The Application of EM38: Determination of Soil Parameters, Selection of Soil Sampling Points and Use in Agriculture and Archaeology
Abstract
:1. Introduction
2. Goal of this Study
- Salinity
- Soil-related properties in non-saline soils
- Soil texture
- Soil water content, water balance
- Soil horizons and vertical discontinuities
- N-turnover, cation exchange capacity, organic matter and additional soil parameters
- Soil sampling designs
- Soil type boundaries
- Agriculture
- Agricultural yield variability and management zones
- Efficiency of agricultural field experimentation
- Additional application of EM38 in agriculture and horticulture
- Archaeology
3. Surveying Soil Salinity
- Leached soils, where salinity increases with depth, defined by ECah/ECav ≤ 1.0
- Uniform, where salinity does not change significantly with profile depth and where 1.0 < ECah/ECav ≤ 1.05, and
- Inverted salinity profiles, where salinity decreases with depth and where ECah/ECav > 1.05.
4. Detecting Soil-Related Properties in Non-Saline Soils by EM-38
4.1. Influence of Soil Water Content Conditions
4.2. Soil Texture
4.3. Soil Water Content, Water Balance
4.4. Detection of Soil Horizons and Vertical Discontinuities
4.5. Relationships to N-turnover, Cation Exchange Capacity, Organic Matter and Additional Soil Parameters
4.6. Derivation of Soil Sampling Designs
4.7. Derivation of Soil Type Boundaries
5. Applications in Agriculture
5.1. Derivation of Agricultural Yield Variability and Management Zones
- The spatial distribution of the yield was at first influenced by the ECa across the field. Treatment effects (fertilizing level, fertilizer form) were overlain by soil conditions with different ECa values.
- The height of the yield was secondly assumedly determined by the level of fertilization.
5.2. Improvement of the Efficiency of Agricultural Field Experimentation
5.3. Additional Application of EM38 in Agriculture and Horticulture
6. Application of EM38 in Archaeology
7. Conclusions and Closing Remarks
- The interpretation and utility of ECa readings are highly location and soil-specific; the soil properties contributing to ECa measurements must be clearly understood. From the various calibration results, it appears that regression constants for relationships between ECa, ECe, soil texture, yield, etc. are not necessarily transferable from one region to another. Several factors affect the strength of the signal and therefore, the relationships. In addition to texture, salt concentration and other physicochemical properties, calibrations are further affected by the relative response of the signal according to depth, the non-linearity of the signal and the collinearity between horizontal and vertical readings. The soil parameter with the greatest influence on ECa is also the best derivable.
- Only a few authors [108,196] account for the influence of the farming system, crop biomass, applications of fertilizer at the time of measurement on ECa distributions. Most of the identified soil parameters that influence ECa have significant interdependency and can thus provide multivariate effects on ECa.
- The modelling of ECa, soil properties, climate and yield are important for identifying the geographic extent to which specific applications of ECa technology (e.g., ECa – texture relationships) can be appropriately applied.
- In the case of detecting salinity, obviously better results are achieved if both EM38 readings (vertical and horizontal) are combined with ECe values from different depth ranges. Nevertheless, Vlotman et al. [37] posed the question about the need for converting the ECe from ECa. As McKenzie [24,25] showed, a classification of salinity tolerance level of different crops is also possible only with EM38 readings. A partitioning in areas of low, medium and high salinity with measurements in a single mode or with a combination of v- and h-mode is often a sufficient inventory of the salinity distribution. But it is necessary to take into account, that on the one field e.g., 60 mS m−1 has salt problems while another field with the same reading does not have such problems. Therefore ECe will continue to be important at least in the near future.
- The quality of a regression is often determined by a sufficient range of dependent and independent variables. Delin and Söderström [124] noted that when the ECa data were correlated with the clay content over the whole farm, the result was much better then when the correlation was restricted to single zones. This quality is also better if the target variable is also the dominant ECa-influencing factor.
- The construction of soil sampling designs with ECa readings is limited to those properties that correlate with ECa. Other parameters require some other sampling approach such as random, grid, or stratified random sampling.
- It seems that the detection of salinity is still the main area of application.
- Site-specific management in agriculture with the application of ECa is still in Germany in an initial phase of adoption among farmers. Predicting the future is difficult. Nonetheless, a greater presence of site-specific crop management based on soil detection is to be hoped for.
- Furthermore in Germany increases the investigations in improving soil maps and in detecting soil functions, including: plant available water, sorption capacity, binding strength for heavy metals, filtering of unbound substances and natural soil fertility. Additionally, soil protection measures are also indicators for erosion prevention, retention of nutrients, and conservation/enhancement of carbon contents (based on good agricultural practice after Article 17, German Soil Protection Act). The selection of soil functions is based on the German Soil Protection Act (LABO—Bund-Länder-Arbeitsgemeinschaft Bodenschutz). Here it is not common sense to carry out this also with EM38. Until now it is not well known that, compared to traditional soil survey methods, EM38 readings can more effectively characterize diffuse soil boundaries and identify areas of similar soils within mapped soil units. This gives soil scientists greater confidence in their soil mapping.
