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Modeling Task Relationships in Multivariate Soft Sensor With Balanced Mixture-of-Experts

Yuxin Huang, Hao Wang, Zhaoran Liu, Licheng Pan, Haozhe Li, Xinggao Liu

2022IEEE Transactions on Industrial Informatics24 citationsDOIOpen Access PDF

Abstract

Accurate estimation of multiple quality variables is critical for building industrial soft sensor models, which have long been confronted with data efficiency and negative transfer issues. Methods sharing backbone parameters among tasks address the data efficiency issue; however, they still fail to mitigate the negative transfer problem. To address this issue, a balanced mixture-of-experts (BMoE) is proposed in this work, which consists of a multigate mixture-of-experts module and a task gradient balancing (TGB) module. The mixture-of-experts module aims to portray task relationships, while the TGB module balances the gradients among tasks dynamically. Both of them cooperate to mitigate the negative transfer problem. Experiments on the typical sulfur recovery unit demonstrate that BMoE models task relationship and balances the training process effectively, and achieves better performance than baseline models significantly.

Topics & Concepts

Multivariate statisticsComputer scienceTask (project management)Soft sensorData miningArtificial intelligenceMachine learningEngineeringSystems engineeringProgramming languageProcess (computing)Fault Detection and Control SystemsAdvanced Statistical Process MonitoringAdvanced Control Systems Optimization
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