A Reliable Data-transmission Mechanism using Blockchain in Edge
Computing Scenarios
- URL: http://arxiv.org/abs/2202.03428v1
- Date: Mon, 7 Feb 2022 00:49:41 GMT
- Title: A Reliable Data-transmission Mechanism using Blockchain in Edge
Computing Scenarios
- Authors: Peiying Zhang, Xue Pang, Neeraj Kumar, Gagangeet Singh Aujla, Haotong
Cao
- Abstract summary: We propose a data transmission mechanism based on blockchain, which uses the distributed architecture of blockchain to ensure that the data is not tampered with.
In the end, the simulation results show that the proposed scheme can ensure the reliability of data transmission in the Internet of things to a great extent.
- Score: 22.92724948442006
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the advent of the Internet of things (IoT) era, more and more devices
are connected to the IoT. Under the traditional cloud-thing centralized
management mode, the transmission of massive data is facing many difficulties,
and the reliability of data is difficult to be guaranteed. As emerging
technologies, blockchain technology and edge computing (EC) technology have
attracted the attention of academia in improving the reliability, privacy and
invariability of IoT technology. In this paper, we combine the characteristics
of the EC and blockchain to ensure the reliability of data transmission in the
IoT. First of all, we propose a data transmission mechanism based on
blockchain, which uses the distributed architecture of blockchain to ensure
that the data is not tampered with; secondly, we introduce the three-tier
structure in the architecture in turn; finally, we introduce the four working
steps of the mechanism, which are similar to the working mechanism of
blockchain. In the end, the simulation results show that the proposed scheme
can ensure the reliability of data transmission in the Internet of things to a
great extent.
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