2021
DOI: 10.3390/atmos12070834
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K-Means and C4.5 Decision Tree Based Prediction of Long-Term Precipitation Variability in the Poyang Lake Basin, China

Abstract: The machine learning algorithms application in atmospheric sciences along the Earth System Models has the potential of improving prediction, forecast, and reconstruction of missing data. In the current study, a combination of two machine learning techniques namely K-means, and decision tree (C4.5) algorithms, are used to separate observed precipitation into clusters and classified the associated large-scale circulation indices. Observed precipitation from the Chinese Meteorological Agency (CMA) during 1961–201… Show more

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Cited by 13 publications
(7 citation statements)
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“…In this study, k-means clustering was performed to identify the main groups of trajectories. The k-means algorithm is an unsupervised clustering method that classifies a given data into a set of k groups according to their characteristics [35,36]. This method also has the ability to produce more stable cluster boundaries [37].…”
Section: Clustering For the Trajectoriesmentioning
confidence: 99%
See 1 more Smart Citation
“…In this study, k-means clustering was performed to identify the main groups of trajectories. The k-means algorithm is an unsupervised clustering method that classifies a given data into a set of k groups according to their characteristics [35,36]. This method also has the ability to produce more stable cluster boundaries [37].…”
Section: Clustering For the Trajectoriesmentioning
confidence: 99%
“…5). To categorize these trajectories objectively, the pathways are grouped by k-mean clustering [35,36], resulting in three main clusters based on the elbow method [37,38]. The results show that moisture responsible for the extreme rainfall event was transported from 3 directions: from the southeast as cluster 1, from the northwest as cluster 2, and from the east as cluster 3 (Fig.…”
Section: Dominant Moisture Origin Pathways and Contributionsmentioning
confidence: 99%
“…This paper improves the clustering effect by optimizing a step in the calculation process of the K-Means algorithm. In addition, researchers also integrate the K-Means algorithm with other models and algorithms and apply it to various fields such as finance, medicine, and image processing [5].…”
Section: Introductionmentioning
confidence: 99%
“…In his publication, Ross Quinlan described the ID3 decision tree algorithm [24]. Later, in the study [25], Lou et al unveiled ID3's substitute, C4.5, to address a few drawbacks, such as over-fitting. C4.5 is competent enough to handle training data with missing values, characteristics with diverse prices, and both continuous and discrete characteristics, unlike ID3.…”
Section: (B) Decision Treementioning
confidence: 99%