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Article

Application of a U-Tube Oxygenator in a Litopenaeus vannamei Recirculating Aquaculture System: Efficiency and Management Models

1
CAS Key Laboratory of Experimental Marine Biology, Institute of Oceanology, Chinese Academy of Sciences, Qingdao 266071, China
2
Center for Ocean Mega-Science, Chinese Academy of Sciences, Qingdao 266071, China
3
School of Marine Science and Engineering, Qingdao Agricultural University, Qingdao 266109, China
4
University of Chinese Academy of Sciences, Beijing 100049, China
*
Authors to whom correspondence should be addressed.
Water 2023, 15(22), 4019; https://doi.org/10.3390/w15224019
Submission received: 11 October 2023 / Revised: 17 November 2023 / Accepted: 18 November 2023 / Published: 20 November 2023

Abstract

:
This study investigated the dissolved oxygen (DO) variation pattern in a Litopenaeus vannamei recirculating aquaculture system (RAS) and established an oxygen-utilization rate (UROxygen) model, pure oxygen addition (QOxygen) model, and control model that linked a microscreen drum filter (MDF) with a U-tube oxygenator. The main objective was to promote the application of the U-tube oxygenator and achieve the efficient, accurate, and automated management of DO in an RAS. To avoid wasting oxygen and ensure production safety, it was recommended to maintain the effluent of the aquaculture pond at 6.9 ± 0.4 mg/L. The modeled relationship between the RAS flow (QRAS), QOxygen, and UROxygen was UROxygen = 0.9626 × (−105.3406 + 0.9911QRAS + 10.6202QOxygen − 0.05964QRASQOxygen − 1.2628 × 10−3QRAS2 − 0.1821QOxygen2 + 6.8888 × 10−5QRAS2QOxygen + 6.3993 × 10−4QRASQOxygen2). The modeled relationship between QRAS, daily feeding rate (MFeeding), and QOxygen was QOxygen = 1.09 × (−12.8633 − 0.02793QRAS + 0.9369 MFeeding − 8.9286 × 10−4MFeedingQRAS + 5.6122 × 10−5QRAS2 − 2.3281 × 10−3MFeeding2). The modeled relationship between the MDF backwashing period (TMDF) and QOxygen was QOxygen = −11.57ln(TMDF) + 78.319. This study provided a theoretical basis and novel methods for the management of DO in an RAS, thus promoting the healthy and stable development of an L. vannamei RAS.

1. Introduction

As one of the most productive shrimp species, Litopenaeus vannamei has the advantages of a fast growth rate, adaptability to a wide range of conditions, and strong resistance, and is therefore widely used in aquaculture [1,2,3]. Compared to traditional farming models, recirculating aquaculture has attracted much attention due to its environmental sustainability, high yields, controllability, and high product quality [4]. There have been several studies of the high-density aquaculture of L. vannamei using a recirculating aquaculture system (RAS) [1,4,5,6].
The management of the aquatic environment is crucial during the operation of an RAS [7]. Dissolved oxygen (DO) is considered to be one of the main limiting factors, because it is necessary for the metabolic activities of aquatic animals and will, therefore, determine the production capacity of an RAS [7,8,9]. Aeration and the use of pure oxygen are the main methods used to increase the DO concentration in an RAS [8]. Due to the continuous development of aquaculture technology and equipment, the aquaculture capacity of RASs has constantly improved. Blower aeration cannot meet the oxygenation needs of an RAS because of its high energy consumption and low efficiency [7]. Du et al. (2021) showed that, during the high-density recirculating aquaculture of L. vannamei, blower aeration played a significant role in the early stage; with an increase in the biomass and feeding amount, it could not meet the increasing oxygenation requirement of the aquaculture system [4]. The DO in aquaculture water decreased sharply to below 5.0 mg/L in the middle and later stages of aquaculture, posing a safety risk [4]. Adding pure oxygen will achieve high-density aquaculture and a high yield in an RAS [4,7]. The equipment commonly used to add pure oxygen to an RAS includes oxygen cones, U-tube oxygenator, and jet pumps [7]. Using oxygen cones and jet pumps to add pure oxygen has a high efficiency but also a high energy consumption. In contrast, traditional U-tube oxygenation methods rely on simple equipment with low maintenance costs and no additional energy consumption, but they have a relatively low oxygen-utilization rate [7]. The high operating energy consumption is a disadvantage of RASs, with the energy consumption for oxygen enrichment (e.g., blast aeration, oxygen cone, and jet) accounting for 12–20% of the total [8,10,11,12]. Therefore, using a U-tube oxygenator is of great significance in reducing the operational energy consumption of an RAS.
To address the problem of the low oxygen-utilization rate (UROxygen) of a U-tube oxygenator, the following measures were taken in this study: removing carbon dioxide (CO2), using a nano aeration device, and ensuring a suitable RAS flow (QRAS) [4,7]. Furthermore, the use of a U-tube oxygenator achieves the efficient management of DO in an RAS, which requires precise and automatic control of the pure oxygen flow (QOxygen). The precise and automatic management of QOxygen in an RAS can not only reduce resource waste but also prevent excessive DO concentration from harming breeding organisms [13,14]. The addition of pure oxygen in a traditional RAS is usually adjusted based on the monitoring results of DO detectors. When the DO concentration rises or falls to the warning concentration, it is adjusted by increasing or decreasing the QOxygen. This DO regulation method is relatively simple but has a delayed effect, and the DO concentration in aquaculture water is therefore prone to instability. The key to achieving the precise and automatic control of pure oxygen addition in an RAS is to establish a mathematical model for process control [14]. Previous studies have proposed several models for the control of DO concentrations in aquaculture water. Ta and Wei (2018) proposed a simplified reverse understanding convolutional neural network prediction model to predict changes in the DO concentration of aquaculture water [15]. Ren et al. (2020) established a prediction model for the DO concentration in aquaculture water based on deep-belief networks [16]. Zhou et al. (2022) established a dynamic DO model in aquaculture water based on the theory of microporous aeration mass transfer and mass conservation equations and proposed a fuzzy rule-optimized single-neuron adaptive process identifier controller for the precise control of DO [14]. These studies have enriched the theory and methods used in DO management in aquaculture, and the models can effectively predict changes in the DO concentration, achieving precise control of DO. However, the construction of these models is based on laboratory-scale aquaculture systems, and the effects of their application at the production scale are not yet known.
No management model has yet been developed for controlling the DO concentration in a high-density L. vannamei RAS. This study was based on a production-scale L. vannamei RAS and aimed to promote the application of a U-tube oxygenator by constructing suitable DO management models for an L. vannamei RAS. In an L. vannamei RAS, most of the environmental factors that affect the DO concentration, such as temperature, salinity, and pH, are relatively stable. The QRAS and daily feeding rate (MFeeding) have the most significant effects on the DO concentration. Therefore, this study used a response-surface methodology to investigate the relationship between QOxygen, QRAS, and MFeeding. A response-surface model (RSM) was constructed to guide the precise addition of pure oxygen in an L. vannamei RAS. Prior to this, the variation patterns of DO in an RAS and the oxygenation efficiency of a U-tube oxygenator were evaluated to provide guidance for DO management and the construction of QOxygen models. Additionally, considering the close correlation between QRAS, MFeeding, and the microscreen drum-filter (MDF) backwashing period (TMDF) [17,18], a model of the relationship between TMDF and QOxygen was constructed. Using a TMDF feedback control to QOxygen, the automatic addition of pure oxygen during the cultivation of L. vannamei was achieved. This study is of great significance for achieving efficient DO management in an RAS, improving aquaculture performance, reducing energy consumption, and promoting the automation and intelligent operation of RASs.