- The application in forests is world-wide rather seldom. But also here is an enormous potential to improve the existing site maps and to test the water distribution between the trees.
- The improvement of evaluation of field experiments with ECa readings as covariate is more rarely used. The spatial variability of soil properties can have adverse effects on the accuracy and efficiency of field experiments. Here is a great potential to take into account the soil conditions by using ECa readings.
- The fusion of the data of other sensors also shows great potential. The idea behind the combination of proximal soil sensors is that the accuracy of a single sensor is often not sufficient. The reading of one sensor is affected by more than one soil property of interest. The fusion of sensor data can overcome this weakness by extracting complementary information from multiple sensors or sources. Until now to an increasing extent, the readings of EM38 are evaluated in combination mainly with VIS–NIR and a gamma-ray-spectrometer.
- Many of the instruments measure at the point or sample scale, such as soil moisture probes and tensiometers, while remote sensing devices determine regional patterns. But these techniques are limited in the depth of penetration into the subsurface.
Acknowledgments
Conflicts of Interest
Abbreviations
CEC | Cation exchange capacity |
ECa | Apparent electrical conductivity |
ECav | Apparent electrical conductivity, measured in vertical mode |
ECah | Apparent electrical conductivity, measured in horizontal mode |
ECe | Electrical conductivity of aqueous soil extracts EC1:5, EC1:2 or EC1:1, soil/water suspensions) |
ECp | ECa calculated by using predictive equations |
ECref | Quotient of the measured ECa and the EC |
θv, θw | Weighted water content after vertical and horizontal mode |
Z | Soil depth |
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Study | Parameters | Location of Investigation |
---|---|---|
Derivation of salinity with ECa and ECe | ||
[8] | ECa and ECe relationships: classifying salt affected area | California, USA |
[9] | Descriptions and formulations of ECe and ECa; mathematical coefficients; | South Australia |
[10,11] | Descriptions and formulations of ECe and ECa; inverted salinity profiles; | South California, USA |
[12] | ECa and ECsaturated extract, Na, Cl, Salinity maps with relation to yield Barley) | North-east Australia |
[13] | Calibration ECe and ECav, ECah | Missouri, USA |
[14] | ECa and EC1:5 relationships to perform growth of Australian tree species on saline sites | Queensland, Australia |
[15] | Formulations of ECe and ECa | Egypt |
[16] | Relationship ECa and ECe, ECa observations on establishing and growth of perennial pasture species | Australia |
[17] | Salinity contour maps with ECe and ECav, ECah | Nnortheast Spain |
[18] | Salinity classification system based on EC1:5 with groups of degrades | Henan, China |
[19] | Formulations of ECe and ECa | California, USA |
[20] | ECa, ECe to apply site specific management tech. on saline sites | California, USA |
[21] | ECe and ECav, ECah advanced calibrations reduce soil sampling from 200-300 to 36, | California, USA |
[5,22] | Site calibration ECe and ECav, ECah | Saskatchewan, Canada |
[23,24,25,26] | Formulations of ECa and ECe; Salt tolerance of trees, forages, crops and turf grasses; survival and growth of eucalyptus and pastures in saline soils. | Alberta, Canada |
[27] | Exchangeable sodium percentage and ECe in relation to ECa | Illinois, USA |
[28] | Soil survey with salinity regions; relationship ECe and ECa to detect salinity of irrigated districts | Aragon, Spain |
[29] | Ranges of ECa as classification system of saline areas | Victoria, Australia |
[30] | Salinity classification system based on ranges of total dissolved salt concentrations, EC1:5 with groups of crops with different tolerances to rootzone salinity | Victoria, Australia |
[31,32,33,34] | Descriptions and formulations of ECa, ECe, ECp and EC ratios; multiple regression coefficients; | California, USA |
[35] | Relationships of ECe and ECa, Soil salinity maps of different depth intervals and salinity profile maps at upstream and downstream of the field borders | Yazd Province, Iran |
