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Efficient soft computing techniques for the prediction of compressive strength of geopolymer concrete

机译:高效软计算技术,用于预测地缘聚合物混凝土抗压强度

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In the recent year, extensive researches have been done on fly ash-based geopolymer concrete for its similar properties like Portland cement as well as its environmental sustainability. However, it is difficult to provide a consistent method for geopolymer mix design because of the complexity and uncertainty of its design parameters, such as the alkaline solution concentration, mole ratio, and liquid to fly ash mass ratio. These mix-design parameters, along with the curing time and temperature ominously affect the most significant properties of the geopolymer concrete, i.e., compressive strength. To overcome these difficulties, the paper aims to provide a simple mix-design tool using artificial intelligence (AI) models. Three well-established and efficient Al techniques namely, genetic programming, relevance vector machine, and Gaussian process regression are used. Based on the performance of the developed models, it is understood that all the models have the capability to deliver higher prediction accuracies in the range of 0.9362 to 0.9905 (based on R-2 value). Among the employed models, RVM outperformed the other model with R-2 =0.9905 and RMSE=0.0218. Theodore, the developed RVM model is very potential to be a new alternative to assist engineers to save time and expenditure on account of the trial-and-error process in finding the correct design mix proportions.
机译:近年来,在粉煤灰的地质聚合物混凝土中,为其与波特兰水泥等类似的性质以及环境可持续性进行了广泛的研究。然而,由于其设计参数的复杂性和不确定度,诸如碱性溶液浓度,摩尔比和液体以飞溅灰质量比,难以提供一致的地质混合物设计方法。这些混合设计参数以及固化时间和温度难以影响地质聚合物混凝土的最显着特性,即抗压强度。为了克服这些困难,旨在提供一种使用人工智能(AI)模型的简单的混合设计工具。使用三种完善和高效的AL技术,即遗传编程,相关矢量机和高斯过程回归。基于开发模型的性能,据了解,所有模型都具有在0.9362至0.9905范围内提供更高预测精度的能力(基于R-2值)。在采用的模型中,RVM与R-2 = 0.9905和RMSE = 0.0218的其他模型表现优于其他模型。 TheoDore,开发的RVM模型是一种新的替代方案,可以帮助工程师省时节省时间和支出,因为在找到正确的设计混合比例方面的试验和错误过程。

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