TMoE-P: Towards the Pareto Optimum for Multivariate Soft Sensors
Licheng Pan, Hao Wang, Zhichao Chen, Yuxing Huang, Xinggao Liu

TL;DR
This paper introduces TMoE-P, a multi-objective framework for multivariate soft sensors that addresses negative transfer and seesaw phenomena, achieving Pareto optimality and improved performance in industrial quality estimation.
Contribution
It proposes a novel Task-aware Mixture-of-Experts framework with Objective-aware MoE and Pareto Objective Routing modules to enhance multi-variate soft sensor accuracy.
Findings
Outperforms baseline models on open soft sensor benchmark.
Effectively alleviates negative transfer and seesaw issues.
Achieves Pareto optimality in multi-objective soft sensor tasks.
Abstract
Multi-variate soft sensor seeks accurate estimation of multiple quality variables using measurable process variables, which have emerged as a key factor in improving the quality of industrial manufacturing. The current progress stays in some direct applications of multitask network architectures; however, there are two fundamental issues remain yet to be investigated with these approaches: (1) negative transfer, where sharing representations despite the difference of discriminate representations for different objectives degrades performance; (2) seesaw phenomenon, where the optimizer focuses on one dominant yet simple objective at the expense of others. In this study, we reformulate the multi-variate soft sensor to a multi-objective problem, to address both issues and advance state-of-the-art performance. To handle the negative transfer issue, we first propose an Objective-aware…
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Taxonomy
TopicsFault Detection and Control Systems · Advanced Chemical Sensor Technologies · Neural Networks and Applications
