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The role of denitrification in stormwater detention basin treatment of nitrogen Natalie R Morse, Lauren Elyse McPhillips, James P. Shapleigh, and Michael Todd Walter Environ. Sci. Technol., Just Accepted Manuscript • Publication Date (Web): 22 Jun 2017 Downloaded from http://pubs.acs.org on June 22, 2017
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TITLE: The role of denitrification in stormwater detention basin treatment of
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nitrogen
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AUTHORS: Natalie R. Morse*a; Lauren E. McPhillipsb; James P. Shapleighc; M.Todd Waltera
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a
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York 14850, United States
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b
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85287, United States
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c
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Department of Biological and Environmental Engineering, Cornell University, Ithaca, New
Julie Ann Wrigley Global Institute of Sustainability, Arizona State University, Tempe, Arizona
Department of Microbiology, Cornell University, Ithaca, New York 14850, United States
*corresponding author,
[email protected] 1 ACS Paragon Plus Environment
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ABSTRACT
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The nitrogen (N) cycling dynamics of four stormwater basins, two often saturated sites (“Wet
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Basins”) and two quick draining sites (“Dry Basins”), were monitored over a ~1-year period.
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This study paired stormwater and greenhouse gas monitoring with microbial analyses to
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elucidate the mechanisms controlling N treatment. Annual dissolved inorganic N (DIN) mass
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reductions (inflow minus outflow) were greater in the Dry Basin than in the Wet Basin, 2.16 vs.
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0.75 g N m-2 yr-1, respectively. The Dry Basin infiltrated a much larger volume of water and thus
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had greater DIN mass reductions, even though incoming and outgoing DIN concentrations were
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statistically the same for both sites. Wet Basins had higher proportions of denitrification genes
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and potential denitrification rates. The Wet Basin was capable of denitrifying 58% of incoming
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DIN, while the Dry Basin only denitrified 1%. These results emphasize the need for more
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mechanistic attention to basin design because the reductions calculated by comparing inflow and
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outflow loads may not be relevant at watershed scales. Denitrification is the only way to fully
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remove DIN from the terrestrial environment and receiving waterbodies. Consequently, at the
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watershed scale the Wet Basin may have better overall DIN treatment.
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KEYWORDS:
stormwater,
metagenomics,
denitrification,
green
infrastructure
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Environmental Science & Technology
1.0
Introduction
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By 2050 the global population is expected to increase by roughly 2.5 billion people and
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nearly all of that growth will be concentrated in urban areas1. Stress to local water resources is
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one of the biggest concerns associated with urbanization. These include increased water demand,
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aquatic habitat degradation, reduced water quality, harmful algae blooms, and property damage
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associated with flooding2–5. Green infrastructure (GI) or low impact development (LID) is one
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popular tool to alleviate the pressures of development on water resources.
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Green infrastructure, which modifies natural hydrologic features to manage water and
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provide ecosystem and community benefits, became popular in the 1990’s and is now an
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institutionalized and accepted global practice6. Initially, GI practices were installed to detain
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water and reduce nuisance flooding7. Recently, designers and regulators seek to obtain water
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quality as well as quantity benefits from GI8,9 by leveraging physical mechanisms such as
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settling and filtration and biological processes such as plant uptake and microbial cycling to
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remove nutrients, pathogens, petroleum hydrocarbons, and sediment from stormwater10,11.
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While GI has grown in popularity, the nutrient removal performance of these systems is
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often inconsistent. Of particular concern is nitrogen (N), which can lead to waterbody
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eutrophication, harmful algae blooms, and decreased biodiversity, especially in coastal areas12,13;
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N is also increasingly recognized as playing an important role in harmful freshwater algal
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blooms14. Urban areas receive 2-4 times higher N deposition from fossil fuel combustion than
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nearby rural areas15–17. Fertilizer applications, septic systems, and leaky sanitary sewers also
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contribute to N pollution near urban areas18,19. With future land use change and global climate
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change, there is a strong need to mitigate N pollution from urban areas20.
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Mitigating dissolved N pollution is notoriously difficult because the filtering and settling
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mechanisms employed in GI are ineffective. Two mechanisms of dissolved N removal in GI are
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plant uptake and denitrification21. Dissolved N is only completely removed from the system via
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denitrification, a microbially-mediated process which transforms nitrate (NO3-) to nitrous oxide
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(N2O) and N2 gas and thus permanently removes NO3- from the GI feature22. Relying on
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vegetation and microbial cycling for N removal has proved inconsistent21, with variable N
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reductions and even N leaching in field monitoring trials 23–25,10.
