scholarly journals Machine Learning Based Intelligent Intrusion Classification System for IoT Gateway Communication

Internet of Things(IoT) is a next generation of Internet in that every object in the universe connect, communicate with sensor devices through Internet. In that inter-connected communication devices as well as sensor devices share the data through IoT gateway for a relevant application like whether forecasting, healthcare, smart city, disaster management are providing without human interaction. IoT enhances comfortable for human being even security is one of the challenging tasks. Intrusion detection system (IDS) will protect IoT devices from intruders. Now a day i.e in this era, as per user requirement and day-to-day increasing new innovative technologies as IoT, cloud computing, big data analytics, AIapplications implementation a network traffic will be generating a heavy data. To manage these data intrusion detection system is essential technique to detect, collect analyze the data is transmission through IoT gateway network. It is essential to improve the accuracy as well speed of intrusion detection system model by applying machine learning approach to detect IoT systems and gateway network to protect from cyber-attacks. In this paper providing a detailed study of Intrusion detection system (IDS) classification system for IoT gateway communication to protect IoT gateway by machine learning algorithms ina intelligent fashion.

2020 ◽  
Vol 5 (19) ◽  
pp. 32-35
Author(s):  
Anand Vijay ◽  
Kailash Patidar ◽  
Manoj Yadav ◽  
Rishi Kushwah

In this paper an analytical survey on the role of machine learning algorithms in case of intrusion detection has been presented and discussed. This paper shows the analytical aspects in the development of efficient intrusion detection system (IDS). The related study for the development of this system has been presented in terms of computational methods. The discussed methods are data mining, artificial intelligence and machine learning. It has been discussed along with the attack parameters and attack types. This paper also elaborates the impact of different attack and handling mechanism based on the previous papers.


Author(s):  
Amudha P. ◽  
Sivakumari S.

In recent years, the field of machine learning grows very fast both on the development of techniques and its application in intrusion detection. The computational complexity of the machine learning algorithms increases rapidly as the number of features in the datasets increases. By choosing the significant features, the number of features in the dataset can be reduced, which is critical to progress the classification accuracy and speed of algorithms. Also, achieving high accuracy and detection rate and lowering false alarm rates are the major challenges in designing an intrusion detection system. The major motivation of this work is to address these issues by hybridizing machine learning and swarm intelligence algorithms for enhancing the performance of intrusion detection system. It also emphasizes applying principal component analysis as feature selection technique on intrusion detection dataset for identifying the most suitable feature subsets which may provide high-quality results in a fast and efficient manner.


Author(s):  
Tarek Helmy

The system that monitors the events occurring in a computer system or a network and analyzes the events for sign of intrusions is known as intrusion detection system. The performance of the intrusion detection system can be improved by combing anomaly and misuse analysis. This chapter proposes an ensemble multi-agent-based intrusion detection model. The proposed model combines anomaly, misuse, and host-based detection analysis. The agents in the proposed model use rules to check for intrusions, and adopt machine learning algorithms to recognize unknown actions, to update or create new rules automatically. Each agent in the proposed model encapsulates a specific classification technique, and gives its belief about any packet event in the network. These agents collaborate to determine the decision about any event, have the ability to generalize, and to detect novel attacks. Empirical results indicate that the proposed model is efficient, and outperforms other intrusion detection models.


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