MIT News - Machine learning 09月25日
AI优化助力机械工程
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人工智能优化为机械工程带来诸多益处,包括设计模拟更快速精准、效率提升、通过流程自动化降低开发成本,以及增强预测性维护和质量控制。在MIT的“AI与机器学习在工程设计中的应用”课程中,学生运用人工智能和机器学习工具解决机械设计挑战,如自行车架设计、城市网格规划等。课程强调实际应用,鼓励学生通过竞赛优化解决方案,并最终完成团队项目,将所学应用于感兴趣领域,如预测跑步者地面受力、设计个性化猫爬架等。

🔧 人工智能优化为机械工程带来显著优势,包括提升设计模拟的速度和准确性,从而提高整体工程效率。这种技术通过自动化流程减少了开发成本,并增强了预测性维护和质量控制能力,使机械工程实践更加高效和经济。

🎓 MIT的“AI与机器学习在工程设计中的应用”课程是典型实例,它吸引了来自机械、土木、环境、航空航天、管理、核科学等多个院系的本科生和研究生,展示了AI技术在跨学科工程教育中的广泛应用和受欢迎程度。

🏁 课程通过竞赛形式激发学生潜力,提供挑战性问题和初始代码框架,鼓励学生不断优化解决方案。这种以竞争为导向的教学方法促进了创新思维,并使学生在解决复杂工程问题时能将理论知识与实践相结合。

📈 学生最终项目展示了AI技术的多样化应用潜力,从预测跑步者地面受力到设计个性化猫爬架,不仅巩固了所学知识,还常常转化为研究成果甚至获奖项目,证明了课程的实际价值和对学生未来发展的积极影响。

Artificial intelligence optimization offers a host of benefits for mechanical engineers, including faster and more accurate designs and simulations, improved efficiency, reduced development costs through process automation, and enhanced predictive maintenance and quality control.

“When people think about mechanical engineering, they're thinking about basic mechanical tools like hammers and … hardware like cars, robots, cranes, but mechanical engineering is very broad,” says Faez Ahmed, the Doherty Chair in Ocean Utilization and associate professor of mechanical engineering at MIT. “Within mechanical engineering, machine learning, AI, and optimization are playing a big role.”

In Ahmed’s course, 2.155/156 (AI and Machine Learning for Engineering Design), students use tools and techniques from artificial intelligence and machine learning for mechanical engineering design, focusing on the creation of new products and addressing engineering design challenges.

“There’s a lot of reason for mechanical engineers to think about machine learning and AI to essentially expedite the design process,” says Lyle Regenwetter, a teaching assistant for the course and a PhD candidate in Ahmed’s Design Computation and Digital Engineering Lab (DeCoDE), where research focuses on developing new machine learning and optimization methods to study complex engineering design problems.

First offered in 2021, the class has quickly become one of the Department of Mechanical Engineering (MechE)’s most popular non-core offerings, attracting students from departments across the Institute, including mechanical and civil and environmental engineering, aeronautics and astronautics, the MIT Sloan School of Management, and nuclear and computer science, along with cross-registered students from Harvard University and other schools.

The course, which is open to both undergraduate and graduate students, focuses on the implementation of advanced machine learning and optimization strategies in the context of real-world mechanical design problems. From designing bike frames to city grids, students participate in contests related to AI for physical systems and tackle optimization challenges in a class environment fueled by friendly competition.

Students are given challenge problems and starter code that “gave a solution, but [not] the best solution …” explains Ilan Moyer, a graduate student in MechE. “Our task was to [determine], how can we do better?” Live leaderboards encourage students to continually refine their methods.

Em Lauber, a system design and management graduate student, says the process gave space to explore the application of what students were learning and the practice skill of “literally how to code it.”

The curriculum incorporates discussions on research papers, and students also pursue hands-on exercises in machine learning tailored to specific engineering issues including robotics, aircraft, structures, and metamaterials. For their final project, students work together on a team project that employs AI techniques for design on a complex problem of their choice.

“It is wonderful to see the diverse breadth and high quality of class projects,” says Ahmed. “Student projects from this course often lead to research publications, and have even led to awards.” He cites the example of a recent paper, titled “GenCAD-Self-Repairing,” that went on to win the American Society of Mechanical Engineers Systems Engineering, Information and Knowledge Management 2025 Best Paper Award.

“The best part about the final project was that it gave every student the opportunity to apply what they’ve learned in the class to an area that interests them a lot,” says Malia Smith, a graduate student in MechE. Her project chose “markered motion captured data” and looked at predicting ground force for runners, an effort she called “really gratifying” because it worked so much better than expected.

Lauber took the framework of a “cat tree” design with different modules of poles, platforms, and ramps to create customized solutions for individual cat households, while Moyer created software that is designing a new type of 3D printer architecture.

“When you see machine learning in popular culture, it’s very abstracted, and you have the sense that there’s something very complicated going on,” says Moyer. “This class has opened the curtains.” 

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人工智能 机械工程 机器学习 工程设计 MIT
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