Agent-Based Decision Support in Maintenance Service Operations

Total Page:16

File Type:pdf, Size:1020Kb

Agent-Based Decision Support in Maintenance Service Operations Agent-Based Decision Support in Maintenance Service Operations Per Hilletofth1*, Lauri Lättilä2, Sandor Ujvari3, and Olli-Pekka Hilmola4 1* Corresponding author, Logistics Research Centre, School of Technology and Society, University of Skövde, SE-541 28 Skövde, Sweden, E-mail: [email protected] 2 Lappeenranta University of Technology, Kouvola Unit, Finland, Prikaatintie 9, FIN- 45100 Kouvola, Finland, E-mail: [email protected] 3 Logistics Research Centre, School of Technology and Society, University of Skövde, SE-541 28 Skövde, Sweden, E-mail: [email protected] 4 Lappeenranta University of Technology, Kouvola Unit, Finland, Prikaatintie 9, FIN- 45100 Kouvola, Finland, E-mail: [email protected] Abstract In this research an agent-based decision support system for service related maintenance has been developed, the maintenance planning is complex including corrective and preventive tasks of several non-associated plants. This type of problem is well suited for modeling and implementation using Agent-Based Modeling and Simulation (ABMS). The simulation model enables decision-makers to iteratively set parameters, run simulations and evaluate results. Research shows that this approach can improve the understanding of the problem domain and also generate a basis for decision-making. Keywords: Service operations, Decision support, Agent-based modeling and simulation Introduction Outsourcing of maintenance involves the use of external companies, referred to as Maintenance Service Providers (MSP); MSPs can encompass the entire maintenance function or select activities. Provided services can either be corrective, preventive or conditional (Garg and Deshmukh, 2006). MSPs are subject to a rapidly changing business environment strongly influenced by the Forrester Effect of non-stock production (Akkermans and Vos 2003), and research shown that information is vital in avoiding up- and down swings in resource needs. Additionally, operations need to be well balanced in terms of utilization rate of personnel (hours billed divided by hours worked) versus service rate towards customers. Another important topic is to keep a balance between maintenance cost and the up-time of the customers’ production systems. Reality is that MSPs also serve other customers in various geographical locations, and these can have long-term contracts for service levels. One way to improve decision-making is to generate business intelligence by fusing large amounts of data from various sources (Information Fusion, IF). The purpose of IF is typically to extract relevant information from several sources with known certainty to make better decisions than if fusion was not used. It can be defined as “the study of efficient methods for automatically or semi-automatically transforming information from different sources and different points in time into a representation that provides Proceedings of the 16th International Annual EurOMA Conference (Gothenburg, Sweden) effective support for human or automated decision-making” (Boström et al., 2007). One method to realize IF in complex industrial environments, which normally is not highlighted as an IF method, is Agent-Based Modeling and Simulation (ABMS). It is related to IF in the way that information from different sources are collected and fused in a synergistic manner into a situation image that provides effective support for human decision-making. Empirical studies have shown that managers aided by agent-based simulations can benefit in several ways (Nilsson and Darley, 2006). In this research work an agent-based simulation model of service related maintenance has been developed. The simulation model is inspired by an actual case company, e.g. some stochasticity estimates are gained from the case company, but additional data has also been used. Empirical data was collected during a three year period (2006-2008) from various sources including databases, interviews, observations, and internal documents. In the simulation model, the service order fulfilment process is managed by a set of agents that are responsible for one or more activity. It comprise a complex service network (more than 25 customer factories), which is modeled using one common type of industrial machine (CNC) to be served. Provided maintenance service was categorized as either corrective or planned maintenance; the resource expertise needed was categorized into two classes as well, mechanical and electrical. Whole model was built with Anylogic software. The overall purpose of this simulation model is to increase the understanding of the problem domain and to form a basis for better decision-making (i.e. constitute a decision support system), thus improving performance in MSP environment. The remainder of this paper is structured as follows: In Section 2, the concept of agent-based decision support is discussed through existing literature. Thereafter, in Section 3 the research environment is presented. In Section 4, the simulation model is discussed while some initial simulation results are presented in Section 5. In final Section 6, research is concluded and further research avenues are proposed. Agent-Based Decision Support ABMS represents a new paradigm in modeling and simulation, especially suited for complex and dynamic systems distributed in time and space (Lim and Zhang, 2003). It implies that the real (observed) system of interest is modeled in form of a set of interacting agents within a certain environment (i.e. as an agent system) and implemented in simulation software, resulting in an agent-based simulation model/application (Figure 1). An agent system consists of a couple of individual agents with specified