An empirical learning-based validation procedure for simulation workflow
Zhuqing Liu, Liyuanjun Lai, Lin Zhang

TL;DR
This paper introduces an empirical, semi-automated validation procedure for simulation workflows using machine learning algorithms to assess credibility, aiming to improve validation efficiency and reduce domain dependence.
Contribution
It proposes a novel validation method combining feature analysis, AHP, and multiple learning algorithms for simulation workflow credibility evaluation.
Findings
Effective validation of simulation workflows demonstrated.
Learning algorithms outperform traditional validation methods.
Case study confirms feasibility and provides insights into algorithm performance.
Abstract
Simulation workflow is a top-level model for the design and control of simulation process. It connects multiple simulation components with time and interaction restrictions to form a complete simulation system. Before the construction and evaluation of the component models, the validation of upper-layer simulation workflow is of the most importance in a simulation system. However, the methods especially for validating simulation workflow is very limit. Many of the existing validation techniques are domain-dependent with cumbersome questionnaire design and expert scoring. Therefore, this paper present an empirical learning-based validation procedure to implement a semi-automated evaluation for simulation workflow. First, representative features of general simulation workflow and their relations with validation indices are proposed. The calculation process of workflow credibility based on…
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Taxonomy
TopicsMachine Learning and ELM · Neural Networks and Applications · Advanced Memory and Neural Computing
