Locally optimized separability enhancement indices for urban land cover mapping: exploring thermal environmental consequences of rapid urbanization in Addis Ababa, Ethiopia

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Standard

Locally optimized separability enhancement indices for urban land cover mapping : exploring thermal environmental consequences of rapid urbanization in Addis Ababa, Ethiopia. / Feyisa, Gudina L.; Meilby, Henrik; Darrel Jenerette, G.; Pauliet, Stephan.

I: Remote Sensing of Environment, Bind 175, 2016, s. 14-31.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Feyisa, GL, Meilby, H, Darrel Jenerette, G & Pauliet, S 2016, 'Locally optimized separability enhancement indices for urban land cover mapping: exploring thermal environmental consequences of rapid urbanization in Addis Ababa, Ethiopia', Remote Sensing of Environment, bind 175, s. 14-31. https://doi.org/10.1016/j.rse.2015.12.026

APA

Feyisa, G. L., Meilby, H., Darrel Jenerette, G., & Pauliet, S. (2016). Locally optimized separability enhancement indices for urban land cover mapping: exploring thermal environmental consequences of rapid urbanization in Addis Ababa, Ethiopia. Remote Sensing of Environment, 175, 14-31. https://doi.org/10.1016/j.rse.2015.12.026

Vancouver

Feyisa GL, Meilby H, Darrel Jenerette G, Pauliet S. Locally optimized separability enhancement indices for urban land cover mapping: exploring thermal environmental consequences of rapid urbanization in Addis Ababa, Ethiopia. Remote Sensing of Environment. 2016;175:14-31. https://doi.org/10.1016/j.rse.2015.12.026

Author

Feyisa, Gudina L. ; Meilby, Henrik ; Darrel Jenerette, G. ; Pauliet, Stephan. / Locally optimized separability enhancement indices for urban land cover mapping : exploring thermal environmental consequences of rapid urbanization in Addis Ababa, Ethiopia. I: Remote Sensing of Environment. 2016 ; Bind 175. s. 14-31.

Bibtex

@article{b3f46177db4b406c80b365e56339d2dd,
title = "Locally optimized separability enhancement indices for urban land cover mapping: exploring thermal environmental consequences of rapid urbanization in Addis Ababa, Ethiopia",
abstract = "Landsat data were used to assess urbanization-induced dynamics in Land use/cover (LULC), surface thermal intensity, and its relationships with urban biophysical composition. The study was undertaken in Addis Ababa city, Ethiopia. Ground-based data and high resolution images were used as reference data in LULC classification. To more accurately quantify landscape patterns and their changes, we applied new locally optimized separability enhancement indices and decision rules (SEI–DR approach) to address commonly observed classification accuracy problems in urban environments. We tested the SEI–DR approach using eight Landsat images acquired between 1985 and 2010. Two approaches were applied to quantify surface heat intensity (SHIn) and to examine its spatial patterns over 25 years: thermal gradient analysis and hot spot analysis. A Simultaneous Autoregressive Spatial error model (SARerr) was used to explore relationships between surface temperature and biophysical variables describing urban surfaces. Compared to Maximum Likelihood (ML) and Support Vector Machine (SVM) classification, accuracy improvement achieved through use of the SEI–DR procedure was, respectively, 6% and 5% and the differences were statistically significant (P < 0.05). The Surface Heat Intensity (SHIn) analysis showed increasing contrast (1985-2010) between urban centers and the outskirt. On average, outskirts were cooler than central urban areas by up to 3.7 °C. We detected statistically significant differences in intra-urban thermal aggregation (P < 0.01) and the differences ranged from 4.4 °C to 5.3 °C. Increasing heat intensity was observed between 1985 and 2010. However, we observed no clear evidence of urban areas being warmer than rural. Built-up surfaces and bare soil showed similar positive relationships with surface temperature (P < 0.01), while vegetation showed a negative relationship (P < 0.05). We conclude that with rapid urbanization, thermal intensity increased but relationships with vegetation suggest that options for mitigating urban warming in tropical climates may be available. The development of a new urban classification method, use of hotspot analysis, and the investigations of the UHI for an African city fill important research gaps for studies of urban thermal variation.",
keywords = "Accuracy, Classification, Climate, Land cover change, Urban heat island, Urbanization, Vegetation",
author = "Feyisa, {Gudina L.} and Henrik Meilby and {Darrel Jenerette}, G. and Stephan Pauliet",
year = "2016",
doi = "10.1016/j.rse.2015.12.026",
language = "English",
volume = "175",
pages = "14--31",
journal = "Remote Sensing of Environment",
issn = "0034-4257",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Locally optimized separability enhancement indices for urban land cover mapping

T2 - exploring thermal environmental consequences of rapid urbanization in Addis Ababa, Ethiopia

AU - Feyisa, Gudina L.

