Journal of Water Resource and Protection
Vol.09 No.07(2017), Article ID:76977,16 pages
10.4236/jwarp.2017.97051

Development of Bioassessment Tools for Ecological Status Using Macrozoobenthic Community in Upstream Area (Case Study: Citarum River, West Java, Indonesia)

Nurul Chazanah1, Priana Sudjono1, Fahri Azhari Hasby2, Gede Suantika2, Barti Setiani Muntalif1

1Environmental Management Technology Research Group, Department of Environmental Engineering, Faculty of Civil and Environmental Engineering, Bandung Institute of Technology, Bandung, Indonesia

2Microbial Biotechnology Research Group, Department of Microbiology, School of Life Science and Technology, Bandung Institute of Technology, Bandung, Indonesia

Copyright © 2017 by authors and Scientific Research Publishing Inc.

This work is licensed under the Creative Commons Attribution International License (CC BY 4.0).

http://creativecommons.org/licenses/by/4.0/

Received: March 29, 2017; Accepted: June 16, 2017; Published: June 19, 2017

ABSTRACT

This research aims to develop an assessment tool of ecological status in the upstream area using macrozoobenthic community and its relationship to the physicochemical parameters of water and sediment, in Citarum River. The number of species and abundance of macrozoobenthos in the dry season was higher compared to rainy season. The predominant family (Pachychilidae, Hydropsychidae, Glossiphonidae, and Chironomidae) obtained in both season was significantly correlated with the physicochemical parameter. Based on the Shannon-Wiener index, diversity in upstream area of Citarum River during the dry season (1.68) was similar with the rainy season (1.80) and it showed that the diversity of macrozoobenthic community was moderately diverse in both seasons. The physicochemical parameters that strongly related with the presence and abundance of predominant macrozoobenthic taxa were turbidity, total suspended solid (TSS), total nitrogen, total phosphate, gravel particle, and organic carbon. By considering biological and physicochemical parameters obtained from this study, we developed a modified scoring system to assess the ecological status of upstream area in Citarum River. Based on the scoring system, the ecological status was quite polluted in dry season (2.19) and moderately polluted in rainy season (4.94).

Keywords:

Bioassessment, Macrozoobenthic Community, Ecological Status, Dry Season, Rainy Season

1. Introduction

The river plays an important role in daily human activities such as farming and industry. These activities in turn will produce liquid waste that may contribute to water pollution [1] [2] . Water quality across Indonesia is deteriorating due to contamination of domestic, industrial, and farming waste [3] . Unfortunately, this day, water quality assessment is approached by physicochemical and microbiological parameters that have several limitations. For example, physicochemical parameters only give an insight about the existing condition, while the water is contaminated continuously, however, physicochemical parameters are still important for water quality assessment [4] [5] . Therefore, to overcome these limitations, another approach on water quality assessment has been continuously developed for several decades and, most of the studies (around 60%), focused on analysis of macrozoobenthic community [6] [7] [8] [9] [10] [11] .

River biota has a higher sensitivity towards changes in the environment. Its current community structure (diversity, species richness, and abundance) is actually a reflection of gradual changes that occur in the environment [5] [12] [13] [14] [15] [16] . The use of macrozoobenthos as bio-indicator gives us some advantages compared to other river biota [17] [18] [19] . Macrozoobenthic community structure, for example, may describe the water quality months or even years before sampling. Meanwhile other aquatic organisms, such as protozoa, ciliate, and algae only reflect the condition from weeks before [13] [20] . Water quality measurements using macrozoobenthic community have been researched in temperate climate countries, while in tropical countries such as Indonesia has not been evaluated optimally, whereas the existence of macrozoobenthic community in tropical countries has more diversity in comparison to countries with temperate climates [19] .

Citarum River basin is one of the largest watersheds in Java Island. It is an important water source in West java and Jakarta. About 11.255 million people inhabited the watershed area. The river is also home to about 1000 industries that become the lifeline of many people, and also the greatest threat to the river. The problems of water quality degradation in Citarum River will increase year after year due to the increasing pollutant loads particularly from Bandung region located in the upper areas of the river basin if the pollutant is released without treatment. The deterioration of water quality caused by human activities in the upstream areas reduces the benefits of the resources taken by stakeholders in the downstream areas. Over the past 20 years, rapid urbanization and industrial growth have resulted in growing quantities of untreated domestic sewage, solid waste, and industrial effluents being dumped into the river. Pollution levels now have compromised public health, and the livelihoods of impoverished fishing families have been jeopardized by widespread dying fishes [21] .

