Enterprise Digital Intelligent Remote Control System Based on Industrial Internet of Things
DOI:
https://doi.org/10.53469/wjimt.2024.07(02).09Keywords:
Industrial Internet of Things, Enterprise information management, Remote operation and maintenance management, Enterprise managementAbstract
Based on the background of Industrial Internet of Things, this paper aims to explore the application of remote monitoring and maintenance technology in IT enterprise automation control system. IT equipment as the core of modern enterprise management, in today's industrial Internet of Things and intelligent development, how to better manage these equipment, do a good job of daily troubleshooting, daily maintenance, management is a moment to reflect the comprehensive strength of an enterprise. Improve the continuity of production and optimize the production process, so as to effectively and quickly deal with various problems in production and life. This paper will deeply study the basic principles, application cases, and maintenance and fault diagnosis strategies of this technology in the enterprise, in order to provide more efficient and intelligent production management solutions for the IT industry. The results show that remote monitoring and maintenance technology plays an important role in improving production efficiency, reducing costs, ensuring quality and ensuring equipment reliability, and has a positive impact on the development and sustainability of the industry.
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