2. Materials and Methods

2.1. Experimental Setup

The L. vannamei RAS (500 m3) consisted of 12 aquaculture ponds (APs), 1 MDF, 1 buffer pool, 1 foam separator (FS), 3 moving bed biofilm reactor (MBBR), 1 U-tube oxygenator, and 1 disinfection equipment, as shown in Figure 1. The APs (6 m diameter, 1.5 m height) had an effective volume of approximately 34 m3 (Sanshiliwan Fishery Technology Co., Ltd., Yantai, China). The filtration aperture of the MDF was 74 μm, the maximum processing capacity of which was 400 m3/h. The volumes of the FS, MBBR, and U-tube oxygenator were approximately 6, 15, and 20 m3, respectively. Three sets of MBBR were connected in parallel, with a fill rate of 50%, using circular polyethylene fillers (2.5 cm diameter, 0.4 cm thickness, and 64 holes). The height and diameter of the U-tube oxygenator were 4.5 m and 1.8 m, with 2.8 m above ground and 1.7 m below ground, as shown in Figure 1. The bottom of the U-tube oxygenator was equipped with a nano aeration device (WTB200, Tianmiao Marine Biotechnology Co., Ltd., Zibo, China) connected to a liquid oxygen tank with a gas source pressure of about 0.3 Mpa, with QOxygen adjusted through a gas flow meter.
The aquaculture density was 800 tails/m3, and the initial average body length and weight of L. vannamei were approximately 3.2 cm and 0.48 g, respectively. The MFeeding of L. vannamei was calculated to be approximately 12% of body weight and gradually decreased to 2.5% as the shrimps grew. After the experiment, the average body length and weight of the shrimp were 12.3 cm and 18.5 g, respectively. The survival rate of the shrimp was about 86%, and the feed conversion ratio was 1.12. The salinity, pH, and temperature of aquaculture water were 25 ppt, 6.8–7.8, and 26.3–27.8 °C, respectively.

2.2. Experimental Design

2.2.1. The Change Pattern of the DO Concentration in an RAS

In the early stage of the operation of the L. vannamei RAS, the DO concentration in the effluent of the AP, MDF, FS, and MBBR were collected every two days over a period of 17 days, and MFeeding and QOxygen were recorded at the same time. According to the changes in the DO concentration, the effects of MDF, FS, and MBBR on the DO concentration were analyzed. Additionally, the DO concentrations in the influent and effluent of the AP during the operation of the L. vannamei RAS were determined, and the changes in biomass and QOxygen were recorded to analyze the oxygen-consumption rate (OCR) of the AP.

