autodesk fusion for Generative design

Generative design for manufacturing

Autodesk Fusion generative design allows for the creation of complex, performance-optimized parts with reduced material usage and production time, which would be impossible or very difficult to achieve through traditional design methods.

What is generative design for manufacturing?

Generative design for manufacturing is a design process that uses artificial intelligence (AI) and cloud computing to quickly generate a wide range of design alternatives based on defined parameters, such as materials, manufacturing methods, and performance requirements.

The AI tests each potential design against the defined parameters to find the best solution. This approach can result in innovative designs, efficient use of materials, and significant time savings, as it automates much of the trial-and-error work traditionally done by human designers. 

Benefits of generative design

Light weighting

Quickly identify solutions to minimize mass and material use while maintaining performance standards, meeting design goals, and respecting engineering constraints.

Improve performance

Evaluate multiple manufacturing methods using generative design and discover solutions to improve and optimize product durability and eliminate areas of weakness.

Parts consolidation

Explore a range of design solutions that allow you to consolidate multiple components into solid parts, reducing assembly costs and simplifying your supply chain.

Sustainability

Explore a range of design solutions that allow you to consolidate multiple components into solid parts, reducing assembly costs and simplifying your supply chain.

Autodesk Fusion and its role in generative design

Autodesk is a pioneer in the generative design space. Autodesk Fusion allows designers and engineers to input design goals and parameters, and the software generates a number of design alternatives that meet these criteria. The designer can then select the most appropriate design based on their specific needs.

Autodesk's generative design tools (US Site) are used across a range of industries, including automotive, architecture, and manufacturing. They help in optimizing product designs, improving efficiency, fostering innovation, and reducing costs. By using Autodesk's generative design tools, manufacturers and designers can explore a vast range of design alternatives, enabling them to make more informed decisions and produce better outcomes.

Explore limitless possibilities with generative design


See what the Harvard Business Review has to say about:

  • The future of intelligent design automation
  • Generative design vs. topology optimization
  • Breakthrough innovations with generative design

Manufacturing-ready solutions with generative design in Fusion

Generative design in Fusion gives you the ability to select multiple manufacturing methods to quickly explore numerous solutions for your design and engineering challenges.

Automated design exploration

Generative design allows manufacturers to input design goals, constraints, and parameters, and then automatically generates a wide range of design alternatives. This feature significantly accelerates the design process, enabling manufacturers to explore more innovative and efficient designs in a fraction of the time it would take manually.

 

Optimized material usage

Generative design optimizes the use of materials by creating lightweight yet strong structures. This is particularly beneficial for reducing material costs and improving sustainability by minimizing waste and reducing the overall carbon footprint of the manufacturing process.

 

Performance driven designs

The ability to specify performance criteria, such as strength, stiffness, and flow properties, allows generative design to produce solutions that meet or exceed the required performance standards. This ensures that the resulting designs are not only manufacturable but also perform optimally under real-world conditions.

 

Integration with advanced manufacturing techniques

Fusion's generative design is well-integrated with advanced manufacturing techniques such as additive manufacturing (3D printing) and CNC machining. This ensures that designs generated are theoretically optimal and practical to produce using the latest manufacturing technologies, leading to faster prototyping and production cycles.

Autodesk Fusion generative design solutions

Cloud-based 3D CAD / CAM / CAE / PCB software for product design.


Optimize part design and performance with unlimited cloud solves for generative design, FEA, electronic cooling, injection molding, and more.


Autodesk Fusion Simulation Extension

The Autodesk Fusion Simulation Extension empowers your team to analyze part performance, manufacturability, and generative design capabilities.

Generative design outcomes can help you discover weight reduction and performance enhancements. Combine this with simulation study types like structural, thermal, and explicit simulations, as well as injection molding to gain a comprehensive understanding of how your 3D design will perform under real-life conditions before manufacturing.

 

Autodesk Fusion customers using generative design for manufacturing

The Future of Farming in Japan: Final Aim & Yamaha Motor’s Co-Created Concept EV

See how generative AI expanded the design possibilities for a unique Yamaha EV prototype rugged enough to tackle mountainous, agricultural terrain.

 

 

 


Image courtesty of Yamaha EV

Life on Mars? Fusion & Generative Design Help Bring Mars Rocks Back to Earth

Learn how Newton | Engineering and Product Development are supporting the Mars Sample Return with a lid designed using generative design in Autodesk Fusion.

 

 


Image courtesy of Newton Engineering and Product Development

Beyond the Private Jet Problem: Exploring a New Fuel-Efficiency Solution With Generative Design

See how a joint effort between top aviation companies and universities yielded a metal 3D-printed turbine center designed with generative design in Autodesk Fusion.

 


Image courtesy of GE Aerospace

Generative design resources

Here are five tips to consider when editing generative design studies, from the Smooth command to the Zebra Analysis tool.

