Title: Fractional Order Signal Processing Techniques, Applications and Urgency
1Fractional Order Signal Processing Techniques,
Applications and Urgency
- YangQuan Chen
- Director, Center for Self-Organizing and
Intelligent Systems - Associate Professor, Dept. of Electrical
Computer Engineering - Utah State University, Logan Utah, USA
- E yqchen_at_ieee.org T 1(435)797-0148 F
1(435)797-3054 - W http//fractionalcalculus.googlepages.com/
Wednesday, November 5, 2008 Third IFAC
International Workshop on Fractional Derivative
and Applications (IFAC FDA 2008), Nov. 5-7,
Ankara, Turkey
2Outline
- Introduction Me and CSOIS Research Strength
- Fractional Order Signal Processing An Enticing
Example. - Fractional Order Signal Processing What Are The
Techniques There? - Applications Why Urgent?
- Concluding Remarks
3Outline
- Introduction Me and CSOIS Research Strength
- Fractional Order Signal Processing An Enticing
Example? - Fractional Order Signal Processing What Are The
Techniques There? - Applications Why Urgent?
- Concluding Remarks
4YangQuan Chen
- Ph.D. 1998 Nanyang Tech. Univ. Singapore
- Now Associate Prof. at USU with tenure (s08).
Director of CSOIS (s04) Graduate Coordinator of
ECE Dept. (s08). - First heard of FC in 1999-2000 when I worked in
Seagate as HDD servo product engineer (Luries
TID patent, later Manabes control paper in 60s,
then CRONE ) - Learned a lot from Blas and Igor, and many of you
here - Strong curiosity in the applied side of FC, see
http//fractionalcalculus.googlepages.com/ - Still learning FC fraction by fraction
5CSOIS - CSRA ResearchCenter for Self-Organizing
and Intelligent Systems
- CSOIS is a research center in USUs Department of
Electrical and Computer Engineering that
coordinates most CSRA (Control Systems, Robotics
and Automation) research - Officially Organized 1992 - Funded for 7 (seven)
years by the State of Utahs Center of Excellence
Program (COEP) - Horizontally-Integrated (multi-disciplinary)
- Electrical and Computer Engineering (Home dept.)
- Mechanical Engineering
- Computer Science
- Vertically-integrated staff (20-40) of faculty,
postdocs, engineers, grad students and undergrads
- Average over 2.0M in funding per year from
1998-2004 - Three spin-off companies from 1994-2004.
- Directors 92-98, Bob Gunderson 98-04, Kevin
Moore 04-now, YangQuan Chen
6CSOIS research impacts (1998-2004)
- Educational
- 2 PhD graduated with 2 others expected this year
- 38 MS and ME students graduated
- Numerous ECE and MAE Senior Design Projects
- Scholarly
- Five faculty collaborating between three
different departments - Four books
- Over 100 refereed journal and conference
publications - 18 visiting research scholars from 7 countries (3
month to 1 year visits) - Economic
- 14 full-time staff employed (average of 7 FTE per
year) - 8 PhD students employed
- 64 MS and ME students employed
- 31 Undergraduate students employed
- 12 Other staff employed
- A payroll of over 5 million in salaries paid to
students, faculty, and staff - Purchases of over 1.5M in the U.S. economy
7CSOIS Core Capabilitiesand Expertise
- Control System Engineering
- Algorithms (Intelligent Control)
- Actuators and Sensors
- Hardware and Software Implementation
- Intelligent Planning and Optimization
- Real-Time Programming
- Electronics Design and Implementation
- Mechanical Engineering Design and Implementation
- System Integration
- We make real systems that WORK!
