ROAIJun 5, 2023

Efficient automatic design of robots

arXiv:2306.03263v242 citationsh-index: 129
Originality Highly original
AI Analysis

This advance could enable near-instantaneous design and deployment of unique machines for medical, environmental, vehicular, and space-based tasks, representing a significant improvement over previous methods.

The paper tackles the problem of inefficient automated robot design by introducing an algorithm that optimizes a robot's structure for desired behavior within seconds on a consumer-grade computer, with the manufactured robot retaining that behavior and consistently discovering legged locomotion.

Robots are notoriously difficult to design because of complex interdependencies between their physical structure, sensory and motor layouts, and behavior. Despite this, almost every detail of every robot built to date has been manually determined by a human designer after several months or years of iterative ideation, prototyping, and testing. Inspired by evolutionary design in nature, the automated design of robots using evolutionary algorithms has been attempted for two decades, but it too remains inefficient: days of supercomputing are required to design robots in simulation that, when manufactured, exhibit desired behavior. Here we show for the first time de-novo optimization of a robot's structure to exhibit a desired behavior, within seconds on a single consumer-grade computer, and the manufactured robot's retention of that behavior. Unlike other gradient-based robot design methods, this algorithm does not presuppose any particular anatomical form; starting instead from a randomly-generated apodous body plan, it consistently discovers legged locomotion, the most efficient known form of terrestrial movement. If combined with automated fabrication and scaled up to more challenging tasks, this advance promises near instantaneous design, manufacture, and deployment of unique and useful machines for medical, environmental, vehicular, and space-based tasks.

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