论文标题
用于基于振动质量监控的合奏分类器
An ensemble classifier for vibration-based quality monitoring
论文作者
论文摘要
基于振动的制成部分的质量监测通常采用模式识别方法。尽管开发了多种分类方法,但它们通常为特定类型的数据集提供了高精度,但对于一般案例不提供。在本文中,通过开发基于Dempster-Shafer证据理论的新型合奏分类器来解决此问题。为了处理相互矛盾的证据,在组合之前提出了三种补救措施:(i)通过评估预测输出和目标输出之间的相关性来选择适当的分类器,(ii)设计一种优化方法,以最大程度地减少预测的和目标输出之间的距离,(iii)利用五个不同的权重因子,包括新的权重因子,包括新的权重,以增强效果。提出的框架的有效性通过其应用于15 UCI和龙骨机学习数据集的应用来验证。然后将其应用于两个基于振动的数据集,以检测出缺陷的样品:一个由Dogbone圆柱体的有限元模型生成的合成数据集,以及通过收集多晶型镍镍合金第一阶段涡轮板的宽带振动响应而生成的一个实际实验数据集。通过在不同水平的噪声与信号比率的情况下通过统计分析进行研究。将结果与四种最先进的融合技术的结果进行比较,揭示了所提出的合奏方法的良好性能。
Vibration-based quality monitoring of manufactured components often employs pattern recognition methods. Albeit developing several classification methods, they usually provide high accuracy for specific types of datasets, but not for general cases. In this paper, this issue has been addressed by developing a novel ensemble classifier based on the Dempster-Shafer theory of evidence. To deal with conflicting evidences, three remedies are proposed prior to combination: (i) selection of proper classifiers by evaluating the relevancy between the predicted and target outputs, (ii) devising an optimization method to minimize the distance between the predicted and target outputs, (iii) utilizing five different weighting factors, including a new one, to enhance the fusion performance. The effectiveness of the proposed framework is validated by its application to 15 UCI and KEEL machine learning datasets. It is then applied to two vibration-based datasets to detect defected samples: one synthetic dataset generated from the finite element model of a dogbone cylinder, and one real experimental dataset generated by collecting broadband vibrational response of polycrystalline Nickel alloy first-stage turbine blades. The investigation is made through statistical analysis in presence of different levels of noise-to-signal ratio. Comparing the results with those of four state-of-the-art fusion techniques reveals the good performance of the proposed ensemble method.