8,670
Views
22
CrossRef citations to date
0
Altmetric
Articles

Electricity consumption patterns within cities: application of a data-driven settlement characterization method

ORCID Icon, , , , , & ORCID Icon show all
Pages 119-135 | Received 30 Apr 2018, Accepted 28 Nov 2018, Published online: 21 Jan 2019

References

  • Aguilar, Manuel A., Antonio Fernández, Fernando J. Aguilar, Francesco Bianconi, and Andrés García Lorca. 2016. “Classification of Urban Areas From Geoeye-1 Imagery Through Texture Features Based on Histograms of Equivalent Patterns.” European Journal of Remote Sensing 49 (1): 93–120.
  • Amaral, Silvana, Gilberto Câmara, Ant^onio Miguel Vieira Monteiro, José Alberto Quintanilha, and Christopher D. Elvidge. 2005. “Estimating Population and Energy Consumption in Brazilian Amazonia Using Dmsp Night-time Satellite Data.” Computers, Environment and Urban Systems 29 (2): 179–195.
  • Anderson, Ben, Sharon Lin, Andy Newing, AbuBakr Bahaj, and Patrick James. 2017. “Electricity Consumption and Household Characteristics: Implications for Census-Taking in a Smart Metered Future.” Computers, Environment and Urban Systems 63: 58–67.
  • Cao, Xin, Jianmin Wang, Jin Chen, and Feng Shi. 2014. “Spatialization of Electricity Consumption of China Using Saturation-corrected dmsp-ols Data.” International Journal of Applied Earth Observation and Geoinformation 28: 193–200.
  • Carréon, Jesús Rosales, and Ernst Worrell. 2018. “Urban Energy Systems Within the Transition to Sustainable Development. A Research Agenda for Urban Metabolism.” Resources, Conservation and Recycling 132: 258–266.
  • Central Statistical Office, Lusaka, Zambia. 2014. Copperbelt Province Analytical Report – 2010 Census. https://www.zamstats.gov.zm/phocadownload/2010_Census/2010_Census_Analytical_Reports/CopperbeltProvinceAnalyticalReport-2010Census.pdf.
  • Cheriyadat, Anil, Eddie Bright, David Potere, and Budhendra Bhaduri. 2007. “Mapping of Settlements in High-resolution Satellite Imagery Using High Performance Computing.” GeoJournal 69 (1–2): 119–129.
  • Cooner, Austin J., Yang Shao, and James B. Campbell. 2016. “Detection of Urban Damage Using Remote Sensing and Machine Learning Algorithms: Revisiting the 2010 Haiti Earthquake.” Remote Sensing 8 (10): 868.
  • Cowen, D. J., and J. R. Jensen. 1998. “Extraction and Modeling of Urban Attributes Using Remote Sensing Technology.” In People and Pixels: Linking Remote Sensing and Social Science, 164–188. Washington, DC: The National Academies Press. National Research Council.
  • Elvidge, Christopher D., Kimberly E. Baugh, Mikhail Zhizhin, and Feng-Chi Hsu. 2013. “Why Viirs Data Are Superior to Dmsp for Mapping Nighttime Lights.” Proceedings of the Asia-Pacific Advanced Network 35: 62–69.
  • Elvidge, Christopher D., Kimberly Baugh, Mikhail Zhizhin, Feng Chi Hsu, and Tilottama Ghosh. 2017. “Viirs Night-time Lights.” International Journal of Remote Sensing 38 (21): 5860–5879.
  • Feige, Edgar L., and Ivica Urban. 2008. “Measuring Underground (Unobserved, Non-observed, Unrecorded) Economies in Transition Countries: Can We Trust gdp?” Journal of Comparative Economics 36 (2): 287–306.
  • Fogel, Itzhak, and Dov Sagi. 1989. “Gabor Filters as Texture Discriminator.” Biological Cybernetics 61 (2): 103–113.
  • Graesser, Jordan, Anil Cheriyadat, Ranga Raju Vatsavai, Varun Chandola, Jordan Long, and Eddie Bright. 2012. “Image Based Characterization of Formal and Informal Neighborhoods in an Urban Landscape.” IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 5 (4): 1164–1176.
