Published July 8, 2021 | Version v1
Conference paper Open

Methodological proposal for the identification of marginal lands with remote sensing-derived products and ancillary data

Description

Abstract. The concept of marginal land (ML) is dynamic and depends on various factors related to the environment, climate, scale, culture, and economic sector. The current methods for identifying ML are diverse, they employ multiple parameters and variables derived from land use and land cover, and mostly reflect specific management purposes. A methodological approach for the identification of marginal lands using remote sensing and ancillary data products and validated on samples from four European countries (i.e., Germany, Spain, Greece, and Poland) is presented in this paper. The methodology proposed combines land use and land cover data sets as excluding indicators (forest, croplands, protected areas, impervious areas, land-use change, water bodies, and permanent snow areas) and environmental constraints information as marginality indicators: (i) physical soil properties, in terms of slope gradient, erosion, soil depth, soil texture, percentage of coarse soil texture fragments, etc.; (ii) climatic factors e.g. aridity index; (iii) chemical soil properties, including soil pH, cation exchange capacity, contaminants, and toxicity, among others. This provides a common vision of marginality that integrates a multidisciplinary approach. To determine the ML, we first analyzed the excluding indicators used to delimit the areas with defined land use. Then, thresholds were determined for each marginality indicator through which the land productivity progressively decreases. Finally, the marginality indicator layers were combined in Google Earth Engine. The result was categorized into 3 levels of productivity of ML: high productivity, low productivity, and potentially unsuitable land. The results obtained indicate that the percentage of marginal land per country is 11.64% in Germany, 19.96% in Spain, 18.76% in Greece, and 7.18% in Poland. The overall accuracies obtained per country were 60.61% for Germany, 88.87% for Spain, 71.52% for Greece, and 90.97% for Poland.

Notes

Cite as: Torralba, J., Ruiz, L.A., Georgiadis, C., Patias, P., Gómez-Conejo, R., Verde, N., Tassapoulou, M., Bezares, F., Grommy, E., Aleksandrowicz, S., Krätzschmar, E., Krupiński, M., Carbonell-Rivera, J.P., 2021. Methodological proposal for the identification of marginal lands with remote sensing-derived products and ancillary data. III Congreso en Ingeniería Geomática (CIGeo), pp. 239-247, 07-08 Jul., online.

Files

12729-36612-1-PB.pdf

Files (4.2 MB)

Name Size Download all
md5:04575c4c59208d4a73f6c74b00521108
4.2 MB Preview Download

Additional details

Funding

European Commission
MAIL – Identifying Marginal Lands in Europe and strengthening their contribution potentialities in a CO2 sequestration strategy 823805