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首页> 外文期刊>Computers and Electronics in Agriculture >Hybrid extreme learning machine with meta-heuristic algorithms for monthly pan evaporation prediction
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Hybrid extreme learning machine with meta-heuristic algorithms for monthly pan evaporation prediction

机译:Hybrid极限学习机,具有元启发式算法,用于每月平移蒸发预测

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Accurate estimation of pan evaporation (E-p) is of great significance to the development of agricultural irrigation systems and agricultural water resources management. The purpose of this study was to explore the applicability of coupling extreme learning machine (ELM) model with two new meta-heuristic algorithms, i.e. whale optimization algorithm (WOA) and flower pollination algorithm (FPA) for monthly E-p prediction. To achieve this goal, two hybrid models of WOAELM and FPAELM were developed for predicting monthly E-p in the Poyang Lake Basin of Southern China as a case study. Their performances were further compared with the differential evolution algorithm-optimized ELM (DEELM), improved M5 model tree (M5P) and artificial neural networks (ANN) models. Monthly climatic parameters, including maximum and minimum temperature (T-max and T-min), sunshine duration (n), relative humidity (RH), wind speed (U) and E-p from four weather stations in the basin from 2001 to 2015 were collected, those of which during 2001-2010 were used for model training and those during 2011-2015 for model testing. The obtained results showed that the hybrid FPAELM model exhibited the highest prediction accuracy at all the four stations, followed by the hybrid WOAELM model, both of which were superior to the other traditional models. Heuristic algorithms, especially FPA, are highly recommended for improving performance of standalone machine learning models. Compared with the combination of multi-meteorological elements, the combination of Tmax Tmin and extraterrestrial solar radiation achieved higher but still satisfactory prediction accuracy, with the absolute error less than 0.1 mm d(-1) averaged over the four stations. Tmax Tmin and extraterrestrial solar radiation were thus suggested to be used for monthly E-p estimation in this area considering the convenience of data acquisition.
机译:准确估计平移蒸发(E-P)对农业灌溉系统和农业水资源管理的发展具有重要意义。本研究的目的是探讨耦合极限学习机(ELM)模型与两个新的元启发式算法,即每月E-P预测的鲸鱼优化算法(WOA)和花授粉算法(FPA)。为实现这一目标,开发了两种WOAELM和FPAELM的混合模型,以预测中国南方鄱阳湖盆地的月度E-P作为案例研究。与差分演进算法优化的ELM(DEELM),改进的M5模型树(M5P)和人工神经网络(ANN)模型相比,它们的性能进一步比较。每月气候参数,包括从2001年到2015年从盆地中的四个气象站的阳光持续时间(n),相对湿度(n),风速(U)和EP的最大温度(T-MAX和T-MIN),是收集的那些在2001 - 2010年期间用于模型培训和2011-2015期间的模型测试。所得结果表明,混合FPAELM模型在所有四个站点上表现出最高的预测精度,其次是混合WOAELM模型,两者都优于其他传统模型。主教算法,特别是FPA,强烈推荐用于提高独立机器学习模型的性能。与多气象元素的组合相比,Tmax Tmin和外星太阳辐射的组合达到了更高但仍然令人满意的预测精度,绝对误差小于四个站的0.1mm d(-1)。因此,考虑到数据采集的便利性,因此建议在该区域中用于每月E-P估计的Tmax Tmin和外星风辐射。

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