2.2.2. Construction of UROxygen and QOxygen Models for the U-Tube Oxygenator

Using the central composite design (CCD) method, a standard method was used for the experimental design and construction of RSMs, which were used to determine UROxygen and QOxygen models for the U-tube oxygenator during the operation of the L. vannamei RAS. Using QRAS and QOxygen as independent variables and UROxygen as a response value, the effects of QRAS and QOxygen were investigated on the UROxygen of the U-tube oxygenator. Moreover, using QRAS and MFeeding as independent variables and QOxygen as response values, the effects of QRAS and MFeeding on QOxygen for the U-tube oxygenator were studied when the DO concentration in the AP effluent was 6.9 ± 0.4 mg/L (based on the results of study 2.2.1). The experimental independent variables and their levels are given in Table 1.
Based on the information given in Table 1, the corresponding experimental design was obtained through the Design Expert V.10 software, as shown in Table 2. Three parallel experiments were conducted in each group, and the average value was calculated (Table 2) and fed back to the Design Expert V.10 software to obtain the corresponding RSM model and its data-analysis results.
Based on the above models and the actual farming situation, the QOxygen during the cultivation of L. vannamei was set and the relevant data (QRAS, MFeeding, QOxygen, and TMDF) was collected to modify the models. The connection between QOxygen and TMDF was analyzed, and a model was constructed of the relationship of QOxygen and TMDF to achieve the automatic management of QOxygen in an RAS. The data was collected every day for a period of approximately 100 days.

2.2.3. The Analysis Method

The salinity, pH, temperature, and DO during the cultivation of L. vannamei were measured using a multiparameter water-quality detector (YSI-556, YSI Inc., Yellow Springs, OH, USA). A total of 500–600 shrimp were randomly caught in different APs, and the average weight of shrimp was calculated (mshrimp, g). The total biomass (MBiomass, kg) of L. vannamei in an RAS was estimated using Formula (1):
M B i o m a s s   = n m S h r i m p 1000
where, n is the number of L. vannamei individuals in an RAS.
The RSM equation with response values of UROxygen and QOxygen was fitted in the form of a quadratic polynomial equation using a second-order model (2):
Y = β 0 + i = 1 n β i X i + i = 1 n β i i X i 2 + i = 1 n 1 j = i + 1 n β i j X i X j
where, Y, β0, βi, βii, and βij are the predicted response value, intercept parameter, linear coefficient, quadratic coefficient, and interaction coefficient, respectively; Xi and Xj are independent variables; and n is the number of influencing factors [19,20].
The calculation Formula (3) for the correction coefficient (θ) of the RSM was as follows:
θ = 1 n i = 1 n A i P i
where, Ai, Pi, and n are the actual value, predicted value, and the number of data sets, respectively.
The amount of oxygen added (MOxygen, g/h), the increase in the DO concentration due to the U-tube oxygenator (MDO, g/h), and the AP OCR (g O2/(kg shrimp h)) were calculated using Formulas (4)–(6):
M O x y g e n = 60 Q O x y g e n M O 2 V m
M D O = Q R A S ( C 1 C 0 )
O C R = Q R A S ( C 2 C 3 ) M B i o m a s s
where, MO2 (g/mol) is the relative molecular weight of O2; Vm (L/mol) is the molar volume; C1 and C0 (mg/L) are the DO concentrations of the AP influent and MBBR effluent, respectively; and C2 and C3 (mg/L) are the DO concentrations of the AP influent and effluent, respectively.

3. Results and Discussion

3.1. The Change Pattern of the DO Concentration in an RAS

3.1.1. Effect of the Water-Treatment Units on the DO Concentration

Determining the variation pattern of the DO concentration in the effluent of the water-treatment units in an RAS is crucial for ensuring the correct addition of pure oxygen. Figure 2 shows the changes in the DO concentration in the AP, MDF, FS, and MBBR effluent when the MFeeding, QRAS, and QOxygen was 27–35 kg/day, 248–266 m3/day, and 3.0–6.0 L/min, respectively. Figure 2 shows that the DO concentration in the MDF effluent was slightly lower than in the AP effluent, which could be attributed to the backwashing of the MDF. In comparison, the differences in the DO concentrations between the FS, MBBR effluent, and AP effluent were greater, which was related to the air-flotation and aeration processes in the FS and MBBR. Additionally, the DO concentration in the MBBR effluent was influenced by the metabolic process of microorganisms. The DO concentration data for the AP, FS, and MBBR effluent in Figure 2 were fitted to obtain three trend lines: y = 0.12x + 6.6811, R2 = 0.9755 (AP effluent, Line 1); y = 0.051x + 7.255, R2 = 0.8709 (FS effluent, Line 2); y = 0.0378x + 7.1219, R2 = 0.8462 (MBBR effluent, Line 3). Significantly, lines one and two intersected at a certain point (8.32, 7.68), indicating that when the DO concentration in the AP effluent was <7.68 mg/L, and the air-flotation process of the FS could increase the DO concentration in the aquaculture water, otherwise it would lead to the escape of DO from aquaculture water. Additionally, the intersection point of lines one and three (5.36, 7.32) indicated that when the DO concentration in AP effluent was less than 7.32 mg/L, the aeration process of the MBBR could increase the DO concentration, otherwise it would lead to the escape of DO from aquaculture water. In addition to preventing the waste of resources, DO management in an RAS needs to ensure the healthy growth of breeding organisms and the efficient operation of the MBBR [7,21]. In previous studies, the DO concentration was typically maintained at 6.5–7.5 mg/L during the high-density aquaculture of L. vannamei [4,6,22]. Based on the studies referred to above, and, considering the normal growth of shrimp and the water-treatment performance of the biofilm during high-density aquaculture, it is recommended to maintain the DO concentration of the AP effluent at 6.9 ± 0.4 mg/L.

