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首页> 外文期刊>Multidiscipline modeling in materials and structures >Prediction performance of compressive strength of cementitious materials containing rubber aggregates and filler using fuzzy logic method
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Prediction performance of compressive strength of cementitious materials containing rubber aggregates and filler using fuzzy logic method

机译:用模糊逻辑方法预测含橡胶骨料和填料的胶凝材料的抗压强度

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摘要

Purpose - The purpose of this paper is to focus on compressive strength modelling of cementitious mixtures like mortar and Roller-compacted concrete (RCC) containing rubber aggregates from shredded worn tires and filler using adaptive neuro fuzzy inference systems (ANFIS). Design/methodology/approach - The volume substitution contains a ratio of rubber aggregates vs sand in mortar and with crushed sand in RCC and ranges from 0 to 50 per cent. As for the filler, they are substituted with sand by 5 per cent in mortar mixture. The methodology consists of optimizing the percentage of substitution in cementitious mixtures to ensure better mechanical properties of materials like compressive strength. The prediction of compressive strength and the optimization of cementitious mixtures encourage their uses in such construction pavements, in area games or in other special constructions. These cementitious materials are considered as friendly to the environment by focussing on their improved deformability. Findings - The results of this paper show that the performance of the constructed fuzzy method was measured by correlation of experimental and model results of mortar and RCC mixtures containing both rubber aggregates and filler. The comparison between elaborated models through the error and the accuracy calculations confirms the reliability of the ANFIS method. Originality/value - The purpose of this paper is to assess the performance of the constructed fuzzy model by the ANFIS method for two types of cementitious materials like mortar and RCC containing rubber aggregates and filler. The fuzzy method could predict the compressive strength based on the limited measurement values in the mechanical experiment. Furthermore, the comparison between the elaborated models confirms the reliability of the ANFIS method through the error and the accuracy calculations for the best cementitious material mixtures.
机译:目的-本文的目的是使用自适应神经模糊推理系统(ANFIS)对水泥混合物的抗压强度模型进行建模,如砂浆和碾压的混凝土(RCC),其中包含来自碎轮胎和填充物的橡胶骨料。设计/方法/方法-体积替代包含橡胶集料与砂浆中砂的比例以及RCC中碎砂的比例,范围为0%至50%。至于填料,在砂浆混合物中用5%的沙子代替它们。该方法包括优化水泥混合物中的取代百分比,以确保更好的材料机械性能(如抗压强度)。抗压强度的预测和水泥质混合物的优化鼓励它们在此类建筑路面,区域游戏或其他特殊建筑中的使用。这些胶凝材料通过改善其可变形性而被认为对环境友好。发现-本文的结果表明,通过同时包含橡胶集料和填料的砂浆和RCC混合物的实验和模型结果的相关性,可以测量所构造的模糊方法的性能。通过误差与精确度计算得出的详细模型之间的比较证实了ANFIS方法的可靠性。原创性/价值-本文的目的是通过ANFIS方法评估构建的模糊模型对两种胶凝材料(如砂浆和RCC)的性能,该胶凝材料包含橡胶骨料和填料。模糊方法可以基于机械实验中有限的测量值来预测抗压强度。此外,详细模型之间的比较通过最佳水泥材料混合物的误差和准确度计算,证实了ANFIS方法的可靠性。

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