Developing Stepwise m5 Tree Model to Determine the Influential Factors on Rainfall Prediction and to Overcome the Greedy Problem of its Algorithm
Khalil Ghorbani (),
Meysam Salarijazi and
Nozar Ghahreman
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Khalil Ghorbani: Gorgan University of Agricultural Sciences and Natural Resources
Meysam Salarijazi: Gorgan University of Agricultural Sciences and Natural Resources
Nozar Ghahreman: University of Tehran
Water Resources Management: An International Journal, Published for the European Water Resources Association (EWRA), 2022, vol. 36, issue 9, No 23, 3327-3348
Abstract:
Abstract Large scale climatic phenomenon with lag time may be used as essential variables for stepwise prediction of rainfall, but the interaction of these signals on the occurrence of rainfall leads to non-linear, complex nature of relations. A model tree is a promising tool for modeling complex systems and recognizing the most significant variables. The model tree approach uses a greedy algorithm in which the increased number of variables does not necessarily improve the model's accuracy; hence the model should be run stepwise. This study employed a stepwise M5 model tree to predict annual rainfall in Hashem Abad station, north of Iran, using observational data and 17 climatic signals during the 1985–2019 period to determine the most significant variables. For this purpose, 131,017 subsets consisting of 17 members were produced, and the M5 model tree was fitted on each of them. The best combination of variables with the highest accuracy simulated the rainfall with a 36-mm error (less them 5–6%) and a correlation coefficient of 94%. Among the climatic signals, the Sun Spot (SP) was placed in the tree root (most significant), while the Nino 4, EA, and NAO were ranked as the other significant predictors, respectively. The results also indicated that due to the nature of rainfall variations and the greedy algorithm of the M5 model, it is necessary to perform stepwise modeling. The lag time in teleconnections may be considered a suitable feature for early prediction of next year's rainfall and capturing the inter-annual variation.
Keywords: Greedy problem; Rainfall prediction; Stepwise M5 tree; Sunspot; Teleconnection (search for similar items in EconPapers)
Date: 2022
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DOI: 10.1007/s11269-022-03203-3
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