Welcome to Scholar Publishing Group

Distributed Processing System, 2021, 2(3); doi: 10.38007/DPS.2021.020302.

Distributed System Optimization Analysis Based on Data Fusion and Data Transmission Method

Author(s)

Ransa Lisen

Corresponding Author:
Ransa Lisen
Affiliation(s)

University of Rochester, America

Abstract

With the continuous development of network technology and the release of various software products, people's lives are increasingly connected with the Internet. With the rapid increase in the number of users of software products, the processing requirements of servers are also increasing rapidly, and distributed systems begin to play an important role. The purpose of this paper is to analyze the optimization of distributed systems based on data fusion and transmission methods. First, it reveals the research and development background of the subject and its importance in scientific research, and studies the data acquisition technology based on RabbitMQ. Some new RabbitMQ implementation functions are proposed in the log collection service, and the RabbitMQ message processing method inside the model is analyzed and optimized. After comparative experiments in this paper, it is confirmed that the optimized RabbitMQ can support more log generators and thus have more efficient processing performance. Through experimental comparison and data analysis, it can be found that in this use case, when there is only one producer, the maximum delivery speed of the server before optimization can be reached faster, with a speed of 3800msg/s, while the optimized server with the maximum delivery speed is 3950msg/s, 2.3% higher than the highest delivery speed.

Keywords

Data Fusion, Data Transmission, Distributed System, Optimization Analysis

Cite This Paper

Ransa Lisen. Distributed System Optimization Analysis Based on Data Fusion and Data Transmission Method. Distributed Processing System (2021), Vol. 2, Issue 3: 12-21. https://doi.org/10.38007/DPS.2021.020302.

References

[1] Stepin Y P, Leonov D G, Papilina T M, et al. System modeling, risks evaluation and optimization of a distributed computer system. Computer Research and Modeling, 2020, 12(6):1349-1359.

[2] Caballero-Aguila R, Hermoso-Carazo A, Linares-Perez J. Networked distributed fusion estimation under uncertain outputs with random transmission delays, packet losses and multi-packet processing. Signal processing, 2019, 156(MAR.):71-83. https://doi.org/10.1016/j.sigpro.2018.10.012

[3] Samala R K, Kotapuri M R. Distributed Generation Allocation in Distribution System using Particle Swarm Optimization based Ant-Lion Optimization. International Journal of Control and Automation, 2020, 13(1):414-426.

[4] Bashar A, Kumar D. Reliable Data Transmission with Sub-Packet Generation and Fusion in Wireless Sensor Networks. IRO Journal on Sustainable Wireless Systems, 2021, 2(4):160-164. https://doi.org/10.36548/jsws.2020.4.004

[5] Kumar R, Kaushik B K, Balasubramanian R. Multispectral Transmission Map Fusion Method and Architecture for Image Dehazing. IEEE Transactions on Very Large Scale Integration (VLSI) Systems, 2019, PP(99):1-5.

[6] Nawaz M A, Raheem A, Shakoor R, et al. feasibility and optimization of standalone pv-biogas hybrid distributed renewable system for rural electrification: a case study of a cholistan community. Mehran University Research Journal of Engineering and Technology, 2019, 38(2):453-462. https://doi.org/10.22581/muet1982.1902.19

[7] Tabasi M, Asgharian P. Optimal operation of energy storage units in distributed system using social spider optimization algorithm. AIMS Electronics and Electrical Engineering, 2019, 3(4):309-327. https://doi.org/10.3934/ElectrEng.2019.4.309

[8] Sameti M, Haghighat F. Optimization of 4th generation distributed district heating system: Design and planning of combined heat and power. Renewable Energy, 2018, 130(JAN.):371-387. https://doi.org/10.1016/j.renene.2018.06.068

[9] Hsu C C, Lin C H, Kao C H, et al. DCSN: Deep Compressed Sensing Network for Efficient Hyperspectral Data Transmission of Miniaturized Satellite. IEEE Transactions on Geoscience and Remote Sensing, 2020, PP(99):1-17.

[10] Yahav I, Sheffi N, Biofcic Y, et al. Multi-Gigabit Spatial-Division Multiplexing Transmission Over Multicore Plastic Optical Fiber. Journal of Lightwave Technology, 2021, 39(8):2296-2304.

[11] Alsafasfeh M, Arida Z A, Saraereh O A, et al. An Optimized Data Fusion Paradigm for WSN Based on Neural Networks. Computers, Materials and Continua, 2021, 69(1):1097-1108. https://doi.org/10.32604/cmc.2021.018187

[12] Iqbal N, Zerguine A, Khan S. OFDMA-TDMA based Seismic Data Transmission Over TV White Space. IEEE Communications Letters, 2021, PP(99):1-1.

[13] Timofeev G A, Potrakhov N N, Gryaznov A Y. Data Transmission in the X-Ray Emission Frequency Range of Electromagnetic Radiation. Journal of the Russian Universities Radioelectronics, 2021, 24(2):6-17.

[14] Yamanaka T, Iwai T, Kubo R. Quality of Performance Aware Data Transmission for Energy-Efficient Networked Control. IEEE Access, 2021, PP(99):1-1. https://doi.org/10.1109/ACCESS.2020.3048796

[15] Selvaraj S, Dhamodharavadhani S, Rathipriya R. Reduce Data Transmission Energy in Wireless Body Area Network using LRNN Prediction Model. International Journal of Future Generation Communication and Networking, 2021, 14(1):1039-1053.

[16] Abdolkarimi E S, Mosavi M R, Rafatnia S, et al. A Hybrid Data Fusion Approach to AI-assisted Indirect Centralized Integrated SINS/GNSS Navigation System during GNSS Outage. IEEE Access, 2021, PP(99):1-1. https://doi.org/10.1109/ACCESS.2021.3096422

[17] Gomathi B, Sujatha R. Prediction of Breast Cancer using Data Fusion of SVM with Optimization Technique. Journal of Information and Computational Science, 2021, 9(12):504-511.

[18] Habbouche H, Benkedjouh T, Amirat Y, et al. Gearbox Failure Diagnosis Using a Multisensor Data-Fusion Machine-Learning-Based Approach. Entropy, 2021, 23(697):1-20. https://doi.org/10.3390/e23060697