Applying machine learning techniques to mine ventilation control systems

A. Kashnikov, L. Levin
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引用次数: 8

Abstract

The purpose of the research is determination of mine ventilation system regulators positions providing required airflow on ventilated directions. Currently regulators positions are set iteratively that causes hunting. It is proposed to use historical data of the system for defining regulators functional dependencies on required airflow values with consideration of temporal variability of a ventilation network. The problem is solved by a regression model based on neural networks. Consequently, a set of model parameters is defined and the control algorithm of the system is modified for using a historical data set.
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机器学习技术在矿井通风控制系统中的应用
研究的目的是确定矿井通风系统调节器在通风方向上提供所需气流的位置。目前,监管机构的职位是迭代设置的,这导致了猎杀。建议使用系统的历史数据来定义调节器对所需气流值的功能依赖关系,同时考虑通风网络的时间变异性。采用基于神经网络的回归模型解决了这一问题。因此,定义了一组模型参数,并修改了系统的控制算法以使用历史数据集。
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