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首页> 外文期刊>Journal of Computing in Civil Engineering >Risk Assessment for Bridge Maintenance Projects: Neural Networks versus Regression Techniques
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Risk Assessment for Bridge Maintenance Projects: Neural Networks versus Regression Techniques

机译:桥梁维修项目的风险评估:神经网络与回归技术

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Bridge risk assessment often serves as the basis for bridge maintenance priority ranking and optimization and conducted periodically for the purpose of safety. This paper presents an application of artificial neural networks in bridge risk assessment, in which back-propagation neural networks are developed to model bridge risk score and risk categories. The study investigated and utilized 506 bridge maintenance projects to develop the models. It is shown that neural networks have a very strong capability of modeling and classifying bridge risks. The average accuracies for risk score and risk categories are both over 96%. A comparative study is conducted with an alternative methodology using multiple regression techniques. The results revealed that neural networks achieved much better performances than regression analysis models. In addition an integrated forecasting approach was utilized to combine neural networks and regression analysis to generate hybrid models, which produced better accuracies than any of the individually developed models.
机译:桥梁风险评估通常是桥梁维护优先级排序和优化的基础,并且出于安全目的定期进行评估。本文介绍了人工神经网络在桥梁风险评估中的应用,其中开发了反向传播神经网络来建模桥梁风险评分和风险类别。该研究调查并利用了506个桥梁维护项目来开发模型。结果表明,神经网络具有非常强的建模和分类桥梁风险的能力。风险评分和风险类别的平均准确率均超过96%。比较研究是使用多种回归技术使用其他方法进行的。结果表明,与回归分析模型相比,神经网络的性能要好得多。此外,还使用集成的预测方法将神经网络和回归分析相结合,以生成混合模型,该模型产生的精度要高于任何单独开发的模型。

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