ROAIOct 14, 2025

Designing Tools with Control Confidence

arXiv:2510.12630v11 citationsh-index: 7Has Code
Originality Incremental advance
AI Analysis

This work addresses the challenge of designing robust tools for robotic systems, though it appears to be an incremental improvement by adding a confidence term to existing optimization methods.

The authors tackled the problem of autonomous tool design for robots by introducing a control confidence term into the optimization framework, which resulted in tools that are more robust to environmental uncertainties and achieve a better balance between robustness and accuracy compared to purely accuracy-driven approaches.

Prehistoric humans invented stone tools for specialized tasks by not just maximizing the tool's immediate goal-completion accuracy, but also increasing their confidence in the tool for later use under similar settings. This factor contributed to the increased robustness of the tool, i.e., the least performance deviations under environmental uncertainties. However, the current autonomous tool design frameworks solely rely on performance optimization, without considering the agent's confidence in tool use for repeated use. Here, we take a step towards filling this gap by i) defining an optimization framework for task-conditioned autonomous hand tool design for robots, where ii) we introduce a neuro-inspired control confidence term into the optimization routine that helps the agent to design tools with higher robustness. Through rigorous simulations using a robotic arm, we show that tools designed with control confidence as the objective function are more robust to environmental uncertainties during tool use than a pure accuracy-driven objective. We further show that adding control confidence to the objective function for tool design provides a balance between the robustness and goal accuracy of the designed tools under control perturbations. Finally, we show that our CMAES-based evolutionary optimization strategy for autonomous tool design outperforms other state-of-the-art optimizers by designing the optimal tool within the fewest iterations. Code: https://github.com/ajitham123/Tool_design_control_confidence.

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