A NOVEL METHOD FOR WEATHER NOWCASTING BASED ON SPATIAL COMPLEX FUZZY INFERENCE WITH MULTIPLE BAND INPUT DATA

Nguyen Trung Tuan, L. Giang, Pham Huy Thong, N. Luong, Le Minh Tuan, UY Nguyenquoc, Le Minh Hoang
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Abstract

The prediction of weather changes, such as rainfall, clouds, floods, and storms, is critical in weather forecasting. There are several sources of input data for this purpose, including radar and observational data, but satellite remote sensing images are the most commonly used due to their ease of collection. In this paper, we present a novel method for weather nowcasting based on Mamdani complex fuzzy inference with multiple band input data. The proposed approach splits the process into two parts: the first part converts the multiple band satellite images into real and imaginary parts to facilitate the rule process, and the second part uses the Spatial CFIS+ algorithm to generate the predicted weather state, taking into account factors such as cloud, wind, and temperature. The use of MapReduce helps to speed up the algorithm's performance. Our experimental results show that this new method outperforms other relevant methods and demonstrates improved prediction accuracy.
基于空间复杂模糊推理的多波段天气近预报新方法
天气变化的预测,如降雨、云层、洪水和风暴,是天气预报的关键。为此目的,有几种输入数据来源,包括雷达和观测数据,但卫星遥感图像是最常用的,因为它们易于收集。本文提出了一种基于Mamdani复合模糊推理的多波段近预报方法。该方法将该过程分为两部分:第一部分将多波段卫星图像转换为实部和虚部,以方便规则处理;第二部分使用Spatial CFIS+算法生成考虑云、风、温度等因素的预测天气状态。MapReduce的使用有助于提高算法的性能。实验结果表明,该方法优于其他相关方法,并提高了预测精度。
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