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Detection of oil yield from oil shale based on near-infrared spectroscopy combined with wavelet transform and least squares support vector machines

机译:基于近红外光谱的油页岩从小波变换和最小二乘支持向量机的检测

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摘要

In order to improve the prediction accuracy for the low reflectance spectra of the oil shale samples, the detection of the oil yield from the oil shale was established by using the near-infrared spectroscopy combined with the wavelet transform method and the least squares support vector machines algorithm. The calibration and prediction sets of the oil shale samples were portioned by the Kennard-Stone algorithm. The wavelet transform method was used for denoising and compressing signals. Ant colony optimization algorithm was employed for variable selection. The results show that without using ant colony optimization algorithm, the model based on continuous wavelet transform method is optimal, and the wavelet function and scale is db9 and 7 respectively. Then determination coefficient and root mean square error prediction is 0.94 and 0.38. Using ant colony optimization algorithm, the model based on the discrete wavelet transform method is the best, and determination coefficient and root mean square error prediction of prediction set is 0.96 and 0.38 respectively. Therefore, the proposed solution is suitable for determining the oil yield of oil shale and helpful for other rock samples of the low reflectance spectra.
机译:为了提高油页面样本的低反射光谱的预测精度,通过使用近红外光谱与小波变换方法和最小二乘支持向量机建立来自油页岩的油产量的检测算法。油页岩样品的校准和预测集由肯纳德石算法分配。小波变换方法用于去噪和压缩信号。用于可变选择的蚁群优化算法。结果表明,在不使用蚁群优化算法的情况下,基于连续小波变换方法的模型是最佳的,并且小波函数和比例分别为DB9和7。然后确定系数和根均方误差预测为0.94和0.38。使用蚁群优化算法,基于离散小波变换方法的模型是最佳的,预测集的确定系数和均方根误差分别为0.96和0.38。因此,所提出的解决方案适用于确定油页岩的油产量,有助于低反射光谱的其他岩石样品。

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