Developing a smart factory framework a case of ceramic tile manufacturing
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Author
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Tran Le Vi Nhan TamThe University of Danang - University of Science and Technology, Danang, VietnamHuynh Nhat ToThe University of Danang - University of Science and Technology, Danang, VietnamNguyen Thi Minh XuanThe University of Danang - University of Science and Technology, Danang, VietnamNguyen Thi Minh NguyetThe University of Danang - University of Science and Technology, Danang, Vietnam
Từ khóa:
Tóm tắt
This research paper presents a framework for smart factory applications in ceramic manufacturing, harnessing data collection and machine learning algorithms to seamlessly align with the demands of Industry 4.0 and facilitate digital transformation. At its core, the framework is exemplified through the creation of a dynamic web application, consisting of three pivotal modules. The first module encompasses a robust database system for efficient storage and visualization of data from Internet of Things (IoT) devices. The second module orchestrates operational facets, encompassing aggregate planning, predictive maintenance, and quality control. The third module extends its purview to business and finance, adeptly forecasting demand patterns and streamlining payroll management. This multidimensional endeavor is underpinned by overcoming diverse challenges, spanning data governance, interoperability, fortification of information, and scalability.
Tài liệu tham khảo
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