Anomaly Detection in Smart Agriculture Systems on Network Edge Using Deep Learning Technique

Bandar Alanazi, Ibrahim Alrashdi
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Abstract

With the widespread adoption of Internet of Things (IoT) technologies across various domains, including smart agriculture, urban environments, and homes, the threat of zero-day attacks has surged. This research delves into the application of deep learning techniques to detect anomalies in smart agricultural systems at the network edge, with a specific focus on safeguarding them against Distributed Denial of Service (DDoS) attacks. In this study, we propose an anomaly detection model based on CNN-LSTM to analyze sensor data collected from IoT devices. We rigorously train and test our model using two distinct datasets of sensor readings, simulating potential DDoS attack scenarios. The model's performance is assessed using key metrics such as detection accuracy, recall, and F1-score. Our results demonstrate the effectiveness of our approach, achieving an impressive anomaly detection accuracy of 99.7%. This research contributes significantly to the development of robust and efficient attack and anomaly detection techniques for smart agriculture systems at the network edge, ultimately enhancing the reliability and sustainability of agricultural practices.
基于深度学习技术的网络边缘智能农业系统异常检测
随着物联网(IoT)技术在包括智能农业、城市环境和家庭在内的各个领域的广泛采用,零日攻击的威胁激增。本研究深入研究了深度学习技术的应用,以检测网络边缘智能农业系统中的异常情况,特别关注保护它们免受分布式拒绝服务(DDoS)攻击。在本研究中,我们提出了一种基于CNN-LSTM的异常检测模型来分析从物联网设备收集的传感器数据。我们使用两个不同的传感器读数数据集严格训练和测试我们的模型,模拟潜在的DDoS攻击场景。该模型的性能使用关键指标进行评估,如检测准确性、召回率和f1分数。我们的结果证明了我们方法的有效性,实现了令人印象深刻的99.7%的异常检测准确率。该研究为网络边缘智能农业系统开发强大高效的攻击和异常检测技术做出了重大贡献,最终提高了农业实践的可靠性和可持续性。
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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