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Design of High-Performance Concrete Mixture Using Neural Networks and Nonlinear Programming

机译:基于神经网络和非线性规划的高性能混凝土混合料设计

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摘要

A method of optimizing high-performance concrete mix proportioning for a given workability and compressive strength using artificial neural networks and nonlinear programming is described. The basic pro- cedure of the methodology consists of three steps: (1) Build accurate models for workability and strength using artificial neural networks and experimental data; (2) incorporate these models in software allowing an evaluation of the specified properties for a given mix; and (3) incorporate the software in a nonlinear programming package allowing a search of the optimum proportion mix design. For performing optimum concrete mix design based on the proposed methodology, a software package has been developed. One can conduct mix simulations cov- ering all the important properties of the concrete at the same time. To demonstrate the utility of the proposed methodology, experimental results from several different mix proportions based on various design requirements are presented.
机译:描述了一种使用给定的可操作性和抗压强度,通过人工神经网络和非线性规划优化高性能混凝土配合比的方法。该方法的基本程序包括三个步骤:(1)使用人工神经网络和实验数据建立可加工性和强度的准确模型; (2)将这些模型整合到软件中,从而可以评估给定混合物的指定特性; (3)将软件合并到非线性编程包中,从而可以搜索最佳比例混合设计。为了基于所提出的方法进行最佳的混凝土配合比设计,已经开发了软件包。可以同时进行涵盖混凝土所有重要性能的混合模拟。为了证明所提出方法的实用性,提出了基于各种设计要求的几种不同混合比例的实验结果。

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