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FINITE STATE MACHINE

Fig.1 Finite State Machine

A 'finite state machine (FSM)' or 'finite state automaton' (plural: ''automata'') or simply a 'state machine' is a model of behavior composed of a finite number of states, transitions between those states, and actions.

Contents
Concepts and vocabulary
Classification
Acceptors and recognizers
Start state
Accept state
Transducers
FSM logic
Mathematical model
Optimization
Implementation
Hardware applications
Software applications
History
See also
External links
References
General
Finite state machines (automata theory) in theoretical computer science
Abstract state machines in theoretical computer science
Machine learning using finite-state algorithms
Hardware engineering: state minimization and synthesis of sequential circuits
Finite Markov chain processes

Concepts and vocabulary


A state stores information about the past, i.e. it reflects the input changes from the system start to the present moment. A transition indicates a state change and is described by a condition that would need to be fulfilled to enable the transition. An action is a description of an activity that is to be performed at a given moment. There are several action types:
;Entry action: which is performed ''when entering'' the state
;Exit action: which is performed ''when exiting'' the state
;Input action: which is performed depending on present state and input conditions
;Transition action: which is performed when performing a certain transition
A FSM can be represented using a state diagram (or state transition diagram) as in figure 1. Besides this, several state transition table types are used. The most common representation is shown below: the combination of current state (B) and condition (Y) shows the next state (C). The complete actions information can be added only using footnotes. An FSM definition including the full actions information is possible using state tables (see also VFSM).
State transition table
   Current State ->
Condition
State A State B State C
Condition X ... ... ...
Condition Y ... State C ...
Condition Z ... ... ...

In addition to their use in modeling reactive systems presented here, finite state automata are significant in many different areas, including electrical engineering, linguistics, computer science, philosophy, biology, mathematics, and logic. A complete survey of their applications is outside the scope of this article. Finite state machines are a class of automata studied in automata theory and the theory of computation.
In computer science, finite state machines are widely used in modeling of application behavior, design of hardware digital systems, software engineering, compilers, network protocols, and the study of computation and languages.

Classification


There are two different groups: Acceptors/Recognizers and Transducers.
Acceptors and recognizers

Fig. 2 Acceptor FSM: parsing the word "nice"

'Acceptors' and 'recognizers' (also 'sequence detectors') produce a binary output, saying either ''yes'' or ''no'' to answer whether the input is accepted by the machine or not. All states of the FSM are said to be either accepting or not accepting. At the time when all input is processed, if the current state is an accepting state, the input is accepted; otherwise it is rejected. As a rule the input are symbols (characters); actions are not used. The example in figure 2 shows a finite state machine which accepts the word "nice", in this FSM the only accepting state is number 7.
The machine can also be described as defining a language, which would contain every word accepted by the machine but none of the rejected ones; we say then that the language is ''accepted'' by the machine. By definition, the languages accepted by FSMs are the regular languages - that is, a language is regular if there is some FSM that accepts it (cf. Kleene's Theorem).
Start state

The start state is usually shown drawn with an arrow "pointing at it from nowhere" (Sipser (2006) p.34)
Accept state

An 'accept state' (sometimes referred to as an 'accepting state') is a state at which the machine has successfully performed its procedure. It is usually represented by a double circle.
An example of an accepting state appears on the left in this diagram of a deterministic finite automaton which determines if the binary input contains an even number of 0s:
:
DFAexample.svg

''S''1 (which is also the start state) indicates the state at which an even number of 0s has been input and is therefore defined as an accepting state.
Transducers

Transducers generate output based on a given input and/or a state using actions. They are used for control applications. Here two types are distinguished:
Fig. 3 Transducer FSM: Moore model example

;Moore machine: The FSM uses only entry actions, i.e. output depends only on the state. The advantage of the Moore model is a simplification of the behaviour. The example in figure 3 shows a Moore FSM of an elevator door. The state machine recognizes two commands: "command_open" and "command_close" which trigger state changes. The entry action (E:) in state "Opening" starts a motor opening the door, the entry action in state "Closing" starts a motor in the other direction closing the door. States "Opened" and "Closed" don't perform any actions. They signal to the outside world (e.g. to other state machines) the situation: "door is open" or "door is closed".
Fig. 4 Transducer FSM: Mealy model example

