用于水稻疾病识别和分类的数字双启用雾边缘辅助IoAT框架

IF 5.8 2区 环境科学与生态学 Q1 ECOLOGY
Goluguri N.V. Rajareddy , Kaushik Mishra , Satish Kumar Satti , Gurpreet Singh Chhabra , Kshira Sagar Sahoo , Amir H. Gandomi
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引用次数: 0

摘要

农业技术与农业物联网(IoAT)的融合正在彻底改变智能农业领域,特别是在诊断和治疗水稻疾病方面。鉴于大米是全球一半以上人口的主食,确保其健康种植至关重要,特别是在全球人口不断增长的情况下。因此,准确和及时地识别水稻病害,如褐斑病(BS)、细菌性叶枯病(BLB)和叶枯病(LB),对维持和提高水稻产量至关重要。为了应对这一关键需求,该研究引入了一种及时的检测系统,该系统利用数字孪生(DT)支持的雾计算的力量,与边缘和云计算(CC)集成,并由传感器和先进技术支持。该系统的核心是建立在强大的AlexNet神经网络架构上的复杂深度学习模型。该模型通过包括四元数卷积层(增强颜色信息处理)和亚特鲁斯卷积层(提高深度感知,特别是在提取疾病模式方面)进一步改进。为了提高模型的预测精度,采用混沌蜜獾算法(Chaotic Honey Badger Algorithm, CHBA)对CNN超参数进行优化,平均准确率达到了令人印象深刻的93.5%。这一性能显著优于其他模型,包括AlexNet、AlexNet- atrous、QAlexNet和QAlexNet- atrous,它们分别达到了75%、84%、89%和91%的准确率。此外,CHBA优化算法优于CSO、BSO、PSO和CJAYA等其他技术,并且在80 - 20%的训练测试参数分割下显示出最优结果。服务延迟分析进一步表明,在减少延迟方面,fog - edge辅助环境比cloud辅助模型更有效。此外,启用dt的qalexnet - atrouss - chba模型被证明远优于非dt模型,准确度提高18.7%,召回率提高17%,f β-测量率提高19%,特异性提高17.3%,精度提高13.4%。这些改进得到了收敛分析和Quade秩检验的支持,建立了模型的有效性和潜力,显著提高了水稻病害的诊断和管理。这一进展有望为全球水稻种植的可持续性和生产力做出重大贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A digital twin-enabled fog-edge-assisted IoAT framework for Oryza Sativa disease identification and classification
The integration of agri-technology with the Internet of Agricultural Things (IoAT) is revolutionizing the field of smart agriculture, particularly in diagnosing and treating Oryza sativa (rice) diseases. Given that rice serves as a staple food for over half of the global population, ensuring its healthy cultivation is crucial, particularly with the growing global population. Accurate and timely identification of rice diseases, such as Brown Leaf Spot (BS), Bacterial Leaf Blight (BLB), and Leaf Blast (LB), is therefore essential to maintaining and enhancing rice production. In response to this critical need, the research introduces a timely detection system that leverages the power of Digital Twin (DT)-enabled Fog computing, integrated with Edge and Cloud Computing (CC), and supported by sensors and advanced technologies. At the heart of this system lies a sophisticated deep-learning model built on the robust AlexNet neural network architecture. This model is further refined by including Quaternion convolution layers, which enhance colour information processing, and Atrous convolution layers, which improve depth perception, particularly in extracting disease patterns. To boost the model's predictive accuracy, the Chaotic Honey Badger Algorithm (CHBA) is employed to optimize the CNN hyperparameters, resulting in an impressive average accuracy of 93.5 %. This performance significantly surpasses that of other models, including AlexNet, AlexNet-Atrous, QAlexNet, and QAlexNet-Atrous, which achieved respective accuracies of 75 %, 84 %, 89 %, and 91 %. Moreover, the CHBA optimization algorithm outperforms other techniques like CSO, BSO, PSO, and CJAYA and demonstrates optimal results with an 80–20 % training-testing parameter split. Service latency analysis further reveals that the Fog-Edge-assisted environment is more efficient than the Cloud-assisted model for latency reduction. Additionally, the DT-enabled QAlexNet-Atrous-CHBA model proves to be far superior to its non-DT counterpart, showing substantial improvements in 18.7 % in Accuracy, 17 % in recall, 19 % in Fβ-measure, 17.3 % in specificity, and 13.4 % in precision, respectively. These enhancements are supported by convergence analysis and the Quade rank test, establishing the model's effectiveness and potential to significantly improve rice disease diagnosis and management. This advancement promises to contribute significantly to the sustainability and productivity of global rice cultivation.
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来源期刊
Ecological Informatics
Ecological Informatics 环境科学-生态学
CiteScore
8.30
自引率
11.80%
发文量
346
审稿时长
46 days
期刊介绍: The journal Ecological Informatics is devoted to the publication of high quality, peer-reviewed articles on all aspects of computational ecology, data science and biogeography. The scope of the journal takes into account the data-intensive nature of ecology, the growing capacity of information technology to access, harness and leverage complex data as well as the critical need for informing sustainable management in view of global environmental and climate change. The nature of the journal is interdisciplinary at the crossover between ecology and informatics. It focuses on novel concepts and techniques for image- and genome-based monitoring and interpretation, sensor- and multimedia-based data acquisition, internet-based data archiving and sharing, data assimilation, modelling and prediction of ecological data.
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