- DEVS
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DEVS abbreviating Discrete Event System Specification is a modular and hierarchical formalism for modeling and analyzing general systems that can be discrete event systems which might be described by state transition tables, and continuous state systems which might be described by differential equations, and hybrid continuous state and discrete event systems. DEVS is a timed event system.
Contents
History
DEVS is a formalism for modeling and analysis of discrete event systems (DESs). The DEVS formalism was invented by Dr. Bernard P. Zeigler, who is a professor at the University of Arizona. DEVS was introduced to the public in Zeigler's first book, Theory of Modeling and Simulation, in 1976, while Zeigler was an associate professor at University of Michigan. DEVS can be seen as an extension of the Moore machine formalism [1], which is a finite state automaton where the outputs are determined by the current state alone (and do not depend directly on the input). The extension was done by
- associating a lifespan with each state [Zeigler76],
- providing a hierarchical concept with an operation, called coupling [Zeigler84].
Since the lifespan of each state is a real number (more precisely, non-negative real) or infinity, it is distinguished from discrete time systems, sequential machines, and Moore machines, in which time is determined by a tick time multiplied by non-negative integers. Moreover, the lifespan can be a random variable; for example the lifespan of a given state can be distributed exponentially or uniformly. The state transition and output functions of DEVS can also be stochastic.
Zeigler proposed a hierarchical algorithm for DEVS model simulation in 1984 [Zeigler84] which was published in Simulation journal in 1987. Since then, many extended formalism from DEVS have been introduced with their own purposes: DESS/DEVS for combined continuous and discrete event systems, P-DEVS for parallel DESs, G-DEVS for piecewise continuous state trajectory modeling of DESs, RT-DEVS for realtime DESs, Cell-DEVS for cellular DESs, Fuzzy-DEVS for fuzzy DESs, Dynamic Structuring DEVS for DESs changing their coupling structures dynamically, and so on. In addition to its extensions, there are some subclasses such as SP-DEVS and FD-DEVS have been researched for achieving decidability of system properties.
Due to the modular and hierarchical modeling views, as well as its simulation-based analysis capability, the DEVS formalism and its variations have been used in many application of engineering (such as hardware design, hardware/software codesign, communications systems, manufacturing systems) and science (such as biology, and sociology)
Formalism
- Intuitive Example
DEVS defines system behavior as well as system structure. System behavior in DEVS formalism is described using input and output events as well as states. For example, for the ping-pong player of Fig. 1, the input event is ?receive, and the output event is !send. Each player, A, B, has its states: Send and Wait. Send state takes 0.1 seconds to send back the ball that is the output event !send, while Wait lasts the state until the player receives the ball that is the input event ?receive.
The structure of ping-pong game is to connect two players: Player A 's output event !send is transmitted to Player B 's input event ?receive, and vice versa.
In the classic DEVS formalism, Atomic DEVS captures the system behavior, while Coupled DEVS describes the structure of system.
The following formal definition is for Classic DEVS [ZKP00]. In this article, we will use the time base, that is the set of non-negative real numbers; the extended time base, that is the set of non-negative real numbers plus infinity.
Atomic DEVS
An atomic DEVS model is defined as a 7-tuple
M = < X,Y,S,ta,δext,δint,λ > where
- X is the set of input events;
- Y is the set of output events;
- S is the set of sequential states (or also called the set of partial states);
- is the time advance function which is used to determine the lifespan of a state;
- is the external transition function which defines how an input event changes a state of the system, where is the set of total states, and te is the elapsed time since the last event;
- is the internal transition function which defines how a state of the system changes internally (when the elapsed time reaches to the lifetime of the state);
- is the output function where and is a silent event or an unobserved event. This function defines how a state of the system generates an output event (when the elapsed time reaches to the lifetime of the state);
Deterministic DEVS and Non-deterministic DEVS
Let A and B be two arbitrary sets. Then function is called deterministic if for , f(a) is identical any time. Otherwise, f is called non-deterministic.
A DEVS M = < X,Y,S,ta,δext,δint,λ > is called deterministic if ta, δext, δint and λ are deterministic. Otherwise, M is called non-deterministic.
- The atomic DEVS Model for Ping-Pong Players
The atomic DEVS model for player A of Fig. 1 is given Player= < X,Y,S,s0,ta,δext,δint,λ > such that
and
Both Player A and Player B are deterministic DEVS models.
