TY - JOUR
T1 - Abstracted Model Reduction
T2 - A General Framework for Efficient Interconnected System Reduction
AU - Poort, Luuk
AU - Janssen, Lars A.L.
AU - Besselink, Bart
AU - Fey, Rob H.B.
AU - van de Wouw, Nathan
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025/3/26
Y1 - 2025/3/26
N2 - This article introduces the concept of abstracted model reduction: a framework to improve the tractability of structure-preserving methods for the complexity reduction of interconnected system models. To effectively reduce high-order, interconnected models, it is usually not sufficient to consider the subsystems separately. Instead, structure-preserving reduction methods should be employed, which consider the interconnected dynamics to select which subsystem dynamics to retain in reduction. However, structure-preserving methods are often not computationally tractable. To overcome this issue, we propose to connect each subsystem model to a low-order abstraction of its environment to reduce it both effectively and efficiently. By means of a high-fidelity structural dynamics model from the lithography industry, we show, on the one hand, significantly increased accuracy with respect to standard subsystem reduction and, on the other hand, similar accuracy to direct application of expensive structure-preserving methods, while significantly reducing computational cost. Furthermore, we formulate a systematic approach to automatically determine sufficient abstraction and reduction orders to preserve stability and guarantee a given frequency-dependent error specification. We apply this approach to the lithography equipment use case and show that the environment model can indeed be reduced by over 80% without significant loss in the accuracy of the reduced interconnected model.
AB - This article introduces the concept of abstracted model reduction: a framework to improve the tractability of structure-preserving methods for the complexity reduction of interconnected system models. To effectively reduce high-order, interconnected models, it is usually not sufficient to consider the subsystems separately. Instead, structure-preserving reduction methods should be employed, which consider the interconnected dynamics to select which subsystem dynamics to retain in reduction. However, structure-preserving methods are often not computationally tractable. To overcome this issue, we propose to connect each subsystem model to a low-order abstraction of its environment to reduce it both effectively and efficiently. By means of a high-fidelity structural dynamics model from the lithography industry, we show, on the one hand, significantly increased accuracy with respect to standard subsystem reduction and, on the other hand, similar accuracy to direct application of expensive structure-preserving methods, while significantly reducing computational cost. Furthermore, we formulate a systematic approach to automatically determine sufficient abstraction and reduction orders to preserve stability and guarantee a given frequency-dependent error specification. We apply this approach to the lithography equipment use case and show that the environment model can indeed be reduced by over 80% without significant loss in the accuracy of the reduced interconnected model.
KW - Accuracy guarantee
KW - interconnected systems
KW - model reduction
KW - stability preservation
KW - structural dynamics
UR - http://www.scopus.com/inward/record.url?scp=105001531467&partnerID=8YFLogxK
U2 - 10.1109/TCST.2025.3550027
DO - 10.1109/TCST.2025.3550027
M3 - Article
AN - SCOPUS:105001531467
SN - 1063-6536
VL - XX
JO - IEEE Transactions on Control Systems Technology
JF - IEEE Transactions on Control Systems Technology
IS - X
M1 - 10938749
ER -