8CSRA/CSOIS Courses
- Undergraduate Courses
- MAE3340 (Instrumentation, Measurements)
ECE3620/40 (Laplace, Fourier) - MAE5310/ECE4310 Control I (classical, state
space, continuous time) - MAE5620 Manufacturing Automation
- ECE/MAE5320 Mechatronics (4cr, lab intensive)
- ECE/MAE5330 Mobile Robots (4cr, lab intensive)
- Basic Graduate Courses
- MAE/ECE6340 Spacecraft attitude control
- ECE/MAE6320 Linear multivariable control
- ECE/MAE6350 Robotics
- Advanced Graduate Courses
- ECE/MAE7330 Nonlinear and Adaptive control
- ECE/MAE7350 Intelligent Control Systems
- ECE/MAE7360 Robust and Optimal Control
ltlt FOC - ECE/MAE7750 Distributed Control Systems ltlt
FOC
9Selected CSOIS Research Strengths
- ODV (omni-directional vehicle) Robotics
- Iterative Learning Control Techniques
- MAS-net (mobile actuator and sensor networks) and
Cyber-Physical Systems (CPS) - Smart mechatronics, vision-based measurement and
control, HIL simulation, networked control
systems - UAV (Unmanned Aerial Vehicles) based Cooperative
Remote Sensing Engineered Swarms - Fractional Dynamic Systems, Fractional Order
Signal Processing and Fractional Order Control
10(No Transcript)
11USU ODV Technology
- USU has worked on a mobility capability called
the smart wheel - Each smart wheel has two or three independent
degrees of freedom - Drive
- Steering (infinite rotation)
- Height
- Multiple smart wheels on a chassis creates a
nearly-holonomic or omni-directional (ODV)
vehicle
12(No Transcript)
13ODIS On Duty in Baghdad
Putting Robots in Harms Way, So People Arent
14Outline
- Introduction Me and CSOIS Research Strength
- Fractional Order Signal Processing An Enticing
Example? - Fractional Order Signal Processing What Are The
Techniques There? - Applications Why Urgent?
- Concluding Remarks
15chemotaxis behavior quantification
- Soil remediation
- Genetically engineered bacterium
- Targeted chemotractant
16Video microscopy
17Sample trajectory of one bacterium
18Sample variances
19Good news NOT second order processes!
- Research opportunities related to FOSP
- Find the most sensitive index to quantify the
chemotaxis behavior (H parameter?) - Most robust to bacteria population size, temporal
sample size - Complex Hurst parameter for complex (2D) motion?
- 2-D LRD (Long range dependent) processes?
- On-going efforts.
20Outline
- Introduction Me and CSOIS Research Strength
- Fractional Order Signal Processing An Enticing
Example. - Fractional Order Signal Processing What Are The
Techniques There? - Applications Why Urgent?
- Concluding Remarks
21- Main references (101 references cited)
- YangQuan Chen and Rongtao Sun and Anhong Zhou.
An Overview of Fractional Order Signal
Processing (FOSP) Techniques. DETC2007-34228 in
Proc. of the ASME Design Engineering Technical
Conferences, Sept. 4-7, 2007 Las Vegas, NE, USA,
3rd ASME Symposium on Fractional Derivatives and
Their Applications (FDTA'07), part of the 6th
ASME International Conference on Multibody
Systems, Nonlinear Dynamics, and Control (MSNDC).
18 pages. - See also
- Ortigueira, M.D. An introduction to the
fractional continuous-time linear systems the
21st century systems IEEE Circuits and Systems
Magazine, IEEEVolume 8, Issue 3, Third Quarter
2008 Page(s)19 - 26
22FOSP Techniques
- Fractional derivative and integral
- Fractional linear system
- Autoregressive fractional integral moving average
- 1/f noise
- Hurst parameter estimation
- Fractional Fourier Transform
- Fractional Cosine, Sine and Hartley transform
- Fractals
- Fractional Splines
- Fractional Lower Order Moments (FLOM) and
Fractional Lower Order Statistics (FLOS)
23Introduction
- The first reference to this area appeared during
1695 in a letter from Leibnitz to LHospital. - Only in the last three decades the application of
FOSP deserved attention, motivated by the works
of Mandelbrot on Fractals. - Recently, many more fractional order signal
processing techniques has appeared, such as
fractional Brownian motion, fractional linear
systems, ARFIMA (FIARMA) model, 1/f noise,
Hurst parameter estimation, fractional Fourier
transform, fractional linear transform,
fractional splines and wavelets. - It is very necessary to review them, and find out
their relationships.
