Eyo Eyo U, Abbey Samuel J, Booth Colin A
Faculty of Environment and Technology, Department of Engineering, Design and Mathematics, Civil Engineering Cluster, University of the West of England, Bristol BS16 1QY, UK.
Faculty of Environment and Technology, Centre for Architecture and Built Environment Research, University of the West of England, Bristol BS16 1QY, UK.
Materials (Basel). 2022 Jun 29;15(13):4575. doi: 10.3390/ma15134575.
The unconfined compressive strength (UCS) of a stabilised soil is a major mechanical parameter in understanding and developing geomechanical models, and it can be estimated directly by either lab testing of retrieved core samples or remoulded samples. However, due to the effort, high cost and time associated with these methods, there is a need to develop a new technique for predicting UCS values in real time. An artificial intelligence paradigm of machine learning (ML) using the gradient boosting (GB) technique is applied in this study to model the unconfined compressive strength of soils stabilised by cementitious additive-enriched agro-based pozzolans. Both ML regression and multinomial classification of the UCS of the stabilised mix are investigated. Rigorous sensitivity-driven diagnostic testing is also performed to validate and provide an understanding of the intricacies of the decisions made by the algorithm. Results indicate that the well-tuned and optimised GB algorithm has a very high capacity to distinguish between positive and negative UCS categories ('firm', 'very stiff' and 'hard'). An overall accuracy of 0.920, weighted recall rates and precision scores of 0.920 and 0.938, respectively, were produced by the GB model. Multiclass prediction in this regard shows that only 12.5% of misclassified instances was achieved. When applied to a regression problem, a coefficient of determination of approximately 0.900 and a mean error of about 0.335 were obtained, thus lending further credence to the high performance of the GB algorithm used. Finally, among the eight input features utilised as independent variables, the additives seemed to exhibit the strongest influence on the ML predictive modelling.
稳定土的无侧限抗压强度(UCS)是理解和开发地质力学模型的一个主要力学参数,它可以通过对取回的岩芯样本或重塑样本进行实验室测试直接估算。然而,由于这些方法所需的工作量、高成本和时间,需要开发一种实时预测UCS值的新技术。本研究应用了一种使用梯度提升(GB)技术的机器学习(ML)人工智能范式,对由富含胶凝添加剂的农业基火山灰稳定的土壤的无侧限抗压强度进行建模。研究了稳定混合料UCS的ML回归和多项分类。还进行了严格的敏感性驱动诊断测试,以验证并理解算法所做决策的复杂性。结果表明,经过良好调优和优化的GB算法具有很高的能力来区分正UCS类别和负UCS类别(“坚硬”、“非常坚硬”和“硬”)。GB模型的总体准确率为0.920,加权召回率和精确率分别为0.920和0.938。在这方面的多类预测表明,误分类实例仅占12.5%。当应用于回归问题时,得到的决定系数约为0.900,平均误差约为0.335,从而进一步证明了所使用的GB算法的高性能。最后,在用作自变量的八个输入特征中,添加剂似乎对ML预测建模的影响最大。