A Review of Data Quality and Cost Considerations for Water Quality Monitoring at the Field Scale and in Small Watersheds
Abstract
:1. Introduction
2. Materials and Methods
3. Results and Discussion
3.1. Monitoring Site Selection and Establishment
3.2. Discharge Data Collection
Decision | Annual Cost | Initial (One-Time) Cost | Data Uncertainty | Related Comments |
---|---|---|---|---|
Number of sites | $$$: technical staff salary | $$$: vehicle | - | Carefully determine the number of sampling sites. One full-time technician can typically operate 6–10 sites (including laboratory analysis, data management), but the distance to and proximity of the sites can affect this. For graduate students, the salary costs are less but so is their capacity in terms of time and expertise. Exceeding a reasonable number of sampling sites and utilizing inexperienced technicians will decrease data quality. |
Location of sites | $-$$: travel costs = f (location, proximity); site maintenance; equipment maintenance | $/site: basic installation -or- $$/site: extensive berm construction required | - | Locate sites to minimize travel costs. If possible, install field-scale sites within a natural drainage way to avoid extensive berm construction (USDA, 1996), and avoid unstable sites. Commit to frequent maintenance [2,3,7], as less frequent maintenance will decrease data quality due to missing or inaccurate data. |
Equipment shelter | - | $/site: homemade or repurposed shelter -or- $-$$/site: commercial shelter | - | Install equipment shelter at each site. Ensure accessibility during wet weather, above the flood level [3,25], yet as close as possible to the sample point [32]. |
Duplicate equipment | - | $$/per every 6–10 sites, backup and replacement equipment | - | Purchase backup and replacement equipment to reduce missing data (increases the data quality). |
Power needs | $/site: electrical costs (if AC power; maintain and recharge batteries) | $-$$/site: install AC power at remote site (if feasible) -and- $-$$/site: solar panel and battery | See [20,33,34] for uncertainty related to preservation and storage. | Consider power needs based on the QA/QC requirements for sample preservation. Refrigerated samplers often require AC power; however, battery backup is recommended for all automated samplers to avoid power loss during storm events. |
Communication devices (cell, radio, satellite) | $/site: fees | $-$$/site: communication device | - | Consider the costs and benefits of communication devices (i.e., purchase costs and fees relative to salary and travel costs). The communication device can increase data quality through the immediate notification of equipment failure. As the distance to the sampling sites increases, the benefits of communication devices increases. |
Decision | Annual Cost | Initial (One-Time) Cost | Data Uncertainty | Related Comments |
---|---|---|---|---|
Are discharge (flow) data needed to meet the project objectives? | Cost estimates below apply only to projects that measure loads (project types 3–5 in Table 1). | - | If load data are not needed, discharge measurement is unnecessary; however, flow and load data are often critical, so carefully consider the potential future data uses and project objectives. If flow data are needed, consider the following options. | |
Discharge (flow) measurement options: | ||||
Measure the stage in the pre-calibrated flow control structure with the established stage–discharge relationship [7,35] | $/site: maintenance | $$/site: control structure and stage measurement equipment | ±5–10% depending on frequency of calibration with a current meter [36] | Follow installation and maintenance recommendations [32,37]. Data quality decreases substantially if the stage exceeds the design capability, which limits use as the contributing area increases. |
Measure the stage in a channel, culvert, or other stable flow path | $-$$/site: maintenance; flow measurements and cross-section surveys to confirm or adjust the stage–discharge relationship | $-$$/site: survey cross- section; stage measurement equipment | Stable channel: ±6% [38], ±10% [36] Shifting channel: ±20% [36] | Selecting sites with an established stage–discharge relationship and in a stable channel avoids the cost and difficulty of developing and adjusting the relationship. Calibrate the stage–discharge relationship with a current meter and cross-section surveys, 8–12 per year especially in shifting channels. |
