Workflow Automation for Cyber Physical System Development Processes
- URL: http://arxiv.org/abs/2004.05654v1
- Date: Sun, 12 Apr 2020 17:32:05 GMT
- Title: Workflow Automation for Cyber Physical System Development Processes
- Authors: Charles Hartsell and Nagabhushan Mahadevan and Harmon Nine and Ted
Bapty and Abhishek Dubey and Gabor Karsai
- Abstract summary: Development of Cyber Physical Systems (CPSs) requires close interaction between developers with expertise in many domains.
We introduce a workflow modeling language for the automation of complex CPS development processes.
We implement a platform for execution of these models in the Assurance-based Learning-enabled CPS Toolchain.
- Score: 1.6735240552964108
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Development of Cyber Physical Systems (CPSs) requires close interaction
between developers with expertise in many domains to achieve ever-increasing
demands for improved performance, reduced cost, and more system autonomy. Each
engineering discipline commonly relies on domain-specific modeling languages,
and analysis and execution of these models is often automated with appropriate
tooling. However, integration between these heterogeneous models and tools is
often lacking, and most of the burden for inter-operation of these tools is
placed on system developers. To address this problem, we introduce a workflow
modeling language for the automation of complex CPS development processes and
implement a platform for execution of these models in the Assurance-based
Learning-enabled CPS (ALC) Toolchain. Several illustrative examples are
provided which show how these workflow models are able to automate many
time-consuming integration tasks previously performed manually by system
developers.
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