 

The value of Fusion generative design and manufacturing capabilities to engineers goes well beyond the current generation of existing CAM systems. Let’s take a look at 8 reasons why.

 

Generative design in Fusion goes beyond running studies. Explore how to easily edit parts, run simulations, and more.

 

Frequently asked questions (FAQ) on generative design

What are common applications of generative design in manufacturing?

Generative design is revolutionizing various stages in the manufacturing process. Here are some common applications:

  • Performance Optimization: Generative design can boost performance significantly in real-world applications. The software generates multiple design solutions based on input criteria, such as desired performance, materials, and manufacturing processes. 
  • Additive Manufacturing: Generative design and additive manufacturing technologies often work together. Additive manufacturing machines cope well with the complex, organic shapes that often emerge from generative design algorithms. 
  • Product Customization: Generative design allows for the creation of highly customized products tailored to specific user needs and preferences. By inputting design goals and constraints, the software generates a variety of design alternatives, which can then be refined and perfected.
  • Material Efficiency: Generative design is known for its ability to retain strength in an object while significantly reducing the materials needed. This efficiency is particularly beneficial in industries like advanced robotics and aerospace.
  • Improved Product Quality: Adopters of generative AI in manufacturing have seen benefits such as improved product quality. Moreover, the technology can also enhance production efficiency and customer interactions.

What is generative design and how does it work?

Generative design is an innovative computer-aided design process wherein software, powered by artificial intelligence, is used to create multiple optimized design solutions based on specific input criteria. 

Here's how it works:

1. Defining Design Goals: The process begins when a designer or engineer defines the parameters or constraints of the design problem, such as the desired performance, budget, materials, manufacturing methods, and physical constraints.

2. Algorithmic Generation: The software then uses these constraints to generate a multitude of design alternatives that satisfy the requirements. It uses advanced algorithms and artificial intelligence to explore all the possible permutations of a solution.

3. Evaluation and Iteration: The software evaluates the generated designs against the set criteria and ranks them. The designer or engineer can then review the outcomes, adjust the constraints or requirements if needed, and repeat the process until an optimal design solution is found.

4. Final Selection: The final design is selected from these optimized solutions based on its performance, cost, and feasibility for manufacturing. 

Generative design is widely considered to be the next frontier in computer-aided design. It harnesses the power of AI to develop high-performance and highly sophisticated design iterations that help solve complex challenges, like reducing component weight, optimizing performance, and making designs simpler.

 

What software is commonly used for generative design?

Autodesk Fusion is a powerful and versatile tool for generative design. It offers a range of features for design, simulation, and fabrication in a single, cloud-based platform.

What are the potential challenges and limitations of generative design?

Generative design is a powerful tool, but it also comes with certain challenges and limitations. Here are a few of the most common ones:

  • Complexity of Design: Generative design can produce extremely complex designs that may be difficult or even impossible to manufacture with traditional methods.
  • Computational Resources: Generative design algorithms can be computationally intensive, requiring powerful hardware and potentially long processing times. 
  • Knowledge Barrier: Understanding how to effectively use generative design tools and interpret their results requires a certain level of expertise. 
  • Integration with Existing Processes: Integrating generative design into existing design and manufacturing processes can be challenging. It may require changes to workflows, which can be disruptive and require additional training.
  • Reliance on Accurate Input Data: The effectiveness of generative design is heavily dependent on the quality and accuracy of the input data. If the design constraints, material properties, or loading conditions are not accurately defined, the resulting designs may not meet the desired performance criteria.

How is generative design influencing the process of product development?

Generative design is significantly influencing the process of product development in various ways:

1.Increased Design Efficiency: By generating multiple design solutions that meet specific criteria in a short amount of time, generative design speeds up the design process. Designers can evaluate a broad range of options quickly and focus on refining the most promising ones.

2. Optimization of Designs: Generative design uses algorithms and AI to optimize designs based on set parameters like weight, strength, cost, and more. This leads to high-performing, efficient, and innovative products that may not have been conceivable through traditional design methods.

3. Material Efficiency: Generative design can provide solutions that use less material but still maintain the required strength and performance. This not only reduces cost but also supports sustainability goals.

4. Enhanced Customization: Generative design allows for a higher level of customization in product development. It can generate designs tailored to specific needs or customer preferences, opening the door to personalized products on a larger scale.

5. Integration with Advanced Manufacturing: Generative design is often used in conjunction with additive manufacturing (3D printing) processes. The complex and organic shapes that generative design algorithms often produce are well-suited to these manufacturing methods, which can create shapes that are impossible with traditional manufacturing techniques.

6. Reduced Time to Market: By accelerating the design process and improving the integration between design and manufacturing, generative design can help companies get their products to market faster.

7.Risk Mitigation: By exploring a wide design space and testing various scenarios digitally, generative design can help identify potential design issues early, reducing risk and cost in the product

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