Title: Towards new order
1Towards new order
2Towards new order - outline
- Introduction
- Self-Organized Criticality (SOC)
- Sandpile model
- Edge of Chaos (EOC)
- Two approaches
- Measuring Complexity
- Correlation distance
- Phase transition
- Highly Optimized Tolerance (HOT)
- Summary and conclusions
3Introduction
- From Catastrophe to Chaos? 12
- Catastrophe theory studies and classifies
phenomena characterized by sudden shifts in
behavior arising from small changes in
circumstances - Originated by the French mathematician Rene Thom
in the 1960s, catastrophe theory is a special
branch of dynamical systems theory - ... the big fashion was topological defects.
Everybody was ... finding exotic systems to write
papers about. It was, in the end, a reasonable
thing to do. The next fashion, catastrophe
theory, never became important for anything. -
James P. Sethna (Cornell University, Ithaca) 11
4Introduction
- We are moving from Chaos towards new Order
- From Chaotic to Complex systems
- What is the difference, just a new name? Is it
really something new? - Langton's famous egg diagram (EOC, 7)
5Introduction 13
- Chaos vs. Complex
- Advances in the scientific study of chaos have
been important motivators/roots of the modern
study of complex systems - Chaos deals with deterministic systems whose
trajectories diverge exponentially over time - Models of chaos generally describe the dynamics
of one (or a few) variables which are real. Using
these models some characteristic behaviors of
their dynamics can be found - Complex systems do not necessarily have these
behaviors. Complex systems have many degrees of
freedom many elements that are partially but not
completely independent - Complex behavior "high dimensional chaos
6Introduction
- Chaos is concerned with a few parameters and the
dynamics of their values, while the study of
complex systems is concerned with both the
structure and the dynamics of systems and their
interaction with their environment - Same kind of phenomena in catastrophe, chaos and
complexity theory - Stable states become unstable
- Sudden changes in systems behavior
- Critical points, edges...
7Introduction 13
- Complexity is (the abstract notion of complexity
has been captured in many different ways. Most,
if not all of these, are related to each other
and they fall into two classes of definitions) - 1) ...the (minimal) length of a description of
the system. - 2) ...the (minimal) amount of time it takes to
create the system - The length of a description is measured in units
of information. The former definition is closely
related to Shannon information theory and
algorithmic complexity, and the latter is related
to computational complexity
8Introduction
- Emergence is...
- 1) ...what parts of a system do together that
they would not do by themselves collective
behavior - How behavior at a larger scale of the system
arises from the detailed structure, behavior and
relationships on a finer scale - 2) ...what a system does by virtue of its
relationship to its environment that it would not
do by itself e.g. its function - Emergence refers to all the properties that we
assign to a system that are really properties of
the relationship between a system and its
environment - 3) ...the act or process of becoming an emergent
system
9About fractals 1
- Many objects in nature are best described
geometrically as fractals, with self-similar
features on all length scales - Mountain landscapes peaks of all sizes, from
kilometres down to millimetres - River networks streams of all sizes
- Earthquakes occur on structures of faults
ranging from thousands of kilometres to
centimetres - Fractals are scale-free (you cant determine the
size of a picture of a part of a fractal without
a yardstick) - How does nature produce fractals?
10About fractals
- The origin of the fractals is a dynamical, not a
geometrical problem - Geometrical characterization of fractals has been
widely examined but it would be more interesting
to gain understanding of their dynamical origin - Consider earthquakes
- Earthquakes last for a few seconds
- The fault formations in the crust of the earth
are built up during some millions of years and
the crust seems to be static if the observation
period is a human lifetime
11About fractals
- The laws of physics are local, but fractals are
organized over large distances - Large equilibrium systems operating near their
ground state tend to be only locally correlated.
Only at a critical point where continuous phase
transition takes place are those systems fractal
12Example damped spring
- Consider a damped spring as shown in the figure
- Lets model (traditionally!) and simulate the
system - mass m
- spring constant k
- damping coefficient B
- position x(t)
13Example damped spring
14Example damped spring
Zoom
15Damped spring 1
- In theory, ideal periodic motion is well
approximated by sine wave - Oscillatory behavior with decreasing amplitude
theoretically continues forever - In real world, the motion would stop because of
the imperfections such as dust - Once the amplitude gets small enough, the emotion
suddenly stops - This generally occurs at the end of an
oscillation where the velocity is smallest - This is not the state of smallest energy!
