CLIMATE RISK VULNERABILITY ASSESSMENT OF THE MAJOR CROPS IN THE PROVINCE OF AGUSAN DEL NORTE, PHILIPPINES
Assessing an area's vulnerability can serve as an effective planning tool to increase resilience to climate-related hazards. This paper provides information on the most vulnerable municipalities to climate change impacts in the province of Agusan del Norte, Philippines. The assessment included...
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Copernicus Publications
2021
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oai:doaj.org-article:bb7cd902bb6546439b8bfbe653e6175b2021-11-18T23:57:11ZCLIMATE RISK VULNERABILITY ASSESSMENT OF THE MAJOR CROPS IN THE PROVINCE OF AGUSAN DEL NORTE, PHILIPPINES10.5194/isprs-archives-XLVI-4-W6-2021-27-20211682-17502194-9034https://doaj.org/article/bb7cd902bb6546439b8bfbe653e6175b2021-11-01T00:00:00Zhttps://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XLVI-4-W6-2021/27/2021/isprs-archives-XLVI-4-W6-2021-27-2021.pdfhttps://doaj.org/toc/1682-1750https://doaj.org/toc/2194-9034Assessing an area's vulnerability can serve as an effective planning tool to increase resilience to climate-related hazards. This paper provides information on the most vulnerable municipalities to climate change impacts in the province of Agusan del Norte, Philippines. The assessment included in the geospatial analysis were physical, agro-ecological, and socio-economic indicators clustered under the components of exposure, sensitivity, and adaptive capacity. Using MaxEnt, modelling the suitability of crops due to changes in temperature and precipitation by the year 2050 determines the crops' sensitivity. A combination of natural hazards datasets was used to estimate the extent of exposure to each municipality within the province under pressure from climate and hydro-meteorological risks. An up-to-date database from the concerned local government units for adaptive capacity indicators was clustered into seven capitals: economic, natural, human, physical, social, anticipatory, and institutional. The total CRV model for rice, corn, and banana crops revealed that the municipalities identified as highly vulnerable due to their high exposure to climate hazards, the decreasing crops' suitability to climate variability, and low adaptive capacity.A. G. ApdohanA. G. ApdohanR. P. VarelaR. M. BalanayCopernicus PublicationsarticleTechnologyTEngineering (General). Civil engineering (General)TA1-2040Applied optics. PhotonicsTA1501-1820ENThe International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XLVI-4-W6-2021, Pp 27-33 (2021) |
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Technology T Engineering (General). Civil engineering (General) TA1-2040 Applied optics. Photonics TA1501-1820 |
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Technology T Engineering (General). Civil engineering (General) TA1-2040 Applied optics. Photonics TA1501-1820 A. G. Apdohan A. G. Apdohan R. P. Varela R. M. Balanay CLIMATE RISK VULNERABILITY ASSESSMENT OF THE MAJOR CROPS IN THE PROVINCE OF AGUSAN DEL NORTE, PHILIPPINES |
description |
Assessing an area's vulnerability can serve as an effective planning tool to increase resilience to climate-related hazards. This paper provides information on the most vulnerable municipalities to climate change impacts in the province of Agusan del Norte, Philippines. The assessment included in the geospatial analysis were physical, agro-ecological, and socio-economic indicators clustered under the components of exposure, sensitivity, and adaptive capacity. Using MaxEnt, modelling the suitability of crops due to changes in temperature and precipitation by the year 2050 determines the crops' sensitivity. A combination of natural hazards datasets was used to estimate the extent of exposure to each municipality within the province under pressure from climate and hydro-meteorological risks. An up-to-date database from the concerned local government units for adaptive capacity indicators was clustered into seven capitals: economic, natural, human, physical, social, anticipatory, and institutional. The total CRV model for rice, corn, and banana crops revealed that the municipalities identified as highly vulnerable due to their high exposure to climate hazards, the decreasing crops' suitability to climate variability, and low adaptive capacity. |
format |
article |
author |
A. G. Apdohan A. G. Apdohan R. P. Varela R. M. Balanay |
author_facet |
A. G. Apdohan A. G. Apdohan R. P. Varela R. M. Balanay |
author_sort |
A. G. Apdohan |
title |
CLIMATE RISK VULNERABILITY ASSESSMENT OF THE MAJOR CROPS IN THE PROVINCE OF AGUSAN DEL NORTE, PHILIPPINES |
title_short |
CLIMATE RISK VULNERABILITY ASSESSMENT OF THE MAJOR CROPS IN THE PROVINCE OF AGUSAN DEL NORTE, PHILIPPINES |
title_full |
CLIMATE RISK VULNERABILITY ASSESSMENT OF THE MAJOR CROPS IN THE PROVINCE OF AGUSAN DEL NORTE, PHILIPPINES |
title_fullStr |
CLIMATE RISK VULNERABILITY ASSESSMENT OF THE MAJOR CROPS IN THE PROVINCE OF AGUSAN DEL NORTE, PHILIPPINES |
title_full_unstemmed |
CLIMATE RISK VULNERABILITY ASSESSMENT OF THE MAJOR CROPS IN THE PROVINCE OF AGUSAN DEL NORTE, PHILIPPINES |
title_sort |
climate risk vulnerability assessment of the major crops in the province of agusan del norte, philippines |
publisher |
Copernicus Publications |
publishDate |
2021 |
url |
https://doaj.org/article/bb7cd902bb6546439b8bfbe653e6175b |
work_keys_str_mv |
AT agapdohan climateriskvulnerabilityassessmentofthemajorcropsintheprovinceofagusandelnortephilippines AT agapdohan climateriskvulnerabilityassessmentofthemajorcropsintheprovinceofagusandelnortephilippines AT rpvarela climateriskvulnerabilityassessmentofthemajorcropsintheprovinceofagusandelnortephilippines AT rmbalanay climateriskvulnerabilityassessmentofthemajorcropsintheprovinceofagusandelnortephilippines |
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