[36] | Monitoring spill of liquid manure occurred a few years ago | Manitoba, Canada |
[37] | Formulations of ECe and ECa (India) | India (different regions) |
[38,39] | Descriptions and formulations of ECe and ECa; modeled coefficients; | NSW, Australia |
[40] | Comparison EC1:5 - ECe and ECa to detect salinity in an early stage | Nakhon Ratchasima, Thailand |
[41] | Comparison ECe and ECa to detect salinity | New Mexico, USA |
[42,43,44,45] | Determination ECe profiles with ECa (EM38 and EM31); geostatistical methods to predict salinity from ECa (EM38 and EM31), comparison calibration approaches; | NSW, Queensland, Australia |
[46,47] | Ratio (EM38/EM31) sampling points to determine deep drainage and leaching fraction, ECa and ECe; ECa and clay; ECa and deep drainage; | NSW, Australia |
[48] | ECe, water content and ECah, combined with cokriging | California, USA |
[49] | Descriptions, formulations, classifications of ECa, ECe, ECp and EC ratios | – |
[50] | Overview salinity and determination | – |
[51,52,53] | Detection subsurface saline material | Victoria, Australia |
[54] | Calibration models ECe and ECa and water content over regional scale | Colorado, USA |
[55] | Descriptions and formulations of ECe and ECa, simple depth weighted coefficients; | North Dakota, USA |
[56] | Depthwise calibration models ECav, ECah and ECe and EC1:5 to construct inverted salinity profiles | Jiangsu, China |
[57] | Comparison saturated paste and 1:1 soil to water extracts | Oklahoma, Texas, USA |
[58] | Formulations of ECe and ECa | Pakistan |
[59] | Site calibration ECe and ECav, ECah | Navarre, Spain |
[60] | Site calibration ECe and ECav, ECah | North Dakota, USA |
[61] | Site calibration EC(1:5) and ECah | West Australia |
[62] | Salinity calibration model to simulate ECe from ECa | California, Minnesota, USA |
[57] | Comparison saturated paste and 1:1 soil to water extracts | Oklahoma, Texas, USA |
Construction of salinity maps | ||
[63] | Interpolation methods of ECa; ECa maps as base for salinity maps/ECe) | Uzbekistan |
[64] | Relation ECa-topography-salinity extension | Senegal |
[65] | ECa-salinity areas | SE Australia |
[66] | Salinity maps with stepwise data processing | Victoria, Australia |
[67] | Mapping salinity with EM38, EM31 and Wenner array | Alberta, Canada |
[68] | Geostatistical analysis of soil salinity data | ––––––– |
[69] | Salinity distribution within a field and combination with iodine tracer study | Cape Province, South Africa |
[70] | Soil salinity maps with ECa, in relation to land use and soil/geology | South Australia |
[71] | ECa and visual agronomic survey of salinity | Punjab, Pakistan |
[72] | Mapping of salinity plume in a sandy aquifer | North Dakota, USA |
[73] | Detecting salt stores and evaluation of the risk of salinisation | NSW, Australia |
[74] | ECa maps by inverting data collected at various heights in the EM4SOIL software | Yazd Province, Iran |
[75] | Salinity characteristics with PCA | California, USA |
[76] | Comparison of multiple linear regression and cokriging | California, USA |
[77] | Temporal changes in salinity using ECa | Aragon, Spain |
[78,79,80] | Saline seep mapping and remediation; comparison salinity (ECe) and ECa of different conductivity tools; saline seep mechanism in combination with hydrological modeling | Kansas, USA |
[81] | Comparison salinity (ECa) between different land use | Australia |
[82] | EM38 field wise | NSW, Australia |
Salinity and field management | ||
[83] | Assessment of salinity by farmers | Australia |
[84] | Effect of salinity on eucalyptus trees | SE Australia |
[85] | Soil salinity and groundwater properties | Tunisia |
[86] | Extension of groundwater acidity | NSW, Australia |
[87] | EM38 and TDR: comparison of measuring methods | - |
[88] | Assessment of soil quality properties with ECa | California, USA |
[89] | ECa distribution in the landscape and as a consequence of evapotranspiration and phreatic rise | South Australia |
[90] | Salinity in vineyards | Australia |
[91] | ECa–salinity–water content | California, USA |
[92] | Salinity management in cotton fields | California, USA |
EM38 in combination with other sensors | ||
