Wake Up to the Past: Using Memory to Model Fluid Wake Effects on Robots

arXiv cs.RO / 3/25/2026

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Key Points

  • The paper studies how wake effects produced by autonomous aerial/aquatic robots create disturbances for nearby robots, making interaction modeling difficult due to chaotic fluid dynamics and robot geometry and motion.
  • It finds that common memory-less neural network predictors underperform in agile scenarios because the disturbance a robot experiences depends on the relative states from the past, not just the current moment.
  • The authors empirically evaluate seven spatio-temporal, data-driven model variants across four different fluid media to identify which features improve prediction accuracy and why.
  • Real-world experimental validation uses a planar rectilinear gantry with two spinning monocopters and feedback control to generate data for wake-effect prediction.
  • The study concludes that incorporating a history of previous states and predicting transport delay significantly improves the learned wake-effect predictor’s accuracy.

Abstract

Autonomous aerial and aquatic robots that attain mobility by perturbing their medium, such as multicopters and torpedoes, produce wake effects that act as disturbances for adjacent robots. Wake effects are hard to model and predict due to the chaotic spatio-temporal dynamics of the fluid, entangled with the physical geometry of the robots and their complex motion patterns. Data-driven approaches using neural networks typically learn a memory-less function that maps the current states of the two robots to a force observed by the "sufferer" robot. Such models often perform poorly in agile scenarios: since the wake effect has a finite propagation time, the disturbance observed by a sufferer robot is some function of relative states in the past. In this work, we present an empirical study of the properties a wake-effect predictor must satisfy to accurately model the interactions between two robots mediated by a fluid. We explore seven data-driven models designed to capture the spatio-temporal evolution of fluid wake effects in four different media. This allows us to introspect the models and analyze the reasons why certain features enable improved accuracy in prediction across predictors and fluids. As experimental validation, we develop a planar rectilinear gantry for two spinning monocopters to test in real-world data with feedback control. The conclusion is that support of history of previous states as input and transport delay prediction substantially helps to learn an accurate wake-effect predictor.