Data mining mine data: Truck-shovel fleet management systems

- Organization:
- Canadian Institute of Mining, Metallurgy and Petroleum
- Pages:
- 8
- File Size:
- 633 KB
- Publication Date:
- Jan 1, 2007
Abstract
More mining companies are now investing in IT, including updating one of the traditional IT process control tools used in the mining industry: real time in-pit truck allocation control and monitoring systems, or fleet management systems (FMS). These systems have been used to maximize the overall mine production by improving equipment utilization and reducing production costs. Most modern operations monitor the in-pit operations using GPS and wireless communications to produce data. Improvements in bandwidth, sensors, and computing power are causing modern systems to become more complex and generate more data. However, human analysis by simple regression or table generation in spreadsheets of the data is becoming impossible. Data mining solves this data management problem. Data mining finds patterns and relationships in very large data sets. This paper describes the application of modern data mining techniques on truck dispatching systems in a real open pit hard-rock copper mine. The analyses conducted included determining how the trucks performed under particular conditions and allocation systems. The long-term benefits of this work are to identify strengths and improvement opportunities in truck assignment systems and establish the skill sets and IT infrastructure needed in undertaking more complex datadriven technology such as a truck dispatcher trainer.
Citation
APA:
(2007) Data mining mine data: Truck-shovel fleet management systemsMLA: Data mining mine data: Truck-shovel fleet management systems. Canadian Institute of Mining, Metallurgy and Petroleum, 2007.