Parsing Parameter Estimation Problems from Easy-fit to Socs
نویسندگان
چکیده
viii
منابع مشابه
Translating Parameter Estimation Problems From EASY-FIT to SOCS
Mathematical models often involve unknown parameters that must be fit to experimental data. These so-called parameter estimation problems have many applications that may involve differential equations, optimization, and control theory. EASY-FIT and SOCS are two software packages that solve parameter estimation problems [15], [7]. In this thesis, we discuss the design and implementation of a sou...
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