报告题目 (Title):Continual learning for Least square collocation methods for PDEs(最小二乘配点法求解偏微分方程的持续学习策略)
报告人 (Speaker):张中强 教授 Worcester Polytechnic Institute
报告时间 (Time):2026年6月18日(周四) 15:00
报告地点 (Place):校本部GJ303
邀请人(Inviter):李常品、蔡敏
报告摘要:A least-squares collocation method is presented for stiff PDEs with small parameters. By embedding these parameters directly into the formulation, the scheme resolves sharp gradients without auxiliary basis enrichment or parameter tuning. The method follows a continuation path—starting from larger parameter values and gradually approaching the target—to enhance stability in highly stiff regimes. Minimizing the residual at collocation points yields a compact, robust approach for capturing large derivatives. Numerical tests verify its accuracy, and the same framework extends naturally to optimal control problems through least-squares enforcement of state and optimality conditions.