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Article

Sustainable Upcycling of Mushroom Farm Wastewater through Cultivation of Two Water Ferns (Azolla spp.) in Stagnant and Flowing Tank Reactors

1
Agro-Ecology and Pollution Research Laboratory, Department of Zoology and Environmental Science, Gurukula Kangri (Deemed to Be University), Haridwar 249404, Uttarakhand, India
2
Biology Department, College of Science, King Khalid University, Abha 61321, Saudi Arabia
3
Botany Department, Faculty of Science, Kafrelsheikh University, Kafr El-Sheikh 33516, Egypt
4
Biology Department, Faculty of Science and Arts, King Khalid University, Mohail Assir 61321, Saudi Arabia
5
Botany Department, Faculty of Science, Aswan University, Aswan 81528, Egypt
6
Deanship of Scientific Research, Umm Al-Qura University, Makkah 24243, Saudi Arabia
7
Plant Ecology and Range Management Department, Desert Research Center, Cairo 11753, Egypt
8
Biology Department, Faculty of Science, Umm-Al-Qura University, Makkah 24243, Saudi Arabia
9
Botany and Microbiology Department, Faculty of Science, Al-Azhar University, Cairo 11651, Egypt
10
Biology Department, College of Science, Tabuk University, Tabuk 47512, Saudi Arabia
11
Department of Agricultural and Biosystems Engineering, University of Ilorin, PMB 1515, Ilorin 240103, Nigeria
12
Department of Agricultural Civil Engineering, Kyungpook National University, Daegu 41566, Korea
13
Department of Agronomy, Faculty of Agronomy, University of Forestry, 10 Kliment Ohridski Blvd, 1797 Sofia, Bulgaria
14
Department of Plant Production, Faculty of Agriculture, Lebanese University, Beirut 1302, Lebanon
15
University of Zagreb, Faculty of Agriculture, Svetosimunska 25, 10000 Zagreb, Croatia
16
Nehru College, Pailapool, Affiliated Assam University, Silchar 788098, Assam, India
17
Department of Environmental Science, Graphic Era (Deemed to Be University), Dehradun 248002, Uttarakhand, India
*
Authors to whom correspondence should be addressed.
These authors contributed equally to this work.
Horticulturae 2022, 8(6), 506; https://doi.org/10.3390/horticulturae8060506
Submission received: 28 April 2022 / Revised: 2 June 2022 / Accepted: 4 June 2022 / Published: 8 June 2022
(This article belongs to the Special Issue Advanced of Horticulture Innovative Irrigation Technologies)

Abstract

:
Nowadays, the increase in the wastewater generated from the mushroom cultivation sector has become a serious environmental pollution concern. Therefore, the present study aimed to assess the efficiency of two water ferns (Azolla pinnata and A. filiculoides) in phytoremediation of mushroom farm wastewater (MFW) under stagnant and flowing tank reactor systems. For this, the laboratory scale experiments were conducted using five treatments, i.e., control (absolute borewell water), S50 (15 L borewell water + 15 L MFW: stagnant mode), S100 (30 L MFW: stagnant mode), F50 (15 L borewell water + 15 L MFW: flowing mode), F100 (30 L MFW: flowing mode), separately for both Azolla spp. After 15 days, A. pinnata and A. filiculoides significantly (p < 0.05) reduced the physicochemical parameters of MFW such as pH (18.87 and 18.56%), electrical conductivity (EC: 80.28 and 78.83%), total dissolved solids (TDS: 87.12 and 86.63%), biochemical oxygen demand (BOD: 90.63 and 89.90%), chemical oxygen demand (COD: 86.14 and 85.54%), and total Kjeldahl’s nitrogen (TKN: 84.22 and 82.44%), respectively, in F100 treatment. Similarly, the highest growth and biochemical parameters of Azolla spp. were also observed while using absolute MFW treatment in a flowing tank reactor system. Moreover, out of the two tested growth kinetic models, the logistic model showed better fitness to the experimental data and prediction of critical growth parameters compared to the modified Gompertz model. The findings of this study are novel and suggest sustainable upcycling of MFW using plant-based treatment techniques with the production of high-quality Azolla spp. biomass.