- In a sense, the system is most likely to settle
near a minimally stable state
16Multiple Pendulums
- The same kind of behavior can be detected when
analysing pendulums - Consider coupled pendulums which all are in a
minimally stable state - The system is particularly sensitive to small
perturbations which can avalanche through the
system - Small disturbances could grow and propagate
through the system with little resistance despite
the damping and other impediments
17Multiple Pendulums
- Since energy is dissipated through the process,
the energy must be replenished for avalanches to
continue - If Self-Organized Criticality i.e. SOC is
considered, the interest is on the systems where
energy is constantly supplied and eventually
dissipated in the form of avalanches
18Self-Organized Criticality 1,2
- Concept was introduced by Per Bak, Chao Tang, and
Kurt Wiesenfeld in 1987 - SOC refers to tendency of large dissipative
systems to drive themselves to a critical state
with a wide range of length and time scales - The dynamics in this state is intermittent with
periods of inactivity separated by well defined
bursts of activity or avalanches - The critical state is an attractor for the
dynamics - The idea provides a unifying concept for
large-scale behavior in systems with many degrees
of freedom
19Self-Organized Criticality
- SOC complements the concept chaos wherein
simple systems with a small number of degrees of
freedom can display quite complex behavior - Large avalanches occur rather often (there is no
exponential decay of avalanche sizes, which would
result in a characteristic avalanche size), and
there is a variety of power laws without cutoffs
in various properties of the system - The paradigm model for this type of behavior is
the celebrated sandpile cellular automaton also
known as the Bak-Tang-Wiesenfeld (BTW) model
20Sandpile model 1,2
- Adding sand slowly to a flat pile will result
only in some local rearrangement of particles - The individual grains, or degrees of freedom, do
not interact over large distances - Continuing the process will result in the slope
increasing to a critical value where an
additional grain of sand gives rise to avalanches
of any size, from a single grain falling up to
the full size of the sand pile - The pile can no longer be described in terms of
local degrees of freedom, but only a holistic
description in terms of one sandpile will do - The distribution of avalanches follows a power law
21Sandpile model
- If the slope were too steep one would obtain a
large avalanche and a collapse to a flatter and
more stable configuration - If the slope were too shallow the new sand would
just accumulate to make the pile steeper - If the process is modified, for instance by using
wet sand instead of dry sand, the pile will
modify its slope during a transient period and
return to a new critical state - Consider snow screens if you build them to
prevent avalanches, the snow pile will again
respond by locally building up to steeper states,
and large avalanches will resume
2214
23Simulation of the sandpile model 1
- 2D cellular automaton with N sites
- Integer variables zi on each site i represent the
local sandpile height - When height exceeds critical height zcr (here 3),
then 1 grain is transferred from unstable site to
each 4 neighboring site - A toppling may initiate a chain reaction, where
the total number of topplings is a measure of the
size of an avalanche - Figure after 49152 grains dropped on a single
site (fractals?)
24Simulation of the sandpile model
- To explore the SOC of the sandpile model, one can
randomly add sand and have the system relax - The result is unpredictable and one can only
simulate the resulting avalanche to see the
outcome - State of a sandpile after adding pseudo-randomly
a large amount of sand on a 286184 size lattice - Figure open boundaries
- Heights 0 black, 1 red, 2 blue, 3 green
25Simulation of the sandpile model
- Configuration seems random, but some subtle
correlations exist (e.g. never do two black cells
lie adjacent to each other, nor does any site
have four black neighbors) - Avalanche is triggered if a small amount of sand
is added to a site near the center - To follow the avalanche, a cyan color has been
given to sites that have collapsed in the
following figures
26Simulation of the sandpile model
time
27Sandpile model
- Figure shows a log-log plot of the distribution
of the avalanche sizes s (number of topplings in
an avalanche), P is the probability distribution
28Sandpile model
- Because of the power law, the initial state was
actually remarkably correlated although it seemed
at first featureless - For random distribution of zs (pile heights),
one would expect the chain reaction of an
avalanche to be either - Subcritical (small avalanche)
- Supercritical (exploding avalanche with collapse
of the entire system) - Power law indicates that the reaction is
precisely critical, i.e. the probability that the
activity at some site branches into more than one
active site, is balanced by the probability that
the activity dies
29Simulation of the sandpile model 3
Sandpile Java applet
30The Edge of Chaos 4
- Christopher Langtons 1-D CA
- States alive, dead if a cell and its
neighbors are dead, they will remain dead in the
next generation - Some CAs are boring since all cells either die
after few generations or they quickly settle into
simple repeating patterns - These are highly ordered CAs
- The behavior is predictable
- Other CAs are boring because their behavior
seems to be random - These are chaotic CAs
- The behavior is unpredictable
31The Edge of Chaos
- Some CAs show interesting (complex, lifelike)
behavior - These are near the border of between chaos and
order - If they were more ordered, they would be
predictable - If they were less ordered, they would be chaotic
