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Application Research of Support Vector Regression in Coal Mine Ground-Water-Level Forecasting

机译:煤矿地下水位预测中支持向量回归的应用研究

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The forecast of the mine Ground-water-level is an issue with many influencing factors, highly non-linear and temporal series. SVR (Support Vector Regression) is applied to forecast Coal Mine Ground-water-level in this paper. Appropriate kernel function and parameters are chosen based on the analysis to SVR regression algorithm. This paper proposes the Forecasting Model of Coal Mine Ground-water-level basing on SVR regression algorithm and determines the forecast of the input factor and the output factor according to the physical geography and the hydrology geology situation of the chosen mining area. The numerical test results show that the forecast results have compatibility with the actual measurement result. We verify that the forecast model of Coal Mine Ground-water-level has effect, and provide a new effective method to the Forecasting of Coal Mine Ground-water-level.
机译:矿山地下水位的预测是许多影响因素,高度非线性和时间系列的问题。 SVR(支持向量回归)应用于本文的煤矿地下水位。基于对SVR回归算法的分析来选择适当的内核功能和参数。本文提出了基于SVR回归算法的煤矿地下水位的预测模型,并根据物理地理学层的输入因子和输出因子的预测和所选矿区水文地质情况。数值测试结果表明,预测结果具有与实际测量结果的兼容性。我们核实煤矿地下水位的预测模型具有效果,并为煤矿地下水位预测提供了一种新的有效方法。

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