Machine learning and topological kriging for river water quality data interpolation

被引:0
|
作者
Bekti, Rokhana Dwi [1 ]
Suryowati, Kris [1 ]
Dedu, Maria Oktafiana [1 ]
Sulistyaningsih, Eka [2 ]
Susanti, Erma [3 ]
机构
[1] Univ AKPRIND Indonesia, Dept Stat, Yogyakarta 55222, Indonesia
[2] Univ AKPRIND Indonesia, Dept Environm Engn, Dept Elect Engn, Yogyakarta 55222, Indonesia
[3] Univ AKPRIND Indonesia, Dept Informat, Yogyakarta 55222, Indonesia
关键词
interpolation; ordinary kriging; machine learning; topological kriging; COD; REGRESSION; INDEX;
D O I
10.3934/environsci.2025006
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Monitoring of river water quality data is crucial to prevent river water pollution. With limited sampling data, the statistical method of kriging interpolation is indispensable. This method can predict unsampled values based on interconnected surrounding values. Two types of kriging methods that can be applied are Machine Learning (ML) kriging and topological kriging (top-kriging). ML kriging is an extension of ordinary kriging by adding a Super Learning (SL) component. Here, we used SL type Support Vector Regression (SVR). Ordinary Kriging and ML Kriging are based on point values. Top-Kriging is defined as the estimation of streamflow-related variables in ungauged catchments and is based on a non-zero catchment area, not a point value. The three methods were applied in Chemical Oxygen Demand (COD) as water river quality in the Special Region of Yogyakarta (DIY), Indonesia. Based on the Mean Square Error (MSE) and Mean Absolute Error (MAE) comparison, Top kriging provided better accuracy that produced the smallest MSE and MAE. This showed that top kriging is suitable for interpolating data with river flow cases. The interpolation result was that the COD value in the upstream area was low, meaning that the level of organic pollution was minimal. Further downstream, after passing through densely populated residential and industrial areas, the COD values were higher.
引用
收藏
页码:120 / 136
页数:17
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