NyctiDB: A non-relational bioprocesses modeling database supported by an ontology
Strategies to exploit and enable the digitalization of industrial processes are on course to become game-changers in optimizing (bio)chemical facilities. To achieve this, these industries face an increasing need for process models and, as importantly, an efficient way to store the models and data/in...
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Veröffentlicht in: | Frontiers in chemical engineering 2022-12, Vol.4 |
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Sprache: | eng |
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Zusammenfassung: | Strategies to exploit and enable the digitalization of industrial processes are on course to become game-changers in optimizing (bio)chemical facilities. To achieve this, these industries face an increasing need for process models and, as importantly, an efficient way to store the models and data/information. Therefore, this work proposes developing an online information storage system that can facilitate the reuse and expansion of process models and make them available to the digitalization cycle. This system is named
NyctiDB
, and it is a novel non-relational database coupled with a bioprocess ontology. The ontology supports the selection and classification of bioprocess models focused information, while the database is in charge of the online storage of said information. Through a series of online collections,
NyctiDB
contains essential knowledge for the design, monitoring, control, and optimization of a bioprocess based on its mathematical model. Once
NyctiDB
has been implemented, its applicability and usefulness are demonstrated through two applications. Application A shows how
NyctiDB
is integrated inside the software architecture of an online educational bioprocess simulator. This implies that
NyctiDB
provides the information for the visualization of different bioprocess behaviours and the modifications of the models in the software. Moreover, the information related to the parameters and conditions of each model is used to support the users’ understanding of the process. Additionally, application B illustrates that
NyctiDB
can be used as AI enabler to further the research in this field through open-source and reliable data. This can, in fact, be used as the information source for the AI frameworks when developing, for example, hybrid models or smart expert systems for bioprocesses. Henceforth, this work aims to provide a blueprint on how to collect bioprocess modeling information and connect it to facilitate and empower the Internet-of-Things paradigm and the digitalization of the biomanufacturing industries. |
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ISSN: | 2673-2718 2673-2718 |
DOI: | 10.3389/fceng.2022.1036867 |