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k-Gaps: a novel technique for clustering incomplete climatological time series

L. Carro‐Calvo, Fernando Jaume-Santero, Ricardo García‐Herrera, Sancho Salcedo‐Sanz

2020Theoretical and Applied Climatology12 citationsDOIOpen Access PDF

Abstract

Abstract In this paper, we show a new clustering technique (k-gaps) aiming to generate a robust regionalization using sparse climate datasets with incomplete information in space and time. Hence, this method provides a new approach to cluster time series of different temporal lengths, using most of the information contained in heterogeneous sets of climate records that, otherwise, would be eliminated during data homogenization procedures. The robustness of the method has been validated with different synthetic datasets, demonstrating that k-gaps performs well with sample-starved datasets and missing climate information for at least 55% of the study period. We show that the algorithm is able to generate a climatically consistent regionalization based on temperature observations similar to those obtained with complete time series, outperforming other clustering methodologies developed to work with fragmentary information. k-Gaps clusters can therefore provide a useful framework for the study of long-term climate trends and the detection of past extreme events at regional scales.

Topics & Concepts

Cluster analysisComputer scienceHomogenization (climate)Robustness (evolution)Data miningSeries (stratigraphy)Cluster (spacecraft)ClimatologyArtificial intelligenceGeologyBiodiversityPaleontologyChemistryGeneBiologyEcologyBiochemistryProgramming languageClimate variability and modelsTime Series Analysis and ForecastingComplex Systems and Time Series Analysis
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