利用智能分类器的超参数调整进行基于气象因素的番茄早疫病预测

IF 1.4 Q3 AGRONOMY Agricultural Research Pub Date : 2024-02-26 DOI:10.1007/s40003-023-00691-6
Ayushi Gupta, Anuradha Chug, Amit Prakash Singh
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引用次数: 0

摘要

早疫病是一种严重的病害,会影响多种植物,包括番茄植株。温度、叶片湿度、土壤湿度和相对湿度等天气参数对植物病害的生长起着至关重要的作用。本研究利用传统的机器学习技术分析了天气参数对番茄植物早疫病发生的影响。实时数据集 TomEBD 包含五个天气参数。为了平衡数据集,采用了三种重采样技术--合成少数过采样技术(SMOTE)、K-Means SMOTE(KM-SMOTE)和支持向量机 SMOTE(SVM-SMOTE)。五种不同的机器学习分类器--最近邻(kNN)、支持向量机(SVM)、随机森林(RF)、人工神经网络(ANN)和核极端学习机(KELM)--被用于根据气象因素将植物分为健康或有病。在不平衡数据集和三个平衡数据集上使用了这五种分类器,共产生了 20 个模型。对所有五个分类器的超参数进行了优化调整。结果表明,在评估的 20 个模型中,KM-SMOTE 平衡数据上的 KELM-KM - KELM 分类器的平均准确率为 85.82%,优于其他所有模型。与现有研究的比较表明,KELM-KM 在不涉及任何复杂特征提取技术的情况下,其性能优于现有技术。因此,KELM-KM 可用于向农民发出警报,提醒他们在有利的环境中对患病植物喷洒杀菌剂。
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Meteorological Factor-Based Tomato Early Blight Prediction Using Hyperparameter Tuning of Intelligent Classifiers

Early blight is a severe disease which affects several plant species, including tomato plants. Weather parameters such as temperature, leaf wetness, soil moisture, and relative humidity play a vital role in the growth of diseases in plants. The current study analyses the effect of weather parameters on the development of early blight disease in tomato plants by utilizing traditional machine learning techniques. A real-time dataset TomEBD, comprising five weather parameters, has been employed. Three resampling techniques—Synthetic Minority Oversampling Technique(SMOTE), K-Means SMOTE(KM-SMOTE) and Support Vector Machine SMOTE(SVM-SMOTE)—have been used to balance the dataset. Five different machine learning classifiers—k-Nearest Neighbor(kNN), Support Vector Machine(SVM), Random Forest(RF), Artificial Neural Network(ANN), and Kernel Extreme Learning Machine(KELM)—have been used to classify a plant as healthy or diseased based on meteorological factors. The five classifiers are used on the imbalanced and three balanced datasets, resulting in 20 models. Hyperparameter tuning of all five classifiers has been done for optimization. The results indicate that out of the 20 models evaluated, the proposed model KELM-KM - KELM classifier on KM-SMOTE balanced data outperforms all others with a mean accuracy of 85.82%. A comparison with the existing studies shows that KELM-KM outperforms the state of the art without involving any complex feature extraction techniques. Therefore, it can be used to alarm the farmers for fungicide spray on diseased plants in conducive environments.

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来源期刊
CiteScore
3.80
自引率
0.00%
发文量
24
期刊介绍: The main objective of this initiative is to promote agricultural research and development. The journal will publish high quality original research papers and critical reviews on emerging fields and concepts for providing future directions. The publications will include both applied and basic research covering the following disciplines of agricultural sciences: Genetic resources, genetics and breeding, biotechnology, physiology, biochemistry, management of biotic and abiotic stresses, and nutrition of field crops, horticultural crops, livestock and fishes; agricultural meteorology, environmental sciences, forestry and agro forestry, agronomy, soils and soil management, microbiology, water management, agricultural engineering and technology, agricultural policy, agricultural economics, food nutrition, agricultural statistics, and extension research; impact of climate change and the emerging technologies on agriculture, and the role of agricultural research and innovation for development.
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