基于遗传算法的混合网络SCC抗压强度影响因素选择与预测

Liang Wei, Ming-Jhou Lin, Dong Jiangfeng, Y. Shucheng
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引用次数: 1

摘要

抗压强度是混凝土最重要的评价指标。为了预测自密实混凝土的抗压强度,设计并应用了BP (Back-propagation)网络和基于遗传算法的DRGA-BP混合网络两种人工神经网络(ann)。采用DRGA-BP方法,从多个初始输入中选取最具代表性的变量降维,并对BP模型的权值和阈值进行优化。结果表明,混合模型预测精度较高,R2(决定系数)为0.9602,与实验数据吻合较好,具有较高的可靠性。最后,提出了一种基于DRGA-BP模型的配合比设计方法,以减少混凝土生产过程中不断调整的材料浪费和节省时间。
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EFFECT FACTORS’ SELECTION AND PREDICTION OF COMPRESSIVE STRENGTH OF SCC USING A HYBRID NETWORK BASED ON GA
Compressive strength is the most important evaluation index for concrete. In order to predict the compressive strength of self-compacting concrete, two kinds of artificial neural networks (ANNs), including the BP (Back-propagation) networks and the hybrid networks DRGA-BP based on GA (Genetic algorithm), were designed and applied in this study. With DRGA-BP, the most representative variables were selected out from many initial inputs to reduce data dimensions and also the weights and thresholds of BP model were optimized. The results showed that the hybrid model presented better prediction accuracy with the R2 (coefficient of determination) of 0.9602, and appeared to well agree with the experimental data and was quite reliable. Finally, a mix ratio design method based on DRGA-BP model was proposed for reducing material waste and saving time in the process of concrete production with continuous adjustment.
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