3.1.2. The OCR of the APs

The OCR of the APs during the cultivation of L. vannamei is shown in Figure 3. The results showed that, when the biomass of L. vannamei increased from about 180 to 5220 kg, the pure oxygen addition in the RAS increased from 600.00 to 2228.57 g/h, and the DO consumption in the APs increased from 384.40 to 1261.19 g/h. The biomass of the shrimp increased by about 31.64 times, while the DO consumption in the APs increased by about 3.28 times. The OCR of the AP decreased from the initial amount of around 0.8 g O2/(kg shrimp h) to around 0.25 g O2/(kg shrimp h). This was mainly because the OCR of L. vannamei was inversely proportional to the wet weight of the shrimp [23,24]. Walker et al. (2009) found that the OCR of L. vannamei (3–25 g/shrimp) ranged from 0.7 g O2/(kg shrimp h) to 0.3 g O2/(kg shrimp h) [25]. In a recent study, Kır et al. (2023) indicated that the OCR of 16 ± 1.5 g L. vannaeus in water with a salinity of 30 ppt and temperature of 27 °C was equivalent to approximately 0.3 g O2/(kg shrimp h) [9]. The OCR of the APs was close to that of the shrimp because the RAS in this study gave prominence to the removal of suspended solids, as shown by Du et al. (2021) [4], and Xu et al. (2021, 2022) [6,18]. The water in the APs was clear, resulting in the low oxygen consumption of microorganisms [4].

3.2. Models

3.2.1. Response-Surface Models Related Data Analysis

The analysis of variance results for the RSM data are shown in Table 3. The R2, Adj-R2, and Pred-R2 values of models one and two were 0.9906 and 0.9883, 0.9773 and 0.9799, and 0.9001 and 0.9197, respectively. The high R2, Adj-R2, and Pred-R2 values with small differences suggested a good accuracy and applicability between the data and the models, and the RSMs could effectively predict UROxygen and QOxygen during the cultivation of L. vannamei [20,26]. The ratio of the standard error to experimental data, i.e., the coefficient of variation (CV), is a normalized measure of the degree of dispersion of the probability distribution. A CV < 10% is considered satisfactory, and the CV values of the data in the UROxygen and QOxygen groups in this study were 1.28% and 6.13%, respectively [27]. The Prob > F values < 0.0001 indicated that the models were statistically acceptable. Additionally, the AP values in the UROxygen and QOxygen groups were 29.456 and 34.757, respectively, with AP values > 4 considered feasible [20,27]. The comparisons between the predicted and actual values of the models with response values of UROxygen and QOxygen are shown in Figure 4a1,a2, while the normal % probability residual and external student residual are shown in Figure 4b1,b2. The linear relationship between the data proved that the established models could effectively predict the UROxygen and QOxygen of the U-tube oxygenator in the production scale operation of the L. vannamei RAS [19,20].

3.2.2. The UROxygen RSM

The relationships between QRAS, QOxygen, and UROxygen in the L. vannamei RAS are shown in Figure 5. The UROxygen was directly proportional to QRAS and inversely proportional to QOxygen. Specifically, when QOxygen was 1 and 25 L/min, with an increase in QRAS from 240 to 340 m3/h, the UROxygen of the U-tube oxygenator increased from 59.73% and 48.33% to 83.78% and 65.45%, increasing by 24.05% and 17.12%, respectively. When QRAS was 240 and 340 m3/h, with an increase in QOxygen from 1 to 25 L/min, the UROxygen of the U-tube oxygenator decreased from 59.73% and 83.78% to 48.33% and 65.45%, reducing by 11.40% and 18.33%, respectively. Xiao et al. (2019) reported that, due to the inability of the U-tube oxygenator to effectively remove nitrogen and CO2, UROxygen was found to be about 40% [7]. In this study, when the QRAS was 240–340 m3/h and the QOxygen was 1–25 L/min, the UROxygen of the U-tube oxygenator was 48.33–83.78%, mainly due to the high QRAS, nano gas disk, and the FS and MBBR aeration process for CO2 removal.
A quadratic regression model was determined between QRAS, QOxygen, and the U-tube oxygenator UROxygen: UROxygen = −105.3406 + 0.9911QRAS + 10.6202QOxygen − 0.05964QRASQOxygen − 1.2628 × 10−3QRAS2 − 0.1821 QOxygen2 + 6.8888 × 10−5QRAS2QOxygen + 6.3993 × 10−4QRASQOxygen2. A total of 37 sets of data were collected from the production scale L. vannamei RAS. The actual and simulated values of the AP effluent, MBBR effluent, AP inflow, shrimp OCR, and UROxygen during the cultivation of L. vannamei are shown in Table 4. Moreover, according to Formula (3), the correction coefficient θ of the model was 0.9626. The modified RSM model was UROxygen = 0.9626 × (−105.3406 + 0.9911QRAS + 10.6202QOxygen − 0.05964QRASQOxygen − 1.2628 × 10−3QRAS2 − 0.1821QOxygen2 + 6.8888 × 10−5QRAS2QOxygen + 6.3993 × 10−4QRASQOxygen2).

