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Relative Optimization Of Continuoustime And Continuousstate Stochastic Systems 1st Ed 2020 Xiren Cao

  • SKU: BELL-11026032
Relative Optimization Of Continuoustime And Continuousstate Stochastic Systems 1st Ed 2020 Xiren Cao
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Relative Optimization Of Continuoustime And Continuousstate Stochastic Systems 1st Ed 2020 Xiren Cao instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 5.26 MB
Pages: 384
Author: Xi-Ren Cao
ISBN: 9783030418458, 3030418456
Language: English
Year: 2020
Edition: 1st ed. 2020

Product desciption

Relative Optimization Of Continuoustime And Continuousstate Stochastic Systems 1st Ed 2020 Xiren Cao by Xi-ren Cao 9783030418458, 3030418456 instant download after payment.

This monograph applies the relative optimization approach to time nonhomogeneous continuous-time and continuous-state dynamic systems. The approach is intuitively clear and does not require deep knowledge of the mathematics of partial differential equations. The topics covered have the following distinguishing features: long-run average with no under-selectivity, non-smooth value functions with no viscosity solutions, diffusion processes with degenerate points, multi-class optimization with state classification, and optimization with no dynamic programming.

The book begins with an introduction to relative optimization, including a comparison with the traditional approach of dynamic programming. The text then studies the Markov process, focusing on infinite-horizon optimization problems, and moves on to discuss optimal control of diffusion processes with semi-smooth value functions and degenerate points, and optimization of multi-dimensional diffusion processes. The book concludes with a brief overview of performance derivative-based optimization.

Among the more important novel considerations presented are:

  • the extension of the Hamilton–Jacobi–Bellman optimality condition from smooth to semi-smooth value functions by derivation of explicit optimality conditions at semi-smooth points and application of this result to degenerate and reflected processes;
  • proof of semi-smoothness of the value function at degenerate points;
  • attention to the under-selectivity issue for the long-run average and bias optimality; 
  • discussion of state classification for time nonhomogeneous continuous processes and multi-class optimization; and
  • development of the multi-dimensional Tanaka formula for semi-smooth functions and application of this formula to stochastic control of multi-dimensional systems with degenerate points.

The book will be of interest to researchers and students in the field of stochastic control and performance optimization alike.

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