NFRsTDO v1.2's Terms, Properties, and Relationships -- A Top-Domain
Non-Functional Requirements Ontology
- URL: http://arxiv.org/abs/2302.01096v1
- Date: Thu, 2 Feb 2023 13:33:33 GMT
- Title: NFRsTDO v1.2's Terms, Properties, and Relationships -- A Top-Domain
Non-Functional Requirements Ontology
- Authors: Luis Olsina, Mar\'ia Fernanda Papa, Pablo Becker
- Abstract summary: This pre-print specifies and defines all the Terms, Properties, and Relationships of NFRsTDO v1.2.
NFRsTDO's terms and relationships are mainly extended/reused from ThingFO, Situation (COSituation Core Ontology), ProcessCO (Process Core Ontology), and SituationssTDO.
- Score: 1.6650719629879034
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: This preprint specifies and defines all the Terms, Properties, and
Relationships of NFRsTDO (Non-Functional Requirements Top-Domain Ontology).
NFRsTDO v1.2, whose UML conceptualization is shown in Figure 1 is a slightly
updated version of its predecessor, namely NFRsTDO v1.1. NFRsTDO is an ontology
mainly devoted to quality (non-functional) requirements and quality/cost views,
which is placed at the top-domain level in the context of a multilayer
ontological architecture called FCD-OntoArch (Foundational, Core, Domain, and
instance Ontological Architecture for sciences). Figure 2 depicts its five
tiers, which entail Foundational, Core, Top-Domain, Low-Domain, and Instance.
Each level is populated with ontological components or, in other words,
ontologies. Ontologies at the same level can be related to each other, except
at the foundational level, where only ThingFO (Thing Foundational Ontology) is
found. In addition, ontologies' terms and relationships at lower levels can be
semantically enriched by ontologies' terms and relationships from the higher
levels. NFRsTDO's terms and relationships are mainly extended/reused from
ThingFO, SituationCO (Situation Core Ontology), ProcessCO (Process Core
Ontology), and FRsTDO (Functional Requirements Top-Domain Ontology).
Stereotypes are the used mechanism for enriching NFRsTDO terms. Note that
annotations of updates from the previous version (NFRsTDO v1.1) to the current
one (v1.2) can be found in Appendix A.
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