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Comparative Study of Data Mining Models for Prediction of Bridge Future Conditions

机译:数据挖掘模型对桥梁未来条件预测的比较研究

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Highway and bridge agencies use several systematic inspection approaches to ensure an acceptable standard for their assets in terms of safety, convenience, and economic value. The Bridge Condition Index (BCI), used by the Ontario Ministry of Transportation, is defined as the weighted condition of all bridge elements to determine the rehabilitation priority for the bridge. Therefore, accurate forecasting of BCI is essential for bridge rehabilitation budgeting and planning. The large amount of data available about bridge conditions for several years enables the use of different mathematical models to predict future BCI. This research focuses on investigating different classification models developed to predict the BCI in the province of Ontario, Canada, based on the publicly available historical data for 2,802 bridges over a period of more than 10 years. Predictive models used in this study include k-nearest neighbors (k-NN), decision trees (DTs), linear regression (LR), artificial neural networks (ANN), and deep learning neural networks (DLN). These models are compared and statistically validated via cross validation and paired t-test. The decision tree model showed acceptable predictive results (within 0.25% mean relative error) when predicting the future BCI and is the recommended option based on its performance and certainty in posterior maintenance decision making for the selected case study. (C) 2019 American Society of Civil Engineers.
机译:高速公路和桥梁机构使用了几种系统检测方法,以确保其资产在安全,便利和经济价值方面可接受的标准。安大略省交通部使用的桥梁状况指数(BCI)被定义为所有桥接元件的加权条件,以确定桥梁的康复优先级。因此,对BCI的准确预测对于桥梁康复预算和规划至关重要。有关桥接条件多年的大量数据可以使用不同的数学模型来预测未来的BCI。本研究重点介绍,研究了在加拿大安大略省安大略省省内的BCI开发的不同分类模型,基于超过10年的桥梁的公开历史数据。本研究中使用的预测模型包括K-CORMATE邻居(K-NN),决策树(DTS),线性回归(LR),人工神经网络(ANN)和深度学习神经网络(DLN)。通过交叉验证和配对T检验比较这些模型和统计验证。当预测未来BCI时,决策树模型显示可接受的预测结果(在0.25%的平均相对误差内),并且是基于所选案例研究的后维修决策中的性能和确定性的推荐选择。 (c)2019年美国土木工程师协会。

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