پديد آورندگان :
سيابي، نگار دانشگاه فردوسي مشهد، مشهد، ايران , ثنايي نژاد، حسين دانشگاه فردوسي مشهد -هواشناسي، مشهد، ايران , قهرمان، بيژن دانشگاه فردوسي مشهد - آبياري و زهكشي، مشهد، ايران
كليدواژه :
TRMM , MM5 , الگوريتم تشابه , بارندگي
چكيده فارسي :
در مواجه با خطر سيل و يا خسارات ناشي از خشكسالي، برآورد ميزان بارش و الگوي تغييرات مكاني آن در يك منطقه گسترده، يكي از چالشهاي مهم در علوم هواشناسي، كشاورزي و هيدرولوژي است. اندازهگيري محلي بارندگي در مناطق دور افتاده به دليل هزينه زياد و محدوديتهاي عملياتي دشوار است. بدين علت در تحقيق حاضر بهمنظور تعيين الگوي مكاني-زماني بارش و امكان تلفيق دادهها، سه نوع مختلف از توليدات بارندگي شامل دادههاي ماهوارهاي (TRMM3B42)، دادههاي حاصل از مدل پيشبيني عددي جوّي (MM5) و اندازهگيريهاي زميني (نقشههاي حاصل از روش زمينآمار (KED))، مورد مطالعه قرار گرفتند. اين مطالعه در بازه زماني سالهاي 2000 تا 2010 ميلادي و براي منطقه شمال شرق ايران به صورت ماهانه، فصلي و سالانه انجام شد. دادهها با استفاده از شاخص اعتبارسنجي RMSE و الگوريتم تشابه با يكديگر مقايسه شدند. نتايج نشان دادند كه يكي از ضعفهاي روش زمينآمار نبودن اطلاعات كافي در ارتفاعات بالاي (1500) متر منطقه است. همچنين دقت تصاوير ماهوارهاي در فصلهاي گرم بيشتر بود؛ بطوريكه در ماه آگوست مقدار 7/1 RMSE = به دست آمد. در فصل زمستان (ماه ژانويه) بيشترين مقدار 02/14 RMSE = حاصل شد كه اين امر عملكرد ضعيف توليدات ماهوارهاي TRMM در مناطق پوشيده از يخ را نشان ميدهد. در اعتبارسنجي مدل MM5 بيشترين و كمترين مقدار RMSE به ترتيب 64/6 و 05/1 به دست آمد. علاوه بر اين مدل MM5 تا حدود زيادي در شبيهسازي مقادير بارندگي سالانه بيشبرآورد داشت. نتايج تحليلهاي مكاني- زماني الگوريتم تشابه نيز نشان دادند كه عملكرد مدل MM5 در مقياس ماهانه و فصلي و تعيين مناطق بارندگي بهتر از تصاوير ماهوارهاي TRMM بود. همچنين هر سه محصول الگوي مكاني بارندگي در مقياس فصلي و سالانه را بهخوبي نشان دادند.
چكيده لاتين :
. Introduction Precise estimates of rainfall in areas with complex geographical features in the field of climatology, agricultural meteorology and hydrology is very important. TRMM satellite is the first international effort to measure rainfall from space reliably (Smith, 2007). Another set of data that has become available in recent years is the output of numerical prediction models. Akter and Islam (2007) used MM5 model for weather prediction especially for rainfall in Bangladesh. They compared MM5 outputs with 3B42RT production of TRMM, rain gage and radar data and concluded that MM5 is reliable for rainfall prediction. Ochoa et al. (2014) compared 3B42 product of TRMM with simulated rainfall data by WRF model. Their results showed that TRMM data is more applicable for presenting spatial distribution of annual rainfall. In addition to the methods of statistical comparison, the similarity algorithm (Herzfeld & Merriam, 1990) was also used in this study. This algorithm compares a large number of data simultaneously, which can be in the form of maps or models output. In Iran, very few studies have compared the output of numerical prediction models with TRMM products of rainfall. The aim of this study was to evaluate and compare the rainfall data using similarity algorithm for different locations and time periods in order to fill a gap in the space-time data. 2. Material and Methods The study area consisted of North Khorasan, Khorasan Razavi and South Khorasan provinces in North East of Iran, which is geographically located between the longitudes of 55 to 61 degrees and latitudes of 30 to 38 degrees. The climate of the area is arid and semi arid. Total area is approximately 313000 square kilometers. In this study, three types of data were used. Ground-based observations used from synoptic and rain-gauge stations of Meteorology Organization. The seventh series products of TRMM 3B42 sensor containing three hours TRMM rainfall data with a spatial resolution of 0.25 degree were downloaded for free from the site of NASA. MM5 model outputs which were in the form of images with a spatial resolution of 0.5× 0.5 degrees for the period of 2000-2010 were also obtained from NASA and NOAA .In this study, KED as a geostatistical method was used to interpolate rainfall. For running geostatistics algorithms, GS + and ArcGIS software were used. Similarity algorithm was executed for each grid point map and the similarity values were derived. After standardization by calculating the similarity value for the entire study area, F network model for similar map was created. In similarity algorithm, closest values to zero indicate a good similarity between the input maps in a specific location and higher values indicate weaker similarity. Standardization algorithms, similarity and analytical software programming in MATLAB were performed for each grid point of the map. 3. Results and Discussion RMSE values for MM5 model were higher in the warm months. The highest RMSE values were obtained in late spring and early summer. This result proved that in the summer, rainfall was predicted less accurately than in the cold months in winter. RMSE values for TRMM showed a reverse pattern with MM5 model output. Maximum amount of RMSE for TRMM was obtained in January with 14 mm per month. The reason for this may be because microwave energy scattering from frozen ice on the ground. The scattering from rain or frozen rain in the atmosphere is similar. Similarity values in the area were scattered with uniform distribution that represents the least significant inter-annual variation is cold seasons. For the warm seasons, in the south and north of the area, similarity values vary from 1 to 2. Results showed that inter-annual variations of rainfall in warm seasons and in central areas is high. One of the reasons for these results can be errors in the observed data. By examining the time series of TRMM images using similarity algorithm, we found that in the cold season, the south zone of the study area had similarity values 0.05 to 0.1 with a uniform distribution of values. However, higher similarity values were obtained for the northern and central areas where the distribution of similarity values was not uniform. Due to these facts, it can be concluded that rainfall production of TRMM data was relatively good in the cold season in south and relatively week in north and central parts of the region. In the warm season the least amount of similarity could be seen in the northeast part of the study area. But generally, TRMM estimated rainfall fairly in the warm season. 4. Conclusion The validation results of MM5 model rainfall and TRMM monthly rainfall images showed that the model predicted rainfall amounts in the cold months better than in the warm months. However unlike the MM5 model, remote sensing images had the highest error in cold months. The reason was the presence of snow and ice on the ground in the cold months of winter. Considering inter-annual and seasonal changes, it became clear that there is much difference between inter-annual remote sensing image changes and the actual amounts of rainfall (KED). Nevertheless the model inter-annual changes were consistent with real data. Inter-annual changes of the model and the station data (KED) were higher in cold season. KED methods also retained spatial variability of rainfall as well as remote sensing data and model output. The estimates, especially above 1500 meters in the central regions, had low precision in the products. The results showed that in the absence of adequate rain gages in the region, MM5 output model and TRMM data could be used to fill the gaps.