Behavior of Atomic DEVS
Simply speaking, there are two cases that an atomic DEVS model M can change its state : (1) when an external input comes into the system M; (2) when the elapsed time te reaches the lifespan of s which is defined by ta(s). (At the same time of (2), M generates an output which is defined by λ(s).) .
For formal behavior description of given an Atomic DEVS model, refer to the page Behavior of DEVS. Computer algorithms to implement the behavior of a given Atomic DEVS model are available at Simulation Algorithms for Atomic DEVS.
Coupled DEVS
The coupled DEVS defines which sub-components belong to it and how they are connected with each other. A coupled DEVS model is defined as a 8-tuple
N = < X,Y,D,{Mi},Cxx,Cyx,Cyy,Select > where
- X is the set of input events;
- Y is the set of output events;
- D is the name set of sub-components;
- {Mi} is the set of sub-components where for each can be either an atomic DEVS model or a coupled DEVS model.
- is the set of external input couplings;
- is the set of internal couplings;
- is the external output coupling function;
- is the tie-breaking function which defines how to select the event from the set of simultaneous events;
- The coupled DEVS model for Ping-Pong Game
The ping-pong game of Fig. 1 can be modeled as an coupled DEVS model N = < X,Y,D,{Mi},Cxx,Cyx,Cyy,Select > where X = {};Y = {};D = {A,B}; MA and MB is described as above; Cxx = {}; Cyx = {(A.!send,B.?receive),(B.!send,A.?receive)}; and Cyy(A.!send) = ϕ,Cyy(B.!send) = ϕ.
Behavior of Coupled DEVS
Simply speaking, like the behavior of the atomic DEVS class, a coupled DEVS model N changes its components' states (1) when an external event comes into N; (2) when one of components Mi where executes its internal state transition and generates its output . In both cases (1) and (2), a triggering event is transmitted to all influencees which are defined by coupling sets Cxx,Cyx, and Cyy.
For formal definition of behavior of the coupled DEVS, you can refer to Behavior of Coupled DEVS. Computer algorithms to implement the behavior of a given coupled DEVS mode are available at Simulation Algorithms for Coupled DEVS.
Analysis Methods
Simulation for Discrete Event Systems
The simulation algorithm of DEVS models considers two issues: time synchronization and message propagation. Time synchronization of DEVS is to control all models to have the identical current time. However, for an efficient execution, the algorithm makes the current time jump to the most urgent time when an event is scheduled to execute its internal state transition as well as its output generation. Message propagation is to transmit a triggering message which can be either an input or output event along the associated couplings which are defined in a coupled DEVS model. For more detailed information, the reader can refer to Simulation Algorithms for Atomic DEVS and Simulation Algorithms for Coupled DEVS.
Simulation for Continuous State Systems
By introducing a quantization method which abstracts a continuous segment as a piecewise const segment, DEVS can simulate behaviors of continuous state systems which are described by networks of differential algebraic equations. This research has been initiated by Zeigler in 90's[3] and many properties have been clarified by Prof. Kofman in 2000's and Dr. Nutaro. In 2006, Prof. Cellier who is the author of Continuous System Modeling[Cellier91], and Prof. Kofman wrote a text book, Continuous System Simulation[CK06] in which Chapters 11 and 12 cover how DEVS simulates continuous state systems. Dr. Nutaro's book [Nutaro10], covers the discrete event simulation of continuous state systems too.
Verification for Discrete Event Systems
As an alternative analysis method against the sampling-based simulation method, an exhaustive generating behavior approach, generally called verification has been applied for analysis of DEVS models. It is proven that infinite states of a given DEVS model (especially a coupled DEVS model ) can be abstracted by behaviorally isomorphic finite structre, called a reachability graph when the given DEVS model is a sub-class of DEVS such as Schedule-Preserving DEVS (SP-DEVS) and Finite & Deterministic DEVS (FD-DEVS) [HZ09]. As a result, based on the rechability graph, (1) dead-lock and live-lock freeness as qualitative properties are decidable with SP-DEVS [Hwang05] and FD-DEVS [HZ06], and (2) min/max processing time bounds as a quantitative property are decidable with SP-DEVS so far by 2009.
Variations of DEVS
Extensions (Superclassing)
Numerous extensions of the classic DEVS formalism have been developed in the last decades. Among them formalisms which allow to have changing model structures while the simulation time evolves.
