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Strength prediction of high-strength concrete by fuzzy logic and artificial neural networks

机译:基于模糊逻辑和人工神经网络的高强混凝土强度预测

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摘要

High-strength concretes (HSC) were prepared with five different binder contents, each of which had several silica fume (SF) ratios (0-15%). The compressive strength was determined at 3, 7, and 28 days, resulting in a total of 60 sets of data. In a fuzzy logic (FL) algorithm, three input variables (SF content, binder content, and age) and the output variable (compressive strength) were fuzzified using triangular membership functions. A total of 24 fuzzy rules were inferred from 60% of the data. Moreover, the FL model was tested against an artificial neural networks (ANNs) model. The results show that FL can successfully be applied to predict the compressive strength of HSC. Three input variables were sufficient to obtain accurate results. The operators used in constructing the FL model were found to be appropriate for compressive strength prediction. The performance of FL was comparable to that of ANN. The extrapolation capability of FL and ANNs were found to be satisfactory.
机译:用五种不同的粘合剂含量制备高强度混凝土(HSC),每种粘合剂具有几种硅粉(SF)比率(0-15%)。在第3、7和28天确定抗压强度,总共得到60组数据。在模糊逻辑(FL)算法中,使用三角隶属函数对三个输入变量(SF含量,粘结剂含量和使用年限)和输出变量(抗压强度)进行了模糊处理。从60%的数据中推断出总共24条模糊规则。此外,针对人工神经网络(ANN)模型测试了FL模型。结果表明,FL可以成功地应用于预测HSC的抗压强度。三个输入变量足以获得准确的结果。发现用于构造FL模型的算子适用于抗压强度预测。 FL的性能与ANN相当。发现FL和ANN的外推能力令人满意。

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