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Model order reduction techniques with a posteriori error control for nonlinear robust optimization governed by partial differential equations. (English) Zbl 1428.35644

35Q93 PDEs in connection with control and optimization
49J20 Existence theories for optimal control problems involving partial differential equations
49K20 Optimality conditions for problems involving partial differential equations
90C31 Sensitivity, stability, parametric optimization
93C20 Control/observation systems governed by partial differential equations
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