Litcius/Paper detail

Remote sensing and AI for building climate adaptation applications

Beril Sırmaçek, Ricardo Vinuesa

2022Results in Engineering53 citationsDOIOpen Access PDF

Abstract

Urban areas are not only one of the biggest contributors to climate change, but also they are one of the most vulnerable areas with high populations who would together experience the negative impacts. In this paper, we address some of the opportunities brought by satellite remote sensing imaging and artificial intelligence (AI) in order to measure climate adaptation of cities automatically. We propose a framework combining AI and simulation which may be useful for extracting indicators from remote-sensing images and may help with predictive estimation of future states of these climate-adaptation-related indicators. When such models become more robust and used in real-life applications, they may help decision makers and early responders to choose the best actions to sustain the well-being of society, natural resources and biodiversity. We underline that this is an open field and an on-going area of research for many scientists, therefore we offer an in-depth discussion on the challenges and limitations of data-driven methods and the predictive estimation models in general.

Topics & Concepts

Adaptation (eye)Field (mathematics)Computer scienceClimate changeEstimationData scienceRemote sensingEnvironmental resource managementSatellite imageryGeographyEnvironmental scienceEcologyEngineeringSystems engineeringBiologyPhysicsOpticsMathematicsPure mathematicsUrban Heat Island MitigationLand Use and Ecosystem ServicesImpact of Light on Environment and Health