Measure discharge with area–velocity sensor | $-$$/site: maintenance; flow measurements and channel surveys to confirm discharge data | $$/site: survey cross- section; velocity measurement equipment | >10% (King, unpublished data) ±10% in trapezoidal channel [39] ±0.003 m at 0.01–3 m (depth); ±0.03 m/s at 0–1.5 m/s and ±2% at 1.5–6 m/s (velocity) [40] | Confirm velocity measurement accuracy and stage discharge relationship with current meter readings, 8–12 per year, especially in shifting channels. Data quality decreases substantially if the flow cross-section is non-uniform, exceeds the design capability, if the sediment concentration is low, and if the cross-section is unstable. |
Estimate discharge with Manning’s equation | $$/site: maintenance; flow checks | $/site: survey cross- section; flow measurement equipment | ~10%-100% [41] ±10–20% for ideal conditions, but ±25–30% more likely, and ≥ ±50% possible [42] | Not recommended because of low data quality without extensive adjustments. |
Measure the stage in the homemade flow control structure (i.e., flume, weir) | $/site: maintenance flow measurements to develop/adjust stage–discharge relationship | $/site: structure construction and flow measurement equipment | ±11% in initial tests, but higher uncertainty at high discharge rates with turbulent flow (Busch, unpublished data) | Design specifications for flumes and weirs are quite specific; therefore, deviations affect the theoretical discharge relationship. Conduct extensive current meter checks to establish an accurate stage–discharge relationship. |
3.3. Constituent Concentration Measurement
3.3.1. Automated Sampling
Decision | Annual Cost | Initial (One-Time) Cost | Data Uncertainty | Related Comments |
---|---|---|---|---|
How will the constituent concentrations be determined? | Cost estimates below are a function of the project types in Table 1. | - | Carefully consider the following options. | |
Collect samples to measure the constituent concentrations in the lab | Cost estimates in the following section apply to project types 1, 3, 4. | |||
Automated sampling with rotating slot or multi-slot divisor mechanical samplers (produces single flow-weighted composite sample and estimates flow volume, thus the discharge measurement options in Table 2 are not needed for load determination). | $/site: maintenance | $-$$/site: mechanical rotating slot or multi-slot sampler (will likely require fabrication) | See [5,12,14] for uncertainty estimates related to automated sampling. | More frequent sampling increases data quality. The unlimited sampling capacity of rotating slot and multi-slot divisor samplers can increase data quality in large events, but they only capture the EMC. Limitation in the size and number of sample bottles in mechanical time-weighted and electronic samplers can decrease data quality in large events, though strategies exist to overcome this [9]. |
Automated sampling with electronicsamplers | $/site: maintenance | $$/site: electronic sampler | ||
Lab analysis | $-$$/site: analysis = f (number of samples) | - | See [67,68,69,70,71,72] for Uncertainty estimates related to lab analysis. | Follow sample preservation, storage, and analysis protocols to reduce uncertainty. Estimating the annual number of samples will assist in estimating lab analysis costs [8]. |
Utilize in situ sensors to measure the constituent concentrations | Cost estimates in the following section apply to project types 2, 5. | See [73,74,75] for additional uncertainty estimates related to in situ sensors. | Avoids lab analysis costs. Provides concentration data with the same time resolution as the flow data. Conduct weekly to biweekly maintenance of the optics. Independently obtain discrete samples for instrument calibration. | |
$/site: maintenance and calibration | $$$/site: voltametric and amperometric | See [76,77] for nitrate ISE ±0.5 mg N/L for NH4+ [78] | Much of the uncertainty in ISE measurements results from the fouling and drift over time. In situ ISE is currently used only for ammonium > 1 mg N/L. | |
$$/site: maintenance and calibration | $$$/site: optical UV–VIS spectroscopy and fluorescence sensors | 0.1–12 mg/L NO3-N (±5% +0.2 mg/L) [79] 0–14 mg/L N (±10%) and 0–42 mg/L N (±25%) [80] EXO NitraLED™ ±0.4 mg N/L or 5% (in pure water) | Proxy techniques require a conversion algorithm, but can be highly accurate; subject to interference from water color and turbidity. | |
$$/site: maintenance and calibration | $$$/site: colorimetric sensors with a “lab” onsite | Generally, more accurate than ion specific electrodes, but has smaller range and can require post-correction. |
3.3.2. In Situ Sensors
3.4. Decisions with Substantial Impacts on Project Costs and Data Quality
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Project Type | Data Measured | Discharge Measurement | Sample Collection | Lab Analysis |
---|---|---|---|---|
1. Measure concentrations with electronic samplers and subsequent lab analysis | Concentrations | NA | ||
2. Measure concentrations with in situ sensors | Concentrations | NA | NA | NA |
