LMIs in Control/Click here to continue/Notation

From Wikibooks, open books for an open world
Jump to navigation Jump to search

Notations



Notations Related to Subspaces[edit | edit source]

set of all real numbers

set of all positive real numbers

set of all negative real numbers

set of all complex numbers

right-half complex plane

left-half complex plane

set of all real vectors of dimension

set of all complex vectors of dimension

set of all real matrices of dimension

set of all complex matrices of dimension

set of real matrices with rank

set of complex matrices with rank

closed right-half complex plane,

ker

kernel of transformation or matrix

Image

image of transformation or matrix

conv

convex hull of set

set of symmetric matrix in

boundary set of

set of all extreme points of


Notations Related to Vectors and Matrices[edit | edit source]

zero vector in

zero matrix in

identity matrix of order

inverse matrix of matrix

transpose of matrix

complex conjugate of matrix

transposed complex conjugate of matrix

Re()

real part of matrix

Im()

imaginary part of matrix

det()

determinant of matrix

Adj)

adjoint of matrix

trace()

trace of matrix

rank()

rank of matrix

condition number of matrix

spectral radius of matrix

is Hermite (symmetric) positive definite

is Hermite (symmetric) semi-positive definite

is Hermite (symmetric) negative definite

is Hermite (symmetric) semi-negative definite

matrix satisfying

set of all eigenvalues of matrix

th eigenvalue of matrix

maximum eigenvalue of matrix

minimum eigenvalue of matrix

th singular value of matrix

maximum singular value of matrix

minimum singular value of matrix

sum of matrix and its transpose,

spectral norm of matrix

Frobenius norm of matrix

row-sum norm of matrix

column-sum norm of matrix

Notations of Relations and Manipulations[edit | edit source]

Other Notations[edit | edit source]

Examples[edit | edit source]

Consider the square matrix . The eigenvalues of are denoted by . The matrix A is Hurwitz if all of its eigenvalues are in the open left-half complex plane (i.e., Re ). A matrix is Schur if all of its eigenvalues are strictly within a unit disk centered at the origin of the complex plane (i.e., . If , then the minimum eigenvalue of A is denoted by and its maximum eigenvalue is denoted by .

Consider the matrix B . The minimum singular value of B is denoted by (B) and its maximum singular value is denoted by (B). The range and nullspace of B are denoted by (B) and (B), respectively. The Frobenius norm of B is ||B|| = .

A state-space realization of the continuous-time linear time-invariant (LTI) system

,

.
is often written compactly as (A, B,C,D) in this document. The argument of time is often omitted in continuous-time state-space realizations, unless needed to prevent ambiguity. A state-space realization of the discrete-time LTI system



is often written compactly as .

The ∞ norm of the LTI system is denoted by ||||∞ and the norm of is denoted by ||||.


The inner product spaces for continuous-time signals are defined as follows.



The inner product sequence spaces ℓ2 and ℓ2e for discrete-time signals are defined as follows.

Reference[edit | edit source]

  • LMIs in Control Systems: Analysis, Design and Applications - by Guang-Ren Duan and Hai-Hua Yu, CRC Press, Taylor & Francis Group, 2013
  • LMI Properties and Applications in Systems, Stability, and Control Theory - A List of LMIs by Ryan Caverly and James Forbes.
  • LMIs in Systems and Control Theory - A downloadable book on LMIs by Stephen Boyd.