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Search: WFRF:(Venkatappa Manjunatha)

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  • Scaini, Anna, et al. (author)
  • Pathways from research to sustainable development: Insights from ten research projects in sustainability and resilience
  • 2024
  • In: AMBIO. - : SPRINGER. - 0044-7447 .- 1654-7209.
  • Journal article (peer-reviewed)abstract
    • Drawing on collective experience from ten collaborative research projects focused on the Global South, we identify three major challenges that impede the translation of research on sustainability and resilience into better-informed choices by individuals and policy-makers that in turn can support transformation to a sustainable future. The three challenges comprise: (i) converting knowledge produced during research projects into successful knowledge application; (ii) scaling up knowledge in time when research projects are short-term and potential impacts are long-term; and (iii) scaling up knowledge across space, from local research sites to larger-scale or even global impact. Some potential pathways for funding agencies to overcome these challenges include providing targeted prolonged funding for dissemination and outreach, and facilitating collaboration and coordination across different sites, research teams, and partner organizations. By systematically documenting these challenges, we hope to pave the way for further innovations in the research cycle.
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2.
  • Venkatappa, Manjunatha, et al. (author)
  • Applications of the google earth engine and phenology-based threshold classification method for mapping forest cover and carbon stock changes in Siem Reap province, Cambodia
  • 2020
  • In: Remote Sensing. - 2072-4292. ; 12:18
  • Journal article (peer-reviewed)abstract
    • Digital and scalable technologies are increasingly important for rapid and large-scale assessment and monitoring of land cover change. Until recently, little research has existed on how these technologies can be specifically applied to the monitoring of Reducing Emissions from Deforestation and Forest Degradation (REDD+) activities. Using the Google Earth Engine (GEE) cloud computing platform, we applied the recently developed phenology-based threshold classification method (PBTC) for detecting and mapping forest cover and carbon stock changes in Siem Reap province, Cambodia, between 1990 and 2018. The obtained PBTC maps were validated using Google Earth high resolution historical imagery and reference land cover maps by creating 3771 systematic 5 × 5 km spatial accuracy points. The overall cumulative accuracy of this study was 92.1% and its cumulative Kappa was 0.9, which are sufficiently high to apply the PBTC method to detect forest land cover change. Accordingly, we estimated the carbon stock changes over a 28-year period in accordance with the Good Practice Guidelines of the Intergovernmental Panel on Climate Change. We found that 322,694 ha of forest cover was lost in Siem Reap, representing an annual deforestation rate of 1.3% between 1990 and 2018. This loss of forest cover was responsible for carbon emissions of 143,729,440 MgCO2 over the same period. If REDD+ activities are implemented during the implementation period of the Paris Climate Agreement between 2020 and 2030, about 8,256,746 MgCO2 of carbon emissions could be reduced, equivalent to about USD 6-115 million annually depending on chosen carbon prices. Our case study demonstrates that the GEE and PBTC method can be used to detect and monitor forest cover change and carbon stock changes in the tropics with high accuracy.
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3.
  • Venkatappa, Manjunatha, et al. (author)
  • Mapping the natural distribution of bamboo and related carbon stocks in the tropics using google earth engine, phenological behavior, landsat 8, and sentinel-2
  • 2020
  • In: Remote Sensing. - : MDPI AG. - 2072-4292. ; 12:18
  • Journal article (peer-reviewed)abstract
    • Although vegetation phenology thresholds have been developed for a wide range of mapping applications, their use for assessing the distribution of natural bamboo and the related carbon stocks is still limited, especially in Southeast Asia. Here, we used Google Earth Engine (GEE) to collect time-series of Landsat 8 Operational Land Imager (OLI) and Sentinel-2 images and employed a phenology-based threshold classification method (PBTC) to map the natural bamboo distribution and estimate carbon stocks in Siem Reap Province, Cambodia. We processed 337 collections of Landsat 8 OLI for phenological assessment and generated 121 phenological profiles of the average vegetation index for three vegetation land cover categories from 2015 to 2018. After determining the minimum and maximum threshold values for bamboo during the leaf-shedding phenology stage, the PBTC method was applied to produce a seasonal composite enhanced vegetation index (EVI) for Landsat collections and assess the bamboo distributions in 2015 and 2018. Bamboo distributions in 2019 were then mapped by applying the EVI phenological threshold values for 10 m resolution Sentinel-2 satellite imagery by accessing 442 tiles. The overall Landsat 8 OLI bamboo maps for 2015 and 2018 had user’s accuracies (UAs) of 86.6% and 87.9% and producer’s accuracies (PAs) of 95.7% and 97.8%, respectively, and a UA of 86.5% and PA of 91.7% were obtained from Sentinel-2 imagery for 2019. Accordingly, carbon stocks of natural bamboo by district in Siem Reap at the province level were estimated. Emission reductions from the protection of natural bamboo can be used to offset 6% of the carbon emissions from tourists who visit this tourism-destination province. It is concluded that a combination of GEE and PBTC and the increasing availability of remote sensing data make it possible to map the natural distribution of bamboo and carbon stocks.
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  • Result 1-3 of 3
Type of publication
journal article (3)
Type of content
peer-reviewed (3)
Author/Editor
Smith, Benjamin (3)
Sasaki, Nophea (3)
Venkatappa, Manjunat ... (3)
Anantsuksomsri, Sute ... (2)
Manzoni, Stefano, 19 ... (1)
Rousk, Johannes (1)
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Kain, Jaan-Henrik, 1 ... (1)
Wamsler, Christine (1)
Scaini, Anna (1)
Fjelde, Hanne (1)
Olsson, Lennart (1)
Höjer, Mattias (1)
Vico, Giulia (1)
Mcconville, Jennifer (1)
Tompsett, Anna (1)
Zapata, Patrik, 1967 (1)
Zapata Campos, María ... (1)
Fridahl, Mathias, 19 ... (1)
Hansson, Anders, 197 ... (1)
Nilsson, David, 1968 ... (1)
Ekblom, Anneli (1)
Courtney Mustaphi, C ... (1)
Berg, Håkan, 1965- (1)
Olin, Stefan (1)
von Uexkull, Nina (1)
Mulligan, Joe (1)
Leizeaga, Ainara (1)
Marchant, Rob (1)
Carenzo, Sebastián (1)
Bukachi, Vera (1)
Munishi, Linus (1)
Lyon, Steve W., 1978 ... (1)
Lane, Paul (1)
Rogers, Peter Msumal ... (1)
Hicks, Lettice (1)
Livsey, John, 1983- (1)
Lindborg, Regina, 19 ... (1)
Juma, Benard (1)
Kariuki, Rebecca W. (1)
Sandén, Hans (1)
Mulligan, Joseph (1)
Brangarí, Albert (1)
Chau Thi, Da (1)
Kim, Soben (1)
Olang, Luke (1)
Shoemaker, Anna (1)
Phuong, Lan Thai Huy ... (1)
Varela, Ana Varela (1)
Wondie, Menale (1)
Castillo, Jose Alan (1)
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University
Lund University (3)
University of Gothenburg (1)
Royal Institute of Technology (1)
Uppsala University (1)
Stockholm University (1)
Linköping University (1)
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Swedish University of Agricultural Sciences (1)
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Language
English (3)
Research subject (UKÄ/SCB)
Natural sciences (3)
Agricultural Sciences (1)
Social Sciences (1)

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