Minimum-phase
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In control theory and signal processing, a linear, time-invariant system is said to be minimum-phase if the system and its
inverse Inverse or invert may refer to: Science and mathematics * Inverse (logic), a type of conditional sentence which is an immediate inference made from another conditional sentence * Additive inverse (negation), the inverse of a number that, when ad ...
are causal and
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. The most general causal LTI transfer function can be uniquely factored into a series of an all-pass and a minimum phase system. The system function is then the product of the two parts, and in the time domain the response of the system is the convolution of the two part responses. The difference between a minimum phase and a general transfer function is that a minimum phase system has all of the poles and zeroes of its transfer function in the left half of the s-plane representation (in discrete time, respectively, inside the unit circle of the z-plane). Since inverting a system function leads to poles turning to zeroes and vice versa, and poles on the right side ( s-plane imaginary line) or outside ( z-plane unit circle) of the
complex plane In mathematics, the complex plane is the plane formed by the complex numbers, with a Cartesian coordinate system such that the -axis, called the real axis, is formed by the real numbers, and the -axis, called the imaginary axis, is formed by the ...
lead to unstable
system A system is a group of Interaction, interacting or interrelated elements that act according to a set of rules to form a unified whole. A system, surrounded and influenced by its environment (systems), environment, is described by its boundaries, ...
s, only the class of minimum phase systems is closed under inversion. Intuitively, the minimum phase part of a general causal system implements its amplitude response with minimum group delay, while its all pass part corrects its phase response alone to correspond with the original system function. The analysis in terms of poles and zeroes is exact only in the case of transfer functions which can be expressed as ratios of polynomials. In the continuous time case, such systems translate into networks of conventional, idealized LCR networks. In discrete time, they conveniently translate into approximations thereof, using addition, multiplication, and unit delay. It can be shown that in both cases, system functions of rational form with increasing order can be used to efficiently approximate any other system function; thus even system functions lacking a rational form, and so possessing an infinitude of poles and/or zeroes, can in practice be implemented as efficiently as any other. In the context of causal, stable systems, we would in theory be free to choose whether the zeroes of the system function are outside of the stable range (to the right or outside) if the closure condition wasn't an issue. However, inversion is of great practical importance, just as theoretically perfect factorizations are in their own right. (Cf. the spectral symmetric/antisymmetric decomposition as another important example, leading e.g. to Hilbert transform techniques.) Many physical systems also naturally tend towards minimum phase response, and sometimes have to be inverted using other physical systems obeying the same constraint. Insight is given below as to why this system is called minimum-phase, and why the basic idea applies even when the system function cannot be cast into a rational form that could be implemented.


Inverse system

A system \mathbb is invertible if we can uniquely determine its input from its output. I.e., we can find a system \mathbb_\text such that if we apply \mathbb followed by \mathbb_\text, we obtain the identity system \mathbb. (See Inverse matrix for a finite-dimensional analog). That is, \mathbb_\text \, \mathbb = \mathbb Suppose that \tilde is input to system \mathbb and gives output \tilde. \mathbb \, \tilde = \tilde Applying the inverse system \mathbb_\text to \tilde gives the following \mathbb_\text \, \tilde = \mathbb_\text \, \mathbb \, \tilde = \mathbb \, \tilde = \tilde So we see that the inverse system \mathbb_ allows us to determine uniquely the input \tilde from the output \tilde.


Discrete-time example

Suppose that the system \mathbb is a discrete-time, linear, time-invariant (LTI) system described by the
impulse response In signal processing and control theory, the impulse response, or impulse response function (IRF), of a dynamic system is its output when presented with a brief input signal, called an Dirac delta function, impulse (). More generally, an impulse ...
h(n) for in . Additionally, suppose \mathbb_\text has impulse response h_\text(n). The cascade of two LTI systems is a convolution. In this case, the above relation is the following: (h_\text * h) (n) = (h * h_\text) (n) = \sum_^ h(k) \, h_\text (n-k) = \delta (n) where \delta (n) is the Kronecker delta or the identity system in the discrete-time case. (Changing the order of h_\text and h is allowed because of commutativity of the convolution operation.) Note that this inverse system \mathbb_\text need not be unique.


