Generalized pattern search algorithms with adaptive precision function evaluations

In the literature on generalized pattern search algorithms, convergence to a stationary point of a once continuously differentiable cost function is established under the assumption that the cost function can be evaluated exactly. However, there is a large class of engineering problems where the numerical evaluation of the cost function involves the solution of systems of differential algebraic equations. Since the termination criteria of the numerical solvers often depend on the design parameters, computer code for solving these systems usually defines a numerical approximation to the cost function that is discontinuous with respect to the design parameters. Standard generalized pattern search algorithms have been applied heuristically to such problems, but no convergence properties have been stated. In this paper we extend a class of generalized pattern search algorithms to a form that uses adaptive precision approximations to the cost function. These numerical approximations need not define a continuous function. Our algorithms can be used for solving linearly constrained problems with cost functions that are at least locally Lipschitz continuous. Assuming that the cost function is smooth, we prove that our algorithms converge to a stationary point. Under the weaker assumption that the cost function is only locally Lipschitz continuous, wemore » show that our algorithms converge to points at which the Clarke generalized directional derivatives are nonnegative in predefined directions. An important feature of our adaptive precision scheme is the use of coarse approximations in the early iterations, with the approximation precision controlled by a test. Such an approach leads to substantial time savings in minimizing computationally expensive functions.« less

[1]  Robert Hooke,et al.  `` Direct Search'' Solution of Numerical and Statistical Problems , 1961, JACM.

[2]  F. Clarke Optimization And Nonsmooth Analysis , 1983 .

[3]  Robert Michael Lewis,et al.  Pattern Search Methods for Linearly Constrained Minimization , 1999, SIAM J. Optim..

[4]  Virginia Torczon,et al.  Using approximations to accelerate engineering design optimization , 1998 .

[5]  John E. Dennis,et al.  A framework for managing models in nonlinear optimization of computationally expensive functions , 1999 .

[6]  Michael W. Trosset,et al.  On the Use of Direct Search Methods for Stochastic Optimization , 2000 .

[7]  Virginia Torczon,et al.  On the Convergence of Pattern Search Algorithms , 1997, SIAM J. Optim..

[8]  E. Polak,et al.  Computational methods in optimization : a unified approach , 1972 .

[9]  Robert Michael Lewis,et al.  Pattern Search Algorithms for Bound Constrained Minimization , 1999, SIAM J. Optim..

[10]  J. Dennis,et al.  Direct Search Methods on Parallel Machines , 1991 .

[11]  A. J. Booker,et al.  A rigorous framework for optimization of expensive functions by surrogates , 1998 .

[12]  Charles Audet,et al.  Analysis of Generalized Pattern Searches , 2000, SIAM J. Optim..

[13]  Chandler Davis THEORY OF POSITIVE LINEAR DEPENDENCE. , 1954 .

[14]  Elijah Polak,et al.  Consistent Approximations and Approximate Functions and Gradients in Optimal Control , 2002, SIAM J. Control. Optim..

[15]  Elijah Polak,et al.  Optimization: Algorithms and Consistent Approximations , 1997 .

[16]  C. J. Price,et al.  Positive Bases in Numerical Optimization , 2002, Comput. Optim. Appl..