Shape invariant model approach for functional data analysis in uncertainty and sensitivity studies
Dynamic simulators model systems evolving over time. Often, it operates iteratively over fixed number of time-steps. The output of such simulator can be considered as time series or discrete functional outputs. Metamodeling is an e ective method to approximate demanding computer codes. Numerous meta...
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Zusammenfassung: | Dynamic simulators model systems evolving over time. Often, it operates
iteratively over fixed number of time-steps. The output of such simulator can
be considered as time series or discrete functional outputs. Metamodeling is an
e ective method to approximate demanding computer codes. Numerous metamodeling
techniques are developed for simulators with a single output. Standard approach
to model a dynamic simulator uses the same method also for multi-time series
outputs: the metamodel is evaluated independently at every time step. This can
be computationally demanding in case of large number of time steps. In some
cases, simulator outputs for di erent combinations of input parameters have
quite similar behaviour. In this paper, we propose an application of shape
invariant model approach to model dynamic simulators. This model assumes a
common pattern shape curve and curve-specific di erences in amplitude and
timing are modelled with linear transformations. We provide an e cient
algorithm of transformation parameters estimation and subsequent prediction
algorithm. The method was tested with a CO2 storage reservoir case using an
industrial commercial simulator and compared with a standard single step
approach. The method provides satisfactory predictivity and it does not depend
on the number of involved time steps. |
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DOI: | 10.48550/arxiv.1304.0861 |