Minimum phase system

When we impose the constraints of causality and stability, the inverse system is unique; and the system \mathbb and its inverse \mathbb_\text are called minimum-phase. The causality and stability constraints in the discrete-time case are the following (for time-invariant systems where is the system's impulse response):


Causality

h(n) = 0 \,\, \forall \, n < 0 and h_ (n) = 0 \,\, \forall \, n < 0


Stability

\sum_^ = \, h \, _ < \infty and \sum_^ = \, h_\text \, _ < \infty See the article on stability for the analogous conditions for the continuous-time case.


Frequency analysis


Discrete-time frequency analysis

Performing frequency analysis for the discrete-time case will provide some insight. The time-domain equation is the following: (h * h_\text) (n) = \delta (n) Applying the Z-transform gives the following relation in the z-domain H(z) \, H_\text(z) = 1 From this relation, we realize that H_\text(z) = \frac For simplicity, we consider only the case of a rational transfer function . Causality and stability imply that all
poles Poles,, ; singular masculine: ''Polak'', singular feminine: ''Polka'' or Polish people, are a West Slavic nation and ethnic group, who share a common history, culture, the Polish language and are identified with the country of Poland in Ce ...
of must be strictly inside the unit circle (See stability). Suppose H(z) = \frac where and are polynomial in . Causality and stability imply that the
poles Poles,, ; singular masculine: ''Polak'', singular feminine: ''Polka'' or Polish people, are a West Slavic nation and ethnic group, who share a common history, culture, the Polish language and are identified with the country of Poland in Ce ...
– the roots of – must be strictly inside the unit circle. We also know that H_\text(z) = \frac So, causality and stability for H_\text(z) imply that its
poles Poles,, ; singular masculine: ''Polak'', singular feminine: ''Polka'' or Polish people, are a West Slavic nation and ethnic group, who share a common history, culture, the Polish language and are identified with the country of Poland in Ce ...
– the roots of – must be inside the unit circle. These two constraints imply that both the zeros and the poles of a minimum phase system must be strictly inside the unit circle.


Continuous-time frequency analysis

Analysis for the continuous-time case proceeds in a similar manner except that we use the Laplace transform for frequency analysis. The time-domain equation is the following. (h * h_\text) (t) = \delta (t) where \delta(t) is the
Dirac delta function In mathematics, the Dirac delta distribution ( distribution), also known as the unit impulse, is a generalized function or distribution over the real numbers, whose value is zero everywhere except at zero, and whose integral over the entire ...
. The
Dirac delta function In mathematics, the Dirac delta distribution ( distribution), also known as the unit impulse, is a generalized function or distribution over the real numbers, whose value is zero everywhere except at zero, and whose integral over the entire ...
is the identity operator in the continuous-time case because of the sifting property with any signal . (\delta * x)(t) = \int_^ \delta(t - \tau) x(\tau) d\tau = x(t) Applying the Laplace transform gives the following relation in the s-plane. H(s) \, H_\text(s) = 1 From this relation, we realize that H_\text(s) = \frac Again, for simplicity, we consider only the case of a rational transfer function . Causality and stability imply that all
poles Poles,, ; singular masculine: ''Polak'', singular feminine: ''Polka'' or Polish people, are a West Slavic nation and ethnic group, who share a common history, culture, the Polish language and are identified with the country of Poland in Ce ...
of must be strictly inside the left-half s-plane (See stability). Suppose H(s) = \frac where and are polynomial in . Causality and stability imply that the
poles Poles,, ; singular masculine: ''Polak'', singular feminine: ''Polka'' or Polish people, are a West Slavic nation and ethnic group, who share a common history, culture, the Polish language and are identified with the country of Poland in Ce ...
– the roots of – must be inside the left-half s-plane. We also know that H_\text(s) = \frac. So, causality and stability for H_\text(s) imply that its
poles Poles,, ; singular masculine: ''Polak'', singular feminine: ''Polka'' or Polish people, are a West Slavic nation and ethnic group, who share a common history, culture, the Polish language and are identified with the country of Poland in Ce ...
– the roots of – must be strictly inside the left-half s-plane. These two constraints imply that both the zeros and the poles of a minimum phase system must be strictly inside the left-half s-plane.


