TY - JOUR
T1 - Combining machine learning and spatial data processing techniques for allocation of large-scale nature-based solutions
AU - Caloir, Beatriz Emma Gutierrez
AU - Abebe, Yared Abayneh
AU - Vojinovic, Zoran
AU - Sanchez, Arlex
AU - Mubeen, Adam
AU - Ruangpan, Laddaporn
AU - Manojlovic, Natasa
AU - Plavsic, Jasna
AU - Djordjevic, Slobodan
PY - 2023
Y1 - 2023
N2 - The escalating impacts of climate change trigger the necessity to deal with hydro-meteorological hazards. Nature-based solutions (NBSs) seem to be a suitable response, integrating the hydrology, geomorphology, hydraulic, and ecological dynamics. While there are some methods and tools for suitability mapping of small-scale NBSs, literature concerning the spatial allocation of large-scale NBSs is still lacking. The present work aims to develop new toolboxes and enhance an existing methodology by developing spatial analysis tools within a geographic information system (GIS) environment to allocate large-scale NBSs based on a multi-criteria algorithm. The methodologies combine machine learning spatial data processing techniques and hydrodynamic modelling for allocation of large-scale NBSs. The case studies concern selected areas in the Netherlands, Serbia, and Bolivia, focusing on three large-scale NBS: rainwater harvesting, wetland restoration, and natural riverbank stabilisation. Information available from the EC H2020 RECONECT project as well as other available data for the specific study areas was used. The research highlights the significance of incorporating machine learning, GIS, and remote sensing techniques for the suitable allocation of large-scale NBSs. The findings may offer new insights for decision-makers and other stakeholders involved in future sustainable environmental planning and climate change adaptation.
AB - The escalating impacts of climate change trigger the necessity to deal with hydro-meteorological hazards. Nature-based solutions (NBSs) seem to be a suitable response, integrating the hydrology, geomorphology, hydraulic, and ecological dynamics. While there are some methods and tools for suitability mapping of small-scale NBSs, literature concerning the spatial allocation of large-scale NBSs is still lacking. The present work aims to develop new toolboxes and enhance an existing methodology by developing spatial analysis tools within a geographic information system (GIS) environment to allocate large-scale NBSs based on a multi-criteria algorithm. The methodologies combine machine learning spatial data processing techniques and hydrodynamic modelling for allocation of large-scale NBSs. The case studies concern selected areas in the Netherlands, Serbia, and Bolivia, focusing on three large-scale NBS: rainwater harvesting, wetland restoration, and natural riverbank stabilisation. Information available from the EC H2020 RECONECT project as well as other available data for the specific study areas was used. The research highlights the significance of incorporating machine learning, GIS, and remote sensing techniques for the suitable allocation of large-scale NBSs. The findings may offer new insights for decision-makers and other stakeholders involved in future sustainable environmental planning and climate change adaptation.
KW - flood risk reduction
KW - large-scale nature-based solutions
KW - machine learning
KW - NBS planning
KW - spatial data processing
UR - http://www.scopus.com/inward/record.url?scp=85180610072&partnerID=8YFLogxK
U2 - 10.2166/bgs.2023.040
DO - 10.2166/bgs.2023.040
M3 - Article
AN - SCOPUS:85180610072
SN - 2617-4782
VL - 5
SP - 186
EP - 199
JO - Blue-Green Systems
JF - Blue-Green Systems
IS - 2
ER -