Predictive Maintenance in Underground using artificial intelligence

Autores/as

  • Nelson Chambi National University Of Engineering, Perú
  • Celso Sanga San Agustin National University, Perú
  • Alejandra Sanga San Agustin National University, Perú
  • Piero Sanga San Agustin National University, Perú

DOI:

https://doi.org/10.18687/LACCEI2025.1.1.2114

Palabras clave:

Predictive maintenance, Underground mining, Artificial intelligence, Sensors, oil analysis

Resumen

The article addresses predictive maintenance (PdM) applied to underground mining equipment using artificial intelligence, a crucial approach for improving efficiency and reducing operating costs. The objective is to optimize the equipment's lifespan through early fault detection, avoiding costly repairs and unplanned downtime. The challenge lies in the extreme conditions and intensive use of the equipment, which makes it difficult to predict failures using traditional methods. The methodology includes continuous monitoring of key parameters (temperature, pressure, oil analysis, thickness measurement) through sensors and real-time data analysis. This data is processed using artificial intelligence and machine learning techniques to identify patterns that precede failures. The results show that PdM can reduce maintenance costs by 8% and increase equipment availability by 10%, leading to greater productivity and safety in underground mining operations

Descargas

Publicado

2025-04-09

Número

Sección

Articles

Cómo citar

Chambi, N., Sanga, C., Sanga, A., & Sanga, P. (2025). Predictive Maintenance in Underground using artificial intelligence. LACCEI, 1(12). https://doi.org/10.18687/LACCEI2025.1.1.2114