[93] | Comparison tools and methods detection salinity | Australia |
[94] | EM38 in combination with satellite-based navigation methods | Alberta, Canada |
[95] | Increasing precision of salinity with EM38 and EM31 (both ECah) at various layers | Yellow River Delta, China |
[96] | Hyperspectral data related to different soil salinization extent was combined with ECa order to establish a soil salinization monitoring model | Weigan River, China |
Study | Texture | Texture Content (%) | ECa (mS m−1) | R2 | Location of Investigations | |
---|---|---|---|---|---|---|
Europe | ||||||
[103] | Clay Silt Silt + Clay | not described | ECav: 10–110 | 0.28/0.53 * 0.14/0.49 * 0.25/0.71 * * with extracting TWI-trend | Wulfen, Kassow, East Germany | |
[116] | Clay Silt | 4–16 7–36 | ECav: 3–30 | ECav: 0.55 (clay) ECav: 0.67 (clay + silt) (after factor scoring) | Brandenburg, Berlin, Germany | |
[120] | Clay | 2–60 | ECav: mean 13–92 | ECav: 0.56 | Saxony-Anhalt, Germany | |
[121] | Clay | 2–45 | ECav: 2–80 | ECa: 0.66 ECa corr: 0.85, corrected across field boundaries with neighbors regression | Bavaria, Germany | |
[122] | Clay | 6–42 | ECav, ECah: 6–36 | ECav: 0.08–0.38 ECah: 0.13–0.33 | Scheyern, Germany | |
[123] | Clay | 7––32 | ECav: 8–44 ECah: 6-41 | ECav: 0.21–0.44 ECah: 0.13–0.67 | Scheyern, Germany | |
Silt | 4–53 | ECav: 8-44 ECah: 6–41 | ECav: 0.11–0.46 ECah: 0.01–0.60 | |||
Sand | 28–79 | ECav: 8–44 ECah: 6–41 | ECav: 0.04–0.38 ECah: 0.13-0.69 | |||
[109] | Clay Silt Sand | 2–25 5–69 5–50 | ECav: 5–65 | ECav: 0.76–0.76 ECav: 0.65–0.71 ECav: 0.00–0.69 | 3 fields around Bonn, Germany | |
[108] | Clay | 3–48 | ECav: 2–99 ECah: 5–77 | ECav: 0.76 ECah: 0.74 | South Germany | |
Silt | 4–71 | ECav: 2–99 ECah: 5–77 | ECav: 0.67 ECah: 0.67 | |||
Sand + gravel | 15–67 | ECav: 2–99 ECah: 5–77 | ECav: 0.76 ECah: 0.74 | |||
[124] | Clay | 5–30 | ECav: 9 (mean) | ECav: 0.94 | Southwest Sweden | |
[125] | Clay | 9–24 | ECav: 4 ECah: 32.2 approximate values two depths: 0–25 cm, 25–60 cm and 2 fields | ECav: 0.19–0.41 ECah: 0.32–0.45 | South Norway | |
Silt | 28–49 | ECav: 0.006–0.52 ECah: 0.002–0.56 | ||||
Sand | 33–61 | ECav: 0.01–0.4 ECah: 0.02–0.44 | ||||
Gravel | 3–11 | ECav: 0.05–0.94 ECah: 0.08–0.94 | ||||
[126] | Clay | about 5–40 | ECah: 6–26 | ECah: 0.63 | South Norway | |
[127] | Clay Sand | 23–44 39–67 | ECav: 0–50 | ECav: 0.55 ECav: 0.41 | Moravia, Czech Republic | |
[128] | Clay | 4–24 | ECav: 0.49–0.67 (different dates on the same field) | Jütland, Denmark | ||
[129] | Clay | 2–56 | ECav: 9–106 ECah: 5–97 | ECav: 0.81 | East-Flanders, Belgium | |
[104] | Clay | topsoil: 14–24 subsoil: 3–27 | ECav: 18–47 ECav: 12–36 | (ECav* ECah)0.5: 0.69 subsoil (ECav* ECah)0.5: 0.16 topsoil | Flanders, Belgium | |
North America | ||||||
[106] | Clay | 10–46 (mean values) | ECav: 1–54 ECah: 1–56 | ECav–30 cm: about 0.5 ECah–30 cm: 0.3–0.56 | North Carolina, USA | |
Silt | 20–35 (mean values) | ECav: 1–54 ECah: 1–56 | ECav–30 cm: 0.4–0.6 ECah–30 cm: −0.3–0.56 | |||
Sand | 40–70 (mean values) | ECav: 1–54 ECah: 1–56 | ECav–30 cm: about 0.4 ECah–30 cm: −0.3–−0.6 | |||
[130] | Clay Silt Sand | 24–44 26–51 8–50 | ECav , ECah: about 40, salinity affected | 0.08 0.18 0.14 | ln of geometric mean of ECav and ECah | California, USA |
[112] | Clay | 3–48 | about ECav, ECah 10-65 | ECav: 0.11. ECah: 0.08 | Western California, USA | |
[131] | Clay | 14–29 | ECav: 19–35 ECah: 14–26 | ECav: 0.69 ECah: 0.66 | Nebraska, USA | |
[118] | Clay | 12–32 | ECav: 19–118 | 0.76 | 12 sites in Texas, USA | |
[132] | Clay | 13–63 | ECav: 30–65 ECah: 38–83 | ECav–30 cm: 0.55 ECah–30 cm: 0.55 | Central Missouri, USA | |
Silt | 33–81 | ECav: 30–65 ECah: 38–83 | ECav–30 cm: 0.55 ECah–30 cm: 0.55 | |||
Sand | 6–11 | ECav: 30–65 ECah: 38–83 | ECav–30 cm: 0.27 ECah–30 cm: 0.27 | |||
[3] | Clay Silt | 13–36 31–67 | ECav: 7–37 | ECav: 0.55 ECav: 0.15 and 0.48 (2 fields) | North-central states, USA | |
[133] | Clay Silt Sand | about 5–40 unknown unknown | ECav:about 5–60 | ECav: 0.36–0.77 ECav: 0.27–0.71 ECav: 0.21–0.36 | Midwest USA | |
[100] | Clay Sand | 10–32 52–85 | ECav: 84.8 ECah: 40.1 | ECah: 0.76 ECah: 0.74 | Southwest USA | |
Australasia | ||||||
