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Supervised Machine Learning Classification Algorithmic Approach for Finding Anomaly Type of Intrusion Detection in Wireless Sensor Network

机译:监督机器学习分类算法方法,用于在无线传感器网络中查找异常类型的入侵检测

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摘要

From the last decade, the use of internet and its growth is continuously increasing. Similarly, numbers of services are coming out along with the internet and it is being used for providing facilities to human beings. Wireless sensor have been used for various application such as fire safety, military application, petroleum industry, security system, monitoring and environmental condition and many more. WSN node exposes itself to various security related attacks due to low battery power supply, low bandwidth support, data transmission over multi hop node, dependency on intermediate or other nodes, distributed in nature and self-organization. The WSN attacks observe in all layers of OSI model. Wireless sensor nodes has various issues because of that, it experiences number problem related to its functionalities and some malfunction due to attacks. It is require to build defence and network monitoring system for identifying attacks and prevent them. Intrusion detection system (I DS) plays an important role to detect threads inside the system and generate the alert related to the attack. In this work, supervised classification models for intrusion detection are built using such as Random Forest classifier, Support Vector Machine, Decision Tree Classifier, LGBM Classifier, Extra Tree Classifier, Gradient Boosting Classifier, Ada Boost Classifier, K Nearest Neighbour Classifier, MLP Classifier, Gaussian Naive Bayes Classifier and Logistic Regression Classifier. The NSLKDD, i.e. Modified version of the KDD99 Data Set on which we checks these algorithms. Experimental results how the highest accuracy relative to other classification systems in the support vector machine.
机译:从过去十年来,使用互联网及其增长是不断增加的。同样,服务数量与互联网出来,它正在用于向人类提供设施。无线传感器已被用于各种应用,如消防安全,军事应用,石油工业,安全系统,监测和环境条件等。由于电池供电,低带宽支持,多跳节点的数据传输,多跳节点,中间或其他节点的依赖性,WSN节点将其自身暴露于各种安全相关攻击。 WSN攻击在所有层的OSI模型中观察到。无线传感器节点具有各种问题,因为它,它经历了与其功能相关的数量问题以及由于攻击引起的一些故障。需要构建防御和网络监控系统,用于识别攻击并防止它们。入侵检测系统(I DS)在系统内检测线程并生成与攻击相关的警报的重要作用。在这项工作中,监控用于入侵检测的分类模型,使用如随机森林分类器,支持向量机,决策树分类器,LGBM分类器,额外的树分类器,渐变升压分类器,ADA Boost分类器,K最近邻分类器,MLP分类器,高斯天真贝叶斯分类器和逻辑回归分类器。 NSLKDD,即我们检查这些算法的KDD99数据集的修改版本。实验结果如何在支持向量机中相对于其他分类系统的最高精度。

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