relationships to one another within a certain environment. The agents are presumed to be acting in what they perceive as their own interests, such as economic benefit (i.e. they have individual missions), and their knowledge regarding the entire system (i.e. other agents and environment) is limited (Macal and North, 2006). Still, the most important feature in an agent system is the agents’ ability to collaborate, coordinate and interact with each other as well as with the environment to achieve common goals. By sharing information, knowledge, and tasks among the agents in the system, collective intelligence may emerge that can not be derived from the internal mechanism of an individual agent. Furthermore, the ability to coordinate makes it possible for agents to coordinate their actions among themselves, i.e. taking the effect of another agent’s actions into account when making a decision about what to do. The term Multi-Agent System (MAS) is commonly used for agent systems including several interacting and collaborating agents. 2 Figure 1 – The process of agent-based modeling and simulation Agent-based simulation can be used to simulate the actions and interactions of individual agents in an agent system to evaluate the agents’ effects on the system as a whole as well as to evaluate the system in general. This implies that an agent-based simulation model can be used as a decision support system (Figure 2). The simulation model consists of the interacting agents and some performance and risk indicators. The utilized data in the simulation model can be collected from databases, observations, interviews or documents in the real system. Decision-makers, can set parameters in the simulation model, run the simulation and evaluate the results. Based on the retrieved information/knowledge they can make decisions regarding how to handle the real system. They could also continually alter different parameters and simulate again to evaluate different management alternative. This implies that an agent-based decision support system fuses information from different sources in a synergistic manner into a situation image that provides effective support for human decision-making. Therefore, it could be regarded as an IF method. Figure 2 – Agent-based decision support system Nilsson and Darley (2006) conclude in their empirical study that decision-makers aided by agent-based simulations can benefit in several ways: (1) help them acquire an increased understanding of the impact of unscheduled factors (e.g. breakdowns, accidents, demands change), (2) guide decision-makers’ instinct, since interactive agents generate an emergent pattern, which can be explained and understood and therefore beneficial for the improvement of decision-making in companies and (3) help decision-makers to find where the highest leverage is to be gained among improvement alternatives. Even if the interest in implementing agent models in various types of business is increasing (e.g. Albino et al., 2007; Chen et al., 2008; Hilletofth, 2007; Shen et al., 2007; Wang et al., 2007), it is currently a quite vague concept. Based on literature reviews Davidsson et al. (2005) and Cantamessa (1997) conclude that very few field 3 experiments and developed systems have been reported in the academic literature. Davidsson et al. (2005) reviewed the maturity of agent approaches presented in the literature and used the following four main levels: (1) conceptual proposal, (2) simulation experiment, (3) field experiment, and (4) deployed system. In their sample of 56 journal articles published between 1992 and 2005, it was only identified one level 4 and three level 3 research works. A more recent literature review confirms that this situation still exists (Hilletofth et al., 2009); only one manuscript from 33 journal articles published during 2000-2008 included empirically verified
Recommended publications
  • Operations Research and Simulation in Master's
    Proceedings of the 2013 Winter Simulation Conference R. Pasupathy, S.-H. Kim, A. Tolk, R. Hill, and M. E. Kuhl, eds OPERATIONS RESEARCH AND SIMULATION IN MASTER’S DEGREES: A CASE STUDY REGARDING DIFFERENT UNIVERSITIES IN SPAIN Alex Grasas Angel A. Juan Helena Ramalhinho Dept. of Economics and Business Dept. of Computer Science Universitat Pompeu Fabra / IN3 – Open University of Catalonia / Barcelona GSE Autonomous University of Barcelona Barcelona, 08005, SPAIN Barcelona, 08018, SPAIN ABSTRACT This paper presents several experiences regarding Operations Research (OR) and Simulation education activities in three master programs, each of them offered at a different university. The paper discusses the importance of teaching these contents in most managerial and engineering masters. After a brief overview of existing related work, the paper provides some recommendations –based on our own teaching experi- ences– that instructors should keep in mind when designing OR/Simulation courses, either in traditional face-to-face as well as in pure online learning models. The case studies exposed here include students from business management, computer science, and aeronautical management degrees, respectively. For each type of student, different OR/Simulation tools are employed in the courses, ranging from easy-to-use optimization and simulation software to simulation-based algorithms developed from scratch using a pro- gramming language. 1 INTRODUCTION Operations Research (OR) can be defined as the application of advanced analytical methods to support complex decision-making processes. Among others, some of these analytical methods are: simulation, da- ta analysis, mathematical optimization, and metaheuristics. Thus, OR is an interdisciplinary area which borrows methods and techniques from many fields, including: mathematics, computer science, statistics, and business management.