3.2.3. The QOxygen RSM

During the cultivation of L. vannamei, when the DO concentration of the AP effluent was 6.9 ± 0.4 mg/L, the required QOxygen under different QRAS and MFeeding conditions is shown in Figure 6. The required QOxygen was directly proportional to MFeeding and inversely proportional to QRAS. Specifically, when QRAS was 240 and 340 m3/h, with an increase in MFeeding from 20 to 100 kg/day, QOxygen increased from 0 to 32.65 and 24.18 L/min, respectively. Interestingly, when QRAS was 240–340 m3/h and MFeeding was 24.6–28 kg/day, there was no need to add pure oxygen. Due to the relatively low biomass in the RAS in the early stage of aquaculture, the gas–water exchange processes of the FS and MBBR could supplement the required DO. As MFeeding increased, the effects of QRAS on QOxygen significantly increased. When MFeeding was 100 kg/d, QRAS increased from 240 to 340 m3/h, and QOxygen decreased by 25.94%. There were two main reasons for this: (1) adding QRAS improved the UROxygen of the U-tube oxygenator and (2) increasing QRAS enhanced the removal efficiency of the organic particulate matter in the aquaculture water, thereby reducing the DO consumption caused by the oxidation and decomposition of the organic matter [7,18].
A quadratic regression model was obtained between QRAS, MFeeding, and QOxygen: QOxygen = −12.8633 − 0.02793QRAS + 0.9369MFeeding − 8.9286 × 10−4MFeedingQRAS + 5.6122 × 10−5QRAS2 − 2.3281 × 10−3MFeeding2. Table 5 shows the actual and model-predicted values of QOxygen during the cultivation of L. vannamei. Table 5 compares the actual value and the RSM-predicted values of QOxygen and indicates that the model could effectively predict QOxygen during the cultivation of L. vannamei. According to the Formula (3), the correction coefficient (θ) of the model was 1.09 (MFeeding > 28.0 kg/day). Therefore, the RSM was revised to QOxygen = 1.09 × (−12.8633 − 0.02793QRAS + 0.9369MFeeding − 8.9286 × 10−4MFeedingQRAS + 5.6122 × 10−5QRAS2 − 2.3281 × 10−3MFeeding2).

3.2.4. The QOxygen Feedback-Control Model

During the operation of an RAS, TMDF is mainly influenced by MFeeding and QRAS [7,18]. The results given in Section 3.2.3 showed that QOxygen was also associated with MFeeding and QRAS. Previous studies have shown that the operating parameters of the automatic control of some water-treatment units in an RAS can be guided by the working status of the MDF, such as the electrocoagulation reactors [6,18]. Therefore, constructing a model of the relationship between TMDF and QOxygen will help to achieve the automatic control of the U-tube oxygenator during the cultivation of L. vannamei. Table 5 shows the TMDF and QOxygen during the cultivation process of L. vannamei. The 92 sets of data in Table 5 were fitted, as shown in Figure 7. The relationship between TMDF and QOxygen was a logarithmic function: QOxygen = −11.57ln(TMDF) + 78.319, R2 = 0.9782. Table 5 compares the actual value and the QOxygen feedback-control model predicted values of QOxygen and indicates that the model could effectively manage the QOxygen during the cultivation of L. vannamei.

3.3. Analysis of the RAS Oxygenation Cost

Table 6 shows the oxygenation cost of the cultivation of L. vannamei and a comparison with other cases. The oxygen addition, total feeding amount, yield, and cost of the RAS during the cultivation of L. vannamei were 2368 kg O2, 4987 kg, 4488 kg, and CNY 0.42 /kg shrimp, respectively. Compared to other oxygenation methods, the lowest cost was achieved with the use of pure oxygen.

4. Conclusions

This study focused on the efficient management of DO in an L. vannamei RAS. The application of a U-tube oxygenator in an RAS was investigated, and models were constructed to predict the automatic control of DO in an RAS. The results showed that the U-tube oxygenator met the DO requirements for the high-density cultivation of L. vannamei, with an oxygenation energy consumption of CNY 0.42/kg shrimp. More importantly, the established QOxygen RSM could predict and guide the addition of oxygen, and the QOxygen feedback-control model could achieve the automatic regulation of QOxygen during the cultivation of L. vannamei. The results of this study reduced the cost of oxygen augmentation during the cultivation of L. vannamei, achieving the precise addition of oxygen and efficient management of DO in an RAS, thus improving its stability and automation. The models constructed in this study were based on MFeeding. If MFeeding was abnormal during the cultivation of L. vannamei, the DO automatic management system needed to be closed, and QOxygen was adjusted based on the actual DO concentration. In addition, the results of this study can provide a reference for the management of DO during the recirculating aquaculture of the fish.

