1Potsdam Institute for Climate Impact Research, Telegrafenberg A31, 14473 Potsdam, Germany
2Department of Physics, Humboldt University Berlin, Newtonstraße 15, 12489 Berlin, Germany
3Center for Earth System Science, National Institute for Space Research, Rodovia Presidente Dutra 40, 12630-000 Cachoeira Paulista, São Paulo, Brazil
4Stockholm Resilience Center, Stockholm University, Kräftriket 2B, 114 19 Stockholm, Sweden
Received: 14 Sep 2016 – Discussion started: 11 Oct 2016
Abstract. Changes in land-use systems in tropical regions, including deforestation, are a key challenge for global sustainability because of their huge impacts on green-house gas emissions, local climate and biodiversity. However, the dynamics of land-use and land-cover change in regions of frontier expansion such as the Brazilian Amazon are not yet well understood because of the complex interplay of ecological and socioeconomic drivers. In this paper, we combine Markov chain analysis and complex network methods to identify regimes of land-cover dynamics from land-cover maps (TerraClass) derived from high-resolution (30 m) satellite imagery. We estimate regional transition probabilities between different land-cover types and use clustering analysis and community detection algorithms on similarity networks to explore patterns of dominant land-cover transitions. We find that land-cover transition probabilities in the Brazilian Amazon are heterogeneous in space, and adjacent subregions tend to be assigned to the same clusters. When focusing on transitions from single land-cover types, we uncover patterns that reflect major regional differences in land-cover dynamics. Our method is able to summarize regional patterns and thus complements studies performed at the local scale.
Revised: 12 Jan 2017 – Accepted: 28 Jan 2017 – Published: 28 Feb 2017
Müller-Hansen, F., Cardoso, M. F., Dalla-Nora, E. L., Donges, J. F., Heitzig, J., Kurths, J., and Thonicke, K.: A matrix clustering method to explore patterns of land-cover transitions in satellite-derived maps of the Brazilian Amazon, Nonlin. Processes Geophys., 24, 113-123, doi:10.5194/npg-24-113-2017, 2017.