
pmid: 15363651
Recursive state and parameter reconstruction is a well-established field in control theory. In the current paper we derive a continuous-discrete version of recursive prediction error algorithm and apply the filter in an environmental and biological setting as a possible alternative to the well-known extended Kalman filter. The framework from which the derivation is started is the so-called 'innovations-format' of the (continuous time) system model, including (discrete time) measurements. After the algorithm has been motivated and derived, it is subsequently applied to hypothetical and 'real-life' case studies including reconstruction of biokinetic parameters and parameters characterizing the dynamics of a river in the United Kingdom. Advantages and characteristics of the method are discussed.
Rhodamines, Parameter reconstruction, Models, Theoretical, Filtering in stochastic control theory, Extended Kalman filter, Bioreactors, Rivers, parameter estimator, Nonlinear systems, Computer Simulation, Biomass, General biology and biomathematics, Algorithms, Ecosystem, Filtration
Rhodamines, Parameter reconstruction, Models, Theoretical, Filtering in stochastic control theory, Extended Kalman filter, Bioreactors, Rivers, parameter estimator, Nonlinear systems, Computer Simulation, Biomass, General biology and biomathematics, Algorithms, Ecosystem, Filtration
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