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Nonlinear Stochastic Programming Involving <i>CVaR</i> in the Objective and Constraints

Netiesinis stochastinis programavimas įterpiant sąlyginę riziką į tikslo funkciją ir ribojimus.

作     者:Dumskis, Valerijonas Sakalauskas, Leonidas 

作者机构:Siauliai Univ Inst Informat Math & E Studies Shiauliai Lithuania Vilnius Univ Inst Math & Informat Dept Operat Res Vilnius Lithuania 

出 版 物:《INFORMATICA》 (Informatica)

年 卷 期:2015年第26卷第4期

页      面:569-591页

核心收录:

学科分类:08[工学] 0701[理学-数学] 0812[工学-计算机科学与技术(可授工学、理学学位)] 

主  题:stochastic programming Monte Carlo method stochastic gradient CVAR 

摘      要:The nonlinear stochastic programming problem involving CVaR in the objective and constraints is considered. Solving the latter problem in a framework of bi-level stochastic programming, the extended Lagrangian is introduced and the related KKT conditions are derived. Next, the sequential simulation-based approach has been developed to solve stochastic problems with CVaR by finite sequences of Monte Carlo samples. The approach considered is grounded by the rule for iterative regulation of the Monte Carlo sample size and the stochastic termination procedure, taking into account the stochastic model risk. The rule is introduced to regulate the size of the Monte Carlo sample inversely proportionally to the square of the stochastic gradient norm allows us to solve stochastic nonlinear problems in a rational way and ensures the convergence. The proposed termination procedure enables us to test the KKT conditions in a statistical way and to evaluate the confidence intervals of the objective and constraint functions in a statistical way as well. The results of the Monte Carlo simulation with test functions and solution of the practice sample of trade-offs of gas purchases, storage and service reliability, illustrate the convergence of the approach considered as well as the ability to solve in a rational way the nonlinear stochastic programming problems handling CVaR in the objective and constraints, with an admissible accuracy, treated in a statistical manner.

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