首页> 外文期刊>Journal of hydrologic engineering >Forecasting Evaporative Loss by Least-Square Support-Vector Regression and Evaluation with Genetic Programming, Gaussian Process, and Minimax Probability Machine Regression: Case Study of Brisbane City
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Forecasting Evaporative Loss by Least-Square Support-Vector Regression and Evaluation with Genetic Programming, Gaussian Process, and Minimax Probability Machine Regression: Case Study of Brisbane City

机译:通过最小二乘支持向量回归预测蒸发损失并通过遗传编程,高斯过程和最小极大概率机器回归进行评估:布里斯班市的案例研究

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摘要

Daily evaporative loss (E_p) forecasting models are decisive tools with potential applications in hydrology, the design of water systems, urban water assessments, and irrigation management. This paper performs a case study for forecasting daily E_p for Brisbane city using least-square support-vector regression (LSSVR). A limited set of predictor data with solar radiation and exposure, maximum/minimum temperatures, wind speed, and precipitation (March 1, 2014 to March 31, 2015) is adopted to develop the predictive model. The results are evaluated with Gaussian process regression (GPR), minimax probability machine regression (MPMR), and genetic programming (GP) models. In the testing phase, a correlation coefficient of 0.895 is attained between the observed and forecasted E_p by LSSVR that contrasted 0.875 (GPR), 0.864 (MPMR), and 0.628 (GP). A sensitivity test of predictor variables shows that approximately 28.5% of features are extracted from solar radiation data with 18.1% (wind speed), 16.6% (precipitation), and 10-15% (minimum and maximum temperature). The root-mean square error for LSSVR is lower than the GPR, MPMR, and GP models by 16.2, 11.4, and 79.4%, and the cumulative frequency of forecasting error attained for LSSVR is the highest within the smallest error band. The results confirm the better utility of LSSVR in relation to GP, GPR, and MPMR models for forecasting daily evaporative loss.
机译:每日蒸发损失(E_p)预测模型是决定性工具,在水文学,供水系统设计,城市用水评估和灌溉管理中具有潜在应用。本文进行了一个案例研究,使用最小二乘支持向量回归(LSSVR)预测布里斯班市的每日E_p。采用了有限的预测数据(包括太阳辐射和暴露,最高/最低温度,风速和降水)(2014年3月1日至2015年3月31日)来开发预测模型。使用高斯过程回归(GPR),最小最大概率机器回归(MPMR)和遗传规划(GP)模型评估结果。在测试阶段,通过LSSVR观察到的E_p与预测的E_p之间的相关系数为0.895,与0.875(GPR),0.864(MPMR)和0.628(GP)形成对比。预测变量的敏感性测试表明,从太阳辐射数据中提取了大约28.5%的特征,其中风速为18.1%,降水量为16.6%,最低和最高温度为10-15%。 LSSVR的均方根误差比GPR,MPMR和GP模型低16.2%,11.4%和79.4%,并且LSSVR获得的预测误差的累积频率在最小误差范围内最高。结果证实,相对于GP,GPR和MPMR模型,LSSVR可以更好地预测每日蒸发损失。

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