1. Introduction

Although mushroom production has succeeded in dealing with the tremendous agro-industrial residues disposal into the environment, it generates large volumes of wastewaters as a natural consequence of the cultivation and postharvest technologies adopted. According to “Monterey Mushrooms,” on average, the production of 1 kg of white and brown mushrooms needs around 18.2 L of freshwater [1]. Thus, being a top-ranking producing country of this important farm produce, India generates an enormous quantity of wastewater from the mushroom industry. Mushroom farm wastewater (MFW) generally contains chemical fertilizers or substances containing a high load of pollutants such as total dissolved solids (TDS), biochemical oxygen demand (BOD), chemical oxygen demand (COD), nitrogen (N), phosphorus (P), etc., that may harm the environment and all life forms [2,3]. Various activities inside the mushroom cultivation farm also contribute to the release of wastewater as shown in Figure 1. Moreover, their wastewater includes concentrations of elements such as cadmium (Cd), copper (Cu), chromium (Cr), iron (Fe), manganese (Mn), lead (Pb), nickel (Ni), and zinc (Zn) [4] that pollute underground and surface waters causing human and aquatic disorders in addition to disastrous impacts on soil microflora.
Nowadays, phytoremediation is receiving great attention for its cost-effective, and eco-friendly technology in the remediation of pollutants found in agro-industrial wastewaters to avoid their unsafe discharge into the environment. In this context, various aquatic plants such as water ferns (Azolla spp.), water hyacinth (Eichhornia crassipes), and water lettuce (Pistia stratiotes), etc., have shown a high potential for remediation of a wide range of pollutants [5,6,7]. Previous reports pointed out that an increase in produced plant biomass was underscored proving again the success of this type of phytoremediation aiming for a safer environment [8]. Moreover, an increase in fresh biomass, chlorophyll, and relative growth rate of plants was observed when grown on these wastewaters [9,10]. Other free-floating aquatic weeds, such as Salvinia molesta and Pistia stratiotes had a considerable phytoremediation potential for domestic and industrial wastewater treatment [11,12].
Azolla spp. is considered and ranked as one of the best accumulators of pollutants, and also plays a role in the recovery of nutrients from polluted ecosystems [13]. The phytoremediation potential of several Azolla spp. was previously assessed within the literature. For instance, A. filiculoides showed high BOD, COD, and TDS removals (98.2%, 92.23%, and 90.29%, respectively), when used to treat textile (Congo red dye) wastewater [14]. Moreover, the same species showed detectable high removal efficiencies of Ni, Cd, and Pb (up to 70%) when grown in an aqueous solution [15]. Similarly, A. caroliniana was grown on wastewaters with Pb and Cd [16]. Although a limited negative effect of toxic elements was observed on biomass production, a high decrease in Cd percentage (to around 22%) and less reduction in Pb (to around 90%) in wastewaters were noted. Wild A. caroliniana was assessed for its removal potential of arsenic (As) from polluted water [17]. Authors found a high tolerance of this species for As associated with a considerable removal of this toxic element from water. Other researchers reported the growth of A. pinnata on integrated industrial effluent disposed of by the SIIDCUL industrial complex of Haridwar, India [5,6]. They found that these nitrogen-fixator species had a promising yield associated with considerable BOD and COD reductions, while also suitable for an optimized biogas production when whole biomass is digested.
Currently, the main focus of researchers is attributed to the treatment of agro-industrial wastes via myco- and phytoremediation. To our knowledge, no earlier interest was detectable in the treatment of MFW using Azolla spp. Hence, the need to find more efficient, eco-friendly, and cost-effective methods put its weight on the environmental scale. Therefore, phytoremediation of MFW using A. pinnata and A. filiculoides species could be a good trial and probable solution for its management. This study focused on MFW treatment using two Azolla spp. in stagnant and flowing tank reactor systems.

2. Materials and Methods

2.1. Collection of Experimental Materials

For the current investigation, the two water ferns (A. pinnata and A. filiculoides) were collected from the spring water stream at Chilla Forest Range of Rajaji National Park, Haridwar, Uttarakhand, India (29°57′54.4″ N and 78°12′01.0″ E). Azolla spp. were collected in transparent glass bottles (1 L) with aerated caps. Azolla spp. were morphologically identified using the standard keys, as described by Kumar and Nayak [18]. Then, Azolla spp. were individually transferred to 10 L capacity glass aquariums having 8 L of borewell water supplied with 3.10 g of nitrogen–phosphorus–potassium (NPK) fertilizer mixture and allowed for acclimatization (7 days). On the other hand, mushroom farm wastewater (MFW) was obtained from the disposal point of Kashyap Mushroom Farm located in Roorkee city, Uttarakhand, India (29°47′16.7″ N and 77°47′20.7″ E). This farm is equipped with modern technologies dedicated to round-the-year cultivation of white buttons (Agaricus bisporus) and milky (Calocybe indica) mushrooms. After moderate processing, the farm releases its wastewater into the nearby agricultural lands for crop irrigation. Purposely, the MFW was collected in 50 L capacity plastic cans and transported to a newly constructed poly-greenhouse located at Kulheri village of Saharanpur district, Uttar Pradesh, India (29°52′57.2″ N and 77°16′17.0″ E).

