5 Matching Annotations
  1. Mar 2023
      • Key Finding
        • This paper uses machine learning to overcome unavailable carbon footprints inventories of the Global South
        • which are usually hampered by:
          • lack of local urban emissions data,
          • reduced climate footprint, and
          • shortages in climate finance.
      • using these algorithms, the author estimates 24,110 cities' carbon footprints of the Global South

        • to provide a comprehensive analysis on a planetary scale,
        • while allocating responsibilities according to the cities' regions and sizes.
      • author

        • Mohammed Hachaichi
    1. Highlights•Downscaling seven of nine planetary boundaries indicators to the city scale-level.•Extended-Environmental Input-Output analysis is used to estimate cities’ footprints.•The Planetary Boundaries framework is a controlling tool for cities footprints.•City-level carbon footprint is higher than the national-level by 17%.
      • Highlights
        • Downscaling seven of nine = planetary boundaries indicators
          • to the city scale-level
          • for 62 major cities in the = Middle East North Africa (MENA) region
        • Extended-Environmental Input-Output analysis is used to estimate cities’ footprints.
        • The Planetary Boundaries framework is a controlling tool for cities footprints.
        • City-level carbon footprint is higher than the national-level by 17%.
      • Title
        • Downscaling the planetary boundaries (Pbs) framework to city scale-level: De-risking MENA region’s environment future
      • Author
        • Mohamed Hachaichi
  2. Feb 2023
    1. Water-Food-Energy Nexus in Global Cities: Addressing Complex Urban Interdependencies
      • Title = Water-Food-Energy Nexus i
      • n Global Cities:
      • Addressing Complex Urban Interdependencies

      • Abstract

        • Understanding how water, food, and energy interact in the form of the water-food-energy (WFE) nexus is essential for sustainable development which advocates enhancing human well-being and poverty reduction.

        • The application of the WFE nexus has seen diverse approaches to its implementation in cities across the globe.

        • There is a need to share knowledge in order to improve urban information exchange which focuses on the WFE nexus’ application and impacts on the United Nations (UN) Sustainable Development Goals.
        • In this study,
          • Natural Language Processing (NLP) and
          • Affinity Propagation Algorithm (APA)
        • are employed to explore and assess the application of the WFE nexus:
          • first on a regional basis
          • second on the city level
        • The results show that after the exhaustive search of a database containing:
          • 32,736 case studies focusing on
          • 2,233 cities,
        • African and Latin American cities:
        • have the most potential to encounter resource shortages (i.e., WFE limitation)
          • are systematically underrepresented in literature
          • Southern hemisphere cities can benefit from knowledge transfer because of their limited urban intelligence programmes.
        • Hence, with regional and topic bias,
        • there is a potential for more mutual learning links
        • between cities that can increase WFE nexus policy exchange
        • between the Northern and Southern hemispheres
        • through the bottom-up case-study knowledge.