Affiliation:
1. U.S. Naval Research Laboratory Principal Scientist of Materials Innovation and Computational Multiphysics Systems Laboratory, Materials Science and Technology Division, , Washington, DC 20375
2. U.S. Naval Research Laboratory Computational Multiphysics Systems Laboratory, Materials Science and Technology Division, , Washington, DC 20375
Abstract
AbstractWhen it comes to multiphysics modeling and simulation, the ever-improving advances of computational technologies have forced the user to manage higher resource complexity while at the same time they are motivating the modeling of more complex systems than before. Consequently, the time for the user’s iterations within the context space characterizing all choices required for a successful computation far exceeds the time required for the runtime software execution to produce acceptable results. This paper presents metacomputing as an approach to address this issue, starting with describing this high-dimensional context space. Then it highlights the abstract process of multiphysics model generation/solution and proposes performing top-down and bottom-up metacomputing. In the top-down approach, metacomputing is used for automating the process of generating theories, raising the semantic dimensionality of these theories in higher dimensional algebraic systems that enable simplification of the equational representation, and raising the syntactic dimensionality of equational representation from 1D equational forms to 2D and 3D algebraic solution graphs that reduce solving to path-following. In the bottom-up approach, already existing legacy codes evolving over multiple decades are encapsulated at the bottom layer of a multilayer semantic framework that utilizes category theory based operations on specifications to enable the user to spend time only for defining the physics of the relevant problem and not have to deal with the rest of the details involved in deploying and executing the solution of the problem at hand. Consequently, these two metacomputing approaches enable the automated generation, composition, deployment, and execution of directly computable multiphysics models.
Subject
Industrial and Manufacturing Engineering,Computer Graphics and Computer-Aided Design,Computer Science Applications,Software
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