MIT News - Machine learning 09月25日
AI助力机器人设计
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扩散模型如OpenAI的DALL-E正帮助人类在设计中产生新想法。人类可以通过提示系统生成图像、视频或改进蓝图,获得之前未曾考虑过的创意。现在,生成式人工智能(GenAI)模型也开始用于创造可工作的机器人。最近基于扩散的方法能从头开始生成结构和控制系统。MIT的计算机科学与人工智能实验室(CSAIL)开发的新方法将这种生成知识应用于改进人类设计的机器人。用户可以绘制机器人的3D模型并指定希望扩散模型修改的部分,GenAI随后为其 brainstorm 最佳形状并在模拟中测试想法。当系统找到正确设计时,可以保存并使用3D打印机制造出真实世界的机器人。研究人员使用这种方法创造了一个平均跳跃约2英尺的机器人,比他们自己设计的类似机器高41%。AI生成的连接件呈弯曲的鼓槌状,而标准机器的连接件是直角矩形。研究人员通过模拟测试优化了设计,最终选择了性能最佳的方案。扩散模型能找到非传统的解决方案来改进机器人,例如通过独特的形状在跳跃前储存更多能量,同时避免连接件过薄。该系统还优化了机器人的脚部设计,使落地更稳定。这项工作为生成式AI在机器人设计中的应用提供了新思路。

🔧扩散模型如OpenAI的DALL-E正帮助人类在设计中产生新想法。人类可以通过提示系统生成图像、视频或改进蓝图,获得之前未曾考虑过的创意。

🤖生成式人工智能(GenAI)模型也开始用于创造可工作的机器人。最近基于扩散的方法能从头开始生成结构和控制系统。

🎯MIT的计算机科学与人工智能实验室(CSAIL)开发的新方法将这种生成知识应用于改进人类设计的机器人。用户可以绘制机器人的3D模型并指定希望扩散模型修改的部分,GenAI随后为其 brainstorm 最佳形状并在模拟中测试想法。

📈研究人员使用这种方法创造了一个平均跳跃约2英尺的机器人,比他们自己设计的类似机器高41%。AI生成的连接件呈弯曲的鼓槌状,而标准机器的连接件是直角矩形。

🔄该系统通过模拟测试优化了设计,最终选择了性能最佳的方案。扩散模型能找到非传统的解决方案来改进机器人,例如通过独特的形状在跳跃前储存更多能量,同时避免连接件过薄。

Diffusion models like OpenAI’s DALL-E are becoming increasingly useful in helping brainstorm new designs. Humans can prompt these systems to generate an image, create a video, or refine a blueprint, and come back with ideas they hadn’t considered before.

But did you know that generative artificial intelligence (GenAI) models are also making headway in creating working robots? Recent diffusion-based approaches have generated structures and the systems that control them from scratch. With or without a user’s input, these models can make new designs and then evaluate them in simulation before they’re fabricated.

A new approach from MIT’s Computer Science and Artificial Intelligence Laboratory (CSAIL) applies this generative know-how toward improving humans’ robotic designs. Users can draft a 3D model of a robot and specify which parts they’d like to see a diffusion model modify, providing its dimensions beforehand. GenAI then brainstorms the optimal shape for these areas and tests its ideas in simulation. When the system finds the right design, you can save and then fabricate a working, real-world robot with a 3D printer, without requiring additional tweaks.

The researchers used this approach to create a robot that leaps up an average of roughly 2 feet, or 41 percent higher than a similar machine they created on their own. The machines are nearly identical in appearance: They’re both made of a type of plastic called polylactic acid, and while they initially appear flat, they spring up into a diamond shape when a motor pulls on the cord attached to them. So what exactly did AI do differently?

A closer look reveals that the AI-generated linkages are curved, and resemble thick drumsticks (the musical instrument drummers use), whereas the standard robot’s connecting parts are straight and rectangular.

Better and better blobs

The researchers began to refine their jumping robot by sampling 500 potential designs using an initial embedding vector — a numerical representation that captures high-level features to guide the designs generated by the AI model. From these, they selected the top 12 options based on performance in simulation and used them to optimize the embedding vector.

This process was repeated five times, progressively guiding the AI model to generate better designs. The resulting design resembled a blob, so the researchers prompted their system to scale the draft to fit their 3D model. They then fabricated the shape, finding that it indeed improved the robot’s jumping abilities.

The advantage of using diffusion models for this task, according to co-lead author and CSAIL postdoc Byungchul Kim, is that they can find unconventional solutions to refine robots.

“We wanted to make our machine jump higher, so we figured we could just make the links connecting its parts as thin as possible to make them light,” says Kim. “However, such a thin structure can easily break if we just use 3D printed material. Our diffusion model came up with a better idea by suggesting a unique shape that allowed the robot to store more energy before it jumped, without making the links too thin. This creativity helped us learn about the machine’s underlying physics.”

The team then tasked their system with drafting an optimized foot to ensure it landed safely. They repeated the optimization process, eventually choosing the best-performing design to attach to the bottom of their machine. Kim and his colleagues found that their AI-designed machine fell far less often than its baseline, to the tune of an 84 percent improvement.

The diffusion model’s ability to upgrade a robot’s jumping and landing skills suggests it could be useful in enhancing how other machines are designed. For example, a company working on manufacturing or household robots could use a similar approach to improve their prototypes, saving engineers time normally reserved for iterating on those changes.

The balance behind the bounce

To create a robot that could jump high and land stably, the researchers recognized that they needed to strike a balance between both goals. They represented both jumping height and landing success rate as numerical data, and then trained their system to find a sweet spot between both embedding vectors that could help build an optimal 3D structure.

The researchers note that while this AI-assisted robot outperformed its human-designed counterpart, it could soon reach even greater new heights. This iteration involved using materials that were compatible with a 3D printer, but future versions would jump even higher with lighter materials.

Co-lead author and MIT PhD student and CSAIL affiliate Tsun-Hsuan “Johnson” Wang says the project is a jumping-off point for new robotics designs that generative AI could help with.

“We want to branch out to more flexible goals,” says Wang. “Imagine using natural language to guide a diffusion model to draft a robot that can pick up a mug, or operate an electric drill.”

Kim says that a diffusion model could also help to generate articulation and ideate on how parts connect, potentially improving how high the robot would jump. The team is also exploring the possibility of adding more motors to control which direction the machine jumps and perhaps improve its landing stability.

The researchers’ work was supported, in part, by the National Science Foundation’s Emerging Frontiers in Research and Innovation program, the Singapore-MIT Alliance for Research and Technology’s Mens, Manus and Machina program, and the Gwangju Institute of Science and Technology (GIST)-CSAIL Collaboration. They presented their work at the 2025 International Conference on Robotics and Automation.

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扩散模型 生成式人工智能 机器人设计 MIT CSAIL 跳跃机器人
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