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The pollutant removal performance of GI practices is traditionally treated as a black-box
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input minus output (input-output) difference and generally neglects internal processes or fluxes
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that bypass the system. However, several recent studies have begun moving towards a more
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mechanistic understanding of N cycling in urban GI. Bettez and Groffman26 found that potential
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denitrification rates were higher in GI practices than nearby riparian zones, landscape features
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considered to be denitrification hotspots. Zhu et al.27 found much higher denitrification rates in
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detention basins than the surrounding desert ecosystem. Payne et al.28 used isotopic methods in
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bioretention mesocosms and noted that plant uptake is a large sink of N but that denitrification is
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particularly key where NO3- levels are higher. Chen et al.29 has been the only study of which we
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are aware that has directly examined the microbial community related to N cycling in stormwater
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GI features. In a bioretention cell, they found that the abundance of denitrification genes
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quantified with qPCR in the soils was correlated with inundation time.
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Consequently, this research builds upon this body of work by connecting traditional field
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observations of N in basin inflows and outflows along with quantification of microbial
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denitrification capacity using multiple methods. One thing that distinguishes this study from
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other studies that have considered denitrification gene abundance in a stormwater basin is the use 4 ACS Paragon Plus Environment
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of metagenomics in lieu of qPCR, which is particularly advantageous for characterizing very
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phylogenetically diverse communities such as denitrifiers30. We aimed to determine if microbial
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function associated with denitrification led to better N treatment within stormwater detention
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basins at the field scale. By connecting microbial function and ecosystem processes to
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stormwater basin design, we can better design basins that cultivate microbial communities to
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promote certain desirable ecosystem services such as denitrification.
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2.0
Methods
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We used a three-pronged approach: (1) soil DNA metagenomics, (2) coupled in situ N2O
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flux monitoring and potential denitrification measurements, and (3) typical stormwater
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monitoring techniques.
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2.1
Study Sites
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This study utilized four grassed stormwater detention (or retention) basins (two slow
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draining Wet Basins and two fast draining Dry Basins) on Cornell University’s campus in Ithaca,
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New York (Figures S1 and S2, Table 1). All sites receive runoff from individual contributing
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drainage areas, and operate independently of each other. These sites were previously monitored
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in 2013 for N2O and CH4 fluxes and soil volumetric water content31. Additionally, soil from an
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adjacent ‘reference’ site not receiving stormwater located near Dry Basin2 were sampled for
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comparison.
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Table 1. Study site characteristics. Conducted monitoring highlights the monitoring employed at each site, “DNA” = soil metagenomic DNA, “SW” = stormwater, “pot. denit.” = potential denitrification, “soil” = soil characterization 2
Drainage Area m Basin Area m2 Drainage Area: Basin Area ratio Year Constructed Year Impervious Drainage Area % Contributing Drainage Area
Conducted Monitoring
Wet Basin1 11,049 1,500 7.37 2004 95 Parking Lot DNA, SW, pot. denit., N2O, soil
Wet Basin2 4,000 550 7.27 2002 100 Parking Lot
Dry Basin1 3,000 400 7.50 2007 95 Roof
pot. denit., soil
pot. denit., soil
Dry Basin2 4,249 480 8.85 2006 100 Parking Lot DNA, SW, pot. denit., N2O, soil
Control NA NA NA NA NA Grass DNA, soil
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All basins were designed as dry infiltration basins following New York Department of
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Environment and Natural Resources (NYDENR) guidelines, but either due to construction error,
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clogging, or ecosystem succession, some basins developed into a wetland like system with
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various saturated areas throughout the basin, i.e., the Wet Basins. The Dry Basins function as dry
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infiltration basins that quickly infiltrate stormwater runoff and standing water is seldom observed
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between storm events. The basins were all originally planted with turfgrass (primarily perennial
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ryegrass- Lolium perenne) and have 10-15 cm topsoil which is underlain by native silt loam, and
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then a layer of sand. Below the sand is an underdrain (perforated pipe) that connects to the storm
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sewer system. Consequently, this study exploited these differing wetness regimes to explore
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how alternative designs may influence stormwater treatment performance and functional
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microbial gene abundance. Inclusion of wet and dry sites were intended to highlight how similar
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systems with different hydrology may alter the N treatment from urban areas. This is important
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because of the variability in basin design, construction, and site succession which leads to
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differing hydrology and subsequent treatment in real-world conditions. Only 2 sites, Wet Basin1
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and Dry Basin2, were monitored for stormwater quality and N2O emissions (Table 1). All four
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basins were monitored for soil metagenomics and potential denitrification during 2015.
