Department of Civil Engineering, Bennett University, Greater Noida, Uttar Pradesh, 201310, India.
Environ Sci Pollut Res Int. 2022 Jun;29(29):43758-43769. doi: 10.1007/s11356-020-12244-3. Epub 2021 Jan 22.
High-strength concrete (HSC) is defined as concrete that meets a special combination of uniformity and performance requirements, which cannot be attained routinely via traditional constituents and normal mixing, placing, and curing procedures. It is a complex material since modeling its behavior is a difficult task. This paper intends to show the feasible applicability of optimized convolutional neural networks (CNN) for predicting the slump in HSC. The following are the parameters that given as the input for the prediction of slump: cement (kg/m), slag (kg/m), fly ash (kg/m), water (kg/m), super-plasticizer (kg/m), coarse aggregate (kg/m), and fine aggregate (kg/m). In order to make the prediction more accurate, the design of CNN is assisted with optimization logic by making some fine-tuned filter size of the convolutional layer. For this optimization purpose, this work presents a new "hybrid" algorithm that incorporates the concept of sea lion optimization algorithm (SLnO) and dragonfly algorithm (DA) and is named as Levy updated-sea lion optimization algorithm (LU-SLnO). Finally, the performance of the proposed work is compared and proved over the state-of-the-art models with respect to error measure and convergence analysis.
高强度混凝土(HSC)被定义为满足均匀性和性能要求的特殊组合的混凝土,这些要求无法通过传统成分和常规混合、放置和养护程序来实现。它是一种复杂的材料,因为对其行为进行建模是一项艰巨的任务。本文旨在展示优化卷积神经网络(CNN)在预测 HSC 坍落度方面的可行适用性。以下是作为坍落度预测输入的参数:水泥(kg/m)、矿渣(kg/m)、粉煤灰(kg/m)、水(kg/m)、超塑化剂(kg/m)、粗骨料(kg/m)和细骨料(kg/m)。为了使预测更加准确,通过对卷积层的一些微调滤波器尺寸,使用优化逻辑辅助 CNN 的设计。出于此优化目的,本工作提出了一种新的“混合”算法,该算法结合了海狮优化算法(SLnO)和蜻蜓算法(DA)的概念,并被命名为莱维更新海狮优化算法(LU-SLnO)。最后,对所提出的工作的性能进行了比较,并在误差测量和收敛性分析方面证明了其优于最先进模型的性能。