A Soft Sensor Method with Uncertainty-Awareness and Self-Explanation Based on Large Language Models Enhanced by Domain Knowledge Retrieval
Shuo Tong, Han Liu, Runyuan Guo, Wenqing Wang, Xueqiong Tian, Lingyun, Wei, Lin Zhang, Huayong Wu, Ding Liu, Youmin Zhang

TL;DR
This paper introduces a novel soft sensor framework leveraging large language models with domain knowledge retrieval, uncertainty quantification, and self-explanation to improve robustness, interpretability, and performance in industrial systems.
Contribution
It pioneers the use of large language models for soft sensor modeling, integrating domain knowledge retrieval and self-explanation for enhanced robustness and interpretability.
Findings
Achieved state-of-the-art predictive accuracy.
Demonstrated strong robustness and flexibility.
Effectively mitigated training instability.
Abstract
Data-driven soft sensors are crucial in predicting key performance indicators in industrial systems. However, current methods predominantly rely on the supervised learning paradigms of parameter updating, which inherently faces challenges such as high development costs, poor robustness, training instability, and lack of interpretability. Recently, large language models (LLMs) have demonstrated significant potential across various domains, notably through In-Context Learning (ICL), which enables high-performance task execution with minimal input-label demonstrations and no prior training. This paper aims to replace supervised learning with the emerging ICL paradigm for soft sensor modeling to address existing challenges and explore new avenues for advancement. To achieve this, we propose a novel framework called the Few-shot Uncertainty-aware and self-Explaining Soft Sensor (LLM-FUESS),…
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Taxonomy
TopicsEducational Technology and Assessment · Expert finding and Q&A systems · Topic Modeling
