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Predicting Compressive Strength of Recycled Concrete for Construction 3D Printing Based on Statistical Analysis of Various Neural Networks

机译:基于各种神经网络统计分析的建筑3D打印再生混凝土抗压强度预测

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Construction 3D printing is changing construction industry, but for its immaturity, there are still many problems to be solved. One of the major problems is to study materials for construction 3D printing. Because printed buildings are very different from traditional buildings, there are special requirements for printing materials. Based on environmental and cost considerations, the recycled concrete as printing material is a perfect choice. In order to study and develop the construction 3D printing materials, it is necessary to predict the properties of them. As one of the most effective artificial intelligence algorithms, artificial neural network can deal with multi-parameter and nonlinear problems, and it can provide useful reference to predict the performance of recycled concrete for 3D printing. However, since there are many types and parameters for neural network, it is difficult to select the optimal neural network with excellent prediction performance. In this paper, by comparing different types of neural networks and statistically analyzing the distribution of the root-mean-square error (RMSE) and the coefficient of determination (R2) of these neural networks, we can determine the best performance among four neural networks and finally select the suitable one to predict the performance of 3D printing concrete.
机译:建筑3D打印正在改变建筑业,但由于其不成熟,仍然有许多问题需要解决。主要问题之一是研究用于建筑3D打印的材料。由于印刷建筑与传统建筑有很大不同,因此对印刷材料有特殊要求。基于环境和成本方面的考虑,将再生混凝土用作印刷材料是一个理想的选择。为了研究和开发建筑3D打印材料,必须预测它们的性能。人工神经网络作为最有效的人工智能算法之一,可以处理多参数和非线性问题,为预测3D打印再生混凝土的性能提供有用的参考。但是,由于神经网络的类型和参数很多,因此难以选择具有优异预测性能的最优神经网络。本文通过比较不同类型的神经网络并统计分析这些神经网络的均方根误差(RMSE)和确定系数(R2)的分布,可以确定四个神经网络中的最佳性能最后选择合适的模型来预测3D打印混凝土的性能。

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