MRI
MRI India Journals Vol. 13 No. 2 (2026)

AI-Driven Complaint Management for Rail

Authors

  • D.B. Deshmukh S.B. Patil College of Engineering, Indapur
  • Shubham Chavan S.B. Patil College of Engineering, Indapur
  • Aryan Gunaware S.B. Patil College of Engineering, Indapur
  • Yash Patole S.B. Patil College of Engineering, Indapur
  • Manish Sutar S.B. Patil College of Engineering, Indapur

Keywords:

Natural Language Processing Artificial Intelligence Voice Recognition Web Speech API Speech-to-Text Conversion

Abstract

Millions of passengers use India's railways every day, which leads to a high volume of complaints about food, cleanliness, coach conditions, safety, and timeliness. Passengers become dissatisfied with traditional complaint redressal systems because they are frequently manual, slow, and opaque. Our solution to these problems is an AI-Driven Complaint Management System that uses OCR (Optical Character Recognition), Machine Learning, and Natural Language Processing (NLP) to automate the classification, prioritization, and tracking of complaint resolution. OCR is used to extract text from images, while text-based complaints are directly processed and classifies them into relevant departments (e.g., cleanliness, AC, food, safety). Determine priority levels (high, medium, and low), and optional LLM integration improves semantic understanding. Streamlit was used to create an admin dashboard that offers real time analytics, complaint tracking, and resolution management. This system can be implemented in smart railway operations since it increases passenger satisfaction, efficiency, and transparency.

 

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Published

2026-06-05

How to Cite

Deshmukh, D., Chavan, S., Gunaware, A., Patole, Y., & Sutar, M. (2026). AI-Driven Complaint Management for Rail. Multidisciplinary Journal of Research in Engineering and Technology, 13(2), 444–450. Retrieved from https://journals.mriindia.com/index.php/mjret/article/view/3365

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