Simulation governance
Simulation governance is a managerial function concerned with assurance of reliability of information generated by numerical simulation. The term was introduced in 2011 and specific technical requirements were addressed from the perspective of mechanical design in 2012. Its strategic importance was addressed in 2015. At the in Stockholm simulation governance was identified as the first of eight “” in numerical simulation.
Simulation governance is concerned with selection and adoption of the best available simulation technology, formulation of mathematical models, management of experimental data, data and solution verification procedures, and revision of mathematical models in the light of new information collected from physical experiments and field observations.
Plans for simulation governance have to be formulated to fit the mission of each organization or department within an organization: In the terminology of structural and mechanical engineering, typical missions are:
- Application of established rules of design and certification: Given the allowable value defined in a design rule, show that.
- Formulation of design rules : What is ? This involves the interpretation of results from coupon tests and component tests.
- Condition-based maintenance : Given a detected flaw, what is the probability that failure will occur after load cycles?
- Structural analysis of large structures.
In structural analysis on the other hand, numerical problems, typically constructed by assembling elements from a finite element library, a method known as finite element modeling, can produce satisfactory results. In this case the numerical solution stands on its own, typically it is not an approximation to a well-posed mathematical problem. Therefore, neither solution verification nor model validation can be performed. Satisfactory results can be produced by artful tuning of finite element models with reference to sets of experimental data so that two large errors nearly cancel one another: One error is conceptual: inadmissible data violate basic assumptions in the formulation. The other error is numerical: one or more quantities of interest diverge but the rate of divergence is slow and may not be visible at mesh refinements used in practice.