Vehicle Suspension Recommendation System: Multi-Fidelity Neural Network-based Mechanism Design Optimization
Sumin Lee, Namwoo Kang

TL;DR
This paper introduces a multi-fidelity neural network framework for vehicle suspension design optimization, reducing computational costs and improving the recommendation of optimal suspension types and parameters.
Contribution
It presents a novel multi-fidelity surrogate modeling approach combining low- and high-fidelity analyses for efficient vehicle suspension design optimization.
Findings
The multi-fidelity model accurately predicts suspension performance.
The framework effectively reduces analysis costs.
Optimal suspension designs outperform traditional methods.
Abstract
Mechanisms are designed to perform functions in various fields. Often, there is no unique mechanism that performs a well-defined function. For example, vehicle suspensions are designed to improve driving performance and ride comfort, but different types are available depending on the environment. This variability in design makes performance comparison difficult. Additionally, the traditional design process is multi-step, gradually reducing the number of design candidates while performing costly analyses to meet target performance. Recently, AI models have been used to reduce the computational cost of FEA. However, there are limitations in data availability and different analysis environments, especially when transitioning from low-fidelity to high-fidelity analysis. In this paper, we propose a multi-fidelity design framework aimed at recommending optimal types and designs of mechanical…
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Taxonomy
TopicsMechanical Engineering and Vibrations Research · Vehicle Dynamics and Control Systems
