The evaluation of weekly extended range river basin rainfall forecasts and a new bias correction mechanism for flood management in India

P. Guhathakurta, A. Prasad, Rajib Chattyopadhyay, Neha Sangwan, Nilesh Wagh, D. Pattanayak, D. Pai, M. Mohapatra
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Abstract

Operational extended range forecasts are being disseminated once every week by the India Meteorological Department (IMD) for several sectorial applications. These forecasts show a reduction in amplitude and variance as a function of lead-time. Such reductions in variance can be due to several physical factors: inherent forecast model bias, a problem relating to initial conditions, leaddependent statistical biases, etc. A week-by-week analysis shows that such biases are not systematic. Rainfall forecasts are underestimated in some regions, while others overestimate rainfall amplitude. To correct the bias in the extended range weekly averaged forecast, a statistical post-processing method (normal ratio correction) is proposed to make the outlook more valuable at a longer lead-time. The correction method is based on the World Meteorological Organization (WMO) technical guidance on rainfall estimation and is also shown to be useful for rainfall forecasts. In this analysis, we evaluate the extended range forecast skill at the river sub-basin-scale and show that there are several river sub-basins over the central Indian region where the correction has improved the model forecast in the one to two-week range. Although this analysis was tailored toward making the river basins and sub-basins of India more readily realizable for flood forecasters, it can be used for any administrative boundaries such as block, district, or state-level requirements.
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印度每周大范围流域降水预报的评价及洪水管理的新偏差校正机制
印度气象部门(IMD)每周为几个部门的应用发布一次业务扩展范围预报。这些预测显示振幅和方差随交货时间的变化而减小。这种方差的减少可能是由于几个物理因素:固有的预测模型偏差,与初始条件有关的问题,依赖于铅的统计偏差等。每周的分析表明,这种偏见并不是系统性的。一些地区的降雨预报被低估,而另一些地区则高估了降雨幅度。为了纠正扩展范围周平均预测的偏差,提出了一种统计后处理方法(正态比校正),使展望在较长的提前期更有价值。校正方法是根据世界气象组织(WMO)的雨量估计技术指引,并已证明对雨量预报有用。在这一分析中,我们评估了河流子流域尺度上的扩展范围预测技能,并表明在印度中部地区有几个河流子流域,在一到两周的范围内,修正改善了模型预测。虽然这一分析是为了使印度的河流流域和子流域更容易实现洪水预报员,但它可以用于任何行政边界,如街区、地区或州一级的要求。
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