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Complex System Science

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Title: Complex System Science


1
Complex System Science
  • John Finnigan
  • CSIRO Atmospheric Research

2
Contents
  • Complex systems Science
  • Systems
  • Complexity-the idea of emergent structure
  • Farming systems as Complex Adaptive Systems
  • Three Approaches to Understanding
  • Network Theory
  • Cellular Automata
  • Agent Based Models
  • Summary
  • The CSIRO Centre for Complex Systems Science

3
Complex System Science
  • Has two elements
  • Systems-collections of interacting things
  • Complexity-the essence of which is the property
    of self-organisation or emergence of structure
    from the interaction between the constituent
    parts of the system

4
Emergence or Self-Organisation
  • We recognise this phenomenon over a vast range of
    physical scales and degrees of complexity
  • From Galaxies 106 Light Years

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To cyclones 100 km
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And Chemical reactions 10 cm
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To Gene expression and cell interaction
Amoeba
Ribosome
Root Tip
E Coli
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The processing of information by the brain
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To animal societies and the emergence of culture
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And the social artefacts of human society such as
economies
17
The Concept of Self-Organisation has consequences
at several levels
  • At the whole system level (in the present case,
    farming systems) it means that no one is in
    charge and optimal or command and control
    solutions to system problems usually fail (sooner
    or later)
  • At the level of analysis, self organising
    processes provide us with powerful tools

18
Foot and Mouth Disease in the UK An example of
failure caused by focussing on one part of the
system and ignoring the links between biophysics
and economics
Economic rationalization of abattoirs and bizarre
EU subsidies increased the connections between
herds to a critical point. Changes to FM
reporting rules may have delayed the isolation of
infectious animals. The relationship between
these actions and the epidemiology of FM was not
appreciated in advance (at least where it
mattered) because the livestock industry was not
viewed as an integrated system.
19
Farming Systems at the gross level involve
Economics, People, their Social Networks as well
as Biophysics such as hydrology, soil science,
Agronomy and Biology.
  • We can attempt to understand and model the whole
    system or parts of it
  • To model the whole system we need first a mental
    map and then some techniques to capture the parts
    and interactions of the mental map

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A regional scale social-ecological system
including farming, as a complex adaptive system
In a CAS, there is no Fat Controller. The system
behaviour is an emergent property
Climate
The Market
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We can build models of Complex adaptive Systems
using techniques like Agent based Modelling but
to understand and predict their behaviour, we
need a science of systems
  • The understanding we need is coming from a
    evolving blend of at least three different
    approaches
  • Dynamical Systems Theory
  • Network Theory
  • Evolutionary or adaptive computing

24
1 Studying Ecosystems as dynamical systems
  • A minimal model of an ecosystem describes the
    change over time of ecosystem state.
  • The trajectories indicate stable states of the
    ecosystem as external conditions change
  • Ecosystems that display two (or more) alternative
    stable states include
  • lakes(oligotrophic/eutrophic),
  • grasslands/woodlands,
  • coral reefs (pristine/algal covered),
  • marine ecosystems as measured in fish catch.