2.2. Experimental Design and Conditions

The phytoremediation experiments were performed from 1 to 16 March 2022. For this, transparent plastic containers of 35 L capacity were filled with 30 L working volume of MFW and used as phytoremediation reactors. The experiments were performed using a total of five working treatments (as triplicate) such as control (absolute borewell water), S50 (15 L borewell water + 15 L MFW: stagnant mode), S100 (30 L MFW: stagnant mode), F50 (15 L borewell water + 15 L MFW: flowing mode), F100 (30 L MFW: flowing mode), separately for both Azolla spp. (Figure 2). The flowing model reactors were equipped with a water pump (12V-7W, ARP053, Arpita Exports, Bengaluru, Karnataka, India) attached to an additional knob-based potentiometer (SEN51, Robodo Electronics, Shenzhen, China) to maintain the circular flow rate of 1.50 L/h. A total of 10 g priorly acclimatized Azolla spp. leaflets were added to each container and allowed to grow for 15 days under greenhouse conditions (18/6 h light/dark, 28 °C mean temperature, and 76% relative humidity).

2.3. Laboratory Analytical Methods

In this study, the borewell water and MFW were analyzed for selected quality parameters, including pH, electrical conductivity (EC), total dissolved solids (TDS), biochemical oxygen demand (BOD), chemical oxygen demand (COD), and total Kjeldahl’s nitrogen (TKN) following standard analytical methodologies [19,20]. The physicochemical analysis was immediately performed after sample collection (day 0) and the termination of the phytoremediation experiment (day 15). For this, pH, EC, and TDS were measured using a microprocessor multimeter meter (1611 ESICO, India) after calibration. The net BOD5 load was determined as a net change in the bioavailable O2-demand through a microprocessor-based meter (1801, ESICO, Parwanoo, India). On the other hand, COD contents were determined using an open reflux digester (Scientech, Indore, India) followed by spectrophotometric measurement at 650 nm wavelength (60 Cary, Agilent Technologies, Santa Clara, CA, USA). Similarly, the TKN contents were measured by acid digestion (H2SO4, K2SO4, and HgSO4) followed by Nesslerization and spectrophotometric measurement at 425 nm [21]. All samples were pooled and analyzed three times. In addition to this, the harvested Azolla spp. were subjected to biochemical analysis for estimating the photosynthetic pigments, i.e., total chlorophyll contents and carotenoids. For this, chlorophyll contents were determined using 80% acetone as an extraction reagent followed by spectrophotometric determination at 645 and 663 nm wavelengths [5]. Similarly, acetone and petroleum ether were used for the carotenoid extraction, followed by the absorbance at 450 nm [22].

2.4. Pollutant Removal and Growth Kinetic Modeling

The net pollutant reduction by Azolla spp. species from MFW was calculated based on the removal efficiency index given in Equation (1) [23]:
Removal efficiency (%) = [(Initial load − Final load)/Initial load] × 100
In addition to this, the relative growth rate (RGR) of Azolla spp. in two different reactor systems was calculated using Equation (2) [24].
Relative growth rate (g/g/day) = [Log(Fb) − Log(Ib)/t2 − t1]
where “Fb” and “Ib” represent the final and initial fresh biomass of Azolla spp. at “t2” (final) and “t1” (initial) experimental time (days), respectively.
The total surface coverage (%) by Azolla spp. was computed using MATLAB software after taking the periodical vertical surface images of the tank reactors using a web camera (w200, 720p, Hewlett-Packard, Palo Alto, CA, USA). The image was converted using the “rgb2gray” command, followed by generating a binary image of the captured objects using “imbinarize”. Then, the percent surface area was calibrated and calculated by taking the sum of rotation symmetry using “Asurf” and “Asect” commands. A linear equation (y = 0.92x + 14.64; R2 = 0.98) was drawn by taking surface coverage against the fresh biomass to interpolate Azolla spp. biomass at mid-experiment points (3rd, 9th, and 12th days) without disturbing the growth of Azolla spp. The growth performance of Azolla spp. was demonstrated using two sigmoidal functions viz., logistic, and modified Gompertz growth kinetic models. These models help simulate the S-shaped growth curves of microbes and plants. The non-linear curve modeling helps to determine the critical parameters that could optimize the growth performance of phytoremediation systems [25]. For this, the fresh biomass of Azolla spp. was used as an input parameter against sampling time (days). The forms of the models are given in Equations (3) and (4):
y = P 1 + e k   x x c
y = P e e ( k x x c )
where “y” is the predicted Azolla fresh biomass (g), “P” is the maximum fresh biomass production potential, “k” is the specific growth rate and “xc” is the lag phase in days.

2.5. Statistics and Software

All experiments were performed as randomized block designs of triplicated runs. The data obtained in this study were analyzed using unpaired Student’s t-test and one-way analysis of variance (ANOVA) tests. For this, the computation and graphical works were performed using Microsoft Excel (Version 2019, Microsoft Corp., Redmond, DC, USA). The growth simulation and kinetic modeling were performed using OriginPro (Version 2022a, Student edition, OriginLab Corp., Northampton, MA, USA). The image processing and surface area calculations were performed using MATLAB (R2021b, MathWorks, Natick, MA, USA) software.

