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Article

Relationship between Coliform Bacteria and Water Quality Factors at Weir Stations in the Nakdong River, South Korea

1
Nakdong River Environment Research Center, 24, 1gil, Pyeong-ri, Dasan-myeon, Goryeong-gun, Gyeongsangbuk-do 40103, Korea
2
National Institute of Environmental Research, 2-1 Gyeongseo-dong, Seo-gu, Incheon 22689, Korea
*
Author to whom correspondence should be addressed.
Water 2019, 11(6), 1171; https://doi.org/10.3390/w11061171
Submission received: 8 April 2019 / Revised: 2 June 2019 / Accepted: 3 June 2019 / Published: 4 June 2019
(This article belongs to the Section Water Quality and Contamination)

Abstract

:
Artificial structures installed in rivers can change the natural physical, physiochemical, and biological characteristics of the rivers. Coliform bacteria are important water quality indicators, related to human health. This study investigated the relationship between coliform bacteria and water quality factors at eight weir stations constructed in the Nakdong River, a major river in South Korea. Fifteen water quality factors were analyzed at these sites from 2012 to 2016 using correlation and multiple regression analyses. The results for all stations confirmed the analytical validity, with high adjusted R2 values of approximately 0.6 and 0.8 on average for total and fecal coliforms, respectively. The results showed influential water quality factors affecting the concentration of coliform bacteria at weir stations. Specifically, total coliforms were mostly affected by organic matter and fecal coliforms were mostly affected by phosphate phosphorus and suspended solids. Rainfall was the most influential factor affecting both coliforms. Further, both coliforms were negatively affected by organic matter below the Dalseong weir in the mid- to downstream area of the Nakdong River. A positive relationship with phosphate phosphorus was indicated at all weir stations. To the authors’ knowledge, this kind of study has never been attempted so far. Thus, the study results can provide important information on influential water quality factors related to coliform bacteria, especially in the Nakdong River, creating a foundation for future water quality management.

1. Introduction

The South Korean government constructed weirs in four major rivers from 2009 to early 2012 to mitigate problems relating to water security, water quality improvement, and aquatic ecology restoration [1]. Water level and discharge control by artificial structures can change a river’s physical characteristics including riverbed structure, water depth, and stream flow velocity, making some portions resemble a closed water system. These modifications can also result in physiochemical and biological changes in the aquatic environment. Eight weirs were constructed within the Nakdong River in southeastern South Korea. The Nakdong River is the second largest river and an important water resource. Therefore, continuous long-term monitoring is necessary for efficient water quality management with respect to the weirs in the Nakdong River.
Research on water quality management in South Korea has mostly focused on organic matter and nutrients, especially biochemical oxygen demand and total phosphorus, to satisfy water quality standards after the adoption of the Korean Total Maximum Daily Load system. Proper management has also been required for coliform bacteria in water sources such as rivers, lakes, and groundwater because these microorganisms can directly or indirectly impact human health. Coliform bacteria can cause serious illnesses, such as gastroenteritis and diarrhea, through polluted water from untreated sewage, septic tanks, etc. The South Korean government has applied a legal standard for the total and fecal coliforms in rivers as indicator organisms, and has measured them as water quality factors. Total coliforms include all members of the coliform bacteria group, which includes microorganisms from vegetation, soil, and water. Fecal coliforms are the members of the total coliform group that originate in the intestinal gut of warm-blooded animals. Both coliforms are important water quality indicators in rivers because they can determine whether water is available as recreational or drinking purposes.
Many studies on coliform bacteria have focused on sanitation or disease [2,3,4]. Studies treating coliforms as a water quality factor have addressed distribution and detection [5,6,7,8,9], analyses of discharge characteristics [10,11], and model development and simulation [12,13,14,15,16,17]. Various research topics have been also investigated, such as bacterial source tracking related to the occurrence of coliforms [16], the transport and fate of coliforms [17], and bacterial indicator testing [18]. However, most focused on marine systems [7,13,14,17,18,19,20,21,22,23] rather than on rivers [6,9,11], because coastal zones are often used for recreational purposes and are the final repositories of pollutants. Some studies have used regression analyses to determine the relationship between coliform bacteria and water quality factors in rivers [24,25,26,27]. Those studies are important because they can help easily predict the concentration of coliform bacteria using water quality factors. However, such studies have been relatively rare in South Korea, and they have mostly focused on groundwater [28] or wastewater treatment discharge [29]. For example, Jung et al. [30] developed regression models of coliform bacteria for Korean rivers that pass through reclaimed land around Hwaong Lake that drains into the Yellow Sea. However, these models were derived from the correlation between total and fecal coliforms and were not based on the relationship between coliform bacteria and water quality factors. Furthermore, to the authors’ knowledge, no study has performed regression analyses of the relationship between coliform bacteria and water quality factors at weir stations, and the present study is a first attempt on the topic. Seo et al. [31] analyzed water quality characteristics in the Nakdong River after the construction of weirs using multivariate statistical analyses, and identified a need for coliform bacteria management in the mid- to downstream section in summer. However, they used a total of thirty-eight stations, which included eight weir stations. Several weir-related studies have focused on the prediction and analysis of large algal blooms in stagnant water [32,33,34], not on the concentration of coliform bacteria.
Therefore, in this study, we aimed (1) to identify the concentration of coliform bacteria at eight weir stations in the Nakdong River using data from 2012 to 2016 and (2) to determine influential water quality factors affecting the concentration of coliform bacteria at weir stations using multiple regression analyses in order to ultimately lay a foundation for efficient future water quality management.

