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Prognostics of slow speed bearings using a composite integrated Gaussian process regression model

机译:使用综合高斯过程回归模型的慢速轴承预测

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摘要

Prognostics of manufacturing systems enables improved maintenance scheduling and cost reduction through reduced downtime, improved allocation of maintenance resources and reduced consequential costs of breakdowns. Prognostics are necessary for predictive maintenance of bearings in manufacturing systems. The findings show that in general the composite integrated GPR models perform better than the simple mean simple covariance GPR models, irrespective of whether the training or test sets are dependent or independent. In this investigation the Affine Mean GPR (AMGPR) was found to be the most effective prognostic model for prognostics of slow speed bearings on both dependent and independent data samples.
机译:制造系统的预测功能可通过减少停机时间,改进维护资源分配以及减少故障成本来改善维护计划并降低成本。对于制造系统中的轴承进行预测性维护,必须进行预测。研究结果表明,总的来说,综合综合GPR模型的性能要优于简单均值简单协方差GPR模型,而不管训练或测试集是依存的还是独立的。在这项研究中,仿射平均GPR(AMGPR)被发现是针对依赖和独立数据样本的慢速轴承预测的最有效的预测模型。

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