Distributed-Proof-of-Sense: Blockchain Consensus Mechanisms for Detecting Spectrum Access Violations of the Radio Spectrum
Creators
- 1. Faculty of Engineering, Vrije Universiteit Brussel, Brussels, Belgium
- 2. Department of Electrical and Information Engineering, University of Ruhuna, Galle, Sri Lanka
- 3. Industrial Engineering Department, Vrije Universiteit Brussel, Brussels, Belgium
- 4. Florida International University (FIU), Miami, Florida, USA
- 5. School of Computer Science, University College Dublin (UCD), Ireland
Description
The exponential growth in connected devices with Internet-of-Things (IoT) and next-generation wireless networks requires more advanced and dynamic spectrum access mechanisms. Blockchain-based approaches to Dynamic Spectrum Access (DSA) seem efficient and robust due to their inherited characteristics such as decentralization, immutability and transparency. However, conventional consensus mechanisms used in blockchain networks are expensive to be used due to the cost, processing and energy constraints. Moreover, addressing spectrum violations (i.e., unauthorized access to the spectrum) is not well-discussed in most blockchain-based DSA systems in the literature. In this work, we propose a newly tailored energyefficient consensus mechanism called “Distributed-Proof-of-Sense (DPoS)” that is specially designed to enable DSA and detect spectrum violations. The proposed consensus algorithm motivates blockchain miners to perform spectrum sensing, which leads to the collection of a full spectrum of sensing data. An elliptic curve cryptography-based zero-knowledge proof is used as the core of the proposed mechanism. We use MATLAB simulations to analyze the performance of the consensus mechanism and implement several consensus algorithms in a microprocessor to highlight the benefits of adopting the proposed system.
Files
Distributed-Proof-of-Sense Blockchain Consensus Mechanisms for Detecting Spectrum Access Violations of the Radio Spectrum.pdf
Files
(3.1 MB)
Name | Size | Download all |
---|---|---|
md5:b46eac09ab6076efc238ddfbb1238fda
|
3.1 MB | Preview Download |