Visually enhanced situation awareness for complex manufacturing facility monitoring in smart factories

Abstract With the widespread application of networked information-based technologies throughout industry manufacturing, modern manufacturing facilities give rise to unprecedented levels of process data generation. Data-rich manufacturing environments provide a broad stage on which advanced data analytics play leading roles in creating manufacturing intelligence to support operational efficiency and process innovation. In this paper, we introduce a process data analysis solution that integrates the technologies of situation awareness and visual analytics for the routine monitoring and troubleshooting of roller hearth kiln (RHK), a complex key manufacturing facility for lithium battery cathode materials. Guided by a set of detailed scenarios and requirement analyses, we first propose a qualitative and quantitative situation assessment model to generate the comprehensive description of RHK's operating situation. An informative visual analysis system then is designed and implemented to enhance the users’ abilities of situation perception and understanding for insightful anomaly root cause reasoning and efficient decision making. We conduct case studies and a user interview together with the managers and operators from manufacturing sites as system evaluation. The result demonstrates its effectiveness and prospects its possible inspiration for other similar scenarios about complex manufacturing facility monitoring in smart factories.

[1]  Xiaoping Fan,et al.  MVSec: multi-perspective and deductive visual analytics on heterogeneous network security data , 2014, J. Vis..

[2]  Peter Y. F. Wu Visualizing capacity and load in production planning , 2001, Proceedings Fifth International Conference on Information Visualisation.

[3]  Anita D'Amico,et al.  Information assurance visualizations for specific stages of situational awareness and intended uses: lessons learned , 2005, IEEE Workshop on Visualization for Computer Security, 2005. (VizSEC 05)..

[4]  Yifan Li,et al.  VisFlowConnect: netflow visualizations of link relationships for security situational awareness , 2004, VizSEC/DMSEC '04.

[5]  David S. Ebert,et al.  VASA: Interactive Computational Steering of Large Asynchronous Simulation Pipelines for Societal Infrastructure , 2014, IEEE Transactions on Visualization and Computer Graphics.

[6]  Shaun Moon,et al.  Visual correlation for situational awareness , 2005, IEEE Symposium on Information Visualization, 2005. INFOVIS 2005..

[7]  Andreas Butz,et al.  A Dual-View Visualization of In-Car Communication Processes , 2008, 2008 12th International Conference Information Visualisation.

[8]  Andreas Butz,et al.  MostVis: An Interactive Visualization Supporting Automotive Engineers in MOST Catalog Exploration , 2009, 2009 13th International Conference Information Visualisation.

[9]  Matthew W. Rohrer Seeing is believing: the importance of visualization in manufacturing simulation , 2000, 2000 Winter Simulation Conference Proceedings (Cat. No.00CH37165).

[10]  Mica R. Endsley,et al.  Toward a Theory of Situation Awareness in Dynamic Systems , 1995, Hum. Factors.

[11]  William Yurcik,et al.  NVisionIP: netflow visualizations of system state for security situational awareness , 2004, VizSEC/DMSEC '04.

[12]  Jonghun Park,et al.  LiveGantt: Interactively Visualizing a Large Manufacturing Schedule , 2014, IEEE Transactions on Visualization and Computer Graphics.

[13]  Jeffrey Heer,et al.  Sizing the horizon: the effects of chart size and layering on the graphical perception of time series visualizations , 2009, CHI.

[14]  Rainer Drath,et al.  Industrie 4.0: Hit or Hype? [Industry Forum] , 2014, IEEE Industrial Electronics Magazine.

[15]  Siegfried Gottwald,et al.  Fuzzy Sets and Fuzzy Logic , 1993 .

[16]  Han-Wei Shen,et al.  In Situ Distribution Guided Analysis and Visualization of Transonic Jet Engine Simulations , 2017, IEEE Transactions on Visualization and Computer Graphics.

[17]  Didier Stricker,et al.  Visual Computing as a Key Enabling Technology for Industrie 4.0 and Industrial Internet , 2015, IEEE Computer Graphics and Applications.

[18]  Bijan Shirinzadeh,et al.  Virtual Factory for Manufacturing Process Visualization , 2004 .

[19]  David S. Ebert,et al.  Proactive Spatiotemporal Resource Allocation and Predictive Visual Analytics for Community Policing and Law Enforcement , 2014, IEEE Transactions on Visualization and Computer Graphics.

[20]  Jay Lee,et al.  A Cyber-Physical Systems architecture for Industry 4.0-based manufacturing systems , 2015 .

[21]  Hans Hagen,et al.  User-Guided Visual Analysis of Cyber-Physical Production Systems , 2017, J. Comput. Inf. Sci. Eng..

[22]  O. Kosheleva,et al.  Why Trapezoidal and Triangular Membership Functions Work So Well: Towards a Theoretical Explanation , 2014 .

[23]  Thomas Ertl,et al.  Visual Analysis of Advanced Manufacturing Simulations , 2011, EuroVA@EuroVis.

[24]  Wilhelm Dangelmaier,et al.  Virtual and augmented reality support for discrete manufacturing system simulation , 2005, Comput. Ind..

[25]  Wei Chen,et al.  ViDX: Visual Diagnostics of Assembly Line Performance in Smart Factories , 2017, IEEE Transactions on Visualization and Computer Graphics.

[26]  Ping Zhang,et al.  Visualizing production planning data , 1996, IEEE Computer Graphics and Applications.

[27]  Thomas Ertl,et al.  Simulation-Based Visual Layout Planning in Advanced Manufacturing , 2013, 2013 46th Hawaii International Conference on System Sciences.

[28]  W. Koch,et al.  The JDL model of data fusion applied to cyber-defence — A review paper , 2012, 2012 Workshop on Sensor Data Fusion: Trends, Solutions, Applications (SDF).

[29]  Sushil Acharya,et al.  Enhancing Manufacturing Process Education via Computer Simulation and Visualization , 2014 .

[30]  Cyril Onwubiko,et al.  Functional requirements of situational awareness in computer network security , 2009, 2009 IEEE International Conference on Intelligence and Security Informatics.

[31]  P. O'Donovan,et al.  Big data in manufacturing: a systematic mapping study , 2015, Journal of Big Data.

[32]  David S. Ebert,et al.  A Mobile Visual Analytics Approach for Law Enforcement Situation Awareness , 2014, 2014 IEEE Pacific Visualization Symposium.

[33]  Andreas Butz,et al.  Cardiogram: visual analytics for automotive engineers , 2011, CHI.

[34]  Wei Huang,et al.  ENTVis: A Visual Analytic Tool for Entropy-Based Network Traffic Anomaly Detection , 2015, IEEE Computer Graphics and Applications.

[35]  Ulrich Jessen,et al.  Visualization for modeling and simulation: a taxonomy of visualization techniques for simulation in production and logistics , 2003, WSC '03.