3. Results and Discussion

3.1. Properties of Borewell Water and MFW

The results of the physicochemical analysis of borewell water and MFW are presented in Table 1. The results indicated that MFW had significantly higher (p < 0.05) values of all parameters when tested using an unpaired Student’s t-test. Particularly, the borewell water was characterized by a near-neutral pH value (7.13 ± 0.03) with 0.17 ± 0.01 dS/m of EC. The TDS value of borewell water was recorded as 144.82 ± 2.50 mg/L with very less values of BOD (3.18 ± 0.20 mg/L), COD (9.07 ± 0.08 mg/L), and TKN (1.55 ± 0.01 mg/L). The borewell water was free from pollutants and suitable for drinking purposes. On the other hand, MFW showed significantly higher (p < 0.05) pollution load in terms of alkaline pH range (8.30 ± 0.10), high value of EC (3.55 ± 0.12 dS/m), TDS (1693.40 ± 56.24 mg/L), BOD (1082.10 ± 13.85 mg/L), COD (2176.30 ± 82.66 mg/L), and TKN (255.90 ± 10.43 mg/L) pollutants. However, the pollution load of MFW exceeded the maximum safe discharge limits of the Bureau of Indian Standards (BIS) except for pH and TDS pollutants suggesting a lack of effective wastewater treatment strategies. The sources of such pollutants in MFW might be excessive use of water for washing tools, machinery, growing, composting areas, compost wetting, fertilizer mixing, irrigation of substrate, excess runoffs, post-harvest processing of mushroom and its products, human excreta, etc. (Figure 1).
Remarkably, the residual compost and N-based fertilizers, (e.g., urea) are the major contributors to high BOD, COD, and TKN values of MFW. Previously, limited reports are available on physicochemical characterization of MFW. A study by Rodríguez Pérez et al. [26] characterized the MFW release from the cultivation farm of oyster (Pleurotus spp.) mushroom. The wastewater exhibited high loads of BOD (≈60 g/L), COD (≈30 g/L), and NH3-N (12.50 mg/L) pollutants. This result is in agreement with the present investigation that confirms the presence of certain pollutants in MFW. Thus, the MFW collected in this study needs effective treatment through appropriate biological approaches as its BOD to COD ratio reaches a value of 0.5.

3.2. Removal of Pollutants from MFW by Azolla spp.

In the current study, the two selected Azolla spp. (A. pinnata and A. filiculoides) were used for the phyto-treatment of different concentrations of MFW under stagnant and flowing tank reactors. The findings showed that after a hydraulic retention time of 15 days, a substantial load of pollutants was removed by both A. pinnata and A. filiculoides Azolla spp. The initial values of physicochemical parameters were significantly (p < 0.05) changed after the phytoremediation experiments in all experimental treatments (Table 2). The presence of various pollutants did not only support the growth of Azolla spp. through biological absorption but also helped achieve their reduction from the MFW media. However, A. pinnata is renowned to have higher pollutant reduction efficiency compared to A. filiculoides. On the other hand, the flowing tank reactor systems showed a higher reduction in pollutant loads than the stagnant ones. By using a flowing tank reactor system, A. pinnata was capable to reduce all physicochemical parameters such as pH, EC, TDS, BOD, COD, and TKN by 18.87, 80.28, 87.12, 90.63, 84.14, and 86.38% maximally in F100 MFW treatment, respectively. Similarly, A. filiculoides also removed loads of pH, EC, TDS, BOD, COD, and TKN by 18.56, 86.63, 89.90, 85.54, 85.04, and 82.04% in the same treatment and reactor system, respectively (Figure 3). Overall, the increasing order of pollutant removal was identified as control < S50 < F50 < S100 < F100. Nevertheless, the removal efficiency was lesser in control and S50 treatments, which might be due to the lesser accessibility of nutrients that affected the survival capabilities of Azolla spp. Higher removal in the flowing tank reactor system might be due to efficient recirculation and uniform mixing of pollutants that sustain oxygen availability within the medium. On the other hand, the stagnant tank system lacked continuous recirculation, which affected the bioavailability of pollutants to the root system of Azolla spp.
Azolla spp. are ideal candidates for the phytoremediation of agro-industrial wastewaters. They act as a natural cleaner of aquatic bodies by assimilating the harmful pollutants into their vegetative parts. However, they may also act like invasive species and dominate the surface if aquatic bodies are extremely polluted, thereby affecting other residing floral and faunal communities [27]. Previous studies have reported that Azolla spp. can help treat various wastewaters, particularly composite industrial wastewater [5], piggery [28], etc. However, no such study is available on phytoremediation of MFW using any Azolla spp. Kumar et al. [5] used A. pinnata for the phytoremediation of composite wastewater released from an industrial complex at Haridwar, India, and reported maximum EC (>50%), TDS (>75%), BOD (>70%), COD (>72%), and TKN (>80%) reduction in 60% dilution treatment. Similarly, Lay and Iwai [28] applied A. microphylla for the remediation of piggery wastewater using five different concentrations. They optimized that 50:50 treatment ratio best suited for maximum pollution reduction and growth of A. microphylla. Thus, the present study is the first to demonstrate the sustainable management of MFW by cultivation Azolla spp.

