Rough set and neural network based risk evaluation under coalmine with detect mobile robot

L. Jian, Pu Haitao, Liu Quanxin
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引用次数: 3

Abstract

The objective of this paper is to present a novel method based on detect mobile robot for risk evaluation under coal mine, the approach is based on rough set and neural network theories, the data of the evaluation chart were reduced by using rough sets reduction function and then the reduced data were transferred to the BP neural network as training data. This method provides a new concept for the establishment of environmental safety assessment models. The result of the experiments shows that this method is valid for the assessment of the gas safety and the estimated result is very reliable.
基于粗糙集和神经网络的移动探测机器人煤矿风险评价
提出了一种基于移动检测机器人的煤矿井下风险评估新方法,该方法基于粗糙集和神经网络理论,利用粗糙集约简函数对评估图数据进行约简,然后将约简后的数据传递给BP神经网络作为训练数据。该方法为环境安全评价模型的建立提供了新的思路。实验结果表明,该方法对燃气安全评价是有效的,评价结果是可靠的。
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