Industrial-Grade Smart Troubleshooting through Causal Technical Language Processing: a Proof of Concept

Autor: Trilla, Alexandre, Yiboe, Ossee, Mijatovic, Nenad, Vitrià, Jordi
Rok vydání: 2024
Předmět:
Druh dokumentu: Working Paper
Popis: This paper describes the development of a causal diagnosis approach for troubleshooting an industrial environment on the basis of the technical language expressed in Return on Experience records. The proposed method leverages the vectorized linguistic knowledge contained in the distributed representation of a Large Language Model, and the causal associations entailed by the embedded failure modes and mechanisms of the industrial assets. The paper presents the elementary but essential concepts of the solution, which is conceived as a causality-aware retrieval augmented generation system, and illustrates them experimentally on a real-world Predictive Maintenance setting. Finally, it discusses avenues of improvement for the maturity of the utilized causal technology to meet the robustness challenges of increasingly complex scenarios in the industry.
Comment: 2nd Workshop on Causal Inference and Machine Learning in Practice at the KDD 2024 Conference. arXiv admin note: text overlap with arXiv:2407.11056
Databáze: arXiv