In mathematics, the logarithmic norm is a real-valued functional on operators, and is derived from either an inner product, a vector norm, or its induced operator norm. The logarithmic norm was independently introduced by Germund Dahlquist[1] and Sergei Lozinskiĭ in 1958, for square matrices. It has since been extended to nonlinear operators and unbounded operators as well.[2] The logarithmic norm has a wide range of applications, in particular in matrix theory, differential equations and numerical analysis. In the finite-dimensional setting, it is also referred to as the matrix measure or the Lozinskiĭ measure.
Let
A
\| ⋅ \|
\mu
A
\mu(A)=\lim
\limits | |
h → 0+ |
\|I+hA\|-1 | |
h |
Here
I
A
h
h → 0-
-\mu(-A)
\mu(A)
-\mu(-A)\leq\mu(A)
The matrix norm
\|A\|
A ≠ 0
\mu(A)
A
x |
=Ax.
log\|x\|
\mu(A)
d | |
dt+ |
log\|x\|\leq\mu(A),
d/dt+
d\|x\| | |
dt+ |
\leq\mu(A) ⋅ \|x\|,
\Phi(t,t0)
x |
=A(t)x
t | |
\exp\left(-\int | |
t0 |
\mu(-A(s))ds\right)\le\|\Phi(t,t0)\|\le
t | |
\exp\left(\int | |
t0 |
\mu(A(s))ds\right)
t\get0
If the vector norm is an inner product norm, as in a Hilbert space, then the logarithmic norm is the smallest number
\mu(A)
x
\real\langlex,Ax\rangle\leq\mu(A) ⋅ \|x\|2
Unlike the original definition, the latter expression also allows
A
\|A\|2=\supx ≠ {
\langleAx,Ax\rangle | |
\langlex,x\rangle |
Basic properties of the logarithmic norm of a matrix include:
\mu(zI)=\real(z)
\mu(A)\leq\|A\|
\mu(\gammaA)=\gamma\mu(A)
\gamma>0
\mu(A+zI)=\mu(A)+\real(z)
\mu(A+B)\leq\mu(A)+\mu(B)
\alpha(A)\leq\mu(A)
\alpha(A)
A
\|etA\|\leqet\mu(A)
t\geq0
\mu(A)<0 ⇒ \|A-1\|\leq-1/\mu(A)
The logarithmic norm of a matrix can be calculated as follows for the three most common norms. In these formulas,
aij
i
j
A
\mu1(A)=\sup\limitsj\left(\real(ajj)+\sum\limits|aij|\right)
\displaystyle\mu2(A)=λmax\left(
A+AT | |
2 |
\right)
\muinfty(A)=\sup\limitsi\left(\real(aii)+\sum\limits|aij|\right)
The logarithmic norm is related to the extreme values of the Rayleigh quotient. It holds that
-\mu(-A)\leq{
xTAx | |
xTx |
x ≠ 0
λk
A
-\mu(-A)\leq\realλk\leq\mu(A)
A matrix with
-\mu(-A)>0
\mu(A)<0
\|A-1\|\leq-{
1 | |
\mu(A) |
Both the bounds on the inverse and on the eigenvalues hold irrespective of the choice of vector (matrix) norm. Some results only hold for inner product norms, however. For example, if
R
\real(z)\leq0 ⇒ |R(z)|\leq1
\mu(A)\leq0 ⇒ \|R(A)\|\leq1.
The logarithmic norm plays an important role in the stability analysis of a continuous dynamical system
x |
=Ax
xn+1=Axn
In the simplest case, when
A
λ
|λ|\leq1
\realλ\leq0
A
\|A\|\leq1
etAx(0)
\|etA\|\leq1
t\geq0
\mu(A)\leq0
\|x\|
Runge–Kutta methods for the numerical solution of
x |
=Ax
xn+1=R(hA) ⋅ xn
R
h
|R(z)|\leq1
\real(z)\leq0
\mu(A)\leq0
\|R(hA)\|\leq1
Retaining the same form, the results can, under additional assumptions, be extended to nonlinear systems as well as to semigroup theory, where the crucial advantage of the logarithmic norm is that it discriminates between forward and reverse time evolution and can establish whether the problem is well posed. Similar results also apply in the stability analysis in control theory, where there is a need to discriminate between positive and negative feedback.
In connection with differential operators it is common to use inner products and integration by parts. In the simplest case we consider functions satisfying
u(0)=u(1)=0
\langleu,v\rangle=
1 | |
\int | |
0 |
uvdx.
\langleu,u''\rangle=-\langleu',u'\rangle\leq-\pi2\|u\|2,
\sin\pix
-\pi2
\langleu,Au\rangle\leq-\pi2\|u\|2
A=d2/dx2
\mu({ | d2 |
dx2 |
\langleu,Au\rangle>0
-d2/dx2
A
\mu(-A)<0
If a finite difference method is used to solve
-u''=f
Tu=f
T
-\mu(-T)>0
T
These results carry over to the Poisson equation as well as to other numerical methods such as the Finite element method.
For nonlinear operators the operator norm and logarithmic norm are defined in terms of the inequalities
l(f) ⋅ \|u-v\|\leq\|f(u)-f(v)\|\leqL(f) ⋅ \|u-v\|,
L(f)
f
l(f)
m(f) ⋅ \|u-v\|2\leq\langleu-v,f(u)-f(v)\rangle\leqM(f) ⋅ \|u-v\|2,
u
v
D
f
M(f)
f
l(f)
m(f)=-M(-f)
l(f)=L(f-1)-1
L(f-1)
f
For nonlinear operators that are Lipschitz continuous, it further holds that
M(f)=
\lim | { | |
h → 0+ |
L(I+hf)-1 | |
h |
f
D
L(f)=\supx\in\|f'(x)\|
\displaystyleM(f)=\supx\in\mu(f'(x)).
f'(x)
f
An operator having either
m(f)>0
M(f)<0
L(f)<1
The theory becomes analogous to that of the logarithmic norm for matrices, but is more complicated as the domains of the operators need to be given close attention, as in the case with unbounded operators. Property 8 of the logarithmic norm above carries over, independently of the choice of vector norm, and it holds that
M(f)<0 ⇒ L(f-1)\leq-{
1 | |
M(f) |