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Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine

Year 2021, , 122 - 130, 30.09.2021
https://doi.org/10.17475/kastorman.1000369

Abstract

Abstract
Aim of study: Our world is exposed to forest fires and threatens both natural and human environments. Remote sensing is one of the effective techniques to monitor forest fires. However, accessing and processing data on the field is challenging for researchers as it is costly and time-consuming.
Area of study: In this study, the Mersin-Gülnar fire that happened in 2008 in the Mersin region was investigated.
Materials and methods: Starting from 2000, data from the MODIS satellite images were used to monitor the forest's regeneration process along the forest fire's complete timeline. For this, analyzes were made over 471 Normalized Difference Vegetation Index (NDVI) MODIS satellite data from 2000 until 2020. The analyses were made in Google Earth Engine.
Main results: According to the data processed on the Google Earth Engine platform, the vegetation cover was damaged after the fire. As a result of the examined 471 MODIS images, it was observed that the recovery process of the study area after a forest fire takes an average of 10 years.
Highlights: Remote sensing methodologies and satellite datasets provide powerful functionality for assessing the damage caused by forest fires. This study is an example that the recovery period of forest fires is long, and it brings many difficulties together with other natural events.

References

  • Avcı, M. & Boz, K. (2017). Mersin-Gülnar ormanlarında yangın sorunu, yangınların dağılımı ve büyük yangınların değerlendirilmesi. Turkish Journal Of Forestry, 18(2), 160-170.
  • Canty, M. J., Nielsen, A. A., Conradsen, K. & Skriver, H. (2020). Statistical Analysis of Changes in Sentinel-1 Time Series on the Google Earth Engine. Remote Sensing, 12(1), 46.
  • Clemente, R. H., Cerrillo, R. M. N. & Gitas, I. Z. (2009). Monitoring post-fire regeneration in Mediterranean ecosystems by employing multitemporal satellite imagery. International Journal of Wildland Fire, 18(6), 648-658.
  • Demir, N. (2020). NDVI Analysis of Australian Bushfires with Cloud Computing. Türk Uzaktan Algılama ve CBS Dergisi, 1(2), 78-84.
  • Escuin, S., Navarro-Cerrillo, R. M. & Fernandez, P. (2006). Assessment of post-fire vegetation cover using spectral mixture analysis. Application and comparison of different endmember characterization methods. Investigación Agraria: Sistemas y Recursos Forestales, 15, 107-119.
  • Henry, M. & Hope, A. (1998). Monitoring post-burn recovery of chaparral vegetation in southern California using multi-temporal satellite data. International journal of remote sensing, 19(16), 3097-3107.
  • Huang, H., Chen, Y., Clinton, N., Wang, J., Wang, X., Liu, C., . . .& Zheng, Y. (2017). Mapping major land cover dynamics in Beijing using all Landsat images in Google Earth Engine. Remote Sensing of Environment, 202, 166-176.
  • Ireland, G. & Petropoulos, G. P. (2015). Exploring the relationships between post-fire vegetation regeneration dynamics, topography and burn severity: A case study from the Montane Cordillera Ecozones of Western Canada. Applied Geography, 56, 232-248.
  • Kaplan, G. (2020). Broad-Leaved and Coniferous Forest Classification in Google Earth Engine Using Sentinel Imagery. Paper presented at the Presented at the 1st International Electronic Conference on Forests.
  • Li, Z., Fraser, R., Jin, J., Abuelgasim, A., Csiszar, I., Gong, P., . . .& Hao, W. (2003). Evaluation of algorithms for fire detection and mapping across North America from satellite. Journal of Geophysical Research: Atmospheres, 108(D2).
  • Long, T., Zhang, Z., He, G., Jiao, W., Tang, C., Wu, B., . . .& Yin, R. (2019). 30 m Resolution Global Annual Burned Area Mapping Based on Landsat Images and Google Earth Engine. Remote Sensing, 11(5), 489. Matcı, D. K. & Avdan, U. (2020). Comparative analysis of unsupervised classification methods for mapping burned forest areas. Arabian Journal of Geosciences, 13(15), 1-13.
  • Matcı, D. K., Comert, R. & Avdan, U. (2020). Comparison Of Tree-Based Classification Algorithms In Mapping Burned Forest Areas. Geodetski Vestnik, 64(3).
  • Meng, R., Dennison, P. E., Huang, C., Moritz, M. A. & D'Antonio, C. (2015). Effects of fire severity and post-fire climate on short-term vegetation recovery of mixed-conifer and red fir forests in the Sierra Nevada Mountains of California. Remote sensing of Environment, 171, 311-325.
  • Mutanga, O. & Kumar, L. (2019). Google Earth Engine Applications. In: Multidisciplinary Digital Publishing Institute.
  • Parks, S. A., Holsinger, L. M., Voss, M. A., Loehman, R. A. & Robinson, N. P. (2018). Mean composite fire severity metrics computed with google earth engine offer improved accuracy and expanded mapping potential. Remote Sensing, 10(6), 879.
  • Riaño, D., Chuvieco, E., Ustin, S., Zomer, R., Dennison, P., Roberts, D. & Salas, J. (2002). Assessment of vegetation regeneration after fire through multitemporal analysis of AVIRIS images in the Santa Monica Mountains. Remote sensing of Environment, 79(1), 60-71.
  • Sidhu, N., Pebesma, E. & Câmara, G. (2018). Using Google Earth Engine to detect land cover change: Singapore as a use case. European Journal of Remote Sensing, 51(1), 486-500.
  • Twele, A. & Barbosa, P. (2004). Monitoring vegetation regeneration after forest fires using satellite imagery. Paper presented at the Proceedings of the 24th Symposium of the European Association of Remote Sensing Laboratories, Dubrovnik, Croatia, May 25–27.
  • Viana-Soto, A., Aguado, I. & Martínez, S. (2017). Assessment of post-fire vegetation recovery using fire severity and geographical data in the mediterranean region (Spain). Environments, 4(4), 90. Vlassova, L., Pérez-Cabello, F., Mimbrero, M. R., Llovería, R. M. & García-Martín, A. (2014). Analysis of the relationship between land surface temperature and wildfire severity in a series of landsat images. Remote Sensing, 6(7), 6136-6162.
  • Yıldız, H., Bayrak, S. A., Mermer, A., Ünal, E. & Aydoğdu, M. (2016). Bitki Örtüsü Değişiminin Orta Çözünürlükteki Uydu Görüntüleri İle İzlenmesi.
Year 2021, , 122 - 130, 30.09.2021
https://doi.org/10.17475/kastorman.1000369

