A Data Driven Sequential Learning Framework to Accelerate and Optimize Multi-Objective Manufacturing Decisions
Hamed Khosravi, Taofeeq Olajire, Ahmed Shoyeb Raihan, Imtiaz Ahmed

TL;DR
This paper introduces a Bayesian optimization framework using sequential learning to efficiently identify optimal manufacturing conditions for complex, multi-objective systems, reducing experimental costs and time.
Contribution
It presents a novel data-driven Bayesian optimization method with a new metric for multi-objective optimization, improving efficiency in costly manufacturing experiments.
Findings
Achieves Pareto front with less data
Reduces manufacturing decision costs
Demonstrates effectiveness on real dataset
Abstract
Manufacturing advanced materials and products with a specific property or combination of properties is often warranted. To achieve that it is crucial to find out the optimum recipe or processing conditions that can generate the ideal combination of these properties. Most of the time, a sufficient number of experiments are needed to generate a Pareto front. However, manufacturing experiments are usually costly and even conducting a single experiment can be a time-consuming process. So, it's critical to determine the optimal location for data collection to gain the most comprehensive understanding of the process. Sequential learning is a promising approach to actively learn from the ongoing experiments, iteratively update the underlying optimization routine, and adapt the data collection process on the go. This paper presents a novel data-driven Bayesian optimization framework that…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Optimal Experimental Design Methods · Industrial Vision Systems and Defect Detection
