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NOVEL APPLICATIONS OF GIS AND ARTIFICIAL INTELLIGENCE IN FOREST RESTORATION
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Denis Vasiliev; Rodney Stevens; Richard Hazlett; Lennart Bornmalm
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10.5593/sgem2022/3.1
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1314-2704
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English
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22
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3.1
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• Prof. DSc. Oleksandr Trofymchuk, UKRAINE
• Prof. Dr. hab. oec. Baiba Rivza, LATVIA |
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Forest restoration programmes take place globally and lay a pivotal role in addressing climate change and biodiversity loss. Often restoration programmes are based on simple plantation schemes, evenly planting trees that later on might contribute to economic activity. This, however, does not seem to be sufficient for supporting biodiversity. Recent research suggests that successful restorations should match original ecological patterns in any particular landscape, assuming that severe erosion and changing soil conditions have not taken place during disturbances. This means that understanding natural historic patterns is vital. However, achieving such understanding is often challenging, given the fact that historic satellite imagery is generally available only for relatively short time periods. It is therefore important, if possible, to model former landscape ecological patterns. Modelling might be based on different site-specific approaches and historical records. However, most powerful tools available today include deep learning and artificial intelligence. Construction and training of neural networks might allow simulation of historical forest patterns in cases when satellite imagery is not available for long time periods. Application of this technique is very likely to have important practical implications.
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conference
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Proceedings of 22nd International Multidisciplinary Scientific GeoConference SGEM 2022
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22nd International Multidisciplinary Scientific GeoConference SGEM 2022, 04 - 10 July, 2022
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Proceedings Paper
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STEF92 Technology
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International Multidisciplinary Scientific GeoConference SGEM
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SWS Scholarly Society; Acad Sci Czech Republ; Latvian Acad Sci; Polish Acad Sci; Serbian Acad Sci and Arts; Natl Acad Sci Ukraine; Natl Acad Sci Armenia; Sci Council Japan; European Acad Sci, Arts and Letters; Acad Fine Arts Zagreb Croatia; Croatian Acad Sci and Arts; Acad Sci Moldova; Montenegrin Acad Sci and Arts; Georgian Acad Sci; Acad Fine Arts and Design Bratislava; Turkish Acad Sci.
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365-372
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04 - 10 July, 2022
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website
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8564
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remote sensing, biodiversity, sustainable development, landscape ecology
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