24Fractional derivative and integral
- Fractional derivative and integral, also called
Fractional calculus are the basic idea of FOSP. - The first notation of was
introduced by Leibniz. In 1695, Leibniz himself
raised a question of generalizing it to
fractional order. - In last 300 years the developments culminated in
two calculi which are based on the work of
Riemann and Liouville (RL) and Grunwald and
Letnikov (GL).
25Some related functions
- Gamma function
- Beta function
- Mittag-Leffler function
26Operator
- A generalization of fractional derivative and
integral operator
27Grunwald-Letnikov definition
- From integer order exponent
- where
- The GL definition is then given as
- where
28Riemann-Liouville definition
- Similarly, the common formulation for the
fractional integral can be derived directly form
the repeated integration of a function - Then Riemann-Liouville fractional integral can be
written as - The RL differointegral is thus defined as
29Properties
- If f(t) is an analytic function of t, the
derivative is an analytic function
of t and . - The operator gives the same result as the
usual integer order n. - The operator of order is the
identity operator. - Linearity
- The additive index law
- Differintegration of the product of two
functions
-
30Laplace transform of
- From the GL definition
- From the RL definition
31Fractional Linear System
- Consider fractional linear time-invariant (FLTI)
systems described by a differential equation with
the general format - According to the Laplace transform of , the
transfer function can be obtained as
32Impulse response
- Start from the simple transfer function
- its impulse response is
- Proceed to a further step
33- For transfer function like
- we can perform the inversion by the following
steps - 1,Transform from H(s) into H(z), by substitution
of for z. - 2,The denominator polynomial in H(z) is the
indicial polynomial. Perform the expansion of
H(z) in partial fractions. - 3,Substitute back for z, to obtain the
partial fractions in the form -
- 4,Invert each partial fraction.
- 5,Add the different partial impulse responses.
34Autoregressive fractional integral moving average
(ARFIMA)
- Using a fractional differencing operator which
defined as an infinite binomial series expansion
in powers of the backward-shift operator, we can
generalize ARMA model to ARFIMA model. - where L is the lag operator, are error
terms which are generally assumed to be sampled
from a normal distribution with zero mean
35Properties of ARFIMA
- Fractionally differenced processes exhibit
long-term memory (long rang dependence) or
anti-persistence (short term memory) - An ARFIMA (p, d, q) process may be differenced a
finite integral number until d lies in the
interval (-½, ½), and will then be stationary and
invertible. This range is the most useful set of
d. - 1, d-½. The ARFIMA (p, -½, q) process is
stationary but not invertible. - 2, -½ltdlt0. The ARFIMA (p, d, q) process has a
short memory, and decay monotonically and
hyperbolically to zero.
36- 3, d0. The ARFIMA (p, 0, q) process can be white
noise. -
- 4, 0ltdlt½. The ARFIMA (p, d, q) process is a
stationary process with long memory, and is very
useful in modeling long-range dependence (LRD).
The autocorrelation of LRD time series decays
slowly as a power law function. - 5, d½. The spectral density of the process is
- as . Thus the ARFIMA (p, ½, q) process
is a discrete-time 1/f noise.
371/f noise
- Models of 1/f noise were developed by Bernamont
in 1937 -
- where C is a constant, S(f) is the power
spectral density. - 1/f noise is a typical process that has long
memory, also known as pink noise and flicker
noise. - It appears in widely different systems such as
radioactive decay, chemical systems, biology,
fluid dynamics, astronomy, electronic devices,
optical systems, network traffic and economics
381/f noise spectrum
39- We may define 1/f noise as the output of a
fractional system as discussed before. The input
could be white noise. - Also, we can consider 1/f noise as the output of
a fractional integrator. The system can be
defined by the transfer function - with impulse
response - Therefore, the autocorrelation function of the
output is
40Fractional Gaussian Noise (FGN)
- FGN is a kind of 1/f noise.
