For optimization problems with linear equality constraints, we prove that the (1,1) block of the inverse KKT matrix remains unchanged when projected onto the nullspace of the constraint matrix. We develop reduced compact representations of the limited-memory inverse BFGS Hessian to compute search directions efficiently when the constraint Jacobian is sparse. Orthogonal projections are implemented by a sparse QR factorization or a preconditioned LSQR iteration. In numerical experiments two proposed trust-region algorithms improve in computation times, often significantly, compared to previous implementations of related algorithms and compared to IPOPT.
翻译:关于线性平等制约的优化问题,我们证明,在向约束矩阵的空格投放时,KKT矩阵的反面(1,1)块保持不变。我们开发了有限的缩略式缩略图,用于在Jacobian的制约稀疏时有效计算搜索方向。正方形预测是通过稀疏的QR因数化或有先决条件的LSQR迭代来实施的。在数字实验中,两种拟议的信任区域算法在计算时间上都有改进,与以前实施的相关算法相比,并与IPOPT相比,往往显著改善。