;Mealy machine: The FSM uses only input actions, i.e. output depends on input and state. The use of a Mealy FSM leads often to a reduction of the number of states. The example in figure 4 shows a Mealy FSM implementing the same behaviour as in the Moore example (the behaviour depends on the implemented FSM execution model and will work e.g. for virtual FSM but not for event driven FSM). There are two input actions (I:): "start motor to close the door if command_close arrives" and "start motor in the other direction to open the door if command_open arrives".
In practice mixed models are often used.
More details about the differences and usage of Moore and Mealy models, including an executable example, can be found in the external technical note "Moore or Mealy model?"
A further distinction is between 'deterministic' (DFA) and 'non-deterministic' (NDFA, GNFA) automata. In deterministic automata, for each state there is exactly one transition for each possible input. In non-deterministic automata, there can be none or more than one transition from a given state for a given possible input. This distinction is relevant in practice, but not in theory, as there exists an algorithm which can transform any NDFA into an equivalent DFA, although this transformation typically significantly increases the complexity of the automaton.
The FSM with only one state is called a combinatorial FSM and uses only input actions. This concept is useful in cases where a number of FSM are required to work together, and where it is convenient to consider a purely combinatorial part as a form of FSM to suit the design tools.

FSM logic


Fig. 5 FSM Logic

The next state and output of an FSM is a function of the input and of the current state. The FSM logic is shown in Figure 5.

Mathematical model


Depending on the type there are several definitions. An 'acceptor' finite state machine is a quintuple (Sigma, S, s_0, delta, F), where:

Sigma is the input alphabet (a finite non empty set of symbols).

S is a finite non empty set of states.

s_0 is an initial state, an element of S. In a Nondeterministic finite state machine, s_0 is a set of initial states.

delta is the state transition function: delta: S imes Sigma
ightarrow S.

F is the set of final states, a (possibly empty) subset of S.
A 'transducer' finite state machine is a six tuple (Sigma, Gamma, S, s_0, delta, omega), where:

Sigma is the input alphabet (a finite non empty set of symbols).

Gamma is the output alphabet (a finite non empty set of symbols).

S is a finite non empty set of states.

s_0 is the initial state, an element of S. In a Nondeterministic finite state machine, s_0 is a set of initial states.

delta is the state transition function: delta: S imes Sigma
ightarrow S.

omega is the output function.
If the output function is a function of a state and input alphabet (omega: S imes Sigma
ightarrow Gamma) that definition corresponds to the 'Mealy model', and can be modelled as a Mealy machine. If the output function depends only on a state (omega: S
ightarrow Gamma) that definition corresponds to the 'Moore model', and can be modelled as a Moore machine. A finite state machine with no output function at all is known as a semiautomaton or transition system.

Optimization


Optimizing an FSM means finding the machine with the minimum number of states that performs the same function. One possibility is by using an Implication table or the Moore reduction procedure. Another possibility is bottom-up algorithm for Acyclic FSAs.

Implementation


Hardware applications

Fig. 6 The circuit diagram for a 4 bit TTL counter, a type of state machine
In a digital circuit, an FSM may be built using a programmable logic device, a programmable logic controller, logic gates and flip flops or relays. More specifically, a hardware implementation requires a register to store state variables, a block of combinational logic which determines the state transition, and a second block of combinational logic that determines the output of an FSM. One of the classic hardware implementations is the Richard's Controller
Software applications

The following concepts are commonly used to build software applications with finite state machines:

event driven FSM

virtual FSM (VFSM)

Automata-Based Programming

History


Starting in the 1970s, Leslie Lamport, an early leader within the distributed systems research community, used finite state machines as the basis for an algorithm he called state machine replication. In this approach, a deterministic computer program or service is replaced with a set of replicas that use some form of atomic broadcast to perform operations in a manner tolerant of failures.

