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摘要:
The mining industry consumes an enormous amount of energy globally,the main part of which is conservable.Diesel is a key source of energy in mining operations,and mine locomotives have significant diesel consumption.Train speed has been recognized as the primary parameter affecting locomotive fuel consumption.In this study,an artificial intelligence(AI)look-forward control is developed as an online method for energy-efficiency improvement in mine-railway operation.An AI controller will modify the desired train-speed profile by accounting for the grade resistance and speed limits of the route ahead.Travel-time increment is applied as an improvement constraint.Recent models for mine-train-movement simulation have estimated locomotive fuel burn using an indirect index.An AI-developed algorithm for mine-train-movement simulation can correctly predict locomotive diesel consumption based on the considered values of the transfer parameters in this paper.This algorithm finds the mine-locomotive subsystems,and satisfies the practical diesel-consumption data specified in the locomotive’s manufacturer catalog.The model developed in this study has two main sections designed to estimate locomotive fuel consumption in different situations by using an artificial neural network(ANN),and an optimization section that applies a genetic algorithm(GA)to optimize train speed for the purpose of minimizing locomotive diesel consumption.The AI model proposed in this paper is learned and validated using real datasets collected from a mine-railway route in Western Australia.The simulation of a mine train with a commonly used locomotive in Australia GeneralMotors SD40-2(GM SD40-2)on a local railway track illustrates a significant reduction in diesel consumption along with a satisfactory travel-time increment.The simulation results also demonstrate that the AI look-forward controller has faster calculations than control systems based that use dynamic programming.
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篇名 Energy-Efficiency Improvement in Mine-Railway Operation Using AI
来源期刊 能源与动力工程:英文版 学科 工学
关键词 Fuel consumption energy efficiency LOCOMOTIVE mining RAILWAY simulation optimization artificial INTELLIGENCE neural network genetic algorithm look-forward control
年,卷(期) 2019,(9) 所属期刊栏目
研究方向 页码范围 333-348
页数 16页 分类号 TP3
字数 语种
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研究主题发展历程
节点文献
Fuel
consumption
energy
efficiency
LOCOMOTIVE
mining
RAILWAY
simulation
optimization
artificial
INTELLIGENCE
neural
network
genetic
algorithm
look-forward
control
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研究来源
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研究去脉
引文网络交叉学科
相关学者/机构
期刊影响力
能源与动力工程:英文版
月刊
1934-8975
武汉洪山区卓刀泉北路金桥花园C座4楼
出版文献量(篇)
300
总下载数(次)
0
总被引数(次)
0
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