Relationship of magnitude response to phase response

A minimum-phase system, whether discrete-time or continuous-time, has an additional useful property that the natural logarithm of the magnitude of the frequency response (the "gain" measured in
neper The neper (symbol: Np) is a logarithmic unit for ratios of measurements of physical field and power quantities, such as gain and loss of electronic signals. The unit's name is derived from the name of John Napier, the inventor of logarithms. As ...
s which is proportional to dB) is related to the phase angle of the frequency response (measured in radians) by the Hilbert transform. That is, in the continuous-time case, let H(j \omega) \ \stackrel\ H(s) \Big, _ be the complex frequency response of system . Then, only for a minimum-phase system, the phase response of is related to the gain by \arg \left H(j \omega) \right= -\mathcal \lbrace \log \left( , H(j \omega), \right) \rbrace where \mathcal denotes the Hilbert transform, and, inversely, \log \left( , H(j \omega), \right) = \log \left( , H(j \infty), \right) + \mathcal \lbrace \arg \left (j \omega) \right\rbrace \ . Stated more compactly, let H(j \omega) = , H(j \omega), e^ \ \stackrel\ e^ e^ = e^ where \alpha(\omega) and \phi(\omega) are real functions of a real variable. Then \phi(\omega) = -\mathcal \lbrace \alpha(\omega) \rbrace and \alpha(\omega) = \alpha(\infty) + \mathcal \lbrace \phi(\omega) \rbrace \ . The Hilbert transform operator is defined to be \mathcal \lbrace x(t) \rbrace \ \stackrel\ \widehat(t) = \frac\int_^\frac\, d\tau \ . An equivalent corresponding relationship is also true for discrete-time minimum-phase systems.


Minimum phase in the time domain

For all causal and
stable A stable is a building in which livestock, especially horses, are kept. It most commonly means a building that is divided into separate stalls for individual animals and livestock. There are many different types of stables in use today; the ...
systems that have the same magnitude response, the minimum phase system has its energy concentrated near the start of the
impulse response In signal processing and control theory, the impulse response, or impulse response function (IRF), of a dynamic system is its output when presented with a brief input signal, called an Dirac delta function, impulse (). More generally, an impulse ...
. i.e., it minimizes the following function which we can think of as the delay of energy in the
impulse response In signal processing and control theory, the impulse response, or impulse response function (IRF), of a dynamic system is its output when presented with a brief input signal, called an Dirac delta function, impulse (). More generally, an impulse ...
. \sum_^ \left, h(n) \^2 \quad \forall \, m \in \mathbb^


