用平衡优化模型预测混凝土劈裂抗拉强度

IF 4 3区 工程技术 Q1 CONSTRUCTION & BUILDING TECHNOLOGY Steel and Composite Structures Pub Date : 2021-01-01 DOI:10.12989/SCS.2021.39.1.081
Yinghao Zhao, X. Zhong, L. K. Foong
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引用次数: 41

摘要

劈裂抗拉强度是混凝土的重要力学参数。本研究为该参数的早期预测提供了新的方法。人工神经网络(ANN)是一种领先的预测方法,它与原子搜索优化(ASO)和平衡优化(EO)两种元启发式算法相结合,实现了权重和偏差的最优调整。这些模型应用于从已发表的文献中收集的数据。首先研究了ASO- nn和EO- nn对种群大小的敏感性,然后比较了ASO- nn和EO- nn与传统神经网络的合理配置。通过对预测结果的评价,可以看出EO在优化人工神经网络方面具有优异的效率。在均方根误差和平均绝对误差方面,该算法的准确率分别提高了13.26%和11.41%。并且将相关系数从0.89958提高到0.92722。而传统神经网络的结果略好于ASO-NN。EO也是一个比ASO更快的优化器。基于这些发现,人工神经网络和自适应神经网络的结合可以成为一种有效的非破坏性预测STS的工具。
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Predicting the splitting tensile strength of concrete using an equilibrium optimization model
Splitting tensile strength (STS) is an important mechanical parameter of concrete. This study offers novel methodologies for the early prediction of this parameter. Artificial neural network (ANN), which is a leading predictive method, is synthesized with two metaheuristic algorithms, namely atom search optimization (ASO) and equilibrium optimizer (EO) to achieve an optimal tuning of the weights and biases. The models are applied to data collected from the published literature. The sensitivity of the ASO and EO to the population size is first investigated, and then, proper configurations of the ASO-NN and EO-NN are compared to the conventional ANN. Evaluating the prediction results revealed the excellent efficiency of EO in optimizing the ANN. Accuracy improvements attained by this algorithm were 13.26 and 11.41% in terms of root mean square error and mean absolute error, respectively. Moreover, it raised the correlation from 0.89958 to 0.92722. This is while the results of the conventional ANN were slightly better than ASO-NN. The EO was also a faster optimizer than ASO. Based on these findings, the combination of the ANN and EO can be an efficient non-destructive tool for predicting the STS.
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来源期刊
Steel and Composite Structures
Steel and Composite Structures 工程技术-材料科学:复合
CiteScore
8.50
自引率
19.60%
发文量
0
审稿时长
7.5 months
期刊介绍: Steel & Composite Structures, An International Journal, provides and excellent publication channel which reports the up-to-date research developments in the steel structures and steel-concrete composite structures, and FRP plated structures from the international steel community. The research results reported in this journal address all the aspects of theoretical and experimental research, including Buckling/Stability, Fatigue/Fracture, Fire Performance, Connections, Frames/Bridges, Plates/Shells, Composite Structural Components, Hybrid Structures, Fabrication/Maintenance, Design Codes, Dynamics/Vibrations, Nonferrous Metal Structures, Non-metalic plates, Analytical Methods. The Journal specially wishes to bridge the gap between the theoretical developments and practical applications for the benefits of both academic researchers and practicing engineers. In this light, contributions from the practicing engineers are especially welcome.
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