Properties of the fourier transform, Fast fourier transform (fft), Properties of the fourier transform ,16-47 – HP 50g Graphing Calculator User Manual

Page 524: Fast fourier transform (fft) ,16-47

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Page 16-47

Properties of the Fourier transform

Linearity: If a and b are constants, and f and g functions, then F{a

⋅f + b⋅g} = a

F{f }+ b F{g}.

Transformation of partial derivatives. Let u = u(x,t). If the Fourier transform
transforms the variable x, then

F{

∂u/∂x} = iω F{u}, F{∂

2

u/

∂x

2

} = -

ω

2

F{u},

F{

∂u/∂t} = ∂F{u}/∂t, F{∂

2

u/

∂t

2

} =

2

F{u}/

∂t

2

Convolution: For Fourier transform applications, the operation of convolution is
defined as

The following property holds for convolution:

F{f*g} = F{f}

⋅F{g}.

Fast Fourier Transform (FFT)

The Fast Fourier Transform is a computer algorithm by which one can calculate
very efficiently a discrete Fourier transform (DFT). This algorithm has
applications in the analysis of different types of time-dependent signals, from
turbulence measurements to communication signals.

The discrete Fourier transform of a sequence of data values {x

j

}, j = 0, 1, 2, …,

n-1, is a new finite sequence {X

k

}, defined as

The direct calculation of the sequence X

k

involves n

2

products, which would

involve enormous amounts of computer (or calculator) time particularly for large
values of n. The Fast Fourier Transform reduces the number of operations to the
order of n

⋅log

2

n. For example, for n = 100, the FFT requires about 664

operations, while the direct calculation would require 10,000 operations. Thus,

=

.

)

(

)

(

2

1

)

)(

*

(

ξ

ξ

ξ

π

d

g

x

f

x

g

f

=

=

=

1

0

1

,...,

2

,

1

,

0

),

/

2

exp(

1

n

j

j

k

n

k

n

kj

i

x

n

X

π

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