Generally, the risks associated with malicious threats are increasing for the IIoT and its related applications due to dependency on the Internet and the minimal resource availability of IoT devices. Thus, anomaly-based intrusion detection models for IoT networks are vital. Distinct detection methodologies need to be developed for the IIoT network as threat detection is a significant expectation of stakeholders. Machine learning approaches are considered to be evolving techniques that learn with experience, and such approaches have resulted in superior performance in various applications, such as pattern recognition, outlier analysis, and speech recognition. Traditional techniques and tools are not adequate to secure IIoT networks due to the use of various protocols in industrial systems and restricted possibilities of upgradation. In this paper, the objective is to develop a two-phase anomaly detection model to enhance the reliability of an IIoT network. In the first phase, SVM and Naive Bayes are integrated using an ensemble blending technique. K-fold cross-validation is performed while training the data with different training and testing ratios to obtain optimized training and test sets. Ensemble blending uses a random forest technique to predict class labels. An Artificial Neural Network (ANN) classifier that uses the Adam optimizer to achieve better accuracy is also used for prediction. In the second phase, both the ANN and random forest results are fed to the model's classification unit, and the highest accuracy value is considered the final result. The proposed model is tested on standard IoT attack datasets, such as WUSTL_IIOT-2018, N_BaIoT, and Bot_IoT. The highest accuracy obtained is 99%. The results also demonstrate that the proposed model outperforms traditional techniques and thus improves the reliability of an IIoT network.
翻译:一般而言,与恶意威胁相关的风险对IIOT及其相关应用而言正在增加,因为依赖互联网和IOT装置的资源极少,因此,IOT网络的入侵检测模型以异常为基础,因此至关重要。需要为IIOT网络开发不同的检测方法,因为威胁检测是利益攸关方的极大期望。机械学习方法被视为是利用经验学习的不断演变的技术,这种方法导致各种应用的优异性能,如模式识别、超值分析和语音识别。传统技术和工具不足以保障IIT网络的安全,因为工业系统中使用各种协议,而且升级的可能性有限。在本文件中,目标是为IIOT网络开发一个两阶段的异常检测模型,以提高IIO网络的可靠性。在第一阶段,SVM和Nive Bayes将使用一个混合的混合技术。K倍交叉校验模型,同时以不同的培训和测试比率对数据进行培训,以获得最佳的培训和测试数据集。在SENT系统中,使用随机混合的森林技术来预测等级的准确性等级。在IILALSA中,使用高级数据级系统将测试结果展示。