Bias correcting regional scale Earth system model projections: Novel approach using empirical mode decomposition

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Abstract

Bias correction is a crucial step in using Earth system model outputs for assessments, as it adjusts systematic errors by comparing the model to observations. However, standard methods - ranging from mean-based linear scaling to distribution-based quantile mapping typically treat bias correction as a single-scale process, overlooking the fact that biases can manifest differently across daily, seasonal, and annual timescales. In this study, we propose a novel, timescale-aware bias-correction approach built on Empirical Mode Decomposition. By decomposing the meteorological signal into multiple oscillatory components and aggregating them to represent distinct timescales, we apply targeted corrections to each component, thereby preserving both short- and long-term structure in the data. Experimental illustrations show that the timescale-aware EMDBC framework matches the performance of conventional quantile-delta mapping (QDM) at the native daily scale and achieves progressively larger bias reductions at bi-weekly, seasonal, and annual scales. As a result, the proposed approach offers a more robust path to accurate and reliable Earth system projections, strengthening their utility for resilience and adaptation planning.

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Ganguli, A., Feinstein, J., Raji, I., Akinsanola, A., Aghili, C., Jung, C., … Kotamarthi, R. (2025). Bias correcting regional scale Earth system model projections: Novel approach using empirical mode decomposition. Geoscientific Model Development, 18(21), 8313–8332. https://doi.org/10.5194/gmd-18-8313-2025

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