Lightweight Knee Orthosis for Athletic Rehabilitation: Achieving 40% Weight Reduction with Topology Optimization in Generative AI Design

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

The increasing demand for lightweight and cost-efficient orthopedic support in sports rehabilitation has accelerated the adoption of AI-driven design methodologies. This proposed work demonstrates the novelty of applying topology optimization within the Functional Generative Design (FGD) module of the 3DExperience platform to develop a structurally optimized knee orthosis. Under mixed mass constraints, the initially optimized thigh and shin brace designs achieved 51-gram and 62-gram weight reductions respectively while maintaining mechanical integrity under a 5000N physiological load. Finite element analysis revealed a 23 MPa reduction in Von Mises stress compared to the 50% mass design, indicating improved stress distribution. The final prototype braces, chosen with mass constraints of 45% and 50% for the thigh and shin respectively, 3D-printed using Polylactic Acid (PLA), were tested on a user’s leg and showed good anatomical fit, flexibility, and comfort, while achieving a combined final weight reduction of 122-grams (40%) compared to the original model. These improvements enhance wearer mobility while reducing material use and production cost.

Article activity feed