Title: Overview and Recent Trends of Petri Net Research
1Overview and Recent Trends of Petri Net Research
- Tadao Murata
- University of Illinois at Chicago
- murata_at_uic.edu
- Romanian Academy of Science
- Bucharest, Romania
- March 24, 2005
2Plan of Talk
- Overview of Petri Net Research
- Our Recenet Work Fast Performance Evaluation
Using Fuzzy Logic and Petri Nets - Fuzzy Logic and Soft Computing (SC)
- Examples of Possibility Distributions
- Probability vs. Possibility
- Simple Examples of Performance and Possibility
Evaluation by Using Fuzzy Logic and Petri Nets - Degrees of Possibilities for Satisfying Given
Specifications - Concluding Remarks
3What is a Petri Net?
- Petri Nets are a graphical and mathematical
modeling tool, - and good for describing and studying information
- processing systems that are characterized as
being - Concurrent
- Parallel
- Asynchronous
- Distributed
- Non-deterministic
- and/or Stochastic
4"Three-In-One" Characteristics of Petri Nets
- 1) Graphical or Intuitive Model,
- 2) Mathematical or Formal Model, and
- 3) Can be used as Simulation Tool
- An Analogy A Vehicle that can travel
- On Land like a car,
- On Water like a boat, and
- On Air like an airplane.
5Application Areas
- Successful application examples are often found
in the areas of - Communication protocols and networks,
- Performance evaluation of time-critical systems,
- Flexible manufacturing systems,
- Discrete event control systems,
- Business and other work-flow management systems,
- System and Computational Biology, etc.
- For actual (non-toy) examples of applications,
visit, e,g., - http//www.daimi.au.dk/PetriNets/applications/,
and - http//www.daimi.au.dk/CPnets/intro/example_indu.h
tml
6Analysis Methods
- 1) State Equation and Invariants
- 2) Reduction Techniques (Expansion for Synthesis)
- 3) Use of subgraphs Siphons, Traps, Handles,
Bridges, SM- MG components, etc. - 4) Reachability (Coverability) Graphs
- The first three are applicable to subclasses or
with certain conditions, and the forth has the
state space explosion problem.
7Our Recent WorkFast Performance Evaluation
Using Fuzzy Logic and Petri Nets
8Fuzzy Logic is a Main Component of Soft Computing
(SC), which is
- A set of methodologies that function effectively
in an environment of imprecision and/or
uncertainty - Aims at exploiting the tolerance for fuzziness
(imprecision, uncertainty, and partial truth) to
achieve tractability (or scalability), and
low-solution cost. - Methodologies in SC include Fuzzy Logic,
Computing with Words, Neurocomputing,
Probabilistic Reasoning, etc. - Zad94 Lotfi A. Zadeh, "Fuzzy Logic, Neural
Networks, and Soft Computing," Comm. of ACM,
vol.37, pp.77-84, 1994
9Fuzzy Set is a Generalization of Crisp Set
- Any crisp theory can be generalized to the
concept - of a fuzzy set (from a set)
- Membership grade ?0 or 1 v.s, 0???1
- Crisp, Non-Fuzzy ? Fuzzy
- Linear ? Nonlinear
- Deterministic ? Non-Deterministic
10Example of a crisp set
- The set of people who are 20 years old or younger
- The set of younger people
-
?1
- ?1 inside
- ?0 outside the set
?1 for 15 years old ?0.5 for 30 years
old ?0.1 for 40 years old
11Fuzzy Timing is a Generalization of Deterministic
Timing
- Without loss of generality, we can use
trapezoidal fuzzy time functions or possibility
distributions, using 4 parameters, p(t) (p1,
p2, p3, p4). - Note S (probabilities) 1, but S
(possibilities) ? 1 - Special Cases
- 1. Deterministic Timing if p1 p2 p3 p4 (p)
- 2. Deterministic Time Interval if p1 p2 and
p3 p4 - 3. Triangular Distributions (Fuzzy Numbers) if
p2 p3 - This is not restriction. Any possibility
distributions can be used in this method.
