Heat wave hazard classification and risk assessment using artificial intelligence fuzzy logic

被引:0
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作者
Iphigenia Keramitsoglou
Chris T. Kiranoudis
Bino Maiheu
Koen De Ridder
Ioannis A. Daglis
Paolo Manunta
Marc Paganini
机构
[1] National Observatory of Athens,Institute for Astronomy, Astrophysics, Space Applications and Remote Sensing
[2] National Technical University of Athens,School of Chemical Engineering
[3] VITO Flemish Institute for Technological Research,European Space Agency
[4] ESRIN,undefined
来源
关键词
Heat wave; Fuzzy logic; Satellite images; Urban climate;
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学科分类号
摘要
The average summer temperatures as well as the frequency and intensity of hot days and heat waves are expected to increase due to climate change. Motivated by this consequence, we propose a methodology to evaluate the monthly heat wave hazard and risk and its spatial distribution within large cities. A simple urban climate model with assimilated satellite-derived land surface temperature images was used to generate a historic database of urban air temperature fields. Heat wave hazard was then estimated from the analysis of these hourly air temperatures distributed at a 1-km grid over Athens, Greece, by identifying the areas that are more likely to suffer higher temperatures in the case of a heat wave event. Innovation lies in the artificial intelligence fuzzy logic model that was used to classify the heat waves from mild to extreme by taking into consideration their duration, intensity and time of occurrence. The monthly hazard was subsequently estimated as the cumulative effect from the individual heat waves that occurred at each grid cell during a month. Finally, monthly heat wave risk maps were produced integrating geospatial information on the population vulnerability to heat waves calculated from socio-economic variables.
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页码:8239 / 8258
页数:19
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