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Research on Economic Mathematical Analysis and Construction Model of Prefabricated Building Structure Based on Improved Neural Network Algorithm

机译:基于改进神经网络算法的预制建筑结构经济数学分析与施工模型研究

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In this article, a mathematical analysis model of economics of prefabricated building structure based on improved neural network algorithm is proposed in order to solve the low analysis accuracy in traditional methods. Firstly, by means of analyzing the costs of materials, labor, and equipment, the economic characteristics of the cost of fabricated building structures are determined. Secondly, the single neuron is analyzed and the weight coefficient is adjusted in accordance with the multilayer neural network structure, so as to minimize the construction error of the economic analysis model of the assembled building structure. Meanwhile, the weight vector is obtained, error-weighted square sum is calculated through choosing an adaptive filter and obtained, and the weight vector is updated by the least squares algorithm. Thirdly, the neural network algorithm training and learning process is designed and improved, the dependent variable is selected, the number of input points is determined, and then, the training and learning process of the improved neural network algorithm is completed. Finally, a fitness function is set to measure the authenticity of dataset, which is further defined as a combination of different weights to construct an economic mathematical analysis model. The experimental results indicate that the analysis results of this method can reach an accuracy up to 96%, so it has a broader application prospect in low-rise buildings.
机译:在本文中,提出了一种基于改进神经网络算法的预制建筑结构经济学的数学分析模型,以解决传统方法中的低分析精度。首先,通过分析材料,劳动力和设备的成本,确定了制造结构成本的经济特性。其次,分析了单个神经元,并根据多层神经网络结构调整重量系数,以最小化组装建筑结构的经济分析模型的施工误差。同时,获得权重向量,通过选择自适应滤波器来计算误差的正方形和,并且通过最小二乘算法更新权重向量。第三,设计和改进了神经网络算法训练和学习过程,选择了从属变量,确定了输入点的数量,然后,完成了改进的神经网络算法的训练和学习过程。最后,设置健身功能以测量数据集的真实性,这进一步定义为不同权重的组合来构建经济数学分析模型。实验结果表明,该方法的分析结果可以达到高达96%的准确度,因此它在低层建筑中具有更广泛的应用前景。

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