Extracting Design Knowledge from Optimization Data: Enhancing Engineering Design in Fluid Based Thermal Management Systems
Saeid Bayat, Nastaran Shahmansouri, Satya RT Peddada, Alex Tessier,, Adrian Butscher, James T Allison

TL;DR
This paper introduces a machine learning framework for extracting design knowledge from optimization data in fluid-based thermal management systems, improving design decisions without relying on heritage data and reducing computational costs.
Contribution
The paper presents a novel approach to extract actionable design knowledge from optimization data using classification machine learning, applicable even without existing design heritage.
Findings
Estimated optimal configurations closely match true optima with less than 1% error.
The approach reduces computational costs by avoiding the need to solve the open loop control problem.
Framework demonstrated effective across four diverse case studies.
Abstract
As mechanical systems become more complex and technological advances accelerate, the traditional reliance on heritage designs for engineering endeavors is being diminished in its effectiveness. Considering the dynamic nature of the design industry where new challenges are continually emerging, alternative sources of knowledge need to be sought to guide future design efforts. One promising avenue lies in the analysis of design optimization data, which has the potential to offer valuable insights and overcome the limitations of heritage designs. This paper presents a step toward extracting knowledge from optimization data in multi-split fluid-based thermal management systems using different classification machine learning methods, so that designers can use it to guide decisions in future design efforts. This approach offers several advantages over traditional design heritage methods,…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Building Energy and Comfort Optimization · Model Reduction and Neural Networks