    [Show full text]
  • Module 1 (Computer Modeling and Simulation) Introduction
    Module 1: Modeling and Simulation MODULE 1 (COMPUTER MODELING AND SIMULATION) INTRODUCTION Module Name: Introduction to Computer Modeling and Simulation Content of this Introduction: 1. Overview of the Module 2. Prerequisite knowledge and assumptions encompassed by the Module 3. Standards covered by the Module 4. Materials needed for the Module 5. Pacing Guides for 6 Lessons, including Learning Objectives and Assessment Questions 1. Overview of the Module This module introduces basic concepts in modeling complex systems through hands-on activities and participatory simulations. A scaffolded series of highly-engaging design and build activities guide students through developing their first computer model in StarLogo Nova, a modeling and simulation environment developed at Massachusetts Institute of Technology. Students practice designing and running experiments using a computer model as a virtual test bed. 2. Prerequisite knowledge and assumptions encompassed by the Module There are no prerequisites for Module 1. The module was designed to be an introduction to computer modeling and simulation for students with no prior background in the topic. It is necessary to complete this module prior to commencing the Earth, Life or Physical Science module. 3. Standards covered by the Module Please see the Standards Document for a detailed description of Standards covered by this Module, Lesson by Lesson. 4. Materials needed for this Module You will need the following materials to teach this module: • Computer and projector • What is a CAS? document
    [Show full text]
  • Lecture 9 – Modeling, Simulation, and Systems Engineering
    Lecture 9 – Modeling, Simulation, and Systems Engineering • Development steps • Model-based control engineering • Modeling and simulation • Systems platform: hardware, systems software. EE392m - Spring 2005 Control Engineering 9-1 Gorinevsky Control Engineering Technology • Science – abstraction – concepts – simplified models • Engineering – building new things – constrained resources: time, money, • Technology – repeatable processes • Control platform technology • Control engineering technology EE392m - Spring 2005 Control Engineering 9-2 Gorinevsky Controls development cycle • Analysis and modeling – Control algorithm design using a simplified model – System trade study - defines overall system design • Simulation – Detailed model: physics, or empirical, or data driven – Design validation using detailed performance model • System development – Control application software – Real-time software platform – Hardware platform • Validation and verification – Performance against initial specs – Software verification – Certification/commissioning EE392m - Spring 2005 Control Engineering 9-3 Gorinevsky Algorithms/Analysis Much more than real-time control feedback computations • modeling • identification • tuning • optimization • feedforward • feedback • estimation and navigation • user interface • diagnostics and system self-test • system level logic, mode change EE392m - Spring 2005 Control Engineering 9-4 Gorinevsky Model-based Control Development Conceptual Control design model: Conceptual control sis algorithm: y Analysis x(t+1) = x(t) +
    [Show full text]
  • Review of Artificial Intelligence, Simulation, and Modeling
    Book Reviews AI Magazine Volume 12 Number 1 (1991) (© AAAI) BookReviews Artificial Intelligence, Numeric simulation is used for what- applied in modeling and simulation Simulation, and Modeling if questions, but diagnosis and expla- as the quantitative approach (for nation by symbolic reasoning are example, minimizing an objective Mark E. Lacy used for why questions. Execution on function that describes how well a computing machinery can be differ- model fits the available data). Typi- As a system scientist doing modeling ent as well: AI tools do not lend cally, the systems challenging us are and simulation, I have been interested themselves to the advantages of par- complex, and we are lucky if we can for some time in ways that modeling allel architectures as well as mathe- make any qualitative statements and simulation and AI could be of value matical tools do, and systems that about the behavior of a system other to each other. After all, both areas have attempt to integrate AI and mathe- than, perhaps, statements regarding their roots in putting knowledge into matical approaches pose a real chal- stability or long-term steady-state useful representations. I have specu- lenge to the development of fast behavior. Only the simplest of systems lated (AI Magazine, summer 1989, pp. software and hardware. can be analyzed in terms of its quali- 4348) that the scientist of the future, There is great potential, however, tative behavior. This reason is one of in applying computing to his(her) for AI and simulation to take advantage the main ones for performing simu- work, could benefit from a virtual of each other’s strengths.
