Mei Xiancheng, Cui Zhen, Sheng Qian, Zhou Jian, Li Chuanqi
Institute of Rock and Soil Mechanics, Chinese Academy of Sciences, Wuhan 430071, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Materials (Basel). 2023 Feb 2;16(3):1286. doi: 10.3390/ma16031286.
The application of aseismic materials in foundation engineering structures is an inevitable trend and research hotspot of earthquake resistance, especially in tunnel engineering. In this study, the pelican optimization algorithm (POA) is improved using the Latin hypercube sampling (LHS) method and the Chaotic mapping (CM) method to optimize the random forest (RF) model for predicting the aseismic performance of a novel aseismic rubber-concrete material. Seventy uniaxial compression tests and seventy impact tests were conducted to quantify this aseismic material performance, i.e., strength and energy absorption properties and four other artificial intelligence models were generated to compare the predictive performance with the proposed hybrid RF models. The performance evaluation results showed that the LHSPOA-RF model has the best prediction performance among all the models for predicting the strength and energy absorption property of this novel aseismic concrete material in both the training and testing phases (R: 0.9800 and 0.9108, VAF: 98.0005% and 91.0880%, RMSE: 0.7057 and 1.9128, MAE: 0.4461 and 0.7364; R: 0.9857 and 0.9065, VAF: 98.5909% and 91.3652%, RMSE: 0.5781 and 1.8814, MAE: 0.4233 and 0.9913). In addition, the sensitive analysis results indicated that the rubber and cement are the most important parameters for predicting the strength and energy absorption properties, respectively. Accordingly, the improved POA-RF model not only is proven as an effective method to predict the strength and energy absorption properties of aseismic materials, but also this hybrid model provides a new idea for assessing other aseismic performances in the field of tunnel engineering.
抗震材料在基础工程结构中的应用是抗震领域的必然趋势和研究热点,尤其是在隧道工程中。在本研究中,采用拉丁超立方抽样(LHS)方法和混沌映射(CM)方法对鹈鹕优化算法(POA)进行改进,以优化用于预测新型抗震橡胶混凝土材料抗震性能的随机森林(RF)模型。进行了70次单轴压缩试验和70次冲击试验来量化这种抗震材料的性能,即强度和能量吸收特性,并生成了另外四种人工智能模型,以与所提出的混合RF模型比较预测性能。性能评估结果表明,在训练和测试阶段,LHSPOA-RF模型在预测这种新型抗震混凝土材料的强度和能量吸收特性的所有模型中具有最佳预测性能(R:0.9800和0.9108,VAF:98.0005%和91.0880%,RMSE:0.7057和1.9128,MAE:0.4461和0.7364;R:0.9857和0.9065,VAF:98.5909%和91.3652%,RMSE:0.5781和1.8814,MAE:0.4233和0.9913)。此外,敏感性分析结果表明,橡胶和水泥分别是预测强度和能量吸收特性的最重要参数。因此,改进后的POA-RF模型不仅被证明是预测抗震材料强度和能量吸收特性的有效方法,而且这种混合模型为评估隧道工程领域的其他抗震性能提供了新思路。