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首页> 外文期刊>Arabian Journal for Science and Engineering >Compressive Strength of Self‑Compacting Concrete Modified with Rice Husk Ash and Calcium Carbide Waste Modeling: A Feasibility of Emerging Emotional Intelligent Model (EANN) Versus Traditional FFNN
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Compressive Strength of Self‑Compacting Concrete Modified with Rice Husk Ash and Calcium Carbide Waste Modeling: A Feasibility of Emerging Emotional Intelligent Model (EANN) Versus Traditional FFNN

机译:用稻壳灰和碳化钙废物建模改性自压力混凝土的抗压强度:新兴情绪智能模型的可行性(EANN)与传统FFNN

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摘要

In the present research, the information on compressive strength of self-compacting concrete (SCC) containing rice husk ash (RHA) and calcium carbide waste (CCW) as an admixture cured for 28 days was provided. The research applied feedforward propagation neural network (FFNN), emotional neural network (EANN), and conventional linear regression (LR) in the prediction of compressive in which FFNN, EANN, and LR models were trained on the experimental data obtained from addition of 0%–10% RHA and 0%–20% CCW in the SCC mixtures. The results revealed that inclusion of CCW reduces the workability of SCC mixtures and increases in compressive strength at 28 days were observed for SCC mixture containing 10% RHA and 0% CCW against the reference mixtures. The results also indicated that all the AI models (FFNN, EANN, and LR) performed very well with R~2-values higher than 0.8951 in both the testing and training stages. The results showed that EANN-M3, FFNN-M3, and LR-M3 combination has the highest performance evaluation criteria of R~2 = 0.9733 and 0.9610, R~2 = 0.9440 and 0.9454 and R~2 = 0.9117 and 0.9205 in both training and testing stages, respectively. It indicates the proposed models’ high accuracy in predicting the compressive strength σ of self-compacting concrete with rice husk ash as cement replacement and calcium carbide waste as supplementary materials. The result also suggested that other models, like emerging algorithms, hybrid models, and optimization methods, could enhance the models’ performance.
机译:在本研究中,提供了含有稻壳灰(RHA)和碳化物废物(CCW)的自压制混凝土(SCC)的压缩强度信息,作为固化28天的混合物。在预测的压缩预测中,研究了应用前馈传播神经网络(FFNN),情绪神经网络(EANN)和传统的线性回归(LR),其中在从添加0获得的实验数据上培训了FFNN,EANN和LR模型的压缩性在SCC混合物中%-10%RHA和0%-20%CCW。结果表明,包含CCW的含量降低了SCC混合物的可加工性,并且对于含有10%RHA和0%CCW的SCC混合物对参考混合物的SCC混合物观察到抗压强度的增加。结果还表明,所有AI模型(FFNN,EANN和LR)在测试和训练阶段都具有高于0.8951的R〜2值。结果表明,EANN-M3,FFNN-M3和LR-M3组合具有R〜2 = 0.9733和0.9610,R〜2 = 0.9440和0.9454和R〜2 = 0.9117和0.9205的最高性能评估标准和测试阶段。它表明了提出的模型'高精度,以预测稻壳米壳米壳的自压缩混凝土压缩强度σ作为水泥替代品和碳化物废物作为补充材料。结果还建议其他模型,如新兴算法,混合模型和优化方法,可以提高模型的性能。

著录项

  • 来源
    《Arabian Journal for Science and Engineering》 |2021年第11期|11207-11222|共16页
  • 作者单位

    Department of Civil Engineering Bayero University P.M.B. 3011 Kano Nigeria School of Civil Engineering Tianjin University Tianjin 300072 China;

    Department of Civil Engineering Kano University of Science and Technology Wudil Kano Nigeria;

    Department of Civil Engineering Bayero University P.M.B. 3011 Kano Nigeria;

    Department of Analytical Chemistry Faculty of Pharmacy Near East University 99138 Nicosia Turkish Republic of Northern Cyprus;

    Department of Civil Engineering Technology Kano State Polytechnic Kano Nigeria;

    Department of Civil Engineering Faculty of Engineering Near East University Near East Boulevard Via Mersin 10 99138 Nicosia North Cyprus Turkey;

    Faculty of Engineering Department of Civil Engineering Baze University Abuja Nigeria;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Artificial Intelligence; Compressive Strength; Emotional neural Network; Modeling; Self-Compacting Concrete;

    机译:人工智能;抗压强度;情绪神经网络;造型;自压力混凝土;

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