In this paper we focus on a critical component of the city: its building stock, which holds much of its socio-economic activities. In our case, the lack of a comprehensive database about their features and its limitation to a surveyed subset lead us to adopt data-driven techniques to extend our knowledge to the near-city-scale. Neural networks and random forests are applied to identify the buildings' number of floors and construction periods' dependencies on a set of shape features: area, perimeter, and height along with the annual electricity consumption, relying a surveyed data in the city of Beirut. The predicted results are then compared with established scaling laws of urban forms, which constitutes a further consistency check and validation of our workflow.
Machine learning for buildings' characterization and power-law recovery of urban metrics.
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作者:Krayem Alaa, Yeretzian Aram, Faour Ghaleb, Najem Sara
| 期刊: | PLoS One | 影响因子: | 2.600 |
| 时间: | 2021 | 起止号: | 2021 Jan 28; 16(1):e0246096 |
| doi: | 10.1371/journal.pone.0246096 | ||
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