Biblio

Filters: Author is Aman, Muhammad Naveed  [Clear All Filters]
2022-06-09
Aman, Muhammad Naveed, Sikdar, Biplab.  2021.  AI Based Algorithm-Hardware Separation for IoV Security. 2021 IEEE Globecom Workshops (GC Wkshps). :1–6.
The Internet of vehicles is emerging as an exciting application to improve safety and providing better services in the form of active road signs, pay-as-you-go insurance, electronic toll, and fleet management. Internet connected vehicles are exposed to new attack vectors in the form of cyber threats and with the increasing trend of cyber attacks, the success of autonomous vehicles depends on their security. Existing techniques for IoV security are based on the un-realistic assumption that all the vehicles are equipped with the same hardware (at least in terms of computational capabilities). However, the hardware platforms used by various vehicle manufacturers are highly heterogeneous. Therefore, a security protocol designed for IoVs should be able to detect the computational capabilities of the underlying platform and adjust the security primitives accordingly. To solve this issue, this paper presents a technique for algorithm-hardware separation for IoV security. The proposed technique uses an iterative routine and the corresponding execution time to detect the computational capabilities of a hardware platform using an artificial intelligence based inference engine. The results on three different commonly used micro-controllers show that the proposed technique can effectively detect the type of hardware platform with up to 100% accuracy.
2019-12-18
Javaid, Uzair, Siang, Ang Kiang, Aman, Muhammad Naveed, Sikdar, Biplab.  2018.  Mitigating loT Device Based DDoS Attacks Using Blockchain. Proceedings of the 1st Workshop on Cryptocurrencies and Blockchains for Distributed Systems. :71–76.
Many IoT devices lack memory and computational complexities of modern computing devices, making them vulnerable to a wide range of cyber attacks. Among these, DDoS attacks are a growing concern in IoT. Such attacks are executed through the introduction of rogue devices and then using them and/or other compromised devices to facilitate DDoS attacks by generating relentless traffic. This paper aims to address DDoS security issues in IoT by proposing an integration of IoT devices with blockchain. This paper uses Ethereum, a blockchain variant, with smart contracts to replace the traditional centralized IoT infrastructure with a decentralized one. IoT devices are then required to access the network using smart contracts. The integration of IoT with Ethereum not only prevents rogue devices from gaining access to the server but also addresses DDoS attacks by using static resource allocation for devices.
2018-01-10
Aman, Muhammad Naveed, Chua, Kee Chaing, Sikdar, Biplab.  2017.  Secure Data Provenance for the Internet of Things. Proceedings of the 3rd ACM International Workshop on IoT Privacy, Trust, and Security. :11–14.

The vision of smart environments, systems, and services is driven by the development of the Internet of Things (IoT). IoT devices produce large amounts of data and this data is used to make critical decisions in many systems. The data produced by these devices has to satisfy various security related requirements in order to be useful in practical scenarios. One of these requirements is data provenance which allows a user to trust the data regarding its origin and location. The low cost of many IoT devices and the fact that they may be deployed in unprotected spaces requires security protocols to be efficient and secure against physical attacks. This paper proposes a light-weight protocol for data provenance in the IoT. The proposed protocol uses physical unclonable functions (PUFs) to provide physical security and uniquely identify an IoT device. Moreover, wireless channel characteristics are used to uniquely identify a wireless link between an IoT device and a server/user. A brief security and performance analysis are presented to give a preliminary validation of the protocol.