- This boundary is called the Edge of Chaos
- Langton defined a simple number that can be used
to help predict whether a given CA will fall in
the ordered realm, in the chaotic realm, or near
the boundary - The number (0 ? l ? 1) can be computed from the
rules of the CA. It is simply the fraction of
rules in which the new state of the cell is living
32The Edge of Chaos
- Remember that the number of rules (R) of a CA is
determined by , - where K is the number of states and N is the
number of neighbors - If l 0, the cells will die immediately if l
1, any cell with a living neighbor will live
forever - Values of l close to zero give CA's in the
ordered realm and values near one give CA's in
the chaotic realm. The edge of chaos is somewhere
in between - Value of l does not simply represent the edge of
chaos. It is more complicated
33The Edge of Chaos
- You can start with l 0 (death) and add randomly
rules that lead to life instead of death gt l gt 0 - You get a sequence of CAs with values of l
increasing from zero to one - In the beginning, the CAs are highly ordered and
in the end they are chaotic. Somewhere in
between, at some critical value of l, there will
be a transition from order to chaos - It is near this transition that the most
interesting CA's tend to be found, the ones that
have the most complex behavior - Critical value of l is not a universal constant
34The Edge of Chaos
Edge of Chaos CA-applet
35EOC another approach 5
- Consider domino blocks in a row (stable state,
minimally stable?) - Once the first block is nudged, an avalanche is
started - The system will become stable once all blocks are
lying down - The nudge is called perturbation and the duration
of the avalanche is called transient - The strength of the perturbation can be measured
in terms of the effect it had i.e. the length of
time the disturbance lasted (or the transient
length) plus the permanent change that resulted
(none in the domino case) - Strength of perturbation is a measure of
stability!
36EOC another approach
- Examples of perturbation strength
- Buildings in earthquakes we require short
transient length and return to the initial state
(buildings are almost static) - Air molecules they collide with each other
continually, never settling down and never
returning to exactly the same state (molecules
are chaotic) - For air molecules the transient length is
infinite, whereas for our best building method it
would be zero. How about in the middle?
37EOC another approach
- A room full of people
- A sentence spoken may be ignored (zero
transient), may start a chain of responses which
die out and are forgotten by everyone (a short
transient) or may be so interesting that the
participants will repeat it later to friends who
will pass it on to other people until it changes
the world completely (an almost infinite
transient - e.g. the Communist Manifesto by Karl
Marx is still reverberating around the world
after over 120 years) - This kind of instability with order is called the
Edge of Chaos, a system midway between stable and
chaotic domains
38EOC another approach
- EOC is characterised by a potential to develop
structure over many different scales and is an
often found feature of those complex systems
whose parts have some freedom to behave
independently - The three responses in the room example could
occur simultaneously, by affecting various group
members differently
39EOC another approach
- The idea of transients is not restricted in any
way and it applies to different type of systems - Social, inorganic, politic, psychological
- Possibility to measure totally different type of
systems with the same measure - It seems that we have a quantifiable concept that
can apply to any kind of system. This is the
essence of the complex systems approach, ideas
that are universally applicable
40Correlation Distance 5
- Correlation is a measure of how closely a certain
state matches a neighbouring state, it can vary
from 1 (identical) to -1 (opposite) - For a solid we expect to have a high correlation
between adjacent areas, but the correlation is
also constant with distance - For gases correlation should be zero, since there
is no order within the gas because each molecule
behaves independently. Again the distance isn't
significant, zero should be found at all scales
41Correlation Distance
- Each patch of gas or solid is statistically the
same as the next. For this reason an alternative
definition of transient length is often used for
chaotic situations i.e. the number of cycles
before statistical convergence has returned - When we can no longer tell anything unusual has
happened, the system has returned to the steady
state or equilibrium - Instant chaos would then be said to have a
transient length of zero, the same as a static
state - since no change is ever detectable. This
form of the definition will be used from now on
42Measuring Complex Systems 5
- For complex systems we should expect to find
neither maximum correlation (nothing is
happening) nor zero (too much happening), but
correlations that vary with time and average
around midway - We would also expect to find strong short range
correlations (local order) and weak long range
ones - E.g. the behavior of people is locally correlated
but not globally - Thus we have two measures of complexity
- Correlations varying with distance
- Long non-statistical transients
43Phase Transitions 5,6
- Phase transition studies came about from the work
begun by John von Neumann and carried on by
Steven Wolfram in their research of cellular
automata - Consider what happens if we heat and cool systems
- At high temperatures systems are in gaseous state
(chaotic) - At low temperatures systems are in solid state
(static) - At some point between high and low temperatures
the system changes its state between the two i.e.
