Welcome to Scholar Publishing Group

Distributed Processing System, 2021, 2(4); doi: 10.38007/DPS.2021.020406.

Distributed System Application Strategy based on Dynamic Load Balancing Model of Cloud Computing

Author(s)

Mazinin Anuen

Corresponding Author:
Mazinin Anuen
Affiliation(s)

Griffith University, Australia

Abstract

As a new distributed computing technology, more and more applications are deployed and developed in the cloud system. At the same time, load balancing(LB) is the key technology to solve the high-performance computing in the distributed system(DS). Therefore, this paper studies the application strategy of dynamic LB model based on cloud computing(CC) in DS. CC technology and LB algorithm are briefly analyzed; The dynamic LB model based on CC is discussed, and the dynamic LB strategy is designed; Finally, the effectiveness of the application strategy of the dynamic LB model based on CC in the DS is analyzed through simulation experiments. The experimental results show that the dynamic LB algorithm designed in this paper has a good effect on the LB of each node in the DS.

Keywords

Cloud Computing Technology, Dynamic Load Balancing Model, Distributed System, Application Strategy Research

Cite This Paper

Mazinin Anuen. Distributed System Application Strategy based on Dynamic Load Balancing Model of Cloud Computing. Distributed Processing System (2021), Vol. 2, Issue 4: 44-51. https://doi.org/10.38007/DPS.2021.020406.

References

[1] Wallden M, Markidis S, Okita M, et al. Memory Efficient Load Balancing for Distributed Large-Scale Volume Rendering Using a Two-Layered Group Structure. IEICE Transactions on Information and Systems, 2019, E102.D(12):2306-2316.

[2] Alam M, Haidri R A, Shahid M. Resource Aware Load Balancing Model for Batch of Tasks (BoT) with Best Fit Migration Policy on Heterogeneous Distributed Computing Systems. International Journal of Pervasive Computing and Communications, 2020, 16(2):113-141.

[3] Cabrera A, Acosta A, Almeida F, et al. A heuristic technique to improve energy efficiency with dynamic load balancing. Journal of Supercomputing, 2019, 75(3):1610-1624.

[4] Handur E. Particle Swarm Optimization for Load Balancing in Distributed Computing Systems – A Survey. Turkish Journal of Computer and Mathematics Education (TURCOMAT), 2021, 12(1S):257-265.

[5] Nakajo Y, Athavale J, Yoda M, et al. Dynamic Load Balancing Using Actual Workload Traces Based on Central Processing Unit Temperatures. Journal of Electronic Packaging, 2019, 141(3):031014.1-031014.20.

[6] Al-Sayegh A, Sotelino E D. A New Row-Wise Parallel Finite Element Analysis Algorithm with Dynamic Load Balancing. International Journal of Earthquake and Impact Engineering, 2020, 3(2):120-142.

[7] Giordano A, Rango A D, Rongo R, et al. Dynamic Load Balancing in Parallel Execution of Cellular Automata. IEEE Transactions on Parallel and Distributed Systems, 2021, 32(2):470-484.

[8] Huang J, Liu Y, Li R, et al. Optimal power allocation and load balancing for non-dedicated heterogeneous distributed embedded computing systems. Journal of Parallel and Distributed Computing, 2019, 130(AUG.):24-36.

[9] Perez A C, Acosta A, Almeida F, et al. A Dynamic Multi–Objective Approach for Dynamic Load Balancing in Heterogeneous Systems. IEEE Transactions on Parallel and Distributed Systems, 2020, PP(99):1-1.

[10] Stephen B, Telford R, Galloway S. Non-Gaussian Residual based Short Term Load Forecast Adjustment for Distribution Feeders. IEEE Access, 2020, PP(99):1-1.

[11] Khalid Y N, Aleem M, Ahmed U, et al. Troodon A machine-learning based load-balancing application scheduler for CPU–GPU system. Journal of Parallel and Distributed Computing, 2019, 132(OCT.):79-94.

[12] Daraghmi E, Daraghmi Y A. Advanced Diffusion Approach To Dynamic Load-Balancing For Cloud Storage. International Journal of Parallel and Distributed Systems and Networks, 2019, 10(2/3):01-13.

[13] Korndrfer J, Eleliemy A, Mohammed A, et al. LB4OMP: A Dynamic Load Balancing Library for Multithreaded Applications. IEEE Transactions on Parallel and Distributed Systems, 2021, PP(99):1-1.

[14] Kitsuwan N, Pavarangkoon P, Widiyanto H M, et al. Dynamic load balancing with learning model for Sudoku solving system. Digital Communications and Networks, 2020, 6( 1):108-114.

[15] Pei J, Hong P, Xue K, et al. Efficiently Embedding Service Function Chains with Dynamic Virtual Network Function Placement in Geo-distributed Cloud System. IEEE Transactions on Parallel and Distributed Systems, 2019, 30(99):2179-2192.

[16] Liu K Z, Teel A R, Sun X M, et al. Model-Based Dynamic Event-Triggered Control for Systems With Uncertainty: A Hybrid System Approach. IEEE Transactions on Automatic Control, 2020, PP(99):1-1.

[17] Haji L M, Zeebaree S, Ahmed O M, et al. Dynamic Resource Allocation for Distributed Systems and Cloud Computing. Test Engineering and Management, 2020, 83(May-June 2020):22417 – 22426.

[18] Dwivedi K M, Osuch T, Trivedi G. High sensitive and large dynamic range quasi-distributed sensing system based on slow-light -phase-shifted fiber Bragg gratings. Opto-Electronics Review, 2019, 27(3):233-240.