Reducing Climatic Bias in SDG 15.3.1 Land Degradation Assessments Using a Hybrid Productivity Approach: A Remote Sensing Analysis for Northern and Central Morocco (2000–2022)

Read the full article See related articles

Discuss this preprint

Start a discussion What are Sciety discussions?

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Land degradation assessments for SDG 15.3.1 often misinterpret rainfall-driven vegetation fluctuations as human-induced decline, particularly in dryland environments where vegetation productivity responds strongly to precipitation variability. This study addresses this challenge by presenting a national-scale land degradation assessment (2000–2022) using a fully reproducible Google Earth Engine workflow that integrates 30 m Landsat time-series NDVI, precipitation, land cover, and soil organic carbon datasets. The core contribution is a precipitation-conditioned hybrid productivity indicator that adaptively selects among NDVI trends, Rain Use Efficiency (RUE), and Residual Trends (RESTREND) according to local precipitation dynamics. This framework operationalizes a climate-aware implementation of the land productivity (LP) sub-indicator within SDG 15.3.1 and enables systematic comparison among productivity metrics under varying rainfall conditions. Results for the 2015–2022 monitoring period, which included multiple drought years, indicate that 18% of land showed declining productivity, 75% remained stable, and 6% showed improvement. Decline was spatially concentrated in arid and semi-arid regions, whereas irrigated and managed landscapes exhibited localized improvements. The hybrid indicator provides an additional option for LP assessment that explicitly accounts for precipitation variability, supporting more climate-sensitive interpretation of productivity trends. This transferable, reproducible methodology strengthens national capacity for SDG 15.3.1 reporting and offers a scalable framework for land degradation assessments in other drought-prone regions.

Article activity feed