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Predicting Bridge Elements Deterioration, using Collaborative Gaussian Process Regression ?

机译:预测桥接元素劣化,使用协作高斯进程回归

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Roadway and railway bridges are not only integral, but also vulnerable parts of terrestrial transport networks. Structural failures of bridges may lead to disastrous consequences on users and society at large. Bridge predictive deterioration models are extremely important for effective maintenance decision-making. However, the lack of enough inspection data between maintenance activities of a bridge complicates the development of accurate predictive models. Presented herein is a Gaussian Process Regression (GPR) based collaborative model for predicting the condition of bridge elements with limited available inspection data per bridge. This model has been applied in 137 bridge decks, showing that collaborative prognosis has the potential to predict the condition of different types of bridge elements, composing different types of bridges.
机译:巷道和铁路桥不仅是整体的,而且是易受攻击的地面运输网络的脆弱部分。桥梁的结构失败可能导致对用户和社会的灾难性后果。桥梁预测劣化模型对于有效的维护决策非常重要。然而,桥梁维护活动之间缺乏足够的检查数据使准确的预测模型的发展复杂化。这里呈现的是基于高斯进程回归(GPR)的协作模型,用于预测每个桥梁有限的可用检查数据的桥接元件的条件。该模型已应用于137个桥甲板,表明协作预后有可能预测不同类型的桥接元件的条件,构成不同类型的桥梁。

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