Estimation of monthly evaporative loss using relevance vector machine, extreme learning machine and multivariate adaptive regression spline models

被引:116
作者
Deo, Ravinesh C. [1 ]
Samui, Pijush [2 ]
Kim, Dookie [3 ]
机构
[1] Univ Southern Queensland, ICACS, Sch Agr Computat & Environm Sci, Springfield, Qld 4300, Australia
[2] VIT Univ, Ctr Disaster Mitigat & Management, Vellore 632014, Tamil Nadu, India
[3] Kunsan Natl Univ, Dept Civil Engn, Jeonbuk, South Korea
关键词
Prediction of evaporation; Machine learning; Relevance vector machine; Extreme learning machine; Multivariate adaptive regression spline; ARTIFICIAL NEURAL-NETWORK; DAILY PAN EVAPORATION; ESTIMATING SOLAR-RADIATION; TIME-SERIES; PREDICTION; ANN; PRECIPITATION; CAPABILITIES; QUEENSLAND; AUSTRALIA;
D O I
10.1007/s00477-015-1153-y
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The forecasting of evaporative loss (E) is vital for water resource management and understanding of hydrological process for farming practices, ecosystem management and hydrologic engineering. This study has developed three machine learning algorithms, namely the relevance vector machine (RVM), extreme learning machine (ELM) and multivariate adaptive regression spline (MARS) for the prediction of E using five predictor variables, incident solar radiation (S), maximum temperature (T (max)), minimum temperature (T (min)), atmospheric vapor pressure (VP) and precipitation (P). The RVM model is based on the Bayesian formulation of a linear model with appropriate prior that results in sparse representations. The ELM model is computationally efficient algorithm based on Single Layer Feedforward Neural Network with hidden neurons that randomly choose input weights and the MARS model is built on flexible regression algorithm that generally divides solution space into intervals of predictor variables and fits splines (basis functions) to each interval. By utilizing random sampling process, the predictor data were partitioned into the training phase (70 % of data) and testing phase (remainder 30 %). The equations for the prediction of monthly E were formulated. The RVM model was devised using the radial basis function, while the ELM model comprised of 5 inputs and 10 hidden neurons and used the radial basis activation function, and the MARS model utilized 15 basis functions. The decomposition of variance among the predictor dataset of the MARS model yielded the largest magnitude of the Generalized Cross Validation statistic (a parts per thousand 0.03) when the T (max) was used as an input, followed by the relatively lower value (a parts per thousand 0.028, 0.019) for inputs defined by the S and VP. This confirmed that the prediction of E utilized the largest contributions of the predictive features from the T (max), verified emphatically by sensitivity analysis test. The model performance statistics yielded correlation coefficients of 0.979 (RVM), 0.977 (ELM) and 0.974 (MARS), Root-Mean-Square-Errors of 9.306, 9.714 and 10.457 and Mean-Absolute-Error of 0.034, 0.035 and 0.038. Despite the small differences in the overall prediction skill, the RVM model appeared to be more accurate in prediction of E. It is therefore advocated that the RVM model can be employed as a promising machine learning tool for the prediction of evaporative loss.
引用
收藏
页码:1769 / 1784
页数:16
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