To compose a comprehensive management plan and periodic monitoring, a rapid assessment tool was needed. Therefore, this research aims to develop ecological status assessment method in Citarum upstream area by using macrozoobenthic community as an indicator and to observe its relation with physicochemical parameters.

2. Material and Methods

2.1. Sampling Area

This research was done in 7 different sampling stations in Citarum River upstream area, West java, Indonesia. The sampling stations were spread along the coordinate 107˚39'20.30"S - 107˚44'53"S, longitude 07˚04'29"E - 07˚13'27.27"E. This research was conducted from July 2014-September 2015 to represent variations in dry and rainy season.

Four stations were selected to serve as reference site for its minimal disturbance in the surrounding area. Station 1 (St.1; 1.586 m a.s.l.) was a natural spring located in Kampong Pejaten, Tarumajaya Village, Kertasari District, Bandung Regency. The spring flows to Cisanti Lake and merged into Citarum River. The area around St.1 was still dominated by dense riparian vegetation with 7% - 15% slope. Station 2 (St.2; 1.586 m a.s.l.) was a natural spring located in Kampong Cikembang, Cikembang Village, Kertasari District, Bandung Regency, Mt. Guha. The station was situated 3.24 km away from Citarum mainstream and was still dominated by dense riparian vegetation with 15% - 30% slope. Not far from St.2, anarea has been converted into a farming area. Station 3 (St.3; 1672 m a.s.l.) was located in Kampong Padawas, Cihawuk Village, Kertasari District, Bandung Regency, Mt. PuncakCae. The station was situated 4 km away from Citarum mainstream and was still dominated by dense riparian vegetation with 30% - 70% slope. Similar to St.2, the nearby area also has been converted for farming purpose. Station 4 (St.4; 1720 m a.s.l.) was located in Kampong Cirawa, Cibeureum Village, Kertasari District, Bandung Regency, Mt. Halimun. The station was situated 2.38 km away from Citarum mainstream and was still dominated by riparian vegetation (mostly cogon grass; Imperatacylindrica) with 30% - 70% slope. Similar to St.2, the nearby area has also been converted for farming purpose.

The other three stations were selected for land use conversion in its surrounding area for various purposes such as settlement, cattle farm, farming, and traditional sand mining. Station 5 (St.5; 1521 m a.s.l.) was located in Kampong Cikitu, Cibeureum Village, Kertasari District, Bandung Regency. The station was situated 1.82 km away from St.1 and was dominated by cogon grass with 7% - 15% slope. The effect of pollution from cattle farm can be seen physically from the water. Station 6 (St.6; 1057 m a.s.l.) was located in Kampong Babakan, Sukarame Village, Pacet District, Bandung Regency. The station was situated 12.6 km away from St.1 and was dominated by grass with 7% - 15% slope. Station 7 (St.5; 1521 m a.s.l.) was located in Kampong Andir, Wangisagara Village, Majalaya District, Bandung Regency. The station was situated 24.9 km away from St.1 and was dominated by bamboo with 2% - 7% slope. This area was also surrounded by settlement and an embankment was also built to support traditional sand mining activity. The research map location is shown in Figure 1.

Figure 1. Location of study area and station (BAKOSURTANAL, 1997).

2.2. Measurement of Physicochemical Parameters

Assessment of the water quality by analyzing physical and chemical parameters was also conducted to predict the status of organic pollution that occurred at all sites. Physicochemical parameters (pH, conductivity, temperature, and DO) were measured both in the field (in situ) and in the laboratory (ex situ). Other water quality parameters (BOD, COD, TSS, Turbidity, Total P and Total N) and sediment parameters (Organic-C, pH, Total P, Total N, and Particle distribution) were also measured in the laboratory. DO and conductivity was measured using Metler-Toledo Seven Gopro, temperature using 2550 B method, pH by 4500-H+-B model pH 6 Pocket-Sized pH meter Milwaukee.

For chemical parameters measurement, the water sample was stored in a plastic bottle at 4˚C and further analyzed according to APHA method [22] . Sediment collection was done using “van Geen Grab Sampler”. The sediment then stored in a 500 ml plastic bottle and covered with aluminum foil for particle-size distribution analysis according to ASTM method [23] .

