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A combined SQP-IPM algorithm for solving large-scale nonlinear optimization problems

机译:求解大型非线性优化问题的组合SQP-IPM算法

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We consider a combined IPM-SQP method to solve smooth nonlinear optimization problems, which may possess a large number of variables and a sparse Jacobian matrix of the constraints. Basically, the algorithm is a sequential quadratic programming (SQP) method, where the quadratic programming subproblem is solved by a primal-dual interior point method (IPM). A special feature of the algorithm is that the quadratic programming subproblem does not need to become exactly solved. To solve large optimization problems, either a limited-memory BFGS update to approximate the Hessian of the Lagrangian function is applied or the user specifies the Hessian by himself. Numerical results are presented for the 306 small and dense Hock-Schittkowski problems, for 13 large semi-linear elliptic control problems after a suitable discretization, and for 35 examples of the CUTEr test problem collection with more than 5000 variables.
机译:我们考虑使用IPM-SQP组合方法来解决光滑的非线性优化问题,该问题可能具有大量变量和约束的稀疏Jacobian矩阵。基本上,该算法是顺序二次规划(SQP)方法,其中二次规划子问题通过原始对偶内点法(IPM)求解。该算法的一个特殊功能是不需要二次求解子问题。为了解决大型优化问题,可以应用有限内存的BFGS更新来近似拉格朗日函数的Hessian,也可以由用户自己指定Hessian。给出了306个小且密集的Hock-Schittkowski问题,经过适当离散化后的13个大半线性椭圆控制问题以及35个带有5000多个变量的CUTEr测试问题集合示例的数值结果。

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