| Literature DB >> 31936425 |
Soham Adla1, Neeraj Kumar Rai2, Harsha Sri Karumanchi2, Shivam Tripathi3, Markus Disse1, Saket Pande4.
Abstract
Soil volumetric water content ( V W C ) is a vital parameter to understand several ecohydrological and environmental processes. Its cost-effective measurement can potentially drive various technological tools to promote data-driven sustainable agriculture through supplemental irrigation solutions, the lack of which has contributed to severe agricultural distress, particularly for smallholder farmers. The cost of commercially available V W C sensors varies over four orders of magnitude. A laboratory study characterizing and testing sensors from this wide range of cost categories, which is a prerequisite to explore their applicability for irrigation management, has not been conducted. Within this context, two low-cost capacitive sensors-SMEC300 and SM100-manufactured by Spectrum Technologies Inc. (Aurora, IL, USA), and two very low-cost resistive sensors-the Soil Hygrometer Detection Module Soil Moisture Sensor (YL100) by Electronicfans and the Generic Soil Moisture Sensor Module (YL69) by KitsGuru-were tested for performance in laboratory conditions. Each sensor was calibrated in different repacked soils, and tested to evaluate accuracy, precision and sensitivity to variations in temperature and salinity. The capacitive sensors were additionally tested for their performance in liquids of known dielectric constants, and a comparative analysis of the calibration equations developed in-house and provided by the manufacturer was carried out. The value for money of the sensors is reflected in their precision performance, i.e., the precision performance largely follows sensor costs. The other aspects of sensor performance do not necessarily follow sensor costs. The low-cost capacitive sensors were more accurate than manufacturer specifications, and could match the performance of the secondary standard sensor, after soil specific calibration. SMEC300 is accurate ( M A E , R M S E , and R A E of 2.12%, 2.88% and 0.28 respectively), precise, and performed well considering its price as well as multi-purpose sensing capabilities. The less-expensive SM100 sensor had a better accuracy ( M A E , R M S E , and R A E of 1.67%, 2.36% and 0.21 respectively) but poorer precision than the SMEC300. However, it was established as a robust, field ready, low-cost sensor due to its more consistent performance in soils (particularly the field soil) and superior performance in fluids. Both the capacitive sensors responded reasonably to variations in temperature and salinity conditions. Though the resistive sensors were less accurate and precise compared to the capacitive sensors, they performed well considering their cost category. The YL100 was more accurate ( M A E , R M S E , and R A E of 3.51%, 5.21% and 0.37 respectively) than YL69 ( M A E , R M S E , and R A E of 4.13%, 5.54%, and 0.41, respectively). However, YL69 outperformed YL100 in terms of precision, and response to temperature and salinity variations, to emerge as a more robust resistive sensor. These very low-cost sensors may be used in combination with more accurate sensors to better characterize the spatiotemporal variability of field scale soil moisture. The laboratory characterization conducted in this study is a prerequisite to estimate the effect of low- and very low-cost sensor measurements on the efficiency of soil moisture based irrigation scheduling systems.Entities:
Keywords: SM100 sensor; SMEC300 sensor; calibration; capacitive sensor; irrigation management; low-cost sensor; off-the-shelf sensor; permittivity; precision agriculture; resistive sensor; soil moisture; temperature sensitivity, salinity dependence; volumetric water content
Year: 2020 PMID: 31936425 PMCID: PMC7014303 DOI: 10.3390/s20020363
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Publications relevant to sensor calibration studies.
| Publication | Sensor Name (Company Name) | Sensor Type | Soils Used | Calibration Curve Details |
|---|---|---|---|---|
| Paltineanu and Starr (1997) [ | Multisensor Capacitance probe: MCAP (Enviroscan) | Capacitance sensor | Mattaplex silt loam (fine-silty, mixed, mesic, Aquic Hapludult) | Scaled frequency |
| Baumhardt et al. (2000) [ | Multisensor Capacitance probe: MCAP (Enviroscan) | Capacitance sensor | 2 soil materials: Surface and calcic horizons of an Olton soil | Scaled frequency |
| Czarnomski et al. (2005) [ | ECH2O (Decagon), CT 1502C (Tektronix Inc.), WCR CS615 Campbell Scientific) | Capacitance sensors | Alluvial soils of volcanic origin (sandy loam to sandy clay loam) | Linear (for capacitance sensor) |
| Sakaki et al. (2008) [ | ECH2O (Decagon) | Capacitance sensor | 4 sands | Linear, quadratic, 2-point alpha mixing model |
| Kargas and Soulis (2012) [ | 10HS (Decagon Devices) | Capacitance sensor | Liquids and porous media of known dielectric permittivity | 2-point calibration equation |
| Matula et al. (2016) [ | ThetaProbe ML2x (Delta-T Devices Ltd.), ECH2O EC10 (Decagon), ECH2O EC 20 (Decagon), ECH2O EC5 (Decagon), ECH2O TE (Decagon) | Impedance sensors, FDR sensors | Silica sand and loess | Comparison between manufacturer and developed linear calibration equations |
| Kargas and Soulis (2019) [ | CS655 (Campbell Scientific) | Water Content Reflectometer | Liquids of known dielectric permittivity and 10 soils (sand, sandy-loam, sandy-clay-loam, loam, clay-loam, clay) | 2-point, multi-point calibration equations; calibration equation for non-conductive soils using Kelleners’ method [ |
| González-Teruel et al. (2019) [ | Self-developed soil moisture sensor with SDI-12 communication | Capacitance based | 3 soils (clay-loams and sand) | Exponential equations |
Publications relevant to sensor testing studies.
