Weather Based Prediction Models for Disease and Pest Using Machine Learning: A Review

Dayana David
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Abstract

Critical review of weather based prediction models of disease and pest attack on crops using machine learning (ML) algorithms are performed in the study. Since suitable weather conditions are the accelerators for the growth and spreading of disease or pest, the prediction models based on weather condition achieves high degree of accuracy. Due to the advancement of technology ML algorithms remarks successful application in prediction of diseases and pest on crops. The scope of the review work lies in the fact that the accurate forewarning system helps for the timely application of pest and disease management techniques which have greater significance in controlling and solving the damages due to diseases or pest infestation in plants. Stages in prediction models are analysed and the applied techniques are compared in detail in this review. Consequently, importance of weather parameters in perdition and, performance metrics used for evaluating the prediction models are compared and presented. The review presents the detailed discussion on machine learning algorithms used in the prediction models. The review reveals that new models with high degree of accuracy need to be developed for the prediction of diseases or pest outbreak of various crops.
利用机器学习建立基于天气的病虫害预测模型:综述
本研究对使用机器学习(ML)算法的基于天气的作物病虫害预测模型进行了批判性审查。由于适宜的天气条件是病虫害生长和传播的加速器,因此基于天气条件的预测模型具有较高的准确性。由于技术的进步,机器学习算法在作物病虫害预测中得到了成功的应用。审查工作的范围在于,准确的预警系统有助于及时应用病虫害管理技术,对控制和解决植物病虫害危害具有更大的意义。本文分析了预测模型的阶段,并对应用技术进行了详细的比较。因此,比较和介绍了用于评估预测模型的天气参数在预测中的重要性和性能指标。这篇综述详细讨论了预测模型中使用的机器学习算法。综述表明,需要开发高精度的新模型来预测各种作物的病虫害暴发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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