Hydroclimatic time series features at multiple time scales
Georgia Papacharalampous, Hristos Tyralis, Yannis Markonis, Martin, Hanel

TL;DR
This paper introduces a new multi-scale feature framework for analyzing hydroclimatic time series, enabling detailed interpretation of temporal behaviors and spatial pattern detection across various geophysical data types and resolutions.
Contribution
It presents a novel feature compilation and analysis methodology for multi-scale hydroclimatic data, enhancing interpretability and cross-scale comparison of temperature, precipitation, and streamflow series.
Findings
Identified patterns in feature evolution across temporal scales.
Clustered hydroclimatic series revealing spatial and temporal similarities.
Demonstrated the framework's ability to differentiate time series types.
Abstract
A comprehensive understanding of the behaviours of the various geophysical processes and an effective evaluation of time series (else referred to as "stochastic") simulation models require, among others, detailed investigations across temporal scales. In this work, we propose a novel and detailed methodological framework for advancing and enriching such investigations in a hydroclimatic context. This specific framework is primarily based on a new feature compilation for multi-scale hydroclimatic analyses, and can facilitate largely interpretable feature investigations and comparisons in terms of temporal dependence, temporal variation, "forecastability", lumpiness, stability, nonlinearity (and linearity), trends, spikiness, curvature and seasonality. Multifaceted characterizations are herein obtained by computing the values of the proposed feature compilation across nine temporal…
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Taxonomy
TopicsClimate variability and models · Hydrological Forecasting Using AI · Hydrology and Watershed Management Studies
