首页> 外文期刊>The Science of the Total Environment >A linear and non-linear polynomial neural network modeling of dissolved oxygen content in surface water: Inter- and extrapolation performance with inputs' significance analysis
【24h】

A linear and non-linear polynomial neural network modeling of dissolved oxygen content in surface water: Inter- and extrapolation performance with inputs' significance analysis

机译:地表水中溶解氧含量的线性和非线性多项式神经网络建模:具有输入重要性分析的内插和外推性能

获取原文
获取原文并翻译 | 示例

摘要

Accurate prediction of water quality parameters (WQPs) is an important task in the management of water resources. Artificial neural networks (ANNs) are frequently applied for dissolved oxygen (DO) prediction, but often only their interpolation performance is checked. The aims of this research, beside interpolation, were the determination of extrapolation performance of ANN model, which was developed for the prediction of DO content in the Danube River, and the assessment of relationship between the significance of inputs and prediction error in the presence of values which were of out of the range of training. The applied ANN is a polynomial neural network (PNN) which performs embedded selection of most important inputs during learning, and provides a model in the form of linear and non-linear polynomial functions, which can then be used for a detailed analysis of the significance of inputs. Available dataset that contained 1912 monitoring records for 17 water quality parameters was split into a "regular" subset that contains normally distributed and low variability data, and an "extreme" subset that contains monitoring records with outlier values. The results revealed that the non-linear PNN model has good interpolation performance (R~2 = 0.82), but it was not robust in extrapolation (R~2 = 0.63). The analysis of extrapolation results has shown that the prediction errors are correlated with the significance of inputs. Namely, the out-of-training range values of the inputs with low importance do not affect significandy the PNN model performance, but their influence can be biased by the presence of multi-outlier monitoring records. Subsequently, linear PNN models were successfully applied to study the effect of water quality parameters on DO content. It was observed that DO level is mostly affected by temperature, pH, biological oxygen demand (BOD) and phosphorus concentration, while in extreme conditions the importance of alkalinity and bicarbonates rises over pH and BOD.
机译:准确预测水质参数(WQP)是水资源管理中的重要任务。人工神经网络(ANN)经常用于溶解氧(DO)预测,但通常仅检查其插值性能。这项研究的目的是,除了内插法外,还用于确定ANN模型的外推性能,该模型是为预测多瑙河中的DO含量而开发的,并评估了输入的显着性与存在预测误差之间的关系。超出训练范围的值。所应用的ANN是多项式神经网络(PNN),它在学习过程中执行对最重要输入的嵌入式选择,并提供线性和非线性多项式函数形式的模型,然后可用于对重要性进行详细分析输入。包含1912个水质参数监测记录的可用数据集被分为“正常”子集和“极端”子集,“常规”子集包含正态分布的低变异性数据,而“极端”子集包含具有异常值的监测记录。结果表明,非线性PNN模型具有良好的插值性能(R〜2 = 0.82),但在外推上不具有鲁棒性(R〜2 = 0.63)。外推结果的分析表明,预测误差与输入的重要性相关。即,具有低重要性的输入的超出训练范围的值不会显着影响PNN模型的性能,但是它们的影响可能会因存在多个异常值监视记录而出现偏差。随后,成功地将线性PNN模型应用于研究水质参数对DO含量的影响。据观察,溶解氧水平主要受温度,pH,生物需氧量(BOD)和磷浓度的影响,而在极端条件下,碱度和碳酸氢盐的重要性随pH和BOD的升高而增加。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号