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Urban Heat Island Effect, Climate Change, and Potential Adaptations in the New York City Metropolitan Region with Case Studies on Newark, NJ and Camden, NJ Cynthia Rosenzweig, NASA/Goddard Institute for Space Studies William D. Solecki, Dept. of Geography, Hunter College – City Univ. of New York Lily Parshall, Columbia University Center for Climate Systems Research Richard Goldberg, NASA/Goddard Institute for Space Studies Mark Chopping, Montclair State University Prepared for presentation at the Open Meeting of the Global Environmental Change Research Community, Montreal, Canada, 16-18 October, 2003. Changes in local, regional, and global temperatures associated with global climate change will both directly and indirectly impact energy transfer in cities and thus the urban heat island effect. It is possible that a synergistic relationship will develop between the urban heat island effect and global climate change in the 21st Century. In the New York Metropolitan Area, analysis of National Climatic Data Center data at 23 weather stations revealed a warming trend of 0.109°C per decade. This corresponds to a total warming of approximately 1.0°C over the 20th Century. During the first quarter of the 20th Century, an urban heat island of at least 1.0°C is apparent in the data (Sastre, 2003). Based on mesoscale work done by Gedzelman et al., the magnitude of the heat island effect averaged about 4°C in the summer and autumn and 3°C in the winter and spring during 1997 – 1998 (Gedzelman et al., 2003). The magnitude of the urban heat island effect varies both spatially and temporally. In general, the heat island effect is maximized on clear days, when incoming solar radiation is high and nighttime cooling proceeds most slowly. In the Newark area, Landsat Thematic Mapper 5 images acquired for June 2, 1996 showed that surface temperatures in Newark were on average 5.9°C higher than surface temperatures in surrounding areas and that surface albedo plays a significant role in urban-suburban surface heating differences (Figure 1). In the Camden area, Landsat Thematic Mapper 7 images acquired for September 23, 1999 and August 14, 1999 showed that surface temperatures could be correlated to land-use, with the hottest temperatures recorded for urban areas and barren land and the coolest temperatures recorded for water and wetlands. Further analysis showed that as population density decreases, average surface temperature decreases. Under favorable meteorological conditions including high solar radiation, low windspeed and low cloud cover, elevated surface temperatures translate into elevated air temperatures. Analysis of weather station data for Newark, NJ and Camden, NJ for the period 1950 – 1999 showed an urban-suburban mean temperature difference of 1.6°C for the Newark region and 0.7°C for the Camden region. The difference in urban-suburban minimum temperature, taken as the magnitude of the urban heat island effect, was significantly greater: 3.0°C for Newark and 2.2°C for Camden.1 For Newark, a peak in urban heat island magnitude was seen in October; for Camden, the peak was seen in August. Most of the variability in urban-suburban temperature differences was explained by monthly variations in windspeed and cloud cover. In agreement with previous studies, lower-than average windspeeds and lowerthan average cloud cover resulted in above average urban heat island intensity for both Newark and Camden (Figure 2). Preliminary analysis of global climate model (GCM) and regional climate model (RCM) output showed that while cloud covers are expected to slightly increase, windspeeds are expected to slightly decrease in the 21st Century (Figures 3a & 3b). The urban heat island may not be further enhanced due to the balance between decreased windspeed and increased cloud cover. However, current trends scenarios as well as GCMs project significant increases in regional temperatures over the 21st Century (Figure 4). Downscaling the GISS GCM using the Mesoscale Model 5 (MM5) developed by the National Corporation for Atmospheric Research projects a warming of up to 2.5°C for the 2050s in New Jersey. Warming temperatures in the highly urbanized New York Metropolitan Region are likely to amplify current energy, air quality, and health problems. The spatial area over which “urban-heat-island-like” conditions are felt is likely to expand and the adverse impacts of the interactions between the urban heat island effect and local air pollution are likely to be felt with greater frequency and intensity. 1 For both the Newark and Camden analyses, the absence of a working weather station within the city proper required using the nearest airport station as a proxy. In the case of Newark, the Newark International Airport located on the southern edge of the city was used. In the case of Camden, the Philadelphia airport was used. 2 References Gedzelman, S.D., S. Austin, R. Cermak, N. Stefano, S. Partridge, S. Quesenberry, and D.A. Robinson (2003) Mesoscale aspects of the Urban Heat Island around New York City. Theoretical and Applied Climatology. 75 (1-2), 29-42. Sastre, M.P. (2003) The History of the Urban Heat Island Effect in New York City. Master’s Thesis. Columbia University Faculty of Architecture and Planning. Figure 1. Thermal map of summer (June 2, 1996) surface temperatures. White areas represent hottest surface temperatures. Black areas, for the most part, represent areas covered by clouds. Regions 1-2: suburban; 3-4: low-rise urban; 5-6: medium-rise urban; 7: high-rise urban. Regions 3-6 are within the city of Newark. 3 80 5.0 70 4.0 60 3.0 50 2.0 40 1 2 3 4 5 6 7 8 9 10 11 Sky cover (%) Temperature difference (deg C) and wind speed (m/s) 6.0 12 Month Temperature differences Wind speed Daytime sky cover Night-time sky cover Figure 2. Urban-suburban temperature differences, windspeed, and sky cover for Newark, NJ area. Monthly averages for the period 1984 - 1995 Wind Speed Change (%) Cloud Cover Change (%) 10 10 5 5 0 0 -5 -5 2020s 2050s GSA2 2080s 2020s GSB2 Figure 3a. GISS GCM estimations of potential windspeed changes for three scenarios for Newark, NJ area. 2050s GSA2 GSB2 2080s Figure 3b. GISS GCM estimations of potential cloud cover changes for three scenarios for Newark, NJ area. 4 20.0 19.0 18.0 17.0 °C 16.0 15.0 14.0 13.0 12.0 11.0 10.0 1950 1960 1970 1980 1990 2000 2010 2020 2030 2040 2050 2060 2070 2080 Year Temp C calculated T GSGG GSGS CCGG CCGS HCGG HCGS Figure 4. Currents trends and projected temperature change scenarios for Camden, NJ area. Calculated T shows the current trends scenario. GSGG shows the GISS GCM scenario with greenhouse gas forcing and GSGS shows the GISS GCM scenario with greenhouse gas plus sulfate aerosol forcing (GSGS). GISS GCM simulations use observed greenhouse gases until 1990 and compounded 0.5% increases in CO2 thereafter. CCGG and CCGS scenarios were generated using the Canadian Center GCM. HCGG and HCGS scenarios were generated using the Hadley Center model. 5