Internet of Things (IoT) is transforming human lives by paving the way for the management of physical devices on the edge. These interconnected IoT objects share data for remote accessibility and can be vulnerable to open attacks and illegal access. Intrusion detection methods are commonly used for the detection of such kinds of attacks but with these methods, the performance/accuracy is not optimal. This work introduces a novel intrusion detection approach based on an ensemble-based voting classifier that combines multiple traditional classifiers as a base learner and gives the vote to the predictions of the traditional classifier in order to get the final prediction. To test the effectiveness of the proposed approach, experiments are performed on a set of seven different IoT devices and tested for binary attack classification and multi-class attack classification. The results illustrate prominent accuracies on Global Positioning System (GPS) sensors and weather sensors to 96% and 97% and for other machine learning algorithms to 85% and 87%, respectively. Furthermore, comparison with other traditional machine learning methods validates the superiority of the proposed algorithm.
翻译:互联网(IoT)正在改变人类生活,为管理边缘的物理设备铺平了道路。这些相互关联的 IoT 对象共享远程访问数据,容易被公开攻击和非法进入。入侵探测方法通常用于检测这类袭击,但使用这些方法,性能/准确性并不是最佳的。这项工作引入了一种新的入侵探测方法,其基础是一个基于混合的基于投票的分类器,该分类器将多个传统分类器作为基础学习器组合在一起,并投票给传统分类器的预测,以便获得最终预测。为了测试拟议方法的有效性,在一套七套不同的IoT 装置上进行实验,并测试二进攻击分类和多级攻击分类。结果显示全球定位系统传感器和天气传感器的显著精度达到96%和97%,其他机器学习算法的精度分别为85%和87%。此外,与其他传统机器学习方法的比较也证实了拟议算法的优越性。