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Sensitivity of Mesoscale Model Forecast During a Satellite Launch to Different Cumulus Parameterization Schemes in MM5

机译:卫星发射过程中中尺度模型预测对MM5中不同积云参数化方案的敏感性

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The identification of the model discrepancy and skill is crucial when a forecast is issued. The characterization of the model errors for different cumulus parameterization schemes (CPSs) provides more confidence on the model outputs and qualifies which CPSs are to be used for better forecasts. Cases of good/bad skill scores can be isolated and clustered into weather systems to identify the atmospheric structures that cause difficulties to the forecasts. The objective of this work is to study the sensitivity of weather forecast, produced using the PSU-NCAR Mesoscale Model version 5 (MM5) during the launch of an Indian satellite on 5th May, 2005, to the way in which convective processes are parameterized in the model. The real-time MM5 simulations were made for providing the weather conditions near the launch station Sriharikota (SHAR). A total of 10 simulations (each of 48 h) for the period 25th April to 04th May, 2005 over the Indian region and surrounding oceans were made using different CPSs. The 24 h and 48 h model predicted wind, temperature and moisture fields for different CPSs, namely the Kuo, Grell, Kain-Fritsch and Betts-Miller, are statistically evaluated by calculating parameters such as mean bias, root-mean-squares error (RMSE), and correlation coefficients by comparison with radiosonde observation. The performance of the different CPSs, in simulating the area of rainfall is evaluated by calculating bias scores (BSs) and equitable threat scores (ETSs). In order to compute BSs and ETSs the model predicted rainfall is compared with Tropical Rainfall Measuring Mission (TRMM) observed rainfall. It was observed that model simulated wind and temperature fields by all the CPSs are in reasonable agreement with that of radiosonde observation. The RMSE of wind speed, temperature and relative humidity do not show significant differences among the four CPSs. Temperature and relative humidity were overestimated by all the CPSs, while wind speed is underestimated, except in the upper levels. The model predicted moisture fields by all CPSs show substantial disagreement when compared with observation. Grell scheme outperforms the other CPSs in simulating wind speed, temperature and relative humidity, particularly in the upper levels, which implies that representing entrainment/detrainment in the cloud column may not necessarily be a beneficial assumption in tropical atmospheres. It is observed that MM5 overestimates the area of light precipitation, while the area of heavy precipitation is underestimated. The least predictive skill shown by Kuo for light and moderate precipitation asserts that this scheme is more suitable for larger grid scale (>30 km). In the predictive skill for the area of light precipitation the Betts-Miller scheme has a clear edge over the other CPSs. The evaluation of the MM5 model for different CPSs conducted during this study is only for a particular synoptic situation. More detailed studies however, are required to assess the forecast skill of the CPSs for different synoptic situations.
机译:在发布预测时,模型差异和技能的识别至关重要。针对不同的累积参数化方案(CPS)进行模型误差的表征,可以为模型输出提供更多的置信度,并可以确定哪些CPS将用于更好的预测。可以将技能得分高/低的情况隔离开来,并汇总到天气系统中,以识别对预测造成困难的大气结构。这项工作的目的是研究2005年5月5日发射印度卫星期间使用PSU-NCAR中尺度模型5(MM5)产生的天气预报对对流过程进行参数化的方式的敏感性该模型。进行了实时MM5仿真,以提供发射站Sriharikota(SHAR)附近的天气情况。使用不同的CPS对2005年4月25日至5月4日在印度地区和周围海洋进行了总共10次模拟(每次48小时)。通过计算诸如平均偏差,均方根误差等参数,对不同CPS(即Kuo,Grell,Kain-Fritsch和Betts-Miller)的24 h和48 h模型预测的风,温度和湿度场进行统计评估RMSE),以及与探空仪观测值进行比较的相关系数。通过计算偏差评分(BSs)和公平威胁评分(ETSs),可以评估不同CPS在模拟降雨区域中的性能。为了计算BS和ETS,将模型的预测降雨量与热带降雨测量团(TRMM)观测到的降雨量进行比较。观察到,所有CPS对风和温度场的模拟模型与无线电探空仪的观测结果是合理一致的。四个CPS之间的风速,温度和相对湿度的均方根误差(RMSE)没有显示显着差异。所有CPS均高估了温度和相对湿度,而低风速则低估了风速,除了较高的水平。与观察相比,该模型预测的所有CPS的水分场均显示出明显的分歧。在模拟风速,温度和相对湿度(特别是在高层)时,Grell方案优于其他CPS,这意味着在云层中表示夹带/夹带不一定是热带大气中的有益假设。可以看到,MM5高估了轻度降水的面积,而低估了重度降水的面积。 Kuo显示的对中小降水的最少预测技能断言,该方案更适合较大的网格规模(> 30 km)。在光降水区域的预测技能上,贝茨-米勒方案比其他CPS具有明显优势。在此研究过程中,针对不同CPS对MM5模型进行的评估仅针对特定的天气情况。但是,需要更详细的研究来评估针对不同天气情况的CPS的预测技能。

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