Abstract
This paper proposes the use of the visualization techniques through Augmented Reality (AR) in order to manage maintenance data visualization. Using this method the AR visualization will insert the human in the predictive maintenance loop. It will facilitate the users understanding (in this case the maintenance operator) and visualization of the information from a predictive system and also represent a way to provide a safe interaction for the operator.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
References
Hassaine S, Dhambri K, Sahraoui H, Poulin P (2009) Generating visualization-based analysis scenarios from maintenance task descriptions. In: Proceedings of the 5th IEEE international workshop on visualizing software for understanding and analysis. pp 41–44
Macchi M, Garetti M (2006) Benchmarking maintenance policies in complex production systems. Comput Ind: Spec Issue e-Maintenance 57(6):581–594
Muller A, Marquez A, Iung B (2007) On the concept of e-maintenance: Review and current research. Reliab Eng Syst Saf 93(8):1165–1187
Lee J, Liao L, Lapira E, Ni J, Li L (2009) Informatics platform for designing and deploying e- manufacturing systems. In: Wang L, Nee A, Yeh C (eds) Collaborative design and planning for digital manufacturing. Springer, Berling, pp 1–35
Liao L, Lee J (2009) A novel method for machine performance degradation assessment based on fixed cycle features test. J Sound Vib 356(3–5):894–908
Mathew (2006) Reducing maintenance cost through effective prediction analysis and process integration. Adv Vibr Eng 5(2):97–96
Stutzman B, Nilsen D, Broderick T, Neubert J (2009) MARTI: Mobile augmented reality tool for industry. Proc World Congr Comput Sci Inf Eng 5:425–429
Henderson S, Feiner S (2010) Opportunistic tangible user interfaces for augmented reality. Trans Visual Comput Graph 16(1):4–16
Peysson F, et al. (2007) New approach to prognostic systems failures. In: Proceedings of the 17th IFAC world congress
You M, Li L, Meng G, Ni J (2010) Cost-effective updated sequential predictive maintenance policy for continuously monitored degrading systems. IEEE Trans Autom Sci Eng 7(2):257–265
Regenbrecht H, Baratoff G, Wilke W (2005) Augmented reality projects in the automotive and aerospace industries. IEEE Comput Graph Appl 25(6):48–56
Macchiarella M, Vincenzi D (2004) Augmented reality in a learning paradigm for flight and aerospace maintenance training. In: Proceedingas of the 23rd digital avionics systems conference. p 5.D.1–5.1–9
Multanen P, Mäkiranta A, Nuutinen P, Leino SP, Helin K, Lind S (2009) Adaptation of virtual tools to support cost-effective maintenance of machines. In: Proceedings of the 22nd international congress condition monitoring and diagnostic engineering management. San Sebastian, Spain
Stefánik A, Gregor M, Furmann R, Skorík P (2008) Virtual manufacturing in research and industry. In: proceedings of the 9th Ifac workshop on intelligent manufacturing systems. Szczecin, Poland
Milgram P, Kishino F (1994) A taxonomy of mixed reality visual displays. IEICE Trans Inf Syst, E77–D(12)
Lebold M, Thurston M (2001) Open standards for condition-based maintenance and prognostic system. In: Proceedings of MARCON 2001—Fifth annual maintenance and reliability conference. Gatlinburg, USA
Violante P, Drake K, Latman S, Mandayam S (2008) Virtual environments, data fusion, and video in support of remote health management systems. In: Proceedings of the IEEE international workshop on haptic audio visual environment and their applications. pp 48–52
Henderson S, Feiner S (2009) Evaluating the benefits of augmented reality for task localization in maintenance of an armored personnel carrier turret. In: Proceedings of the IEEE international symposium on mixed and augmented reality. pp 135–144
Schoenfelder R, Schmalstieg D (2008) Augmented reality for industrial building acceptance. In: Proceedings of the IEEE virtual reality conference. pp 83–90
Schwald B, Laval B (2003) An augmented reality system for training and assistance to maintenance in the industrial context. Proceedings of the 11th international conference in central europe on computer graphics, visualization and computer vision. pp 425–432
Friedrich W, Jahn D, Schmidt L (2002) ARVIKA–Augmented reality for development, production and service. In: Proceedings of the international symposium on mixed and augmented reality. p 3–4
Schwald B, Figue J, Chauvineau E et al (2001) STARMATE: Using augmented reality technology for computer guided maintenance of complex mechanical elements. E-work and ECommerce 1:196–202
Foursa M, d’Angelo D, Narayanan R (2008) Innovative control system for industrial environment. In: Proceedings of the fourth international conference on autonomic and autonomous systems. pp 82–87
Grimm P, Haller M, Paelke V, Reinhold S, Reimann C, Zauner J (2002) AMIRE–authoring mixed reality. Proceedings of the first IEEE international augmented reality toolkit workshop. Darmstadt, Germany
Song J, Jia Q, Sun H, Gao X (2009) Study on the perception mechanism and method of virtual and real objects in augmented reality assembly environment. In: Proceedings of the 4th IEEE conference on industrial electronics and applications. pp 1452–1456
Georgel P, Schroeder P, Navab N (2009) Navigation tools for augmented cad viewing. IEEE Comput Graphics Appl 29(6):65–73
Fumagalli L, Elefante D, Macchi M, Iung B (2008) Evaluating the role of maintenance maturity in adoption of new ict in the process industry. In: Proceedings of the 9th IFAC workshop on intelligent manufacturing systems. Szczecin, Poland
Blum T, Heining S, Kutter O, Navab N (2009) Advanced training methods using an augmented reality ultrasound simulator. In: ISMAR ‘09 Proceedings of the 8th IEEE international symposium on mixed and augmented reality. pp 177–78
Lee J, Ni J (2004) Infotronics-based intelligent maintenance system and its impacts to closed-loop product life cycle systems. In: proceedings of the international conference on intelligent maintenance systems. Arles, France
Djurdjanovic D, Lee J, Ni J (2003) Watchdog Agent, an infotronics-based prognostics approach for product performance degradation assessment and prediction. Adv Eng Inform 17(3–4):109–125
Bin Lu, Durocher D, Stemper P (2009) Predictive maintenance techniques. IEEE Ind Appl Mag 15(6):52–60
Liao L, Wang H, Lee J (2008) Reconfigurable Watchdog Agent® for machine health prognostics. Int J COMADEM 11(3):2–15
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2014 Springer-Verlag London
About this paper
Cite this paper
Espíndola, D.B., Pereira, C.E., Henriques, R.V.B., Botelho, S.S. (2014). Visualization Management of Industrial Maintenance Data Using Augmented Reality. In: Lee, J., Ni, J., Sarangapani, J., Mathew, J. (eds) Engineering Asset Management 2011. Lecture Notes in Mechanical Engineering. Springer, London. https://doi.org/10.1007/978-1-4471-4993-4_39
Download citation
DOI: https://doi.org/10.1007/978-1-4471-4993-4_39
Published:
Publisher Name: Springer, London
Print ISBN: 978-1-4471-4992-7
Online ISBN: 978-1-4471-4993-4
eBook Packages: EngineeringEngineering (R0)