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Stochastic Stability of Differential Equations in Abstract Spaces [Pehme köide]

(Tianjin Normal University, China)
  • Formaat: Paperback / softback, 276 pages, kõrgus x laius x paksus: 228x152x16 mm, kaal: 420 g, Worked examples or Exercises
  • Sari: London Mathematical Society Lecture Note Series
  • Ilmumisaeg: 02-May-2019
  • Kirjastus: Cambridge University Press
  • ISBN-10: 1108705170
  • ISBN-13: 9781108705172
Teised raamatud teemal:
  • Formaat: Paperback / softback, 276 pages, kõrgus x laius x paksus: 228x152x16 mm, kaal: 420 g, Worked examples or Exercises
  • Sari: London Mathematical Society Lecture Note Series
  • Ilmumisaeg: 02-May-2019
  • Kirjastus: Cambridge University Press
  • ISBN-10: 1108705170
  • ISBN-13: 9781108705172
Teised raamatud teemal:
The stability of stochastic differential equations in abstract, mainly Hilbert, spaces receives a unified treatment in this self-contained book. It covers basic theory as well as computational techniques for handling the stochastic stability of systems from mathematical, physical and biological problems. Its core material is divided into three parts devoted respectively to the stochastic stability of linear systems, non-linear systems, and time-delay systems. The focus is on stability of stochastic dynamical processes affected by white noise, which are described by partial differential equations such as the Navier–Stokes equations. A range of mathematicians and scientists, including those involved in numerical computation, will find this book useful. It is also ideal for engineers working on stochastic systems and their control, and researchers in mathematical physics or biology.

The stability of stochastic differential equations in abstract, mainly Hilbert, spaces receives a unified treatment in this self-contained book. It covers basic theory as well as computational techniques. It will be useful for researchers across numerical computation, engineering, and mathematical physics and biology.

Arvustused

'The text itself is rather detailed, and therefore can be understood by graduate students and young researchers who have taken a solid course in stochastic analysis. Many examples are provided throughout the text to explain the finer points in the results.' Mar´a J. Garrido-Atienza, MathSciNet

Muu info

Presents a unified treatment of stochastic differential equations in abstract, mainly Hilbert, spaces.
Preface vii
1 Preliminaries 1(45)
1.1 Linear Operators, Semigroups, and Examples
1(15)
1.2 Stochastic Processes and Martingales
16(6)
1.3 Wiener Processes and Stochastic Integration
22(4)
1.4 Stochastic Differential Equations
26(9)
1.5 Definitions and Methods of Stochastic Stability
35(9)
1.6 Notes and Comments
44(2)
2 Stability of Linear Stochastic Differential Equations 46(52)
2.1 Deterministic Linear Systems
46(15)
2.2 Lyapunov Equations and Stochastic Stability
61(21)
2.3 Systems with Boundary Noise
82(6)
2.4 Exponentially Stable Stationary Solutions
88(4)
2.5 Some Examples
92(3)
2.6 Notes and Comments
95(3)
3 Stability of Nonlinear Stochastic Differential Equations 98(80)
3.1 An Extension of Linear Stability Criteria
98(7)
3.2 Comparison Approach
105(3)
3.3 Nonautonomous Stochastic Systems
108(14)
3.4 Stability in Probability and Sample Path
122(9)
3.5 Lyapunov Function Characterization
131(12)
3.6 Two Applications
143(7)
3.7 Invariant Measures and Ultimate Boundedness
150(9)
3.8 Decay Rate
159(9)
3.9 Stabilization of Systems by Noise
168(7)
3.10 Notes and Comments
175(3)
4 Stability of Stochastic Functional Differential Equations 178(48)
4.1 Deterministic Systems
178(14)
4.2 Linear Systems with Additive Noise
192(4)
4.3 Linear Systems with Multiplicative Noise
196(10)
4.4 Stability of Nonlinear Systems
206(17)
4.5 Notes and Comments
223(3)
5 Some Applications Related to Stochastic Stability 226(19)
5.1 Applications in Mathematical Biology
226(6)
5.2 Applications in Mathematical Physics
232(7)
5.3 Applications in Stochastic Control
239(4)
5.4 Notes and Comments
243(2)
Appendix 245(7)
A Proof of Theorem 4.1.5
245(2)
B Proof of Proposition 4.1.7
247(1)
C Proof of Proposition 4.1.10
248(2)
D Proof of Proposition 4.1.14
250(2)
References 252(13)
Index 265
Kai Liu is a mathematician at the University of Liverpool. His research interests include stochastic analysis, both deterministic and stochastic partial differential equations, and stochastic control. His recent research activities focus on stochastic functional differential equations in abstract spaces. He is a member of the editorial boards of several international journals including the Journal of Stochastic Analysis and Applications and Statistics and Probability Letters.