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首页> 外文期刊>Journal of structural fire engineering >Artificial Neural Networks for the Spalling Classification & Failure Prediction Times of High Strength Concrete Colunms
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Artificial Neural Networks for the Spalling Classification & Failure Prediction Times of High Strength Concrete Colunms

机译:人工神经网络用于高强度混凝土柱体剥落分类和破坏预测时间

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摘要

This paper presents the results from two supervised Artificial Neural Networks (ANN) developed for the spalling classification and failure prediction of high strength concrete columns (HSCC) subjected to fire. The experimental test data used for the ANN are based on the HSCC tests undertaken at the Fire Research Laboratories at the University of Ulster. 80% of the chosen experimental test data was used to train the network with the remaining 20% used for testing. In the spalling classification example the key ANN input parameters were; furnace temperature, restraint, loading level, force, spalling degree, failure time and spalling type. This was also the case for the failure prediction example except for spalling type. The networks were trained using the resilient propagation algorithm. A 6-10-3 and 5-10-1 ANN architecture gave the best results for the classification and failure prediction times respectively. The results demonstrate that HSCC can be assessed using ANN.
机译:本文介绍了两个受监督的人工神经网络(ANN)的结果,该神经网络用于火灾后高强度混凝土柱(HSCC)的剥落分类和破坏预测。用于人工神经网络的实验测试数据基于阿尔斯特大学消防研究实验室进行的HSCC测试。所选实验测试数据的80%用于训练网络,其余20%用于测试。在剥落分类示例中,关键的ANN输入参数为:炉温,约束,载荷水平,力,剥落程度,破坏时间和剥落类型。除散裂类型外,故障预测示例也是如此。使用弹性传播算法训练网络。 6-10-3和5-10-1 ANN架构分别为分类和故障预测时间提供了最佳结果。结果表明,可以使用ANN评估HSCC。

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