The paper proposes a model for predicting climate change, using algorithms in mining techniques based on approximate data, applied to agro-meteorological data, by identifying groups search of motifs and time series forecasting. To achieve the goal you work with the water balance components: flow, precipitation and evaporation; also took into account the climatic variety seasons marked by humidity (December, January, February, March) and dry (other months) providing better to abstract sub-classification for temporary data processing three classification techniques: linear regression, Naive Bayes and neural networks, where the results of each algorithm are compared with other results. Then the mathematical method of linear regression predicting water balance components for a period of approximately 12 months on the data of dams Pane and Fraile Water Resources in River Basin Chili, Arequipa is performed.
@InProceedings{CLEI-2015:144700,
author = {Melissa Abarca and Karla Mariel Fernández Fabián and Jose Herrera Quispe},
title = {Time series analysis of agro-meteorological data through algorithms in a scalable data mining case: Chili river watershed, Arequipa},
booktitle = {2015 XLI Latin American Computing Conference (CLEI)},
pages = {440--447},
year = {2015},
editor = {Hector Cancela and Alex Cuadros-Vargas and Ernesto Cuadros-Vargas},
address = {Arequipa-Peru},
month = {October},
organization = {CLEI},
publisher = {CLEI},
url = {http://clei.org/clei2015/144700},
isbn = {978-1-4673-9143-6},
}