Welcome to Francis Academic Press

International Journal of Frontiers in Engineering Technology, 2021, 3(6); doi: 10.25236/IJFET.2021.030602.

Optimization of PBFT Algorithm in Cloud Environment and Its Application in Logistics Blockchain Consensus Algorithm

Author(s)

Yetong Xi and Ying Liu

Corresponding Author:
Ying Liu
Affiliation(s)

College of Chemistry and Environment, Geely University of China, Chengdu 641423, Sichuan, China

Abstract

With the rapid development of e-commerce, the logistics industry has also developed rapidly. However, at present, the service transaction system of the logistics industry is highly centralized, the coordination ability is poor, and the customer information security cannot be effectively guaranteed, which affects the information security, automation, and intelligence of logistics enterprise service transactions. The purpose of this article is to study the consensus algorithm of logistics blockchain based on cloud computing. Based on the basic principles of the practical Byzantine consensus algorithm and the logistics blockchain cloud computing model, combined with decentralization and non-repudiation of information security theory, this paper proposes a cloud computing-based logistics blockchain consensus algorithm. Parallel processing functions for design and algorithm analysis. The experimental results show that the test indicators of the algorithm are better than the practical Byzantine consensus algorithm and the optimized MinBFT algorithm. Therefore, this algorithm is an effective blockchain consensus algorithm in logistics service transactions. It has certain application to the logistics industry. Practical significance. In this paper, by testing the security of the algorithm, it is obtained that the attack success rate is 0 when the number of forged nodes differs from normal nodes by 20, and it can be seen that the algorithm has high security performance.

Keywords

Cloud Computing, Block Chain, Logistics Transportation, Block Chain Model, Consensus Algorithm

Cite This Paper

Yetong Xi and Ying Liu. Optimization of PBFT Algorithm in Cloud Environment and Its Application in Logistics Blockchain Consensus Algorithm. International Journal of Frontiers in Engineering Technology (2021), Vol. 3, Issue 6: 7-18. https://doi.org/10.25236/IJFET.2021.030602.

References

[1] DejeneBoru, DzmitryKliazovich, FabrizioGranelli. Energy-efficient data replication in cloud computing datacenters. Cluster Computing, 2015, 18(1):385-402.

[2] David Yermack. Corporate Governance and Blockchains. Social Science Electronic Publishing, 2017, 21(1):7-31.

[3] Q.-S. Dou, L. Cong, P. Jiang. Research on discrete linear consensus algorithm with noises. ActaAutomaticaSinica, 2015, 41(7):1328-1340.

[4] UdayVenkatadri, KasinadhuniShyama Krishna, M. Ali Ulku. On Physical Internet Logistics: Modeling the Impact of Consolidation on Transportation and Inventory Costs. IEEE Transactions on Automation Science & Engineering, 2016, 13(4):1-11.

[5] Melodena Stephens Balakrishnan. Aramex PJSC: carving a competitive advantage in the global logistics and express transportation service industry. Emerald Group Publishing, 2015, 5(3):1-54.

[6] Sparks W .Geospatial Analysis and Optimization of Fleet Logistics to Exploit Alternative Fuels and Advanced Transportation Technologies. Procedia Engineering, 2015, 121(5):309-316.

[7] Mario Guajardo, Teodor G. Crainic, Debjit Roy. Special issue on “Transportation and Logistics with Autonomous Technologies”. International Transactions in Operational Research, 2020, 27(1):696-696.

[8] Caunhye, Aakil M, Zhang, Yidong, Li, Mingzhe. A location-routing model for prepositioning and distributing emergency supplies. Transportation Research Part E Logistics & Transportation Review, 2016, 90(43):161-176.

[9] Hanne Pollaris, Kris Braekers, AnCaris. Iterated local search for the capacitated vehicle routing problem with sequence-based pallet loading and axle weight constraints. Euro Journal on Transportation & Logistics, 2017, 69(3):304-316.

[10] Sarah Underwood. Blockchain beyond Bitcoin. Communications of the ACM, 2016, 59(11):15-17.

[11] WeizhiMeng, ElmarTischhauser, Qingju Wang. When Intrusion Detection Meets Blockchain Technology: A Review. IEEE Access, 2018, 6(1):10179-10188.

[12] Esther Mengelkamp. A blockchain-based smart grid: towards sustainable local energy markets. Computer Science - Research and Development, 2018, 33(1-2):207-214.

[13] SamareshBera, SudipMisra, Joel J.P.C. Rodrigues. Cloud Computing Applications for Smart Grid: A Survey. Parallel & Distributed Systems IEEE Transactions on, 2015, 26(5):1477-1494.

[14] Yumin Wang, Jiangbo Li, Harry Haoxiang Wang. Cluster and cloud computing framework for scientific metrology in flow control. Cluster Computing, 2019, 22(1):1-10.

[15] TarandeepKaur, InderveerChana. Energy Efficiency Techniques in Cloud Computing- A Survey and Taxonomy. Acm Computing Surveys, 2015, 48(2):1-46.

[16] Zijian Cao, Jin Lin, Can Wan. Optimal Cloud Computing Resource Allocation for Demand Side Management in Smart Grid. IEEE Transactions on Smart Grid, 2017, 8(4):1943-1955.

[17] JianShen, Member, IEEE. Anonymous and Traceable Group Data Sharing in Cloud Computing. IEEE Transactions on Information Forensics & Security, 2018, 13(4):912-925.

[18] Humphrey M. Sabi, Faith-Michael E. Uzoka, KehbumaLangmia. Conceptualizing a model for adoption of cloud computing in education. International Journal of Information Management, 2016, 36(2):183-191.

[19] LexuanMeng, Xin Zhao, Fen Tang. Distributed Voltage Unbalance Compensation in Islanded Microgrids by Using Dynamic-Consensus-Algorithm. IEEE Transactions on Power Electronics, 2015, 31(1):1-1.

[20] RanjanN ,BihariSoni B , Shraman B . An Efficient Technique for Image Mosaicing using Random Sample Consensus Algorithm. International Journal of Computer Applications, 2015, 118(16):22-26.

[21] Moreno Ambrosin, Paolo Braca, Mauro Conti. ODIN: O bfuscation-Based Privacy-Preserving Consensus Algorithm for D ecentralized I nformationFusion in Smart Device N etworks. ACM Transactions on Internet Technology, 2017, 18(1):1-22.

[22] Edmond Nurellari, Des McLernon, MounirGhogho. Distributed Two-Step Quantized Fusion Rules via Consensus Algorithm for Distributed Detection in Wireless Sensor Networks. IEEE Transactions on Signal & Information Processing Over Networks, 2016, 2(3):321-335.

[23] X. Zhang, T. Yu. Virtual generation tribe based collaborative consensus algorithm for dynamic generation dispatch of AGC in interconnected power grids. Zhongguo Dianji Gongcheng Xuebao/ proceedings of the Chinese Society of Electrical Engineering, 2015, 35(15):3750-3759.

[24] Yao Chen. Characterizing the Convergence of a Distributed Consensus Algorithm via Relative Hull. IEEE Transactions on Circuits & Systems II Express Briefs, 2015, 62(5):511-515.

[25] Jiahu Qin, Weiming Fu, HuijunGao. Distributed k-Means Algorithm and Fuzzy c-Means Algorithm for Sensor Networks Based on Multiagent Consensus Theory. IEEE Transactions on Cybernetics, 2016, 47(3):1-12.