Abstract
An abundance of physical instruments around a group of countries which are now associated to the hyperspace, collecting or sharing data known as the internet of things (IOT). As the statistic of IoT devices increases, new security and privacy dare will be confronted for both home and office devices. An intrusion detection system (IDS) helps to detect the malicious system to get notified when any malicious flurry or anomaly occurred in the system. In this paper, we dispute four types of attacks of IoT ambiance. We have proposed such a model that recuperates from attacks like DoS (Denial of Services), DDoS (Distributed Denial of Services), R2L (Remote 2 Local), U2R (User to Root), and probe attack. Our model mainly focused on the security of home-based appliances like air-condition, fan, light, television, oven, refrigerator, printer, heater, washing machine, geysers, electric stove, and others electronic devices. We have developed an algorithm by using deep learning approach to dispute attacks and give security to the user. Deep learning is divergent from regular machine learning approach which has self-taught techniques (STL) that represents data such as images, video or text, without using human domain knowledge. They have more ductile architectures that comprehend from raw data and can increase their accuracy level when acquires more data. Our model analyses six features a server to identify whether it is malicious or not. Self-taught technique of deep learning has been approached in our paper. We have used NSL-KDD dataset for training and testing.
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Acknowledgements
This paper is supported by The Institute for Energy, Environment, Research and Development (IEERD), University of Asia Pacific (UAP).
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Akter, M., Dip, G.D., Mira, M.S., Abdul Hamid, M., Mridha, M.F. (2020). Construing Attacks of Internet of Things (IoT) and A Prehensile Intrusion Detection System for Anomaly Detection Using Deep Learning Approach. In: Khanna, A., Gupta, D., Bhattacharyya, S., Snasel, V., Platos, J., Hassanien, A. (eds) International Conference on Innovative Computing and Communications. Advances in Intelligent Systems and Computing, vol 1059. Springer, Singapore. https://doi.org/10.1007/978-981-15-0324-5_37
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DOI: https://doi.org/10.1007/978-981-15-0324-5_37
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