SAC on RBC2D-medium-v0 (FluidGym)

This repository is part of the FluidGym benchmark results. It contains trained Stable Baselines3 agents for the specialized RBC2D-medium-v0 environment.

Evaluation Results

Global Performance (Aggregated across 5 seeds)

Mean Reward: 0.78 ± 0.05

Per-Seed Statistics

Run Mean Reward Std Dev
Seed 0 0.72 0.72
Seed 1 0.75 0.62
Seed 2 0.80 0.78
Seed 3 0.77 0.59
Seed 4 0.88 0.72

About FluidGym

FluidGym is a benchmark for reinforcement learning in active flow control.

Usage

Each seed is contained in its own subdirectory. You can load a model using:

from stable_baselines3 import SAC
model = SAC.load("0/ckpt_latest.zip")

References

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Evaluation results