Article | Proceedings of the 10<sup>th</sup> International Modelica Conference; March 10-12; 2014; Lund; Sweden | IDOS - (also) a Web Based Tool for Calibrating Modelica Models
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Title:
IDOS - (also) a Web Based Tool for Calibrating Modelica Models
Author:
Radoslaw Pytlak: Warsaw Technical University, Institute of Automatic Control and Robotics, Warsaw, Poland Tomasz Tarnawski: Warsaw Technical University, Institute of Automatic Control and Robotics, Warsaw, Poland
DOI:
10.3384/ecp140961095
Download:
Full text (pdf)
Year:
2014
Conference:
Proceedings of the 10th International Modelica Conference; March 10-12; 2014; Lund; Sweden
Issue:
096
Article no.:
114
Pages:
1095-1104
No. of pages:
10
Publication type:
Abstract and Fulltext
Published:
2014-03-10
ISBN:
978-91-7519-380-9
Series:
Linköping Electronic Conference Proceedings
ISSN (print):
1650-3686
ISSN (online):
1650-3740
Publisher:
Linköping University Electronic Press; Linköpings universitet


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This paper presents a newly deployed server; IDOS; an online-accessible environment providing the service of solving solving optimal control problems. Development and deployment of the Interactive Dynamic Optimization Server is a result of a project funded by NCBiR (National Center for Research and Development) under grant R02-0009-06. One of the outcomes of the project was a modeling language (Dynamic Optimization Modeling Language; DOML) providing a uniform format for defining dynamic optimization problems. DOML is an extension of Modelica language and hance; not only a user can specify his problem in the way he does in Modelica but also (more importantly; for the purpose of thids paper) models created in Modelica for simulation purposes can be easily transferred to DOML for solving their related optimization problems. In particular; Modelica models can be calibrated with the help of our server. The paper tries to illustrate the point in depth. It presents the workings of the server and reviews the scope of solvers implemented; focusing especially on those that can be used for calibrating Modelica models. Special attention is devoted to an algorithm using adjoint equations for evaluating sensitivities of model equations with respect to parameters and to calibrating models described by higher index DAEs.

Keywords: Dynamic optimization; optimal control; model calibration

Proceedings of the 10th International Modelica Conference; March 10-12; 2014; Lund; Sweden

Author:
Radoslaw Pytlak, Tomasz Tarnawski
Title:
IDOS - (also) a Web Based Tool for Calibrating Modelica Models
DOI:
http://dx.doi.org/10.3384/ecp140961095
References:

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Proceedings of the 10th International Modelica Conference; March 10-12; 2014; Lund; Sweden

Author:
Radoslaw Pytlak, Tomasz Tarnawski
Title:
IDOS - (also) a Web Based Tool for Calibrating Modelica Models
DOI:
http://dx.doi.org/10.3384/ecp140961095
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