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Simulation of foamed concrete compressive strength prediction using adaptive neuro-fuzzy inference system optimized by nature-inspired algorithms

机译:利用自然启发算法优化的自适应神经模糊推理系统模拟发泡混凝土抗压强度预测

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Concrete compressive strength prediction is an essential process for material design and sustainability. This study investigates several novel hybrid adaptive neuro-fuzzy inference system (ANFIS) evolutionary models, i.e., ANFIS-particle swarm optimization (PSO), ANFIS-ant colony, ANFIS-differential evolution (DE), and ANFIS-genetic algorithm to predict the foamed concrete compressive strength. Several concrete properties, including cement content (C), oven dry density (O), water-to-binder ratio (W), and foamed volume (F) are used as input variables. A relevant data set is obtained from open-access published experimental investigations and used to build predictive models. The performance of the proposed predictive models is evaluated based on the mean performance (MP), which is the mean value of several statistical error indices. To optimize each predictive model and its input variables, univariate (C, O, W, and F), bivariate (C-O, C-W, C-F, O-W, O-F, and W-F), trivariate (C-O-W, C-W-F, O-W-F), and four-variate (C-O-W-F) combinations of input variables are constructed for each model. The results indicate that the best predictions obtained using the univariate, bivariate, trivariate, and four-variate models are ANFIS-DE- (O) (MP = 0.96), ANFIS-PSO- (C-O) (MP = 0.88), ANFIS-DE- (O-W-F) (MP = 0.94), and ANFIS-PSO- (C-O-W-F) (MP = 0.89), respectively. ANFIS-PSO- (C-O) yielded the best accurate prediction of compressive strength with an MP value of 0.96.
机译:混凝土抗压强度预测是材料设计和可持续性的必要方法。本研究调查了几种新型混合自适应神经模糊推理系统(ANFIS)进化模型,即ANFIS-粒子群优化(PSO),ANFIS-蚁群,ANFIS - 差分演进(DE)和ANFIS-遗传算法预测发泡混凝土抗压强度。几种混凝土性质,包括水泥含量(c),烘箱干密度(O),水 - 粘合剂比(w)和发泡体积(f)作为输入变量。相关数据集是从开放访问公开的实验研究中获得的,用于构建预测模型。基于平均性能(MP)来评估所提出的预测模型的性能,这是几种统计误差索引的平均值。优化每个预测模型及其输入变量,单变量(C,O,W和F),Bivariate(CO,CW,CF,OW,和WF),琐碎(COW,CWF,OWF)和四个 - 变化(COWF)输入变量的组合为每个模型构造。结果表明,使用单变量,双变量,琐碎和四变体模型获得的最佳预测是ANFIS-DE-(O)(MP = 0.96),ANFIS-PSO-(CO)(MP = 0.88),ANFIS- De-(OWF)(MP = 0.94)和ANFIS-PSO-(COWF)(MP = 0.89)。 ANFIS-PSO-(C-O)产生了对抗压强度的最佳精确预测,MP值为0.96。

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