Department of Civil Engineering, Indian Institute of Technology Palakkad, Near Gramalakshmi Mudralayam, Malampuzha Road, Kanjikode, Palakkad, 678623, Kerala, India.
Environ Monit Assess. 2024 Feb 19;196(3):284. doi: 10.1007/s10661-024-12418-3.
Accurate and reliable air temperature forecasts are necessary for predicting and responding to thermal disasters such as heat strokes. Forecasts from Numerical Weather Prediction (NWP) models contain biases which require post-processing. Studies assessing the skill of probabilistic post-processing techniques (PPTs) on temperature forecasts in India are lacking. This study aims to evaluate probabilistic post-processing approaches such as Nonhomogeneous Gaussian Regression (NGR) and Bayesian Model Averaging (BMA) for improving daily temperature forecasts from two NWP models, namely, the European Centre for Medium Range Weather Forecasts (ECMWF) and the Global Ensemble Forecast System (GEFS), across the Indian subcontinent. Apart from that, the effect of probabilistic PPT on heatwave prediction skills across India is also evaluated. Results show that probabilistic PPT comprehensively outperform traditional approaches in forecasting temperatures across India at all lead times. In the Himalayan regions where the forecast skill of raw forecasts is low, the probabilistic techniques are not able to produce skillful forecasts even though they perform much better than traditional techniques. The NGR method is found to be the best performing PPT across the Indian region. Post-processing Tmax forecasts using the NGR approach was found to considerably improve the heatwave prediction skill across highly heatwave prone regions in India. The outcomes of this study will be helpful in setting up improved heatwave prediction and early warning systems in India.
准确可靠的气温预报对于预测和应对热灾害(如中暑)至关重要。数值天气预报 (NWP) 模型的预报存在偏差,需要进行后处理。然而,目前缺乏评估概率后处理技术 (PPT) 在印度温度预报中的技能的研究。本研究旨在评估概率后处理方法,如非均匀高斯回归 (NGR) 和贝叶斯模型平均 (BMA),以改进来自两个 NWP 模型(即欧洲中期天气预报中心 (ECMWF) 和全球集合预报系统 (GEFS))的印度次大陆逐日温度预报。此外,还评估了概率 PPT 对印度各地热浪预测技能的影响。结果表明,概率 PPT 在所有预报时效下都全面优于传统方法,在印度各地的温度预报中表现出色。在原始预报技巧较低的喜马拉雅地区,尽管概率技术的表现明显优于传统技术,但它们仍无法产生技巧性的预报。研究发现,NGR 方法是印度地区表现最佳的概率后处理技术。使用 NGR 方法对 Tmax 预报进行后处理,发现可以显著提高印度高度热浪频发地区的热浪预测技能。本研究的结果将有助于在印度建立改进的热浪预测和预警系统。