Intellectualization Of Sewing Machinery Management Processes Taking Into Account Technological Similarities
Keywords:
Sewing machines, control process, intelligent control system, technological similarity, automation, production efficiency, product quality and digital transformationAbstract
In the garment manufacturing sector, effective control of sewing machines plays a crucial role in achieving higher productivity, enhancing product quality, and maintaining overall operational efficiency. This study also examines the working principles of sewing equipment, approaches to optimizing technological processes, improving workforce productivity, and promoting energy-saving practices. In addition, modern hardware and software solutions for machine control, their real-world implementation, and their significance within production systems are explored. The discussion emphasizes the benefits of digitalizing technological operations and adopting management approaches aligned with the Industry 4.0 paradigm. Furthermore, the research offers scientific, theoretical, and practical recommendations focused on advancing production processes in the sewing industry, upgrading management frameworks, and supporting the manufacture of competitive products.
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