    [Show full text]
  • 5 Modeling and Simulation for Systems of Systems Engineering Saurabh Mittal, Ph.D
    System of Systems – Innovations for the 21 st Center, Edited by [Mo Jamshidi]. ISBN 0-471-XXXXX-X Copyright © 2008 Wiley[Imprint], Inc. 5 Modeling and Simulation for Systems of Systems Engineering Saurabh Mittal, Ph.D. Bernard P. Zeigler, Ph.D. Arizona Center for Integrative Modeling and Simulation Electrical and Computer Engineering, University of Arizona Tucson, AZ José L. Risco Martín, Ph.D. Departamento de Arquitectura de Computadores y Automática Facultad de Informática Universidad Complutense de Madrid Madrid, Spain Ferat Sahin, Ph.D. Multi Agent Bio-Robotics Laboratory Electrical Engineering Rochester Institute of Technology Rochester, NY Mo Jamshidi, Ph.D. Lutcher Brown Endowed Chair Electrical and Computer Engineering University of Texas San Antonio San Antonio, TX Wiley STM / Mo Jamshidi: System of Systems - Innovation for the 21st Century page 2 Chapter 5 / Mittal, Zeigler, Martin, Sahin, Jamshidi / filename: ch5.doc Abstract: A critical aspect and differentiator of a System of Systems (SoS) versus a single monolithic system is interoperability among the constituent disparate systems. A major application of Modeling and Simulation (M&S) to SoS Engineering is to facilitate system integration in a manner that helps to cope with such interoperability problems. A case in point is the integration infrastructure offered by the DoD Global Information Grid (GIG) and its Service Oriented Architecture (SOA). In this chapter, we discuss a process called DEVS Unified Process (DUNIP) that uses the Discrete Event System Specification (DEVS) formalism as a basis for integrated system engineering and testing called the Bifurcated Model- Continuity life-cycle development methodology. DUNIP uses an XML-based DEVS Modeling Language (DEVSML) framework that provides the capability to compose models that may be expressed in a variety of DEVS implementation languages.
    [Show full text]
  • Department of Computational Modeling and Simulation Engineering 4
    decision support. Visualization of these is also a significant part of these Department of areas. Collaborative Autonomous Systems Laboratory Computational Modeling The Collaborative Autonomous Systems Laboratory supports instructional and multidisciplinary research activities related to autonomous systems. and Simulation This forth laboratory area is shared with the mechanical and aerospace department. CMSE maintains 4 PC workstations and 10 various types of robotic systems. The lab contains an area dedicated to cyber security Engineering research as related to collaborative autonomous systems. Web Site: http://www.odu.edu/cmsv (http://www.odu.edu/cmsv/) The CAVE (CAVE Automated Virtual Environment) 1300 Engineering and Computational Sciences Building The CAVE (Cave Automated Virtual Environment) Virtual Reality 757-683-3720 laboratory area contains several 3D visualization systems. The CAVE is Yuzhong Shen, Chair a high-resolution projection-screen virtual reality system. The screens are Masha Sosonkina, Graduate Program Director arranged in a 10 foot cube with computer-generated images projected on three walls and a floor. The CAVE lab also contains a 3 meter Vision Dome Department Description projection system and an Immersa-Desk virtual reality display. Two 3D printers are also placed in the CAVE Lab. The CMSE Department offers an undergraduate four-year degree program leading to the Bachelor of Science in Modeling and Simulation Engineering Associated Centers: (BS-M&SE). The department also offers programs of graduate study leading to the degrees Master of Engineering, Master of Science, Doctor A significant resource to the department is the Virginia Modeling, Analysis of Engineering, and Doctor of Philosophy with a major in Modeling and and Simulation Center located adjacent to the University's Tri-Cities Higher Simulation.