G-DEVS, Parallel DEVS, Dynamic Structuring DEVS, Cell-DEVS [Wainer09], dynDEVS, Fuzzy-DEVS, GK-DEVS, ml-DEVS, Symbolic DEVS, Real-Time DEVS, rho-DEVS
Restrictions (Subclassing)
There are some sub-classes known as Schedule-Preserving DEVS (SP-DEVS) and Finite and Deterministic DEVS (FD-DEVS) which were designated to support verification analysis. SP-DEVS and FD-DEVS whose expressiveness are E(SP-DEVS) E(FD-DEVS) E(DEVS) where E(formalism) denotes the expressiveness of formalism.
See also
DEVS Related Articles
- Event Segment
- Timed Event System
- Verifiable sub-classes of DEVS: SP-DEVS, FD-DEVS
- Behavior of Atomic DEVS
- Behavior of Coupled DEVS
- Simulation Algorithms for Atomic DEVS
- Simulation Algorithms for Coupled DEVS
Other Formalisms
- Automata Theory: a formal method for state transition systems
- Finite State Machine: a state transition machine with finite sets of events and states
- Petri Nets: a graphical representation of state and transition relations
- Markov Chain: a stochastic process in which the future will be determined by the current
External links to DEVS Research Groups
Alphabetical Order
- DEVS Standardization Group: http://cell-devs.sce.carleton.ca/devsgroup/
- DEVS Study Group: http://tech.groups.yahoo.com/group/DEVSTD/
- DEVS Tools: http://cell-devs.sce.carleton.ca/devsgroup/?q=node/8
- Dr. Barros' Lab at Universidade de Coimbra: http://eden.dei.uc.pt/~barros/
- Dr. Giambiasi's Lab at Laboratoire des Sciences de I'Information et des Systemes (LSIS): http://www.lsis.org/fiche.php?id=72&page=&afficher=&presentation_publis=&processus=ok
- Dr. Hu's Lab at Georgia State University: http://www.cs.gsu.edu/~cscxlh/
- Dr. Hwang's Homepage: http://moonho.hwang.googlepages.com/
- Dr. Jamshidi's Virtual Laboratory for Autonomous Agents at University of New Mexico: http://vlab.unm.edu/
- Dr. Kim's Systems Modeling Simulation Lab at KAIST: http://smslab.kaist.ac.kr/
- Dr. Kofman's Laboratory for System Dynamics and Signal Processing at Universidad Nacional de Rosario: http://www.fceia.unr.edu.ar/lsd/
- Dr. Mittal's startup Dunip Technologies: http://www.duniptechnologies.com
- Dr. Tolk's Interoperability and Composability Research Group at the Virginia Modeling, Analysis and Simulation Center
- Dr. Uhrmacher's Modeling and Simulation Group at University of Rostock: http://wwwmosi.informatik.uni-rostock.de/mosi
- Dr. Vangheluwe's Modeling, Simulation & Design Lab at McGill University: http://msdl.cs.mcgill.ca/
- Dr. Wainer's Lab at Carleton University: http://www.sce.carleton.ca/faculty/wainer/ (Lab).
- Dr. Zeigler and Dr. Sarjoughian's Arizona Center for Integrative Modeling and Simulation (ACIMS): http://www.acims.arizona.edu
- Dr. Zhang's Homepage: http://www.ece.arizona.edu/~mingz/
DEVS Tools
- adevs: A C++ library for constructing discrete event simulations based on the Parallel DEVS and Dynamic DEVS (dynDEVS) formalisms
- CD++ An environment for development of DEVS and Cellular DEVS formalisms.
- CD++Modeler A graphical interface for modeling DEVS and Cell-DEVS applications (with source code).
- CD++Builder An Eclipse Plugin for developing DEVS and Cell-DEVS models (with source code).
- CoSMo-Sim: A unified logical, visual, and persistence environment for specifying families of DEVS, Cellular Automata, and XML models. It supports simulation of parallel DEVS models [open source at SourceForge].
- DEVS++: C++ Open Source Library of DEVS Formalism for simulation analysis
- DEVS#: C# Open Source Library of DEVS Formalism for simulation and verification analysis
- DEVS/C++ Implementation of Parallel DEVS in C++.
- DEVS/HLA/CORBA Extends DEVSJAVA and DEVS-C++ with HLA and CORBA.
- DEVSJAVA It supports Parallel DEVS models with software real-time, variable structure, 2D/3D cellular automata, and animation.