| Category | Relevant publications |
|---|---|
| Sensor accuracy | Czarnomski et al. (2005) [ |
| Sensor precision | Czarnomski et al. (2005) [ |
| Sensor-to-sensor variability | Sakaki et al. (2008) [ |
| Temperature effects | Paltineanu and Starr (1997) [ |
| Salinity effects | Baumhardt et al. (2000) [ |
| Volume of influence/sensitivity | Paltineanu and Starr (1997) [ |
Description of sensors used in the study.
| Measurement Technique | Soil Moisture Sensor (Company) | Price (Quotation) | Nomenclature Used in Study |
|---|---|---|---|
| Capacitance based | SMEC300 Soil Moisture, Temperature and EC sensor (Spectrum Technologies) | $219.00 | Low-cost *. |
| SM100 Soil Moisture sensor (Spectrum Technologies) | $89.00 | Low-cost. | |
| Resistance based | YL100 Soil Hygrometer Detection Module soil moisture sensor (Electronicfans) | $3.89 | Very Low-cost. |
| YL69 Generic Soil Moisture Sensor Module (Kitsguru) | $2.11 | Very Low-cost. | |
| Impedance based | ThetaProbe ML3 Soil Moisture sensor (Delta-T Devices) | $516.33 | High-cost, ‘true’ secondary standard sensor. |
* Considering the additional temperature and EC sensing capabilities.
Figure 1The four soil moisture sensors investigated in the study; from left to right (in the order of ascending cost): YL69, YL100, SM100, and SMEC300. The rightmost sensor is the secondary standard sensor, ThetaProbe.
Figure 2The four different soils used the study. From left to right: Soil 1: Grade I Sand [46], Soil 2: Grade III Sand [46], Soil 3: Silty-loam soil from local field, Soil 4: Graded Silty-loam soil.
Description of physical properties of the 4 soils used in the study [47].
| Nomenclature Used in Study | Soil Description | Bulk Density [g/cc] | Soil Texture Classification |
|---|---|---|---|
| Soil 1 | Grade I sand (1–2 mm) | 1.82 | Sand |
| Soil 2 | Grade III sand (0.09–0.5 mm) | 1.59 | Sand |
| Soil 3 | Field soil from experimental site at IIT Kanpur (Kanpur, India) | 1.23 | Silty-Loam |
| Soil 4 | Graded Silty-Loam | 1.20 | Silty-Loam |
Fluids of known relative permittivity () used in the study.
| Fluid | |
|---|---|
| Air | 1.0 |
| Butanol | 16.8 |
| Ethanol | 24.3 |
| Ethylene-glycol | 37.0 |
| De-ionized water (Water) | 81.0 |
Electrical conductivities () of the water samples and corresponding measurements of the soil samples investigated in the salinity experiment.
| EC of the Water Added [mS/cm] | Actual | Symbolic Representation in |
|---|---|---|
| 1.7 | 17.8 | Circle (○) |
| 1.7 | 32.3 | |
| 1.7 | 48.81 | |
| 3.02 | 20.08 | Triangle(△) |
| 3.02 | 31.12 | |
| 3.02 | 47.32 | |
| 6.32 | 34.09 | Square(□) |
| 6.32 | 38.5 | |
| 6.32 | 49.53 | |
| 9.69 | 17.59 | Pentagon(⬠) |
| 9.69 | 34.8 | |
| 9.69 | 43.53 |
The list of performance measures used in the study: denotes an actual value; represents a raw value measured by the sensor; is the average of the actual values; is the average of the raw values measured by the sensor; is the rank of x and n is the number of data points used in the computation. k, , m and are the index of the current series, number of measurements in series k, total number of series, and corresponding standard deviation of the series, respectively, and are used to compute .
