Title: Stochastic Model of a Micro Agents population
1(No Transcript)
2Stochastic Model ofa Micro Agents population
- Dejan Milutinovic
- dejan_at_isr.ist.utl.pt
3Introduction
- Motivated by the work of the Immune system
modeling as a Multi-Agent system
- Modelling framework for large Multi-Agents
populations
- Control of large Multi-Agents population
4Immune system
Innate immune system
Adaptive immune system
- Virus, Bacteria (Antigen) - Antigen Presenting
Cell (APC) - T-Cell
5T-Cell Receptor (TCR) triggering
T-Cell
peptide
APC
MHC
T-Cell, CD3 receptor, Antigen Presenting Cell
(APC), peptide-MHC complex
6T-Cell population
7T-Cell population
Complex System !!!
8Complex System
- 1000 Cells, 8000 variables
- Simulation analysis
9The Micro Agent model of the T-Cell
q3
1 never connected, 2 - connected, 3-
disconnected, a-connection, b-disconnection
10Micro Agent (?A)
11Stochastic Micro Agent (S?A)
A Stochastic Micro Agent is a pair S?A(?A,e(t))
where ?A is a Micro Agent and e(t) is a Micro
Agent stochastic input event sequence such that
the stochastic process (x(t),q(t))?X ? Q is a
Micro Agent Stochastic Execution.
u1
12Micro and Macro Dynamics relation
Dual Meaning of the State Probability Density
Function
- PDF function describes the state probability of
one ?A - Looking to the large population of ?A, PDF is a
normalized distribution of the state occupancy by
all ?A
- Micro dynamics of ?A and macro dynamics of ?A
population are related through the state PDFs
13State probability dynamics
Markov chain transition over discrete space,
transition rate matrix
Vector of pdfs
14The Micro Agent model of the T-Cell
q1
q2
u(t)a
?12
?32
u(t)a
u(t)b
?23
q3
0 never connected, 1 - connected, 2-
disconnected, a-connection,
b-disconnection, ?ij event rate which leads to
transition from stat i to state j
15The Micro Agent model of the T-Cell
PDF DYNAMICS
By assumption that distribution is log-normal
STEADY STATE PDF
16Experimental distributions
( Valitutti, Nature 1995)
17Experiment-Mean Value
18Experimental distributions
- Stochastic model of flow Cytometry Measurements
Laser light
T-cell
- Data processing QQ-plot pdf estimation,
Richardson-Lucy de-convolution
- Fitting data to the model with different
hypothesis (only contact)
19Experimental distributions
Amount of TCRs
20Experimental distributions
Amount of TCRs
21Robotics application
22Robotics application
23Formation Control
?120.5, ?210.1, ?230.9, ?320.1
?120.1, ?210.5, ?230.5, ?320.4
t 0, 0.39, 0.79, 1.18, 1.57, 1.96
24Optimal Control
25Optimal Control
J(u)
DISCRETE APPROXIMATION
FINITE ELEMENT METHOD
Jm
ODE
Maximum principle
BOUNDARI VALUE PROBLEM
Approximate solution
26Finite Element Approximation
Test function
27Finite Element Approximation
ODE
28Criterion Approximation
29Pontryangin Minimum Principle
If u then
30Two Points Boundary Problem
Guess p(0), solve and using p(T) correct guess
31Approximate solution inequality
?
?
ODE rm
Jm(.)
J(.)
PDE
Jm(um) ? J(u)
J(u) ? J(um)
Jm(um) ? J(u) ? J(um)
J(um) ? J(u) ? J(um)
32Conclusions
- Hybrid Automata Model of individual
- Hybrid Automata Model of population based on
Stochastic approximation
- Relation between Micro dynamics and Macro
Dynamics based on Statistical physics reasoning
33Conclusions
- Data Processing of Flow Cytometry Data
- Model test against real data
- Formation control of large population of
individuals
34Future work
- Real experimental data analysis assuming
different hypothesis
- Parameters uncertainty
- Control application and theory for such systems
- Other kind of applications in biology,
nano-robotics
35Publications
Milutinovic, D., Athans, M., Lima, P., Carneiro,
J. Application of Nonlinear Estimation Theory in
T-Cell Receptor Triggering Model
Identification, Technical Report RT-401-02,
RT-701-02, 2002, ISR/IST Lisbon, Portugal
Milutinovic, D., Stochastic Model of a Micro
Agents Population, Technical Report ISR/IST
Lisbon, Portugal (working version)
Milutinovic D., Lima, P., Athans, M.
Biologically Inspired Stochastic Hybrid Control
of Multi-Robot Systems, submitted to the 11th
International Conference on Advanced Robotics
ICAR 2003,June 30 - July 3, 2003 University of
Coimbra, Portugal
Milutinovic D., Carneiro J., Athans, M., Lima, P.
A Hybrid Automata Modell of TCR Triggering
Dynamics , submitted to the 11th Mediterranian
Conference on Control and Automation MED
2003,June 18 - 20 , 2003, Rhodes, Greece
36Stochastic Model ofa Micro Agents population
- Dejan Milutinovic
- dejan_at_isr.ist.utl.pt