[42,45] | Clay | about 30–85 | ECav:80–200 (salt affected) | ECav 0.62 and 0.64 | NSW, Australia | |
[134] | Clay | about 40–65 | ECav:30–210 | ECav: 0.72 | NSW, Australia | |
[119] | Clay | 15–58 | ECav: 5–159 ECah: 13–147 | ECav: 0.66 ECah: 0.67 combination of EM34 and EM38 in different modes:0.79 | NSW, Australia | |
[135] | Clay | about 20–45 | about 10–36 | ECav: 0.72 ECah: 0.65 | Manavata, New Zealand | |
Asia | ||||||
[136] | Clay Silt Sand | 1.5–41.3 6.5–33.5 45.8–91.0 | ECav: 1–40 | topsoil: 0.47 (on average) | Sri Lanka | |
Unknown | ||||||
[137] | Clay | 12–20 | ECav: 7–20 ECah: 7–15 | ECav: 0.78 ECah: 0.80 | Not described |
Study | Parameters | Location of Investigations |
---|---|---|
Water content | ||
[138] | Water content | Iowa, USA |
[139] | Water content | Iowa, USA |
[112] | Water content | South California, USA |
[91] | Water content | California, USA |
[140] | Water content, water table depth | New Zealand |
[141,142] | Water content | Ontario, Canada |
[143] | Water storage [mm] | Minnesota, USA |
[144] | Soil drainage classes | Illinois, USA |
[145] | Soil water content (θv, θw), ±3% | South Dakota, USA |
[146] | Plant available water content | Missouri, USA |
[147] | Water content | Columbia County, USA |
[148,149] | Volumetric water content | Texas, USA |
[122] | Water content: ECav: 0.39; ECah: 0.26 Plant available water content: ECav: 0.31; ECah: 0.29 | Bavaria, Germany |
[123] | Water content ECav: 0.04–0.26; ECah: 0.16–0.64 | Bavaria, Germany |
[150] | Water content | Florida, USA |
[3] | Water content | North-central USA |
[151] | Water content with EM38 and ASD spectrometer | Quebec, Canada |
[102] | Repeated ECa measurements for determining water content | Pennsylvania, USA |
[152] | Detection of available water content from ECa, for using in the yield software ADSIM | WA, Australia |
[153] | Repeated ECa measurements and relation to water content (irrigation) | Queensland, Australia |
[115] | Available water content and soil water deficit from texture finess classes and ECa | Cambridgeshire, UK |
[154] | ECa in combination with GPR to predict field wide water content | South-east Italy |
[155] | Soil water content, soil bulk density | South Dakota, USA |
Groundwater, water table depth, water drainage | ||
[156] | Water table depth using geophysical and relief variables | Darling River, Australia |
[9] | Groundwater recharge | South Australia |
[157] | Depth to groundwater table | Montana, USA |
[158] | Soil drainage classes | Iowa, USA |
[159] | Characterizing of water and solute distributions in the vadose zone with readings of EM38 and borehole conductivity meter | New Mexico, USA |
[160] | Water table depth | Florida, USA |
[161,162] | Detection of areas with different water movements | Tennessee, USA |
[46] | Deep drainage risk | Australia |
[163] | Hydraulic conductivity of palaeochannel in alluvial plains | NSW, Australia |
[42,45] | Deep drainage (mm/year) with a 4-parameter broken-stick model fitted to ECav beyond 120 cm | Australia |
Irrigation | ||
[164] | Irrigation effectiveness/drainage | California, US, |
[165] | ECa – soil available water holding capacity on two variable-rate irrigation scenarios | New Zealand |
[166] | ECa for quick assessment of deep drainage under irrigated conditions in the field. | Australia |
Study | Investigation Object | Location of Investigation |
---|---|---|
Soil types | ||
[171] | Separation between Natraqualf and Ochraqualf | Tennessee, USA |
[172] | Soil types, yield maps | Virginia, USA |
[173] | ECa to derive more homogeneous lacustrine-derived soils | Iowa, USA |
[174] | Soil pattern as basis of management zones | England |
[175] | Soil boundaries | Denmark |
[158] | Soil map unit boundaries, detection of inclusions | Iowa, USA |
[2] | Refine and improvement of soil maps | - |
[176] | Soil types with clusteranalysis | Elbe-Weser-region, Germany |
[177] | Detection of areas with sulfidic sediments and coastal acid sulfate soils | NSW, Australia |
[128] | Soil types | Jütland, Denmark |
[178] | Soil boundaries between clay loam and sandy loam soils | Cambridge, UK |
[179] | Soil types, in combination with terrain parameters and other sensors | NW Victoria, Australia |