it makes a phase transition - There are two kinds of phase transitions first
order and second order
44Phase Transitions
- First order we are familiar with when ice melts
to water - Molecules are forced by a rise in temperature to
choose between order and chaos right at 0 C,
this is a deterministic choice - Second order phase transitions combine chaos and
order - There is a balance of ordered structures that
fill up the phase space - The liquid state is where complex behaviour can
arise
45Phase Transitions 7
- Schematic drawing of CA rule space indicating
relative location of periodic, chaotic, and
complex'' transition regimes
46Phase Transitions
- Crossing over the lines (in the egg) produces a
discrete jump between behaviors (first order
phase transitions) - It is also possible that the transition regime
acts as a smooth transition between periodic and
chaotic activity (like EOC experiments with l).
This smooth change in dynamical behavior (smooth
transition) is primarily second-order, also
called a critical transition
47Phase Transitions
- Schematic drawing of CA rule space showing the
relationship between the Wolfram classes and the
underlying phase-transition structure
48Wolframs four classes 8
- Different cellular automata seem to settle down
to - A constant field (Class I)
- Isolated periodic structures (Class II)
- Uniformly chaotic fields (Class III)
- Isolated structures showing complicated internal
behavior (Class IV)
49Phase Transitions
- Phase transition feature allows us to control
complexity by external forces - Heating or perturbing system gt chaotic behavior
- Cooling or isolating system gt static behavior
- This is seen clearly in relation to brain
temperature - Low static, hypothermia
- Medium normal, organised behaviour
- High chaotic, fever
50Highly Optimized Tolerance 9
- HOT is a mechanism that relates evolving
structure to power laws in interconnected systems - HOT systems arise, e.g. in biology and
engineering where design and evolution create
complex systems sharing common features - High efficiency
- Performance
- Robustness to designed-for uncertainties
- Hypersensitivity to design flaws and
unanticipated perturbations - Nongeneric, specialized, structured
configurations - Power laws
51Highly Optimized Tolerance
- Through design and evolution, HOT systems achieve
rare structured states which are robust to
perturbations they were designed to handle, yet
fragile to unexpected perturbations and design
flaws - E.g. communication and transportation systems
- Systems are regularly modified to maintain high
density, reliable throughput for increasing
levels of user demand - As the sophistication of the systems is
increased, engineers encounter a series of
tradeoffs between greater productivity and the
possibility of the catastrophic failure - Such robustness tradeoffs are central properties
of the complex systems which arise in biology and
engineering
52Highly Optimized Tolerance 9,10
- Robustness tradeoffs also distinguish HOT states
from the generic ensembles typically studied in
statistical physics under the scenarios of the
edge of chaos and self-organized criticality - Complex systems are driven by design or evolution
to high-performance states which are also
tolerant to uncertainty in the environment and
components - This leads to specialized, modular, hierarchical
structures, often with enormous hidden
complexity with new sensitivities to unknown or
neglected perturbations and design flaws
53Highly Optimized Tolerance 10
Fragile
Robustness of HOT systems
Fragile (to unknown or rare perturbations)
Robust (to known and designed-for uncertainties)
Uncertainties
Robust
54A simple spatial model of HOT
- Square site percolation or simplified forest
fire model - Carlson and Doyle,
- PRE, Aug. 1999
55A simple spatial model of HOT
Assume one spark hits the lattice at a single
site
A spark that hits an empty site does nothing
56A simple spatial model of HOT
A spark that hits a cluster causes loss of that
cluster
57A simple spatial model of HOT
Yield the density after one spark
581
Y (avg.) yield
0.9
critical point
0.8
0.7
0.6
N100 (size of the lattice)
0.5
0.4
0.3
0.2
0.1
0
0
0.2
0.4
0.6
0.8
1
? density
59(No Transcript)
60Y
Fires dont matter.
Cold
?
61Everything burns.
Y
Burned
?
62Critical point
Y
?
63Power laws
Criticality
cumulative frequency
cluster size
64Edge-of-chaos, criticality, self-organized
criticality (EOC/SOC)
- Essential claims
- Nature is adequately described by generic
configurations (with generic sensitivity) - Interesting phenomena are at criticality (or
near a bifurcation)
yield
density
65Highly Optimized Tolerance (HOT)
critical
Cold
Burned
66Why power laws?