- FGN can be seen as the unique Gaussian process
that is the stationary increment of a
self-similar process, called fractional Brownian
motion (FBM). - The FBM plays a fundamental role in modeling
long-range dependence. - The increments time series
-
- of the FBM process BH are called FGN.
41Relationship between fractional order dynamic
systems, long range dependence and power law
42Long-range dependence
- History The first model for long range
dependence was introduced by Mandelbrot and Van
Ness (1968) - Value financial data
- communications networks data
- video traffic
- biocorrosion data
43Long-range dependence
- Consider a second order stationary time series
- Y Y (k) with mean zero. The time series Y
is said to be long-range dependent if
44Hurst parameter
- The Hurst parameter H characterizes the degree of
long-range dependence in stationary time series. - A process is said to have long range dependence
when - Relationships
- 1,
- 2, d is the differencing parameter of ARFIMA
45Models with Hurst phenomenon
- Fractional Gaussian noise (FGN) models
(Mandelbrot, 1965 Mandelbrot and Wallis, 1969a,
b, c) - Fast fractional Gaussian noise models
(Mandelbrot, 1971) - Broken line models (Ditlevsen, 1971 Mejia et
al., 1972) - ARFIMA/FIARMA models (Hosking, 1981, 1984)
- Symmetric moving average models based on a
generalised autocovariance structure
(Koutsoyiannis, 2000)
46Hurst parameter estimation methods
- R/S Analysis
- Aggregated Variance Method
- Dispersional Analysis Method
- Absolute Value Method
- Variance of Residuals Method
- Local Whittle Method
- Periodogram Method
- Wavelet-based
- Fractional Fourier Transform (FrFT) based
47Comparison of some important Hurst parameter
estimation methods, tested with 100 FGN of known
Hurst parameters from 0.01 to 1.00
48Fractional Fourier Transform (FrFT)
- Rotation concept of Fourier Transform
- where is the rotating
- angle
49Rotation concept of FrFT
- The FrFT rotates over an arbitrary angle
, when a1 it correspond to Fourier
transform. - From ,we can
define FrFT for the angle by - Any function f can be expanded in terms of these
eigenfunctions
- , with
-
- where Hn(x) is an Hermite polynomial
-
50Definition of FrFT
- By applying the operator , and use of
Mehlers formula, as well as possible choice for
the eigenfunctions of F we can get the definition
for FrFT in linear integral form as
51Properties of the Kernel Function of FrFT
- If is the kernel of the FrFT,
then
52Convolution of FrFT
- Concerns the convolution of two functions in the
domain of the FrFT - If
- Then its Fourier transform becomes
- Thus
53FrFT of a Delta Function
54FrFT of a Sine Function
55Fractional Linear Transform
- Generalize the FrFT method to linear transform.
Given linear - transform T, the procedure to find its fractional
transform is - Find the eigenfunctions and
enginvalues of T - The kernel functionis defined by
- The fractional transform T is then given by
56Fractional Hartley transform
- Hartley transform
- According to the linear fractional transform
method, the fractional Hartley transform can be
given by
57Relations between FrHT and FrFT
where is the fractional Hartley
transform and is the fractional
Fourier transform.
58Fractional Cosine and Sine transform
- Cosine and Sine transforms
- A.W. Lohmann, et al, in 1996, have derived the
fractional Cosine/Sine transforms by taking the
real/imaginary parts of the kernel of FrFT.
59Fractals
- The term fractal was coined in 1975 by
Mandelbrot, from the Latin fractus, meaning
"broken" or "fractured. - A fractal is a geometric shape which
- is self-similar and
- has fractional (fractal) dimension.
- Fractals can be classified
- according to their self-similarity.
-
Sierpinsky Triangle
Y. Chen, Fractional order signal processing in
biology/biomedical signal analysis," in
Fractional Order Calculus Day at Utah State
University, April 2005,http//mechatronics.ece.usu
.edu/foc/event/FOC Day_at_USU/.
