Construction of an Intelligent Quality and Operations Control System for Industrial Electrical Enterprises Driven by Dual Standards ISO 14001 and ISO 9001
DOI:
https://doi.org/10.70393/6a69656173.333636ARK:
https://n2t.net/ark:/40704/JIEAS.v4n1a01Disciplines:
Automation TechnologySubjects:
Industrial AutomationReferences:
28Keywords:
ISO 9001 / ISO 14001 Integration, Intelligent Quality Management Systems, Industrial IoT (IIoT) and Big Data Analytics, AI-Driven Operational ControlAbstract
This paper focuses on the development of intelligent quality and operational control systems for industrial electrical appliance companies, examining whether these systems integrate ISO 14001 (Environmental Management System) and ISO 9001 (Quality Management System) standards. By utilizing these standards, the paper elucidates how the dual-standard framework can improve overall enterprise operational efficiency, quality control, and environmental sustainability. Furthermore, the proposed algorithm combines traditional management strategies with new technologies such as Artificial Intelligence (AI), the Internet of Things(IoT), and big data to demonstrate that the system can reduce operating costs, improve product quality, and control effectiveness, ultimately achieving effective and long-term sustainable development for the enterprise.
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