Load estimation in unsteady flows from sparse pressure measurements: Application of transition networks to experimental data

Abstract

Inspired by biological swimming and flying with distributed sensing, we propose a data-driven approach for load estimation that relies on complex networks. We exploit sparse, real-time pressure inputs, combined with pre-trained transition networks, to estimate aerodynamic loads in unsteady and highly separated flows. The transition networks contain the aerodynamic states of the system as nodes along with the underlying dynamics as links. A weighted average-based (WAB) strategy is proposed and tested on realistic experimental data on the flow around an accelerating elliptical plate at various angles of attack. Aerodynamic loads are then estimated for angles-of-attack cases not included in the training dataset so as to simulate the estimation process. An optimization process is also included to account for the system's temporal dynamics. Performance and limitations of the WAB approach are discussed, showing that transition networks can represent a versatile and effective data-driven tool for real-time signal estimation using sparse and noisy signals (such as surface pressure) in realistic flows.

Document Details

Document Type
Pub Defense Publication
Publication Date
Feb 01, 2022
Source ID
10.1063/5.0076731

Entities

People

  • David E. Rival
  • Frieder Kaiser
  • Giovanni Iacobello

Organizations

  • Air Force Office of Scientific Research
  • Queen's University
  • University of Surrey

Tags

Fields of Study

  • Computer science

Readers

  • Aerodynamics.
  • Aerodynamics/Aeronautics.
  • Neural Network Machine Learning.