A novel intrusion detection system for IIoT using inception convolutional neural network

Ofoegbunam Emmanuel Izuchukwu, Chigbo Paul Amalu, Ajao Saheed
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Abstract

The purpose of this study is to compare the accuracy of several deep-learning models for the identification of rice weed. In this study, 1500 datasets of local rice and 1000 datasets of weed were resized and applied to the input size of the network, respectively. A total of 70% of the data were used for training, and the remaining 30% were used for validation. MATLAB R2018a was used to construct the AlexNet pre-trained model using a transfer learning strategy, and by changing the AlexNet model, RiceWeedNet, a convolutional neural network, was created. Metrics such as network accuracy, recognition accuracy, precision, and recall were used to assess both models’ performances. While the test set’s identification accuracy is 97.713415%, its precision is 0.9776, and its recall value is 0.9803. The RiceWeedNet model achieved a network accuracy of 100%. A network accuracy of 90% and a recognition accuracy of 73.780488% were reported by the AlexNet model, respectively. The created model may be used instead of conventional weed detectors.
基于初始卷积神经网络的工业物联网入侵检测系统
本研究的目的是比较几种用于水稻杂草识别的深度学习模型的准确性。在本研究中,将1500个本地水稻数据集和1000个杂草数据集分别调整大小并应用于网络的输入大小。总共70%的数据用于训练,其余30%用于验证。利用MATLAB R2018a采用迁移学习策略构建AlexNet预训练模型,通过改变AlexNet模型,创建卷积神经网络RiceWeedNet。网络准确性、识别准确性、精度和召回率等指标被用来评估两种模型的性能。测试集的识别准确率为97.713415%,精密度为0.9776,召回率为0.9803。RiceWeedNet模型的网络准确率达到100%。AlexNet模型的网络准确率为90%,识别准确率为73.780488%。所创建的模型可以用来代替传统的杂草探测器。
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