2.3. Sampling of Macrozoobenthic Community

The sampling of macrozoobenthos was done using Surber Net with mesh size of 0.5 mm and area of 1000 cm2 [24] . Macrozoobenthos abundance stated as number of individual per area (ind m−2). There were 3 replicates of sampling done in each location. The macrozoobenthos were sorted and identified to the lowest possible taxonomic level and were counted under a stereomicroscope [24] [25] [26] [27] .

2.4. Data Analysis

The macrozoobenthic community was analyzed using Shannon-Wiener diversity index. Shannon-Wiener diversity index is an index that commonly used for environmental management and serves as a tool to describe the community structure and detecting the amount of degradation in aquatic ecosystems [28] . Diversity index formula is as follows [29] :

(1)

With:

= Diversity,

ni = number of individuals in species i,

N = total number of individuals in the community.

2.5. Scoring System

Determination of ecological status in Citarum River was done by using scoring system proposed by Canter (1977) with some modification. The system was based on physicochemical and diversity index (H’) of macrozoobenthic community. The modified system can be adapted with modifications for implementations in the Citarum river basin [30] . The modification was done to increase the accuracy and sensitivity of the tools based on local condition. The modified parameters were chosen from linear regression correlation analysis that highly affects the abundance of predominant family of macrozoobenthic fauna. These parameters were turbidity, total suspended solid (TSS), total nitrogen, total phosphate, carbon-organic, and gravel percentage. Scores for each variable and the criteria of ecological disturbances that adapted for this research can be seen in Table 1.

(2)

Criteria for the ecological status were as follows:

1) Not polluted or slightly polluted = final score ≤ 2;

2) Quite polluted = final score 2 - 4;

3) Moderately polluted = final score 4 - 6;

4) Heavily polluted = final score > 6.

3. Results and Discussions

3.1. Water Quality

The water quality in Citarum were highly affected by various factors, especially

Table 1. Scoresfor each variable and the criteria of ecological disturbances (modified from BPLHD West Java Prov. [30] ).

anthropogenic activities. Population growth and land use conversion around the Citarum River basin have caused the water quality to deteriorate. The correlation between conductivity, total suspended solids (TSS), and turbidity in each station is shown in Figure 2(a) (dry season) and Figure 2(b) (rainy season). Generally, TSS and turbidity concentration in rainy season was higher compared to dry season. Highest TSS and turbidity concentration was measured in St.5 during rainy season and the lowest was measured in St.2. This is due to the minimal disturbance that St.2 had. In contrary, St.5 had undergone high level of disturbance from discharged water (especially during the rainy season), settlements, traditional cattle farm, and agriculture areas which caused significant runoff with high organic content into the river [33] [34] [35] . Highest conductivity was measured in St.1 and decreased in St.2 and St.3, and increased again in St.5 and St.7 due to higher concentration of minerals. This was due to the location of St.1 which was at the foot of Mt. Wayang that contains considerable amount of dissolved minerals so that it was high in conductivity and TSS, while in all three reference station the value was lower. Whereas at St.5 and St.7, mineral content of dissolved ions were possibly originated from agricultural soil erosion and sediment of traditional rock and sand mining [30] .

Figure 3(a) (dry season) and Figure 3(b) (rainy season) depict the correlation between total nitrogen, total phosphate, and chemical oxygen demand (COD) in each station. During the dry season, all parameters in all stations had increased because the water discharge was smaller, so all the chemicals were concentrated. The total nitrogen at St.1 to St.4 in the dry season was more than 1.5 mg・L−1 and total phosphate was more than 0.05 mg・L−1, thus it was classified as a river that rich in nutrients [31] . The nutrients come from the high density of riparian vegetation and aquatic organisms in the site. It was also indicated by the low COD concentration. Increased nitrogen in some of the stations was likely caused by organic pollution from anthropogenic activities (agriculture, traditional farms and settlements) thereby increasing the concentration of COD [36] .