60Fractal dimension estimation
- In fractal geometry, the fractal dimension is a
statistical quantity that gives an indication of
how completely a fractal appears to fill space,
as one zooms down to finer and finer scales. - Box counting dimension
- Information dimension
- Correlation dimension
- Rényi dimensions
61- Long-range dependent time series can also be
described by a fractal dimension D which is
related to the Hurst parameter through D
2 - H . Here, the fractal dimension D can be
interpreted as the number of dimensions the
signal fills up. - Besides, porous media model for the hydraulic
system has fractal dimension. For example, the so
called porous ball built by the French group
CRONE has been used in car's hydraulic circuit. - Also, the preparation of nanoparticles coated
bio-electrodes is by polishing the surface with
fractal shapes. - In addition, the diffusion behavior of
bioelectrochemical process will be fractional
order dynamic, which is related with FD.
62Fractional Splines
- The fractional splines are an extension of the
polynomial splines for all fractional degrees a gt
-1. - The fractional splines with one-sided power
function can be written as - where xk are the knots of the spline.
63Fractional B-Splines
- One constructs the corresponding fractional
B-splines through a localization process similar
to the classical one, replacing finite
differences by fractional differences. - are in L1 for all agt-1
- are in L2 for agt-1/2
-
Fractional
B-Splines
http//bigwww.epfl.ch/index.html
64Properties of Fractional Splines
- If a is an integer, fractional splines are
equivalent to the classical polynomial splines. - 2) The fractional splines are a-Hölder continuous
for a gt 0. - 3) The fractional B-splines satisfy the
convolution property and a generalized fractional
differentiation rule. Besides, they decay at
least like xa-2. - 4) The fractional splines have a fractional order
of approximation a 1. - 5) Fractional spline wavelets essentially behave
like fractional derivative operators.
65Fractional Lower Order Moments (FLOM) and
Fractional Lower Order Statistics (FLOS)
- The stable model can be used to characterize the
non-Gaussian processes. including underwater
acoustic signals, low frequency atmospheric noise
and many man-made noises. - It has been proven that using stable model and
fractional lower-order statistics (FLOS),
additional benefits can be gained using this type
of fractional order signal processing technique. - Note that, for stable distribution the density
function has a heavier tail than Gaussian
distribution. - It has been noticed that there is a natural link
between LRD and heavy tail or thick/fat/heavy
processes characterized by FLM/FLOS. A special
case is the so-called SaS (symmetrical a-stable)
process, which finds wide applications in
engineering and non-engineering domains.
66Summary of FOSP Techniques
- Fractional derivative and integral
- Fractional linear system
- Autoregressive fractional integral moving average
- 1/f noise
- Hurst parameter estimation
- Fractional Fourier Transform
- Fractional Cosine, Sine and Hartley transform
- Fractals
- Fractional Splines
- Fractional Lower Order Moments (FLOM) and
Fractional Lower Order Statistics (FLOS)
67Outline
- Introduction Me and CSOIS Research Strength
- Fractional Order Signal Processing An Enticing
Example. - Fractional Order Signal Processing What Are The
Techniques There? - Applications Why Urgent?
- Concluding Remarks
68Urgency-1 Weierstrass function
Fractional order derivative exists
differentiability order 0.5 or less
sprott.physics.wisc.edu/phys505/lect11.htm
Wen Chen. Soft matters. Slides presented at
2007 FOC_Day _at_ USU.
69Urgentcy-2 Infinite variance
- Normal distribution N(0,1)
Sample Variance
70Sample Variance
71Sample trajectory of one bacterium
72Sample variances
73Fractional Lower Order Statistics (FLOS) or
Fractional Lower Order Moments (FLOM)
Shao, M., and Nikias, C. L., 1993. Signal
processing with fractional lower order moments
stable processes and their applications.
Proceedings of the IEEE, 81 (7) , pp. 986 1010.