  • Grubler, Arnulf, Xuemei Bai, Thomas Buettner, Shobhakar Dhakal, David J. Fisk, Toshiaki Ichinose, James E. Keirstead, G. Sammmer, David Satterthwaite, Niels B. Schulz, et al. 2012. “Chapter 18 – Urban Energy Systems.” In Global Energy Assessment – Toward a Sustainable Future, 1307–1400. Cambridge/Laxenburg: Cambridge University Press/International Institute for Applied Systems Analysis.
  • Hancke, Gerhard P., Silva Bruno de Carvalho e, and Gerhard P. Hancke Jr. 2013. “The Role of Advanced Sensing in Smart Cities.” Sensors 13 (1): 393–425.
  • He, Chunyang, Qun Ma, Zhifeng Liu, and Qiaofeng Zhang. 2014. “Modeling the Spatiotemporal Dynamics of Electric Power Consumption in Mainland China Using Saturation-corrected Dmsp/ols Nighttime Stable Light Data.” International Journal of Digital Earth 7 (12): 993–1014.
  • Hilbert, Martin. 2013. Big Data for Development: From Information-to Knowledge Societies , SSRN Scholarly Paper No. Id 2205145. Rochester, NY: Social Science Research Network.
  • Hinz, Stefan, and Albert Baumgartner. 2003. “Automatic Extraction of Urban Road Networks from Multi-View Aerial Imagery.” ISPRS Journal of Photogrammetry and Remote Sensing 58 (1–2): 83–98.
  • Howard, B., L. Parshall, J. Thompson, S. Hammer, J. Dickinson, and V. Modi. 2012. “Spatial Distribution of Urban Building Energy Consumption by end use.” Energy and Buildings 45: 141–151.
  • International Energy Agency. 2017a. “Key World Energy Statistics.” Accessed August 18, 2018. https://www.iea.org/publications/freepublications/publication/KeyWorld2017.pdf.
  • International Energy Agency. 2017b. “World Energy Outlook 2017 – Executive Summary.” Accessed August 18, 2018. https://www.iea.org/Textbase/npsum/weo2017SUM.pdf.
  • Jain, Ramesh, Rangachar Kasturi, and Brian G. Schunck. 1995. Machine Vision. Vol. 5. New York: McGraw-Hill.
  • Jaturapitpornchai, Raveerat, Teerasit Kasetkasem, Itsuo Kumazawa, Preesan Rakwatin, and Thitiporn Chanwimaluang. 2015. “A Level-based Method for Urban Mapping Using npp-Viirs Nighttime Light Data.” In Information and Communication Technology for Embedded systems (IC-ICTES), 2015 6th International Conference of IEEE, Hua-Hin, Thailand, March 22–24, 2015, 1–6.
  • Karuaihe, Selma. 2013. The State of the Economy: City of Johannesburg. Retrieved October 10, 2018, from http://www.hsrc.ac.za/en/review/hsrc-review-january-2015/state-of-economy-city-of-jhb.
  • Kiran Chand, T. R., K. V. S. Badarinath, C. D. Elvidge, and B. T. Tuttle. 2009. “Spatial Characterization of Electrical Power Consumption Patterns Over India Using Temporal dmsp-ols Night-time Satellite Data.” International Journal of Remote Sensing 30 (3): 647–661.
  • Kit, Oleksandr, Matthias Lüdeke, and Diana Reckien. 2012. “Texture-based Identification of Urban Slums in Hyderabad, India Using Remote Sensing Data.” Applied Geography 32 (2): 660–667.
  • Kottek, Markus, Jürgen Grieser, Christoph Beck, Bruno Rudolf, and Franz Rubel. 2006. “World map of the k¨Oppen-Geiger Climate Classification Updated.” Meteorologische Zeitschrift 15 (3): 259–263.
  • Letu, Husi, Masanao Hara, Hiroshi Yagi, Kazuhiro Naoki, Gegen Tana, Fumihiko Nishio, and Okada Shuhei. 2010. “Estimating Energy Consumption from Night-time dmps/ols Imagery After Correcting for Saturation Effects.” International Journal of Remote Sensing 31 (16): 4443–4458.
  • Liu, Xiuwen, and DeLiang Wang. 2002. “A Spectral Histogram Model for Texton Modeling and Texture Discrimination.” Vision Research 42 (23): 2617–2634.