Author Contributions

Conceptualization, J.S.; Data curation, J.X.; Formal analysis, J.X. and G.S.; Investigation, J.X. and H.W.; Project administration, J.S. and T.Q.; Resources, H.T., T.Q. and L.Z.; Writing—original draft, J.X.; Writing—review and editing, J.X., T.Q., L.Z., J.Z. and Y.D. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the National Key R&D Program of Shandong, grant number 2023CXGC010412, Shandong Provincial Natural Science Foundation, grant number ZR2023QC263, Liaoning Academy of Agricultural Sciences Dean Fund Program, Grant number 2023BS0807, Excellent young scientific and technological personnel of Dalian, Grant number 2023RY007.

Data Availability Statement

Data are contained within the article.

Acknowledgments

The authors thank the Yantai Sanshiliwan Fishery Technology Co., Ltd. for supporting this study.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

DOdissolved oxygen
RASrecirculating aquaculture system
UROxygenoxygen-utilization rate
QOxygenpure oxygen addition
QRASRAS flow
MFeedingdaily feeding rate
MDFmicroscreen drum filter
TMDFMDF backwashing period
RSMresponse-surface model
APaquaculture ponds
FSfoam separator
MBBRmoving bed biofilm reactor
OCRoxygen-consumption rate
CCDcentral composite design
CVcoefficient of variation
APadequate precision
mshrimpthe average weight of shrimp

