Software Sensors for Nonlinear Dynamical System
Abstract
Modellingareallifesystemstartswithdefiningitsinputs/outputs,wheretheinputsdependonthe natureoftheactuator(ortotakeactions)andtheoutputsaremeasurements.Ingeneral,someof the outputs are measured using physical sensors, while the unavailable states can be obtained using the so-called software sensors (or observers). For accurate understanding real lifesystem, data about itsstate are usually measured using physical sensors. This can be expensive and makes the system structure cumbersome. Besides, in many cases, it is simply impossible to measure some system information directly. Due to these drawbacks, a solution may be the introduction of the so-called software sensors or observers. These sensors are based on a well-defined system model and provide an accurate estimation of the missing data from the available physical measurements. Actually, obtaining a well-defined mathematical model is not always possible, or the obtained models do not allow obtaining strategies to drive accurate comprehensive conclusion of our system. Therefore, how we can to overcome those difficulties? Using dynamic modelslearning.