Dynamic Recommendation of Substitute Locations for Inaccessible Soil Samples during Field Sampling Campaign
Abstract
:1. Introduction
2. Design of the Proposed Method
2.1. Step 1: Selecting Potential Substitute Locations with High Substitutive Scores
- Simple random sampling. If a sample location designed with simple random sampling was inaccessible, its substitute location should also be randomly selected. Thus, the proposed method randomly generates some potential substitute locations (different from those samples in the original sampling plan) in the study area, and assigns each with a substitutive score of 1 as they are equally substitutive. A buffer to other samples in the original sampling plan may be used to prevent the potential substitute locations from being unreasonably close to existing samples. Such a buffer restriction is also available for the rest four situations in this step.
- Stratified random sampling. For an inaccessible sample designed with stratified random sampling, its potential substitute locations should be randomly selected using the same stratifying factor (i.e., with the same class value of the stratified factor) as the inaccessible sample. These potential substitute locations are assigned with a substitutive score of 1.
- Grid sampling. For an inaccessible sample from grid sampling, its potential substitute locations are selected near the inaccessible sample, so that the layout of collected samples can still roughly fit the regular grid adopted in the original design of the grid sampling. It should be as close as possible to the inaccessible sample. The substitutive score of each potential substitute location is calculated as 1 minus the distance between the potential substitute location and the inaccessible sample divided by the grid size.
- Purposive sampling. Purposive sampling is to design samples based on samples’ representativeness of the geographic environment. Sample representativeness is often quantified based on the similarity of environmental conditions between the sample and other locations in the area [4,5,16]. Therefore, for an inaccessible sample from purposive sampling, the substitutive score of a potential substitute location is determined by its environmental similarity to the inaccessible sample. In our method, the environmental similarity is calculated as in Zhu et al. [17], which consists of three steps. The first step is to choose environmental covariates that closely relate to the spatial variation of soils in the study area. Then, the similarity of each individual environmental covariate between two locations (i.e., the inaccessible sample and one of its potential substitute locations) is calculated. If the covariate is nominal or ordinal, the similarity based on this covariate is either 1 or 0. If the covariate is interval or ratio, the similarity is calculated with a Gaussian-shaped curve [17,18]:
- Unknown or other possible sampling strategies. For other sampling strategies, the approach used to calculate the substitutive score for purposive sampling can be adopted as in Wei [13].
2.2. Step 2: Calculating the Accessibility Score for each Candidate Substitute Location
- The instant sampling scenario. This is when the surveyor plans to collect the substitute sample right away. A lower cost means a shorter distance from the surveyor’s current location to a substitutive location. Under this scenario, the proposed method uses the surveyor’s current location as the source position in the source layer to calculate accumulative costs. If the surveyor’s position is not available, the location of the inaccessible sample will be treated as the source location. Under this scenario, it is assumed that the surveyor would immediately request the substitute location to be identified when a predesigned sample was found to be inaccessible.
- The subsequent sampling scenario. This is when the surveyor plans to collect the substitute sample at a later time during collecting other remaining predesigned samples and not right away. Under this scenario, the big picture of the sampling progress will be considered. The proposed method uses the locations of all uncollected samples as potential sources in the source layer.
2.3. Step 3: Recommending the Final Substitute Sample Location
3. The Prototype System
4. Case Study
4.1. Study Area
4.2. Data Preparation
4.2.1. Environmental Covariate Data
4.2.2. Soil Sample Data
4.2.3. Sampling Cost Layer
4.3. Experimental Design
4.3.1. Evaluating Sampling Scenarios
4.3.2. Evaluating the Quality of Substitute Locations
5. Results and Discussion
5.1. The Two Sampling Scenarios in the Proposed Method
5.2. The Substitute Samples for Purposive Sampling
5.2.1. Sample Deviation
5.2.2. Mapping Accuracy
5.2.3. Prediction Uncertainty
5.3. Substitute Samples for Stratified Random Sampling
5.3.1. Sample Layout
5.3.2. The Effect on Soil Mapping
5.4. Further Discussion
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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Slope (°) | Cost Value |
---|---|
0–5 | 1 |
5–10 | 3 |
10–20 | 5 |
20–30 | 7 |
30–35 | 9 |
Land-Use Type | Cost Value |
---|---|
Urban land, rural resident land, other construction land | 1 |
Bare soil | 2 |
Bare rock and gravel, low coverage grassland | 3 |
High coverage grassland, dry land, sparse woodland, other woodland | 5 |
Paddy field | 6 |
Dense woodland, beach | 7 |
bushland | 9 |
Lakes, river channels, reservoirs and pits | +∞ |
Inaccessible Sample | Sampling Strategy | Substitute Location | Sampling Scenario | Substitutive Score | Accessibility Score |
---|---|---|---|---|---|
Stratified random sampling | Instant sampling | 1.0 | 0.93 | ||
Subsequent sampling | 1.0 | 0.99 | |||
purposive sampling | Instant sampling | 0.92 | 0.64 | ||
Subsequent sampling | 0.92 | 0.99 |
Number of Inaccessible Samples | The Percentage of Successfully Predicted Area to Study Area | ||
---|---|---|---|
Threshold = 0.4 | Threshold = 0.3 | Threshold = 0.2 | |
0 | 98.67 % | 96.20 % | 86.13 % |
1 | 98.66 % | 96.19 % | 86.12 % |
2 | 98.64 % | 96.15 % | 86.09 % |
3 | 98.62 % | 96.14 % | 86.07 % |
4 | 98.62 % | 96.13 % | 86.07 % |
5 | 98.62 % | 96.13 % | 86.07 % |
6 | 98.57 % | 96.04 % | 86.02 % |
7 | 98.52 % | 95.95 % | 85.92 % |
8 | 98.54 % | 95.99 % | 85.96 % |
9 | 98.53 % | 95.99 % | 85.99 % |
10 | 98.49 % | 95.91 % | 85.87 % |
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Zhao, F.-H.; Qin, C.-Z.; Wei, T.-F.; Ma, T.-W.; Qi, F.; Liu, J.-Z.; Zhu, A.-X. Dynamic Recommendation of Substitute Locations for Inaccessible Soil Samples during Field Sampling Campaign. ISPRS Int. J. Geo-Inf. 2019, 8, 127. https://doi.org/10.3390/ijgi8030127
Zhao F-H, Qin C-Z, Wei T-F, Ma T-W, Qi F, Liu J-Z, Zhu A-X. Dynamic Recommendation of Substitute Locations for Inaccessible Soil Samples during Field Sampling Campaign. ISPRS International Journal of Geo-Information. 2019; 8(3):127. https://doi.org/10.3390/ijgi8030127
Chicago/Turabian StyleZhao, Fang-He, Cheng-Zhi Qin, Teng-Fei Wei, Tian-Wu Ma, Feng Qi, Jun-Zhi Liu, and A-Xing Zhu. 2019. "Dynamic Recommendation of Substitute Locations for Inaccessible Soil Samples during Field Sampling Campaign" ISPRS International Journal of Geo-Information 8, no. 3: 127. https://doi.org/10.3390/ijgi8030127
APA StyleZhao, F. -H., Qin, C. -Z., Wei, T. -F., Ma, T. -W., Qi, F., Liu, J. -Z., & Zhu, A. -X. (2019). Dynamic Recommendation of Substitute Locations for Inaccessible Soil Samples during Field Sampling Campaign. ISPRS International Journal of Geo-Information, 8(3), 127. https://doi.org/10.3390/ijgi8030127