Abstract

References

  • Avcı, M. & Boz, K. (2017). Mersin-Gülnar ormanlarında yangın sorunu, yangınların dağılımı ve büyük yangınların değerlendirilmesi. Turkish Journal Of Forestry, 18(2), 160-170.
  • Canty, M. J., Nielsen, A. A., Conradsen, K. & Skriver, H. (2020). Statistical Analysis of Changes in Sentinel-1 Time Series on the Google Earth Engine. Remote Sensing, 12(1), 46.
  • Clemente, R. H., Cerrillo, R. M. N. & Gitas, I. Z. (2009). Monitoring post-fire regeneration in Mediterranean ecosystems by employing multitemporal satellite imagery. International Journal of Wildland Fire, 18(6), 648-658.
  • Demir, N. (2020). NDVI Analysis of Australian Bushfires with Cloud Computing. Türk Uzaktan Algılama ve CBS Dergisi, 1(2), 78-84.
  • Escuin, S., Navarro-Cerrillo, R. M. & Fernandez, P. (2006). Assessment of post-fire vegetation cover using spectral mixture analysis. Application and comparison of different endmember characterization methods. Investigación Agraria: Sistemas y Recursos Forestales, 15, 107-119.
  • Henry, M. & Hope, A. (1998). Monitoring post-burn recovery of chaparral vegetation in southern California using multi-temporal satellite data. International journal of remote sensing, 19(16), 3097-3107.
  • Huang, H., Chen, Y., Clinton, N., Wang, J., Wang, X., Liu, C., . . .& Zheng, Y. (2017). Mapping major land cover dynamics in Beijing using all Landsat images in Google Earth Engine. Remote Sensing of Environment, 202, 166-176.
  • Ireland, G. & Petropoulos, G. P. (2015). Exploring the relationships between post-fire vegetation regeneration dynamics, topography and burn severity: A case study from the Montane Cordillera Ecozones of Western Canada. Applied Geography, 56, 232-248.
  • Kaplan, G. (2020). Broad-Leaved and Coniferous Forest Classification in Google Earth Engine Using Sentinel Imagery. Paper presented at the Presented at the 1st International Electronic Conference on Forests.
  • Li, Z., Fraser, R., Jin, J., Abuelgasim, A., Csiszar, I., Gong, P., . . .& Hao, W. (2003). Evaluation of algorithms for fire detection and mapping across North America from satellite. Journal of Geophysical Research: Atmospheres, 108(D2).
  • Long, T., Zhang, Z., He, G., Jiao, W., Tang, C., Wu, B., . . .& Yin, R. (2019). 30 m Resolution Global Annual Burned Area Mapping Based on Landsat Images and Google Earth Engine. Remote Sensing, 11(5), 489. Matcı, D. K. & Avdan, U. (2020). Comparative analysis of unsupervised classification methods for mapping burned forest areas. Arabian Journal of Geosciences, 13(15), 1-13.
  • Matcı, D. K., Comert, R. & Avdan, U. (2020). Comparison Of Tree-Based Classification Algorithms In Mapping Burned Forest Areas. Geodetski Vestnik, 64(3).
  • Meng, R., Dennison, P. E., Huang, C., Moritz, M. A. & D'Antonio, C. (2015). Effects of fire severity and post-fire climate on short-term vegetation recovery of mixed-conifer and red fir forests in the Sierra Nevada Mountains of California. Remote sensing of Environment, 171, 311-325.
  • Mutanga, O. & Kumar, L. (2019). Google Earth Engine Applications. In: Multidisciplinary Digital Publishing Institute.
  • Parks, S. A., Holsinger, L. M., Voss, M. A., Loehman, R. A. & Robinson, N. P. (2018). Mean composite fire severity metrics computed with google earth engine offer improved accuracy and expanded mapping potential. Remote Sensing, 10(6), 879.
  • Riaño, D., Chuvieco, E., Ustin, S., Zomer, R., Dennison, P., Roberts, D. & Salas, J. (2002). Assessment of vegetation regeneration after fire through multitemporal analysis of AVIRIS images in the Santa Monica Mountains. Remote sensing of Environment, 79(1), 60-71.
  • Sidhu, N., Pebesma, E. & Câmara, G. (2018). Using Google Earth Engine to detect land cover change: Singapore as a use case. European Journal of Remote Sensing, 51(1), 486-500.
  • Twele, A. & Barbosa, P. (2004). Monitoring vegetation regeneration after forest fires using satellite imagery. Paper presented at the Proceedings of the 24th Symposium of the European Association of Remote Sensing Laboratories, Dubrovnik, Croatia, May 25–27.
  • Viana-Soto, A., Aguado, I. & Martínez, S. (2017). Assessment of post-fire vegetation recovery using fire severity and geographical data in the mediterranean region (Spain). Environments, 4(4), 90. Vlassova, L., Pérez-Cabello, F., Mimbrero, M. R., Llovería, R. M. & García-Martín, A. (2014). Analysis of the relationship between land surface temperature and wildfire severity in a series of landsat images. Remote Sensing, 6(7), 6136-6162.
  • Yıldız, H., Bayrak, S. A., Mermer, A., Ünal, E. & Aydoğdu, M. (2016). Bitki Örtüsü Değişiminin Orta Çözünürlükteki Uydu Görüntüleri İle İzlenmesi.
There are 20 citations in total.