(Figs from Scheffer et al, 2001, Nature)
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Basins of attraction and Ecosystem Resilience
A minimal model of an ecosystem describes the
change over time of an unwanted ecosystem
property, x such as lake turbidity a
represents an environmental factor that promotes
x, b represents the rate at which x decays in
the system, r is the rate at which x recovers
again as a function f of x The form of f(x)
determines whether multiple stable states or
attractors will exist
(Figs from Scheffer et al, 2001, Nature)
26
What do we mean by stable states?
Linear dynamics Non-linear dynamics
Boundaries of Strange Periodic attractor
Strange Attractor Attractors are Fractal
27
We can represent most systems as networks with
interactions across the links-Network Topologies
control System behaviour
Regular Network each node has the same number of
connections
Homogeneous network Number of connections per
node varies but there is a clear average value.
Networks like this can result from randomly
connecting nodes. Near the phase transition they
are vulnerable to random removal of links
Heterogeneous or scale free network There is
no average number of connections per node
Living networks that grow by accretion often have
this dendritic form. They are resilient to
random removal of links but vulnerable to a
targeted attack that removes a key node
28
3 Adaptive Systems can be illustrated simply
using Cellular Automata. CAs are Systems that
evolve on lattices according to local interaction
rules
The simplest rules the state of a cell at time
T1 is determined by its own state and that of
its two neighbours at time T
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Discretization of PDEs yields Cellular Automata
Advection-diffusion equation
tn tn1
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We can form new types of Cellular Automata by
changing the interaction rules or the wiring or
both
Dynamics on networks can evolve either by changes
in the interaction rules
T0 T1 T2
Or by changes in the wiring of the network
31
The Cellular Automaton as a computerEvolving
the local rules that will perform a computational
task by applying a global selection pressure
T0 T1 T2
The colour that a cell adopts at the next
timestep depends only on the colours of itself
and its neighbours at the present time step
Rules are recombined (bred) and selected
according to Darwinian principles to find the set
of local rules that will solve the density problem
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Moving Away from Classical Mathematics
  • With complete freedom to stipulate rules and
    wiring between elements of our CAs in the virtual
    world of the computer and then to let them evolve
    as part of the computation, we can form
    mathematical objects that are very difficult to
    capture using the approaches of conventional
    mathematics but which match very well what we
    observe in living systems.
  • Agent Based Models exploit this freedom
  • Analysis using network theory and similar
    techniques is leading to increasing understanding
    of these systems-but so far we have few general
    principles

33
Summary
  • Complex Systems Science brings together systems
    approaches and a rapidly developing science of
    systems
  • Rather than being any particular set of
    techniques it is primarily the adoption of a
    different point of view
  • That is, to admit the prevalence of self-
    organisation in complex systems together with the
    behaviours that flow from that and the techniques
    necessary to study it.

34
The CSIRO Centre for Complex Systems Science-A
Virtual Centre
The Core Group comprises a permanent Science
Director, a Communication and Training Manager,
Post Docs, PhDs and visitors. It interacts with
Division based projects to do basic research in
CSS. Projects are located within CSIRO Divisions
(and partner Institutions). A key function of
the Core group is to manage interaction between
the projects. The Core and the Division-based
Projects are closely networked.
35
The Compass of Complex System Science Projects
in the CSIRO Centre for CSS-1
  • Inference of complex systems properties from
    fragmentary information (Mantle dynamics and
    mineralization State Space reconstruction)
  • Ensemble Prediction of Atmospheric and
    Ocean-Atmosphere Regime Transitions (Dynamical
    Systems theory)
  • The stability of the Southern Ocean overturning
    circulation (Dynamical Systems theory)
  • Critical states in bushfires (Dynamical Systems
    theory, Agent Based Modelling)
  • The effects of model structure and dimensionality
    on the emergent properties of ecosystem models
    (Estuarine systems Dynamical Systems theory,
    ABM)
  • Rapid shifts in state and resilience in river
    systems (ABM)
  • Targeting Drug-like properties in Chemical
    libraries (Genetic Algorithms, Evolutionary
    computing)

36
The Compass of Complex System Science Projects
in the CSIRO Centre for CSS-2
  • Tracking Air Borne Chemical Signals (Fractal
    turbulence AI, ABM)
  • Adaptation and resilience in regional
    socio-economic systems (Managed rangelands ABM)
  • Multiscale modelling in Industrial and Natural
    systems (Lattice-Boltzmann methods, Non-Equil
    Thermodynamics)
  • Interactions, information sharing and simulated
    reasoning of fishers in an agent-based, Bayesian
    network model of fishing behaviour (ABM)
  • The Future of the Swan River Governance and
    Agent Based Modeling (ABM, Evolutionary game
    theory)
  • Our National Electricity Market as a Complex
    Adaptive System (ABM)
  • Links between resilience and information in
    complex adaptive systems (ABM, Evolutionary game
    theory)

37
The Purpose of This Workshop
  • Is to bring together workers with awareness of
    the problems and workers with knowledge of CSS
    Techniques
  • And to start a process of developing projects for
    future joint funding
  • We plan a funding round built around the 2nd
    CSIRO CSS workshop in Sydney 27-29 August, 2003.
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