1
1
p
t
p
p
p
p
p
p
p
t
0
0
1
2
3
4
1
2
3
4
(a)
(b)
12Typical Building Blocks of Possibility
Distributions
- Normal Possibility Distribution by Triangular
- (Trapezoidal) or Exponential Functions
Special Cases Special Cases
?(x)e-1/2((x-c)/?)2
1
20
0
points
100
C60
13Example 1 Possibility distribution of a typical
exam in my class
- It is a normal probability distribution which can
be approximated by the triangular possibility
distribution (?1, ?2, ?3, ?4) (20, 60, 60,
100) points.
14Example 2 Possibility distribution of driving
time from my home to work (20 miles). Note that
arbitrary possibility distributions can be
decomposed into a set of trapezoidal
distributions.
15Example 3 Possibility distribution of time to
download a big file (of 1Mb to 1Gb)
- (?1, ?2, ?3, ?4) (1, 5, 10, 100) sec.
16Example 4 Possibility distribution of the total
of hours spent by a student on HWs
- HW.course1 ? HW.course2 ? HW.course3
(1, 2, 3, 4) ? (2,
3, 3, 4) ? (2, 2, 3, 3) (5, 7, 9, 11) hours.
1
1
1
0
1
2
3
4
0
2
3
4
0
2
3
1
0
5
7
9
11
hours
17Fuzzy vs. Vague
- A proposition is fuzzy if it contains terms that
are labels of fuzzy sets, such as possibility
distributions e.g., "I will be back in a few
minutes.The possibility distribution of "a few
minutes" is shown below. - But I will be back sometime is vague, unless
the possibility distribution of sometime is
given.
18Negation of a Proposition and its Possibility
Distribution
- The possibility distribution of "young"
- The possibility distribution of "not young"
19Computing with Words
- In a broader sense, computing with words is a
computational theory of perceptions. - It is a methodology in which the objects of
computation are words such as a few days,
young, rich, not very likely, , and
propositions in natural languages such as It
takes a few days, I'll do it in the near future,
The stock price will go up eventually, etc. - In this talk we restrict the perception related
to time or delay (performance).
20Computing Over-all Possibilities Example
- We have a project which consists of three steps
to do in sequence. Each step takes a few days to
complete. What is the possibility to finish this
project within the deadline of 9 days? - Solution
- Suppose that the possibility distribution of a
few days is given by (1,2,3,5) days. Then 3 steps
take 3(1, 2, 3, 5) (3, 6, 9, 15) days. Thus the
possibility distribution to finish this project
is
1
0
days
6
3
9
15
21(Continued from the preceding page)
- The possibility to finish this project in 9 days
is computed by the radio of the areas Area A
(the part of the trapezoidal area before 9
days) / Area B (the entire trapezoidal area)
(1.5 3)/(1.5 3 3) 4.5/7.5 0.6 or
60 .
Step 1
Step 2
Step 3
Deterministic 3 days 3 days 3 days 9 days
22Computing Possibilities of Satisfying Maximum
Tolerable Skew in Multimedia Synchronization
- Given the following Dynamic Parameters for a
- Multimedia (Audio and Video) Application
- Throughput 10 images per sec
- Max. Tolerable jitter on audio or video 10ms
- Max. tolerable skew between audio and video 50ms.
23(Continued from the preceding page)
- Normal playout duration per image100ms
- Possibility distribution (90, 100, 100, 110)ms.
- Synchronizing every 4 audio-video unit gives the
- playout duration for 4 units 4X(90,100,100,110)
(360, 400, 400, 440)
24(Continued from the preceding page)
- The max possible skew440-36080 ms or
possibility distribution is (-80, 0, 0, 80) ms - The degree of possibility that the max skew
requirement ?50ms is satisfied. - The shaded Area between t50 and -50 / Area of
the whole triangular 0.859375
1
50
0
-80
0
80
-50
t
25(Continued from the preceding page)
- Thus, synchronizing every 4 units yields the
85.9 possibility that the skew between video and
audio will not exceed 50 ms. Thus the requirement
is satisfied 85.9 of time. - Synchronizing every 2 units yields the
possibility distribution of the skew
2x(90,100,100,110) (180,200,200,220)ms Max.
possible skew is 220-180 40ms lt 50ms limit.