2. Materials and Methods

2.1. Study Area

The Nakdong River is the longest (525 km) of the four major rivers in South Korea; it rises from Hwangji Pond in the Taebaek Mountains, then passes through large cities such as Gumi, Daegu, and Busan (Gyeongsang-do province) before flowing into the southern Korea Strait. The Nakdong River is an important water resource that provides drinking water to approximately 13 million people living in an area of 23,384 km2; it also supplies water to industrial complexes and large cities along the river. The Nakdong River watershed has an average precipitation of 1156.4 mm, about 54% of which (623.6 mm) is concentrated from July to September. Eight weirs have been constructed over 200 km of the river from Sangju-si to Changnyeong-gun: the Sangju, Nakdan, Gumi, Chilgok, Gangjeong-Goryeong, Dalseong, Hapcheon-Changnyeong, and Changnyeong-Haman weirs (Figure 1). Several important tributaries flow into the mainstream between the weirs: the Byeongseong and Wi streams between the Sangju and Nakdan weirs; the Gam, Bonggok, Han, and Gyeongho streams between the Gumi and Chilgok weirs; the Baek and Habin streams between the Chilgok and Gangjeong-Goryeong weirs; the Geumho River (a second tributary of the Nakdong River) between the Gangjeong-Goryeong and Dalseong weirs; the Cha and Hoe streams between the Dalseong and Hapcheon-Changnyeong weirs; and the Hwang River and Shinban, Topyeong, Changnyeong, Gyeoseong, and Gwangryeo streams, as well as the Nam River (a primary tributary of the Nakdong River) between the Hapcheon-Changnyeong and Changnyeong-Haman weirs.

2.2. Data Collection

To identify the water quality factors that affect total and fecal coliforms, a total of 15 factors that are commonly measured in rivers were considered: pH, dissolved oxygen (DO), biochemical oxygen demand (BOD5), chemical oxygen demand (CODMn), suspended solids (SS), total nitrogen (TN), total phosphorus (TP), total organic carbon (TOC), water temperature (WT), electric conductivity (EC), ammonia nitrogen (NH3-N), nitrate nitrogen (NO3-N), phosphate phosphorus (PO4-P), chlorophyll-a (Chl-a), and precipitation. These water quality data were collected from the South Korean Water Environment Information System website on a monthly basis from 2012 to 2016. For total and fecal coliforms that increase exponentially, the daily data were collected and geometrically averaged as monthly data. The daily data had a detection limit of 1 for properly calculating the geometric mean. Eight measurement stations representing the eight weirs were used, located 500 m upstream of each weir: Donam (Sangju weir), Nakdan (Nakdan weir), Seonsan (Gumi weir), Chilgok (Chilgok weir), Dasa (Gangjeong-Goryeong weir), Nongong (Dalseong weir), Deokgok (Hapcheon-Changnyeong weir), and Haman (Changnyeong-Haman weir) (Figure 1). Rainfall data were collected on a monthly basis from the Korea Meteorological Administration website for the Sangju, Gumi, Daegu, Hapcheon, and Busan stations.

2.3. Statistical Analysis

To investigate the relationship between total and fecal coliforms and water quality factors, correlation and multiple regression analyses were performed using Statistical Package for the Social Sciences software (SPSS, ver. 12.0; SPSS Inc., Chicago, IL, USA). SPSS is a popular and powerful statistical analysis tool that can help process and analyze large complex data. It has been a lot utilized for multivariate analyses, such as correlation and regression analyses, in various fields of engineering and science [31,32,33,34]. Correlation analysis determines whether the relationship between two variables is present or absent, and that two variables are associated to a degree. Multiple regression analysis determines the relationship between independent and dependent variables based on causality. It fits a best line and predicts the impact of two or more independent variables on a dependent variable. The total and fecal coliform values were log-converted to perform the statistical analyses. For correlation analyses, the degree of linearity between two variables was derived from the correlation coefficient (r) through Pearson’s correlation analyses, and the significance was based on a p-value of less than 0.05. The correlation coefficient ranged between −1 and +1, and the linearity was ignored when it was −0.1 to +0.1. There was a weak positive/negative linear correlation when the correlation coefficient was between ±0.1 and ±0.3, a moderate positive/negative linear correlation when it was between ±0.3 and ±0.7, and a strong positive/negative linear correlation when it was between ±0.7 and ±1.0.
Multiple regression analyses were performed to investigate the relationship between total and fecal coliforms (dependent variables) and considered water quality factors (independent variables) at the weir stations. All of the water quality values were standardized to eliminate the influence of units. A stepwise method was used, which applied the most influential water quality variables in consecutive order and excluded insignificant variables. The multiple regression analyses were verified by using the p-value, Durbin-Watson (DW), Variance Inflation Factor (VIF), adjusted R2 value, and p-p plot. When the p-value was smaller than 0.05, the regression model was considered significant and suitable. The adjusted R2 value indicates that the linearity is high when it approaches 1. The variability of the dependent variables by independent variables could be explained through the adjusted R2 value. The DW and VIF indices were used for the multicollinearity diagnosis that verified independence among independent variables. The independent variables were independent when DW approached 2, and there were few problems in the multicollinearity when it was between 1 and 3. There was no problem in the multicollinearity when the VIF index was less than 10. The normality test was carried out by the normal p-p plot of residuals. When the standardized residuals were uniformly distributed close to normal distribution, the regression model became more effective.

