采用集合系统预测全灌浆岩石锚固系统的轴向承载能力

IF 3.1 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Shahab Hosseini, Behshad Jodeiri Shokri, Ali Mirzaghorbanali, Hadi Nourizadeh, Shima Entezam, Amin Motallebiyan, Alireza Entezam, Kevin McDougall, Warna Karunasena, Naj Aziz
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引用次数: 0

摘要

本文评估了五种最新人工智能(AI)预测技术的潜力,即多元线性回归(MLR)、多层感知器神经网络(MLPNN)、贝叶斯正则化神经网络(BRNN)、广义前馈神经网络(GFFNN)、极梯度提升(XGBoost)及其集合软计算模型,以预测拉拔试验产生的最大峰值载荷(PL)和位移(DP)值。为此,制备并浇注了 34 个全水泥基灌浆岩石螺栓样品。在进行拉拔试验并建立数据集后,随机选取二十四次试验作为训练数据集,并选取其余的测量数据来测试模型的性能。输入参数为水灰比(%)和固化时间(天),输出为峰值荷载和位移值。结果显示,集合 XGBoost 模型优于其他模型。这是因为在测试 PL 值和 DP 值的数据集时,R2 值(0.989,0.979)和 VAF 值(99.473,98.658)较高,RMSE 值(0.0201,0.0435)较低。此外,敏感性分析表明,固化时间是估算峰值荷载和位移值时影响最大的参数。结果还证实,集合 XGBoost 方法可用于预测全水泥基灌浆岩石锚固系统的轴向承载力,且性能和精度极高。最终,集合 XGBoost 建模技术的结果表明,这种新型模型比实验室活动更经济、更省时、更简单。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predicting axial-bearing capacity of fully grouted rock bolting systems by applying an ensemble system

Predicting axial-bearing capacity of fully grouted rock bolting systems by applying an ensemble system

In this paper, the potential of the five latest artificial intelligence (AI) predictive techniques, namely multiple linear regression (MLR), multi-layer perceptron neural network (MLPNN), Bayesian regularized neural network (BRNN), generalized feed-forward neural networks (GFFNN), extreme gradient boosting (XGBoost), and their ensemble soft computing models were evaluated to predict of the maximum peak load (PL) and displacement (DP) values resulting from pull-out tests. For this, 34 samples of the fully cementitious grouted rock bolts were prepared and cast. After conducting pull-out tests and building a dataset, twenty-four tests were randomly considered as a training dataset, and the remaining measurements were chosen to test the models’ performance. The input parameters were water-to-grout ratio (%) and curing time (day), while peak loads and displacement values were the outputs. The results revealed that the ensemble XGBoost model was superior to the other models. It was because having higher values of R2 (0.989, 0.979) and VAF (99.473, 98.658) and lower values of RMSE (0.0201, 0.0435) were achieved for testing the dataset of PL and DP’ values, respectively. Besides, sensitivity analysis proved that curing time was the most influential parameter in estimating values of peak loads and displacements. Also, the results confirmed that the ensemble XGBoost method was positioned to predict the axial-bearing capacity of the fully cementitious grouted rock bolting system with extreme performance and accuracy. Eventually, the results of the ensemble XGBoost modeling technique suggested that this novel model was more economical, less time-consuming, and less complicated than laboratory activities.

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来源期刊
Soft Computing
Soft Computing 工程技术-计算机:跨学科应用
CiteScore
8.10
自引率
9.80%
发文量
927
审稿时长
7.3 months
期刊介绍: Soft Computing is dedicated to system solutions based on soft computing techniques. It provides rapid dissemination of important results in soft computing technologies, a fusion of research in evolutionary algorithms and genetic programming, neural science and neural net systems, fuzzy set theory and fuzzy systems, and chaos theory and chaotic systems. Soft Computing encourages the integration of soft computing techniques and tools into both everyday and advanced applications. By linking the ideas and techniques of soft computing with other disciplines, the journal serves as a unifying platform that fosters comparisons, extensions, and new applications. As a result, the journal is an international forum for all scientists and engineers engaged in research and development in this fast growing field.
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