Figure 4(a) (dry season) and Figure 4(b) (rainy season) show the correlation between Total nitrogen and total phosphate in sediment with organic C during (a) dry season and (b) rainy season. The total N, total P and Carbon Organic

(a)(b)

Figure 2. Correlation between total suspended solid, turbidity, and conductivity during (a) dry season and (b) rainy season in all stations.

concentration in the sediment during dry season was higher compared to rainy season. Concentrations were higher in the dry season since the water flow was relatively calm, so the sediment was not as eroded as in the rainy season. The content of total N and total P had increased at St.4 and 5 in the rainy season, because the water runoff from the upstream and the surrounding vegetation brought sediments and accumulates it at the site. Besides these, organic matters come from fertilizers and traditional farming activities [36] .

Figure 5(a) (dry season) and Figure 5(b) (rainy season) show the correlation between particle size distributions and organic C during (a) dry season and (b)

(a)(b)

Figure 3. Correlation between total nitrogen and phsophate with COD during (a) dry season and (b) rainy season in all stations.

rainy season. Generally, in all station, most of the particle sizes in the sediment were dominated by sand. These particle size distributions were relatively equal during the dry and rainy season. From Figure 5, we can concur that the particle size distribution was not significantly different between dry and rainy season. The content of gravel was highest in St.1 and St.3 where the vegetation was dense and dominated by rocks on the riverbed, while the highest content of silt can be found in St.5 and St.6 since there were many agricultural activities in the area. During the rainy season we can see that the organic carbon content had decreased because of the erosion [36] .

(a)(b)

Figure 4. Correlation between total nitrogen and phsophate with COD during (a) dry season and (b) rainy season in all stations.

3.2. Macrozoobenthic Community Analysis

Richness, abundance, diversity, and dominant family of the macrozoobenthic community during dry and rainy season in all stations are shown in Table 2. To obtain a representative abundance and composition of the macrozoobenthic community, sampling was done throughout the year during dry and rainy season. A macrozoobenthic family was categorized as predominant based on its abundance (>3%) and its presence in each sampling [19] .

During the dry season, 25 to 48 taxa were obtained at St.1 to St.4 with the abundance ranged from 355 individuals m−2 to 589 individuals m−2. Meanwhile at

(a)(b)

Figure 5. Correlation between total nitrogen and phsophate with COD during (a) dry season and (b) rainy season in all stations.

St.5 to St.7 there was 29 to 37 taxa and the abundance ranged from 1073 individuals m−2 to 7019 individuals m−2. The conversion of land use and the presence of anthropogenic activities on the study site led to changes in the number of taxa and abundance of certain taxa that are tolerant to organic pollution. Based on the season, richness and abundance of macrozoobenthos in the rainy season had decreased. This is due to increased water discharge, especially at stations that are often flooded [37] . The abundance of the major taxa is also mostly higher during

Table 2. Macrozoobenthic community during the dry and rainy season.

dry season [38] .

The Shannon-Wiener index implies that, during the dry season, the macrozoobenthic community in St.1 to St.4 and St.7 were moderately diverse, meanwhile in St.4 and St.5 the diversity were low. In the rainy season, the diversity of macrozoobenthic community in St.1 was high, meanwhile in St.4 was moderate. In St.2, St.3, St.6, and St.7 the diversity were low and was very low in St.5.

BPLHD West Java Prov. [30] and Muntalif et al. [39] , have shown in their study that Chironomidae was dominant in Cikitu (St.5 in this study), while Hydropsyche was dominant in Babakan station (St.6 in this study). At St.1, in the dry season, the dominant families were Pachychilidae, Chironomidae and Simuliidae, while in the rainy season; the dominant families were Thiaridae and Pachychilidae. In St.2 the dominant taxa were Chironomidae and Simuliidae, while in the rainy season, Rhyacophilidae and Chironomidae became dominant.

The fact that Chironomidae can be found in all stations was in accordance with the study by Mayaningtias [40] that shows Chironomidae was not only found in polluted water but also in the upstream area, in an even higher diversity compared to the downstream area. While at St.2, Chironomidae and Simuliidae were dominant in dry season. Rhyacophilidae and Chironomidae were dominant in the rainy season. At St.3 Chironomidae, Simuliidae and Capniidae were dominant in the dry season and Chironomidae in the rainy season. At St.4, the macrozoobenthic community was dominated by Hydropsychidae and Chironomidae during the rainy season, while Rhyacophilidae and Chironomidaedominated in the dry season.