Thus the requirement is satisfied 100 this time.
26Probability vs. Possibility
- Probabilities are normalized ?(probabilities)
1, but ?(possibilities) ?1. - Probability theory offers no techniques for
dealing with fuzzy quantifiers like few, many,
most, several, . - Probability theory does not provide a system for
computing fuzzy probabilities expressed as
likely, unlikely, not very likely, etc.
27Probability theory is much less effective than
fuzzy logic in those fields where
- 1) The knowledge of probability is imprecise
and/or - incomplete
- 2) The systems are not mechanistic (have no
equations governing system behaviors) and - 3) Human reasoning, perceptions and emotion do
play an important role. - This is the case, in varying degree, in expert
systems, - economics, speech recognition, analysis of
evidence, - etc.
28Petri Net Model of a Job-Shop
- A job shop has a machine (Pfree) which can
process two types of job a or b.
e
e
P
P
1a
2a
1a
out-a
a
P
free
b
e
e
P
P
1b
2b
1b
out-b
29Meanings of Places and Transitions
- Place a gets a token when the request for job a
arrives. - Place b gets a token when the request for job b
arrives. - Place Pfree gets a token when the machine is
available. - Transition e1a or e1b represents job a or b
gets the machine - Transition e2a or e2b represents job a or b
performs the job and release the machine,
respectively and - Place Pout-a (or Pout-b) gets a token when Job a
(or b) completed its job, respectively.
30Fuzzy-Timing Petri Net (FTPN) Model of a simple
resource sharing system
t
t
P
P
1a
2a
1a
out-a
(0,0,0,0)
(4,5,7,9)
P
a
t
d
(
t
)
d
(
)
1a
2a
t
d
(
)
(4,5,7,9)
2a
P
free
t
d
(
)
(4,5,7,9)
2b
d
(
t
)
d
(
t
)
1b
2b
P
b
(0,0,0,0)
(4,5,7,9)
t
t
P
P
1b
2b
1b
out-b
31Mutual Exclusion Model
- This Petri net model also represents a mutual
exclusion in which a common resource Pfree is
shared by two processes a and b, where - Pa (or Pb) process a (or b) is waiting
- P1a (or P1b) process a (or b) is using the
resource - Pout-a (or Pout-b) Process a (or b) finishes
using the resource Pr - e1a (or e1b) process a (or b) gets the resource
- e2a (or e2b) process a (or b) releases the
resource.
32Non-Fuzzy Case
- Suppose job a arrives at 3 sec and job b arrives
at 5 sec. The machine is available at 0 sec it
takes zero time to get the machine (d1 0),
takes 2 sec to perform each job (d2 2) and
takes another 2 sec to clean and return the
machine (d3 4). - Using the First-Come-First-Serve policy, job a
will be completed at 3 2 5 sec, and job b
will be completed at max(34), 52 72 9
sec.
33Fuzzy-Timing Case
- Suppose that the request of jobs a and b arrive
at 3?2 sec and 5?2 sec, respectively, i.e. their
possibility distributions are given below.
Job a
Job b
1
sec
0
5
1
3
7
34Case 1 Job as request arrives before Job bs.
- Suppose d1 0 sec and d2 d3 (4,5,7,9).
- Then job a is completed at (1,3,3,5) ? (4,5,7,9)
(5,8,10,14)and job b is completed at
(5,8,10,14) ? (4,5,7,9) (9,13,17,23)
Job a
1
1
sec
0
5
14
10
8
Job b
1
1
sec
0
23
17
13
9
35Case 2 Job bs request arrives before Job as.
- But there are smaller possibilities that job b is
completed before job a that possibility
distribution is given by the intersection of the
two possibility distributions of job a and job b
arrivals min(1,3,3,5), (3,4,4,7)
0.5(3,4,4,5). - Therefore, job b could be completed at
0.5(3,4,4,5) ? (4,5,7,9) 0.5(7,9,11,14)
36(Continued) Case 2 Job bs request arrives
before Job as.