[102] | Repeated ECa measurements for determining soil types | Pennsylvania, USA |
[180] | Inversion of EM38 and EM34 sigma-a data to detect the areal distribution of soil types | Darling River, Australia |
[181] | Distinguishing between soils with cambic pedogenic horizons and argillic horizons; boundaries of soil map units | Texas, USA |
[182] | Supporting delineation of spatial distribution of C content | Harz region, Germany |
Soil depth to horizons/layers/discontinuities/borders | ||
[183] | Depth to limestone bedrock and clayey residuum | Florida, Pennsylvania, USA |
[184] | Depth of claypan soils | Missouri, USA |
[185] | Soil depth sounding | East, south Germany |
[5] | Soil depth sounding | Ontario, Canada |
[186] | Depth to sand and gravel | Unknown |
[187] | Depth of sand deposition | Missouri, USA |
[188] | Layer depth, ECa as auxiliary variable | North Netherlands |
[189] | Depth of the Tertiary substratum | Flanders, Belgium |
[190] | Soil depth to petrocalcic horizon | Utah, USA |
[191] | Soil depth to bedrock (loess above basalt) | Idaho, USA |
[192] | Bulk density and ECa | Iowa, USA |
[193] | Boulder clay depth | North Netherlands |
[194] | Linear, negative relation between ECa and topsoil layer thickness | Fuxin, China |
[195] | Bayesian method to map the clay content of the Bt horizon associated with the control of encroaching trees | South Africa |
[1,196,197,198] | Depth to claypan soils | Missouri, USA |
Further soil properties | ||
[88] | Soil properties and cotton yield | California, USA |
[199] | Soil properties and cotton yield | California, USA |
[112] | Water content, cation exchange capacity, cations and anions in saturation extract and exchangeable, B, Mo, pH, C, N, | West California, USA |
[132] | Cation exchange capacity, C, N, P, soil enzyme, microbial biomass, hydr. Sat. K., bulk density | Missouri, USA |
[3] | Water content, cation exchange capacity | North-central states, USA |
[45] | CEC in salt affected soils | NSW, Australia |
[200] | CEC in dependence of EM38, EM31, 3 remotely sensed (Red, Green and Blue spectral brightness), 2 trend surface (Easting and Northing) variables | NSW, Australia |
[201] | Exchangeable Ca, Mg, cation exchange capacity | Ontario, Canada |
[124] | ECa as a covariable in cokriging improved the prediction of pH, clay, SOM | Sweden |
[202] | ECa in relation to water content, yield, CEC, clay silt, organic matter | Brandenburg, Saxony-Anhalt, Germany |
[131] | C, total dissolved solids, depth of topsoil | Nebraska, USA |
[203] | Soil organic carbon and classifing with fields normalized ECa | Andalucia, Spain |
[204] | N-dymanics for management zones | Nebraska, USA |
[176] | Precision agriculture: combination of ECa and soil parameters (clay, yield, plant available water) | Mecklenburg, Germany |
[205,206] | Compaction in paddy rice fields by puddling | Bangladesh |
[207] | ECa as subsidiary variable for interpolation | Missouri, USA |
[208] | Soil compaction | Silsoe, UK |
[209] | Relations leaching rates to ECa | NSW, Australia |
[210] | ECa as subsidiary variable for interpolation of P, K, pH, organic matter and water content | Iowa, USA |
[211] | Simple linear inversion of ECa to simulate magnetic susceptibility | - |
Study | Investigation Object | Location of Investigation |
---|---|---|
[59] | Soil sampling points | Ebro River, Spain |
[199] | Sampling design | West California, USA |
[237] | ECa base sampling design: response surface sampling design (RSSD), stratified random sampling design (SRSD) | California, USA |
[228] | Soil sampling design pH | NSW, Australi, |
[238] | Mapping sodium affected soils | Great Plains, USA |
[204,239] | Soil sampling design, soil units | West California, USA |
[100,236,240,241] | Soil sampling design | Southwest USA |
[115] | Sampling design for loacation of neutron probe access tubes | Cambridgeshire, UK |
[242] | VQT method (variance quad-tree) in combination of relief data and ECa | Jiangsu Province, China, |
[235] | Optimum locations for soil investigations | Brandenburg, Germany |
Study | Investigation Object | Location of Investigation |
---|---|---|
[172] | Yield maps, Soil types and ECa | Virginia, USA |
