Abstract
In the year 2013, the German scientists introduced the concept of “Industry 4.0” (Kagermann et al. in Securing the future of German manufacturing industry recommendations for implementing the strategic initiative INDUSTRIE 4.0. Germany: Federal Ministry of education and research. Final Report of the Industrial 4.0 Working Group, 2012). They believed that in the next 10 years, the industrialization based on the cyber-physical system (CPS) will make the society enter the fourth revolution dominated by intelligent manufacturing. “Industry 4.0” will make the manufacturing process more flexible and strong, develop new business models, and promote the formation of a new cyber-physical system platform. The core of the “Industry 4.0” strategy is to realize the real-time connection, mutual recognition, and effective communication between people, equipment, and products through CPS network, to build a highly flexible personalized and digital intelligent manufacturing mode.
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Zhu, K. (2022). The Cyber-Physical Production System of Smart Machining System. In: Smart Machining Systems. Springer Series in Advanced Manufacturing. Springer, Cham. https://doi.org/10.1007/978-3-030-87878-8_12
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DOI: https://doi.org/10.1007/978-3-030-87878-8_12
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