Real-time multi-agent fleet management strategy for autonomous underground mines vehicles

IF 2.7 3区 工程技术 Q3 ENVIRONMENTAL SCIENCES International Journal of Mining Reclamation and Environment Pub Date : 2023-08-10 DOI:10.1080/17480930.2023.2236880
M. Gamache, G. Basílico, J. Frayret, D. Riopel
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Abstract

ABSTRACT This paper proposes a real-time multi-agent fleet management strategy for autonomous underground mines vehicles. The fleet management strategy is based on multi-agent technology and includes a novel variation of the Contract-Net protocol. This paper also proposes a set of conflict management procedures to deal with the narrow nature of underground drifts, as well as the sequencing of trucks’ loading activities. This strategy is tested in a simulated environment based on an industrial case study. Both the strategy and the test environment were implanted using AnyLogic. More specifically, the fleet management activities addressed are dispatching, routing and traffic management of mining vehicles, which deal respectively with the assignment of the next destination to a vehicle that has just completed a task; the choice of the route to be followed to reach the selected destination; and traffic coordination in the underground transportation network, made up of one-lane bi-directional road segments. To evaluate the proposed solution, an agent-based simulation model of a Canadian underground gold mine is implemented with AnyLogic. Results show that the proposed coordination strategy outperform the one currently employed strategy by the mine under investigation.
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自动井下车辆的实时多智能体车队管理策略
摘要提出了一种井下自主车辆实时多智能体车队管理策略。该机队管理策略基于多代理技术,包括合同网络协议的一种新变体。本文还提出了一套冲突管理程序,以处理地下巷道狭窄的性质,以及卡车装载活动的顺序。该策略在基于工业案例研究的模拟环境中进行了测试。该策略和测试环境都是使用AnyLogic植入的。更具体地说,处理的车队管理活动是采矿车辆的调度、路线和交通管理,它们分别处理指派刚完成任务的车辆前往下一个目的地的问题;选择要遵循的路线,以达到选定的目的地;并且交通协调在地下交通网络中,由单车道双向路段组成。为了验证该方案的有效性,利用AnyLogic软件实现了加拿大某地下金矿基于agent的仿真模型。结果表明,所提出的协调策略优于该矿山目前采用的协调策略。
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来源期刊
International Journal of Mining Reclamation and Environment
International Journal of Mining Reclamation and Environment ENVIRONMENTAL SCIENCES-MINING & MINERAL PROCESSING
CiteScore
5.70
自引率
8.30%
发文量
30
审稿时长
>12 weeks
期刊介绍: The International Journal of Mining, Reclamation and Environment published research on mining and environmental technology engineering relating to metalliferous deposits, coal, oil sands, and industrial minerals. We welcome environmental mining research papers that explore: -Mining environmental impact assessment and permitting- Mining and processing technologies- Mining waste management and waste minimization practices in mining- Mine site closure- Mining decommissioning and reclamation- Acid mine drainage. The International Journal of Mining, Reclamation and Environment welcomes mining research papers that explore: -Design of surface and underground mines (economics, geotechnical, production scheduling, ventilation)- Mine planning and optimization- Mining geostatics- Mine drilling and blasting technologies- Mining material handling systems- Mine equipment
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