Optimizing Potato Disease Classification Using a Metaheuristics Algorithm for Deep Learning: A Novel Approach for Sustainable Agriculture

IF 2.3 3区 农林科学 Q1 AGRONOMY
El-Sayed M. El-Kenawy, Amel Ali Alhussan, Doaa Sami Khafaga, Mostafa Abotaleb, Pradeep Mishra, Reham Arnous, Marwa M. Eid
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Abstract

Potato is a food crop at a global scale, bearing a hefty importance for the food security and nutrition of millions of people worldwide. Nonetheless, some obstacles have to be overcome in the cultivation of potatoes, such as susceptibility to a number of diseases that affect quality and yield. Thus, sound disease management approaches are critical to protect potato crops and support maximum production. In this perspective, optimization techniques are vital in improving disease classification accuracy, thus helping in early detection and timely intervention. In this research, we suggest the hybridization of the Greylag Goose Optimizer (GGO) with the Grey Wolf Optimizer (GWO), which is called GGGWO, for the optimization of convolutional neural network (CNN) models for potato disease classification. Through our approach, we are seeking to enhance precision and timeliness in the diagnosis of diseases that will eventually lead to the development of appropriate crop management practices and sustainable agriculture. The performance of the GGGWO-CNN model is assessed in terms of accuracy and is compared to other optimization algorithms using statistical testing methods like ANOVA and Wilcoxon signed rank tests. The results exhibit the excellent performance of the GGGWO-CNN model with an accuracy of 0.9904 and a sensitivity of 0.9421 in identifying potato diseases accurately, highlighting its potential to aid farmers and general agriculture practitioners. Utilizing optimization techniques and CNN models, our research helps in the development of precision agriculture as well as the improvement of resilient potato cropping systems. The proposed method’s approach provides an exciting way of dealing with the problem of potato diseases. It provides an excellent platform for carrying out further studies on improving agricultural decision-making processes aimed at better crop health and productivity.

Abstract Image

利用深度学习元启发式算法优化马铃薯病害分类:可持续农业的新方法
马铃薯是一种全球性的粮食作物,对全世界数百万人的粮食安全和营养具有重要意义。然而,在马铃薯种植过程中必须克服一些障碍,例如容易感染一些影响质量和产量的病害。因此,合理的病害管理方法对于保护马铃薯作物和支持最高产量至关重要。从这个角度来看,优化技术对于提高病害分类的准确性至关重要,从而有助于早期检测和及时干预。在这项研究中,我们建议将灰雁优化器(GGO)与灰狼优化器(GWO)杂交,即 GGGWO,用于优化卷积神经网络(CNN)模型,以进行马铃薯病害分类。通过我们的方法,我们正在努力提高病害诊断的精确性和及时性,这将最终促进适当的作物管理方法和可持续农业的发展。我们使用方差分析和 Wilcoxon 符号秩检验等统计检验方法评估了 GGGWO-CNN 模型的准确性,并将其与其他优化算法进行了比较。结果表明,GGGWO-CNN 模型在准确识别马铃薯病害方面表现出色,准确率为 0.9904,灵敏度为 0.9421,突出了其帮助农民和普通农业从业人员的潜力。利用优化技术和 CNN 模型,我们的研究有助于精准农业的发展以及抗逆性马铃薯种植系统的改进。所提出的方法为解决马铃薯病害问题提供了一种令人振奋的途径。它为进一步研究改进农业决策过程提供了一个很好的平台,目的是提高作物的健康水平和生产率。
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来源期刊
Potato Research
Potato Research AGRONOMY-
CiteScore
5.50
自引率
6.90%
发文量
66
审稿时长
>12 weeks
期刊介绍: Potato Research, the journal of the European Association for Potato Research (EAPR), promotes the exchange of information on all aspects of this fast-evolving global industry. It offers the latest developments in innovative research to scientists active in potato research. The journal includes authoritative coverage of new scientific developments, publishing original research and review papers on such topics as: Molecular sciences; Breeding; Physiology; Pathology; Nematology; Virology; Agronomy; Engineering and Utilization.
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