Understanding Hybrid Spaces: Designing a Spacetime Model to Represent
Dynamic Topologies of Hybrid Spaces
- URL: http://arxiv.org/abs/2403.05221v1
- Date: Fri, 8 Mar 2024 11:18:27 GMT
- Title: Understanding Hybrid Spaces: Designing a Spacetime Model to Represent
Dynamic Topologies of Hybrid Spaces
- Authors: Wolfgang H\"ohl
- Abstract summary: The paper develops atemporal model for the visualization of dynamic topologies of hybrid spaces.
Existing concepts and types of representation of hybrid spaces are presented.
Various dynamic topologies of hybrid spaces were successfully visualized.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: This paper develops a spatiotemporal model for the visualization of dynamic
topologies of hybrid spaces. The visualization of spatiotemporal data is a
well-known problem, for example in digital twins in urban planning. There is
also a lack of a basic ontology for understanding hybrid spaces. The developed
spatiotemporal model has three levels: a level of places and media types, a
level of perception and a level of time and interaction. Existing concepts and
types of representation of hybrid spaces are presented. The space-time model is
tested on the basis of an art exhibition. Two hypotheses guide the accompanying
online survey: (A) there are correlations between media use (modality), the
participants' interactions (creativity) and their perception (understanding of
art) and (B) individual parameters (demographic data, location and situation,
individual knowledge) influence perception (understanding of art). The range,
the number of interactions and the response rate were also evaluated.
The online survey generally showed a positive correlation between media use
(modality) and individual activity (creativity). However, due to the low
participation rate ($P_{TN} = 14$), the survey is unfortunately not very
representative. Various dynamic topologies of hybrid spaces were successfully
visualized. The joint representation of real and virtual places and media types
conveys a new basic understanding of place, range and urban density.
Relationships between modality, Mobility and communicative interaction become
visible. The current phenomenon of multilocality has been successfully mapped.
The space-time model enables more precise class and structure formation, for
example in the development of digital twins. Dynamic topologies of hybrid
spaces, such as in social media, at events or in urban development, can thus be
better represented and compared.
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