In this paper, by designing a normalized nonmonotone search strategy with the Barzilai--Borwein-type step-size, a novel local minimax method (LMM), which is a globally convergent iterative method, is proposed and analyzed to find multiple (unstable) saddle points of nonconvex functionals in Hilbert spaces. Compared to traditional LMMs with monotone search strategies, this approach, which does not require strict decrease of the objective functional value at each iterative step, is observed to converge faster with less computations. Firstly, based on a normalized iterative scheme coupled with a local peak selection that pulls the iterative point back onto the solution submanifold, by generalizing the Zhang--Hager (ZH) search strategy in the optimization theory to the LMM framework, a kind of normalized ZH-type nonmonotone step-size search strategy is introduced, and then a novel nonmonotone LMM is constructed. Its feasibility and global convergence results are rigorously carried out under the relaxation of the monotonicity for the functional at the iterative sequences. Secondly, in order to speed up the convergence of the nonmonotone LMM, a globally convergent Barzilai--Borwein-type LMM (GBBLMM) is presented by explicitly constructing the Barzilai--Borwein-type step-size as a trial step-size of the normalized ZH-type nonmonotone step-size search strategy in each iteration. Finally, the GBBLMM algorithm is implemented to find multiple unstable solutions of two classes of semilinear elliptic boundary value problems with variational structures: one is the semilinear elliptic equations with the homogeneous Dirichlet boundary condition and another is the linear elliptic equations with semilinear Neumann boundary conditions. Extensive numerical results indicate that our approach is very effective and speeds up the LMMs significantly.
翻译:在本文中, 通过设计一种与巴齐莱-博尔文类型的步式标准非monoone搜索策略, 设计了一个与巴齐莱- 博尔文类型的标准非monoone 搜索策略, 提出并分析了一种新的本地迷你方法(LMM), 这是一种全球趋同迭代迭代迭代的迭代式迭代式迭代式方法( LMM ), 以寻找Hilbert 空间中非convex 功能的多重( 不稳定) 座垫点。 与传统的LMM( LM) 相比, 这种方法并不要求严格降低每个迭接接代步骤的客观功能值。 首先, 基于一个正常的迭代式调和当地峰值选择, 将迭代式的货币递升至解决方案的顶替式调回至下层, 将张- 哈格(ZH) 搜索策略与LMMM( ) 优化框架中的多位( Z- H) 平级双级双级双级双级双级双级双级双级的LMML( 将LMMML- mal- mal- mal- mal- mal- deal- deal- deal- deal- deal- demoal) ral- dealal- deg- deg- deg) ral- deal- sal- ral- deal- sal- ral- ral- sal- ralxxxxxxxxxxxxxxxx,, 。