# Identification of synoptic weather types over Taiwan area with multiple   classifiers

**Authors:** Shih-Hao Su, Jung-Lien Chu, Ting-Shuo Yo, Lee-Yaw Lin

arXiv: 1905.08736 · 2019-05-22

## TL;DR

This paper presents a machine learning approach using multiple classifiers to identify synoptic weather types over Taiwan, achieving higher accuracy than traditional methods and offering a resource-efficient tool for weather analysis and forecasting.

## Contribution

The study introduces a novel machine learning framework with multiple classifiers for synoptic weather classification, demonstrating improved accuracy and resource efficiency over traditional methods.

## Key findings

- Classifiers achieved 52-83% hit rate, outperforming traditional methods.
- Support Vector Machine with more principal components had higher accuracy.
- Method is effective across different data resolutions, suitable for long-term climate studies.

## Abstract

In this study, a novel machine learning approach was used to classify three types of synoptic weather events in Taiwan area from 2001 to 2010. We used reanalysis data with three machine learning algorithms to recognize weather systems and evaluated their performance. Overall, the classifiers successfully identified 52-83% of weather events (hit rate), which is higher than the performance of traditional objective methods. The results showed that the machine learning approach gave low false alarm rate in general, while the support vector machine (SVM) with more principal components of reanalysis data had higher hit rate on all tested weather events. The sensitivity tests of grid data resolution indicated that the differences between the high- and low-resolution datasets are limited, which implied that the proposed method can achieve reasonable performance in weather forecasting with minimal resources. By identifying daily weather systems in historical reanalysis data, this method can be used to study long-term weather changes, to monitor climatological-scale variations, and to provide a better estimate of climate projections. Furthermore, this method can also serve as an alternative to model output statistics and potentially be used for synoptic weather forecasting.

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Source: https://tomesphere.com/paper/1905.08736