3. Results and Discussion

3.1. Distribution of Coliform Bacteria

The distribution of total and fecal coliforms at the eight weirs in the Nakdong River are shown in Table 1 and Figure 2. Both coliforms showed a narrow distribution range at Seonsan station, with the lowest mean and standard deviation, and a wide distribution range at Nongong station, with the highest mean and standard deviation. Rapid increases were found for both coliforms at Chilgok and Nongong stations. Chilgok station was considered to be affected by several nearby tributaries, such as the Gyeongho and Gwangam streams. For example, the former, which flows in immediately upstream of Chilgok station, contains high proportions of livestock sheds and agricultural land along its lower reaches; the latter, located near the Gumi Industrial Complex, also carries discharge from a wastewater treatment plant along its downstream reaches. Cho and Um [35] reported the large impacts of livestock, domestic, and industrial wastewater on water quality in the up- to midstream area of the Nakdong River. These conditions could lead to a high concentration of coliforms at Chilgok station. As for the results at Nongong station, the impact of the Geumho River, which enters the Nakdong River 16.2 km upstream from the station, was considered to be most influential. This tributary has the second largest basin in the Nakdong River system and passes through Daegu, a major metropolitan city. More than 40% of its total water quantity is supplied by discharges from many wastewater treatment plants in the Geumho River basin [32,36,37]. Several studies have reported that high pollutant concentrations of the discharges could affect the water quality of the Nakdong River [36,37]. Jung and Kim [32] showed higher nutrient concentrations at Nongong station than at other weir stations for the same reason. Lee et al. [9] also mentioned the impact of polluted tributaries on the Nakdong River mainstream for coliform bacteria. In addition, Yu et al. [38] and Na et al. [39] reported that highly contaminated secondary tributaries, which enter the Geumho River, could affect the water quality of the mid- and downstream section where Nongong station is located. Therefore, the rapid increase in the concentration of coliform bacteria at Nongong station was likely caused by pollutants carried by the Geumho River.
Overall, the total and fecal coliform concentrations were low at the upstream stations and gradually increased toward the downstream stations (Table 1 and Figure 2). The Nakdong River watershed is characterized by mountainous terrain in the upstream area, pollution sources such as agricultural land, livestock sheds, and wastewater treatment plants in the midstream area, and influential tributary inflows, such as the Geumho, Nam, and Yangsan Rivers, in the mid- to downstream areas. Such complex influences of point/non-point pollution sources might lead to high coliform concentrations at the downstream stations. The total and fecal coliforms showed high concentrations and wide distribution ranges from July to October, especially in August and September (Figure 2). This likely was due to the impacts of non-point pollution sources caused by rainfall as well as point pollution sources and high water temperature during summer. Lee et al. [9] indicated high concentrations of coliform bacteria during summer and fall seasons in the mid- to downstream section of the Nakdong River because of the inflow of pollutants by rainfall, similar to the present study results. Seo et al. [31] demonstrated via cluster and factor analyses that influential water quality factors affecting the Nakdong River mainstream from July to October were similar to those over the entire period from January to December, pointing out the need for coliform bacteria management during summer and early fall and further in the mid- to downstream areas. In addition, the impact of water temperature on coliform bacteria was reported by Ramteke et al. [40] and Baek [19].

3.2. Correlation Analysis Results

Analysis of the correlation between coliform bacteria and water quality factors can be seen in Table 2. Total and fecal coliforms showed significant positive correlations with COD, SS, TP, TOC, WT, PO4-P, and precipitation and significant negative correlations with pH, DO, and EC at the eight weir stations. Significant negative correlations were found between both types of coliforms and TN and NO3-N, mainly at the mid- and downstream stations. Regarding BOD and Chl-a, significant negative correlations with total coliforms were found mainly at the mid- and downstream stations, whereas no significant correlations with fecal coliforms were found.
The degree of correlation between total coliforms and water quality factors for all eight weirs ranked in the following order: precipitation > DO > PO4-P > TOC > pH > WT > SS > COD > TP > EC > NH3-N > NO3-N > Chl-a > TN; that for fecal coliforms and water quality factors ranked as: precipitation > PO4-P > DO > SS > TP > WT > TOC > pH > COD > EC > NO3-N > TN > Chl-a > NH3-N. Moderate negative correlations existed with DO and pH and moderate positive correlations with precipitation, PO4-P, SS, TP, WT, TOC, and COD. Precipitation exhibited the strongest correlation with both types of coliform bacteria; at each weir station, it also showed high correlation coefficients of > 0.5 with total coliforms and > 0.7 with fecal coliforms. Byeon et al. [10] mentioned the effect of rainfall on coliform concentration. Rainfall can induce increased suspended solids and phosphorus which has strong adsorption ability in rivers; these factors caused positive correlation with the concentration of coliform bacteria. Regarding the influence of organic matter, point pollution sources, distributed along the Nakdong River, affected positive relationships of COD and TOC with coliform bacteria. Many wastewater treatment plants and industrial complexes are distributed over the midstream areas of the Nakdong River. The results demonstrated high correlations between organic matter and coliform bacteria toward the upstream stations based on Dasa station rather than toward the downstream stations. TN and NO3-N had weak or no correlations of 0.0-0.2 with coliform bacteria at the upstream stations and had moderate negative correlations with coliform bacteria at the mid- and downstream stations. These results seemed reasonable because a previous study, conducted for the Nakdong River and its main tributaries, showed similar results with the present study results [9]. Beck and Sohn [29] also showed that an increase of nitrite nitrogen was inversely proportional to coliform concentration.

