12.7 Derivative-Function Surrogate Models
Core idea¶
Derivative-Function Surrogate Models must be treated as a system-level decision rather than an isolated technique. For a floating wind turbine modeled in OpenFAST and with reduced, LPV, and derivative-function surrogates, state what is fixed, what is optimized, what information is available, and what equations define feasibility.
The relevant quantities are high-fidelity , surrogate , design , and model error . The chapter-level formulation is
For this section, trace how the choice changes training data, the active constraints, and the implementable engineering design. A method is useful only when its assumptions are explicit and its result answers the same system question as the baseline.
Engineering interpretation¶
Ask three questions:
Which physical, informational, computational, or economic resource changed?
Which objective component or active constraint made the change valuable?
Does the conclusion survive model, disturbance, initialization, uncertainty, and implementation checks?
A practical action is to identify reduced model. Record units and assumptions before optimization, report component objectives and margins afterward, and verify the result using an independent calculation or higher-fidelity model.