Impact of High Resolution Sst Data on Regional Weather Forecasts
نویسندگان
چکیده
1. INTRODUCTION Past studies have shown that the use of coarse resolution SST products such as from the real-time global (RTG) SST analysis[1] or other coarse resolution once-a-day products do not properly portray the diurnal variability of fluxes of heat and moisture from the ocean that drive the formation of low level clouds and precipitation over the ocean. For example, the use of high resolution MODIS SST composite [2] to initialize the Advanced Research Weather Research and Forecast (WRF) (ARW) [3] has been shown to improve the prediction of sensible weather parameters in coastal regions [4][5}. In an extend study, [6] compared the MODIS SST composite product to the RTG SST analysis and evaluated forecast differences for a 6 month period from March through August 2007 over the Florida coastal regions. In a comparison to buoy data, they found that that the MODIS SST composites reduced the bias and standard deviation over that of the RTG data. These improvements led to significant changes in the initial and forecasted heat fluxes and the resulting surface temperature fields, wind patterns, and cloud distributions. They also showed that the MODIS composite SST product, produced for the Terra and Aqua satellite overpass times, captured a component of the diurnal cycle in SSTs not represented in the RTG or other one-a-day SST analyses. Failure to properly incorporate these effects in the WRF initialization cycle led to temperature biases in the resulting short term forecasts. The forecast impact was limited in some situations however, due to composite product inaccuracies brought about by data latency during periods of long-term cloud cover. This paper focuses on the forecast impact of an enhanced MODIS / AMSR-E composite SST product designed to reduce inaccuracies due data latency in the MODIS only composite product. Aqua satellites, was developed by [2]. This compositing technique generated four maps of SST data per day using data from the previous days' satellite overpasses to augment and fill in for clouds and missing data in the current day's MODIS coverage. The original approach calculated high-resolution (1km) SST composites based on finding a minimum of three
منابع مشابه
IMPACT OF HIGH RESOLUTION SST DATA ON REGIONAL WEATHER FORECASTS Gary J. Jedlovec, NASA Marshall Space Flight Center Jonathon Case, ENSCO
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