3.3. Regression Analysis Results

3.3.1. Validity of Regression Analysis

The validity of the multiple regression models is shown in Appendix A in detail. The variance analysis showed p-values of < 0.05 and no multicollinearity was diagnosed, with VIF values of < 10 and DW values between 1 and 3 at every station. The adjusted R2 values ranged from 0.474–0.691 for total coliforms and from 0.745–0.810 for fecal coliforms, showing adjusted R2 values of approximately 60% and 80% on average, respectively. Chilgok and Dasa stations had the highest adjusted R2 values for total and fecal coliforms, respectively. On the other hand, Nongong station had the lowest adjusted R2 values for both coliforms. Fecal coliforms generally showed higher adjusted R2 values than total coliforms. Such results might be explained by the fact that coliform bacteria multiply exponentially in suitable aquatic environments, which were most widely distributed at Nongong station, and total coliforms showed more outliers and influential values compared to fecal coliforms. The normal distribution of residuals was identified through observed and estimated cumulative probability, and the results were close to the normal distribution at all stations (Figure A1).

3.3.2. Results of Regression Analysis

Total coliform concentration for all stations was affected by precipitation, SS, PO4-P, TOC, BOD, DO, and pH, which explained up to 58.4% of the concentration (Table 3). Total coliforms showed proportional relationships with precipitation, SS, PO4-P, and TOC, and were inversely proportional to BOD, DO, and pH. The relative influence of the factors ranks as follows: TOC > precipitation > BOD > pH > SS > DO > PO4-P. As for fecal coliforms, EC was added along with the abovementioned seven water quality factors, and these eight factors explained up to 74.5% of the concentration of fecal coliforms (Table 3). The relationship with water quality factors was identical to that of the total coliforms. EC had an inversely proportional relationship with fecal coliforms. The relative influence of the factors ranked as follows: precipitation > PO4-P > SS > TOC > BOD > EC > DO > pH. In general, organic matter had a dominant impact on total coliforms, whereas PO4-P and SS had that impact on fecal coliforms. Precipitation was the most influential factor for the concentration of both types of coliforms.
The above regression results using all station data reflected the influential water quality factors at each station. At each station, the water quality factors influencing the concentration of coliform bacteria were precipitation, PO4-P, SS, WT, TOC, BOD, DO, pH, and NH3-N for total coliforms; this was similar for fecal coliforms except that EC was a factor instead of WT (Table 3). The weir stations generally showed similar water quality factors. However, the water quality factors could be described at the up- and midstream stations and the mid- and downstream stations below Dalseong weir, depending on dominant trends. Seo et al. [31] also spatially classified the Nakdong River as the up- and midstream and mid- and downstream segments at a non-weir station between Dasa (Gangjeong-Goryeong weir) and Nongong (Dalseong weir) stations using cluster analyses. The concentration of total coliforms was especially influenced by decreases in pH and DO and increases in SS at the up- and midstream weir stations and by decreased BOD and increased precipitation at the mid- and downstream weir stations. The concentration of fecal coliforms was mainly affected by decreases in pH and DO and increases in PO4-P and precipitation at the up- and midstream weir stations and by increased PO4-P and precipitation and decreased BOD and EC at the mid- and downstream weir stations.
The negative relationship of pH and DO with total and fecal coliforms at the up- and midstream weir stations seemed to be a natural phenomenon, resulting from the consumption of DO due to the proliferation of coliform bacteria and the decrease in pH due to the occurrence of carbon dioxide. Jang and Cheong [21] also showed negative correlations between coliform bacteria and pH. Surface runoff by rainfall seemed to be the main reason for the positive relationship of SS, PO4-P, and precipitation with total and fecal coliforms. As mentioned above, the Nakdong River basin includes substantial areas of forests and agricultural lands distributed along the river. The inflow of non-point pollutants, such as fertilizer and livestock feces, by rainfall could lead to the occurrence and increase of coliform bacteria in a suitable aquatic environment. Several studies have reported the impact of non-point pollution by rainfall on coliform bacteria [9,31,41]. Jung et al. [30] mentioned that phosphorus could easily be adsorbed onto clay soil and soil organic matter. Therefore, the outflow of such pollutants adsorbed and attached to the soil due to rainfall could cause the positive relationship with total and fecal coliforms. Meanwhile, several studies have reported the impact of suspended and bed sediment on coliform bacteria, showing interaction between sediment and coliform bacteria through deposition, agitation, and resuspension [6,42,43]. Untreated discharge from industrial complexes and wastewater treatment plants, located between the Seonsan and Chilgok stations, could be another reason for the positive relationship.
The positive relationship of PO4-P and precipitation with total and fecal coliforms at the mid- and downstream weir stations below Dalseong weir could be explained by similar reasons as those expounded above. BOD and EC had negative relationships with total and fecal coliforms. In the case of BOD, the result differed from that of other studies, which found positive relationships between organic matter and coliform bacteria [29,44,45,46,47,48]. Cho and Song [5] stated that coliform bacteria decreased noticeably after three days on average in a river system. It was considered that such natural die-off [11,49] caused the negative relationship at downstream stations rather than at upstream stations. Lee et al. [9] also demonstrated a weak negative correlation between BOD and coliform bacteria in the mainstream of the Nakdong River. In addition, the deposition of organic matter because of the mild gradient downstream could be another reason for this negative relationship. Furthermore, the inflow of pollutants, along with slow flow velocity downstream, could lead to eutrophication and the subsequent propagation of Chl-a, an indicator of algal bloom. The mass propagation of Chl-a as autochthonous organic matter could restrict the occurrence of coliform bacteria. Ahmad et al. [50] also examined the removal of coliform bacteria by a freshwater algal species. Meanwhile, the negative relationship of EC with coliform bacteria could be explained by the dilution of pollutants by rainfall or discharges of tributaries. The Nakdong River has a number of tributaries flowing into the mid- and downstream areas, including the Nam River (a primary tributary) and the Geumho River (a second tributary). Kim et al. [51] indicated negative correlations between pollutants and rainfall and discharges. The dilution of pollutants could cause decreases in electrolytes and the corresponding decrease in EC. Yun et al. [52] reported negative correlations between coliform bacteria and EC.
The study results generally showed that the influential water quality factors in terms of the concentration of coliform bacteria were similar among the weir stations, even though there were commonly major factors at the up- and downstream stations. Seo et al. [31], who studied the spatio-temporal water quality characteristics of the Nakdong River using a total of 38 stations, showed the dominant water quality factors for different spatial sections of the Nakdong River. In addition, their results for the general water quality of the Nakdong River were slightly different from the results of this study. In this regard, it was presumed that present study results might have been affected by the weirs, because weirs can create similar aquatic environments by controlling the flow of rivers and creating a closed water system similar to lakes and dams. However, this is speculative; it is difficult to decide on the impact of weirs without more concrete evidence. To the authors’ knowledge, no studies have been found, so far, for the impact of weirs on coliform bacteria. While several studies have addressed water quality factors at weir stations [32,33,34], they did not elucidate the impacts of the weirs on the water quality factors compared to the results from non-weir stations. Furthermore, in the current situation, it is also difficult to decide on whether the impact of weirs is beneficial or harmful. Lee et al. [33] reported proliferation of harmful algae after weir construction in comparison with that before weir construction in the Nakdong River, while they showed decreases in TP and Chl-a after weir construction at the mid- and downstream stations. Also, in the Lee et al.’s [9] study to analyze coliform bacteria patterns at the Nakdong River mainstream and its tributaries, we could find the trends of lower distribution of total and fecal coliforms at weir stations than at other non-weir stations. Therefore, it would be necessary for studies related to the impact of weirs to consider both temporal (before and after weir construction) and spatial (weir and non-weir stations) conditions along with the interaction of water quality factors. Within the scope of this study, we focused on determining the water quality factors influencing the concentration of coliform bacteria at weir stations. However, weir-related issues, such as the impact of presence and absence and the positive and negative aspects, should be further discussed in the future for effective water quality management.

