Proccedings of International Scientific Conference "RURAL DEVELOPMENT 2017" 2018
DOI: 10.15544/rd.2017.094
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Identification of Wet Areas in Forest by Using Lidar Based Dem

Abstract: Water tends to flow and accumulate in response to topographical characteristics of local area and gravitational potential energy. Remote sensing data like LiDAR (Light detecting and ranging) or satellite data can be used to identify local depressions where wet areas may occur. The aim of this study was to evaluate methods that can be used to identify wet areas, to determine correlation between topography of the area and forest regeneration and to prepare proposals for forest management that could be usable in … Show more

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Cited by 2 publications
(2 citation statements)
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“…NDVI fluctuates due to favourable or unfavourable weather and environmental conditions (Dąbrowska-Zielińska, Ciołkosz, Malińska, & Bartold, 2011; Dąbrowska-Zielińska, Kogan, Ciolkosz, Gruszczynska, & Kowalik, 2002;Kogan, 1997). NDVI has been widely used to estimate the influence of climatic conditions on vegetation activities globally (Ichii, Kawabata, & Yamaguchi, 2002) and in different regions (Ivanovs & Lupikis, 2018;Li, Yang, Liu, Liu, & Shi, 2015;Sağır, Le Coz, Kurtuluş, & Razack, 2017;Usman, Yelwa, Gulumbe, & Danbaba, 2013). NDVI has been widely used to estimate the influence of climatic conditions on vegetation activities globally (Ichii, Kawabata, & Yamaguchi, 2002) and in different regions (Ivanovs & Lupikis, 2018;Li, Yang, Liu, Liu, & Shi, 2015;Sağır, Le Coz, Kurtuluş, & Razack, 2017;Usman, Yelwa, Gulumbe, & Danbaba, 2013).…”
mentioning
confidence: 99%
“…NDVI fluctuates due to favourable or unfavourable weather and environmental conditions (Dąbrowska-Zielińska, Ciołkosz, Malińska, & Bartold, 2011; Dąbrowska-Zielińska, Kogan, Ciolkosz, Gruszczynska, & Kowalik, 2002;Kogan, 1997). NDVI has been widely used to estimate the influence of climatic conditions on vegetation activities globally (Ichii, Kawabata, & Yamaguchi, 2002) and in different regions (Ivanovs & Lupikis, 2018;Li, Yang, Liu, Liu, & Shi, 2015;Sağır, Le Coz, Kurtuluş, & Razack, 2017;Usman, Yelwa, Gulumbe, & Danbaba, 2013). NDVI has been widely used to estimate the influence of climatic conditions on vegetation activities globally (Ichii, Kawabata, & Yamaguchi, 2002) and in different regions (Ivanovs & Lupikis, 2018;Li, Yang, Liu, Liu, & Shi, 2015;Sağır, Le Coz, Kurtuluş, & Razack, 2017;Usman, Yelwa, Gulumbe, & Danbaba, 2013).…”
mentioning
confidence: 99%
“…Reporting of land use and land use changes are significantly improved (Krumšteds et al, 2019). Soil carbon stock modelling tools are not jet implemented; however, knowledge on carbon turnover, e.g., litter input and soil moisture regime are now in place FORESTRY AND WOOD PROCESSING DOI: 10.22616/rrd.28.2022.006 and should be integrated with modelling solutions (Bārdule et al, 2021;Ivanovs et al, 2017). Flooded lands are a potential key source of the GHG emissions, and there are proposals to implement flooding as a mitigation measure; therefore, it is important to acquire measurement based information on the GHG fluxes from flooded areas.…”
Section: Introductionmentioning
confidence: 99%