Details

Primary Language English
Journal Section Articles
Authors

Abdülcelil Güzel This is me

Kadir Bıçaklı This is me

Fatih Bıçaklı This is me

Gordana Kaplan This is me

Publication Date September 30, 2021
Published in Issue Year 2021

Cite

APA Güzel, A., Bıçaklı, K., Bıçaklı, F., Kaplan, G. (2021). Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine. Kastamonu University Journal of Forestry Faculty, 21(2), 122-130. https://doi.org/10.17475/kastorman.1000369
AMA Güzel A, Bıçaklı K, Bıçaklı F, Kaplan G. Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine. Kastamonu University Journal of Forestry Faculty. September 2021;21(2):122-130. doi:10.17475/kastorman.1000369
Chicago Güzel, Abdülcelil, Kadir Bıçaklı, Fatih Bıçaklı, and Gordana Kaplan. “Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine”. Kastamonu University Journal of Forestry Faculty 21, no. 2 (September 2021): 122-30. https://doi.org/10.17475/kastorman.1000369.
EndNote Güzel A, Bıçaklı K, Bıçaklı F, Kaplan G (September 1, 2021) Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine. Kastamonu University Journal of Forestry Faculty 21 2 122–130.
IEEE A. Güzel, K. Bıçaklı, F. Bıçaklı, and G. Kaplan, “Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine”, Kastamonu University Journal of Forestry Faculty, vol. 21, no. 2, pp. 122–130, 2021, doi: 10.17475/kastorman.1000369.
ISNAD Güzel, Abdülcelil et al. “Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine”. Kastamonu University Journal of Forestry Faculty 21/2 (September 2021), 122-130. https://doi.org/10.17475/kastorman.1000369.
JAMA Güzel A, Bıçaklı K, Bıçaklı F, Kaplan G. Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine. Kastamonu University Journal of Forestry Faculty. 2021;21:122–130.
MLA Güzel, Abdülcelil et al. “Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine”. Kastamonu University Journal of Forestry Faculty, vol. 21, no. 2, 2021, pp. 122-30, doi:10.17475/kastorman.1000369.
Vancouver Güzel A, Bıçaklı K, Bıçaklı F, Kaplan G. Monitoring The Regeneration Process of Areas Destroyed by Forest Fires Aided by Google Earth Engine. Kastamonu University Journal of Forestry Faculty. 2021;21(2):122-30.

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