虚拟计量学(基于VM)的基线预测维护(BPM)方案。通过应用BPM方案,可以完成故障诊断和预后,还可以释放大量历史故障数据的要求。 BPM方案的准确性高度取决于BPM方案中基线模型的正确性。创建目标设备(TD)基线模型的样本包括简洁,健康(C&H)的历史样本以及维护后的新鲜样本。最初,每个C&H样本都是手动检查的,以确保样本是在健康状态下生成的,并且其数据质量良好。但是,此健康与质量检查过程非常繁琐,并且可能会忽略删除矛盾的样本,这可能会使BPM结果恶化并禁止使用BPM方案。本文的目的是开发一种自动基准样本选择(ABSS)方案,用于选择C&H样本并自动删除矛盾样本。

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