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Study on ANFIS Application in Coal Mining Stray Current Security Prediction

机译:ANFIS在煤矿杂散电流安全预测中的应用研究

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摘要

On basis of analyzing the principles and structure of adaptive neural fuzzy inference system (ANFIS), this thesis used subtractive clustering algorithm to get fuzzy inference rule numbers and confirm the network structure. In addition, the thesis built ANFIS model adapted to coal mining workface stray current security prediction. The model can do workface stray current security prediction by the easy measured parameters of nonproduction field. If the stray current exceeds standard, the system will alarm on time. Moreover, the thesis compared accuracy rate of the security prediction results under different membership functions. The results indicate that the prediction accuracy of ANFIS based on subtractive clustering is the highest and its computing speed is faster. The prediction results to practical project data indicate that stray current security prediction based on ANFIS has favorable practicality and effect.
机译:在分析自适应神经模糊推理系统(ANFIS)的原理和结构的基础上,本文采用减法聚类算法得到模糊推理规则号并确定网络结构。此外,本文建立了适用于煤矿工作面杂散电流安全预测的ANFIS模型。该模型可以通过非生产领域的简单测量参数来进行工作面杂散电流安全预测。如果杂散电流超过标准,系统将及时报警。此外,论文比较了不同隶属度函数下安全预测结果的准确率。结果表明,基于减法聚类的ANFIS的预测精度最高,计算速度更快。对实际工程数据的预测结果表明,基于ANFIS的杂散电流安全预测具有良好的实用性和效果。

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