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A hybrid ensemble modelling framework for the prediction of breakup ice jams on Northern Canadian Rivers

机译:一种混合集合建模框架,用于预测北加拿大河流的分手冰堵塞

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The forecasting of river ice jams faces challenges relating to both the availability of data and the complexity of river ice dynamics, resulting in difficulties in model formulation. In this study, a hybrid ensemble modelling framework is developed to address the data scarcity issue and leverage advanced machine learning techniques for the prediction of ice jams with a one-day lead time. The proposed methodology utilises data easily monitored in advance of any ice jam events and maintains a realistic balance between ice jam and non-ice jam events. A combination of both single model algorithms, including classification trees, logistic regression, k-nearest neighbors, support vector machines, and artificial neural networks, and ensemble model algorithms, including random forest, adaptive boosting, gradient boosting, variance penalizing adaptive boosting, logistic boosting, class switching, and adaptive resampling and combining, are considered for both the member models of the first layer of the hybrid ensemble and for the ensemble combiner of the second layer. The final selection of both variables and member models for the hybrid ensemble is detailed, with a focus on the reduction of false negatives, the prediction of no ice jam on a day when one occurs. The proposed method is applied to the St. John River in New Brunswick, Canada, in a location particularly prone to ice jam flooding. Using the proposed methodology, a final model combining 6 different member models using a support vector machine as the ensemble combiner was produced, with a balanced prediction accuracy of 86%. This hybrid ensemble model outperformed the other tested ensemble models, as well as a series of generalized models produced using all available input variables and member models. The model also performed well against other ensemble techniques and against the individual member models. These results demonstrate the viability of the proposed methodology in constructing a hybrid ensemble model for the forecasting of ice jams on Northern Canadian Rivers. The techniques utilised can be adapted to other locations to facilitate ice jam forecasting, requiring data that is easily available and monitored in advance of any potential flooding events.
机译:河冰果的预测面临着与数据的可用性有关的挑战以及河流动态的复杂性,导致模型配方中的困难。在这项研究中,开发了一种混合集合建模框架来解决数据稀缺问题,并利用先进的机器学习技术,以便在一天的交换时间内预测冰卡。该提出的方法利用任何冰锁事件的容易监控的数据,并在冰堵塞和非冰堵塞事件之间保持逼真的平衡。单一模型算法的组合,包括分类树,逻辑回归,k最近的邻居,支持向量机和人工神经网络,以及集合模型算法,包括随机森林,自适应提升,渐变升压,方差惩罚自适应升压,逻辑升压,类切换和自适应重采样和组合被考虑用于混合集合的第一层的成员模型和第二层的集合组合器。混合合奏的两个变量和成员模型的最终选择是详细的,专注于减少假底片,当发生时,没有冰喀的预测。该方法适用于加拿大新不伦瑞克的圣约翰河,在一个特别容易发生冰堵塞的位置。使用所提出的方法,产生了使用支持向量机作为集合组合器的6种不同成员模型的最终模型,平衡预测精度为86%。这种混合集合模型表现出其他测试的集合模型,以及使用所有可用输入变量和成员模型生产的一系列广义模型。该模型还对其他集合技术和针对各个成员模型进行了良好。这些结果证明了所提出的方法论在构建北方河流冰堵塞预测中的混合集合模型方面的可行性。所使用的技术可以适用于其他位置,以便于冰卡预测,需要在任何潜在的洪水事件之前容易地获得和监视的数据。

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