| Performance Metric | Description/Equation | Range (Ideal Value) |
|---|---|---|
| Coefficient of Determination ( |
| 0 to 1 (1) |
| Mean Absolute Error ( |
| 0 to |
| Pooled relative standard deviation ( |
| 0 to |
| Relative Absolute Error ( |
| 0 to |
| Root Mean Squared Error ( |
| 0 to |
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| 0 to |
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| 0 to | |
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| 0 to | |
| Spearman’s Rank Correlation Coefficient ( |
| −1 to 1 |
Figure 3Response of the capacitive soil moisture sensors (SMEC300 and SM100) and secondary standard (impedance-based ThetaProbe) to fluids of known at 25 °C. The X- and Y-axis depict the actual and measured refractive indices (), respectively. Although the ThetaProbe measures directly, the values of SM100 and SMEC300 were converted to the corresponding values based on the literature [10]. n is the total number of measurements in the experiment of a fluid, and the error bar shows the mean and standard error of the estimated values.
Performance metrics of the capacitive (SMEC300 and SM100) and secondary standard (impedance-based ThetaProbe) sensors, in measuring refractive indices () of fluids of known at 25 °C.
| SMEC300 | SM100 | ThetaProbe | |
|---|---|---|---|
|
| 0.87 | 0.55 | 0.48 |
|
| 0.22 | 0.27 | 0.24 |
|
| 1.08 | 0.74 | 0.75 |
|
| 0.0062 | 0.0062 | 0.0405 |
Spearman’s Rank Correlation Coefficient between the sensor readings and the actual soil volumetric water content (VWC) () across the different soils. All the values are significant at .
| Low-Cost | Very Low-Cost | |||
|---|---|---|---|---|
| Capacitive Sensors | Resistive Sensors | |||
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| |
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| 0.93 | 0.92 | 0.78 | 0.91 |
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| 0.96 | 0.97 | 0.89 | 0.94 |
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| 0.84 | 0.94 | 0.94 | 0.73 |
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| 0.95 | 0.92 | 0.94 | 0.85 |
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| 0.92 | 0.94 | 0.89 | 0.86 |
Coefficients of the calibration equations for repacked soil samples, of the form indicated in Equation (1). The segment limits indicate the limits of the fitted piecewise linear segments.
| Sensor Name | Soil Type | Equation Characteristics | Segment 1 | Segment 2 |
|---|---|---|---|---|
|
| Soil-1 |
| [1135, 1280) | [1280, 1792) |
|
| 0.13 | 0.03 | ||
|
| −152.65 | −23.21 | ||
| Soil-2 |
| [1200, 1451) | 1451, 1707) | |
|
| 0.07 | 0.04 | ||
|
| −85.91 | −34.23 | ||
| Soil-3 |
| [1231, 1402) | [1402, 1899) | |
|
| 0.08 | 0.02 | ||
|
| −94.19 | −19.71 | ||
| Soil-4 |
| [1275, 1525) | [1525, 1685) | |
|
| 0.09 | 0.00 | ||
|
| −112.50 | 23.58 | ||
|
| Soil-1 |
| [1200, 1238) | [1238, 1812) |
|
| 0.25 | 0.04 | ||
|
| −303.95 | −42.88 | ||
| Soil-2 |
| [1200, 1464) | [1464, 1728) | |
|
| 0.07 | 0.03 | ||
|
| −87.61 | −32.15 | ||
| Soil-3 |
| [1263, 1578) | [1578, 1895) | |
|
| 0.06 | 0.02 | ||
|
| −78.57 | −14.80 | ||
| Soil-4 |
| [1319, 1630) | [1630, 1833) | |
|
| 0.06 | 0.01 | ||
|
| −81.29 | −3.56 | ||
|
| Soil-1 | Segment limits | [2, 467.5) | [467.5, 763) |
| Slope ( | 0.04 | 0.03 | ||
|
| −0.80 | 5.01 | ||
| Soil-2 |
| [6, 615.5) | [615.5, 826) | |
|
| 0.03 | 0.09 | ||
|
| −0.81 | −32.32 | ||
| Soil-3 |
| [5, 333.5) | [333.5, 709) | |
|
| 0.02 | 0.08 | ||
|
| −0.17 | −20.81 | ||
| Soil-4 |
| [6, 418.5) | [418.5, 705) | |
|
| 0.02 | 0.07 | ||
|
| −1.08 | −21.08 | ||
|
| Soil-1 |
| [11, 134) | [134, 724) |
|
| 0.07 | 0.04 | ||
|
| −1.35 | 3.24 | ||
| Soil-2 |
| [7, 722] | ||
|
| 0.05 | |||
|
| −0.87 | |||
| Soil-3 | Segment limits | [18, 838] | ||
| Slope ( | 0.03 | |||
| Intercept ( | 1.48 | |||
| Soil-4 | Segment limits | [14, 824) | ||
| Slope ( | 0.03 | |||
| Intercept ( | −0.71 |
Figure 4Calibration of capacitive sensors (a) SMEC300 and (b) SM100, and resistive sensors (c) YL100 and (d) YL69, in repacked soil using piecewise linear equations. The raw values correspond to either the raw readings from the Spectrum’s FieldScout reader (for capacitive sensors), or the raw outputs generated using the Arduino setup developed in-house (for resistive sensors). The coefficient of determination, R2, for each soil, is illustrated adjacent to the corresponding line.
