Regularized Operating Envelope with Interpretability and Implementability Constraints
Qiyao Wang, Haiyan Wang, Chetan Gupta, Susumu Serita

TL;DR
This paper introduces a new data-driven method for defining operational envelopes that emphasizes interpretability and practical implementability, improving upon traditional classifiers by directly modeling KPI magnitudes.
Contribution
It proposes a novel definition of operating envelopes that avoids arbitrary data grouping and incorporates interpretability and implementability constraints, along with a regularized genetic algorithm.
Findings
Effective in simulation studies
Successfully applied to mining process data
Balances bias and variance in envelope estimation
Abstract
Operating envelope is an important concept in industrial operations. Accurate identification for operating envelope can be extremely beneficial to stakeholders as it provides a set of operational parameters that optimizes some key performance indicators (KPI) such as product quality, operational safety, equipment efficiency, environmental impact, etc. Given the importance, data-driven approaches for computing the operating envelope are gaining popularity. These approaches typically use classifiers such as support vector machines, to set the operating envelope by learning the boundary in the operational parameter spaces between the manually assigned `large KPI' and `small KPI' groups. One challenge to these approaches is that the assignment to these groups is often ad-hoc and hence arbitrary. However, a bigger challenge with these approaches is that they don't take into account two key…
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Taxonomy
TopicsFault Detection and Control Systems · Data Stream Mining Techniques · Machine Learning and Data Classification
MethodsInterpretability
