Feng Yuping, Mohammadi Masoud, Wang Lifeng, Rashidi Maria, Mehrabi Peyman
School of Civil Engineering, Northeast Forestry University, Harbin 150040, China.
Centre for Infrastructure Engineering, Western Sydney University, Penrith, NSW 2751, Australia.
Materials (Basel). 2021 Aug 27;14(17):4885. doi: 10.3390/ma14174885.
This paper numerically investigates the required superplasticizer (SP) demand for self-consolidating concrete (SCC) as a valuable information source to obtain a durable SCC. In this regard, an adaptive neuro-fuzzy inference system (ANFIS) is integrated with three metaheuristic algorithms to evaluate a dataset from non-destructive tests. Hence, five different non-destructive testing methods, including J-ring test, V-funnel test, U-box test, 3 min slump value and 50 min slump (T50) value were performed. Then, three metaheuristic algorithms, namely particle swarm optimization (PSO), ant colony optimization (ACO) and differential evolution optimization (DEO), were considered to predict the SP demand of SCC mixtures. To compare the optimization algorithms, ANFIS parameters were kept constant (clusters = 10, train samples = 70% and test samples = 30%). The metaheuristic parameters were adjusted, and each algorithm was tuned to attain the best performance. In general, it was found that the ANFIS method is a good base to be combined with other optimization algorithms. The results indicated that hybrid algorithms (ANFIS-PSO, ANFIS-DEO and ANFIS-ACO) can be used as reliable prediction methods and considered as an alternative for experimental techniques. In order to perform a reliable analogy of the developed algorithms, three evaluation criteria were employed, including root mean square error (RMSE), Pearson correlation coefficient (r) and determination regression coefficient (R). As a result, the ANFIS-PSO algorithm represented the most accurate prediction of SP demand with RMSE = 0.0633, r = 0.9387 and R = 0.9871 in the testing phase.
本文通过数值研究了自密实混凝土(SCC)所需的高效减水剂(SP)用量,作为获得耐久性SCC的重要信息来源。在此方面,将自适应神经模糊推理系统(ANFIS)与三种元启发式算法相结合,以评估来自无损检测的数据集。因此,进行了五种不同的无损检测方法,包括J环试验、V型漏斗试验、U型箱试验、3分钟坍落度值和50分钟坍落度(T50)值。然后,考虑了三种元启发式算法,即粒子群优化(PSO)、蚁群优化(ACO)和差分进化优化(DEO),来预测SCC混合物的SP用量。为了比较优化算法,ANFIS参数保持不变(聚类数 = 10,训练样本 = 70%,测试样本 = 30%)。对元启发式参数进行了调整,并对每种算法进行了调优以获得最佳性能。总体而言,发现ANFIS方法是与其他优化算法相结合的良好基础。结果表明,混合算法(ANFIS-PSO、ANFIS-DEO和ANFIS-ACO)可作为可靠的预测方法,并可被视为实验技术的替代方法。为了对所开发的算法进行可靠的类比,采用了三个评估标准,包括均方根误差(RMSE)、皮尔逊相关系数(r)和决定系数(R)。结果,在测试阶段,ANFIS-PSO算法对SP用量的预测最为准确,RMSE = 0.0633,r = 0.9387,R = 0.9871。