Modeling River Ice Breakup Dates by k-Nearest Neighbor Ensemble

Forecasting of river ice breakup timing is directly related to the local ice-caused flooding management. However, river ice forecasting using k-nearest neighbor (kNN) algorithms is limited. Thus, a kNN stacking ensemble learning (KSEL) method was developed and applied to forecasting breakup dates (B...

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Published in:Water
Main Authors: Wei Sun, Ying Lv, Gongchen Li, Yumin Chen
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2020
Subjects:
Online Access:https://doi.org/10.3390/w12010220
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author Wei Sun
Ying Lv
Gongchen Li
Yumin Chen
author_facet Wei Sun
Ying Lv
Gongchen Li
Yumin Chen
author_sort Wei Sun
collection MDPI Open Access Publishing
container_issue 1
container_start_page 220
container_title Water
container_volume 12
description Forecasting of river ice breakup timing is directly related to the local ice-caused flooding management. However, river ice forecasting using k-nearest neighbor (kNN) algorithms is limited. Thus, a kNN stacking ensemble learning (KSEL) method was developed and applied to forecasting breakup dates (BDs) for the Athabasca River at Fort McMurray in Canada. The kNN base models with diverse inputs and distance functions were developed and their outputs were further combined. The performance of these models was examined using the leave-one-out cross validation method based on the historical BDs and corresponding climate and river conditions in 1980–2015. The results indicated that the kNN with the Chebychev distance functions generally outperformed other kNN base models. Through the simple average methods, the ensemble kNN models using multiple-type (Mahalanobis and Chebychev) distance functions had the overall optimal performance among all models. The improved performance indicates that the kNN ensemble is a promising tool for river ice forecasting. The structure of optimal models also implies that the breakup timing is mainly linked with temperature and water flow conditions before breakup as well as during and just after freeze up.
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genre Athabasca River
Fort McMurray
genre_facet Athabasca River
Fort McMurray
geographic Athabasca River
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spelling ftmdpi:oai:mdpi.com:/2073-4441/12/1/220/ 2025-01-16T20:56:58+00:00 Modeling River Ice Breakup Dates by k-Nearest Neighbor Ensemble Wei Sun Ying Lv Gongchen Li Yumin Chen agris 2020-01-13 application/pdf https://doi.org/10.3390/w12010220 EN eng Multidisciplinary Digital Publishing Institute Water Resources Management, Policy and Governance https://dx.doi.org/10.3390/w12010220 https://creativecommons.org/licenses/by/4.0/ Water; Volume 12; Issue 1; Pages: 220 river ice breakup date k-nearest neighbor machine learning ensemble learning Text 2020 ftmdpi https://doi.org/10.3390/w12010220 2023-07-31T22:59:45Z Forecasting of river ice breakup timing is directly related to the local ice-caused flooding management. However, river ice forecasting using k-nearest neighbor (kNN) algorithms is limited. Thus, a kNN stacking ensemble learning (KSEL) method was developed and applied to forecasting breakup dates (BDs) for the Athabasca River at Fort McMurray in Canada. The kNN base models with diverse inputs and distance functions were developed and their outputs were further combined. The performance of these models was examined using the leave-one-out cross validation method based on the historical BDs and corresponding climate and river conditions in 1980–2015. The results indicated that the kNN with the Chebychev distance functions generally outperformed other kNN base models. Through the simple average methods, the ensemble kNN models using multiple-type (Mahalanobis and Chebychev) distance functions had the overall optimal performance among all models. The improved performance indicates that the kNN ensemble is a promising tool for river ice forecasting. The structure of optimal models also implies that the breakup timing is mainly linked with temperature and water flow conditions before breakup as well as during and just after freeze up. Text Athabasca River Fort McMurray MDPI Open Access Publishing Athabasca River Canada Fort McMurray Water 12 1 220
spellingShingle river ice
breakup date
k-nearest neighbor
machine learning
ensemble learning
Wei Sun
Ying Lv
Gongchen Li
Yumin Chen
Modeling River Ice Breakup Dates by k-Nearest Neighbor Ensemble
title Modeling River Ice Breakup Dates by k-Nearest Neighbor Ensemble
title_full Modeling River Ice Breakup Dates by k-Nearest Neighbor Ensemble
title_fullStr Modeling River Ice Breakup Dates by k-Nearest Neighbor Ensemble
title_full_unstemmed Modeling River Ice Breakup Dates by k-Nearest Neighbor Ensemble
title_short Modeling River Ice Breakup Dates by k-Nearest Neighbor Ensemble
title_sort modeling river ice breakup dates by k-nearest neighbor ensemble
topic river ice
breakup date
k-nearest neighbor
machine learning
ensemble learning
topic_facet river ice
breakup date
k-nearest neighbor
machine learning
ensemble learning
url https://doi.org/10.3390/w12010220