Buildings and Cities: Difference between revisions

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Machine learning provides critical tools for supporting both building managers and policy makers in their efforts to reduce GHG emissions. At the level of building management, ML can help select strategies that are tailored to individual buildings, and can also contribute to implementing those strategies via smart control systems.<ref name=":0" /> At the level of urban planning, ML can be used to gather and make sense of data to inform policy makers. In addition, ML can help cities as a whole to transition to low-carbon futures.<ref name=":0" />
Machine learning provides critical tools for supporting both building managers and policy makers in their efforts to reduce GHG emissions. At the level of building management, ML can help select strategies that are tailored to individual buildings, and can also contribute to implementing those strategies via smart control systems.<ref name=":0" /> At the level of urban planning, ML can be used to gather and make sense of data to inform policy makers. In addition, ML can help cities as a whole to transition to low-carbon futures.<ref name=":0" />

== Background readings ==
== Machine Learning Application Areas ==

== Background Readings ==


=== Relevant IPCC chapters ===
=== Relevant IPCC chapters ===
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* [https://www.theguardian.com/environment/2019/aug/29/the-air-conditioning-trap-how-cold-air-is-heating-the-world The air conditioning trap: how cold air is heating the world, The Guardian ‘Long Read’]
* [https://www.theguardian.com/environment/2019/aug/29/the-air-conditioning-trap-how-cold-air-is-heating-the-world The air conditioning trap: how cold air is heating the world, The Guardian ‘Long Read’]

== Online Courses and Course Materials ==


==Community==
==Community==
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===Major societies and organizations===
===Major societies and organizations===
==Libraries and tools==
==Libraries and Tools==
==Data==
==Data==


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* [https://land.copernicus.eu/local/urban-atlas The Urban Atlas of the European Union agency Copernicus] includes information on urban land use types.
* [https://land.copernicus.eu/local/urban-atlas The Urban Atlas of the European Union agency Copernicus] includes information on urban land use types.
* [http://episcope.eu/building-typology/overview The TABULA project] combines data on building types across all of Europe.
* [http://episcope.eu/building-typology/overview The TABULA project] combines data on building types across all of Europe.

==Selected problems==


==References==
==References==

Revision as of 18:16, 31 August 2020

A schematic of selected opportunities to reduce greenhouse emissions from buildings and cities using machine learning. From "Tackling Climate Change with Machine Learning."[1]

Buildings offer some of the lowest-hanging fruit when it comes to reducing GHG emissions. While the energy consumed in buildings is responsible for a quarter of global energy-related emissions,[2] a combination of easy-to-implement fixes and state-of-the-art strategies could reduce emissions for existing buildings by up to 90%.[3] It is possible today for buildings to consume almost no energy.[4] Many of these energy efficiency measures actually result in overall cost savings[5] and simultaneously yield other benefits, such as cleaner air for occupants. This potential can be achieved while maintaining the services that buildings provide – and even while extending them to more people, as climate change will necessitate. For example, with the changing climate, more people will need access to air conditioning in regions where deadly heat waves will become common.[6][7]

Two major challenges are heterogeneity and inertia. Buildings vary according to age, construction, usage, and ownership, so optimal strategies vary widely depending on the context. For instance, buildings with access to cheap, low-carbon electricity may have less need for expensive features such as intelligent light bulbs. Buildings also have very long lifespans; thus, it is necessary both to create new, energy-efficient buildings, and to retrofit old buildings to be as efficient as possible.[8] Urban planning and public policy can play a major role in reducing emissions by providing infrastructure, financial incentives, or energy standards for buildings.

Machine learning provides critical tools for supporting both building managers and policy makers in their efforts to reduce GHG emissions. At the level of building management, ML can help select strategies that are tailored to individual buildings, and can also contribute to implementing those strategies via smart control systems.[1] At the level of urban planning, ML can be used to gather and make sense of data to inform policy makers. In addition, ML can help cities as a whole to transition to low-carbon futures.[1]

Machine Learning Application Areas

Background Readings

Relevant IPCC chapters

Academic perspectives

Perspectives in popular media

Online Courses and Course Materials

Community

Major conferences

Major journals

Major societies and organizations

Libraries and Tools

Data

Building energy use

City metabolism

The "metabolism" of a city includes the electricity used, waste generated, and GHG emitted.

Urban Land Use, Infrastructure Data

References

  1. 1.0 1.1 1.2 "Tackling Climate Change with Machine Learning". Cite journal requires |journal= (help)
  2. IPCC. Global warming of 1.5°C. An IPCC special report on the impacts of global warming of 1.5°C above pre-industrial levels and related global greenhouse gas emission pathways, in the context of strengthening the global response to the threat of climate change, sustainable development, and efforts to eradicate poverty [V. Masson-Delmotte, P. Zhai, H. O. Portner, D. Roberts, J. Skea, P.R. Shukla, A. Pirani, Y. Chen, S. Connors, ¨ M. Gomis, E. Lonnoy, J. B. R. Matthews, W. Moufouma-Okia, C. Pean, R. Pidcock, N. Reay, M. Tignor, T. ´ Waterfield, X. Zhou (eds.)]. 2018.
  3. Urge-Vorsatz, Diana; Petrichenko, Ksenia; Staniec, Maja; Eom, Jiyong (2013-06). "Energy use in buildings in a long-term perspective". Current Opinion in Environmental Sustainability. 5 (2): 141–151. doi:10.1016/j.cosust.2013.05.004. ISSN 1877-3435. Check date values in: |date= (help)
  4. Olsthoorn, Mark; Schleich, Joachim; Faure, Corinne (2019-06). "Exploring the diffusion of low-energy houses: An empirical study in the European Union". Energy Policy. 129: 1382–1393. doi:10.1016/j.enpol.2019.03.043. ISSN 0301-4215. Check date values in: |date= (help)
  5. Stephenson, Janet; Barton, Barry; Carrington, Gerry; Gnoth, Daniel; Lawson, Rob; Thorsnes, Paul (2010-10). "Energy cultures: A framework for understanding energy behaviours". Energy Policy. 38 (10): 6120–6129. doi:10.1016/j.enpol.2010.05.069. ISSN 0301-4215. Check date values in: |date= (help)
  6. Mora, Camilo; Counsell, Chelsie W.W.; Bielecki, Coral R.; Louis, Leo V (2017-11). "Twenty-Seven Ways a Heat Wave Can Kill You:". Circulation: Cardiovascular Quality and Outcomes. 10 (11). doi:10.1161/circoutcomes.117.004233. ISSN 1941-7713. Check date values in: |date= (help)
  7. Mora, Camilo; Dousset, Bénédicte; Caldwell, Iain R.; Powell, Farrah E.; Geronimo, Rollan C.; Bielecki, Coral R.; Counsell, Chelsie W. W.; Dietrich, Bonnie S.; Johnston, Emily T.; Louis, Leo V.; Lucas, Matthew P. (2017-06-19). "Global risk of deadly heat". Nature Climate Change. 7 (7): 501–506. doi:10.1038/nclimate3322. ISSN 1758-678X.
  8. Creutzig, Felix; Agoston, Peter; Minx, Jan C.; Canadell, Josep G.; Andrew, Robbie M.; Quéré, Corinne Le; Peters, Glen P.; Sharifi, Ayyoob; Yamagata, Yoshiki; Dhakal, Shobhakar (2016-11-24). "Urban infrastructure choices structure climate solutions". Nature Climate Change. 6 (12): 1054–1056. doi:10.1038/nclimate3169. ISSN 1758-678X.