At St.5 during the dry season, the dominant macrozoobenthos were Chironomidae, Glossiphoniidae, and Tubificidae, while in the rainy season the dominant families were Glossiphoniidae and Chironomidae. Glossiphoniidae, which is a predator and prefers gravel substrate with some vegetation. Tubificidae presence may indicate bad water quality due to excess of food and bad water sanitation. This situation was often found on water that had undergone fecal contamination from cattle farms, domestic waste, and agricultural activities. Chironomidae and Hydrospychidae were also dominant in St.6 and 7.

3.3. Ecological Status of Citarum River Upstream Area

Below in Table 3 are the selected predominant families that appear in both season and equations that show significant relationship (R2 > 0.9) with certain environmental factor.

The equations resulted from linear regression correlation analysis between the abundance of the dominant family, water quality, and the sediment concentration at all stations.

From the selected equations, we can concur that the highly correlated parameters were: conductivity, TSS, turbidity, total N, total P, organic C, and particle distribution (percentage of sand, silt, and gravel). The total N, P, and organic C were selected to modify the scorings system since the two parameters were correlated to nutrient availability. These nutrients can be in various form such as litter and dead animals. Furthermore, total P also describes the pollutant that being discharged from various activities in the surrounding. Moreover, total P has not been widely used as a parameter in river management.

TSS and turbidity were chosen since they can indicate that pollutants are being discharged to the river. Usually, the pollutant was organic. These two parameters have been widely used in river management. In addition to that, these two parameters are included in the Indonesian government regulation on water

Table 3. Selected equations of linear regression correlation analysis.

S = Sand; G = gravel; Co = C-Organic; C = conductivity; Nt = total organic nitrogen; Ns = total organic nitrogen in sediment; Pt = total organic phosphate; Ps = phosphate in sediment; TSS = total suspended solid; T = Turbidity.

quality standard, making the newly developed tools not only suitable with local environmental condition but also with the local regulation.

Besides nutrient availability, substrate type is also highly correlated to the abundance and diversity of the macrozoobenthic community. Different taxa may prefer different substrate for attachment. The substrate type also provides shading and protection for the macrozoobenthos [19] . The substrate type that highly correlated to the abundance of macrozoobenthos was gravel. Besides the significant correlation, gravel has been widely used as a parameter for ecological assessment in river.

After selecting the key parameters from the research conducted by BPLHD of West java Prov. [30] and this research, the modification of this ecological status based on the calculation of ecological scoring during the dry season and the rainy season can be seen in Table 4.

Based on the scoring system result of this research, ecological status in the dry season is quite polluted while in the rainy season it is moderately polluted. This is because during the rainy season, the runoff from the rain water brought eroded particles as well as fertilizers from farming activities surrounding the area [36] [41] .

Further research on bioassessment using benthic macro invertebrates to determine the water quality of the Citarum River upstream area suggests that at

Table 4. Macrozoobenthos community during the dry and rainy season.

least there are three dominant sources of organic waste that pollute the water: traditional cattle farm, domestic waste, and liquid waste from textile industry [29] . Other studies concerning the determination of the ecological status of the Citarum upstream area based on criteria of organic pollution shows that the ecological status was categorized as slightly polluted to moderately polluted [42] .

4. Conclusions

Water quality and sediment parameters for TSS and turbidity concentration were higher in rainy season compared to the dry season. The highest conductivity parameter was at St.1. Total N, Total P, and COD in the dry season were higher compared to the rainy season. Total P, total N, and C-Organic in the sediments were higher in the dry season than the rainy season. The particle size distribution in the sediment showed no significant difference between the dry and rainy seasons.

The diversity and the abundance of macrozoobenthic fauna in the dry season were higher than that in the rainy season. The diversity can be categorized as moderately diverse. Based on the assessment of water quality in the upstream area of Citarum River using newly developed scoring system, the water quality was more polluted during the rainy season compared to dry season. Based on the scoring system index, the ecological status of the upstream area in Citarum River was quite polluted during dry season and moderately polluted during rainy season.

Cite this paper

Chazanah, N., Sudjono, P., Hasby, F.A., Suantika, G. and Muntalif, B.S. (2017) Development of Bioassessment Tools for Ecological Status Using Macrozoobenthic Community in Upstream Area (Case Study: Citarum River, West Java, Indonesia). Journal of Water Resource and Protection, 9, 770-785. https://doi.org/10.4236/jwarp.2017.97051

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