Modeling Slump of Ready Mix Concrete Using Genetically Evolved Artificial Neural Networks

Vinay Chandwani, Vinay Agrawal, R. Nagar
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引用次数: 17

Abstract

Artificial neural networks (ANNs) have been the preferred choice for modeling the complex and nonlinear material behavior where conventional mathematical approaches do not yield the desired accuracy and predictability. Despite their popularity as a universal function approximator and wide range of applications, no specific rules for deciding the architecture of neural networks catering to a specific modeling task have been formulated.The research paper presents a methodology for automated design of neural network architecture, replacing the conventional trial and error technique of finding the optimal neural network. The genetic algorithms (GA) stochastic search has been harnessed for evolving the optimum number of hidden layer neurons, transfer function, learning rate, and momentum coefficient for backpropagation ANN. The methodology has been applied for modeling slump of ready mix concrete based on its design mix constituents, namely, cement, fly ash, sand, coarse aggregates, admixture, and water-binder ratio. Six different statistical performance measures have been used for evaluating the performance of the trained neural networks. The study showed that, in comparison to conventional trial and error technique of deciding the neural network architecture and training parameters, the neural network architecture evolved through GA was of reduced complexity and provided better prediction performance.
利用遗传进化人工神经网络模拟现拌混凝土坍落度
人工神经网络(ann)已经成为建模复杂和非线性材料行为的首选,而传统的数学方法无法产生期望的准确性和可预测性。尽管它们作为一种通用的函数逼近器和广泛的应用而广受欢迎,但没有制定特定规则来决定适合特定建模任务的神经网络架构。本文提出了一种神经网络结构的自动化设计方法,取代了传统的寻找最优神经网络的试错法。利用遗传算法(GA)随机搜索来进化最优的隐层神经元数量、传递函数、学习率和动量系数。该方法已应用于预拌混凝土的坍落度建模基于其设计混合成分,即水泥,粉煤灰,砂,粗骨料,外加剂和水胶比。已经使用了六种不同的统计性能度量来评估训练后的神经网络的性能。研究表明,与传统的确定神经网络结构和训练参数的试错方法相比,通过遗传算法进化的神经网络结构降低了复杂性,并提供了更好的预测性能。
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