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首页> 外文期刊>Acta Geophysica >Study on logging interpretation of coal-bed methane content based on deep learning
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Study on logging interpretation of coal-bed methane content based on deep learning

机译:基于深度学习的煤层气含量测井解释研究

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To solve quantitative interpretation problems in coal-bed methane logging, deep learning is introduced in this study. Coal-bed methane logging data and laboratory results are used to establish a deep belief network??(DBN) to compute coal-bed methane content. Network parameter effects on calculations are examined. The calculations of DBN, statistical probabilistic method and Langmuir equation are compared. Results show that, first, the precision and speed of DBN calculation should determine the restricted Boltzmann machinea??s quantity. Second, the hidden layer neuron quantity must align with calculation accuracy and stability. Third, the ReLU function is the best for logging data; the Sigmoid function and Linear function are second; and the Softmax function has no effect. Fourth, the cross-entropy function is superior to MSE function. Fifth, RBMs make DBN more accuracy than BPNN. Furthermore, DBN calculation accuracy and stability are better than those of statistical probabilistic method and Langmuir equation.
机译:为了解决煤层气测井中的定量解释问题,本研究引入了深度学习。煤层气测井数据和实验室结果用于建立深度信度网络(DBN)来计算煤层气含量。检查网络参数对计算的影响。比较了DBN的计算,统计概率方法和Langmuir方程。结果表明,首先,DBN计算的精度和速度应确定受限的Boltzmann机器的数量。其次,隐层神经元数量必须与计算精度和稳定性一致。第三,ReLU功能最适合记录数据。 Sigmoid函数和Linear函数第二。而Softmax功能无效。第四,交叉熵函数优于MSE函数。第五,RBM使DBN的准确性高于BPNN。此外,DBN的计算准确性和稳定性优于统计概率法和Langmuir方程。

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