Agent-based Condition Monitoring Assistance with Multimodal Industrial Database Retrieval Augmented Generation
Karl L\"owenmark, Daniel Str\"ombergsson, Chang Liu, Marcus Liwicki, Fredrik Sandin

TL;DR
This paper introduces MindRAG, a modular framework that combines multimodal retrieval-augmented generation with large language models to improve condition monitoring in industry by reducing false alarms and enhancing decision support.
Contribution
It presents a novel multimodal vector store structure and RAG techniques tailored for industrial condition monitoring data, enabling more effective reasoning and decision support.
Findings
Improved alarm management and interpretability of CM systems.
Enhanced fault severity estimation accuracy.
Reduced false alarm rates in industrial settings.
Abstract
Condition monitoring (CM) plays a crucial role in ensuring reliability and efficiency in the process industry. Although computerised maintenance systems effectively detect and classify faults, tasks like fault severity estimation, and maintenance decisions still largely depend on human expert analysis. The analysis and decision making automatically performed by current systems typically exhibit considerable uncertainty and high false alarm rates, leading to increased workload and reduced efficiency. This work integrates large language model (LLM)-based reasoning agents with CM workflows to address analyst and industry needs, namely reducing false alarms, enhancing fault severity estimation, improving decision support, and offering explainable interfaces. We propose MindRAG, a modular framework combining multimodal retrieval-augmented generation (RAG) with novel vector store structures…
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Taxonomy
TopicsAI-based Problem Solving and Planning · Fault Detection and Control Systems · Software System Performance and Reliability