Optimize Yield
Almost any distribution of sparks
Power law distribution of events
67Probability distribution of sparks
High probability region
2.9529e-016
0.1902
5
10
15
20
25
30
2.8655e-011
4.4486e-026
5
10
15
20
25
30
68Increasing Design Degrees of Freedom
- The goal is to optimize yield (push it towards
the upper bound) - This is done by increasing the design degrees of
freedom (DDOF) - Design parameter ? for a percolation forest fire
model
DDOF1
69Increasing Design Degrees of Freedom
DDOF 4
4 tunable densities Each region is
characterized by the ensemble of random
configurations at density ?i
70Increasing Design Degrees of Freedom
DDOF 16
16 tunable densities
71Design Degrees of Freedom Tunable Parameters
SOC 1 DDOF
72Design Degrees of Freedom Tunable Parameters
- The HOT states specifically optimize yield in the
presence of a constraint - A HOT state corresponds to forest which is
densely planted to maximize the timber yield,
with firebreaks arranged to minimize the spread
damage
Blue ? ?c Red ? 1
HOT many DDOF
73HOT Many mechanisms
grid
evolved
DDOF
All produce
- High densities
- Modular structures reflecting external
disturbance patterns - Efficient barriers, limiting losses in cascading
failure - Power laws
74Small events likely
Optimized grid
density 0.8496 yield 0.7752
1
0.9
High yields
0.8
0.7
0.6
grid
0.5
0.4
random
0.3
0.2
0.1
0
0
0.2
0.4
0.6
0.8
1
75Increasing DDOF increases densities, increases
yields, decreases losses but increases sensitivity
Y
Robust, yet fragile
?
76HOT summary
- It is possible to drive a system over the
critical point, where SOC systems collapse. These
overcritical states are called highly optimized
tolerance states - SOC is an interesting but extreme special case
- HOT may be a unifying perspective for many
systems - HOT states are both robust and fragile. They are
ultimately sensitive for design flaws - Complex systems in engineering and biology are
dominated by robustness tradeoffs, which result
in both high performance and new sensitivities to
perturbations the system was not designed to
handle
77HOT summary
- The real work with HOT is in
- New Internet protocol design (optimizing the
throughput of a network by operating in HOT
state) - Forest fire suppression, ecosystem management
- Analysis of biological regulatory networks
- Convergent networking protocols
78Summary and Conclusions
- Catastrophe Chaos Complex
- Common features, different approaches
- Complexity adds dimensions to Chaos
- Lack of useful applications
- Self-Organized Criticality
- Refers to tendency of large dissipative systems
to drive themselves to a critical state - Coupled systems may collapse during an
avalanche - Edge of Chaos
- Balancing on the egde between periodic and
chaotic behavior
79Summary and Conclusions
- Parts of a system together with the environment
make it all function - Complex systems
- Structure is important in complex systems
- Between periodic (and static) and chaotic systems
- Order and structure to chaos
- Increasing the degrees of freedom
- HOT
- Optimizing the profit/yield/throughput of a
complex system - By design one can reduce the risk of catastrophes
- Yet fragile!
80References
- 1Bunde, Havlin (Eds.) Fractals in Science
1994 - 2http//cmth.phy.bnl.gov/maslov/soc.htm
- 3http//cmth.phy.bnl.gov/maslov/Sandpile.htm
- 4http//math.hws.edu/xJava/CA/EdgeOfChaos.html
- 5http//www.calresco.org/perturb.htm
- 6http//www.wfu.edu/petrejh4/PhaseTransition.h
tm - 7http//www.theory.org/complexity/cdpt/html/nod
e5.html - 8http//delta.cs.cinvestav.mx/mcintosh/newweb/
what/node8.html
81References
- 9Carlson, Doyle Highly Optimized Tolerance
Robustness and Design in Complex Systems 1999 - 10Doyle HOT-intro Powerpoint presentation,
John Doyle www-pages http//www.cds.caltech.edu/
doyle/CmplxNets/ - 11http//www.lassp.cornell.edu/sethna/OrderPara
meters/TopologicalDefects.html - 12http//www.exploratorium.edu/complexity/CompL
exicon/catastrophe.html - 13http//necsi.org/guide/concepts/
- 14http//www.neci.nec.com/homepages/tang/sand/s
and.html
82References
- 15http//pespmc1.vub.ac.be/COMPLEXI.html
- 16http//pespmc1.vub.ac.be/CAS.html