[106] | ECa, NIR, elevation, slope with k-means clustering to define management zones | North Carolina, USA |
[65] | Help for define management options with ECa | SW, Australia |
[250] | Development of predictors of vine yield from ECa | New Zealand |
[251] | Management zones in viniculture | Clare Valley, Australia |
[103] | Relationship ECa crop yield | North, east Germany |
[252] | Management zones on soil NO3 and P sampling variability | South Dakota, USA |
[253,254] | N-management zones | Belgium |
[130,199,255] | Soil properties and cotton yield | California, USA |
[174] | Soil pattern as basis of management zones | England |
[12] | Identifiing management classes with ECa (measured at high and low water content) | North-east Australia |
[154] | Multi-sensor data (EM38, GPR, FieldSpec) to delineate homogeneous zones | Italy |
[256] | Relationships ECa, N-fertilizing demand | Southwest Sweden |
[257] | Relationship ECa crop yield , management zones | Brandenburg, Germany |
[258] | Establishing of management zones with Corg, clay, NO3, K, Zn, ECa, corn yield data | Colorado, USA |
[259] | Correlations ECa with yield, sugar content, piercing force, Kramer energy in a single year | Peleponnese, Greece |
[260] | Relationship ECa crop yield, management zones | Missouri, USA |
[261] | Management zones and N applications | Missouri, USA |
[262] | Management zones delineation software | Missouri, USA |
[224] | ECa to predict NO3-concentration | Dakota, USA |
[131] | ECa zones | Nebraska, USA |
[263] | Distribution of legumes in pastures in dependence of ECa and slope | Iowa, USA |
[176] | Soil types (derived from ECa) related to yield, K, Mg | Elbe-Weser-region, Germany |
[92] | Management zones salt affected sites | California, USA |
[264] | Development of key properties for delineation management zones | North Belgium |
[265] | Management zones in a paddy rice field with ECa | Bangladesh |
[226,266] | Relationship ECa crop yield | Iowa, USA |
[267] | Management zones with yield, elevation and ECa | Iowa, USA |
[132] | Relationship ECa crop yield | Missouri, USA |
[268] | ECa-maps to derive management zones | Iowa, USA |
[269] | Relationship ECa crop yield, terrain attributes | Iowa, USA |
[213] | Relationship and classification ECa crop yield | North central Missouri, USA |
[270] | Managing and monitoring variability in vineyards | Australia |
[271] | Management zones with yield, elevation, ECa, aerial photos | Nebraska, USA |
[272] | Site-specific management of grassland | Ireland |
[249] | Comparison ECa – German national soil inventory (Bodenzahlen) | Bavaria, Germany |
[273] | Lime applicationto reduce subsoil acidity | Western Australia |
[225] | Relationships ECa, N-fertilizing zones | Saxonia, Germany |
[274] | Senor application in viticulture | Australia |
[275] | Multiyear ECa – yield relationship | Victoria, Australia |
[276] | Delineation of site-specific management-zones with ECa and topographic parameters | Nile Delta, Egypt |
[277] | Data fusion (Terrian attributes, ECa, yield, aerial imagers) | Minnesota, USA |
[179] | Yield zones, yield per year, in combination with terrain parameters and other sensors | North West Victoria, Australia |
[164] | Relationship ECa crop yield | Bavaria, Germany |
[196] | Relationship ECa crop yield | Missouri, USA |
[278] | Relationship ECa − volumetric water content (−35 cm) – yield | NRW, Germany |
[279] | ECa and yield of apples | Ankara, Turkey, |
[42,45] | Sampling points with ratio (ECav-EM38/ECa-EM31) | NSW, Australia |
[245] | Management zones and multilevel sampling scheme | Central Iowa, USA |
[280] | Management zones with ECa relative differences (ϑij , Eq. 31) | SW Spain |
[104] | Management zones (delineated mainly with subsoil clay from ((ECav* ECah).5)) delivered from ECa) | Flanders, Belgium |
[281] | Characterization of soil variation by key variables: pH, ECa, organic matter | Flanders, Belgium |
[121] | Interpolation of ECa across field boundaries | Bavaria, Germany |
[282] | EC and soil inorganic N (no EM38-ECa) | Nebraska, USA |
Yield (dt ha−1) | Configuration | N | Equation | R2 Significance |
---|---|---|---|---|
Control plots | Vertical | 12 | 101.33 − 1.411 × ECa | 0.67 *** |