3. Measure concentrations and loads with mechanical rotating slot or multi-slot samplers and subsequent lab analysis | Concentrations and loads | |||
4. Measure concentrations and loads with electronic samplers and subsequent lab analysis | Concentrations and loads | |||
5. Measure concentrations and loads with in situ sensors | Concentrations and loads | NA | NA |
Item(s) for Initial Purchase | Initial Cost | Item(s) with Annual Cost | Annual Cost | |
---|---|---|---|---|
All projects | ||||
Number of sites | Vehicle | USD 50,000 | Technical staff salary | USD 100,000 |
Location of sites | Installation = f (berm construction) | USD 800-16,000 | Site maintenance; travel costs = f (location, proximity) | USD 3400–6000 |
Equipment shelter | Shelter = f (commercial or homemade/repurposed) | USD 2400–8000 | - | - |
Duplicate equipment (included in cost below based on equipment type) | Backup/replacement equipment set (per every 6–10 sites) | - | - | - |
Power (for electronic samplers and in situ sensors) | Electrical = f (battery; solar or electrical power) | USD 3200–23,200 | Electricity use (maintain and recharge batteries) | USD 960 |
Communication device (for electronic samplers and in situ sensors) | Communication = f (device needed) | USD 0–1200 | Fees = f (data plan requirements) | USD 0–1440 |
1. Projects that measure concentrations with electronic samplers and subsequent lab analysis | ||||
Collect samples | Sampler | USD 54,000 | Equipment maintenance = f (sampler type) | USD 960 |
Conduct lab analysis | - | - | Sample analysis = f (discrete or composite samples) | USD 4000– 40,000 |
Initial cost = USD 110,400–152,400 Annual cost = USD 109,320–149,360 Total (3 yr) project cost = USD 438,360–600,480 | ||||
2. Projects that measure concentrations with in situ sensors | ||||
Determine concentrations | Sensor = f (sensor type) | USD 135,000–USD 180,000 | Equipment maintenance and calibration | USD 5000–USD 15,000 |
Initial cost = USD 191,400–258,400 Annual cost = USD 109,360–123,400 Total (3 yr) project cost = USD 519,480–628,600 | ||||
3. Projects that measure concentrations and loads with rotating slot or multi-slot samplers and subsequent lab analysis | ||||
Collect composite sample | Sampler | USD 6750 | Equipment maintenance | USD 480 |
Conduct lab analysis | - | - | Sample analysis | USD 4000 |
Initial cost = USD 59,950–80,750 Annual cost = USD 107,880–110,480 Total (3 yr) project cost = USD 383,590–412,190 | ||||
4. Projects that measure concentrations and loads with electronic samplers and subsequent lab analysis | ||||
Collect samples | Sampler | USD 54,000 | Equipment maintenance | USD 960 |
Conduct lab analysis | - | - | Sample analysis = f (discrete or composite samples) | USD 4000–40,000 |
Measure discharge volume | Equipment = f (control structure, stage/flow measurement) | USD 9000–57,000 | Equipment maintenance; measurement = f (stage– discharge relationship) | USD 0–3200 |
Initial cost = USD 119,400–209,200 Annual cost = USD 109,320–152,560 Total (3 yr) project cost = USD 447,360–667,080 | ||||
5. Projects that measure concentrations and loads with in situ sensors | ||||
Determine concentrations | Sensor = f (sensor type) | USD 135,000– 180,000 | Equipment maintenance and calibration | USD 5000–15,000 |
Measure discharge volume | Equipment = f (control structure, stage/flow measurement) | USD 9000– 57,000 | Equipment maintenance; measurement = f (stage– discharge relationship) | USD 0–3200 |
Initial cost = USD 200,400–315,400 Annual cost = USD 109,360–126,600 Total (3 yr) project cost = USD 528,480–695,200 |
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Harmel, R.D.; Preisendanz, H.E.; King, K.W.; Busch, D.; Birgand, F.; Sahoo, D. A Review of Data Quality and Cost Considerations for Water Quality Monitoring at the Field Scale and in Small Watersheds. Water 2023, 15, 3110. https://doi.org/10.3390/w15173110
Harmel RD, Preisendanz HE, King KW, Busch D, Birgand F, Sahoo D. A Review of Data Quality and Cost Considerations for Water Quality Monitoring at the Field Scale and in Small Watersheds. Water. 2023; 15(17):3110. https://doi.org/10.3390/w15173110
Chicago/Turabian StyleHarmel, Robert Daren, Heather Elise Preisendanz, Kevin Wayne King, Dennis Busch, Francois Birgand, and Debabrata Sahoo. 2023. "A Review of Data Quality and Cost Considerations for Water Quality Monitoring at the Field Scale and in Small Watersheds" Water 15, no. 17: 3110. https://doi.org/10.3390/w15173110
APA StyleHarmel, R. D., Preisendanz, H. E., King, K. W., Busch, D., Birgand, F., & Sahoo, D. (2023). A Review of Data Quality and Cost Considerations for Water Quality Monitoring at the Field Scale and in Small Watersheds. Water, 15(17), 3110. https://doi.org/10.3390/w15173110