Evolution mechanism and empirical analysis of innovation network in advanced manufacturing industry

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Palabras clave:

Advanced manufacturing industry, Evolution mechanism, Empirical analysis, Innovation network

Resumen

As the “chaotic” edge of innovation system has strong innovation potential and is easy to form and develop the emerging technology innovation network, the formation process of emerging technologies and their relationship with the development trajectory of original technologies are analyzed, and the evolution mechanism of innovation network of advanced manufacturing industry is deeply studied combined with life cycle theory. Firstly, empirical analysis is carried out by collecting patents data in the industrial robotics field. Then, the IPC co-occurrence network and patentee citation network are plotted by combining patents citation analysis with social network analysis. Next, the technical characteristics and knowledge flow characteristics of an advanced manufacturing innovation network are verified by calculating various indicators of the network. Finally, the empirical results show that the technology structure in the field of industrial robotics has high heterogeneity, wide integration among
technical fields, and knowledge flow network has a small-world effect, characterized by easy flow, wide flow direction, high efficiency, fuzzy network boundary, and numerous and diversified core the key players in innovation.

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Publicado

2022-08-09

Cómo citar

Wang, J. ., Cao, X., Zhu, J., & Ma, H. (2022). Evolution mechanism and empirical analysis of innovation network in advanced manufacturing industry. Transinformação, 34, 1–14. Recuperado a partir de https://periodicos.puc-campinas.edu.br/transinfo/article/view/6532

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