The Morphology-Control Trade-Off: Insights into Soft Robotic Efficiency
- URL: http://arxiv.org/abs/2503.16127v2
- Date: Wed, 26 Mar 2025 10:07:40 GMT
- Title: The Morphology-Control Trade-Off: Insights into Soft Robotic Efficiency
- Authors: Yue Xie, Kai-fung Chu, Xing Wang, Fumiya Iida,
- Abstract summary: In this study, we investigate the interplay between morphological and control complexities and their collective impact on task performance.<n>Results show that optimal performance depends on the alignment between morphology and control.<n>This study contributes to the practical application of soft robotics in real-world scenarios.
- Score: 15.273412572397799
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Soft robotics holds transformative potential for enabling adaptive and adaptable systems in dynamic environments. However, the interplay between morphological and control complexities and their collective impact on task performance remains poorly understood. Therefore, in this study, we investigate these trade-offs across tasks of differing difficulty levels using four well-used morphological complexity metrics and control complexity measured by FLOPs. We investigate how these factors jointly influence task performance by utilizing the evolutionary robot experiments. Results show that optimal performance depends on the alignment between morphology and control: simpler morphologies and lightweight controllers suffice for easier tasks, while harder tasks demand higher complexities in both dimensions. In addition, a clear trade-off between morphological and control complexities that achieve the same task performance can be observed. Moreover, we also propose a sensitivity analysis to expose the task-specific contributions of individual morphological metrics. Our study establishes a framework for investigating the relationships between morphology, control, and task performance, advancing the development of task-specific robotic designs that balance computational efficiency with adaptability. This study contributes to the practical application of soft robotics in real-world scenarios by providing actionable insights.
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