Affiliation:
1. Mine Big Data Research Institute, China Coal Research Institute, Beijing 100013, China
2. State Key Laboratory of Coal Mining and Clean Utilization, Beijing 100013, China
Abstract
Production scheduling management is crucial for optimizing mine productivity. With the trend towards intelligent mines, a lean scheduling management mode is required to align with intelligent conditions. This paper proposes a lean scheduling framework, based on short interval control as an effective tool to adapt intelligent scheduling in underground mines. The framework shortens the production monitoring and adjustment cycle to near-real-time, enabling timely corrective measures to minimize schedule deviations and improve overall production efficiency. An intelligent scheduling platform is implemented by adopting the digital twin platform framework, the intelligent scheduling mobile terminal module, and the integrated scheduling control cockpit module. The results indicate that the platform is effective in promoting mine intelligence by providing benefits in information transparency, flexible scheduling, lean production, and scientific decision-making. The proposed framework provides a practical solution for implementing intelligent scheduling in underground mines, contributing to the overall improvement of mine productivity. Overall, this paper provides insights for implementing intelligent scheduling in underground mines.
Funder
CCTEG Technology Innovation and Entrepreneurship Fund
Subject
Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction
Reference30 articles.
1. Intelligent Mining Technology for an Underground Metal Mine Based on Unmanned Equipment;Li;Engineering,2018
2. Mining 4.0—The Impact of New Technology from a Work Place Perspective;Lw;Min. Metall. Explor.,2019
3. Innovation in the Mining Industry: Technological Trends and a Case Study of the Challenges of Disruptive Innovation;Hartlieb;Min. Metall. Explor.,2020
4. Coal Mine Safety Intelligent Monitoring Based on Wireless Sensor Network;Chen;IEEE Sens. J.,2020
5. The Future of Mining in Ghana: Are Stakeholders Prepared for the Adoption of Autonomous Mining Systems?;Kansake;Resour. Policy,2019