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Models to improve winter minimum surface temperature forecasts, Delhi, India

机译:改善冬季最低地表温度预报的模型,印度德里

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Accurate forecasts of minimum surface temperature during winter help in the prediction of cold-wave conditions over northwest India. Statistical models for forecasting the minimum surface temperature at Delhi during winter (December, January and February) are developed by using the classical method and the perfect prognostic method (PPM), and the results are compared. Surface and upper air data are used for the classical method, whereas for PPM additional reanalysis data from the National Center of Environmental Prediction (NCEP) US are incorporated in the model development. Minimum surface temperature forecast models are developed by using data for the winter period 1985–89. The models are validated using an independent dataset (winter 1994–96). It is seen that by applying PPM, rather than the classical method, the model's forecast accuracy is improved by about 10% (correct to within ±2 °C).
机译:准确预测冬季最低表面温度有助于预测印度西北部的冷浪情况。利用经典方法和完美预测方法(PPM),建立了预测冬季(十二月,一月和二月)德里最低表面温度的统计模型,并对结果进行了比较。地面和高空数据用于经典方法,而对于PPM,来自美国国家环境预测中心(NCEP)的其他再分析数据已纳入模型开发中。最低表面温度预报模型是利用1985-89年冬季的数据开发的。使用独立的数据集对模型进行了验证(1994-96年冬季)。可以看出,通过应用PPM而不是经典方法,模型的预测准确性提高了约10%(校正至±2°C以内)。

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