基于半监督学习的桥梁结构健康数据分析模型

Yu Chongchong, Wang Jingyan, Tan Li, Tu Xuyan
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引用次数: 1

摘要

桥梁结构健康监测是为保证桥梁安全施工和使用而进行的多参数监测。针对各种前端传感器采集数据反映桥梁结构健康状态的特征,如应变、振动、变形、索张力等,本文建立了基于半监督学习的桥梁结构健康数据分析模型,该模型对多种参数数据进行了分类,并使用不同学习模式下的分类器,分别对两类样本集进行了分类。据此进行分析,从而诊断桥梁结构的损伤程度,为桥梁维修管理决策提供依据和指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A bridge structural health data analysis model based on semi-supervised learning
Bridge structural health monitoring is a multi-parameter monitoring for guaranteeing safe construction and service of bridges. Focused on the features of the collected data by various front end sensors, that are reflecting bridge structural health state such as strain, vibration, distortion, cable tension etc., a bridge structural health data analysis model is established in this paper, based on semi-supervised learning which classifies diversified parameter data, and using classifier under various learning patterns, to conduct classification of two types of sample set respectively, on which analysis is done so as to diagnose the bridge structural damage degree and provide evidence and guidance to bridge maintenance and management decision taking.
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