基于FNN和D-S证据理论的矿井通风安全评价

He Jin-can, Xu Li-zhong, Yao Hong-xi, Shen Ping
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引用次数: 3

摘要

介绍了一种基于模糊神经网络(FNN)和D-S证据理论的信息融合方法,用于矿井通风系统安全评价。该方法利用模糊神经网络将模糊规则信息、专家语言信息等引入融合系统,并将各神经网络的输出作为D-S证据理论的基本概率分配函数(BPAF),根据D-S证据理论的组合规则将其与BPAF进行融合,从而对通风系统进行评价。该方法提高了系统的抗干扰能力,增强了系统的容错能力。根据《矿山安全规程2005》的标准,以监测数据为验证范本,利用统计数据和专家经验及训练范本得到估计的析因权重。仿真结果表明,该方法可用于通风系统的评估,并与基于神经网络和D-S证据理论的其他方法进行比较,精度更高
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Mine Ventilation Safety Assessment Based on FNN and D-S Evidence Theory
This paper introduces an information fusion methodology, which is based on fuzzy neural network (FNN) and D-S evidence theory, to assess the mine ventilation system safety. This method imports fuzzy rule information, expert language information, etc. to fusion system by using fuzzy neural network, and uses the output of each neural network as the base probability assignment function (BPAF) of D-S evidence theory, and fuses this with the BPAF according to the combination rule of D-S evidence theory, which gives the assessment of the ventilation system. This method improves the systemic anti-jamming ability, and tones up the systemic fault tolerance ability. According to the standard of "Mining Safety Rules, 2005", we get the estimation factorial weight by the statistic data and expert experience and the training stylebook, looking the monitoring data as the validating stylebook. The results of simulation shows that the method can be used to the assessment of ventilation system, and compares it with the other method based on neural network and D-S evidence theory, the precision is higher
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