- and job a be could be completed at
0.5(7,9,11,14) ? (4,5,7,9) 0.5(11,14,18,23) - Since there are two possible orders a-b and b-a
in which jobs are completed, we combine the two
possibility distributions to get the overall
possibility distributions of completing jobs by
taking the union (fuzzy max operation) in the
next two slides.
37Union of Job a1 and Job a2
38Union of Job b1 and Job b2
39(Continued) Defuzzification to get Average
- Average completion times for Job a and Job b
can be computed by one of Defuzzification
methods, e.g. by the Moment Method
40Possibilistic Performance Analysis Examples
- 1) If the deadline to finish both jobs a and b is
24 sec, then the possibility to finish both jobs
before the deadline is one (100). - 2) The possibility to finish job a before the 20
sec deadline (area B) / (area A) 92, where
(area B) the shaded area, and (area A) the
total area under the curve.
41Possibilistic Performance Analysis Examples
(Continued)
- 3) The possibility to finish job b before the 15
sec deadline (area B) / (area A) 50,
where (area B) the shaded area, and (area
A) the total area under the curve.
42Computation Steps in FTPN
- 1) Given or compute Fuzzy Time Stamps, pi(t).
- 2) Compute Fuzzy Enabling Times by et(t)latest
pi(t) i1,2, . - 3) Compute Fuzzy Occurrence Times by ot(t) min
et(t), earliest ei(t) i1,2, . - 4) Update Fuzzy Time Stamps ptp(t) ot(t) ?
dtp(t) sup minot(t1), dtp(t2).
tt1t2 - 5) Repeat the above Steps 1 to 4.
43The latest and earliest Operators
- latest pi(t) i1,2, , n extended max
pi(t) i1,2, , n latest hi(pi1, pi2,
pi3, pi4), i1,2, , n minhi (maxpi1,
maxpi2, maxpi3, maxpi4) i1,2, , n - earliest ei(t) i1,2, , n extended min
ei(t) i1,2, , n earliest hi(ei1, ei2,
ei3, ei4), i1,2, , n maxhi (minei1,
minei2, minei3, minei4) i1,2, , n - D. Dubois and H. Prade, Possibility Theory an
approach to computerized processing of
uncertainty, Plenum Press, 1988
44Illustration of the latest operator
- The red line is latest?1(t), ?2(t)
- latest0.5(0,1,5,6), (1,3,3,4) 0.5(1,3,5,6)
?2(t)
?1(t)
1
0.5
2
1
3
6
0
4
5
t
45Illustration of the latest operator (continued)
- The red line is latest?1(t), ?2(t), ?3(t)
- latest0.5(0,1,5,6), (1,2,3,4), (6,7,7,8)
- 0.5(6, 7, 7, 8)
?2(t)
?3(t)
?1(t)
1
0.5
2
1
3
6
0
5
8
4
7
t
46Illustration of the earliest operator
- o(t)earlieste1(t), e2(t), e3(t)
- earliest0.5(0,1,6,7), (1,3,3,5), (6,7,7,8)
- (0,1,3,5)
e2(t)
e3(t)
e1(t)
1
0.5
2
1
3
6
0
5
8
4
7
t
47Finding occurrence times by the min
(intersection) operator
- o1(t)mine1(t), o(t)
- min0.5(0,1,5,6), (0,1,3,5)
- 0.5(0,1,4,5)
48Finding occurrence times by the min operator
(continued)
- o2(t)mine2(t), o(t)
- min(1,3,3,5), (0,1,3,5) (1,3,3,5)
O2(t)
1
0.5
t
8
2
1
3
6
0
4
5
7
o3(t)mine3(t), o(t) min(6,7,7,8),
(0,1,3,5) ?
49Concluding Remarks (1)
- The computations involved in the above FTPN
method are mostly additions and comparisons of
real numbers and do not require solving any
equations. Therefore, they can be done very fast.
Thus this method is suitable for applications to
time-critical systems. - The FTPN method is considered to be complementary
to existing probabilistic or stochastic
approaches. - The FTPN method is more general but approximate
and subjective in many cases.
