论文标题
预测水稻爆炸疾病:机器学习与基于过程的模型
Predicting rice blast disease: machine learning versus process based models
论文作者
论文摘要
大米是全球第二重要的谷物作物,也是第一个依赖它作为主要主食的人数。水稻爆发是水稻种植的最重要的生物限制,每年造成数百万美元的损失。尽管为繁殖新的耐药品种而做出了努力,但农业实践和化学控制仍然是疾病管理的最重要方法。因此,大米爆炸预测是支持水稻种植者控制疾病的主要工具。在这项研究中,我们比较了预测水稻爆炸疾病的四个模型,两个基于过程的模型(Yoshino和温暖)以及基于机器学习算法(M5RULES和RNN)的两种方法,这是前者诱导基于规则的模型,后者构建了神经网络。原位遥测对于获取预测模型的质量现场数据很重要,这是该研究所基于的米龙项目的关键方面。根据作者的说法,这是比较支持植物性疾病管理的首次基于过程和机器学习建模方法。
Rice is the second most important cereal crop worldwide, and the first in terms of number of people who depend on it as a major staple food. Rice blast disease is the most important biotic constraint of rice cultivation causing each year millions of dollars of losses. Despite the efforts for breeding new resistant varieties, agricultural practices and chemical control are still the most important methods for disease management. Thus, rice blast forecasting is a primary tool to support rice growers in controlling the disease. In this study, we compared four models for predicting rice blast disease, two operational process-based models (Yoshino and WARM) and two approaches based on machine learning algorithms (M5Rules and RNN), the former inducing a rule-based model and the latter building a neural network. In situ telemetry is important to obtain quality in-field data for predictive models and this was a key aspect of the RICE-GUARD project on which this study is based. According to the authors, this is the first time process-based and machine learning modelling approaches for supporting plant disease management are compared.