Gang Zhao , Quanying Zhao , Heidi Webber , Andreas Johnen , Vittorio Rossi , Antonio Fernandes Nogueira Junior
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By mimicking disease development curves and trends at early stages, we developed a novel change detection (CD) model, named rolling linear regression (RLR), and combined it with the best-performing ML model to predict the occurrence, severity, and onset dates of four major rice diseases: leaf blast (<em>Magnaporthe oryzae</em>), panicle-neck blast (<em>Magnaporthe oryzae</em>), sheath blight (<em>Rhizoctonia solani</em>), and false smut (<em>Ustilaginoidea virens</em>). Our findings showed that the RandomForestRegressor demonstrated the highest performance in simulating disease severity, with mean absolute errors (<em>MAE</em>) below 0.5 % and root mean square errors (<em>RMSE</em>) below 2.5 %. The RLR model showed a distinct advantage over the other four widely used CD models based on five evaluation metrics. Additionally, the paired RandomForestRegressor+RLR model achieved the highest F1-score, ranging from 0.7 to 0.8, in predicting disease occurrence, outperforming 29 other ML+CD model pairs. Furthermore, the RandomForestRegressor+RLR model predicted onset dates with fewer than 6 error days and accuracies ranging from 74 % to 87 %. Combining ML with CD models not only shows robust generalization across diverse environmental conditions but also proves highly effective for large-scale disease risk forecasting in rice farming regions. The adaptability of ML techniques, when sufficient training data are available, particularly enhances decision support systems aimed at optimizing rice disease management practices for growers across various regions. Our hybrid model thus presents a compelling advancement in the precision agriculture domain, with significant implications for improving disease management strategies for crops beyond rice through timely intervention. This approach can contribute to safeguarding global food security by reducing crop losses due to disease damage.</p></div>","PeriodicalId":51045,"journal":{"name":"European Journal of Agronomy","volume":"160 ","pages":"Article 127317"},"PeriodicalIF":4.5000,"publicationDate":"2024-08-15","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Integrating machine learning and change detection for enhanced crop disease forecasting in rice farming: A multi-regional study\",\"authors\":\"Gang Zhao , Quanying Zhao , Heidi Webber , Andreas Johnen , Vittorio Rossi , Antonio Fernandes Nogueira Junior\",\"doi\":\"10.1016/j.eja.2024.127317\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Crop diseases are increasingly causing devastating yield losses each year, posing a significant threat to global food security. Currently, fungicide treatment is one of the most effective measures to mitigate these disease-induced yield losses. Accurately predicting disease occurrence, onset timing, and development is critical for optimizing fungicide application schedules to achieve high efficacy. In this study, we compiled weekly disease observations, crop management, and weather data from 207 locations across China, India, and Japan. We compared six machine learning (ML) models for their performance in simulating disease severity. By mimicking disease development curves and trends at early stages, we developed a novel change detection (CD) model, named rolling linear regression (RLR), and combined it with the best-performing ML model to predict the occurrence, severity, and onset dates of four major rice diseases: leaf blast (<em>Magnaporthe oryzae</em>), panicle-neck blast (<em>Magnaporthe oryzae</em>), sheath blight (<em>Rhizoctonia solani</em>), and false smut (<em>Ustilaginoidea virens</em>). Our findings showed that the RandomForestRegressor demonstrated the highest performance in simulating disease severity, with mean absolute errors (<em>MAE</em>) below 0.5 % and root mean square errors (<em>RMSE</em>) below 2.5 %. The RLR model showed a distinct advantage over the other four widely used CD models based on five evaluation metrics. Additionally, the paired RandomForestRegressor+RLR model achieved the highest F1-score, ranging from 0.7 to 0.8, in predicting disease occurrence, outperforming 29 other ML+CD model pairs. Furthermore, the RandomForestRegressor+RLR model predicted onset dates with fewer than 6 error days and accuracies ranging from 74 % to 87 %. Combining ML with CD models not only shows robust generalization across diverse environmental conditions but also proves highly effective for large-scale disease risk forecasting in rice farming regions. 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引用次数: 0
