混凝土抗压强度的神经预测

Q4 Engineering
S. Dauji
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引用次数: 8

摘要

过去,一些研究人员通过人工神经网络(ANN)从混凝土成分中预测混凝土的抗压强度。通过对具有不同性能指标(如相关系数和估计误差)的模型的评估,表明人工神经网络的预测性能还有改进的空间。本文利用两个概念开发了具有优异性能的预测模型:单个人工神经网络和模块人工神经网络。文献中的实验数据已用于该研究。通过更高的相关性、更小的均方根误差和平均绝对误差,确定了所开发的神经网络模型比文献中报道的整体性能更好。在本应用中,模块化人工神经网络概念的性能优于单一人工神经网络的概念。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural prediction of concrete compressive strength
In the past, a few researchers predicted the compressive strength of concrete from its ingredients by employing artificial neural network (ANN). Evaluation of the models with different performance metrics, such as correlation coefficient and errors of estimation, indicated that there was scope for improvement in the prediction performance of ANN. In this paper development of prediction models has been carried out for superior performance with two concepts: single ANN and modular ANN. Experimental data from literature have been utilised for the study. Better overall performance of the developed ANN models than reported in the literature was ascertained by higher correlation, less root mean square error and mean absolute error. The performance of the modular ANN concept was superior to that of single ANN concept for the present application.
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CiteScore
0.40
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