4. Conclusions

This study investigated the distribution of coliform bacteria and derived the relationship between coliform bacteria and water quality factors through regression analyses in the Nakdong River under altered aquatic environments resulting from weir construction. The influential water quality factors for the concentration of coliform bacteria at weir stations were determined. Specifically, precipitation was the most influential factor for the concentration of coliform bacteria. Total coliforms were dominantly affected by organic matter and fecal coliforms by PO4-P and SS. In particular, both types of coliforms were negatively affected by pH and DO and positively by SS, PO4-P, and precipitation at the upstream weir stations. Furthermore, they showed negative relationships with BOD and EC and positive relationships with PO4-P and precipitation at the weir stations below Dalseong weir. This study lays a foundation for investigating the influential water quality factors related to the occurrence of coliform bacteria in the Nakdong River for future water quality management.
The South Korean government is monitoring the impact of weirs on various aspects of the aquatic environment, and is taking measures to remediate negative issues caused by the artificial conditions by carrying out temporary or regular discharges at some weirs. The concentration of coliform bacteria is variable under the changing aquatic environment. Therefore, continuous monitoring and data collection should be necessarily conducted for future water quality management. Studies related to coliform bacteria at weir stations are yet to be widely studied. This study could be the groundwork for addressing the impact of weirs on coliform bacteria under both temporal and spatial conditions. Continuous research could provide important information on the proper management alternatives of coliform occurrence not only at weir stations, but also on other waterways with dams and other obstructions in the future.

Author Contributions

Conceptualization and methodology design: M.S., H.L., and Y.K. Data analysis and manuscript preparation: M.S. Support of data analysis and manuscript preparation: H.L. and Y.K. Manuscript revision: M.S., H.L., and Y.K.

Funding

This research was funded by the National Institute of Environment Research (NIER) of the Republic of Korea, grant number NIER-2018-05-01-006.