- DEVSim++
- DEVS-Suite Next generation of DEVSJAVA supporting integrated automated design of experiments, run-time data trajectory plotting, and animation with multiple degrees of control for simulation execution, plotting, and animation speeds [open source at SourceForge]
- GALATEA
- JAMES II M&S Framework for many different formalisms including PDEVS and ml-DEVS.
- JDEVS
- LSIS DME
- Mimosa
- PF3S
- PowerDEVS A general purpose software tool for DEVS modeling and simulation oriented to the simulation of hybrid systems
- Python DEVS
- SimBeans
- SmallDEVS
- VLE An environment and C++ libraries for development of DEVS, Cellular DEVS, DESS, QSS, Celluar QSS, Petri net and UML Statechart formalisms.
Footnotes
- ^ automata were the mathematical models of Dr. Zeigler's Ph.D. thesis [Zeigler68]
- ^ We can also define the external transition function as where such that for a total state , is a partial state, is the lifespan of s, and is the elapsed time since last update of ts. For more how to understand this function, refer to the article, Behavior of DEVS.
- ^ the use of quantized values in order to simulate continuous systems by means of a discrete event method was empirically tried out a few years sooner - in the early 90's - by a French engineer <We need any reference for this argument>. He was then working for a company spun off from University of Valenciennes and Hainaut-Cambresis, and now part of the Schneider Electric. This quantization[disambiguation needed ] is a feature of a simulation software of which this engineer is the conceptor and main developer, that is used for PLC programs checking and operator training.
References
- [Cellier91] Francois E. Cellier (1991). Continuous System Modeling (first ed.). Springer. ISBN 978-0387975023.
- [CK06] Francois E. Cellier and Ernesto Kofman (2006). Continuous System Simulation (first ed.). Springer. ISBN 978-0387261027.
- [Hwang05] M.H. Hwang, "Tutorial: Verification of Real-time System Based on Schedule-Preserved DEVS", Proceedings of 2005 DEVS Symposium, San Diego, Apr. 2-8, 2005, ISBN 1-56555-290-8,
- [HZ06] M.H. Hwang and B. P. Zeigler, "A Modular Verification Framework using Finite and Deterministic DEVS", Proceedings of 2006 DEVS Symposium, pp57–65, Huntsville, Alabama, USA,
- [HZ09] M.H. Hwang and B.P. Zeigler, "Reachability Graph of Finite and Deterministic DEVS Networks", IEEE Transactions on Automation Science and Engineering, Volume 6, Issue 3, 2009, pp. 454–467,
- [Nutaro10] James Nutaro (2010). Building Software for Simulation: Theory, Algorithms, and Applications in C++ (first ed.). Wiley. ISBN 0470414693.
- [Sarjoughian09] Hessam S. Sarjoughian and Vignesh Elamvazhuthi (2009). CoSMoS: A Visual Environment for Component-Based Modeling, Experimental Design, and Simulation. Proceedings of the International Conference on Simulation Tools and Techniques.
- [Wainer09] Gabriel A. Wainer (2009). Discrete-Event Modeling and Simulation: A Practitioner's Approach (first ed.). CRC Press. ISBN 978-1420053364.
- [Wainer10] Gabriel A. Wainer and Pieter Mosterman Eds. (2010). Discrete-Event Modeling and Simulation: Theory and Applications (first ed.). CRC Press. ISBN 978-1420072334.
- [Zeiger68] Bernard Zeigler (1968). On the Feedback Complexity of Automata (Ph.D. Thesis ed.). University of Michigan.
- [Zeigler76] Bernard Zeigler (1976). Theory of Modeling and Simulation (first ed.). Wiley Interscience, New York. ISBN 0127784551.
- [Zeigler84] Bernard Zeigler (1984). Multifacetted Modeling and Discrete Event Simulation. Academic Press, London; Orlando. ISBN 978-0127784502.
- [Zeigler87] Bernard Zeigler (1987). "Hierarchical, modular discrete-event modelling in an object-oriented environment". Simulation 49 (5): 219–230. doi:10.1177/003754978704900506.
- [ZKP00] Bernard Zeigler, Tag Gon Kim, Herbert Praehofer (2000). Theory of Modeling and Simulation (second ed.). Academic Press, New York. ISBN 978-0127784557.
Categories:- Automata theory
- Formal specification languages
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