74Important Remarks
- In fact, for a non-Gaussian stable distribution
with characteristic exponent a, only the moments
of orders less than a are finite. Therefore,
variance can no longer be used as a measure of
dispersion and in turn, many standard signal
processing techniques such as spectral analysis
and all least squares (LS) based methods may give
misleading results.
75Urgency-3 GSL - Do you care about it?
76Long-term water-surface elevation graphs of the
Great Salt Lake
77Elevation Records of Great Salt Lake
- The Great Salt Lake, located in Utah, U.S.A, is
the fourth largest terminal lake in the world
with drainage area of 90,000 km2. - The United States Geological Survey (USGS) has
been collecting water-surface-elevation data from
Great Salt Lake since 1875. - The modern era record-breaking rise of GSL level
between 1982 and 1986 resulted in severe economic
impact. The lake levels rose to a new historic
high level of 421185 ft in 1986, 12.2 ft of this
increase occurring after 1982. - The rise in the lake since 1982 had caused 285
million U.S. dollars worth of damage to lakeside.
- According to the research in recent years,
traditional time series analysis methods and
models were found to be insufficient to describe
adequately this dramatic rise and fall of GSL
levels. - This opened up the possibility of investigating
whether there is long-range dependence in GSL
water-surface-elevation data so that we can apply
FOSP to it.
78Two recent papers
- Rongtao Sun and YangQuan Chen and Qianru Li.
Modeling and Prediction of Great Salt Lake
Elevation Time Series Based on ARFIMA.
DETC2007-34905 in Proc. of the ASME Design
Engineering Technical Conferences, Sept. 4-7,
2007 Las Vegas, NE, USA, 3rd ASME Symposium on
Fractional Derivatives and Their Applications
(FDTA'07), part of the 6th ASME International
Conference on Multibody Systems, Nonlinear
Dynamics, and Control (MSNDC). 11 pages. - Qianru Li and Christophe Tricaud and YangQuan
Chen. Great Salk Lake Level Forecasting Using
FIGARCH Model DETC2007-34909 ibid. 10 pages
(Fractional Integral - Generalized Auto-Regressive Conditional
Heteroskedasticity)
79Urgency-4 In between time and frequency
WIGNER-VILLE DISTRIBUTION OF A SIMPLE CHIRP
SIGNAL
http//www.wavelet.org/tutorial/tf.htm
80In between time and frequency
WVD OF TWO SIGNALS CONSISTING OF HARMONIC
COMPONENTS OF FINITE DURATION
http//www.wavelet.org/tutorial/tf.htm
81Optimal filtering in fractional Fourier domain
Slide credit HALDUN M. OZAKTAS
82Optimal filtering in fractional order Fourier
domain
Slide credit HALDUN M. OZAKTAS
83More at
- IFAC FDA 2008 Plenary Lecture VII
- On Best Fractional Derivative to Be Applied in
Fractional Modelling The Fractional Fourier
Transform by J. J. Trujillo - 1100-1140 Â Plenary Lecture VII- Conference Hall
- Thursday 6th, 2008Â
84HRV, LRD, FOSP, Fractal Physiology and Feedback
Control of Emotion
- YangQuan Chen
- Center for Self-Organizing and Intelligent
Systems (CSOIS), - Dept. of Electrical and Computer Engineering
- Utah State University
- E yqchen_at_ieee.org T 1(435)797-0148 F
1(435)797-3054 -
Wednesday, March 26, 2008 1200-1230 PM SIG
FOC Weekly Meeting http//mechatronics.ece.usu.edu
/foc/yan.li/ See also http//fractionalcalculus.g
ooglepages.com/
85Main references
- 1 Where Medicine Went Wrong Rediscovering the
Path to Complexity Bruce J. West, World
Scientific, 2006. ISBN 9812568832, 337 pages,
US42. - http//ieeexplore.ieee.org/iel5/51/4268305/0427229
0.pdf?isnumber4268305prodJNLarnumber4272290a
rSt10ared12arAuthorMagin2CR.L. - 2 Phyllis K. Stein, Ph.D., Anand Reddy, M.D.