  • Ma, Ting, Chenghu Zhou, Tao Pei, Susan Haynie, and Junfu Fan. 2014. “Responses of Suominpp Viirs-Derived Nighttime Lights to Socioeconomic Activity in China’s Cities.” Remote Sensing Letters 5 (2): 165–174.
  • Marmol, Urszula. 2011. “Use of Gabor Filters for Texture Classification of Airborne Images and Lidar Data.” Photogrammetry, Cartography and Remote Sensing 22: 325–336.
  • McLoughlin, Fintan, Aidan Duffy, and Michael Conlon. 2012. “Characterising Domestic Electricity Consumption Patterns by Dwelling and Occupant Socio-economic Variables: An Irish Case Study.” Energy and Buildings 48: 240–248.
  • Mellander, Charlotta, Jośe Lobo, Kevin Stolarick, and Zara Matheson. 2015. “Night-time Light Data: A Good Proxy Measure for Economic Activity?” PLoS one 10 (10): e0139779.
  • Patino, Jorge E., and Juan C. Duque. 2013. “A Review of Regional Science Applications of Satellite Remote Sensing in Urban Settings.” Computers, Environment and Urban Systems 37: 1–17.
  • Patlolla, Dilip R., Eddie A. Bright, Jeanette E. Weaver, and Anil M. Cheriyadat. 2012. “Accelerating Satellite Image Based Large-scale Settlement Detection with gpu.” In Proceedings of the 1st ACM SIGSPATIAL International Workshop on Analytics for Big Geospatial data, Redondo Beach, CA, USA, November 07–09, 2012. ACM, 43–51.
  • Pesaresi, Martino, Andrea Gerhardinger, and Fraņcois Kayitakire. 2008. “A Robust Built-up Area Presence Index by Anisotropic Rotation-invariant Textural Measure.” IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 1 (3): 180–192.
  • Rahman, Ashikur, Xue Liu, and Fanxin Kong. 2014. “A Survey on Geographic Load Balancing Based Data Center Power Management in the Smart Grid Environment.” IEEE Communications Surveys & Tutorials 16 (1): 214–233.
  • Ratti, Carlo, Nick Baker, and Koen Steemers. 2005. “Energy Consumption and Urban Texture.” Energy and Buildings 37 (7): 762–776.
  • Román, Miguel O., and Eleanor C. Stokes. 2015. “Holidays in Lights: Tracking Cultural Patterns in Demand for Energy Services.” Earth’s Future 3 (6): 182–205.
  • Ruiz, L. A., A. Fdez-Sarŕıa, and J. A. Recio. 2004. “Texture Feature Extraction for Classification of Remote Sensing Data Using Wavelet Decomposition: A Comparative Study.” In 20th ISPRS Congress, Istanbul, Turkey, July 12–23, 2004, 35, 1109–1114.
  • Seto, Karen C, Burak Güneralp, and Lucy R Hutyra. 2012. “Global Forecasts of Urban Expansion to 2030 and Direct Impacts on Biodiversity and Carbon Pools.” Proceedings of the National Academy of Sciences 109 (40): 16083–16088.
  • Shi, Kaifang, Bailang Yu, Yixiu Huang, Yingjie Hu, Bing Yin, Zuoqi Chen, Liujia Chen, and Jianping Wu. 2014. “Evaluating the Ability of npp-Viirs Nighttime Light Data to Estimate the Gross Domestic Product and the Electric Power Consumption of China at Multiple Scales: A Comparison with dmsp-ols Data.” Remote Sensing 6 (2): 1705–1724.
  • Small, Christopher. 2011. “The Human Habitat.” In Human Population. Ecological Studies (Analysis andSynthesis). Vol. 214., edited by R. Cincotta and L. Gorenflo, 27–46. Berlin: Springer.
  • Stan, Mihaela, Anca Popescu, Mihai Datcu, and Dan Alexandru Stoichescu. 2015. “An Assessment of Feature Extraction Methods for Sentinel-1 Images on Urban Areas.” In Geoscience and Remote Sensing Symposium (IGARSS), 2015 IEEE International, Milan, Italy, July 26–31, 2015. IEEE, 369–372.
  • Taubenböck, Hannes, and N. J. Kraff. 2014. “The Physical Face of Slums: a Structural Comparison of Slums in Mumbai, India, Based on Remotely Sensed Data.” Journal of Housing and the Built Environment 29 (1): 15–38.
