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Framework for the development of artificial neural networks for predicting the load carrying capacity of RC members

机译:预测RC构件承载力的人工神经网络开发框架

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This paper aims at establishing a framework for the development of artificial neural networks (ANNs) capable of realisticallypredicting the load-carrying capacity of reinforced concrete (RC) members. Multilayer back propagation neuralnetworks are developed through the use of MATLAB and enriched databases which contain information describing thevariation of load-carrying capacity in relation to key design parameters associated with the RC specimens (i.e. beams)considered. This work forms the basis for the development of a knowledge-based structural analysis tool capable ofpredicting RC structural response. A detailed discussion is provided on the different aspects of the proposed frameworkwhich include (1) the formation and analysis of the relevant (experimental) data, (2) the architecture of the ANNs, (3) thetraining/calibration process they undergo and finally, (4) ways of extending their applicability enabling them to predictthe behaviour of RC structural forms with design parameters not represented in the available experimental database.Non-linear finite element analysis is used for validating the predictions of the ANN models developed. The comparativestudy reveals that the ANN models developed through the proposed framework are capable of effectively predictingthe load-carrying capacity s of the RC structural forms considered quickly, accurately and without requiring significantcomputational resources.
机译:本文旨在建立一个能够切实可行地发展人工神经网络(ANN)的框架预测钢筋混凝土(RC)构件的承载能力。多层反向传播神经通过使用MATLAB和丰富的数据库开发网络,这些数据库包含描述承载能力相对于与RC样本(即梁)相关的关键设计参数的变化考虑过的。这项工作构成了开发基于知识的结构分析工具的基础,该工具能够预测钢筋混凝土的结构响应。提供了有关拟议框架不同方面的详细讨论其中包括(1)相关(实验)数据的形成和分析,(2)ANN的体系结构,(3)他们经历的培训/校准过程,最后是(4)扩展其适用性的方法,使他们能够预测具有可用设计数据库中未显示的设计参数的钢筋混凝土结构形式的行为。非线性有限元分析用于验证所开发的ANN模型的预测。比较研究表明,通过提出的框架开发的ANN模型能够有效预测快速,准确且无需大量考虑的RC结构模板的承载能力s计算资源。

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