Loading [MathJax]/extensions/MathZoom.js
Industrial Time Series Big Data Sharing Method Based on Local Area Network Monitoring Log | IEEE Conference Publication | IEEE Xplore

Industrial Time Series Big Data Sharing Method Based on Local Area Network Monitoring Log


Abstract:

Due to the involvement of a large number of real-time monitoring and data collection devices, the generated temporal data is huge and complex, posing a challenge for data...Show More

Abstract:

Due to the involvement of a large number of real-time monitoring and data collection devices, the generated temporal data is huge and complex, posing a challenge for data sharing among multiple departments. To address this issue, this study proposes an industrial time series big data sharing method based on local area network monitoring logs. Deploy monitoring equipment in the local area network, collect real-time operation log data of industrial equipment, and perform missing value processing and missing data filling processing on the collected industrial time series data; Based on the data processing results, a blockchain and ROMA integrated platform based industrial time series data sharing model is constructed, and data sharing is achieved through the network layer, data layer, and application layer of the model. The experimental results indicate that this method can ensure both data consistency and integrity in data sharing, and has high application value.
Date of Conference: 17-19 November 2023
Date Added to IEEE Xplore: 15 April 2024
ISBN Information:
Conference Location: Xiamen, China
References is not available for this document.

I. Introduction

With the development of Internet, Internet of Things, edge computing and other technologies, a large number of time series data generated in the industrial field have been acquired and stored, which contain important information and value [1]. However, due to data dispersion, inconsistent formats, and issues such as data security and privacy, the sharing and utilization of industrial time series big data face many challenges. Industrial time series big data sharing can promote the integration and interoperability of industrial data, improve data utilization efficiency, strengthen collaboration and collaboration between upstream and downstream enterprises in the industrial chain, improve supply chain efficiency and flexibility, promote cooperation between academia and industry, and promote scientific research and technological innovation [2]-[3]. Therefore, studying the sharing methods of industrial time series big data is of great significance for solving the problem of industrial data silos and promoting the maximization of data value.

Select All
1.
NING Jianting, HUANG Xinyi, WEI Lifei, MA Jinhua and RONG Jing, "Tracing Malicious Insider in Attribute-Based Cloud Data Sharing[J]", Chinese Journal of Computers, vol. 45, no. 07, pp. 1431-1445, 2022.
2.
NIU Shufen, CHEN Lixia, LI Wenting, WANG Caifen and DU Xiaoni, "Electronic Medical Record Data Sharing Scheme Based on Blockchain[J]", Acta Automatica Sinica, vol. 48, no. 08, pp. 2028-2038, 2022.
3.
FENG Qihang, "Internet of Things privacy data cross domain security sharing model considering attribute encryption[J]", Modern Electronics Technique, vol. 46, no. 01, pp. 91-95, 2023.
4.
LIANG Youyi, LING Jie, LIU Yi and Lai Qi, "Secure and efficient group data sharing method in hybrid cloud environment[J]", Application Research of Computers, vol. 37, no. 09, pp. 2789-2792+2810, 2020.
5.
YU Jingang, ZHANG Hong, LI Shu, MAO Lishuang and JI Pengxiang, "Data Sharing Model for Internet of Things Based on Blockchain[J]", Journal of Chinese Computer Systems, vol. 40, no. 11, pp. 2324-2329, 2019.
6.
LIU Xuejiao, CAO Tiancong and XIA Yingjie, "Research on efficient and secure cross-domain data sharing of IoV under blockchain architecture[J]", Journal on Communications, vol. 44, no. 03, pp. 186-197, 2023.
7.
PASUPATHI Subbulakshmi, SHANMUGANATHAN Vimal, MADASAMY Kaliappan et al., "Trend analysis using agglomerative hierarchical clustering approach for time series big data[J]", The Journal of Supercomputing, vol. 77, no. 7, pp. 6505-6524, 2021.
8.
DANIEL-MARTÍNEZ Wendy, SANTANA-VALADEZ Luis Alejandro, ZAMUDIO-GARCÍA Víctor Manuel et al., "Implementation of a workbench platform for the management of smart contracts in BlockChain nodes on Azure Cloud[J]", Revista Tecnologías de la Informaciόn, vol. 34, no. 1, pp. 38-50, 2023.
9.
ZAMAN Ishtiaque, HASAN Md Mahmudul, HE Miao et al., "Design of a Peer-to-Peer Energy Trading Platform Using Multilayered Semi-Permissioned Blockchain[J]", International Journal of Communications Network and System Sciences, vol. 15, no. 07, pp. 94-110, 2022.
10.
LIU Yuhong, YANG Liang, PIAO Chunhui and ZHANG Zhiguo, "Research on key technologies of safety monitoring data sharing for railway engineering construction based on blockchain[J]", Journal on Communications, vol. 42, no. 08, pp. 206-216, 2021.
Contact IEEE to Subscribe

References

References is not available for this document.