  • Townsend, Alexander C., and David A. Bruce. 2010. “The use of Night-time Lights Satellite Imagery as a Measure of Australia’s Regional Electricity Consumption and Population Distribution.” International Journal of Remote Sensing 31 (16): 4459–4480.
  • United Nations. 2016. “The World’s Cities in 2016.” http://www.un.org/en/development/desa/population/publications/pdf/urbanization/the_worlds_cities_in_2016_data_booklet.pdf.
  • United Nations. 2018. “World Urbanization Prospects: The 2018 Revision.” Department of Economic and Social Affairs. Population Division, United Nations.
  • United Nations Centre for Human Settlements. 1984. “Energy Requirements and Utilization in Rural and Urban Lowincome Settlements.” http://mirror.unhabitat.org/pmss/getElectronicVersion.aspx?nr=1655&alt=1.
  • United Nations – Sustainable Development Goals. 2018. “Affordable and Clean Energy.” Accessed August 18, 2018. https://www.un.org/sustainabledevelopment/energy/.
  • Vijayaraj, Veeraraghavan, Anil M. Cheriyadat, Phil Sallee, Brian Colder, Ranga Raju Vatsavai, Eddie A. Bright, and Budhendra L. Bhaduri. 2008. “Overhead Image Statistics.” In Applied imagery pattern Recognition Workshop, 2008. AIPR’08. 37th IEEE, Washington, DC, USA, October 15-17, 2008. IEEE, 1–8.
  • Wang, Anqi, Peng Liu, and Chao Xie. 2016. “Urban Land use Classification From High-Resolution sar Images Based on Multi-Scale Markov Random Field.” In Geoinformatics, 2016 24th International Conference on. IEEE, Galway, Ireland, August 14–20, 2016, 1–4.
  • Welch, R. 1980. “Monitoring Urban Population and Energy Utilization Patterns from Satellite Data.” Remote Sensing of Environment 9 (1): 1–9.
  • Welch, R., and S. Zupko. 1980. “Urbanized Area Energy-utilization Patterns from Dmsp Data.” Photogrammetric Engineering and Remote Sensing 46 (2): 201–207.
  • The World Bank. 2018. “The World Bank in Yemen.” http://www.worldbank.org/en/country/yemen/overview.
  • Xie, Yanhua, and Qihao Weng. 2016. “Detecting Urban-scale Dynamics of Electricity Consumption at Chinese Cities Using Time-Series Dmsp-ols (Defense Meteorological Satellite Programoperational Linescan System) Nighttime Light Imageries.” Energy 100: 177–189.
  • Yuan, Jiangye, Deliang Wang, and Anil M. Cheriyadat. 2015. “Factorization-based Texture Segmentation.” IEEE Transactions on Image Processing 24 (11): 3488–3497.
  • Yuan, Jiangye, DeLiang Wang, and Rongxing Li. 2014. “Remote Sensing Image Segmentation by Combining Spectral and Texture Features.” IEEE Transactions on Geoscience and Remote Sensing 52 (1): 16–24.
  • Zhao, Shuqing, Liangjun Da, Zhiyao Tang, Hejun Fang, Kun Song, and Jingyun Fang. 2006. “Ecological Consequences of Rapid Urban Expansion: Shanghai, China.” Frontiers in Ecology and the Environment 4 (7): 341–346.
  • Zheng, Menglian, Christoph J Meinrenken, and Klaus S. Lackner. 2014. “Agent-based Model for Electricity Consumption and Storage to Evaluate Economic Viability of Tariff Arbitrage for Residential Sector Demand Response.” Applied Energy 126: 297–306.
  • Zhong, Ping, and Runsheng Wang. 2007. “A Multiple Conditional Random Fields Ensemble Model for Urban Area Detection in Remote Sensing Optical Images.” IEEE Transactions on Geoscience and Remote Sensing 45 (12): 3978–3988.
  • Zhu, Dan, Shu Tao, Rong Wang, Huizhong Shen, Ye Huang, Guofeng Shen, Bin Wang, Wei Li, Yanyan Zhang, Han Chen, et al. 2013. “Temporal and Spatial Trends of Residential Energy Consumption and air Pollutant Emissions in China.” Applied Energy 106: 17–24.