Data-Driven Autoregressive Power Prediction for GTernal Robots in the Robotarium

Abstract

Energy-aware algorithms for multi-robot systems require accurate power consumption models, yet existing approaches rely on kinematic approximations that fail to capture the complex dynamics of real hardware. We present a lightweight autoregressive predictor for the GTernal mobile robot platform deployed in the Georgia Tech Robotarium. Through analysis of 48,000 samples collected across six motion trials, we discover that power consumption exhibits strong temporal autocorrelation (1 = 0.95) that dominates kinematic effects. A 7,041-parameter multi-layer perceptron (MLP) achieves R2 = 0.90 on held-out motion patterns by conditioning on recent power history, reaching the theoretical prediction ceiling imposed by measurement noise. Physical validation across seven robots in a collision avoidance scenario yields mean R2 = 0.87, demonstrating zero-shot transfer to unseen robots and behaviors. The predictor runs in 224 μs per inference, enabling real-time deployment at 150× the platform's 30 Hz control rate. We release the trained model and dataset to support energy-aware multi-robot algorithm development.

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