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2.2
Soil Metagenomics
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High-throughput next-generation sequencing was used to analyze the soil DNA genome
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(metagenomics) at each stormwater basin and the reference site. Soils were collected on June 29,
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2015. At each site three soil cores were collected and pooled from each of the 3 sample points,
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for DNA extraction and soil characterization (5 sites x 3 sample points = 15 total samples). Soils
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were collected with a steel push probe (2.5 cm diameter) from the top 5 cm of soil. Soils were
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kept on ice during sampling, and stored at 4°C until DNA extraction within one week. Soil DNA
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was extracted with Mo-Bio PowerSoil® DNA Isolation Kit. For each of the 15 samples, DNA
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was extracted in triplicate and then pooled to reduce variability within the soil sample and
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provide ample DNA for sequencing. Concentration of extracted DNA was assessed using a Qubit
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fluorometer with dsDNA BR and HS assay kits. Extractant was frozen at -20ºC until sequencing.
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Approximately 18M 100 base single-strand reads were sequenced for each sample (15
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samples x 18M reads = 270M reads total) by the Columbia University Genome Center on an
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Illumina HiSeq 2500. Next, DIAMOND (double index alignment of next generation sequencing
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data), a high throughput alignment program compared sample DNA sequence reads against a
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custom, manually curated database of reference proteins critical for N cycling. DIAMOND is
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analogous, but faster, than BLASTx32. DIAMOND returned a matrix of matches for each
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sequence, within each sample; results were filtered where percent sequence identity (pid) >50,
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and assigned read length >25 base pairs.
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This study focused on reads corresponding to functional genes, as opposed to
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phylogenetic classifications common with 16S rRNA amplicon sequencing. Focusing on 7 ACS Paragon Plus Environment
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functional genes within the soil microbial metagenomes allows us to better understand microbial
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nutrient cycling functions and drivers in this diverse soil ecosystem33. Once functional gene
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count reads were obtained, they were normalized by total reads per sample to compensate for the
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slight variation in sample to sample reads (14M to 21M per sample), and multiplied by one
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million to obtain reads per million reads (rpm).
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As denitrification is the process of interest for complete N treatment, our analyses
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focused on these functional genes: NO3- to NO2 reduction via nitrate reductase (nap and nar);
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NO2 to NO reduction via nitrite reductase (nirK and nirS); NO to N2O via nitric oxide reductase
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(cnor and qnor); and N2O to N2 via nitrous oxide reductase (nosZ). The normalized sum of
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sequencing reads that matched these proteins is herein referred to as ‘normalized total
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denitrification reads’ (rpm).
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2.3
Soil Characteristics
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Each soil core collected for metagenomics was analyzed for bulk density, total carbon
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(C), metals, pH, and NO3- and NH4+. The cores were oven-dried at 105°C for 24-hours and
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weighed to determine bulk density34. A subsample was ground to less than 250 µm and analyzed
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for % total C (g C g-1 dry soil), which was measured at the Cornell University Stable Isotope
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Laboratory (Ithaca, NY) through dry combustion on a Conflo III Elemental Analyzer. Soil
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available NO3- and NH4+ was measured after a 1 M KCl extraction35 and the extractant was
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analyzed on a Lachat QuikChem 8000 Flow Injection Analyzer using the NO3- low flow method
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and the salicylate method. Nitric acid and HCl extractions were used to extract total metals36,
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which were quantified via ICP at Cornell University USDA lab. Soil pH was determined with a
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1:1 soil to water ratio.
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2.4
Potential Denitrification Monitoring
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We employed the denitrification enzyme assay (DEA), a long-standing method used to
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characterize a site’s ability to denitrify under optimal conditions using lab incubations37. This
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method is well suited to compare site-to-site differences, but does not quantify actual
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denitrification rates in situ37,38. Monitoring was conducted at three locations at each basin site in
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2016 (Figure S1). At each sampling event, two soil samples were collected from each location
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with a steel push-probe (0-5 cm depth) and pooled. The assay was done in duplicate on each
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pooled sample (4 sites x 3 locations/site x 2 duplicates = 24 samples/event). A total of four
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monitoring events were conducted approximately monthly from June to September 2016.
