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首页> 外文期刊>Journal of Engineering Mechanics >Bayesian Learning Using Automatic Relevance Determination Prior with an Application to Earthquake Early Warning
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Bayesian Learning Using Automatic Relevance Determination Prior with an Application to Earthquake Early Warning

机译:贝叶斯学习使用自动相关性确定先于地震预警

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摘要

A novel method of Bayesian learning with automatic relevance determination prior is presented that provides a powerful approach to problems of classification based on data features, for example, classifying soil liquefaction potential based on soil and seismic shaking parameters, automatically classifying the damage states of a structure after severe loading based on features of its dynamic response, and real-time classification of earthquakes based on seismic signals. After introduction of the theory, the method is illustrated by applying it to an earthquake record dataset from nine earthquakes to build an efficient real-time algorithm for near-source versus far-source classification of incoming seismic ground motion signals. This classification is needed in the development of early warning systems for large earthquakes. It is shown that the proposed methodology is promising since it provides a classifier with higher correct classification rates and better generalization performance than a previous Bayesian learning method with a fixed prior distribution that was applied to the same classification problem.
机译:提出了一种具有先验自动相关性的贝叶斯学习新方法,该方法为基于数据特征的分类问题提供了一种有力的方法,例如,根据土壤和地震晃动参数对土壤液化势进行分类,对结构的破坏状态进行自动分类根据严重载荷后的动态响应特征,以及基于地震信号的地震实时分类。在介绍了该理论之后,通过将其应用于来自九次地震的地震记录数据集,以建立一种有效的实时算法来对传入的地震地面运动信号进行近源与远源分类,从而对该方法进行了说明。在开发大地震预警系统时,需要进行此分类。结果表明,所提出的方法是有希望的,因为它为分类器提供了更高的正确分类率和更好的泛化性能,而该分类器比以前的贝叶斯学习方法具有适用于相同分类问题的固定先验分布。

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