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| The Beauty of Fractals
The Beauty of Fractals
Peitgen & Richter
THE BEAUTY OF
FRACTALS
Images of Complex Dynamical
Systems
Bookreport for English
Frontiers of science:
Scientists try to penetrate natural phenomena with their
understanding, seeking to reduce all complexity to a few fundamental laws. The
cool rationality of science and technology has pervaded and transformed the
world to such an extent that it could destroy human life.
The creed of the “fundamentalists” has lost
its exclusive attractiveness because of the great unifying success in modern
science (e.g.: elementary particle physics, molecular genetics, ...). It becomes
more and more important to figure out the patterns through which the basic laws
show themselves in reality. More than just fundamental laws are operating in
what actually “is”. Every non-linear process leads to forks in the
path at witch decisions are made whose consequences can’t be predicted
because each decision has the character of an amplification. These decisions may
blow up and have fear - reaching effects. Sooner or later the initial knowledge
of the system becomes irrelevant, from now on there is an uncontrollable
process, where information is generated and retained. These processes become
unpredictable over very long periods of time. E. g.: The old problem of the
stability of the solar system is still unsolved. (Problem of gravitational
interactions) Analogous problems arise in almost all other disciplines. We have
no controlled nuclear fusion because we have no adequate understanding of the
chaotic motion of charged particle in the magnetic mirror system. Phenomenology
has its own laws. At every new stage of organisation new rules take effect. We
know it well from everyday live, but it calls for a completely new orientation
in science.
On the one hand some people look upon a computer as a
diabolical instrument and on the other hand are there some others that are
completely addicted. But used with some reflection it can also help us lift the
veil on nature’s secrets.
Where scientists of earlier generations had to simplify
their equations or give up completely, we are able to see their full content on
the display monitor of our computer. Through graphical representation of
natural processes new ideas and associations are stimulated. In connection with
the computer a lot of new topics sprung up, like Synergetics. Synergetics is the
systematically trying to find the rules by which order arises in complex
systems.
Fractals are part of Synergetics. They deal with chaos
and order and with their competition or coexistence. The process chosen here
comes from various physical or mathematical problems, like order and disorder or
magnetic and non - magnetic state. The pictures represent processes that are
simplified idealisations of reality.
The principle of self - similarity is nonetheless
realised approximately in nature: coastlines, riverbeds, cloud formations,
trees, and so on. It was Benoit B. Mandelbrot who opened our eyes to the fractal
geometry of nature.
The processes that generate fractals are simple feedback
processes in which the same operation is carried out
repeatedly.
For better imagination see the picture.
Originaldokument enthält an dieser Stelle eine Grafik! Original document contains a graphic at this position!
The only requirement here is a non - linear relation
between input and output. The rule x
àf(x) will depend
on a parameter c, whose influence won’t be discussed here, because it
would be to complex.
Our interest is now the behaviour of this iteration over
a long period of time. What will the sequence do? Reach a limit value and rest
there or be a typical cycle of values that is repeated over and over again? Or
is it for all times unpredictable?
Physicists like to think in terms of infinitesimal time
- steps: natura non facit saltus. Biologists often prefer to look at
changes from year to year or from generation to generation. Both views are
possible and only the circumstances stipulate which description is
appropriate.
What do we mean by chaos?
In simple terms the system has gone out of control.
There is no way to predict its long time behaviour. The surprise: The sequence
is determined by its initial value - and yet, it cannot be predicted
other than by letting it run. The problem is that any real description of
the initial size of the sequence, its representation in a computer for instance,
can only be given with finite precision. The process can be viewed as an
unfolding of information: the longer we observe it, the better we
know.
The most exciting aspect is not the chaos as such, but
the scenario by which the order turns into chaos.
An exact analysis of the bifurcation points (the exact
growth parameters for the oscillation between two periods) in the scenario shows
that the doubling factor approaches a universal value of
d = 4.669201 ...
as the period increases. This number is called the “Feigenbaum
number”, because Mitchell Feigenbaum discovered the universality of this
number.
The discovery has spurred an enormous activity among
scientist of many fields. Mathematicians for example are still trying to fully
understand that unexpected universality. But perhaps more important it has
boosted a general hope that non - linear phenomena may not be out of reach of
systematic scientific classifications.
The history of fractals before Mandelbrot
Like new forms of life, new branches of mathematics and
science don’t appear from nowhere. The ideas of fractal geometry can be
traced to the late nineteenth century, when mathematicians created shapes (sets
of points) that seemed to have no counterpart in nature. By a wonderful irony,
the “abstract” mathematics descended from that work has now turned
out to be more appropriate than any other for describing many natural
shapes and processes.
Perhaps we shouldn’t be surprised. The Greek
geometers worked out the mathematics of the conic sections for its formal
beauty; it was two thousand years before Copernicus and Brahe, Kepler and Newton
overcame the preconception that all heavenly motions must be circular, and found
the ellipse, parabola and hyperbola in the paths of planets, comets, and
projectiles.