Acknowledgments

We appreciate anonymous reviewers for their comments improving the manuscript. We also thank members of the Nakdong River Environment Research Center, NIER, for their assistance.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Tables and figure below contain details for the validity of the multiple regression models in the 3.3. Regression Analysis Results section.
Table A1. Multiple regression results between total coliforms and water quality factors at each weir station.
Table A1. Multiple regression results between total coliforms and water quality factors at each weir station.
StationVariable 1Std. Errorβtp-ValueToleranceVIFAd.R2DW
DonamConstant0.076-0.0001.000 0.6631.552
TOC0.1020.3613.5360.0010.5681.761
BOD0.095−0.238−2.5170.0150.6611.513
DO0.105−0.349−3.3240.0020.5371.861
PO4-P0.0990.3923.9520.0000.6031.659
NH3-N0.085−0.190−2.2360.0300.8231.215
NakdanConstant0.079-0.0001.000 0.6461.594
DO0.081−0.396−4.8690.0000.9561.046
pH0.081−0.530−6.5820.0000.9761.025
SS0.0820.4455.4330.0000.9421.062
SeonsanConstant0.087-0.0001.000 0.5561.403
DO0.090−0.410−4.5830.0000.9711.030
pH0.090−0.471−5.2200.0000.9541.048
SS0.0890.4094.5920.0000.9801.020
ChilgokConstant0.072-0.0001.000 0.6911.361
Rain0.0860.3774.3660.0000.7021.424
pH0.084−0.511−6.0580.0000.7351.360
SS0.0870.4024.6260.0000.6921.445
NH3-N0.077−0.221−2.8570.0060.8741.144
DasaConstant0.084-0.0001.000 0.5731.405
TOC0.1020.3032.9760.0040.6981.434
DO0.094−0.475−5.0620.0000.8231.215
SS0.0940.3063.2530.0020.8201.219
NongongConstant0.094-0.0001.000 0.4741.161
Rain0.0950.6546.9200.0000.9961.004
BOD0.095−0.216−2.2890.0260.9961.004
DeokgokConstant0.076-0.0001.000 0.6511.733
Rain0.0840.5296.2810.0000.8341.199
TOC0.0880.4054.6140.0000.7661.306
BOD0.081−0.432−5.3670.0000.9111.097
HamanConstant0.077-0.0001.000 0.6451.419
Rain0.1130.4113.6490.0010.4762.102
BOD0.082−0.427−5.2180.0000.8981.113
WT0.0940.3313.5310.0010.6851.459
SS0.1030.2172.1100.0390.5681.761
All stationsConstant0.030-0.0001.000 0.5841.333
Rain0.0440.2726.1980.0000.4562.193
pH0.039−0.164−4.1690.0000.5691.758
TOC0.0410.3097.4960.0000.5191.926
BOD0.044−0.202−4.5530.0000.4502.223
SS0.0380.1634.2510.0000.6011.663
DO0.039−0.155−3.9900.0000.5851.710
PO4-P0.0400.0822.0620.0400.5611.783
1 Units: DO, BOD, SS, TOC, NH3-N, and PO4-P are in mg/L, WT is in °C, and Rain is in mm.
Table A2. Multiple regression results between fecal coliforms and water quality factors at each weir station.
Table A2. Multiple regression results between fecal coliforms and water quality factors at each weir station.
Station NameVariable 1Std. Errorβtp-ValueToleranceVIFAd.R2DW
DonamConstant0.058-0.0001.000 0.8071.601
PO4-P0.0790.5416.8000.0000.5371.864
DO0.076−0.312−4.0800.0000.5811.721
Rain0.0970.2312.3840.0210.3612.771
NakdanConstant0.058-0.0001.000 0.8072.347
PO4-P0.0960.5155.3860.0000.3772.652
DO0.069−0.236−3.4050.0010.7181.393
Rain0.1000.2532.5210.0150.3432.915
pH0.063−0.146−2.3140.0250.8671.153
SeonsanConstant0.068-0.0001.000 0.7321.528
PO4-P0.1180.3753.1840.0020.3402.943
DO0.075−0.396−5.2960.0000.8411.188
SS0.1020.3223.1530.0030.4512.218
pH0.091−0.189−2.0850.0420.5731.746
ChilgokConstant0.059-0.0001.000 0.7881.327
PO4-P0.0680.5427.9500.0000.7731.294
Rain0.0830.3814.5720.0000.5161.937
NH3-N0.060−0.150−2.4940.0160.9941.006
DO0.075−0.181−2.4120.0190.6361.572
DasaConstant0.056-0.0001.000 0.811.58
Rain0.0810.4685.7620.0000.4892.044
PO4-P0.0810.1812.2280.0300.4912.037
DO0.071−0.308−4.3430.0000.6401.561
SS0.0770.2282.9570.0050.5431.843
NongongConstant0.063-0.0001.000 0.7611.777
Rain0.0790.5136.4610.0000.6421.557
BOD0.068−0.275−4.0410.0000.8751.143
SS0.0770.1762.3050.0250.6921.444
PO4-P0.0700.2103.0040.0040.8321.201
EC0.084−0.176−2.0880.0420.5731.746
DeokgokConstant0.058-0.0001.000 0.8012.046
Rain0.0790.4996.3400.0000.5451.834
PO4-P0.0700.2113.0010.0040.6841.462
EC0.072−0.242−3.3740.0010.6561.525
pH0.061−0.241−3.9660.0000.9151.093
HamanConstant0.062-0.0001.000 0.7661.686
Rain0.0890.4274.7770.0000.4952.021
EC0.078−0.260−3.3460.0010.6541.530
BOD0.070−0.282−4.0380.0000.8121.232
SS0.0870.2663.0490.0040.5191.926
TOC0.0740.1602.1550.0360.7151.398
All stationsConstant0.023-0.0001.000 0.7451.562
Rain0.0360.36410.1320.0000.4192.385
PO4-P0.0310.2106.7710.0000.5611.784
DO0.032−0.124−3.8280.0000.5191.928
SS0.0310.1976.3920.0000.5671.762
BOD0.035−0.168−4.7780.0000.4382.284
TOC0.0360.1825.0670.0000.4192.388
EC0.031−0.128−4.1180.0000.5611.782
pH0.032−0.100−3.1710.0020.5431.841
1 Units: DO, BOD, SS, TOC, NH3-N, and PO4-P are in mg/L, EC is in μmhos/cm, and Rain is in mm.
Figure A1. Normal P-P plots of the regression standardized residual between the observed (x-axis) and estimated (y-axis) cumulative probabilities for the total (left) and fecal (right) coliforms at each weir station.
Figure A1. Normal P-P plots of the regression standardized residual between the observed (x-axis) and estimated (y-axis) cumulative probabilities for the total (left) and fecal (right) coliforms at each weir station.
Water 11 01171 g0a1aWater 11 01171 g0a1b

