全球降水潜能值参数的间接模型:利用机器学习减少预测的不确定性

IF 5.3 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Xuzhen He , Guoqing Cai , Daichao Sheng
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引用次数: 0

摘要

土壤水特征曲线(SWCC)对于模拟水和有害物质在地下渗流带的迁移至关重要。然而,测量 SWCC 通常既麻烦又耗时。本文介绍了一些间接模型,这些模型利用粒径分布和孔隙度等易于测量的数量,以概率分布的方式预测 SWCC 参数。本文首先建立了一个联合正态模型,并将由此推导出的条件概率作为预测模型。然而,该模型的预测不确定性极高。为了降低这种不确定性,我们探索了各种机器学习技术,包括引入变化尺度对预测因子的依赖性、使用人工神经网络(ANN)对非线性依赖性进行建模、加入额外的预测特征以及生成更大的数据集。最终的机器学习模型成功地降低了预测的不确定性,并在一组单独的样本上进行了严格测试,以防止过度拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indirect models for SWCC parameters: reducing prediction uncertainty with machine learning
The soil–water characteristic curve (SWCC) is crucial for modelling the transport of water and hazardous materials in the vadose zone. However, measuring SWCC is often cumbersome and time-consuming. This paper introduces indirect models that predict SWCC parameters in probabilistic distributions using easily measurable quantities such as particle-size distributions and porosity. This paper starts with building a joint normal model and the derived conditional probability from it serves as a predictive model. However, this model had extremely high prediction uncertainty. To reduce such uncertainty, various machine-learning techniques were explored, including introducing the dependence of variation scale on predictors, using artificial neural networks (ANN) to model nonlinear dependence, incorporating additional predictive features, and generating a larger dataset. The final machine-learning model successfully reduces prediction variability and has been rigorously tested on a separate set of samples to prevent overfitting.
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来源期刊
Computers and Geotechnics
Computers and Geotechnics 地学-地球科学综合
CiteScore
9.10
自引率
15.10%
发文量
438
审稿时长
45 days
期刊介绍: The use of computers is firmly established in geotechnical engineering and continues to grow rapidly in both engineering practice and academe. The development of advanced numerical techniques and constitutive modeling, in conjunction with rapid developments in computer hardware, enables problems to be tackled that were unthinkable even a few years ago. Computers and Geotechnics provides an up-to-date reference for engineers and researchers engaged in computer aided analysis and research in geotechnical engineering. The journal is intended for an expeditious dissemination of advanced computer applications across a broad range of geotechnical topics. Contributions on advances in numerical algorithms, computer implementation of new constitutive models and probabilistic methods are especially encouraged.
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