鞠春雷, 聂方超, 刘文岗, 郭金山, 张江石. 基于长短期记忆网络的矿工不安全行为研究[J]. 煤矿安全, 2020, 51(9): 260-264.
    引用本文: 鞠春雷, 聂方超, 刘文岗, 郭金山, 张江石. 基于长短期记忆网络的矿工不安全行为研究[J]. 煤矿安全, 2020, 51(9): 260-264.
    JU Chunlei, NIE Fangchao, LIU Wengang, GUO Jinshan, ZHANG Jiangshi. Research on Miners’ Unsafe Behavior Based on Long and Short Term Memory[J]. Safety in Coal Mines, 2020, 51(9): 260-264.
    Citation: JU Chunlei, NIE Fangchao, LIU Wengang, GUO Jinshan, ZHANG Jiangshi. Research on Miners’ Unsafe Behavior Based on Long and Short Term Memory[J]. Safety in Coal Mines, 2020, 51(9): 260-264.

    基于长短期记忆网络的矿工不安全行为研究

    Research on Miners’ Unsafe Behavior Based on Long and Short Term Memory

    • 摘要: 矿工不安全行为的出现是复杂的非线性动力过程,为预测不安全行为时间序列,选择具有“记忆”功能和解决梯度消失问题的长短期记忆网络。使用TensorFlow下Keras搭建基于长短期记忆网络的不安全行为时间序列预测模型,使用A、B煤矿2年共3 405条不安全行为序列数据进行模型训练和测试,根据交叉验证集选择最优参数。实验结果表明:构建的4个时间序列预测模型最小的平均绝对误差为0.080 7,最大的平均绝对误差为0.333 5,能够很好预测煤矿未来一定时间段内的不安全行为。

       

      Abstract: The emergence of unsafe behavior of miners is a complex nonlinear dynamic process. In order to predict the time series of unsafe behavior, the long and short term memory with a “memory” function and a solution to the disappearance of gradients is selected. Keras under TensorFlow was used to build a time series prediction model of unsafe behavior based on long and short term memory. A total of 3 405 time series data in coal mine A and B were used for model training and testing, and the optimal parameters were selected according to the cross validation set. The results showed that the minimum average absolute error of the four time series prediction models is 0.080 7 and the maximum average absolute error is 0.333 5 and those models can well predict unsafe behavior in a certain period of time in the coal mine.

       

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