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Figure 1. Location of weirs in the Nakdong River watershed.
Figure 1. Location of weirs in the Nakdong River watershed.
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Figure 2. Spatio-temporal distribution of total and fecal coliforms at the weir stations of the Nakdong River. The x-axes of the bottom plots represent months.
Figure 2. Spatio-temporal distribution of total and fecal coliforms at the weir stations of the Nakdong River. The x-axes of the bottom plots represent months.
Water 11 01171 g002
Table 1. Statistics of total and fecal coliforms at each weir station of the Nakdong River (in CFU/100mL).
Table 1. Statistics of total and fecal coliforms at each weir station of the Nakdong River (in CFU/100mL).
StationTotal ColiformFecal Coliform
Avg.Std.Max.Min.Avg.Std.Max.Min.
Donam1032902117313493711
Nakdan981841171312372701
Seonsan67135893210312271
Chilgok23358038358391167951
Dasa1604252664118502591
Nongong33385543345491578411
Deokgok1955233082223744121
Haman19867750493291309801
Table 2. Pearson correlation coefficients (r) between total (a) and fecal (b) coliforms and water quality components at each weir station. One asterisk (*) and two asterisks (**) mean p < 0.05 and p < 0.01, respectively.
Table 2. Pearson correlation coefficients (r) between total (a) and fecal (b) coliforms and water quality components at each weir station. One asterisk (*) and two asterisks (**) mean p < 0.05 and p < 0.01, respectively.
(a) log TC
Variable 1DonamNakdanSeonsanChilgokDasaNongongDeokgokHamanAll Stations
pH−0.262(*)−0.492(**)−0.485(**)−0.439(**)−0.374(**)−0.430(**)−0.504(**)−0.493(**)−0.431(**)
DO−0.626(**)−0.511(**)−0.499(**)−0.437(**)−0.592(**)−0.416(**)−0.564(**)−0.653(**)−0.509(**)
BOD−0.0150.004−0.03−0.196−0.043−0.255(*)−0.275(*)−0.259(*)−0.076
COD0.512(**)0.516(**)0.532(**)0.387(**)0.536(**)0.1730.358(**)0.1910.402(**)
SS0.545(**)0.452(**)0.357(**)0.481(**)0.424(**)0.323(*)0.308(*)0.505(**)0.404(**)
TN−0.092−0.019−0.023−0.245−0.435(**)−0.360(**)−0.475(**)−0.487(**)−0.122(**)
TP0.466(**)0.374(**)0.403(**)0.515(**)0.405(**)0.260(*)0.2420.292(*)0.366(**)
TOC0.598(**)0.533(**)0.559(**)0.519(**)0.606(**)0.361(**)0.493(**)0.323(*)0.484(**)
WT0.422(**)0.349(**)0.331(*)0.372(**)0.558(**)0.344(**)0.504(**)0.510(**)0.414(**)
EC−0.269(*)−0.188−0.332(*)−0.405(**)−0.431(**)−0.494(**)−0.451(**)−0.601(**)−0.175(**)
NH3-N−0.0730.140.086−0.1760.1710.0420.255(*)0.1210.156(**)
NO3-N−0.115−0.056−0.04−0.15−0.413(**)−0.338(**)−0.462(**)−0.454(**)−0.151(**)
PO4-P0.614(**)0.625(**)0.610(**)0.615(**)0.455(**)0.399(**)0.469(**)0.596(**)0.501(**)
Chl-a−0.046−0.153−0.058−0.192−0.16−0.201−0.275(*)−0.322(*)−0.123(**)
Rain0.653(**)0.616(**)0.570(**)0.677(**)0.640(**)0.667(**)0.662(**)0.681(**)0.620(**)
(b) log FC
Variable 1DonamNakdanSeonsanChilgokDasaNongongDeokgokHamanAll stations
pH−0.213−0.379(**)−0.376(**)−0.360(**)−0.407(**)−0.491(**)−0.467(**)−0.460(**)−0.395(**)
DO−0.643(**)−0.559(**)−0.559(**)−0.493(**)−0.608(**)−0.517(**)−0.535(**)−0.597(**)−0.534(**)
BOD−0.0230.1190.077−0.172−0.057−0.323(*)−0.213−0.143−0.069
COD0.430(**)0.519(**)0.528(**)0.307(*)0.489(**)0.0920.282(*)0.284(*)0.340(**)
SS0.664(**)0.599(**)0.524(**)0.559(**)0.541(**)0.467(**)0.578(**)0.666(**)0.531(**)
