基于BP神经网络的钢纤维混凝土最佳配比参数提取

G. Gu, Hongling Song
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引用次数: 0

摘要

针对传统钢纤维混凝土最优配比参数提取方法精度低的问题,提出了一种基于BP神经网络的钢纤维混凝土最优配比参数提取新方法。在分析混凝土固体颗粒悬浮状态、虚拟堆积状态和实际堆积状态的基础上,结合大颗粒和小颗粒的特征粒径,计算了混凝土固体颗粒的堆积密度和约束条件。基于BP神经网络的结构,计算隐层的输入,并根据s函数计算隐层的输出。通过对预期输出与实际输出的比较,对BP神经网络的阈值和权值进行修正,构造出钢纤维混凝土最优配比参数。实验结果表明,在相同的实验环境下,采用该方法提取的配比参数下的混凝土抗弯强度最佳,且最佳配比参数提取精度最高,因此该方法可以提高钢纤维混凝土配比的合理性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extraction of optimum ratio parameters of steel fiber reinforced concrete based on BP neural network
In order to overcome the problems of low precision in the traditional extraction method of steel fiber reinforced concrete optimum ratio parameters, a new extraction method of steel fiber reinforced concrete optimum ratio parameters based on BP neural network is proposed in this paper. Based on the analysis of suspension state, virtual accumulation state and actual accumulation state of concrete solid particles, combined with the characteristic particle sizes of large particles and small particles, the packing density and constraint conditions of concrete solid particles are calculated. Based on the structure of BP neural network, the input of hidden layer is calculated, and the output of hidden layer is calculated according to s function. By comparing the expected output with the actual output, the threshold and weight of BP neural network are modified to construct the optimal ratio parameters of steel fiber reinforced concrete. The experimental results show that under the same experimental environment, the flexural strength of concrete is the best under the ratio parameters extracted by this method, and the extraction accuracy of the best ratio parameters is the highest, so this method can improve the rationality of the ratio of steel fiber reinforced concrete.
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