3.3. Effects of MFW and Reactor Type on Growth and Biochemical Parameters of Azolla spp.

The effects of MFW and reactor type on growth and biochemical parameters of Azolla spp. were studied. The MFW used in this study was helpful for the growth of Azolla spp. Efficient growth of both Azolla spp. was observed while using absolute MFW treatment (S100 and F100); however, the flowing tank reactor depicted better growth compared to stagnant. Overall, the growth and biochemical parameters increased significantly (p < 0.05) with an increase in the MFW dose (Table 3). Although, the best growth performance was reported by A. pinnata in terms of surface coverage (84.40%), fresh biomass (110.15 g), relative growth rate (0.07 g/g/day fwt.), chlorophyll (2.40 mg/g fwt.), and carotenoids (0.34 mg/g). On the other hand, A. filiculoides showed moderately lesser values of surface coverage (78.82%), fresh biomass (96.10 g), relative growth rate (0.07 g/g/day fwt.), chlorophyll (2.28 mg/g fwt.), and carotenoids (0.30 mg/g). This could be linked to the strong bio-accumulative and growth capacity of A. pinnata compared to A. filiculoides. In this, the surface coverage and fresh biomass had a positive correlation with a coefficient of determination (R2) of >0.90. All the growth and biochemical parameters were attributed to the concentration gradient of the applied MFW. Of the two reactor systems tested, the flowing (F100) was more supportive. Thus, other treatments could be considered limiting in terms of bioavailable nutrients that affect the growth of Azolla spp.
Aquatic plants have enormous capabilities for accumulating toxic pollutants from the aquatic bodies and spreading over them with fast multiplication. In this study, MFW implicated as nutrient media of Azolla spp. was helpful for their fast replication. By optimizing the nutrient proportions, higher growth is reported along with significant production of photosynthetic pigments and other phytochemical constituents. Nevertheless, no study reports the phytoremediation of MFW and its effects on the growth of Azolla spp. A study by Muradov et al. [29] showed that Azolla spp. had better phytochemical constitutes (chlorophyll a + b) of 6.10 μg/mL when grown in swine wastewater compared to control treatments with no wastewater addition. In addition, Mostafa et al. [12] also explored the potential of A. pinnata for the treatment of crude oil pollution and found that chlorophyll contents (2.78 mg/g) and carotenoid (0.17 mg/g) were improved by using a 2% treatment.

3.4. Growth Kinetic Modeling of Azolla spp. Grown in MFW

Kinetic modeling provides useful insights into understanding the critical growth patterns such as growth rate and biomass production potentials of plants growing in a phytoremediation system [30]. In the current investigation, the two tested sigmoid functions viz., logistic and modified Gompertz models showed good fitness for the time course growth patterns prediction of selected Azolla spp. Table 4 shows the simulated variables of logistic and modified Gompertz model for the growth of two Azolla spp. Results indicated that the logistic model showed better fitness to the experimental data in terms of coefficient of determination (R2 > 0.99), predicted fresh biomass (y), maximum fresh biomass production potential (P: g), growth rate constant (k), and lag phase of plant’s growth (xc) compared to modified Gompertz model. Comparatively, A. pinnata showed higher values of growth rate constant (0.40) using the logistic model compared to A. filiculoides (0.33) with the F100 treatment of MFW. Figure 4 depicted that both models were useful in precisely simulating the time course growth curve of Azolla spp. The models proved to have the ability to deal with Azolla spp., MFW concentration, and reactor type varying conditions. A minimum difference between the experimental and predicted data shows the high accuracy of the model that could help in real-life experiments. However, the simulated curve showed that both Azolla spp. displayed a lag phase, followed by a sudden increase in biomass after the 3rd day, which later become stationary after the 12th day. Herein, the first phase is termed the “establishment phase” in which the plant generally acclimatizes itself to the new MFW medium, followed by a “rapid expansion phase” in which the plant achieves its maximum growth rate, and finally an “entrenchment phase” at which plant growth becomes stationary. The product harvesting is also recommended at the entrenchment phase since after this point the system starts getting degenerating. The rapid expansion phase occurs when nutrients in the medium are abundantly available, whereas the entrenchment phase appears when resources are finite and typically utilized by the plant.
Previous studies have demonstrated the usefulness of sigmoidal functions in predicting the growth kinetic functions of plants growing within phytoremediation systems. A report by Goala et al. [31] cultivated A. pinnata in dairy wastewater for the remediation of major pollutants and studied the leaflet growth kinetics using an image recognition-based technique while implementing the logistic and modified Gompertz models for curve simulation. They reported that the logistic model showed better fitness in the experimental data with minimum error in the prediction of A. pinnata biomass. Another report by Yalçuk and Ugurlu [32] also studied the growth kinetics of Typha latifolia and Canna indica plants using logistic and modified Gompertz models during the treatment of landfill leachate in three types of reactors. They found that the logistic model had better fitness (R2 > 0.71) compared to modified Gompertz (R2 < 0.14). Therefore, the outcomes obtained from these studies are in strong agreement with the results of the present study, which indicated the application of growth kinetic models in maximizing the plant growth performance in a phytoremediation system.

