Bibliographic Details
| Title: |
BCST-APTS: Blockchain and CP-ABE Empowered Data Supervision, Sharing, and Privacy Protection Scheme for Secure and Trusted Agricultural Product Traceability System. |
| Authors: |
Zhang, Guofeng, Chen, Xiao, Feng, Bin, Guo, Xuchao, Hao, Xia, Ren, Henggang, Dong, Chunyan, Zhang, Yanan |
| Source: |
Security & Communication Networks; 1/15/2022, Vol. 2022, p1-11, 11p |
| Subject Terms: |
BLOCKCHAINS, FARM produce, ACCESS control, PRIVACY, SUPERVISION, PROBLEM solving |
| Abstract: |
Blockchain provides new technologies and ideas for the construction of agricultural product traceability system (APTS). However, if data is stored, supervised, and distributed on a multiparty equal blockchain, it will face major security risks, such as data privacy leakage, unauthorized access, and trust issues. How to protect the privacy of shared data has become a key factor restricting the implementation of this technology. We propose a secure and trusted agricultural product traceability system (BCST-APTS), which is supported by blockchain and CP-ABE encryption technology. It can set access control policies through data attributes and encrypt data on the blockchain. This can not only ensure the confidentiality of the data stored in the blockchain, but also set flexible access control policies for the data. In addition, a whole-chain attribute management infrastructure has been constructed, which can provide personalized attribute encryption services. Furthermore, a reencryption scheme based on ciphertext-policy attribute encryption (RE-CP-ABE) is proposed, which can meet the needs of efficient supervision and sharing of ciphertext data. Finally, the system architecture of the BCST-APTS is designed to successfully solve the problems of mutual trust, privacy protection, fine-grained, and personalized access control between all parties. [ABSTRACT FROM AUTHOR] |
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| Database: |
Complementary Index |