Everything about Frequency Spectrum totally explained
Familiar concepts associated with a
frequency are colors, musical notes, radio/TV channels, and even the regular rotation of the earth.
A source of light can have many colors mixed together and in different amounts (intensities). A rainbow, or prism, sends the different frequencies in different directions, making them individually visible at different angles. A graph of the intensity plotted against the frequency (showing the amount of each color) is the
frequency spectrum of the light. When all the visible frequencies are present in equal amounts, the effect is the "color" white, and the spectrum is a
flat line. Therefore, flat-line spectrums in general are often referred to as
white, whether they represent light or something else.
Similarly, a source of sound can have many different frequencies mixed together. Each frequency stimulates a different length receptor in our ears. When only one length is predominantly stimulated, we hear a note. A steady hissing sound or a sudden crash stimulates all the receptors, so we say that it contains some amounts of all frequencies in our audible range. Things in our environment that we refer to as
noise often comprise many different frequencies. Therefore, when the sound spectrum is
flat, it's called
white noise. This term carries over into other types of spectrums than sound.
Each broadcast radio and TV station transmits a wave on an assigned frequency (aka
channel). A radio antenna adds them all together into a single function of amplitude (voltage) vs. time. The radio tuner picks out one channel at a time (like each of the receptors in our ears). Some channels are stronger than others. If we made a graph of the strength of each channel vs. the frequency of the tuner, it would be the
frequency spectrum of the antenna signal.
Spectrum analysis
Analysis means decomposing something complex into simpler, more basic parts. As we've seen, there's a physical basis for modeling light, sound, and radio waves as being made up of various amounts of all different frequencies. Any process that quantifies the various amounts vs. frequency can be called
spectrum analysis. It can be done on many short segments of time, or less often on longer segments, or just once for a deterministic function (such as
).
The
Fourier transform of a function produces a spectrum from which the original function can be reconstructed (aka
synthesized) by an inverse transform, making it reversible. In order to do that, it preserves not only the magnitude of each frequency component, but also its
phase. This information can be represented as a 2-dimensional vector or a complex number, or as magnitude and phase (polar coordinates). In graphical representations, often only the magnitude (or squared magnitude) component is shown. This is also referred to as a
power spectrum.
Because of reversibility, the Fourier transform is called a
representation of the function, in terms of frequency instead of time, thus, it's a
frequency domain representation. Linear operations that could be performed in the time domain have counterparts that can often be performed more easily in the frequency domain. It is also helpful just for understanding and interpreting the effects of various time-domain operations, both linear and non-linear. For instance, only non-linear operations can create new frequencies in the spectrum.
The Fourier transform of a random (aka
stochastic) waveform (aka
noise) is also random. Some kind of averaging is required in order to create a clear picture of the underlying frequency content (aka
frequency distribution). Typically, the data is divided into time-segments of a chosen duration, and transforms are performed on each one. Then the magnitude or (usually) squared-magnitude components of the transforms are summed into an average transform. This is a very common operation performed on digitized (aka
sampled) time-data, using the
discrete Fourier transform (see
Welch method). When the result is flat, as we've said, it's commonly referred to as
white noise.
Physical acoustics of music
Sound spectrum is one of the determinants of the
timbre or quality of a
sound or
note. It is the relative strength of pitches called
harmonics and
partials (collectively
overtones) at various frequencies usually above the fundamental frequency, which is the actual note named (eg. an A).
Further Information
Get more info on 'Frequency Spectrum'.
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