Horizontal | 12 | 64.61 − 0.758 × ECa | 0.81 *** | |
Fertilized plots (low) | Vertical | 42 | 106.85 − 0.81 × ECa | 0.36 ** |
Horizontal | 42 | 53.466 + 1.394 × ECa − 0.025 × ECa2 | 0.76 *** | |
Fertilized plots (high) | Vertical | 42 | 111.2 − 0.811 × ECa | 0.22 * |
Horizontal | 42 | 76.853 + 0.361 × ECa − 0.012 × ECa2 | 0.67 *** |
Study | Investigation Object | Location of Investigation |
---|---|---|
[173] | ECa to derive more homogeneous lacustrine-derived soils | Iowa, USA |
[204] | Classification parameter for block design | California, USA |
[287] | P-content in a field experiment with different levels of manure applications | Michigan, USA |
[288] | Comparison of yield between strip trials, partly ECa; simplified evaluation method | South, west Australia |
Target Variable, Years | Model and Effects | Significance | Partial Eta-Square | Adjusted R2 | RMSE (dt ha−1) |
---|---|---|---|---|---|
Yield (dt ha −1), mean 1980, 1983, 1986, 1989, 1992, 1995, 1998, 2001, 2004, 2007, 2010, 2012 | Adjusted model Constant Fertilization level Fertilizer no. Fertilization level*Fertilizer no. | 0.008 0.000 0.000 0.414 0.971 | 0.313 0.998 0.258 0.081 0.018 | 0.18 | 3.26 |
Yield (dt ha −1)3, mean (1980, 1983, 1986, 1989, 1992, 1995, 1998, 2001, 2004, 2007, 2010, 2012 | Adjusted model Constant Fertilization level Fertilizer no. Fertilization level* Fertilizer no. ECa (EM38-h)^3 lg10(ECa (EM38-v)) Channelnetwork^3 TWI^3 | 0.000 0.007 0.000 0.000 0.145 0.000 0.000 0.001 0.024 | 0.904 0.106 0.764 0.341 0.131 0.275 0.276 0.144 0.075 | 0.88 | 1.29 |
Study | Investigation Object | Location of Investigation |
---|---|---|
[234] | Corg, K, pH, Bray-2 P, | Louisiana, USA |
[290] | Detecting soil properties as indicators for population density of Redheaded cockchafer (Adoryphourus couloni) | Victoria, Australia |
[215,217,219] | Specific ions that are associated with animal waste | Nebraska, USA |
[220] | N decomposition, organic and artificial fertilizer | Nebraska, USA |
[221] | ECa as an indicator of N gains and losses, available N sufficiency for corn in early stage and NO3-N surplus after harvest | Nebraska, USA |
[291] | ECa as indicator for soil conditions which are prefered by Heterodera schachtii | North Rhine-Westphalia, Germany |
[292] | Herbicide partition coefficients | Iowa, USA |
[233] | Variation in soil testing P | Missouri, Oklahoma, USA |
[293] | Part of fungicide application models in combination with ratio vegetation index | Denmark |
[294] | Weed distribution, herbicide injury in dependency of ECa | North Rhine-Westphalia, Germany |
[222] | NH4, K in animal slurries | Ireland |
Study | Investigation Object | Location of Investigation |
---|---|---|
[295] | Detection of graves with inphase and quadphase readings | Maryland, USA |
[296,297] | Prehistoric earthworks with measurements in inphase mode | Ohio, USA |
[298] | Metal objects from the 18th century | Canada |
[299] | Removing of the effect of elevation on the distribution of ECa readings | Santa Catarina State, Brazil |
[300] | Comparison EM38 fluxgate gradiometer | Belgium |
[301] | Medieval manor in the dutch polders | Netherlands |
[302] | Area prospection with EM38 and MS2D | Tundra region, Sweden |
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Heil, K.; Schmidhalter, U. The Application of EM38: Determination of Soil Parameters, Selection of Soil Sampling Points and Use in Agriculture and Archaeology. Sensors 2017, 17, 2540. https://doi.org/10.3390/s17112540
Heil K, Schmidhalter U. The Application of EM38: Determination of Soil Parameters, Selection of Soil Sampling Points and Use in Agriculture and Archaeology. Sensors. 2017; 17(11):2540. https://doi.org/10.3390/s17112540
Chicago/Turabian StyleHeil, Kurt, and Urs Schmidhalter. 2017. "The Application of EM38: Determination of Soil Parameters, Selection of Soil Sampling Points and Use in Agriculture and Archaeology" Sensors 17, no. 11: 2540. https://doi.org/10.3390/s17112540
APA StyleHeil, K., & Schmidhalter, U. (2017). The Application of EM38: Determination of Soil Parameters, Selection of Soil Sampling Points and Use in Agriculture and Archaeology. Sensors, 17(11), 2540. https://doi.org/10.3390/s17112540