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首页> 外文期刊>Energy sources. Part A, Recovery, utilization, and environmental effects >Monitoring and ANN Modeling of Coal Stockpile Behavior under Different Atmospheric Conditions
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Monitoring and ANN Modeling of Coal Stockpile Behavior under Different Atmospheric Conditions

机译:大气条件下煤炭储存行为的监测与人工神经网络建模

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摘要

In this study, an industrial-sized stockpile of 5 m width, 4 m height, and 10 m length was built in a coal stock area to investigate coal stockpile behavior under different atmospheric conditions. The effective parameters on the coal stockpile that were time, weather temperature, atmospheric pressure, air humidity, velocity, and direction of wind values were automatically measured by means of a computer-aided measurement system to obtain Artificial Neural Network (ANN) input data. The coal stockpiles, which should be continuously observed, are capable of spontaneous combustion and then causing serious economical losses due to the mentioned parameters. Afterwards, these measurement values were used for training and testing of the ANN model. Comparison of the experimental and ANN results, accuracy rates of training, and testing were found as 98.6% and 98.7%, respectively. It is shown that possible coal stockpile behavior with this ANN model is powerfully estimated.
机译:在这项研究中,在煤储区建立了宽度为5 m,高度为4 m,高度为10 m的工业规模堆,以研究不同大气条件下的煤堆行为。通过计算机辅助测量系统自动测量煤堆上的有效参数,如时间,天气温度,大气压力,空气湿度,速度和风向,以获取人工神经网络(ANN)输入数据。应连续观察的煤堆能够自燃,然后由于上述参数而造成严重的经济损失。之后,将这些测量值用于ANN模型的训练和测试。实验和人工神经网络结果的比较,训练和测试的准确率分别为98.6%和98.7%。结果表明,使用该人工神经网络模型可以有效地估计煤炭储存量。

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