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Soil Water Content Estimated by Support Vector Machine for the Assessment of Shallow Landslides Triggering: the Role of Antecedent Meteorological Conditions

机译:支持向量机在浅层滑坡触发评价中的土壤含水量估算:前气象条件的作用

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摘要

Soil water content is a key parameter for representing water dynamics in soils. Its prediction is fundamental for different practical applications, such as identifying shallow landslides triggering. Support vector machine (SVM) is a machine learning technique, which can be used to predict the temporal trend of a quantity since training from past data. SVM was applied to a test slope of Oltrep Pavese (northern Italy), where meteorological parameters coupled with soil water content at different depths (0.2, 0.4, 0.6, 1.0, 1.2, 1.4 m) were measured. Two SVM models were developed for water content assessment: (i) model 1, considering rainfall amount, air temperature, air humidity, net solar radiation, and wind speed; (ii) model 2, considering the same predictors of model 1 together with antecedent condition parameters (cumulated rainfall of 7, 30, and 60 days; mean air temperature of 7, 30, and 60 days). SVM model 2 showed significantly higher satisfactory results than model 1, for both training and test phases and for all the considered soil levels. SVM models trends were implemented in a methodology of slope safety factor assessment. For a real event occurred in the tested slope, the triggering time was correctly predicted using data estimated by SVM model based on antecedent meteorological conditions. This confirms the necessity of including these predictors for building a SVM technique able to estimate correctly soil moisture dynamics in time. The results of this paper show a promising potential application of the SVM methodologies for modeling soil moisture required in slope stability analysis.
机译:土壤含水量是代表土壤水分动态的关键参数。它的预测对于不同的实际应用至关重要,例如识别浅层滑坡触发。支持向量机(SVM)是一种机器学习技术,可用于根据自过去的数据进行训练以来预测数量的时间趋势。将支持向量机应用于Oltrep Pavese(意大利北部)的测试坡度,在该坡度上测量了气象参数以及不同深度(0.2、0.4、0.6、1.0、1.2、1.4 m)的土壤水分。开发了两个用于水含量评估的SVM模型:(i)模型1,考虑降雨量,空气温度,空气湿度,太阳净辐射和风速; (ii)模型2,要考虑模型1的相同预测因子以及先决条件参数(累积降雨为7、30和60天;平均气温为7、30和60天)。 SVM模型2在训练和测试阶段以及所有考虑的土壤水平方面均显示出比模型1高得多的令人满意的结果。支持向量机模型趋势是在边坡安全系数评估方法中实现的。对于在测试坡度中发生的真实事件,使用基于先前气象条件的SVM模型估算的数据正确预测了触发时间。这证实了将这些预测因子包括在内的必要性,以建立能够正确估计土壤水分动态的SVM技术。本文的结果表明,SVM方法在边坡稳定性分析所需的土壤水分建模中具有潜在的应用前景。

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