Klasifikasi Curah Hujan Menggunakan Neuro-Fuzzy System Melalui Citra Radar Cuaca

Bagaskara Ilham Abadi, R. Sumiharto
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Abstract

Rainfall intensity can be measured one of them through the reading of the reflectivity of raindrops on the weather radar. Reflectivity values are represented through colors in the visualization of two-dimensional radar images. Based on several approaches to the classification of weather conditions through radar data that has been successfully carried out, a system is designed to classify rainfall according to weather conditions in an area by utilizing weather radar imagery.The system implementation is carried out in several stages, namely pre-processing, feature extraction and labeling, and classification. Pre-processing is done to visualize radar data from Yogyakarta Climatology Station into a two-dimensional image. After capturing features using the RGB and HSV methods and labeling the rain class, classification is performed using the Neuro-fuzzy algorithm with the Adaptive Neuro-fuzzy Inference System (ANFIS) architecture. The results showed that the Neuro-fuzzy System algorithm was able to classify rainfall better on the RGB feature with an accuracy of 85.02% and a precision of 86.19%, while for the HSV feature the accuracy was 82.68%, 86.67% precision.
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基于神经模糊系统的雷达图像天气雨滴分类
降雨强度可以通过天气雷达上雨滴反射率的读数来测量。在二维雷达图像的可视化中,反射率值通过颜色表示。基于已成功实施的几种通过雷达数据对天气状况进行分类的方法,设计了一个系统,利用气象雷达图像根据某一地区的天气状况对降雨进行分类。系统实现分为预处理、特征提取与标注、分类等几个阶段。将日惹气象站的雷达数据进行预处理,使其可视化为二维图像。在使用RGB和HSV方法捕获特征并标记雨类之后,使用具有自适应神经模糊推理系统(ANFIS)架构的神经模糊算法进行分类。结果表明,神经模糊系统算法在RGB特征上的分类精度为85.02%,精度为86.19%,在HSV特征上的分类精度为82.68%,精度为86.67%。
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