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基于激光诱导击穿光谱发射强度和机器学习技术研究土壤无侧限抗压强度

Investigating the Soil Unconfined Compressive Strength Based on Laser-Induced Breakdown Spectroscopy Emission Intensities and Machine Learning Techniques.

作者信息

Wudil Yakubu Sani, Al-Najjar Osama Atef, Al-Osta Mohammed A, Baghabra Al-Amoudi Omar S, Gondal Mohammed Ashraf

机构信息

Interdisciplinary Research Center for Construction and Building Materials, King Fahd University of Petroleum and Minerals, Dhahran 31261, Saudi Arabia.

Laser Research Group, Physics Department, King Fahd University of Petroleum & Minerals, Dhahran 31261, Saudi Arabia.

出版信息

ACS Omega. 2023 Jul 14;8(29):26391-26404. doi: 10.1021/acsomega.3c02514. eCollection 2023 Jul 25.

Abstract

Laser-induced breakdown spectroscopy (LIBS) is a remarkable elemental identification and quantification technique used in multiple sectors, including science, engineering, and medicine. Machine learning techniques have recently sparked widespread interest in the development of calibration-free LIBS due to their ability to generate a defined pattern for complex systems. In geotechnical engineering, understanding soil mechanics in relation to the applications is of paramount importance. The knowledge of soil unconfined compressive strength (UCS) enables engineers to identify the behaviors of a particular soil and propose effective solutions to given geotechnical problems. However, the experimental techniques involved in the measurements of soil UCS are incredibly expensive and time-consuming. In this work, we develop a pioneering technique to estimate the soil unconfined compressive strength using artificial intelligent methods based on the spectra obtained from the LIBS system. Decision tree regression (DTR) and support vector regression learners were initially employed, and consequently, the adaptive boosting method was applied to improve the performance of the two single learners. The prediction power of the established models was determined using the standard performance evaluation metrics such as the root-mean-square error, CC between the predicted and actual soil UCS values, mean absolute error, and score. Our results revealed that the boosted DTR exhibited the highest coefficient of correlation of 99.52% and an value of 99.03% during the testing phase. To validate the models, the UCS values of soils stabilized with lime and cement were predicted with an optimum degree of accuracy, confirming the models' suitability and generalization strength for soil UCS investigations.

摘要

激光诱导击穿光谱技术(LIBS)是一种卓越的元素识别和定量技术,应用于包括科学、工程和医学在内的多个领域。机器学习技术最近因其能够为复杂系统生成特定模式的能力,在免校准LIBS的开发中引发了广泛关注。在岩土工程中,了解与应用相关的土力学至关重要。土的无侧限抗压强度(UCS)知识使工程师能够识别特定土壤的特性,并针对给定的岩土工程问题提出有效的解决方案。然而,测量土UCS所涉及的实验技术极其昂贵且耗时。在这项工作中,我们基于从LIBS系统获得的光谱,开发了一种利用人工智能方法估算土无侧限抗压强度的开创性技术。最初采用决策树回归(DTR)和支持向量回归学习器,随后应用自适应提升方法来提高这两个单一学习器的性能。使用标准性能评估指标,如均方根误差、预测的和实际的土UCS值之间的CC、平均绝对误差和得分,来确定所建立模型的预测能力。我们的结果表明,在测试阶段,增强型DTR表现出最高的相关系数99.52%和 值99.03%。为了验证模型,对用石灰和水泥稳定的土壤的UCS值进行了预测,预测精度达到最佳,证实了模型在土UCS研究中的适用性和泛化能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8ec0/10373458/210a8a6e8bb2/ao3c02514_0002.jpg

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