Tent map explained

In mathematics, the tent map with parameter μ is the real-valued function fμ defined by

f\mu(x):=\mumin\{x,1-x\},

the name being due to the tent-like shape of the graph of fμ. For the values of the parameter μ within 0 and 2, fμ maps the unit interval [0, 1] into itself, thus defining a discrete-time dynamical system on it (equivalently, a recurrence relation). In particular, iterating a point x0 in [0, 1] gives rise to a sequence

xn

:

xn+1=f\mu(xn)=\begin{cases} \muxn&for~~xn<

1
2

\\ \mu(1-xn)&for~~

1
2

\lexn\end{cases}

where μ is a positive real constant. Choosing for instance the parameter μ = 2, the effect of the function fμ may be viewed as the result of the operation of folding the unit interval in two, then stretching the resulting interval [0,&thinsp;1/2] to get again the interval [0,&thinsp;1]. Iterating the procedure, any point x0 of the interval assumes new subsequent positions as described above, generating a sequence xn in [0,&thinsp;1].

The

\mu=2

case of the tent map is a non-linear transformation of both the bit shift map and the r = 4 case of the logistic map.

Behaviour

The tent map with parameter μ = 2 and the logistic map with parameter r = 4 are topologically conjugate,[1] and thus the behaviours of the two maps are in this sense identical under iteration.

Depending on the value of μ, the tent map demonstrates a range of dynamical behaviour ranging from predictable to chaotic.

0.61\to0.585\to0.6225\to0.56625\to0.650625\ldots

\mu
\mu2+1

\to

\mu2
\mu2+1

\to

\mu
\mu2+1

appearsat\mu=1

\mu
\mu3+1

\to

\mu2
\mu3+1

\to

\mu3
\mu3+1

\to

\mu
\mu3+1

appearsat\mu=

1+\sqrt{5
}
\mu
\mu4+1

\to

\mu2
\mu4+1

\to

\mu3
\mu4+1

\to

\mu4
\mu4+1

\to

\mu
\mu4+1

appearsat\mu1.8393

x0

is irrational. This can be seen by noting what the map does when

xn

is expressed in binary notation: It shifts the binary point one place to the right; then, if what appears to the left of the binary point is a "one" it changes all ones to zeroes and vice versa (with the exception of the final bit "one" in the case of a finite binary expansion); starting from an irrational number, this process goes on forever without repeating itself. The invariant measure for x is the uniform density over the unit interval.[2] The autocorrelation function for a sufficiently long sequence will show zero autocorrelation at all non-zero lags.[3] Thus

xn

cannot be distinguished from white noise using the autocorrelation function. Note that the r = 4 case of the logistic map and the

\mu=2

case of the tent map are homeomorphic to each other: Denoting the logistically evolving variable as

yn

, the homeomorphism is

xn=\tfrac{2}{\pi}\sin-1

1/2
(y
n

).

Numerical errors

Magnifying the orbit diagram

Asymmetric tent map

The asymmetric tent map is essentially a distorted, but still piecewise linear, version of the

\mu=2

case of the tent map. It is defined by

vn+1=\begin{cases} vn/a&for~~vn\in[0,a]\\ (1-vn)/(1-a)&for~~vn\in[a,1]\end{cases}

for parameter

a\in[0,1]

. The

\mu=2

case of the tent map is the present case of

a=\tfrac{1}{2}

. A sequence will have the same autocorrelation function as will data from the first-order autoregressive process

wn+1=(2a-1)wn+un+1

with independently and identically distributed. Thus data from an asymmetric tent map cannot be distinguished, using the autocorrelation function, from data generated by a first-order autoregressive process.

Applications

The tent map has found applications in social cognitive optimization,[4] chaos in economics,[5] image encryption,[6] on risk and market sentiments for pricing,[7] etc.

See also

External links

Notes and References

  1. http://www.math.lsa.umich.edu/~rauch/558/logisticconjugation.pdf Conjugating the Tent and Logistic Maps
  2. Collett, Pierre, and Eckmann, Jean-Pierre, Iterated Maps on the Interval as Dynamical Systems, Boston: Birkhauser, 1980.
  3. Brock, W. A., "Distinguishing random and deterministic systems: Abridged version," Journal of Economic Theory 40, October 1986, 168-195.
  4. Sun . Jiaze . Li . Yang . January 2019 . Social cognitive optimization with tent map for combined heat and power economic dispatch . International Transactions on Electrical Energy Systems . en . 29 . 1 . e2660 . 10.1002/etep.2660. free . 1809.03616 .
  5. Nonlinearities in Economics . SpringerLink . en . 10.1007/978-3-030-70982-2#editorsandaffiliations. 11581/480148 . free .
  6. Li . Chunhu . Luo . Guangchun . Qin . Ke . Li . Chunbao . 2017-01-01 . An image encryption scheme based on chaotic tent map . Nonlinear Dynamics . en . 87 . 1 . 127–133 . 10.1007/s11071-016-3030-8 . 1573-269X.
  7. Lampart . Marek . Lampartová . Alžběta . Orlando . Giuseppe . 2023-09-01 . On risk and market sentiments driving financial share price dynamics . Nonlinear Dynamics . en . 111 . 17 . 16585–16604 . 10.1007/s11071-023-08702-5 . 1573-269X. free . 10084/152214 . free .