Adamu Musa, Rehman Khalil Ur, Ibrahim Yasser E, Shatanawi Wasfi
Engineering Management Department, College of Engineering, Prince Sultan University, 11586, Riyadh, Saudi Arabia.
Department of Mathematics and Sciences, College of Humanities and Sciences, Prince Sultan University, 11586, Riyadh, Saudi Arabia.
Sci Rep. 2023 Oct 30;13(1):18649. doi: 10.1038/s41598-023-45462-z.
Date palm fiber (DPF) is normally used as fiber material in concrete. Though its addition to concrete leads to decline in durability and mechanical strengths performance. Additionally, due to its high ligno-cellulose content and organic nature, when used in concrete for high temperature application, the DPF can easily degrade causing reduction in strength and increase in weight loss. To reduce these effects, the DPF is treated using alkaline solutions. Furthermore, pozzolanic materials are normally added to the DPF composites to reduce the effects of the ligno-cellulose content. Therefore, in this study silica fume was used as supplementary cementitious material in DPF reinforced concrete (DPFRC) to reduce the negative effects of elevated temperature. Hence this study aimed at predicting the residual strengths of DPFRC enhanced/improved with silica fume subjected to elevated temperature using different models such as artificial neural network (ANN), multi-variable regression analysis (MRA) and Weibull distribution. The DPFRC is produced by adding DPF in proportions of 0%, 1%, 2% and 3% by mass. Silica fume was used as partial substitute to cement in dosages of 0%, 5%, 10% and 15% by volume. The DPFRC was then subjected to elevated temperatures between 200 and 800 °C. The weight loss, residual compressive strength and relative strengths were measured. The residual compressive strength and relative strength of the DPFRC declined with addition of DPF at any temperature. Silica fume enhanced the residual and relative strengths of the DPFRC when heated to a temperature up to 400 °C. To forecast residual compressive strength (RCS) and relative strength (RS), we provide two distinct ANN models. The first layer's inputs include DPF (%), silica fume (%), temperature (°C), and weight loss (%). The hidden layer is thought to have ten neurons. M-I is the scenario in which we use RCS as an output, whereas M-II is the scenario in which we use RS as an output. The ANN models were trained using the Levenberg-Marquardt backpropagation algorithm (LMBA). Both neural networking models exhibit a significant correlation between the predicted and actual values, as seen by their respective R = 0.99462 and R = 0.98917. The constructed neural models M-I and M-II are highly accurate at predicting RCS and RS values. MRA and Weibull distribution were used for prediction of the strengths of the DPFRC under high temperature. The developed MRA was found to have a good prediction accuracy. The residual compressive strength and relative strength followed the two-parameter Weibull distribution.
椰枣纤维(DPF)通常用作混凝土中的纤维材料。尽管将其添加到混凝土中会导致耐久性和力学强度性能下降。此外,由于其高木质纤维素含量和有机性质,当用于高温环境的混凝土中时,DPF很容易降解,导致强度降低和重量损失增加。为了减少这些影响,使用碱性溶液对DPF进行处理。此外,通常会在DPF复合材料中添加火山灰质材料,以减少木质纤维素含量的影响。因此,在本研究中,硅灰被用作DPF增强混凝土(DPFRC)中的辅助胶凝材料,以减少高温的负面影响。因此,本研究旨在使用人工神经网络(ANN)、多变量回归分析(MRA)和威布尔分布等不同模型预测硅灰增强/改善后的DPFRC在高温下的残余强度。DPFRC是通过按质量比添加0%、1%、2%和3%的DPF制成的。硅灰用作水泥的部分替代品,用量按体积计为0%、5%、10%和15%。然后将DPFRC置于200至800℃的高温下。测量重量损失、残余抗压强度和相对强度。在任何温度下,DPF的添加都会使DPFRC的残余抗压强度和相对强度下降。当加热到400℃时,硅灰提高了DPFRC的残余强度和相对强度。为了预测残余抗压强度(RCS)和相对强度(RS),我们提供了两个不同的ANN模型。第一层的输入包括DPF(%)、硅灰(%)、温度(℃)和重量损失(%)。隐藏层被认为有10个神经元。M-I是我们将RCS作为输出的情况,而M-II是我们将RS作为输出的情况。ANN模型使用Levenberg-Marquardt反向传播算法(LMBA)进行训练。从各自的R = 0.99462和R = 0.98917可以看出,这两个神经网络模型在预测值和实际值之间都表现出显著的相关性。构建的神经模型M-I和M-II在预测RCS和RS值方面具有很高的准确性。使用MRA和威布尔分布来预测高温下DPFRC的强度。发现开发的MRA具有良好的预测准确性。残余抗压强度和相对强度遵循双参数威布尔分布。