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The DEA method is described by Groffman et al.37. Briefly, collected fresh soil was hand
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sieved to remove coarse debris and then 5 grams were transferred to 125-mL glass serum bottles
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amended with 25-ml solution media (100 mg L-1 NO3- and 500 mg L-1 glucose). The bottles were
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sealed, evacuated, and flushed with N2 twice. Then 10-ml of acetylene (C2H2) was added to
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inhibit N2O to N2 reduction. Headspace samples were collected at t=0, 20, 40, and 60 minutes
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and analyzed for N2O concentration via gas chromatograph (GC; Agilent 6890N). Potential
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denitrification rates were calculated as the linear rate of change in N2O over time normalized to
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soil dry mass (ug N2O-N kg soil-1 hr-1).
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2.5
Stormwater Monitoring
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Stormwater quantity and quality monitoring was completed at each site from July –
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November 2015, and from May 2016 to November 2016. A total of 20 and 17 storms were
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monitored at Dry Basin2 and Wet Basin1, respectively. Inflow volume was determined based on
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precipitation measured on site via rain gauges and the U.S. Natural Resource Conservation
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Service (NRCS) Curve Number method, which estimates runoff based on land-use terms
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.
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Because the site contributing drainage areas are nearly 100% impervious, little ambiguity exists
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surrounding initial abstraction or infiltration: almost all of the rainfall is converted to runoff
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directed toward the basins. A v-notch weir-box on the underdrain was fitted with HOBO
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pressure-transducer water depth loggers recording at 1-minute intervals to quantify outflow
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volume. ISCO automated samplers (ISCO 6712) collected stormwater samples over the storm
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duration. Individual samples were flow-weight composited for an event mean concentration
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(EMC), prior to analysis: one inflow and one outflow sample characterized each storm at each
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site.
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Water quality analyses included total suspended solids, nitrite, nitrate, and ammonium
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following general water quality guidance41,42. A subset of each sample was immediately filtered
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using 0.45µm Pall mixed cellulose ester filters and filtrate was stored at 4°C until analysis of
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dissolved nutrients. NO3- and NH4+ were quantified colorimetrically (as described above) in
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2015 via Lachat QuikChem 8000 Flow Injection Analyzer and in 2016 via microplate reader.
2.6
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Greenhouse gas monitoring
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Nitrous oxide monitoring was also conducted at Wet Basin1 and Dry Basin2 during 2016.
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Three in-situ static chambers were deployed during each sampling period following methods of
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McPhillips and Walter (2015). Gas samples were collected at 10 minute intervals over 30
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minutes and injected into pre-evacuated 10-mL glass serum vials. A total of 17 sample events
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were conducted to capture a range of environmental conditions. Gas samples were analyzed as
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described above and flux rates were calculated based the concentration rate of change over time.
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Fluxes were converted from volumetric to mass-based units (µg gas m-2 hr-1) using the ideal gas
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law.
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2.7
Nitrogen Budget 10 ACS Paragon Plus Environment
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An annual N budget was calculated to determine the fate of N within these systems. First,
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a water budget (Equation 1) was calculated which scaled observational data by the ratio of total
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rainfall over the monitoring period (NRCC, 2016) to the sum of rainfall measured over the
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monitored ~20 storms39. This yields annual volumes (m3 yr-1) instead of the partial volumes
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observed over the individually monitored storm events. = + + (1)
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Where, I = total inflow water volume (m3 yr-1), O = total outflow water volume (m3 yr-1), ET=
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evapotranspiration (m3 yr-1), and If = infiltrated water volume (m3 yr-1). The annual ET rate (cm)
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was obtained from Sanford et al.44 and multiplied by the basin area (m2) to obtain ET volume (m3
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yr-1). Next, the N budget used the water budget, average measured incoming and outgoing DIN
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concentrations (NO3- + NH4+), and average N2O gas flux measurements to determine fluxes of N
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within these systems (Equation 2): = + + (2)
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where, IN = incoming N mass (mg N yr-1) calculated via I × average incoming concentration (mg
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N m-3), ON = outgoing N mass (mg N yr-1) calculated via I × average outgoing concentration (mg
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N m-3), IfN = infiltration N mass (mg N yr-1), and DN = denitrification N mass (mg N yr-1) as
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calculated in Equation 3. As infiltration through the basin was not measured, IfN was calculated
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via subtraction to close the N budget. Mass N denitrified was based on average N2O fluxes
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measured in 2016 and modeled N2O/(N2O+N2) ratio (N2R), and scaled by correction factors to
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account for daily fluctuations (Equation 3):
= (3)
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where, NE = average N2+N2O emissions (mg N m-2 year-1), A = basin surface area (m2), and K =
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correction factor reducing emissions during night (0.7745). This assumes plant uptake is at steady
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state where any N accumulated within the plant is recycled back to the soil within the year. Since
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N2R was not monitored at each site, we used Monte Carlo simulations to estimate the likely
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mean and standard error (se) of N2+N2O emissions. At each sample time, the 3 N2O
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measurements per site were averaged and then divided by a randomly selected N2R value from a
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uniform distribution with the domain of (0,1). We conducted 1,000 simulations using random
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sampling and then calculated the site mean and se for NE at each site. This created a robust
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approximation of NE, and allowed us to estimate the likely variability of DN.