TN−0.039−0.059−0.07−0.275(*)−0.333(**)−0.418(**)−0.494(**)−0.376(**)−0.152(**)
TP0.711(**)0.664(**)0.665(**)0.675(**)0.638(**)0.365(**)0.486(**)0.526(**)0.519(**)
TOC0.550(**)0.574(**)0.546(**)0.476(**)0.580(**)0.2410.323(*)0.395(**)0.423(**)
WT0.497(**)0.493(**)0.498(**)0.462(**)0.630(**)0.482(**)0.601(**)0.537(**)0.510(**)
EC−0.478(**)−0.475(**)−0.528(**)−0.514(**)−0.588(**)−0.638(**)−0.669(**)−0.671(**)−0.332(**)
NH3-N0.0280.2170.203−0.1610.162−0.010.1170.0650.110(*)
NO3-N−0.041−0.092−0.088−0.175−0.334(**)−0.386(**)−0.474(**)−0.361(**)−0.170(**)
PO4-P0.802(**)0.840(**)0.774(**)0.748(**)0.677(**)0.495(**)0.621(**)0.768(**)0.634(**)
Chl-a−0.017−0.104−0.066−0.308(*)−0.233−0.243−0.184−0.191−0.135(**)
Rain0.792(**)0.794(**)0.762(**)0.743(**)0.833(**)0.767(**)0.819(**)0.773(**)0.754(**)
1 Units: DO, BOD, COD, SS, TN, TP, TOC, NH3-N, NO3-N, and PO4-P are in mg/L, WT is in °C, EC is in μmhos/cm, Chl-a is in mg/m3, and Rain is in mm.
Table 3. Multiple regression results between total (a) and fecal (b) coliforms and water quality factors at each weir station. Table A1 and Table A2 in Appendix A have details for multiple regression results.
Table 3. Multiple regression results between total (a) and fecal (b) coliforms and water quality factors at each weir station. Table A1 and Table A2 in Appendix A have details for multiple regression results.
StationVariable 1βAd.R2StationVariable 1βAd.R2
(a)
Total coliform
DonamTOC0.3610.663NongongRain0.6540.474
BOD−0.238 BOD−0.216
DO−0.349 DeokgokRain0.5290.651
PO4-P0.392 TOC0.405
NH3-N−0.19BOD−0.432
NakdanDO−0.3960.646HamanRain0.4110.645
pH−0.53 BOD−0.427
SS0.445WT0.331
SeonsanDO−0.410.556SS0.217
pH−0.471 All stationsRain0.2720.584
SS0.409pH−0.164
ChilgokRain0.3770.691TOC0.309
pH−0.511 BOD−0.202
SS0.402 SS0.163
NH3-N−0.221DO−0.155
DasaTOC0.3030.573PO4-P0.082
DO−0.475
SS0.306
(b)
Fecal coliform
DonamPO4-P0.5410.807NongongRain0.5130.761
DO−0.312 BOD−0.275
Rain0.231 SS0.176
NakdanPO4-P0.5150.807 PO4-P0.21
DO−0.236 EC−0.176
Rain0.253 DeokgokRain0.4990.801
pH−0.146 PO4-P0.211
SeonsanPO4-P0.3750.732 EC−0.242
DO−0.396 pH−0.241
SS0.322 HamanRain0.4270.766
pH−0.189 EC−0.26
ChilgokPO4-P0.5420.788 BOD−0.282
Rain0.381 SS0.266
NH3-N−0.15 TOC0.16
DO−0.181 All stationsRain0.3640.745
DasaRain0.4680.81PO4-P0.21
PO4-P0.181 DO−0.124
DO−0.308 SS0.197
SS0.228 BOD−0.168
TOC0.182
EC−0.128
pH−0.1
1 Units: DO, BOD, SS, TOC, NH3-N, and PO4-P are in mg/L, WT is in °C, EC is in μmhos/cm, and Rain is in mm.

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Seo, M.; Lee, H.; Kim, Y. Relationship between Coliform Bacteria and Water Quality Factors at Weir Stations in the Nakdong River, South Korea. Water 2019, 11, 1171. https://doi.org/10.3390/w11061171

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Seo M, Lee H, Kim Y. Relationship between Coliform Bacteria and Water Quality Factors at Weir Stations in the Nakdong River, South Korea. Water. 2019; 11(6):1171. https://doi.org/10.3390/w11061171

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Seo, Mijin, Haejin Lee, and Yongseok Kim. 2019. "Relationship between Coliform Bacteria and Water Quality Factors at Weir Stations in the Nakdong River, South Korea" Water 11, no. 6: 1171. https://doi.org/10.3390/w11061171

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