Detalls del llibre
The greatest original work on forecasting ever published. By a master of the post-Kalman era. Professor O'Reilly brings a lifetime's engineering experience, and not a little scholarship, to an enduring problem. The result: a completely new theory of filtering and prediction for causal dynamical system models subject to significant disturbance uncertainty. Any causal dynamical system model can be used.
Noa prioriknowledge of the model uncertainties is required. Estimation of uncertain dynamical systems, it turns out, is a modelling problem. With necessary model validation. The criterion for high-fidelity signal reconstruction is how closely the signal estimates resemble the measured output data of the actual dynamical system.
In contradistinction to the Kalman off-line nominal design approach, the causal estimation approach is an on-line model tuning approach. This physical approach places estimation of dynamical systems on an experimental footing, akin to classical physics and engineering. And closer to present day industrial practice. Both causal and Kalman approaches are evaluated within twentieth century filtering and prediction theory. The new estimator is completely general, non-statistical, and very easy to use.
- Autor/a J. Patrick (The Johns Hopkins University) Reilly
- ISBN13 9781836282860
- ISBN10 1836282869
- Pàgines 160
- Any Edició 2025
- Fecha de publicación 28/06/2025
- Idioma Alemany, Francès
Ressenyes i valoracions
New Approach to Forecasting (Alemany, Francès)
- De
- J. Patrick (The Johns Hopkins University) Reilly
- |
- Troubador Publishing Limited (2025)
- 9781836282860



