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CHAOS-REGULARIZATION HYBRID ALGORITHM FOR NONLINEAR TWO-DIMENSIONAL INVERSE HEAT CONDUCTION PROBLEM
作者姓名:王登刚  刘迎曦  李守巨
作者单位:1 Department of Building Engineering,Tongji University,Shanghai 200092,P R China; 2 State Key Laboratory of Structural Analysis of Industrial Equipment,Dalian University of Technology,Dalian 116024,P
基金项目:theNationalNaturalScienceFoundationofChina ( 1 0 0 72 0 1 4 )
摘    要:IntroductionAsakindofimportantthermalcharacteristicsofthematerial,thermalconductivitymustbedeterminedtomakequantificationalanalysisoftemperaturefield .Ithasbeentakendueattentiontoestimatethethermalconductivityfrominnerand/orboundarytemperaturemeasureme…

收稿时间:3 September 1999

Chaos-regularization hybrid algorithm for nonlinear two-dimensional inverse heat conduction problem
Wang Deng-gang Doctor,Liu Ying-xi,Li Shou-ju.CHAOS-REGULARIZATION HYBRID ALGORITHM FOR NONLINEAR TWO-DIMENSIONAL INVERSE HEAT CONDUCTION PROBLEM[J].Applied Mathematics and Mechanics(English Edition),2002,23(8):973-980.
Authors:Wang Deng-gang Doctor  Liu Ying-xi  Li Shou-ju
Institution:1. Department of Building Engineering, Tongji University, Shanghai 200092, P R China
2. State Key Laboratory of Structural Analysis of Industrial Equipment,Delian,University of Technology, Delian 116024, P R China)
Abstract:A numerical model of nonlinear two_dimensional steady inverse heat conduction problem was established considering the thermal conductivity changing with temperature. Combining the chaos optimization algorithm with the gradient regularization method, a chaos_regularization hybrid algorithm was proposed to solve the established numerical model. The hybrid algorithm can give attention to both the advantages of chaotic optimization algorithm and those of gradient regularization method. The chaos optimization algorithm was used to help the gradient regularization method to escape from local optima in the hybrid algorithm. Under the assumption of temperature_dependent thermal conductivity changing with temperature in linear rule, the thermal conductivity and the linear rule were estimated by using the present method with the aid of boundary temperature measurements. Numerical simulation results show that good estimation on the thermal conductivity and the linear function can be obtained with arbitrary initial guess values, and that the present hybrid algorithm is much more efficient than conventional genetic algorithm and chaos optimization algorithm.
Keywords:inverse problem  inverse heat conduction problem  thermal conductivity  global optimum  hybrid algorithm  chaos optimization algorithm  gradient regularization method
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