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Research on Safety Evaluation of Coal Mine Airflow System Based on BP Neural Network

机译:基于BP神经网络的煤矿通风系统安全评价研究。

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In coal mine production logistics there are many random factors that result the characters of complexity, non-linear and uncertain of production system. But traditional safety evaluation methods rely on subjective experience, and have a lower evaluating precision. Artificial neural network has better nonlinear mapping ability and high learning ability, which overcomes the deficiencies. Therefore, BP neural network is utilized to establish a safety evaluation model of coal mine airflow system. Firstly, based on the knowledge of coal mine airflow system build an evaluation index system, secondly select reasonable samples of coal mine airflow system as training samples, adjust parameters and add momentum gradient for a better convergence speed, then after a large number of training select the best training network as an evaluation model. Finally, present the application of this model through case analysis, also give reasonable suggestions for coal mine safety production.
机译:在煤矿生产物流中,有许多随机因素导致生产系统的复杂性,非线性和不确定性。但是传统的安全评估方法依靠主观经验,评估精度较低。人工神经网络具有较好的非线性映射能力和较高的学习能力,克服了不足。因此,利用BP神经网络建立煤矿通风系统安全性评价模型。首先,根据煤矿通风系统的知识,建立评价指标体系,其次选择合理的煤矿通风系统样本作为训练样本,调整参数并增加动量梯度,以达到较好的收敛速度,然后经过大量训练选择最佳培训网络作为评估模型。最后,通过实例分析,介绍了该模型的应用,并为煤矿安全生产提供了合理的建议。

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