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In addition to the above calculations, we explored two alternative calculations to better
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bound this budget. First, we used N2R values from previous publications that were based on
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average soil volumetric water content46 multiplied with the average measured N2O emissions.
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This method again relied on subtraction to calculate IfN to close the budget. Second, we assumed
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the infiltrated water had a comparable DIN concentration to the incoming runoff, and back-
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calculated the % denitrified.
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2.8
Statistical Analyses
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The statistical analysis was conducted using R software (version 3.1.1; R Development
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Core Team, 2014). A criteria of 95% confidence (α=0.05) was selected for all analyses herein.
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Due to evidence of heteroscedasticity, non-parametric tests were used for stormwater quality
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assessments. Comparisons between the two sites used the Mann-Whitney test, and comparisons
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of paired data used the Wilcoxon signed rank test. Analysis of variance (ANOVA) with Tukey
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HSD was used to test differences of metagenomics gene reads and denitrification potential
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between the sites. Due to evidence of heteroscedasticity, denitrification values were log 12 ACS Paragon Plus Environment
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transformed prior to statistical analysis. Mixed effects models, where site was the random effect,
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were used to test which site variables (i.e., soil moisture, carbon, and NO3-) significantly affected
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metagenomic read abundances.
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3.0
Results and Discussion
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3.1
Soil Characteristics
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Average soil characteristics were fairly consistent among the basins (Table 2). All sites
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were classified as sandy loam texture based on the U.S. Department of Agriculture (USDA) soil
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classification47. All of the basins had near neutral soil pH, and negative impacts on denitrification
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associated with acidic soils are not expected at these sites48,49.
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pH Carbon Cu
Table 2. Average basin soil characteristics and dimensions. Wet Dry Dry Wet Basin1 Basin2 Basin1 Basin2 7.3 7.3 7.7 7.5 % 10.7 5.0 7.0 5.3 -1 mg kg 12.8 51.6 31.6 11.9
Control 7.7 4.2 11.0
Pb
mg kg-1
8.4
16.4
16.4
23.3
18.7
Zn sand silt clay
mg kg-1 % % % g water g dry soil-1 mg kg-1
76.0 83.7 3.0 13.3
133.3 79.2 15.0 5.9
140.8 88.3 5.9 5.9
87.7 76.4 6.4 17.2
71.9 78.5 6.1 15.4
0.56
0.60
0.28
0.35
0.30
1.01
2.00
6.96
3.82
2.86
soil moisture soil NO3253 254
3.2
Stormwater Monitoring
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Incoming concentrations of NO3- were not statistically different for both basins: average
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EMCs were 0.21 and 0.18 mg L-1 for Wet Basin1 and Dry Basin2, respectively. This is slightly
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lower than other studies, e.g., 0.5 mg L-1 24 and 0.5-0.7 mg L-1 50. Outflow NO3- concentrations
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were similar to inflow concentrations and did not differ between the sites (Figure 1). Neither
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basin significantly reduced NO3- outgoing concentrations relative to incoming concentrations
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(paired Wilcox test p=0.25 and 0.58 for Wet Basin1 and Dry Basin2, respectively). Average
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incoming NH4+ concentrations (0.20 and 0.17 mg L-1 for Wet Basin1 and Dry Basin2,
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respectively) and outgoing NH4+ concentrations (0.10 and 0.09 mg L-1 for Wet Basin1 and Dry
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Basin2, respectively) were similarly low for both basins and no significant differences were
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observed between the sites (Figure 1). However, Wet Basin1 had significant differences between
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inflow and outflow NH4+ concentrations (paired Wilcox test p