[Eoas-seminar] [Seminar-announce] Scientific Computing Colloquium with Ming Ye

eoas-seminar at lists.fsu.edu eoas-seminar at lists.fsu.edu
Fri Jan 6 14:19:13 EST 2023


"Identify Important and Influential Processes of Complex Environmental Systems  under Model and Parametric Uncertainty"

Ming Ye
Department of Earth, Ocean, and Atmospheric Science (EOAS)
Department of Scientific Computing
Florida State University

NOTE: Please feel free to forward/share this invitation with other groups/disciplines that might be interested in this talk/topic. All are welcome to attend.

https://fsu.zoom.us/j/94273595552
Meeting # 942 7359 5552

Wednesday, Jan 11th, 2023, Schedule:

* 3:00 to 3:30 PM Eastern Time (US and Canada)
Nespresso & Teatime (in 417 DSL Commons)

* 3:30 to 4:30 PM Eastern Time (US and Canada)
Colloquium - Attend F2F (in 499 DSL) or Virtually (via Zoom)

Abstract:
Sensitivity analysis is a vital tool in the modeling community to identify important and influential parameters for model development and improvement, and variance-based global sensitivity analysis has gained popularity. However, the conventional global sensitivity indices are defined with consideration of only parametric uncertainty, but not model uncertainty that arises when a system’s process can be represented by multiple conceptual-mathematical models. Multi-model sensitivity analysis has gained increasing attention for advancing our understanding of complex Earth and environmental systems with interacting physical, chemical, and biological processes. Based on a hierarchical structure of parameter and model uncertainties and on recently developed techniques of model averaging, we developed two new process sensitivity indices for identifying important and influential processes. The indices are designed to answer the following question: how can we identify important and influential processes for the explicitly proposed process models and the probabilistically defined random parameters? A computationally efficient algorithm was also developed to reduce computational cost for the indices. To further reduce computational cost, we developed a new global sensitivity analysis method, called multi-model difference-based sensitivity analysis (MMDS), which can screen noninfluential system process from further investigation such as model calibration. In this seminar, I will present the three methods in a context of environmental modeling with numerical implementation and evaluation. The methods  are mathematically and computationally general, and can be applied to a wide range of problems of numerical modeling.
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