4. Conclusions

The present study deals with the phytoremediation of mushroom farm wastewater (MFW) by cultivating two Azolla spp. in stagnant and flowing tank reactors. The findings suggested that both species (A. pinnata and A. filiculoides) significantly (p < 0.05) removed the pollution load of MFW after 15 days. However, the highest reduction in MFW parameters such as pH, EC, TDS, BOD, COD, and TKN was obtained using A. pinnata under flowing tank reactor conditions. Moreover, the maximum relative growth rate, surface coverage, fresh biomass, total chlorophyll, and carotenoids in Azolla samples were also reported in absolute MFW treatment (F100). In the two tested growth models, the logistic model showed better fitness compared to the modified Gompertz model. This is the first study that investigates the use of the green and cleaner technique for the treatment and management of MFW using Azolla spp. The cultivated Azolla spp. biomass can also be used as animal feed, resources for bioenergy production, composting, biofertilizer, etc. Further studies on the analysis and remediation of other pollutants, (e.g., pesticides, heavy metals) from MFW are highly recommended. Additionally, biochemical interactions between Azolla spp. and microbial communities in the MFW along with possible contamination of the harvested biomass should be investigated.

Author Contributions

Conceptualization, P.K.; formal analysis, P.K. and A.K.A.; funding acquisition, E.M.E. and I.Š.; investigation, P.K. and A.K.A.; methodology, P.K.; project administration, E.M.E. and I.Š.; resources, V.K.; software, B.A. and M.G.; supervision, V.K.; validation, E.M.E., M.A.T., M.H.E.E.-M., H.E.M.O., D.A.A.-B., B.A., Ž.A., M.G., J.S., S.K., K.S.C., V.K. and I.Š.; visualization, P.K. and M.G.; writing—original draft, P.K. and S.A.F.; writing—review and editing, E.M.E., M.A.T., M.H.E.E.-M., H.E.M.O., D.A.A.-B., B.A., Ž.A., J.S., S.K., K.S.C., V.K. and I.Š. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by King Khalid University (grant number RGP. 1/182/43); Hanan E.M. Osman would like to thank the Deanship of Scientific Research at Umm Al-Qura University for supporting this work by Grant Code: 22UQU4320730DSR02.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