See also




Abstract state machine

Automata analyzer

Coverage analysis

Decision tables

Extended finite state machine

FSMD

Petri net

Protocol development

Pushdown automaton

Quantum finite automata

Sequential logic

Statechart

Transition system

Turing machine

List of state machine CAD tools

Hidden Markov model

Ant Wars

External links



Description from the Free On-Line Dictionary of Computing

★ NIST Dictionary of Algorithms and Data Structures entry

Hierarchical State Machines

Round-trip Engineering State Machines

Using state machines in practical applications

Flash based demonstration of Finite State Machines being used in regular expressions

References


General


★ Wagner, F., "Modeling Software with Finite State Machines: A Practical Approach", Auerbach Publications, 2006, ISBN 0-8493-8086-3.

★ Samek, M., "Practical Statecharts in C/C++", CMP Books, 2002, ISBN 1-57820-110-1.

★ Cassandras, C., Lafortune, S., "Introduction to Discrete Event Systems". Kluwer, 1999, ISBN 0-7923-8609-4.

★ Timothy Kam, ''Synthesis of Finite State Machines: Functional Optimization''. Kluwer Academic Publishers, Boston 1997, ISBN 0-7923-9842-4

★ Tiziano Villa, ''Synthesis of Finite State Machines: Logic Optimization''. Kluwer Academic Publishers, Boston 1997, ISBN 0-7923-9892-0

★ Carroll, J., Long, D. , ''Theory of Finite Automata with an Introduction to Formal Languages''. Prentice Hall, Englewood Cliffs, 1989.

★ Kohavi, Z., ''Switching and Finite Automata Theory''. McGraw-Hill, 1978.

★ Gill, A., ''Introduction to the Theory of Finite-state Machines''. McGraw-Hill, 1962.

★ Ginsburg, S., ''An Introduction to Mathematical Machine Theory''. Addison-Wesley, 1962.
Finite state machines (automata theory) in theoretical computer science


Theories of Abstract Automata, , Michael A., Arbib, Prentice-Hall, Inc., 1969,

Discrete Mathematics: Applied Algebra for Computer and Information Science, , Leonard S., Bobrow, W. B. Saunders Company, Inc., 1974,

Sequential Machines and Automata Theory, , Taylor L., Booth, John Wiley and Sons, Inc., 1967, Library of Congress Card Catalog Number 67-25924 Extensive, wide-ranging book meant for specialists, written for both theoretical computer scientists as well as electrical engineers. With detailed explanations of state minimization techniques, FSMs, Turing machines, Markov processes, and undecidability. Excellent treatment of Markov processes.

Computability and Logic, , George, Boolos, Cambridge University Press, 1989, 1999, ISBN 0-521-20402-X Excellent. Has been in print in various editions and reprints since 1974 (1974, 1980, 1989, 1999).

Theory of Computation: Formal Languages, Automata, and Complexity, , J. Glenn, Brookshear, Benjamin/Cummings Publish Company, Inc., 1989, ISBN 0-8053-0143-7 Approaches Church-Turing thesis from three angles: levels of finite automata as acceptors of formal languages, primitive and partial recursive theory, and power of bare-bones programming languages to implement algorithms, all in one slim volume.

Second Edition: Computability, Complexity, and Languages and Logic: Fundamentals of Theoretical Computer Science, , Martin, Davis, Academic Press, Harcourt, Brace & Company, 1994,

Introduction to Automata Theory, Languages and Computation, , John, Hopcroft, Addison-Wesley, 1979, ISBN 0-201-02988-X A difficult book centered around the issues of machine-interpretation of "languages", NP-Completeness, etc.

Introduction to Automata Theory, Languages, and Computation, , John E., Hopcroft, Addison-Wesley, 2001, Distinctly different and less intimidating than the first edition.

Automata, , David, Hopkin, Elsevier North-Holland, 1976, ISBN 0-444-00249-9

Automata and Computability, , Dexter C., Kozen, Springer-Verlag, 1997, ISBN 0-387-94907-0

Elements of the Theory of Computation, , Harry R., Lewis, Prentice-Hall, 1998, ISBN 0-13-262478-8

Formal Languages and Automata, , Peter, Linz, Jones and Bartlett, 2006, ISBN-13: 978-0-7637-3798-6

Computation: Finite and Infinite Machines, , Marvin, Minsky, Prentice-Hall, 1967, Minsky spends pages 11-20 defining what a “state” is in context of FSMs. His state diagram convention is unconventional. Excellent, i.e. relatively readable, sometimes funny.

