Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Understanding Systems through Graph Theory and Dynamic Visualization

View through CrossRef
<title>ABSTRACT</title> <p>As today’s Cyber Physical Systems (CPS) become more and more complex they provide both incredible opportunity and risk. In fact, rapidly growing complexity is a significant impediment to the successful development, integration, and innovation of systems. Over the years, methods to manage system complexity have taken many forms. Model Based Systems Engineering (MBSE) provides organizations a timely opportunity to address the complexities of Cyber Physical Systems. MBSE tools, languages and methods are having a very positive impact but are still in a formative stage and continue to evolve. Moreover, the Systems Modeling Language (SysML) has proven to be a significant enabler to advance MBSE methods given its flexibility and expressiveness. While the strengths of SysML provide clarity and consistency, unfortunately the number of people who know SysML well is relatively small. To bring the full power of MBSE to the larger community, system models represented in SysML can be rendered in a more intuitive form. More specifically, Graph Theory has proven to be very effective in the design, analysis, management, and integration of complex systems. Network Analysis and Design Structure Matrix, both variants of Graph Theory, enable users to model, visualize, and analyze the interactions among the entities of any system. Use of MBSE and Graph Theory together to create dynamic visualization can help teams gain insights, build intuition and ultimately help speed the innovation process.</p>
National Defense Industrial Association
Title: Understanding Systems through Graph Theory and Dynamic Visualization
Description:
<title>ABSTRACT</title> <p>As today’s Cyber Physical Systems (CPS) become more and more complex they provide both incredible opportunity and risk.
In fact, rapidly growing complexity is a significant impediment to the successful development, integration, and innovation of systems.
Over the years, methods to manage system complexity have taken many forms.
Model Based Systems Engineering (MBSE) provides organizations a timely opportunity to address the complexities of Cyber Physical Systems.
MBSE tools, languages and methods are having a very positive impact but are still in a formative stage and continue to evolve.
Moreover, the Systems Modeling Language (SysML) has proven to be a significant enabler to advance MBSE methods given its flexibility and expressiveness.
While the strengths of SysML provide clarity and consistency, unfortunately the number of people who know SysML well is relatively small.
To bring the full power of MBSE to the larger community, system models represented in SysML can be rendered in a more intuitive form.
More specifically, Graph Theory has proven to be very effective in the design, analysis, management, and integration of complex systems.
Network Analysis and Design Structure Matrix, both variants of Graph Theory, enable users to model, visualize, and analyze the interactions among the entities of any system.
Use of MBSE and Graph Theory together to create dynamic visualization can help teams gain insights, build intuition and ultimately help speed the innovation process.
</p>.

Related Results

Graph convolutional neural networks for 3D data analysis
Graph convolutional neural networks for 3D data analysis
(English) Deep Learning allows the extraction of complex features directly from raw input data, eliminating the need for hand-crafted features from the classical Machine Learning p...
Graph Theory Applications in Database Management
Graph Theory Applications in Database Management
Graph theory, which is a branch of discrete mathematics, has emerged as a powerful tool in various domains, including database management. This abstract investigates the ways in wh...
Bootstrapping a Biodiversity Knowledge Graph
Bootstrapping a Biodiversity Knowledge Graph
The "biodiversity knowledge graph" is a nice metaphor for connecting biodiversity data sources, but can we actually build it? Do we have sufficient linked data available? Given tha...
Abstract 902: Explainable AI: Graph machine learning for response prediction and biomarker discovery
Abstract 902: Explainable AI: Graph machine learning for response prediction and biomarker discovery
Abstract Accurately predicting drug sensitivity and understanding what is driving it are major challenges in drug discovery. Graphs are a natural framework for captu...
A Scalable Data Structure for Efficient Graph Analytics and In-Place Mutations
A Scalable Data Structure for Efficient Graph Analytics and In-Place Mutations
The graph model enables a broad range of analysis, thus graph processing is an invaluable tool in data analytics. At the heart of every graph processing system lies a concurrent gr...
Domination of Polynomial with Application
Domination of Polynomial with Application
In this paper, .We .initiate the study of domination. polynomial , consider G=(V,E) be a simple, finite, and directed graph without. isolated. vertex .We present a study of the Ira...
E-Cordial Labeling of Some Families of Graphs
E-Cordial Labeling of Some Families of Graphs
An E-cordial labeling σ: E →{0,1} induces σ∗: V →{0,1} on graph G=(V,E), where (σ(v)=(∑_(u∈V)▒〖σ(uv)〗) mod 2 is taken over all edges uv∈E, and the labelling satisfies the condition...

Back to Top