Figure 5Comparison of manufacturer and in-house calibration equations for capacitive sensors (a) SMEC300 and (b) SM100 for the four different experimental soils.
Accuracy performance indicators of the tested sensors, with in-house calibration and manufacturer calibration (applicable only to capacitive sensors): Mean Absolute Error (, in % ), Root Mean Squared Error (, in % ), and Relative Absolute Error ( or , dimensionless). The same performance indicators are provided for the secondary standard sensor (for which no calibration equations were developed).
| Low-Cost Capacitive Sensors | Very Low-Cost Resistive Sensors | Secondary Standard | |||||||||||||||||||
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| 9.63 | 11.76 | 1.01 | 2.28 | 3.34 | 0.24 | 8.17 | 10.22 | 0.84 | 2.27 | 2.97 | 0.23 | 4.31 | 5.88 | 0.47 | 2.58 | 3.53 | 0.28 | 3.79 | 4.84 | 0.40 |
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| 7.13 | 8.63 | 0.89 | 0.96 | 1.39 | 0.12 | 6.75 | 8.23 | 0.87 | 1.12 | 1.63 | 0.14 | 3.42 | 4.54 | 0.35 | 2.95 | 3.90 | 0.29 | 2.88 | 4.46 | 0.34 |
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| 7.17 | 9.99 | 1.00 | 3.33 | 4.20 | 0.47 | 5.82 | 7.74 | 0.80 | 1.54 | 2.55 | 0.21 | 3.41 | 5.99 | 0.35 | 6.38 | 8.09 | 0.61 | 2.98 | 4.29 | 0.39 |
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| 6.44 | 7.90 | 0.96 | 1.90 | 2.61 | 0.28 | 4.18 | 5.27 | 0.63 | 1.74 | 2.27 | 0.26 | 2.90 | 4.45 | 0.31 | 4.60 | 6.65 | 0.46 | 3.07 | 4.23 | 0.42 |
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| 7.59 | 9.57 | 0.97 | 2.12 | 2.88 | 0.28 | 6.23 | 7.86 | 0.78 | 1.67 | 2.36 | 0.21 | 3.51 | 5.21 | 0.37 | 4.13 | 5.54 | 0.41 | 3.18 | 4.45 | 0.39 |
Figure 6Accuracy (primary and secondary) and precision of different soil moisture sensors (SMEC300, SM100, YL69, YL100), in 4 different soils (corresponding to four quadrants). Overall accuracy, (Table 5), is the Euclidean distance of the bubble cross-hairs from the origin. The closer the bubble is to the origin, the more accurate the sensor is. Precision is indicated by the size of the bubbles (); the smaller the bubble, the more precise the sensor. ‘n’ is the number of sensor units per sensor used in the experiment.
Comparison of precision performance of the tested sensors, based on pooled relative standard deviation, (% VWC). In-house calibration equations were used for the capacitive and resistive sensors, and Manufacturer calibration was used for the secondary standard sensor (for which no calibration equations were developed).
| Low-Cost | Very Low-Cost | Secondary | |||
|---|---|---|---|---|---|
| Capacitive Sensors | Resistive Sensors | Standard | |||
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| 0.51 | 0.55 | 1.11 | 0.81 | 0.47 |
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| 0.05 | 0.44 | 1.13 | 0.63 | 0.30 |
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| 0.48 | 0.30 | 0.74 | 0.40 | 0.24 |
|
| 0.28 | 0.35 | 0.78 | 0.72 | 0.24 |
|
| 0.33 | 0.41 | 0.94 | 0.64 | 0.31 |
Figure 7Temperature sensitivity of estimated VWC for different sensors: (a) capacitive SMEC300, (b) capacitive SM100, (c) resistive YL100, and (d) resistive YL69. The horizontal lines represent the actual VWC according to the legend. The hollow circular and solid square markers, along with their error bars, represent the average and standard deviations of the calibrated/estimated sensor readings corresponding to the fixed lower and higher actual VWC values, respectively. Positive temperature effects are seen to different extents in all sensors, with the resistive sensors’ performance being limited by relatively lower accuracy and precision.
Figure 8Effect of water of different electrical conductivity (EC) values on VWC measured () by different sensors: (a) capacitive SMEC300, (b) capacitive SM100, (c) resistive YL100, and (d) resistive YL69. (e) shows the relationship between the median values of the bulk soil EC measured by SMEC300 and the EC of water (with the corresponding best-fit line).