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A Bayesian machine learning method for sensor selection and fusion with application to on-board fault diagnostics

机译:用于传感器选择和融合的贝叶斯机器学习方法及其在车载故障诊断中的应用

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摘要

In applications like feature-level sensor fusion, the problem of selecting an optimal number of sensors can lead to reduced maintenance costs and the creation of compact online databases for future use. This problem of sensor selection can be reduced to the problem of selecting an optimal set of groups of features during model selection. This is a more complex problem than the problem of feature selection, which has been recognized as a key aspect of statistical model identification. This work proposes a new algorithm based on the use of a Bayesian framework for the purpose of selecting groups of features during regression and classification. The hierarchical Bayesian formulation introduces grouping for the parameters of a generalized linear model and the model hyper-parameters are estimated using an empirical Bayes procedure. A novel aspect of the algorithm is its ability to simultaneously perform feature selection within groups to reduce over-fitting of the data. Further, the parameters obtained from this algorithm can be used to obtain a rank order among the selected sensors. The performance of the algorithm is first tested on a synthetic regression example. Finally, it is applied to the problem of fault detection in diesel engines (30,000 data records from 43 sensors, 8 classes) and used to compare the misclassification rates with a varying number of sensors.
机译:在诸如功能级传感器融合之类的应用中,选择最佳数量的传感器的问题可能导致维护成本降低以及创建紧凑的在线数据库以备将来使用。传感器选择的问题可以减少为在模型选择期间选择一组最佳的特征组的问题。与特征选择问题相比,这是一个更复杂的问题,特征选择问题已被认为是统计模型识别的关键方面。这项工作提出了一种基于贝叶斯框架的新算法,用于在回归和分类过程中选择特征组。分层贝叶斯公式为广义线性模型的参数引入分组,并且使用经验贝叶斯方法估计模型超参数。该算法的新颖之处在于它能够同时在组内执行特征选择以减少数据的过拟合。此外,从该算法获得的参数可用于获得所选传感器之间的等级顺序。首先在综合回归示例上测试算法的性能。最后,将其应用于柴油机故障检测问题(来自43个传感器,8类的30,000个数据记录),并用于比较不同数量的传感器的误分类率。

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