This work is a person-to-person collaboration between P.K., E.M.E. and I.Š. The authors are grateful to their host institutes for providing the necessary facilities to conduct this study. All individuals included in this section have consented to the acknowledgment.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Various activities and sources of pollutants in wastewater released from mushroom farms.
Figure 1. Various activities and sources of pollutants in wastewater released from mushroom farms.
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Figure 2. Experimental layout of (a) stagnant and (b) flowing tank reactors for the treatment of MFW using two Azolla spp. (Photographs: Pankaj Kumar and Ashish Kumar Arya).
Figure 2. Experimental layout of (a) stagnant and (b) flowing tank reactors for the treatment of MFW using two Azolla spp. (Photographs: Pankaj Kumar and Ashish Kumar Arya).
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Figure 3. Pollutant removal efficiency of two Azolla spp. cultivated in different treatments of MFW (S: stagnant; F: flowing reactor).
Figure 3. Pollutant removal efficiency of two Azolla spp. cultivated in different treatments of MFW (S: stagnant; F: flowing reactor).
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Figure 4. Comparison of experimental and predicted (S: stagnant; F: flowing reactor; L: logistic; mG: modified Gompertz) growth curves of two Azolla spp. cultivated in different treatments of MFW.
Figure 4. Comparison of experimental and predicted (S: stagnant; F: flowing reactor; L: logistic; mG: modified Gompertz) growth curves of two Azolla spp. cultivated in different treatments of MFW.
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Table 1. Physicochemical characteristics of borewell water and mushroom industry wastewater used in this experiment.
Table 1. Physicochemical characteristics of borewell water and mushroom industry wastewater used in this experiment.
PropertiesBorewell WaterMushroom Farm WastewaterStudent’s t-TestSafe Discharge Limits ^
t-Statisticsp-Value
pH7.13 ± 0.038.30 ± 0.10 *19.57<0.015.50–9.00
Electrical Conductivity (EC: dS/m)0.17 ± 0.013.55 ± 0.12 *48.61<0.01NA
Total Dissolved Solids (TDS: mg/L)144.82 ± 2.501693.40 ± 56.24 *47.64<0.011900
Biological Oxygen Demand (BOD: mg/L)3.18 ± 0.201082.10 ± 13.85 *134.91<0.01100
Chemical Oxygen Demand (COD: mg/L)9.07 ± 0.082176.30 ± 82.66 *45.41<0.01250
Total Kjeldahl’s Nitrogen (TKN: mg/L)1.55 ± 0.01255.90 ± 10.43 *42.23<0.01100
*: Significantly different from the borewell water at p < 0.05; ^: surface discharge limits of Bureau of Indian Standards (BIS); NA: not available.
Table 2. Changes in the physicochemical characteristics of MFW before and after cultivation of two Azolla spp.
Table 2. Changes in the physicochemical characteristics of MFW before and after cultivation of two Azolla spp.
Azolla spp. Treatment pHEC (dS/m)TDS (mg/L)BOD (mg/L)COD (mg/L)TKN (mg/L)
A. pinnataControlInitial7.13 ± 0.030.17 ± 0.01144.82 ± 2.503.18 ± 0.209.07 ± 0.081.55 ± 0.01
Final6.50 ± 0.03 *0.10 ± 0.01 *98.35 ± 5.14 *2.45 ± 0.50 *3.59 ± 0.17 *0.70 ± 0.05 *
S50Initial8.13 ± 0.021.80 ± 0.04845.55 ± 14.75526.24 ± 12.381075.05 ± 14.20127.19 ± 3.71
Final6.80 ± 0.02 *0.76 ± 0.05 *240.12 ± 6.07 *110.24 ± 30.20 *260.40 ± 8.36 *25.30 ± 2.24 *
S100Initial8.30 ± 0.033.59 ± 0.021691.10 ± 28.381052.47 ± 19.652150.10 ± 17.29254.37 ± 3.20
Final7.03 ± 0.02 *1.28 ± 0.05 *350.33 ± 8.20 *153.32 ± 10.80 *388.54 ± 4.36 *41.2 ± 4.18 *
F50Initial8.12 ± 0.021.78 ± 0.02846.70 ± 9.45541.05 ± 8.771088.15 ± 15.65127.95 ± 5.13
Final6.74 ± 0.05 *0.42 ± 0.03 *210.05 ± 5.60 *92.70 ± 3.16 *209.13 ± 7.11 *22.44 ± 6.52 *
F100Initial8.32 ± 0.013.55 ± 0.041693.40 ± 24.921082.10 ± 20.102176.30 ± 28.05255.90 ± 7.33
Final6.75 ± 0.04 *0.70 ± 0.08 *218.09 ± 4.83 *101.38 ± 5.04 *301.55 ± 3.18 *34.86 ± 5.41 *
A. filiculoidesControlInitial7.12 ± 0.020.18 ± 0.02149.02 ± 7.103.15 ± 0.169.12 ± 0.101.54 ± 0.02
Final6.58 ± 0.02 *0.12 ± 0.04 *103.34 ± 4.05 *2.54 ± 0.31 *3.78 ± 0.20 *0.81 ± 0.04 *
S50Initial8.14 ± 0.021.75 ± 0.03820.10 ± 8.34525.45 ± 6.251097.63 ± 14.97125.34 ± 3.83
