@conference{Gomez:RE:2018,
title = {TemporalEMF: A Temporal Metamodeling Framework},
author = {Abel G\'{o}mez and Jordi Cabot and Manuel Wimmer},
editor = {Juan C. Trujillo and Karen C. Davis and Xiaoyong Du and Zhanhuai Li and Tok Wang Ling and Guoliang Li and Li Lee Mong},
doi = {10.1007/978-3-030-00847-5_26},
isbn = {978-3-030-00847-5},
year = {2018},
date = {2018-09-26},
booktitle = {Conceptual Modeling},
volume = {11157},
pages = {365--381},
publisher = {Springer International Publishing},
address = {Cham},
abstract = {Existing modeling tools provide direct access to the most current version of a model but very limited support to inspect the model state in the past. This typically requires looking for a model version (usually stored in some kind of external versioning system like Git) roughly corresponding to the desired period and using it to manually retrieve the required data. This approximate answer is not enough in scenarios that require a more precise and immediate response to temporal queries like complex collaborative co-engineering processes or runtime models.
In this paper, we reuse well-known concepts from temporal languages to propose a temporal metamodeling framework, called TemporalEMF, that adds native temporal support for models. In our framework, models are automatically treated as temporal models and can be subjected to temporal queries to retrieve the model contents at different points in time. We have built our framework on top of the Eclipse Modeling Framework (EMF). Behind the scenes, the history of a model is transparently stored in a NoSQL database. We evaluate the resulting TemporalEMF framework with an Industry 4.0 case study about a production system simulator. The results show good scalability for storing and accessing temporal models without requiring changes to the syntax and semantics of the simulator.},
keywords = {Model Persistence, Model-Driven Engineering (MDE), Temporal Models},
pubstate = {published},
tppubtype = {conference}
}