2019
DOI: 10.3390/app9224931
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Comparative Analysis of Rainfall Prediction Models Using Machine Learning in Islands with Complex Orography: Tenerife Island

Abstract: We present a comparative study between predictive monthly rainfall models for islands of complex orography using machine learning techniques. The models have been developed for the island of Tenerife (Canary Islands). Weather forecasting is influenced both by the local geographic characteristics as well as by the time horizon comprised. Accuracy of mid-term rainfall prediction on islands with complex orography is generally low when carried out with atmospheric models. Predictive models based on algorithms such… Show more

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Cited by 29 publications
(14 citation statements)
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“…This procedure disrupts the integrity of the data by causing data leakage, whereby information from the testing set is introduced into the training set. Other papers make no attempt to account for seasonality [18,22,23,46,48,61,68,69]. Evidently, there is no consistent procedure for dealing with the seasonality aspect of the data; this is one point that we address in this paper.…”
Section: Literature Review and Scope Of The Researchmentioning
confidence: 97%
See 1 more Smart Citation
“…This procedure disrupts the integrity of the data by causing data leakage, whereby information from the testing set is introduced into the training set. Other papers make no attempt to account for seasonality [18,22,23,46,48,61,68,69]. Evidently, there is no consistent procedure for dealing with the seasonality aspect of the data; this is one point that we address in this paper.…”
Section: Literature Review and Scope Of The Researchmentioning
confidence: 97%
“…Another concern is that some common pre-processing practices produce data leakage, so that ML algorithm accuracies are over-reported. Some examples of such practices are: data shuffling, whereby researchers randomly shuffle the data [11,[16][17][18][19][20][21][22][23]; data imputation methods that use statistics (such as averaging) calculated on the entire data set, including both training and testing [24][25][26]; and data transformations such as de-seasonalization that also use statistics calculated on the whole dataset [27,28].…”
Section: Introductionmentioning
confidence: 99%
“…There was also an attempt to forecast bus ridership at the stop and stop-to-stop levels and vehicle traffic flow prediction including delay with the development of a deep learning architecture [29][30][31]. In addition, a rainfall prediction model was developed by a machine learning algorithm [32].…”
Section: Machine Learning Applicationsmentioning
confidence: 99%
“…In [12] XGBoost algorithm was used in order to obtain weather predictions, such as medium-term precipitation prediction, while the authors of [13] used the XGBoost approach for predicting the short-term power consumption in rural and residential areas. The research studies [14,15] use an XGBoost-based model for deterministic wind power forecasting.…”
Section: Introductionmentioning
confidence: 99%
“…The n_jobs = −1 option, permitting one to use all CPU cores, saves time, especially for trees that use a large number of nodes. Parallel computing is widely used in various sectors [12,[53][54][55] because it optimizes computational costs.…”
mentioning
confidence: 99%