Prescriptive Control of Business Processes

This paper proposes a concept for a prescriptive control of business processes by using event-based process predictions. In this regard, it explores new potentials through the application of predictive analytics to big data while focusing on production planning and control in the context of the process manufacturing industry. This type of industry is an adequate application domain for the conceived concept, since it features several characteristics that are opposed to conventional industries such as assembling ones. These specifics include divergent and cyclic material flows, high diversity in end products’ qualities, as well as non-linear production processes that are not fully controllable. Based on a case study of a German steel producing company – a typical example of the process industry – the work at hand outlines which data becomes available when using state-of-the-art sensor technology and thus providing the required basis to realize the proposed concept. However, a consideration of the data size reveals that dedicated methods of big data analytics are required to tap the full potential of this data. Consequently, the paper derives seven requirements that need to be addressed for a successful implementation of the concept. Additionally, the paper proposes a generic architecture of prescriptive enterprise systems. This architecture comprises five building blocks of a system that is capable to detect complex event patterns within a multi-sensor environment, to correlate them with historical data and to calculate predictions that are finally used to recommend the best course of action during process execution in order to minimize or maximize certain key performance indicators.

[1]  Peter Loos,et al.  Enhancing Organizational Performance through Event-based Process Predictions , 2015, AMCIS.

[2]  Paisan Kittisupakorn,et al.  Control of milk pasteurization process using model predictive approach , 2014, Comput. Chem. Eng..

[3]  Paul Riebel,et al.  Industrielle Erzeugungsverfahren in betriebswirtschaftlicher Sicht , 1963 .

[4]  Christian Janiesch,et al.  Beyond process monitoring: a proof-of-concept of event-driven business activity management , 2012, Bus. Process. Manag. J..

[5]  Bernhard Mitschang,et al.  Prescriptive Analytics for Recommendation-Based Business Process Optimization , 2014, BIS.

[6]  Christian Wolff,et al.  Identification of suspicious, unknown event patterns in an event cloud , 2007, DEBS '07.

[7]  Felix Wortmann,et al.  Internet of Things , 2015, Business & Information Systems Engineering.

[8]  Rita L. Sallam,et al.  Magic Quadrant for Business Intelligence and Analytics Platforms , 2013 .

[9]  Ricardo Seguel,et al.  Process Mining Manifesto , 2011, Business Process Management Workshops.

[10]  Hans-Georg Kemper,et al.  Application-Pull and Technology-Push as Driving Forces for the Fourth Industrial Revolution , 2014 .

[11]  Dimitris Chorafas Information Technology Strategies by Leading Organizations , 2001 .

[12]  Rajendra Akerkar,et al.  Advanced Data Analytics for Business , 2013 .

[13]  Donald E. Shobrys,et al.  Planning, scheduling and control systems: why cannot they work together , 2000 .

[14]  Eduardo J. Dozal-Mejorada,et al.  Predictive control with adaptive model maintenance: Application to power plants , 2014, Comput. Chem. Eng..

[15]  Esteban León-Soto,et al.  MasDISPO: A Multiagent Decision Support System for Steel Production and Control , 2007, AAAI.

[16]  Lóránt Farkas,et al.  Predictive complex event processing: a conceptual framework for combining complex event processing and predictive analytics , 2012, BCI '12.

[17]  Matthias Jarke,et al.  Interview with Michael Feindt on “Prescriptive Big Data Analytics” , 2014, Bus. Inf. Syst. Eng..

[18]  Kresimir Vidackovic Eine Methode zur Entwicklung dynamischer Geschäftsprozesse auf Basis von Ereignisverarbeitung , 2014 .

[19]  Peter Loos,et al.  Application of production planning and scheduling in the process industries , 1998 .

[20]  Michael Eckert,et al.  Complex Event Processing (CEP) , 2009, Informatik-Spektrum.

[21]  Peter Loos,et al.  Towards Planning and Control of Business Processes Based on Event-Based Predictions , 2014, BIS.

[22]  Peter Loos,et al.  Towards an Extended Metamodel of Event-Driven Process Chains to Model Complex Event Patterns , 2015, ER Workshops.

[23]  Stijn Viaene,et al.  Data Scientists Aren't Domain Experts , 2013, IT Professional.

[24]  Peter Loos,et al.  Realizing the Predictive Enterprise through Intelligent Process Predictions based on Big Data Analytics: A Case Study and Architecture Proposal , 2014, GI-Jahrestagung.

[25]  Opher Etzion,et al.  A basic model for proactive event-driven computing , 2012, DEBS.

[26]  Giordano Tamburrelli,et al.  Learning from the past: automated rule generation for complex event processing , 2014, DEBS '14.

[27]  Peter Loos,et al.  Determination of Rule Patterns in Complex Event Processing Using Machine Learning Techniques , 2015, Complex Adaptive Systems.

[28]  Opher Etzion,et al.  Integrating Complex Events for Collaborating and Dynamically Changing Business Processes , 2009, ICSOC/ServiceWave Workshops.

[29]  Vasant Dhar,et al.  Data science and prediction , 2012, CACM.

[30]  Tillal Eldabi,et al.  Simulation in manufacturing and business: A review , 2010, Eur. J. Oper. Res..

[31]  Wolfgang Weller,et al.  Auf dem Weg zur 4. Industriellen Revolution , 2014 .

[32]  THE CONTROL OF MILK , 1916 .

[33]  Jürgen Dunkel,et al.  Event-Driven Architecture , 2010 .

[34]  Peter Loos,et al.  Advanced planning and control of manufacturing processes in steel industry through big data analytics: Case study and architecture proposal , 2014, 2014 IEEE International Conference on Big Data (Big Data).