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Figure 1. The Litopenaeus vannamei recirculating aquaculture system (RAS) (left) and the U-tube oxygenator structure diagram (right).
Figure 1. The Litopenaeus vannamei recirculating aquaculture system (RAS) (left) and the U-tube oxygenator structure diagram (right).
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Figure 2. Changes in the dissolved oxygen (DO) concentration in the effluent from the aquaculture ponds (APs), microscreen drum filter (MDF), foam separator (FS), and moving bed biofilm reactor (MBBR).
Figure 2. Changes in the dissolved oxygen (DO) concentration in the effluent from the aquaculture ponds (APs), microscreen drum filter (MDF), foam separator (FS), and moving bed biofilm reactor (MBBR).
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Figure 3. The oxygen-consumption rate (OCR) of the aquaculture ponds (APs) during the early and late stages of aquaculture.
Figure 3. The oxygen-consumption rate (OCR) of the aquaculture ponds (APs) during the early and late stages of aquaculture.
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Figure 4. The predicted and actual values, normal % probability residuals, and external student residuals of the models ((a1,a2) UROxygen; (b1,b2) QOxygen).
Figure 4. The predicted and actual values, normal % probability residuals, and external student residuals of the models ((a1,a2) UROxygen; (b1,b2) QOxygen).
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Figure 5. Effects of the RAS flow (QRAS) and pure oxygen addition (QOxygen) on the U-tube oxygenator oxygen-utilization rate (UROxygen).
Figure 5. Effects of the RAS flow (QRAS) and pure oxygen addition (QOxygen) on the U-tube oxygenator oxygen-utilization rate (UROxygen).
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Figure 6. Effects of the RAS flow (QRAS) and daily feeding rate (MFeeding) on the pure oxygen addition (QOxygen) during the cultivation of Litopenaeus vannamei.
Figure 6. Effects of the RAS flow (QRAS) and daily feeding rate (MFeeding) on the pure oxygen addition (QOxygen) during the cultivation of Litopenaeus vannamei.
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Figure 7. The microscreen drum-filter (MDF) backwashing period (TMDF) and pure oxygen addition (QOxygen) during the cultivation of Litopenaeus vannamei.
Figure 7. The microscreen drum-filter (MDF) backwashing period (TMDF) and pure oxygen addition (QOxygen) during the cultivation of Litopenaeus vannamei.
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Table 1. Influencing factors and their levels.
Table 1. Influencing factors and their levels.
ResponsesFactorsLevels
LowHigh−alpha+alpha
UROxygen (%)QRAS (m3/h)266337251.3351.7
QOxygen (L/min)6.520.53.623.4
QOxygen (L/min)QRAS (m3/h)250320235.5334.5
MFeeding (kg/d)408031.788.3
Table 2. The experimental matrix designed through a central composite design (CCD) method for the response values of oxygen-utilization rate (UROxygen) and pure oxygen addition (QOxygen).
Table 2. The experimental matrix designed through a central composite design (CCD) method for the response values of oxygen-utilization rate (UROxygen) and pure oxygen addition (QOxygen).
RunFactorsResponseRunFactorsResponse
QRAS
(m3/h)
QOxygen
(L/min)
UROxygen
(%)
QRAS
(m3/h)
MFeeding
(kg/d)
QOxygen
(L/min)
1301.523.458.161334.560.014.5
2301.513.566.572250.040.07.5
3301.513.565.123235.560.019.0
4337.06.575.654250.080.026.5
5337.020.565.175285.031.74.5
6301.513.566.786285.060.016.0
7266.020.555.127285.060.016.5
8266.06.565.788285.088.325.0
9351.713.570.359320.040.05.0
10301.513.565.8510285.060.016.5
11301.53.678.1211285.060.016.5
12301.513.564.7812285.060.016.0
13251.313.560.121332080.021.5
Table 3. The results of variance analysis.
Table 3. The results of variance analysis.
Response ValueR2Adj-R2Pred-R2CV (%)Prob > FAP
Model 1: UROxygen0.99060.97730.90011.28<0.000129.456
Model 2: QOxygen0.98830.97990.91976.13<0.000134.757
Table 4. Changes in the pure oxygen addition (QOxygen), dissolved oxygen (DO) concentration, and oxygen-utilization rate (UROxygen) during the cultivation of Litopenaeus vannamei.
Table 4. Changes in the pure oxygen addition (QOxygen), dissolved oxygen (DO) concentration, and oxygen-utilization rate (UROxygen) during the cultivation of Litopenaeus vannamei.
QRAS
(m3/h)
MFeeding
(kg/d)
MBiomass
(kg)
QOxygen
(L/min)
AP
Effluent
(mg/L)
MBBR
Effluent
(mg/L)
AP
Influent
(mg/L)
AP DO
Loss
(g/h)
O2
Addition
(g/h)
RAS DO
Increase
(g/h)
UROxygen (%)
AiPi
24819.71977.08.587.619.16143.84 600.00 384.4064.07 62.10
24819.71806.08.217.388.75133.92 514.29 339.7666.06 62.34
24821.21906.08.107.478.72153.76 514.29 310.0060.28 62.34
24821.22156.08.027.358.61146.32 514.29 312.4860.76 62.34
28622.22223.67.347.157.86148.72 308.57 203.0665.81 71.94
28623.22426.07.947.378.58183.04 514.29 346.0667.29 70.04
28625.42743.27.257.257.94197.34 274.29 197.3471.95 72.26
24826.63004.07.477.468.35218.24 342.86 220.7264.38 62.67
26626.63364.07.467.428.28218.12 342.86 228.7666.72 67.27
26626.63564.07.377.468.26236.74 342.86 212.862.07 67.27
26626.83684.07.357.428.25239.40 342.86 220.7864.39 67.27
26626.83686.07.667.428.63258.02 514.29 321.8662.58 66.29
24827.43943.56.957.328.07277.76 300.00 186.0062.00 62.73
24827.44314.06.927.288.11295.12 342.86 205.8460.04 62.67
24827.45004.07.067.428.28302.56 342.86 213.2862.21 62.67
28631.85509.07.957.489.21360.36 771.43 494.7864.14 67.67
24838.560010.08.097.559.62379.44 857.14 513.3659.89 61.10
29840.76419.57.667.349.11432.10 814.29 527.4664.78 68.80
30444.57419.57.417.228.95468.16 814.29 525.9264.59 69.50
29840.76708.57.467.349.01461.90 728.57 497.6668.31 69.68
