首页> 外文会议>Proceedings of the IASTED international conferences on informatics >HIGH ORDER PSEUDO MAC LAURIN FEEDFORWARD BACKPROPAGATION ARTIFICIAL NEURAL NETWORKS: INFILLING MEAN ANNUAL FLOWS
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HIGH ORDER PSEUDO MAC LAURIN FEEDFORWARD BACKPROPAGATION ARTIFICIAL NEURAL NETWORKS: INFILLING MEAN ANNUAL FLOWS

机译:高阶伪MAC LAURIN前向反向传播人工神经网络:填充平均年流量

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Variants of feedforward backpropagation (BP) artificial neural network (ANNs) such as pseudo Mac Laurin power series order 1 (McL1BP), order 2 (McL2BP), order 3 (McL3BP) and order 4 (McL4BP) models are used to fill in mean annual streamflows. The baseline of modeling process is the standard feedforward backpropagation ANN (StandBP). The sigmoid function is used as activation function. Performance comparisons of data infilling models (ANNs) are conducted using the Root Mean Square Error of Predictions (RMSEp) and graphical plots. To test the performance of the data infilling techniques, selected streamflow gauges (i.e. the Diepkloof (control) gauge on the Wonderboomspruit River and the Molteno (target) gauge on Stormbergspruit River) of the Orange drainage river systems of South Africa have been used. The results demonstrated that relatively higher order ANN models; i.e. McL3BP, McL4BP can still outperform the rest of techniques for 7 % (except StandBP), 20 % and 30 % missing data proportions at Molteno gauge. At the same time they have been outperformed by the rest of ANN models at 13 %. Generally higher and low order Pseudo MacLaurin ANNs are acceptable to fill in missing mean annual flows at Molteno gauge. The accuracy of estimated mean annual values at Molteno is substantially negatively affected beyond 20 % gap size for all ANNs. Hence gap size beyond 20 % yields to relatively higher value of RMSEp for both high and low MacLaurin feedforward ANN techniques. A linear relationship could describe accuracy of estimated values and gap size at Molteno. Further work should include other data regimes as well as other South African catchment areas. Other activation functions should also be tested.
机译:前馈反向传播(BP)人工神经网络(ANN)的变体(例如伪Mac Laurin幂级数1级(McL1BP),2级(McL2BP),3级(McL3BP)和4级(McL4BP)模型)用于填充均值年度流量。建模过程的基准是标准前馈反向传播ANN(StandBP)。乙状结肠功能用作激活功能。使用预测的均方根误差(RMSEp)和图形图进行数据填充模型(ANN)的性能比较。为了测试数据填充技术的性能,已使用了南非奥兰治排水系统的选定流量表(即Wonderboomspruit河上的Diepkloof(控制)表和Stormbergspruit河上的Molteno(目标)表)。结果表明,相对较高阶的人工神经网络模型;即McL3BP,McL4BP仍能胜过其余技术,在Molteno量规上丢失数据的比例为7%(StandBP除外),20%和30%。同时,它们在其他ANN模型中的表现要好于13%。通常,可以接受高阶和低阶伪MacLaurin人工神经网络来填补Molteno量表中缺失的平均年流量。对于所有人工神经网络,超过20%的差距大小,对Molteno估计的年平均值的准确性都会产生负面影响。因此,对于高和低的MacLaurin前馈ANN技术,间隙尺寸超过20%时,均会获得相对较高的RMSEp值。线性关系可以描述Molteno处估计值和间隙大小的准确性。进一步的工作应包括其他数据制度以及其他南非集水区。其他激活功能也应进行测试。

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