摘要
农作物病害每年都会造成越来越多的毁灭性减产,对全球粮食安全构成重大威胁。目前,杀菌剂处理是减轻这些病害造成的产量损失的最有效措施之一。准确预测病害的发生、发病时间和发展情况,对于优化杀菌剂施用计划以实现高效杀菌至关重要。在这项研究中,我们汇编了来自中国、印度和日本 207 个地点的每周病害观测数据、作物管理数据和天气数据。我们比较了六种机器学习(ML)模型在模拟病害严重程度方面的性能。通过模仿病害早期的发展曲线和趋势,我们开发了一种名为滚动线性回归(RLR)的新型变化检测(CD)模型,并将其与表现最佳的 ML 模型相结合,预测了四种主要水稻病害的发生、严重程度和发病日期:叶瘟(Magnaporthe oryzae)、穗颈瘟(Magnaporthe oryzae)、鞘枯病(Rhizoctonia solani)和假烟病(Ustilaginoidea virens)。我们的研究结果表明,随机森林回归模型(RandomForestRegressor)在模拟病害严重程度方面表现最佳,平均绝对误差(MAE)低于 0.5%,均方根误差(RMSE)低于 2.5%。根据五项评估指标,RLR 模型与其他四种广泛使用的 CD 模型相比具有明显优势。此外,RandomForestRegressor+RLR 配对模型在预测疾病发生率方面取得了最高的 F1 分数(从 0.7 到 0.8 不等),优于其他 29 个 ML+CD 配对模型。此外,RandomForestRegressor+RLR 模型预测发病日期的误差天数少于 6 天,准确率在 74% 到 87% 之间。将 ML 与 CD 模型相结合,不仅能在不同的环境条件下显示出强大的泛化能力,而且在水稻种植区的大规模病害风险预测中也被证明是非常有效的。当有足够的训练数据时,ML 技术的适应性尤其能增强决策支持系统,从而优化不同地区种植者的水稻病害管理实践。因此,我们的混合模型在精准农业领域取得了令人瞩目的进步,对通过及时干预改进水稻以外作物的病害管理策略具有重要意义。这种方法可以减少病害造成的作物损失,从而为保障全球粮食安全做出贡献。
Integrating machine learning and change detection for enhanced crop disease forecasting in rice farming: A multi-regional study
Crop diseases are increasingly causing devastating yield losses each year, posing a significant threat to global food security. Currently, fungicide treatment is one of the most effective measures to mitigate these disease-induced yield losses. Accurately predicting disease occurrence, onset timing, and development is critical for optimizing fungicide application schedules to achieve high efficacy. In this study, we compiled weekly disease observations, crop management, and weather data from 207 locations across China, India, and Japan. We compared six machine learning (ML) models for their performance in simulating disease severity. By mimicking disease development curves and trends at early stages, we developed a novel change detection (CD) model, named rolling linear regression (RLR), and combined it with the best-performing ML model to predict the occurrence, severity, and onset dates of four major rice diseases: leaf blast (Magnaporthe oryzae), panicle-neck blast (Magnaporthe oryzae), sheath blight (Rhizoctonia solani), and false smut (Ustilaginoidea virens). Our findings showed that the RandomForestRegressor demonstrated the highest performance in simulating disease severity, with mean absolute errors (MAE) below 0.5 % and root mean square errors (RMSE) below 2.5 %. The RLR model showed a distinct advantage over the other four widely used CD models based on five evaluation metrics. Additionally, the paired RandomForestRegressor+RLR model achieved the highest F1-score, ranging from 0.7 to 0.8, in predicting disease occurrence, outperforming 29 other ML+CD model pairs. Furthermore, the RandomForestRegressor+RLR model predicted onset dates with fewer than 6 error days and accuracies ranging from 74 % to 87 %. Combining ML with CD models not only shows robust generalization across diverse environmental conditions but also proves highly effective for large-scale disease risk forecasting in rice farming regions. The adaptability of ML techniques, when sufficient training data are available, particularly enhances decision support systems aimed at optimizing rice disease management practices for growers across various regions. Our hybrid model thus presents a compelling advancement in the precision agriculture domain, with significant implications for improving disease management strategies for crops beyond rice through timely intervention. This approach can contribute to safeguarding global food security by reducing crop losses due to disease damage.
期刊介绍:
The European Journal of Agronomy, the official journal of the European Society for Agronomy, publishes original research papers reporting experimental and theoretical contributions to field-based agronomy and crop science. The journal will consider research at the field level for agricultural, horticultural and tree crops, that uses comprehensive and explanatory approaches. The EJA covers the following topics:
crop physiology
crop production and management including irrigation, fertilization and soil management
agroclimatology and modelling
plant-soil relationships
crop quality and post-harvest physiology
farming and cropping systems
agroecosystems and the environment
crop-weed interactions and management
organic farming
horticultural crops
papers from the European Society for Agronomy bi-annual meetings
In determining the suitability of submitted articles for publication, particular scrutiny is placed on the degree of novelty and significance of the research and the extent to which it adds to existing knowledge in agronomy.