Final6.95 ± 0.04 *0.81 ± 0.07 *251.40 ± 4.78 *114.38 ± 2.61 *265.03 ± 9.40 *28.12 ± 2.47 *
S100Initial8.32 ± 0.023.49 ± 0.031640.20 ± 10.551050.90 ± 12.092195.26 ± 26.03250.68 ± 3.27
Final7.09 ± 0.02 *1.35 ± 0.05 *362.90 ± 6.12 *167.04 ± 3.53 *392.12 ± 8.16 *48.36 ± 5.98 *
F50Initial8.12 ± 0.011.80 ± 0.02840.32 ± 11.58545.53 ± 5.901090.35 ± 15.24127.09 ± 5.30
Final6.69 ± 0.05 *0.49 ± 0.04 *217.50 ± 6.86 *96.82 ± 4.10 *210.62 ± 5.03 *25.10 ± 6.12 *
F100Initial8.35 ± 0.013.59 ± 0.011680.63 ± 15.401091.05 ± 20.242180.70 ± 27.21254.18 ± 5.08
Final6.80 ± 0.03 *0.76 ± 0.04 *224.72 ± 8.25 *110.18 ± 2.92 *315.31 ± 7.72 *38.03 ± 4.15 *
*: Significantly different from initial values at p < 0.05; S: stagnant; F: flowing reactor.
Table 3. Growth and biochemical changes in two Azolla spp. cultivated in different treatments of MFW.
Table 3. Growth and biochemical changes in two Azolla spp. cultivated in different treatments of MFW.
Azolla spp. TreatmentSurface Coverage (%)Fresh Biomass (g)Relative Growth Rate (g/g/day fwt.)Chlorophyll (mg/g fwt.)Carotenoids (mg/g)
A. pinnataControl5.22 ± 0.1020.33 ± 0.100.021.20 ± 0.030.18 ± 0.01
S5049.22 ± 2.06 *59.12 ± 1.08 *0.052.00 ± 0.01 *0.21 ± 0.02 *
S10062.08 ± 3.50 *80.21 ± 2.44 *0.062.16 ± 0.02 *0.28 ± 0.02 *
F5076.33 ± 1.72 *63.20 ± 1.60 *0.052.13 ± 0.02 *0.25 ± 0.01 *
F10084.40 ± 2.03 *110.15 ± 2.90 *0.072.40 ± 0.05 *0.34 ± 0.03 *
A. filiculoidesControl4.50 ± 0.0518.05 ± 0.370.021.20 ± 0.020.16 ± 0.01
S5042.60 ± 1.96 *54.64 ± 1.10 *0.051.80 ± 0.05 *0.20 ± 0.02 *
S10057.10 ± 2.35 *75.06 ± 2.02 *0.062.10 ± 0.07 *0.25 ± 0.01 *
F5071.09 ± 0.87 *60.38 ± 1.45 *0.052.12 ± 0.04 *0.24 ± 0.02 *
F10078.82 ± 2.46 *96.10 ± 2.14 *0.072.28 ± 0.03 *0.30 ± 0.03 *
*: Significantly different from control values at p < 0.05; S: stagnant; F: flowing reactor.
Table 4. Comparative assessment of growth kinetic models two Azolla spp. cultivated in different treatments of MFW.
Table 4. Comparative assessment of growth kinetic models two Azolla spp. cultivated in different treatments of MFW.
Azolla spp. TreatmentModel Variables
Logistic ModelModified Gompertz Model
R2yPkxcR2yPkxc
A. pinnataControl0.9920.3522.640.161.510.9920.4024.180.111.03
S500.9960.0165.230.296.790.9860.8277.550.155.57
S1000.9982.2088.210.347.340.9883.42104.910.176.41
F500.9964.6674.520.278.140.9865.3899.150.127.99
F1000.99112.02116.630.407.070.98113.74129.680.225.93
A. filiculoidesControl0.9918.1719.640.160.030.9918.2120.480.122.54
S500.9955.4760.930.286.940.9856.2474.320.146.08
S1000.9976.6982.670.337.390.9877.8899.890.166.56
F500.9862.0377.580.249.430.9762.64127.420.0911.39
F1000.9997.54101.730.336.990.9899.14113.980.215.85
S: stagnant; F: flowing reactor; R2: coefficient of determination; y: predicted fresh biomass; P: maximum fresh biomass production potential; k: specific growth rate; xc: lag phase.
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Kumar, P.; Eid, E.M.; Taher, M.A.; El-Morsy, M.H.E.; Osman, H.E.M.; Al-Bakre, D.A.; Adelodun, B.; Abou Fayssal, S.; Andabaka, Ž.; Goala, M.; et al. Sustainable Upcycling of Mushroom Farm Wastewater through Cultivation of Two Water Ferns (Azolla spp.) in Stagnant and Flowing Tank Reactors. Horticulturae 2022, 8, 506. https://doi.org/10.3390/horticulturae8060506

AMA Style

Kumar P, Eid EM, Taher MA, El-Morsy MHE, Osman HEM, Al-Bakre DA, Adelodun B, Abou Fayssal S, Andabaka Ž, Goala M, et al. Sustainable Upcycling of Mushroom Farm Wastewater through Cultivation of Two Water Ferns (Azolla spp.) in Stagnant and Flowing Tank Reactors. Horticulturae. 2022; 8(6):506. https://doi.org/10.3390/horticulturae8060506

Chicago/Turabian Style

Kumar, Pankaj, Ebrahem M. Eid, Mostafa A. Taher, Mohamed H. E. El-Morsy, Hanan E. M. Osman, Dhafer A. Al-Bakre, Bashir Adelodun, Sami Abou Fayssal, Željko Andabaka, Madhumita Goala, and et al. 2022. "Sustainable Upcycling of Mushroom Farm Wastewater through Cultivation of Two Water Ferns (Azolla spp.) in Stagnant and Flowing Tank Reactors" Horticulturae 8, no. 6: 506. https://doi.org/10.3390/horticulturae8060506

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