[35]  Peter Buxmann,et al.  Big Data and Information Processing in Organizational Decision Processes , 2014, Bus. Inf. Syst. Eng..

[36]  Izak Benbasat,et al.  The Case Research Strategy in Studies of Information Systems , 1987, MIS Q..

[37]  B. J. Roylance,et al.  Plant machinery working life prediction method utilizing reliability and condition-monitoring data , 2000 .

[38]  Peter Loos,et al.  Sensor event mining with hybrid ensemble learning and evolutionary feature subset selection model , 2015, 2015 IEEE International Conference on Big Data (Big Data).

[39]  Michael Minelli,et al.  Big Data, Big Analytics: Emerging Business Intelligence and Analytic Trends for Today's Businesses , 2012 .

[40]  Richard C.M. Yam,et al.  Intelligent Predictive Decision Support System for Condition-Based Maintenance , 2001 .

[41]  Jochen Deuse,et al.  Striving for Zero Defect Production: Intelligent Manufacturing Control Through Data Mining in Continuous Rolling Mill Processes , 2013 .

[42]  Martin Bichler,et al.  Design science in information systems research , 2006, Wirtschaftsinf..

[43]  Peter Loos,et al.  Determination of Event Patterns for Complex Event Processing Using Fuzzy Unordered Rule Induction Algorithm with Multi-objective Evolutionary Feature Subset Selection , 2016, 2016 49th Hawaii International Conference on System Sciences (HICSS).

[44]  Mohd Azlan Hussain,et al.  Neural network based model predictive control for a steel pickling process , 2009 .

[45]  Opher Etzion,et al.  Towards proactive event-driven computing , 2011, DEBS '11.

[46]  Ron Kohavi,et al.  IN BUSINESS ANALYTICS , 2002 .

[47]  Siegfried Bauer,et al.  Sustainable materials: With both eyes open , 2012 .

[48]  Graeme G. Shanks,et al.  Successfully completing case study research: combining rigour, relevance and pragmatism , 1998, Inf. Syst. J..

[49]  Peter Buxmann,et al.  Big Data and Information Processing in Organizational Decision Processes: A Multiple Case Study , 2014 .

[50]  Klaus Fischer,et al.  Multiagent technologies for steel production and control , 2004, Proceedings. IEEE/WIC/ACM International Conference on Intelligent Agent Technology, 2004. (IAT 2004)..

[51]  Christian Janiesch,et al.  A Method and Tool for Predictive Event-Driven Process Analytics , 2013, Wirtschaftsinformatik.

[52]  Sven Jacobi,et al.  Big Data Analytics for Predictive Manufacturing Control - A Case Study from Process Industry , 2014, 2014 IEEE International Congress on Big Data.

[53]  Matthias Jarke,et al.  Big Data , 2014, Wirtschaftsinf..

[54]  Wasif Gilani,et al.  Event-Driven Process-Centric Performance Prediction via Simulation , 2011, Business Process Management Workshops.

[55]  Opher Etzion,et al.  Event Processing in Action , 2010 .

[56]  Joseph Mathew,et al.  Intelligent condition-based prediction of machinery reliability , 2009 .

[57]  Daming Lin,et al.  A review on machinery diagnostics and prognostics implementing condition-based maintenance , 2006 .

[58]  Karl Kurbel Produktionsplanung und -steuerung im Enterprise Resource Planning und Supply Chain Management , 2005 .

[59]  Eduardo F. Camacho,et al.  Commercial Model Predictive Control Schemes , 2007 .

[60]  Zhong Zheng,et al.  Intelligent Optimization-Based Production Planning and Simulation Analysis for Steelmaking and Continuous Casting Process , 2010 .

[61]  Constantin May PPS mit Neuronalen Netzen , 1996 .

[62]  William A. Gruver,et al.  Intelligent Decision Support and Agent-Based Techniques Applied to Wood Manufacturing , 2011, DCAI.

[63]  W. Klingenberg,et al.  Managing condition-based maintenance technology: A multiple case study in the process industry , 2011 .

[64]  Pedro M. Castro,et al.  Scope for industrial applications of production scheduling models and solution methods , 2014, Comput. Chem. Eng..

[65]  Manfred Grauer,et al.  Self-Learning Monitoring and Control of Manufacturing Processes Based on Rule Induction and Event Processing , 2012 .

[66]  Athanasios V. Vasilakos,et al.  Big data: From beginning to future , 2016, Int. J. Inf. Manag..

[67]  Yongheng Wang,et al.  PREDICTIVE COMPLEX EVENT PROCESSING USING EVOLVING BAYESIAN NETWORK , 2018 .

[68]  Dietger Hahn,et al.  Produktionswirtschaft — Controlling industrieller Produktion , 1993 .

[69]  Jürgen Lenz Produktionslogistik in der chemischen Industrie , 1988 .

[70]  Wil M. P. van der Aalst,et al.  Business Process Management , 2009, Encyclopedia of Database Systems.

[71]  Peter Loos,et al.  Event-Driven Business Process Management: where are we now?: A comprehensive synthesis and analysis of literature , 2014, Bus. Process. Manag. J..

[72]  Charu C. Aggarwal An Introduction to Sensor Data Analytics , 2013, Managing and Mining Sensor Data.

[73]  August-Wilhelm Scheer,et al.  Wirtschaftsinformatik : Referenzmodelle für industrielle Geschäftsprozesse , 1995 .

[74]  Andreas Kugi,et al.  Ein suboptimaler Ansatz zur schnellen modellprädiktiven Regelung nichtlinearer Systeme , 2010, Autom..