In the 17th century Newton and Leibniz
created calculus, with its techniques for “differentiating” or
finding the derivative of functions - in geometric terms, finding the tangent of
a curve at any given point. True, some functions where discontinuous, with no
tangent at a gap or an isolated point. Some singularities: abrupt changes in
direction at which the idea of a tangent becomes meaningless. But these were
seen as exceptional and attention was focused on the “well -
behaved” functions that worked well in modelling nature.
Beginning in the early 1870s, though, a 50 - year crises
transformed mathematical thinking. Weierstrass described a function that was
continuous but nondifferentiable (no tangent could be described at any point).
Cantor showed how simple, repeated procedure could turn a line into a dust of
scattered points, Peano generated a convoluted curve that eventually touches
every point on a place. These shapes seemed to fall “ between” the
usual categories of one - dimensional lines, two - dimensional planes and three
- dimensional volumes. Most still saw them as “pathological” cases,
but here and there they began to find applications.
In other areas of mathematics, too, strange shapes began
to crop up. Poincare attempted to analyse the stability of the solar system in
the 1880s and found that the many - body dynamical problem resisted traditional
methods. Instead, he developed a qualitative approach, a “state
space” in which each point represented a different planetary orbit, and
studied what we would now call the topology (the “connectedness”) of
whole families of orbits. This approach revealed that while many initial motions
quickly settled into the familiar curves, there where also strange,
“chaotic” orbits that never became periodic and
predictable.
Other investigators trying to understand fluctuating,
“noisy” phenomena (the flooding of the Nile, price series in
economics, the jiggling of molecules in the Browian motion in fluids) found that
traditional models could not introduce apparently arbitrary scaling features,
with spikes in the data becoming rarer as they grew larger, but never
disappearing entirely.
For many years these developments seemed unrelated, but
there were tantalising hints of a common thread. Like the pure
mathematicians’ curves and the chaotic orbital motions, the graphs of
irregular time series often had the property of self - similarity: a magnified
small section looked very similar to a large one over a wide range of
scales.
Who is this “Mandelbrot”, Anyway?
While many pure and applied mathematicians advanced
these trends, it is Benoit B. Mandelbrot above all who saw what they had in
common and pulled the threads together into the new discipline.
He was born in Warsaw in 1924, and moved to France in
1935. In a time when French mathematical training was strongly analytic, he
visualised problems whenever possible, so that he could attack them in geometric
terms. He attended the Ecole Polytechnique, then Caltech, where he encountered
the tangled motions of fluid turbulence.
In 1958 he joined IBM where he began a mathematical
analysis of electronic “noise” and began to perceive a structure in
it, a hierarchy of fluctuations of all sizes, that could not be explained by
existing statistically methods.
Through the years that followed, one seemingly unrelated
problem after another was drawn into the growing body of ideas he would come to
call fractal geometry.
As computers gained more graphic capabilities, the
skills of his mind’s eye were reinforced by visualisation on display
screens and plotters. Again and again, fractal models produced results (series
of flood heights, or cotton prices) that experts said looked like “the
real thing”.
Visualisation was extended to the physical world as
well. In a provocative essay titled “How long is the coast of
Britain?” Mandelbrot noted that the answer depends on the scale at which
one measures: it grows longer and longer as one takes into account every bay and
inlet, every stone, every grain of sand. And he codified the self - similarity
characteristic of many fractal shapes - the reappearance of geometrically
similar features at all scales.
First in isolated papers and lectures, then in two
editions of his seminal book, he argued that many of science’s traditional
mathematical models are ill - suited to natural forms and processes: in fact,
that many of the “pathological” shapes mathematicians had discovered
generations before are useful approximations of tree bark and lung tissue,
clouds and galaxies.
Mandelbrot was named an IBM Fellow in 1974, and
continues to work at the IBM Watson Research Centre. He has also been a visiting
professor and guest lecturer at many universities.
Summary
Fractals have three important
properties:
- They are generated by relatively simple calculations,
repeated over and over, feeding the results of each step back into the next -
something computers can do very rapidly.
- They are, quite literally, infinitely complex: they
reveal more and more detail without limit as you plot smaller and smaller
areas.
- They can be astonishingly beautiful, especially using PC
colour displays’ ability to assign colours to selected point and to
“animate” the images by quickly shifting those colour
assignments.
Here you will find some very nice fractals. Enjoy
them!!!
Originaldokument enthält an dieser Stelle eine Grafik! Original document contains a graphic at this position!
Originaldokument enthält an dieser Stelle eine Grafik! Original document contains a graphic at this position!
Originaldokument enthält an dieser Stelle eine Grafik! Original document contains a graphic at this position!
Originaldokument enthält an dieser Stelle eine Grafik! Original document contains a graphic at this position!
Originaldokument enthält an dieser Stelle eine Grafik! Original document contains a graphic at this position!
Originaldokument enthält an dieser Stelle eine Grafik! Original document contains a graphic at this position!
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