4.6 Article

Online cycle detection for models with mode-dependent input and output dependencies

Journal

JOURNAL OF SYSTEMS ARCHITECTURE
Volume 115, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.sysarc.2021.102017

Keywords

Instantaneous cycle; Modelling; cyber?physical system; Simulation; Causality loop

Funding

  1. Delta-NTU Corporate Lab for cyber-physical Systems
  2. Delta Electronics Inc, Taiwan
  3. National Research Foundation (NRF) Singapore under the Corp Lab@UniversityScheme

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This paper introduces an online method to address the cycle detection problem in co-simulation and component-based modeling, using an oracle as a central source of information. The method adaptively chooses from three data structures in runtime to detect the presence of instantaneous cycles during mode transitions, aiming to reduce model analysis time and improve simulation performance.
In the fields of co-simulation and component-based modelling, designers import models as building blocks to create a composite model that provides more complex functionalities. Modelling tools perform instantaneous cycle detection (ICD) on the composite models having feedback loops to reject the models if the loops are mathematically unsound and to improve simulation performance. In this case, the analysis relies heavily on the availability of dependency information from the imported models. However, the cycle detection problem becomes harder when the model?s input to output dependencies are mode-dependent, i.e. changes for certain events generated internally or externally as inputs. The number of possible modes created by composing such models increases significantly and unknown factors such as environmental inputs make the offline (statical) ICD a difficult task. In this paper, an online ICD method is introduced to address this issue for the models used in cyber?physical systems. The method utilises an oracle as a central source of information that can answer whether the individual models can make mode transition without creating instantaneous cycles. The oracle utilises three types of data-structures created offline that are adaptively chosen during online (runtime) depending on the frequency as well as the number of models that make mode transitions. During the analysis, the models used online are stalled from running, resulting in the discrepancy with the physical system. The objective is to detect an absence of the instantaneous cycle while minimising the stall time of the model simulation that is induced from the analysis. The benchmark results show that our method is an adequate alternative to the offline analysis methods and significantly reduces the analysis time.

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