FABRICACIÓN AVANZADA Bibliografía • [1] G. C. Kane, D. Palmer, A. N. Phillips, D. Kiron and N. Buckley, “Strategy, Not Technology, Drives Digital Transformation” MIT Sloan Management Review and Deloitte University Press, July 2015. • [2] S. Jeschke, C. Brecher, T. Meisen, D. Özdemir, T. Eschert, Industrial internet of things and cyber manufacturing systems, in: Industrial Internet of Things, Springer, 2017, pp. 3–19. • [3] R.A. Rojas, E. Rauch, R. Vidoni, D.T. Matt, Enabling Connectivity of Cyberphysical Production Systems: A Conceptual Framework, Procedia Manuf. 11 (2017) 822–829, https://doi.org/10.1016/j. promfg.2017.07.184. • [4] Van de Vrande V, De Jong JP, Vanhaverbeke W, De Rochemont M. Open innovation in SMEs: trends, motives and management challenges. Technovation 2009;29(6-7):423–37. • [5] Maier A, Student D. Industrie 4.0 - der große Selbstbetrug [In German] Retrieved April 2018 from 2015http://www.manager-magazin.de/magazin/ artikel/digitalerevolution-industrie-4-0-ueberfor- dert-deutschen-mittelstand-a-1015724.html. • [6] Eisert R. Mittelständler verpassen die Zukunftstrends [In German] Retrieved April 2018 http://www.wiwo.de/unternehmen/ mittelstand/industrie-4-0-mittelstaendler-verpas- sen-die-zukunftstrends/10004718.html. • [7] Esmaeilian B, Behdad S, Wang B. The evolution and future of manufacturing: A review. J Manuf Syst 2016; 39:79–100. • [8] Li, Bo-hu & Hou, Bao-cun & Yu, Wen-tao & Lu, Xiao-bing & Yang, Chun-wei. (2017). Applications of artificial intelligence in intelligent manufactu- ring: a review. Frontiers of Information Technology & Electronic Engineering. 18. 86-96. 10.1631/ FITEE.1601885. • [9] L. Monostori, B. Kádár, T. Bauernhansl, S. Kondoh, S. Kumara, G. Reinhart, et al., Cyber- physical systems in manufacturing, CIRP Ann. Manuf. Tech. 65 (2) (2016) 621–641. • [10] O’Donovan P, Leahy K, Bruton K, O’Sullivan DTJ. An industrial big data pipeline for data- driven analytics maintenance applications in large-scale smart manufacturing facilities. J Big Data 2015;2(25):1–26, http://dx.doi.org/10.1186/ s40537-015-0034-z. • [11] R.S. Michalski, J.G. Carbonell, T.M. Mitchell, Machine Learning: An Artificial Intelligence Approach, Springer Science & Business Media, 2013. • [12] Spotfire (2013). Big data in manufacturing: Rise of the machine: TIBCO Spotfire’s Trends and Outliers Blog. • [13] Khatri, H. (2013). Trends in manufacturing operations: Leveraging big data across the value chain: PROFIT ORACLE Technology Powered. Business • [14] BigData-Startups (2013). Rolls Royce shifts in higher gear with big data: BigData-Startup. The Online Big Data Knowledge Platform. • [15] Grieves M. Digital twin: Manufacturing exce- llence through virtual factory replication. White paper, 2014; Available: http://www.apriso.com. • [16] Edward M. Kraft, The Air Force Digital Thread/ Digital Twin - Life Cycle Integration and Use of Computational and Experimental Knowledge, in: 54t AIAA Aerospace Sciences Meeting, AIAA SciTech Forum, (AIAA 2016–0897). • [17] Panetta K. Gartner’s top 10 strategic tech- nology trends for 2017. Gartner, 2016; Available: https://www.gartner.com/smarterwithgartner/ gartnerstop-10-technology-trends-2017/ • [18] Jacob-Taquet, E., Astorga, J., Uncilla-Galan, J., Huarte, M., Garcia-Conejo, D., López-De La Calle Marcaide, L. (2018). TOWARDS A 5G COMPLIANT AND FLEXIBLE CONNECTED MANUFACTURING FACILITY. DYNA, 93(6). 656-662. DOI: http://dx.doi. org/10.6036/8831. 22