Context-based and human-centred information fusion in diagnostics

Abstract: Maintenance management and engineering practice has progressed to adopt approaches which aim to reach maintenance decisions not by means of pre-specified plans and recommendations but increasingly on the basis of best contextually relevant available information and knowledge, all considered against stated objectives. Different methods for automating event detection, diagnostics and prognostics have been proposed, which may achieve very high performance when appropriately adapted and tuned to serve the needs of well defined tasks. However, the scope of such solutions is often narrow and without a mechanism to include human contributed intervention and knowledge contribution. This paper presents a conceptual framework of integrating automated detection and diagnostics and human contributed knowledge in a single architecture. This is instantiated by an e-maintenance platform comprising tools for both lower level information fusion as well as for handling higher level knowledge. Well structured maintenance relationships, such as those present in a typical FMECA study, as well as on the job human contributed compact knowledge are exploited to this end. A case study presenting the actual workflow of the process in an industrial setting is employed to pilot test the approach.

[1]  Christos Emmanouilidis,et al.  Management of linked knowledge in industrial maintenance , 2016, Ind. Manag. Data Syst..

[2]  Yves Demazeau,et al.  Principles and techniques for sensor data fusion , 1993, Signal Process..

[3]  Apostolos P. Fournaris,et al.  Embedded event detection for self-aware and safer assets , 2015 .

[4]  C. Emmanouilidis,et al.  A layered e-maintenance architecture powered by smart wireless monitoring components , 2012, 2012 IEEE International Conference on Industrial Technology.

[5]  Erkki Jantunen,et al.  Flexible software for condition monitoring, incorporating novelty detection and diagnostics , 2006, Comput. Ind..

[6]  Andrew Starr,et al.  A Review of data fusion models and architectures: towards engineering guidelines , 2005, Neural Computing & Applications.

[7]  Christos Emmanouilidis,et al.  Mobile Personalised Support in Industrial Environments: Coupling Learning with Context - Aware Features , 2014, APMS.

[8]  Klaus-Dieter Thoben,et al.  Current trends on ICT technologies for enterprise information systems , 2016, Comput. Ind..

[9]  M. Bevilacqua,et al.  Data Fusion Strategy for Precise Vehicle Location for Intelligent Self-Aware Maintenance Systems , 2015, 2015 6th International Conference on Intelligent Systems, Modelling and Simulation.

[10]  Erik Blasch,et al.  Top ten trends in High-Level Information Fusion , 2012, 2012 15th International Conference on Information Fusion.

[11]  Harry Wechsler,et al.  A Martingale Framework for Detecting Changes in Data Streams by Testing Exchangeability , 2010, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[12]  Jesús García,et al.  Context-based Information Fusion: A survey and discussion , 2015, Inf. Fusion.

[13]  Christos Emmanouilidis,et al.  Profiling Context Awareness in Mobile and Cloud Based Engineering Asset Management , 2012, APMS.