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Prediction of Hidden Dangers in Mine Production Using Timeliness Managing Extreme Learning Machine for Cloud Services

机译:使用及时管理云服务的极限学习机预测矿山生产中的隐患

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摘要

Recently, there has been an ever-increasing interest in the study of data-driven analytics to predict hidden dangers in the cloud service-based coal mine production, with the purpose of the prevention of possible accidents. In this paper, to achieve the above prediction, a machine learning algorithm based on the single-hidden layer feed forward network (SLFN) using timeliness managing extreme learning machine (TMELM) is utilized. Compared with those traditional learning algorithms, extreme learning machine (ELM) has its unique feature of a higher generalization capability at a much faster learning speed. In addition, the timeliness managing ELM has been proposed by incorporating timeliness management scheme into ELM approach. Under the timeliness managing ELM scheme used to predict the hidden dangers, the newly incremental data could be prior to the historical data while maximizing the contribution of the newly increasing training data, since it may be more feasible that the incremental data can contribute reasonable weights to represent the current production situation in accordance with the practical analysis for accidents in coal mine production. The experimental results on the coal mines of Beijing show that by using timeliness managing ELM, the prediction accuracy of hidden danger can be improved with better stability compared with other similar machine learning methods.
机译:近来,人们对以数据驱动的分析进行研究以预测基于云服务的煤矿生产中的隐患的兴趣日益浓厚,目的是预防可能的事故。在本文中,为了实现上述预测,利用了基于单隐藏层前馈网络(SLFN)的机器学习算法,该算法使用了及时性管理极限学习机(TMELM)。与传统的学习算法相比,极限学习机(ELM)具有更高的泛化能力和更快的学习速度。此外,通过将及时性管理方案纳入ELM方法中,提出了及时性管理ELM。在用于预测隐患的及时性管理ELM方案下,新增量数据可以先于历史数据,同时最大化新增加的训练数据的贡献,因为增量数据可以对合理的权重做出贡献更可行。根据对煤矿生产事故的实际分析,代表当前的生产状况。在北京煤矿的实验结果表明,与其他类似的机器学习方法相比,通过及时管理ELM,可以提高隐患的预测精度,并具有更好的稳定性。

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