AU - Meilby, Henrik

AU - Darrel Jenerette, G.

AU - Pauliet, Stephan

PY - 2016

Y1 - 2016

N2 - Landsat data were used to assess urbanization-induced dynamics in Land use/cover (LULC), surface thermal intensity, and its relationships with urban biophysical composition. The study was undertaken in Addis Ababa city, Ethiopia. Ground-based data and high resolution images were used as reference data in LULC classification. To more accurately quantify landscape patterns and their changes, we applied new locally optimized separability enhancement indices and decision rules (SEI–DR approach) to address commonly observed classification accuracy problems in urban environments. We tested the SEI–DR approach using eight Landsat images acquired between 1985 and 2010. Two approaches were applied to quantify surface heat intensity (SHIn) and to examine its spatial patterns over 25 years: thermal gradient analysis and hot spot analysis. A Simultaneous Autoregressive Spatial error model (SARerr) was used to explore relationships between surface temperature and biophysical variables describing urban surfaces. Compared to Maximum Likelihood (ML) and Support Vector Machine (SVM) classification, accuracy improvement achieved through use of the SEI–DR procedure was, respectively, 6% and 5% and the differences were statistically significant (P < 0.05). The Surface Heat Intensity (SHIn) analysis showed increasing contrast (1985-2010) between urban centers and the outskirt. On average, outskirts were cooler than central urban areas by up to 3.7 °C. We detected statistically significant differences in intra-urban thermal aggregation (P < 0.01) and the differences ranged from 4.4 °C to 5.3 °C. Increasing heat intensity was observed between 1985 and 2010. However, we observed no clear evidence of urban areas being warmer than rural. Built-up surfaces and bare soil showed similar positive relationships with surface temperature (P < 0.01), while vegetation showed a negative relationship (P < 0.05). We conclude that with rapid urbanization, thermal intensity increased but relationships with vegetation suggest that options for mitigating urban warming in tropical climates may be available. The development of a new urban classification method, use of hotspot analysis, and the investigations of the UHI for an African city fill important research gaps for studies of urban thermal variation.

AB - Landsat data were used to assess urbanization-induced dynamics in Land use/cover (LULC), surface thermal intensity, and its relationships with urban biophysical composition. The study was undertaken in Addis Ababa city, Ethiopia. Ground-based data and high resolution images were used as reference data in LULC classification. To more accurately quantify landscape patterns and their changes, we applied new locally optimized separability enhancement indices and decision rules (SEI–DR approach) to address commonly observed classification accuracy problems in urban environments. We tested the SEI–DR approach using eight Landsat images acquired between 1985 and 2010. Two approaches were applied to quantify surface heat intensity (SHIn) and to examine its spatial patterns over 25 years: thermal gradient analysis and hot spot analysis. A Simultaneous Autoregressive Spatial error model (SARerr) was used to explore relationships between surface temperature and biophysical variables describing urban surfaces. Compared to Maximum Likelihood (ML) and Support Vector Machine (SVM) classification, accuracy improvement achieved through use of the SEI–DR procedure was, respectively, 6% and 5% and the differences were statistically significant (P < 0.05). The Surface Heat Intensity (SHIn) analysis showed increasing contrast (1985-2010) between urban centers and the outskirt. On average, outskirts were cooler than central urban areas by up to 3.7 °C. We detected statistically significant differences in intra-urban thermal aggregation (P < 0.01) and the differences ranged from 4.4 °C to 5.3 °C. Increasing heat intensity was observed between 1985 and 2010. However, we observed no clear evidence of urban areas being warmer than rural. Built-up surfaces and bare soil showed similar positive relationships with surface temperature (P < 0.01), while vegetation showed a negative relationship (P < 0.05). We conclude that with rapid urbanization, thermal intensity increased but relationships with vegetation suggest that options for mitigating urban warming in tropical climates may be available. The development of a new urban classification method, use of hotspot analysis, and the investigations of the UHI for an African city fill important research gaps for studies of urban thermal variation.

KW - Accuracy

KW - Classification

KW - Climate

KW - Land cover change

KW - Urban heat island

KW - Urbanization

KW - Vegetation

U2 - 10.1016/j.rse.2015.12.026

DO - 10.1016/j.rse.2015.12.026

M3 - Journal article

AN - SCOPUS:84952945839

VL - 175

SP - 14

EP - 31

JO - Remote Sensing of Environment

JF - Remote Sensing of Environment

SN - 0034-4257

ER -

ID: 153814898