Non-Linear Heart Rate Variability and Risk
Stratification in Cardiovascular Disease Indian
Pacing and Electrophysiology Journal (ISSN
0972-6292), 5(3) 210-220 (2005) - 3 Bradley M. Appelhans and Linda J. Luecken.
Heart Rate Variability as an Index of Regulated
Emotional Responding Review of General
Psychology. 2006, Vol. 10, No. 3, 229240.
86Main points 1
- West disease and pathology reflect a general
loss of complexity. 1 - Wests book shows strong evidence for the
presence of fractal dynamics underlying the
complexity observed in physiological systems,
dynamics measured by allometric order parameters
derived from fractal time series analysis. - Fractal physiology - heart rate, breathing rate
and gait - Multifractal cases
87Main points 3
- Appelhans and Luecken 3 Heart rate variability
(HRV) analysis is emerging as an objective
measure of regulated emotional responding
(generating emotional responses of appropriate
timing and magnitude). The study of individual
differences in emotional responding can provide
considerable insight into interpersonal dynamics
and the etiology of psychopathology. - Conclusion - HRV is an accessible research tool
that can increase the understanding of emotion in
social and psychopathological processes. - Note No mentioning of fractal or fractional
883
893
90Log-log plot of the HRV power spectrum over 24
hours. The region between 0.01 and 0.0001 Hz is
used to calculate power law slope. (x-axis
frequency Hz)
2
91short-term fractal scaling exponent (1995)
Examples of the power law slope in a) a patient
with cardiac disease. And b) a healthy person.
92Whats next
- FOSP Instrument with fractal indicator
- Emotionometer??
- Dynamic data-driven computational psychology?
- Exploration of multifractal nature
- Feedback control of emotion?
- Motion picture classification?
- Elder care.
93Outline
- Introduction Me and CSOIS Research Strength
- Fractional Order Signal Processing An Enticing
Example. - Fractional Order Signal Processing What Are The
Techniques There? - Applications Why Urgent?
- Concluding Remarks
94Conclusions
- 7/13/1865 - Go west, young man. Go West and grow
up with the country. Horace Greeley
(1811-1872) - Go Fractional. Its urgent! YangQuan Chen
http//upload.wikimedia.org/wikipedia/commons/1/12
/American_progress.JPG
95Rule of thumb
- Self-similar
- Scale-free/Scale-invariant
- Power law
- Long range dependence (LRD)
- 1/f a noise
- Porous media
- Particulate
- Granular
- Lossy
- Anomaly
- Disorder
- Soil, tissue, electrodes, bio, nano, network,
transport, diffusion, soft matters
96Acknowledgments
- IFAC FDA08. In particular, Prof. Dr. Dumitru
Baleanu. - SDL Skunkworks Grant (2005-2006). FOSP for
bioelectrochemical sensors. (PI YangQuan Chen,
co-PI Anhong Zhou, 2005-2007) - NIH R15. Whole Cell Biosensing Bacterial
Adhesion/Chemotaxis. (PI Anhong Zhou, co-PIs
YangQuan Chen et al, 2006-2009) - Prof. Anhong Zhou, BIE Dept. of USU
- Prof. Blas Vinagre, Univ. of Extremadura, Spain
- Prof. Igor Podlubny, Tech. Univ. of Kosice,
Slovakia - Prof. Richard Magin, BioE Dept. of UIChicago.
- Prof. Wen Chen of Hohai University, China
- Dr. Bruce West, US Army Research Office.
- Prof. Hyo-Sung Ahn, Gwangju Institute of
Technology, Korea - Past graduate students Jinsong Liang (Msc. 05)
Rongtao Sun (MSc.07) Tripti Bhaskaran (MSc. 07)
Varsha Bhambhani (MSc. 08) Qianru Li (Ph.D. 08,
Econ) - Current graduate students Christophe Tricaud,
Yiding Han, Shayok Mukhopadhyay, Hu Sheng, Cal
Coopmans, Haiyang Chao, Ying Luo, Yongshun Jin,
Di Long, Les Mounteer and Victoria Kmetzsch .