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.
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