Abstract

The quality of the river changes according to the development of the surrounding environment which is influenced by various human activities. Analysis of factors affecting Dissolved Oxygen (DO) at Bengawan Solo River is crucial for river management purpose and pollution control. Previous research suggested the use classic multiple linear regression. However, DO measurement were usually took place of sampling sites along the river channel. Therefore, there is a high chance that the measurements results may spatially correlated. As the consequence, the utilization of multiple linear regression technique for the dataset can be inappropriate. In this paper, we applied a modification of multiple linear regression model to incorporate with spatial autocorrelation that exist in the data by adding control variable such vector eigen to the model which known as Spatial Filtering with Eigenvector (SFE). The results showed that nitrate and nitrite were the predictor variables that have a negative and significant effect. However, the model contains spatial autocorrelation. The application of SFE technique by adding three eigenvectors as control variables in the model succeeded in making the residual model free from spatial autocorrelation. However, a new problem arose where there was a violation of the non-heteroscedasticity assumption.

Highlights

  • The quality of the river changes according to the development of the surrounding environment which is influenced by various human activities

  • Dissolved oxygen is used in the process of decomposing waste that discharges to the waters, so the amount of waste in waters causes a decrease in Dissolved Oxygen (DO) levels (Sandi et al, 2017)

  • The upstream and downstream parts of the river physically do not meet the requirements for clean water which are characterized by an unpleasant smell, the color of the river water is yellow-black, and the amount of garbage on the riverbanks (Astuti, 2015)

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Summary

Introduction

The quality of the river changes according to the development of the surrounding environment which is influenced by various human activities. The existence of spatial connectivity among water quality measurements will violent non-autocorrelation assumption and making the results of linear regression analysis invalid (Blanchet et al, 2008). We applied a modification of multiple linear regression model to incorporate with spatial autocorrelation that exist in the data by adding control variable such vector eigen to the model (Getis and Griffith, 2002).

Results
Conclusion
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