Smart Home Networks: Security Perspective and ML-based DDoS Detection

Author(s):  
Yaser Al Mtawa ◽  
Harsimranjit Singh ◽  
Anwar Haque ◽  
Ahmed Refaey
2019 ◽  
Vol 2019 ◽  
pp. 1-14 ◽  
Author(s):  
Andria Procopiou ◽  
Nikos Komninos ◽  
Christos Douligeris

Recently, D/DoS attacks have been launched by zombie IoT devices in smart home networks. They pose a great threat to network systems with Application Layer DDoS attacks being especially hard to detect due to their stealth and seemingly legitimacy. In this paper, we propose ForChaos, a lightweight detection algorithm for IoT devices, which is based on forecasting and chaos theory to identify flooding and DDoS attacks. For every time-series behaviour collected, a forecasting-technique prediction is generated, based on a number of features, and the error between the two values is calculated. In order to assess the error of the forecasting from the actual value, the Lyapunov exponent is used to detect potential malicious behaviour. In NS-3 we evaluate our detection algorithm through a series of experiments in flooding and slow-rate DDoS attacks. The results are presented and discussed in detail and compared with related studies, demonstrating its effectiveness and robustness.


IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 34807-34822
Author(s):  
Zhijie Ma ◽  
Li Feng ◽  
Zhimin Wang

2014 ◽  
Vol 539 ◽  
pp. 581-584
Author(s):  
Qin Ma

For solving the control problem of network remote control, introduce a design method of network remote control which can realize the remote control equipments by PC and mobile telephone short message,such as smart home electrical. The paper give the home networks model and describe the software and hardware design of embedded gateway and its control method to electrical equipments in detail.The test result indicates that the capability of this system is stable and dependable, and validates this scheme.


Author(s):  
Tommaso Pecorella ◽  
Laura Pierucci ◽  
Francesca Nizzi

A Smart Home is characterized by the presence of a huge number of small, low power devices, along with more classical devices. According to the Internet of Things (IoT) paradigm, all of them are expected to be always connected to the Internet in order to provide enhanced services. In this scenario, an attacker can undermine both the network security and the user’s security/privacy. Traditional security measures are not sufficient, because they are too difficult to setup and are either too weak to effectively protect the user or too limiting for the new services effectiveness. The paper suggests to dynamically adapt the security level of the smart home network according to the user perceived risk level what we have called network sentiment analysis. The security level is not fixed, established by a central system (usually by the Internet Service Provider) but can be changed with the users cooperation. The security of the smart home network is improved by a distributed firewalling and Intrusion Detection Systems both to the smart home side as to the Internet Service Provider side. These two parts must cooperate and integrate their actions for reacting dynamically to new and ongoing threats. Moreover, the level of network sentiment detected can be propagate to nearby home networks (e.g. the smart home networks of the apartments inside a building) to increase/decrease their level of security, thus creating a true in-line Intrusion Prevention System (IPS). The paper also presents a test bed for Smart Home to detect and counteract to different attacks against the IoT devices,,Wi-Fi and Ethernet connections .


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