A Text-Based Knowledge-Embedded Soft Sensing Modeling Approach for General Industrial Process Tasks Based on Large Language Model
Shuo Tong, Han Liu, Runyuan Guo, Xueqiong Tian, Wenqing Wang, Ding, Liu, Youmin Zhang

TL;DR
This paper introduces LLM-TKESS, a novel framework leveraging large language models for knowledge-embedded soft sensing in industrial processes, addressing data scarcity, multi-modal integration, and customization challenges.
Contribution
The paper presents a new LLM-based soft sensing framework with an auxiliary encoder and two-stage fine-tuning, enabling flexible, knowledge-rich, and efficient process monitoring.
Findings
Outperforms traditional models in small sample scenarios
Effectively integrates text-based knowledge with structured data
Demonstrates superior predictive accuracy in case study
Abstract
Data-driven soft sensors (DDSS) have become mainstream methods for predicting key performance indicators in process industries. However, DDSS development requires complex and costly customized designs tailored to various tasks during the modeling process. Moreover, DDSS are constrained to a single structured data modality, limiting their ability to incorporate additional contextual knowledge. Furthermore, DDSSs' limited representation learning leads to weak predictive performance with scarce data. To address these challenges, we propose a general framework named LLM-TKESS (large language model for text-based knowledge-embedded soft sensing), harnessing the powerful general problem-solving capabilities, cross-modal knowledge transfer abilities, and few-shot capabilities of LLM for enhanced soft sensing modeling. Specifically, an auxiliary variable series encoder (AVS Encoder) is proposed…
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Taxonomy
TopicsCollaboration in agile enterprises · Advanced Computational Techniques and Applications
