基于自适应核贝叶斯推理的故障分类技术

J. Reimann, G. Kacprzynski
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引用次数: 0

摘要

本文概述了一种基于自适应核的贝叶斯推理回归/分类技术,由于该方法的可扩展性,该技术可以应用于广泛的问题。12此外,该框架的构建使得在将分类器应用于新问题时几乎不需要手动调整分类器,从而确保分类器可以很容易地应用于问题,而无需耗时的定制。为了测试该框架的性能,将其应用于两个非常不同的分类问题;即一个轴承健康分类问题和一个声纳图像分类问题。该方法的性能是非常有希望的;但是,必须在更大的数据集合上执行进一步的测试,才能真正衡量整体可伸缩性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Adaptive Kernel-based Bayesian Inference technique for failure classification
This paper outlines an Adaptive Kernel-based Bayesian Inference regression/classification technique that can be applied to a broad range of problems due to the scalable nature of the approach. 12 In addition, the framework is built such that little manual adjustment of the classifier is needed when applying it to new problems thereby ensuring that the classifier can be readily applied to problems without time consuming customization. To test the performance of the framework it was applied to two very different classification problems; namely, a bearing health classification problem and a sonar image classification problem. The performance of the approach is very promising; however, further tests must be performed on larger data collections to truly gauge the overall scalability and performance.
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