International Journal of Electronic Engineering and Computer Science
Articles Information
International Journal of Electronic Engineering and Computer Science, Vol.5, No.1, Mar. 2020, Pub. Date: May 26, 2020
Application of Big Data and Artificial Intelligence Technology in Industrial Design
Pages: 10-14 Views: 1365 Downloads: 369
[01] Taiyuan Guo, School of Information Engineering, China University of Geosciences, Beijing, China.
[02] Roland Eckert, Business School, Whenzhou University, Whenzhou, China; University for Applied Sciences for Economics and Management, Duesseldorf, Germany.
[03] Mei Li, School of Information Engineering, China University of Geosciences, Beijing, China.
Artificial intelligence and big data technology have entered a new era of rapid development. At home and abroad, artificial intelligence and big data technology are used to assist industrial design from two aspects: (1) ways and means to improve product quality; (2) integrating and connecting various elements of product development. This paper introduces the application of artificial intelligence and big data technology in the field of industrial design. And it puts forward the design scheme of "demand ---- industrial design innovation ---- market ---- demand" based on industrial intelligence and big data technology, aiming at the problems that industrial enterprises are still facing such as interminable R&D cycle of industrial design innovation, lagging product design and lack of sustainable innovation. That is to provide the most targeted demand through the algorithm model and indirectly assist in the prediction of industrial design related decisions, so as to effectively promote the improvement of industrial design innovation ability, help industrial enterprises in the R&D link to save costs, shorten the new product R&D cycle, improve the success rate of product listing, and create practical benefits; at the same time, it also provides a better solution to the major problems of data isolation and low decision accuracy faced by existing domestic and foreign research institutes.
Industrial Design, Product Development, Big Data, Artificial Intelligence
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