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基于灰色理论-反向传播神经网络的活性掺合料再生混凝土抗冻性影响因素敏感性分析及两阶段预测

Sensitivity Analysis of Influencing Factors and Two-Stage Prediction of Frost Resistance of Active-Admixture Recycled Concrete Based on Grey Theory-BPNN.

作者信息

Fu Chun, Li Ming

机构信息

School of Civil Engineering, Liaoning Petrochemical University, Fushun 113001, China.

School of Civil Engineering, Shenyang Jianzhu University, Shenyang 110168, China.

出版信息

Materials (Basel). 2024 Apr 14;17(8):1805. doi: 10.3390/ma17081805.

Abstract

Sensitivity analysis of influencing factors on frost resistance is carried out in this paper, and a two-stage neural network model based on grey theory and Back Propagation Neural Networks (BPNNs) is established for the sake of predicting the frost resistance of active-admixture recycled concrete quickly and accurately. Firstly, the influence degree of cement, water, sand, natural aggregate, recycled aggregate, mineral powder, fly ash, fiber and air-entraining agent on the frost resistance of active-admixture recycled-aggregate concrete was analyzed based on the grey system theory, and the primary and secondary relationships of various factors were effectively distinguished. Then, the input layer of the model was determined as cement, water, sand, recycled aggregate and air-entraining agent, and the output layer was the relative dynamic elastic modulus. A total of 120 datasets were collected from the experimental data of another author, and the relative dynamic elastic modulus was predicted using the two-stage BPNN prediction model proposed in this paper and compared with the BPNN prediction results. The results show that the proposed two-stage BPNN model, after removing less-sensitive parameters from the input layer, has better prediction accuracy and shorter run time than the BPNN model.

摘要

本文对影响抗冻性的因素进行了敏感性分析,并建立了基于灰色理论和反向传播神经网络(BPNN)的两阶段神经网络模型,以便快速、准确地预测活性掺合料再生混凝土的抗冻性。首先,基于灰色系统理论分析了水泥、水、砂、天然骨料、再生骨料、矿物粉、粉煤灰、纤维和引气剂对活性掺合料再生骨料混凝土抗冻性的影响程度,有效区分了各因素的主次关系。然后,将模型的输入层确定为水泥、水、砂、再生骨料和引气剂,输出层为相对动弹模量。从另一位作者的实验数据中收集了总共120个数据集,使用本文提出的两阶段BPNN预测模型预测相对动弹模量,并与BPNN预测结果进行比较。结果表明,所提出的两阶段BPNN模型在从输入层去除敏感性较低的参数后,比BPNN模型具有更好的预测精度和更短的运行时间。

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