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Experimental Examination of the Behavior of Shotcrete‑Reinforced Masonry Walls and Xgboost Neural Network Prediction Model

机译:喷射砌体砌体与XGBoost神经网络预测模型的实验检查

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摘要

In this study, the effects of reinforcement using polypropylene fiber dry-mix shotcrete on the behaviors of U-shaped masonry walls were experimentally studied, and predicting modeling was performed with XGBoost. Firstly, five full-scale masonry specimens were constructed. A specimen was left unstrengthened. The other four specimens were coated with dry-mix shotcrete with layer thicknesses of 50 and 100 mm, reinforced with additional amounts of polypropylene fiber. All specimens were tested under reversible and cyclic out-of-plane loads. The results showed that the strengthened specimens had a considerably higher ultimate load-carrying and energy absorption capacities than the bare one. In the second stage of the study, an XGBoost neural network model was developed, predicting the ultimate load capacity and energy absorption capacity with data affecting the result of the model. The ultimate load capacity and energy absorption capacity values obtained as a result of the tests were compared with the results derived from the experiments, and then it was observed that the results of XGBoost modeling were quite close to the results obtained from experimental data. Thus, the thickness of shotcrete required for the desired data can be painlessly predicted using XGBoost model without the need for were experimentally studied.
机译:在这项研究中,使用XGBoost进行了使用聚丙烯纤维干混射击对U形砌体壁的行为的增强效果。首先,建造了五种全规模的砌体标本。试样不强化。另外的四个标本用干混射击器涂有50-100mm的干混射精,用额外的聚丙烯纤维增强。在可逆和循环外负载下测试所有样本。结果表明,增强的标本具有比裸露的标本具有相当高的最终负载承载和能量吸收能力。在研究的第二阶段,开发了一种XGBoost神经网络模型,预测了影响模型结果的数据的最终负载能力和能量吸收能力。将作为测试结果获得的最终负载能力和能量吸收能力值与源自实验的结果进行比较,然后观察到XGBoost建模的结果非常接近从实验数据获得的结果。因此,使用XGBoost模型可以在实验研究的情况下使用XGBoost模型来预测所需数据所需的喷射率的厚度。

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