MECHA: Modular Equipment Chat Helper Agent for Maintenance and Operation of Machinery Used in Heavy Equipment Production Lines
Abstract
Currently, large language models have introduced numerous new ideas for further automation in the industrial sector. The application of large language models primarily focuses on three areas: knowledge bases, workflows, and intelligent agents. For instance, the manufacturing industry has started using knowledge bases to manage the vast amount of documents generated during research and development and production processes, enabling engineers and workers to retrieve knowledge more quickly.However, due to differences in the proficiency of on-site maintenance personnel, user retrieval habits, and the limitations of information available on-site, directly constructing a knowledge base for queries cannot provide truly practical maintenance operation suggestions for on-site personnel. This study, based on the large model knowledge base and multi-agent technology, constructs an intelligent agent system for production line operation and maintenance in industrial production processes, offering applications for Q&A and multi-agent multi-turn Q&A fault diagnosis.
Keywords: Large Language Model, SFT, Knowledge Base, Agent System, Equipment Maintenance
DOI: 10.54941/ahfe1006952
Cite this paper
More from this volume
- Warnings and Multilingual Audiences
- EAT Da Vinci 3.0_Translating Cinematic Narrative into Media Art Installation
- From Manual to Automated: Enhancing Inclusivity in Foreign Language Education with Technology
- The effect of multi-sensory physical experiences in daily emotional self-tracking service for emotion self-awareness
- Parametric generation based graphic design and spatial expression research
- Gender Stereotypes in Video Gaming: Impacts of Anxiety Levels, Verbal Communication, and Performance
- Exploring Usability And User-experience Metrics With A Novel AR App In The MASTERLY Project
- Drawing Dialogues Between Generative AI and Children with Autism: A Qualitative Study on the Externalization of “Understanding”
- Human-Centered Design of Integrated Food Service Management Systems: Reducing Cognitive Load in Resource-Constrained Kitchen Operations
- The Design Futures Art-driven (DFA) Method: Structuring Art-Tech Collaboration for Sustainable Future of Food System
- Increasing importance of Instinct
- Bridging the Privacy Gap: Stakeholder Solutions to Support Transparent Data Management Practices in Digital Health Research


AHFE Open Access