Blockchain-Based Spectrum Resource Securitization via Semi-Fungible Token-Lock
- URL: http://arxiv.org/abs/2601.15594v1
- Date: Thu, 22 Jan 2026 02:40:37 GMT
- Title: Blockchain-Based Spectrum Resource Securitization via Semi-Fungible Token-Lock
- Authors: Zhixian Zhou, Bin Chen, Zhe Peng, Zhiming Liang, Ruijun Wu, Chen Sun, Shuo Wang,
- Abstract summary: Existing approaches based on ERC404 style hybrid token models rely on frequent minting and burning during asset transfers.<n>This paper proposes the Semi Fungible Token Lock (SFT Lock) method, a lock/unlock based mechanism that preserves NFT identity and historical traceability.
- Score: 14.215125886941175
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As 6G networks evolve, spectrum assets require flexible, dynamic, and efficient utilization, motivating blockchain based spectrum securitization. Existing approaches based on ERC404 style hybrid token models rely on frequent minting and burning during asset transfers, which disrupt token identity continuity and increase on chain overhead. This paper proposes the Semi Fungible Token Lock (SFT Lock) method, a lock/unlock based mechanism that preserves NFT identity and historical traceability while enabling fractional ownership and transferability. By replacing mint/burn operations with deterministic state transitions, SFT Lock ensures consistent lifecycle representation of spectrum assets and significantly reduces on chain operations. Based on this mechanism, a modular smart contract architecture is designed to support spectrum authorization, securitization, and sharing, and a staking mechanism is introduced to enhance asset liquidity. Experimental results on a private Ethereum network demonstrate that, compared with ERC404 style hybrid token models, the proposed method achieves substantial gas savings while maintaining functional correctness and traceability.
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