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Probabilistic forecasting of landslide displacement accounting for epistemic uncertainty: a case study in the Three Gorges Reservoir area, China

机译:认识到认识性不确定性山体滑坡排放核算的概率预测 - 以三峡水库区案例研究

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摘要

Accurate and reliable displacement forecasting plays a key role in landslide early warning. However, due to the epistemic uncertainties associated with landslide systems, errors are unavoidable and sometimes significant in traditional methods of deterministic point forecasting. Transforming traditional point forecasting into probabilistic forecasting is essential for quantifying the associated uncertainties and improving the reliability of landslide displacement forecasting. This paper proposes a hybrid approach based on bootstrap, extreme learning machine (ELM), and artificial neural network (ANN) methods to quantify the associated uncertainties via probabilistic forecasting. The hybrid approach consists of two steps. First, a bootstrap-based ELM is applied to estimate the true regression mean of landslide displacement and the corresponding variance of model uncertainties. Second, an ANN is used to estimate the variance of noise. Reliable prediction intervals (PIs) can be computed by combining the true regression mean, variance of model uncertainty, and variance of noise. The performance of the proposed hybrid approach was validated using monitoring data from the Shuping landslide, Three Gorges Reservoir area, China. The obtained results suggest that the Bootstrap-ELM-ANN approach can be used to perform probabilistic forecasting in the medium term and long term and to quantify the uncertainties associated with landslide displacement forecasting for colluvial landslides with step-like deformation in the Three Gorges Reservoir area.
机译:准确可靠的位移预测在Landlide预警中起着关键作用。然而,由于与滑坡系统相关的认知不确定性,在传统的确定性点预测方法中,错误是不可避免的,有时显着。将传统点预测转化为概率预测对于量化相关的不确定性并提高滑坡排量预测的可靠性至关重要。本文提出了一种基于自举,极端学习机(ELM)和人工神经网络(ANN)方法的混合方法,以通过概率预测量化相关的不确定性。混合方法包括两个步骤。首先,应用基于引导的榆树来估计滑坡位移的真正回归平均值以及模型不确定性的相应方差。其次,ANN用于估计噪声的变化。通过组合真正的回归,模型不确定度的变化以及噪声的方差来计算可靠的预测间隔(PIS)。验证了拟议的混合方法的性能,采用了来自中国三峡库区三峡库区的监测数据验证。获得的结果表明,Bootstrap-ELM-ANN方法可用于在中期和长期内进行概率预测,并定量与三峡库区三峡水库区域的阶梯式变形与滑坡坡度预测相关的不确定性。

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