利用JAYA算法优化高性能混凝土配合比

M. Jayaram
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引用次数: 0

摘要

本文以材料的可持续性为导向,对工程设计的优化进行了跨学科的研究。这方面的例子是高性能混凝土配合比的优化。最近的生物启发算法,即Jaya算法已经实现了相同的。模型的开发包括两个步骤,从标准出版物和研究报告的实验结果中获得的500个混合设计的大量数据进行预处理,并保留约450个合法和合适的数据集用于模型开发。此外,数据被划分为五个强度范围。对于每个强度范围,从预处理后的数据中挖掘出变量的下限值和上限值以及权重的合理比值。该算法在100-150次迭代中表现非常好。该算法生成的28天强度范围的混合比例是高度可接受的,并且与数据中的实际值密切相关。这反映在低均方误差上。水泥的均方误差为10% -12%,粉煤灰为7% - 9%,水为2.1% - 4.0%。此外,还将作者之前的研究结果与其他算法如蜜蜂优化(HBO)、蚂蚁狮子算法(ALO)、粒子群优化(PSO)和ga - elite Based models (EGA)进行了全面比较。这些算法生成的混凝土成分的数量几乎是接近的。然而,所注意到的均方误差的差异是微不足道的。Jaya算法的输出与ALO算法的输出非常接近。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized High Performance Concrete Mix Proportioning Through JAYA Algorithm
In this paper an interdisciplinary research related to optimization of engineering design which is directed towards sustainability of materials is presented. The case in point is optimization of high performance concrete mixes. The recent bio-inspired algorithm, namely, Jaya algorithm has been implemented for the same. The development of models comprised of two steps, a sizable data of 500 mix designs gotten from standard publications and reported experimental results by researches were preprocessed and legitimate and befitting data sets numbering around 450 were retained for model development. Further, the data is partitioned in to five strength ranges. For each strength range, the lower limit and upper limits of variables and rational ratios of weights were mined from the data after its preprocessing. The algorithm performed very well just for 100-150 iterations. The mix proportions generated by this algorithm for assorted 28 day’s ranges of strength are highly acceptable and align closely with the practical values found in the data. This is reflected by the low mean square error. The mean square error was found to be 10 %-12% for cement, 7% - 9% for fly ash, and 2.1% - 4.0 % for water. Further, a comprehensive comparison of the results obtained in the previous studies of the author with other algorithms namely, Honey Bee Optimization (HBO), Ant Lion Algorithm(ALO), Particle swarm Optimization(PSO), and GA-Elitism Based models (EGA), is also made and presented. The quantities of ingredients of concrete generated by these algorithms are almost close. The differences in mean square errors noticed were marginal though. The output of Jaya algorithm is found to be very close to those generated by ALO.
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