Minimum phase as minimum group delay

For all causal and
stable A stable is a building in which livestock, especially horses, are kept. It most commonly means a building that is divided into separate stalls for individual animals and livestock. There are many different types of stables in use today; the ...
systems that have the same magnitude response, the minimum phase system has the minimum group delay. The following proof illustrates this idea of minimum group delay. Suppose we consider one zero a of the transfer function H(z). Let's place this zero a inside the unit circle (\left, a \ < 1) and see how the group delay is affected. a = \left, a \ e^ \, \text \, \theta_a = \operatorname(a) Since the zero a contributes the factor 1 - a z^ to the transfer function, the phase contributed by this term is the following. \begin \phi_a \left(\omega \right) &= \operatorname \left(1 - a e^ \right)\\ &= \operatorname \left(1 - \left, a \ e^ e^ \right)\\ &= \operatorname \left(1 - \left, a \ e^ \right)\\ &= \operatorname \left( \left\ + i \left\\right)\\ &= \operatorname \left( \left\ + i \left\ \right) \end \phi_a (\omega) contributes the following to the group delay. \begin -\frac &= \frac \\ &= \frac \end The denominator and \theta_a are invariant to reflecting the zero a outside of the unit circle, i.e., replacing a with (a^)^. However, by reflecting a outside of the unit circle, we increase the magnitude of \left, a \ in the numerator. Thus, having a inside the unit circle minimizes the group delay contributed by the factor 1 - a z^. We can extend this result to the general case of more than one zero since the phase of the multiplicative factors of the form 1 - a_i z^ is additive. I.e., for a transfer function with N zeros, \operatorname\left( \prod_^N \left( 1 - a_i z^ \right) \right) = \sum_^N \operatorname\left( 1 - a_i z^ \right) So, a minimum phase system with all zeros inside the unit circle minimizes the group delay since the group delay of each individual zero is minimized.


Non-minimum phase

Systems that are causal and stable whose inverses are causal and unstable are known as ''non-minimum-phase'' systems. A given non-minimum phase system will have a greater phase contribution than the minimum-phase system with the equivalent magnitude response.


Maximum phase

A ''maximum-phase'' system is the opposite of a minimum phase system. A causal and stable LTI system is a ''maximum-phase'' system if its inverse is causal and unstable. That is, * The zeros of the discrete-time system are outside the unit circle. * The zeros of the continuous-time system are in the right-hand side of the
complex plane In mathematics, the complex plane is the plane formed by the complex numbers, with a Cartesian coordinate system such that the -axis, called the real axis, is formed by the real numbers, and the -axis, called the imaginary axis, is formed by the ...
. Such a system is called a ''maximum-phase system'' because it has the maximum group delay of the set of systems that have the same magnitude response. In this set of equal-magnitude-response systems, the maximum phase system will have maximum energy delay. For example, the two continuous-time LTI systems described by the transfer functions \frac \qquad \text \qquad \frac have equivalent magnitude responses; however, the second system has a much larger contribution to the phase shift. Hence, in this set, the second system is the maximum-phase system and the first system is the minimum-phase system. These systems are also famously known as nonminimum-phase systems that raise many stability concerns in control. One recent solution to these systems is moving the RHP zeros to the LHP using the PFCD method.


Mixed phase

A ''mixed-phase'' system has some of its zeros inside the unit circle and has others outside the unit circle. Thus, its group delay is neither minimum or maximum but somewhere between the group delay of the minimum and maximum phase equivalent system. For example, the continuous-time LTI system described by transfer function \frac is stable and causal; however, it has zeros on both the left- and right-hand sides of the
complex plane In mathematics, the complex plane is the plane formed by the complex numbers, with a Cartesian coordinate system such that the -axis, called the real axis, is formed by the real numbers, and the -axis, called the imaginary axis, is formed by the ...
. Hence, it is a ''mixed-phase'' system. To control the transfer functions that include these systems some methods such as internal model controller (IMC), generalized Smith's predictor (GSP) and parallel feedforward control with derivative (PFCD) are proposed.


Linear phase

A linear-phase system has constant group delay. Non-trivial linear phase or nearly linear phase systems are also mixed phase.


See also

* All-pass filter A special non-minimum-phase case. * Kramers–Kronig relation Minimum phase system in physics


References


Further reading

*Dimitris G. Manolakis, Vinay K. Ingle, Stephen M. Kogon : ''Statistical and Adaptive Signal Processing'', pp. 54–56, McGraw-Hill, *Boaz Porat : ''A Course in Digital Signal Processing'', pp. 261–263, John Wiley and Sons, {{refend Digital signal processing Control theory