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Theoretische Grundlagen, Methoden, Anwendungen 47. Jahrgang · 1999

Heft 9 · Seite 397-448

Anwendungsaufsatz · Application Paper

E. Arnold, H. Linke, W. Siebert

3 9 9 Ein modell-prädiktives Regelungsverfahren zur optimierten

Wasserbewirtschaftung des Mittellandkanals und des Elbe-Seitenkanals Model predictive control application for operational water management of the canal system Mittellandkanal/Elbe-Seitenkanal

B. Scharaw, T. Westerhoff, H. Willmitzer

4 0 8 Aufbau einer modellgestützten Bewirtschaftung und On-Line-Überwachung eines Talsperrensystems

Model based Management and Online-Monitoring of a Reservoir System M. G. Kliffken, M. H. Gojny

4 1 4 Numerisch robuste Implementierung von Abtastreglern für Flugsteuerungsaktuatoren

Numerical Robust Implementation of Sampled-Data Controllers for Flight Control Actuators

Theoretische Arbeit · Theoretical Paper

S. Hafner

421 Ein spezielles Neuronales Netz zur Merkmalsbildung für Klassifikatoren A Special Neural Net for Features Extraction for Classifiers

P. Kortmann, H. Unbehauen

4 2 9 Ein neues Verfahren zur Strukturidentifikation bei funktionalen Fuzzy-Modellen A new Structure Identification Method for Functional-Type Fuzzy Models

Software-Werkzeuge · Software Tools

T. Eymann, R. Tracht

4 3 9 Feldbus-Toolbox - ein Werkzeug zur Simulation von Feldbussystemen Fieldbus-Toolbox - a Tool for the Simulation of Fieldbus Systems

S. Pawletta, A. Westphal, W. Drewelow, T. Pawletta

441 Die DP-Toolbox: Verteilte und parallele Verarbeitung mit MATLAB The DP-Toolbox: Distributed and Parallel Processing with MATLAB

Theorie für den Anwender • Theory for the User

M. Otter, H. Elmqvist, S. E. Mattsson

A 2 5 Objektorientierte Modellierung Physikalischer Systeme, Teil 7

Rubriken · Columns

4 4 4 Persönliches - Personal Information 4 4 6 Dissertationen · Dissertations

at - Automatisierungstechnik 47 (1999) 9 CC Oldenbourg Verlag 397

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