    [Show full text]
  • Modeling and Simulation Technologies Can Help U.S
    OUR ADVANCED SIMULATION CAPABILITIES MEAN YOU CAN TRAIN FROM ANYWHERE WITHOUT SACRIFICING TACTICAL REALISM. MODELING & SIMULATION Real-World Environments to Help You Train Like You Fight Success on the modern battlefield is a complex and rapidly evolving pursuit, as new enemies and technologies continue to emerge. The only way to ensure readiness in the face of this shifting landscape is for warfighters to train using the same scenarios, obstacles, and teamwork they’ll use on the field of battle, no matter how it changes. AN ENRICHED TRAINING APPROACH technology. By creating environments that mimic real-world Basic, stand-alone classroom training is not enough to build situations, we provide an opportunity for warfighters to a force that is ready to meet any challenge. But training at prepare in ways that would otherwise be difficult, dangerous, scale has traditionally been expensive and involved extensive and expensive. manual tuning. Fortunately, today’s modeling and simulation technologies can help U.S. defense and national security Our secure, comprehensive solutions encompass software, leaders enrich training for refined strategies, more predictable hardware, and networks to bring together live, virtual, outcomes, and optimal results. and constructive (LVC) assets in a fully-integrated, unified training battlespace. We are enhancing LVC training and Through distributed, highly-scalable, integrated training that simulation with machine learning, to test and calibrate remote incorporates live, virtual, computer-to-computer, and gaming system elements, while using deep learning to automate elements, U.S. warfighters can learn and reinforce their skills in content creation. The result is the development of training real-world environments.
    [Show full text]
  • Integrating Machine Learning and Multiscale Modeling: Perspectives, Challenges, and Opportunities in the Biological, Biomedical, and Behavioral Sciences
    Integrating Machine Learning and Multiscale Modeling: Perspectives, Challenges, and Opportunities in the Biological, Biomedical, and Behavioral Sciences Mark Alber, Mathematics, University of California, Riverside Adrian Buganza Tepole, Mechanical Engineering, Purdue University William Cannon, Computational Biology, Pacific Northwest National Lab Suvranu De, Mechanical, Aerospace and Nuclear Engineering, Rensselaer Polytechnic Institute Salvador Dura-Bernal, Physiology & Pharmacology, State University of New York Krishna Garikipati, Mechanical Engineering and Mathematics, University of Michigan George Karniadakis, Division of Applied Mathematics, Brown University William W. Lytton, Physiology & Pharmacology, State University of New York and Kings County Hospital, Brooklyn Paris Perdikaris, Mechanical Engineering, University of Pennsylvania Linda Petzold, Computer Science and Mechanical Engineering, University of California, Santa Barbara Ellen Kuhl, Mechanical Engineering and Bioengineering, Stanford University Abstract. Fueled by breakthrough technology developments, the biological, biomedical, and behavioral sciences are now collecting more data than ever before. There is a critical need for time- and cost-efficient strategies to analyze and interpret these data to advance human health. The recent rise of machine learning as a powerful technique to integrate multimodality, multifidelity data, and reveal correlations between intertwined phenomena presents a special opportunity in this regard. However, machine learning alone ignores the
    [Show full text]
  • Modeling and Simulation Concepts in Engineering Education: Virtual Tools
    Turk J Elec Engin, VOL.14, NO.1 2006, c TUB¨ ITAK˙ Modeling and Simulation Concepts in Engineering Education: Virtual Tools Levent SEVGI˙ Do˘gu¸s University, Electronics and Communication Engineering Department, Zeamet Sok. No. 21, Acıbadem / Kadık¨oy, 34722 Istanbul-TURKEY˙ e-mail: [email protected] Abstract This article reviews fundamental concepts of modeling and simulation in computational sciences, such as a model, analytical- and numerical-based modeling, simulation, validation, verification, etc., in relation to the virtual labs widely-offered as parts of engineering education. Virtual tools that can be used in electromagnetic engineering are also introduced. 1. Introduction Engineering [1] is the art of applying scientific and mathematical principles, experience, judgment, and common sense to make things that benefit people. It is the process of producing a technical product or system to meet a specific need in a society. Engineering education is a university education through which knowledge of mathematics and natural sciences are gained, followed up by a lifetime self-education where experience is piled up with practice. The four key words mathematics, physics, experience and practice are the “untouchables” of engineering education. Engineering is based on practice minimums of which should be gained in labs during the university education. However, parallel to the increase in complexity and rapid development of high-technology devices, the cost and comprehensiveness of the lab equipment required to fulfill the aforementioned minimum amount become unaffordable. Computers, other microprocessor-based devices, such as robots, telecom, telemedicine devices, automatic control/command/surveillance systems, etc., make engineering education not only very complex and costly but interdisciplinary as well.
