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Optimizing asphalt mix design process using artificial neural network and genetic algorithm

机译:人工神经网络和遗传算法优化沥青混合料设计工艺

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Selection of aggregate gradation and binder content for asphalt mix design, which comply with specification requirements, is a lengthy trial and error procedure. Success in performing mix design rely largely on experience of the designer. This paper presents development of an automatic mix design process with the ability to both predict and optimize asphalt mix constituents to obtain desired mix properties. A successful automatic process requires the use of local past experience translated into a design aid tool, which then predicts properties of asphalt mix without actually testing the mix in laboratory. In the proposed approach, simple multilayer perceptron structure Artificial Neural Network (ANN) models were developed using 444 Marshall mix design data. The ANN models were able to predict both air voids and theoretical maximum specific gravity of asphalt mix to within +/- 0.5% and +/- 0.025, respectively, for 99.6% of the time. After that, the ANN models were called by a non-linear constrained genetic algorithm to optimize asphalt mix, while satisfying the Marshall requirements defined in the formulation as constraints. Durability of the optimized mix is ensured by introducing a constraint on adequacy of asphalt film thickness. The developed mix design aid tool is compiled into a computer software called Asphalt Mix Optimization (AMO) that can be used by road agencies as a mix design tool. A case study is presented to demonstrate the ability of the model to optimize aggregate gradation and minimize binder content in asphalt mix. The computed ANN outputs and the optimized gradation were found to compare well with laboratory measured values. Although, Marshall compacted mixes were used in demonstrating the approach, this method is general and can be applied to any mix design procedure. (C) 2018 Elsevier Ltd. All rights reserved.
机译:符合规范要求的沥青混合料设计的骨料级配和粘结剂含量的选择是漫长的反复试验。进行混合设计的成功很大程度上取决于设计师的经验。本文介绍了一种自动混合料设计工艺的开发,该工艺具有预测和优化沥青混合料成分以获得所需混合料性能的能力。成功的自动过程需要利用翻译成设计辅助工具的本地过去经验,该工具可以预测沥青混合料的特性,而无需在实验室中实际测试混合料。在提出的方法中,使用444个Marshall混合设计数据开发了简单的多层感知器结构人工神经网络(ANN)模型。 ANN模型能够预测99.6%的时间内空气空隙和沥青混合料的理论最大比重分别在+/- 0.5%和+/- 0.025之内。之后,通过非线性约束遗传算法调用ANN模型以优化沥青混合料,同时满足配方中定义为约束的马歇尔要求。通过引入对沥青膜厚度足够的限制来确保优化混合物的耐久性。已开发的混合料设计辅助工具被编译到名为“沥青混合料优化”(AMO)的计算机软件中,公路部门可将其用作混合料设计工具。提出了一个案例研究,以证明该模型优化沥青混合料中的骨料级配和最小化粘结剂含量的能力。发现计算出的人工神经网络输出和优化的灰度可以很好地与实验室测量值进行比较。尽管使用了Marshall压实混合物来演示该方法,但是这种方法是通用的,可以应用于任何混合物设计过程。 (C)2018 Elsevier Ltd.保留所有权利。

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