基于文本挖掘的韩国稻瘟病暴发分析

Q4 Agricultural and Biological Sciences
Sungmin Song, Hyunjung Chung, Kwang-Hyung Kim, Ki-Tae Kim
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引用次数: 0

摘要

稻瘟病是世界范围内发生的一种主要植物病害,严重降低了水稻产量。水稻瘟病在韩国周期性发生,由于水稻作为主要作物的独特地位,造成了重大的社会经济损失。为了预防稻瘟病,需要一个疾病暴发预测系统。疾病暴发的流行病学调查可以帮助植物疾病管理的决策。目前,植物疾病预测和流行病学调查主要基于定量可测量的结构化数据,如作物生长和损害、天气和其他环境因素。另一方面,与植物病害发生相关的文本数据与结构化数据一起被累积。然而,尚未使用这些非结构化数据进行流行病学调查。使用非结构化数据提取的有用信息可以用于更有效的植物病害管理。本研究通过文本挖掘分析了与稻瘟病相关的新闻文章,以调查韩国稻瘟病发生最多的年份和省份。此外,还对该地区的平均气温、总降水量、日照时数和供应水稻品种进行了分析。通过这些数据,估计2020年全国性疫情和2021年全北地区大爆发的主要原因是气象因素。通过文本挖掘获得的这些结果可以与深度学习技术相结合,作为未来调查稻瘟病流行病学的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Rice Blast Outbreaks in Korea through Text Mining
Rice blast is a major plant disease that occurs worldwide and significantly reduces rice yields. Rice blast disease occurs periodically in Korea, causing significant socio-economic damage due to the unique status of rice as a major staple crop. A disease outbreak prediction system is required for preventing rice blast disease. Epidemiological investigations of disease outbreaks can aid in decision-making for plant disease management. Currently, plant disease prediction and epidemiological investigations are mainly based on quantitatively measurable, structured data such as crop growth and damage, weather, and other environmental factors. On the other hand, text data related to the occurrence of plant diseases are accumulated along with the structured data. However, epidemiological investigations using these unstructured data have not been conducted. The useful information extracted using unstructured data can be used for more effective plant disease management. This study analyzed news articles related to the rice blast disease through text mining to investigate the years and provinces where rice blast disease occurred most in Korea. Moreover, the average temperature, total precipitation, sunshine hours, and supplied rice varieties in the regions were also analyzed. Through these data, it was estimated that the primary causes of the nationwide outbreak in 2020 and the major outbreak in Jeonbuk region in 2021 were meteorological factors. These results obtained through text mining can be combined with deep learning technology to be used as a tool to investigate the epidemiology of rice blast disease in the future.
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来源期刊
Research in Plant Disease
Research in Plant Disease Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
1.20
自引率
0.00%
发文量
23
审稿时长
18 weeks
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