    [Show full text]
  • Developing Simulation-Based Decision Support Systems for Customer- Driven Manufacturing Operation Planning
    Proceedings of the 2010 Winter Simulation Conference B. Johansson, S. Jain, J. Montoya-Torres, J. Hugan, and E. Yücesan, eds. DEVELOPING SIMULATION-BASED DECISION SUPPORT SYSTEMS FOR CUSTOMER- DRIVEN MANUFACTURING OPERATION PLANNING Juhani Heilala Matti Maantila Jari Montonen Jarkko Sillanpää Paula Järvinen Tero Jokinen Sauli Kivikunnas VTT Technical Research Centre of Finland Oras Ltd Metallimiehenkuja 6, P.O. Box 1000, Isometsäntie 2, P.O. Box 40 FI-02044 VTT (Espoo) FINLAND FI-26101 Rauma FINLAND ABSTRACT Discrete-event simulation (DES) has mainly been used as a production system analysis tool to evaluate new production system concepts, layout and control logic. Recent developments have made DES models feasible for use in the day-to-day operational production and planning of manufacturing facilities. Opera- tive simulation models provide manufacturers with the ability to evaluate the capacity of the system for new orders, unforeseen events such as equipment downtime, and changes in operations. A simulation- based Decision Support System (DSS) can be used to help planners and schedulers organize production more efficiently in the turbulent global manufacturing. This paper presents the challenges for develop- ment and the efforts to overcome these challenges for the simulation-based DSS. The major challenges are: 1) data integration 2) automated simulation model creation and updates and 3) the visualization of re- sults for interactive and effective decision making. A recent case study is also presented. 1 INTRODUCTION Agile, fast and flexible production networks are a must for companies facing today’s global competition. The connections between manufacturing systems and processes are becoming more complex and the amount of data required for decision-making is growing.
    [Show full text]
  • Computer Modeling and Simulation
    ISBN 978-1-84626-xxx-x Proceedings of 2011 International Conference on Optimization of the Robots and Manipulators (OPTIROB 2011) Sinaia, Romania, 26-28 Mai, 2011, pp. xxx-xxx Computer Modeling and Simulation Naqib Daneshjo1 Abstract. Modelling and Simulation is a discipline for developing a level of understanding of the interaction of the parts of a system, and of the system as a whole. The level of understanding which may be developed via this discipline is seldom achievable via any other discipline. A simulation is the manipulation of a model in such a way that it operates on time or space to compress it, thus enabling one to perceive the interactions that would not otherwise be apparent because of their separation in time or space. A model is a simplified representation of a system at some particular point in time or space intended to promote understanding of the real system. Keywords: Computer system, Simulation, Modelling, Information Technology, CAD/CAM 1. Introduction Modelling as a method of cognition has long-time/age long history. Man tried all sorts of means (verbal description, graphic display, use of mathematical symbols, physically and technically implemented models) to describe things in his environment and the phenomena observed by him. Models expressed, showed a significant features of real systems - objects. In engineering practice there is always a pair of model - a real system. From this perspective, models are divided into two groups: • Models, which allow you to analyse a real system. They allow specifying and clarifying our ideas of an existing system. • Models resulting from development and design (if the task concerns the synthesis of design and construction).
    [Show full text]
  • Modeling & Simulation-Based Problem Solving Process In
    sustainability Article Modeling & Simulation-Based Problem Solving Process in Sustainable Living Lab Changbeom Choi 1 , Seungho Yang 2 , Seon Han Choi 3,* and Sooyoung Jang 4,* 1 Department of Computer Engineering, College of Information Technology, Hanbat National University, Daejeon 34158, Korea; [email protected] 2 Department of Urban Engineering, College of Construction, Environment & Design, Hanbat National University, Daejeon 34158, Korea; [email protected] 3 Department of IT Convergence and Application Engineering, College of Engineering, Pukyong National University, Busan 48513, Korea 4 Electronics and Telecommunications Research Institute, Daejeon 34129, Korea * Correspondence: [email protected] (S.H.C.); [email protected] (S.J.); Tel.: +82-051-629-6240 (S.H.C.); +82-042-860-5289 (S.J.) Abstract: Modern society consists of various groups according to their respective interests. The im- portance of the citizen participation decision-making process in which such various groups get involved in the numerous decision-making of the society has been emerging. The living lab (LL) can be a sustainable approach in such a modern society because all stakeholders can participate in the problem-solving process. In LL, every group communicates, defines their problems, and discusses with experts to find the best solution. For this process to work effectively, the discussions should be based on clear scientific evidence instead of vague words. This study introduces the modeling and simulation (M&S) process to establish a theoretical basis to help the participants in LL identify problematic situations and analyze the solutions. This process involves discrete event system formalism with a set-theoretical modular form among various modeling and simulation theories and Citation: Choi, C.; Yang, S.; Choi, the execution environments.
    [Show full text]