50Concluding Remarks (2)
- FTPN and other fuzzy approaches are suitable for
- Complex systems for which complicated
mathematical systems must be solved - Large-scale systems which have intractable
computational complexity/cost and - Applications that involve human descriptive or
intuitive thinking. - Fuzzy logic has no memory and lacks learning
capabilities. Thus it is good to combine fuzzy
logic with neural networks and to work with
so-called neurofuzzy systems.
51Some of Our Application Examples (1)
- T. Murata, "Temporal uncertainty and fuzzy-timing
high-level Petri nets," in Application and Theory
of Petri Nets 1996, Lecture Notes in Computer
Science, pp. 11-28, Vol. 1091, Springer, New
York, June 1996. -
- T. Murata, T. Suzuki and S. Shatz, Fuzzy-timing
high-level Petri nets (FTHNs) for time-critical
systems, in J. Cardoso and H. Camargo (editors)
Fuzziness in Petri Nets Vol. 22 in the series
"Studies in Fuzziness and Soft Computing" by
Springer Verlag, New York, pp. 88-114, 1999. -
- T. Murata and Chun-Pin Chen, Fuzzy-timing
Petri-net modeling and analysis of
video-on-demand system response times, Procs. of
the 5th World Conference on Integrated Design
Process Technology, pp. 298-306, June 4-8, 2000. -
- K. Watanuki and T. Murata, Evaluation method
for assembly / disassembly by Petri nets Procs.
of the International Conf. on Engineering Design
(ICED99), pp.519-522, Vol.1, Munich, August
24-26, 1999.
52Some of Our Application Examples (2)
- K. Watanuki and T. Murata, "Fuzzy-timing Petri
net model of temperature control for car air
conditioning system," Procs. of 1999 IEEE
International Conference on Systems, Man, and
Cybernetics, Vol. IV, Tokyo, Japan, pp.618-622,
October 12-15, 1999. - Y. Zhou and T. Murata, Fuzzy-timing Petri net
model for distributed multimedia
synchronization, Procs. of the 1998 IEEE
International Conference on Systems, Man, and
Cybernetics, Lolla, California, pp. 244 - 249,
October 11-14, 1998. -
- Y. Zhou and T. Murata, Petri net model with
fuzzy-timing and fuzzy-metric temporal logic,
the special issue on fuzzy Petri nets concepts
and intelligent system modeling, International
Journal of Intelligent Systems, vol. 14, no. 8,
pp. 719-746, August 1999. -
-
53Some of Our Application Examples (3)
- Y. Zhou, T. Murata, and T. DeFanti, "Modeling and
performance analysis using extended fuzzy-timing
Petri nets for networked virtual environments,"
IEEE Transactions on Systems, Man, and
Cybernetics, Part B, Vol. 30, No.5, pp.737-756,
October 2000. - Y. Zhou and T. Murata, "Modeling and analysis of
distributed multimedia synchronization by
extended fuzzy-timing Petri nets," Journal of
Integrated Design and Process Science, Journal of
Integrated Design and Process Science, Vol. 4,
No. 4, pp. 23-38, December 2001. - T. Murata, J. Yim, H. Yin and O. Wolfson,
"Fuzzy-Timing Petri-Net Model for Updating Moving
Objects Database," Proceedings of the 2003 VIP
Scientific Forum of International Conference on
IPSI (Internet, Processing, Systems, and
Interdisciplinaries), Sveti Stefan, Montenegro,
Yugoslavia, pp. 1-7, October 4-11, 2003.
54Degree of Satisfaction
- Example Degree of satisfaction for completing a
job by the deadline of 9 days
µ
1
15
0
9
days
55Open Question Find a Method to Maximize Total
Degree of Satisfaction
- Given n degrees of satisfaction for n parameters
of a system, µ1, µ2, , µn - Find a method to maximize a total satisfaction
- degree, in some sense, e.g.,
- Maxf(µ1) f(µ2) f(µn)
µm
µ1
µ2
1
1
1