Blockchain-based Smart-IoT Trust Zone Measurement Architecture
- URL: http://arxiv.org/abs/2001.03002v1
- Date: Wed, 8 Jan 2020 03:41:27 GMT
- Title: Blockchain-based Smart-IoT Trust Zone Measurement Architecture
- Authors: Jawad Ali, Toqeer Ali, Yazed Alsaawy, Ahmad Shahrafidz Khalid,
Shahrulniza Musa
- Abstract summary: Internet of Things (IoT) has gained a tremendous attention and become a central aspect of our environment.
In this paper, we propose a behavior monitor in IoT- setup which can provide trust-confidence to outside networks.
In addition, we also incorporate Trusted Execution Technology (Intel SGX) in order to provide a secure execution environment for applications and data on blockchain.
- Score: 1.5749416770494706
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With a rapid growth in the IT industry, Internet of Things (IoT) has gained a
tremendous attention and become a central aspect of our environment. In IoT the
things (devices) communicate and exchange the data without the act of human
intervention. Such autonomy and proliferation of IoT ecosystem make the devices
more vulnerable to attacks. In this paper, we propose a behavior monitor in
IoT-Blockchain setup which can provide trust-confidence to outside networks.
Behavior monitor extracts the activity of each device and analyzes the behavior
using deep auto-encoders. In addition, we also incorporate Trusted Execution
Technology (Intel SGX) in order to provide a secure execution environment for
applications and data on blockchain. Finally, in evaluation we analyze three
IoT devices data that is infected by mirai attack. The evaluation results
demonstrate the ability of our proposed method in terms of accuracy and time
required for detection.
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