24844.374012.08.017.469.94478.64 1028.57 615.0459.80 60.21
2485084016.08.287.3110.45538.16 1371.43 778.7256.78 57.85
24852.688017.08.057.2610.32562.96 1457.14 758.8852.08 57.14
28668.6283016.07.187.2110.41923.78 1371.43 915.2066.73 62.21
28668.6300020.07.637.3911.05978.12 1714.29 1046.7661.06 59.14
29872.6346023.08.017.4811.561057.90 1971.43 1215.8461.67 58.59
29872.6363024.58.217.6711.861087.70 2100.00 1248.6259.46 57.65
29872.6363025.08.257.6811.791054.92 2142.86 1224.7857.16 57.35
28673.2366018.06.737.1810.451063.92 1542.86 935.2260.62 60.67
28673.2366021.07.267.3110.971061.06 1800.00 1046.7658.15 58.37
33777.3386524.07.647.2611.141179.50 2057.14 1307.5663.56 64.83
29079.2396024.07.287.2811.391191.90 2057.14 1191.957.94 56.70
29079.2416026.07.727.3111.781177.40 2228.57 1296.358.17 55.28
30184.7443529.58.067.5112.381300.32 2528.57 1465.8757.97 55.54
33785465023.57.747.4311.371223.31 2014.29 1327.7865.92 64.86
33785495025.07.757.3811.551280.60 2142.86 1405.2965.58 64.82
30186.4522026.07.357.3611.551264.20 2228.57 1261.1956.59 57.32
Table 5. The daily feeding rate (MFeeding), RAS flow (QRAS), microscreen drum filter (MDF) backwashing period (TMDF), and pure oxygen addition (QOxygen) during the cultivation of Litopenaeus vannamei.
Table 5. The daily feeding rate (MFeeding), RAS flow (QRAS), microscreen drum filter (MDF) backwashing period (TMDF), and pure oxygen addition (QOxygen) during the cultivation of Litopenaeus vannamei.
No.MFeeding (kg)QRAS (m3/h)TMDF (s)QOxygen (L/min)No.MFeeding (kg)QRAS (m3/h)TMDF (s)QOxygen (L/min)
abcabc
118.524118000.0--5156.531126813.013.713.6
220.024816740.0--5258.531125714.014.514.1
319.724817140.0--5346.531834312.59.310.8
421.224815650.0--5446.531833912.59.310.9
527.924813192.0--5547.531832513.09.711.4
627.424812412.0--5649.031830013.010.412.3
728.224812862.0--5751.531828413.011.413.0
827.424810002.0--5854.031826013.512.414.0
927.424810142.0--5957.031823914.513.615.0
1027.42489662.0--6058.031823715.014.015.1
1126.626610471.5--6160.031822516.514.815.7
1227.026610942.0--6261.531821917.515.316.0
1326.826611402.5--6363.031821418.015.916.2
1426.826611252.5--6450.432523713.510.715.1
1520.72869470.0--6552.332523514.011.515.2
1621.22869300.0--6654.532524315.512.314.8
1721.22869050.0--6756.532522416.513.115.7
1822.22868890.5--6859.032521417.014.116.2
1923.22868821.0--6960.532521017.514.616.5
2025.42868571.5--7062.032520517.515.216.7
2127.02868282.0--7163.432520118.015.717.0
2229.42976882.01.62.77264.832519918.016.117.1
2330.52976672.52.13.17365.432519217.516.417.5
2431.42976493.52.63.47464.633719017.015.517.6
2533.02976174.03.54.07561.033720816.014.316.6
2634.22975914.54.14.57662.033720216.514.616.9
2735.52975765.04.74.87762.533720216.514.816.9
2837.42975415.55.75.57862.033720516.514.616.7
2939.52975225.56.75.97963.033720117.015.017.0
3040.72974975.57.36.58064.533719817.015.517.1
3137.92975395.55.95.58165.533719017.015.817.6
3242.52974666.58.27.28267.533718617.516.517.9
3344.82974079.59.28.88367.533718317.516.518.0
3444.72974247.09.28.38464.033719517.015.317.3
3544.53044029.58.98.98564.033720017.015.317.0
3646.53043919.59.89.38665.033719017.515.617.6
3746.530438210.09.89.58766.033719018.016.017.6
3847.530436510.010.210.18869.033718518.016.917.9
3948.530435010.510.710.58972.533717518.018.018.6
4049.530434210.511.110.89074.033716818.518.419.0
4150.530433610.511.511.0 9175.033716219.518.719.5
4252.030431311.012.211.89275.533715719.518.919.8
4352.530431011.512.411.99376.533715819.519.219.7
4453.530430011.512.812.39475.533715419.018.920.0
4553.531128711.512.512.89576.033715519.519.020.0
4653.531129012.012.512.79678.533715020.519.720.3
4753.531129112.512.512.79778.033715220.519.620.2
4853.031129212.512.312.69875.033715520.018.720.0
4954.031127912.512.713.29976.033715421.019.020.0
5056.031126913.013.513.610076.033715021.019.020.4
Note: In the QOxygen column, a, b, and c represent the actual value, RSM-predicted value, and feedback-control model predicted value, respectively.
Table 6. The oxygenation cost during the cultivation of L. vannamei.
Table 6. The oxygenation cost during the cultivation of L. vannamei.
Aquaculture
Mode
Oxygenation MethodOxygen Addition/Energy ConsumptionTotal Feeding Amount
(kg)
Shrimp
Yield
(kg)
Oxygenation Cost (CNY/kg Shrimp)Reference
RAS (384 m3)Pure oxygen2296 kg O2498744880.42This study
RAS (338 m3)Pure oxygen + Roots blower452 kg O2 +
4579 kWh
436839561.25[4]
Factory water exchange farming (272 m3)Roots blower3540 kWh23721590.82.33[5]
Semi-intensive pond farming (1 ha)Paddle-wheel aerators2681 kWh-25201.06[28]
Note: The unit prices for oxygen and electricity are CNY 0.83/kg and CNY 1.0/kWh, respectively.
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Xu, J.; Du, Y.; Su, G.; Wang, H.; Zhang, J.; Tian, H.; Zhou, L.; Qiu, T.; Sun, J. Application of a U-Tube Oxygenator in a Litopenaeus vannamei Recirculating Aquaculture System: Efficiency and Management Models. Water 2023, 15, 4019. https://doi.org/10.3390/w15224019

AMA Style

Xu J, Du Y, Su G, Wang H, Zhang J, Tian H, Zhou L, Qiu T, Sun J. Application of a U-Tube Oxygenator in a Litopenaeus vannamei Recirculating Aquaculture System: Efficiency and Management Models. Water. 2023; 15(22):4019. https://doi.org/10.3390/w15224019

Chicago/Turabian Style

Xu, Jianping, Yishuai Du, Guogen Su, Hexiang Wang, Jiawei Zhang, Huiqin Tian, Li Zhou, Tianlong Qiu, and Jianming Sun. 2023. "Application of a U-Tube Oxygenator in a Litopenaeus vannamei Recirculating Aquaculture System: Efficiency and Management Models" Water 15, no. 22: 4019. https://doi.org/10.3390/w15224019

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