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Interpretation of dam deformation and leakage with boosted regression trees

机译:利用增强回归树解释大坝变形和渗漏

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摘要

Predictive models are essential in dam safety assessment. They have been traditionally based on simple statistical tools such as the hydrostatic-season-time (HST) model. These tools are well known to have limitations in terms of accuracy and reliability. In the recent years, the examples of application of machine learning and related techniques are becoming more frequent as an alternative to HST. While they proved to feature higher flexibility and prediction accuracy, they are also more difficult to interpret. As a consequence, the vast majority of the research is limited to prediction accuracy estimation. In this work, one of the most popular machine learning techniques (boosted regression trees), was applied to model 8 radial displacements and 4 leakage flows at La Baells Dam. The possibilities of model interpretation were explored: the relative influence of each predictor was computed, and the partial dependence plots were obtained. Both results were analysed to draw conclusions on dam response to environmental variables, and its evolution over time. The results show that this technique can efficiently identify dam performance changes with higher flexibility and reliability than simple regression models.
机译:预测模型对于大坝安全评估至关重要。传统上,它们基于简单的统计工具,例如静水季节时间(HST)模型。众所周知,这些工具在准确性和可靠性方面存在局限性。近年来,作为HST的替代方法,机器学习和相关技术的应用示例变得越来越普遍。尽管它们被证明具有更高的灵活性和预测准确性,但它们也更难以解释。结果,绝大多数研究仅限于预测精度估计。在这项工作中,最流行的机器学习技术之一(增强的回归树)被应用到La Baells大坝的8个径向位移和4个泄漏流的模型中。探索了模型解释的可能性:计算了每个预测变量的相对影响,并获得了部分依赖图。分析了这两个结果以得出关于大坝对环境变量的响应及其随时间变化的结论。结果表明,与简单的回归模型相比,该技术可以有效地识别大坝性能变化,具有更高的灵活性和可靠性。

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