Computational Complexity, Christos Papadimitriou, , , Addison Wesley, 1993, ISBN 0-201-53082-1

Theories of Computability, , Nicholas, Pippenger, Cambridge University Press, 1997, 0-521-55380-6 (hc) Abstract algebra is at the core of the book, rendering it advanced and less accessible than other texts.

JFLAP: An Interactive Formal Languages and Automata Package, , Susan, Rodger, Jones and Bartlett, 2006, ISBN-10: 0763738344

Introduction to the Theory of Computation, Second Edition, , Michael, Sipser, Thomson Course Technology, 2006, ISBN-10: 0-534-95097-3 cf Finite state machines (finite automata) in chapter 29.

Theory of Computation, , Derick, Wood, Harper & Row, Publishers, Inc., 1987, ISBN-10: 0-06-047208-1
Abstract state machines in theoretical computer science


★ Yuri Gurevich (2000), ''Sequential Abstract State Machines Capture Sequential Algorithms'', ACM Transactions on Computational Logic, vl. 1, no. 1 (July 2000), pages 77-111. http://research.microsoft.com/~gurevich/Opera/141.pdf
Machine learning using finite-state algorithms


Machine Learning, , Tom M., Mitchell, WCB/McGraw-Hill Corporation, 1997, ISBN 0-07-042807-7 A broad brush but quite thorough and sometimes difficult, meant for computer scientists and engineers. Chapter 13 ''Reinforcement Learning'' deals with robot-learning involving state-machine-like algorithms.
Hardware engineering: state minimization and synthesis of sequential circuits


Sequential Machines and Automata Theory, , Taylor L., Booth, John Wiley and Sons, Inc., 1967, Library of Congress Card Catalog Number 67-25924 Extensive, wide-ranging book meant for specialists, written for both theoretical computer scientists as well as electrical engineers. With detailed explanations of state minimization techniques, FSMs, Turing machines, Markov processes, and undecidability. Excellent treatment of Markov processes.

Digital Networks and Computer Systems, , Taylor L., Booth, John Wiley and Sons, Inc., 1971, ISBN 0-471-08840-4 Meant for electrical engineers. More focused, less demanding than his earlier book. His treatment of computers is out-dated. Interesting take on definition of ‘algorithm’.

Introduction to the Theory of Switching Circuits, , E. J., McCluskey, McGraw-Hill Book Company,Inc., 1965, Library of Congress Card Catalog Number 65-17394 Meant for hardware electrical engineers. With detailed explanations of state minimization techniques and synthesis techniques for design of combinatory logic circuits.

Introduction to the Theory of Switching Circuits, , Fredrick J., Hill, McGraw-Hill Book Company, 1965, Library of Congress Card Catalog Number 65-17394 Meant for hardware electrical engineers. Excellent explanations of state minimization techniques and synthesis techniques for design of combinatory and sequential logic circuits.
Finite Markov chain processes

::"We may think of a Markov chain as a process that moves successively through a set of states s1, s2, ..., sr. ... if it is in state si it moves on to the next stop to state sj with probability pij. These probabilities can be exhibited in the form of a transition matrix" (Kemeny (1959), p. 384)
Finite Markov-chain processes are also known as subshifts of finite type.

Sequential Machines and Automata Theory, , Taylor L., Booth, John Wiley and Sons, Inc., 1967, Library of Congress Card Catalog Number 67-25924 Extensive, wide-ranging book meant for specialists, written for both theoretical computer scientists as well as electrical engineers. With detailed explanations of state minimization techniques, FSMs, Turing machines, Markov processes, and undecidability. Excellent treatment of Markov processes.

Finite Mathematical Structures, , John G., Kemeny, Prentice-Hall, Inc., 1959, Library of Congress Card Catalog Number 59-12841 Classical text . cf Chapter 6 ‘’Finite Markov Chains”.

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