Spatial Distribution Characteristics of Soil Salinity and Moisture and Its Influence on Agricultural Irrigation in the Ili River Valley, China
Abstract
:1. Introduction
2. Literature Review
3. Materials and Methods
3.1. Study Area
3.2. Sample Collection and Analysis Methods
3.3. Methodology
3.3.1. Geostatistical Analysis
3.3.2. Geographical Detector
Extraction of Model Factors
Geographical Detector Model
3.4. Data Analysis and Processing
4. Results
4.1. Statistical Characteristics of Soil Salinity and Moisture
4.2. Spatial Variability of Soil Salinity and Moisture
4.3. Spatial Pattern of Soil Salinity and Moisture
4.4. The Driving Factors of the Spatial Distribution of Soil Salinity and Moisture
4.5. The Interaction of Driving Factors
5. Discussion
6. Conclusions
- (1)
- The average value of soil salinity and soil moisture were 0.1345% and 0.6082%, respectively, and mainly lightly salinized soil was distributed in the study area. The coefficient of variation of soil salinity and water content was 71.25% and 31.89%, respectively, which corresponds to moderate levels of variation. There were moderate spatial auto-correlation of both soil salinity and moisture, which were mainly affected by structural (topography, soil types, parent material, climate, etc.) and random (irrigation, fertilization, farming methods, planting crops, and cropping system, etc.) factors.
- (2)
- Spatially, in terms of spatial distribution, soil salinity in the southwest was higher than in the northeast, and the high content center was concentrated in the south of the study area. Soil moisture was relatively high in the middle and along the north eastern edge, while soils in the northwest and southeast have relatively low moisture.
- (3)
- Available phosphorus, organic matter and roughness of terrain were the main driving factors of the spatial distribution of soil salinity. Alkaline nitrogen, available phosphorus, available potassium and elevation were the main driving factors of the spatial distribution of soil moisture. The interaction of available potassium with aspect and roughness of terrain played a dominant role in the spatial distribution of soil salinity, and the effect of available potassium depended on the aspect and roughness of terrain. The interaction of organic matter with available potassium and alkaline nitrogen played a leading role in the spatial distribution of soil moisture, and the explanatory power of organic matter was only strong when interacting with available potassium and alkaline nitrogen under certain conditions. Therefore, combined action of topographic factors and soil nutrients has a major influence on the spatial distribution of soil salinity and moisture.
- (4)
- Our results obtained this study indicate that an effective way to improve the degree of soil salinization is to make a suitable fertilization system under different topography conditions. First of all, we suggest that popularizing water-saving irrigation technology, controlling irrigation quota, digging drainage ditch, implementing the paddy-wheat rotation, and changing the backward situation of flood irrigation in the areas with a high salt salinity content. Secondly, in the region with high slope and low altitude, the amount of specific soil nutrient elements should be appropriately increased to improve soil fertility. Finally, when it comes to nutrient management, managers need to consider the impact of topographic factors and soil nutrient on the distribution of soil salinity and moisture, expand the scope of scientific research, training and promotion, then scientifically guide farmers to carry out rational fertilization and improve crop yield. Additionally, some measures such as improvement of irrigation and drainage system, rational exploitation and utilization of groundwater, and water-saving irrigation can also effectively improve soil salinization.
Author Contributions
Funding
Conflicts of Interest
References
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Indicator | Mean | Standard Deviation | Variance | Maximum | Minimum | Coefficient Variation/% |
---|---|---|---|---|---|---|
Rt (X1) | 22.13 | 38.46 | 1479.33 | 158.00 | 2.00 | 173.79 |
Ele (X2) | 843.50 | 433.70 | 188116.00 | 2400.00 | 575.00 | 51.42 |
Hc (X3) | 192.10 | 116.90 | 13675.20 | 359.30 | 1.60 | 60.85 |
Asp (X4) | 89.99 | 0.01 | 0.0002 | 90.00 | 89.94 | 0.01 |
Slo (X5) | 174.60 | 161.30 | 26001.60 | 357.50 | −1.00 | 92.38 |
Pc (X6) | 60.89 | 30.07 | 904.40 | 88.31 | 4.53 | 49.38 |
SOM/(%) (X7) | 2.24 | 0.46 | 0.21 | 3.35 | 1.54 | 20.42 |
AN/(mg·kg−1) (X8) | 134.00 | 51.61 | 2663.74 | 243.94 | 49.90 | 38.51 |
AP/(mg·kg−1) (X9) | 10.84 | 11.18 | 125.09 | 51.99 | 2.02 | 103.14 |
AK/(mg·kg−1) (X10) | 264.00 | 99.00 | 9793.40 | 478.80 | 66.60 | 37.50 |
Variable | Description | Formula | References |
---|---|---|---|
Roughness of terrain (Rt)/m | The difference between the maximum and minimum values of the DEM grid. neighbourhood, represents the range of change in the surface elevation. | a | [46] |
Horizontal curvature (Hc)/m-1 | A curvature of a normal section of the land surface, indicates that bending and variation of land surfaces along the horizontal direction. | b | [47] |
Slope (Slo)/° | An angle between a tangent plane and a horizontal one at a given point on the land surface, indicates the degree of inclination of the local surface slope. | b | [47,48] |
Aspect (Asp)/° | Indicates that there is deviation of a surface from a horizontal plane. | Asp∈ [0°, 360°] | [47,48] |
Profile curvature (Pc)/m-1 | A curvature of a normal section of the land surface by a plane, measures the rate of change in ground elevation along the direction of maximum slope. | b | [47] |
Mean | Minimum | Maximum | Standard Deviation | Coefficient Variation (%) | Distribution Type | |
---|---|---|---|---|---|---|
Soil Salinity/(%) | 0.1345 | 0.0137 | 0.4407 | 0.0958 | 71.25 | LN |
Soil Moisture/(%) | 0.6082 | 0.2547 | 1.1980 | 0.1940 | 31.89 | N |
Theory Model | Nugget /C0 | Sill /C0 + C | Nugget Effect /[C0/C0 + C] | Range /A0(m) | R2 | Residual SS | |
---|---|---|---|---|---|---|---|
Soil Salinity/(%) | Spherical | 0.0059 | 0.0144 | 0.4097 | 1010 | 0.243 | 1.064 × 10-4 |
Soil Moisture/(%) | Gaussian | 0.0146 | 0.0352 | 0.4147 | 2390 | 0.182 | 1.713 × 10-3 |
Prediction Error | |||||
---|---|---|---|---|---|
ME | RMSE | ASE | MSE | RMSSE | |
Soil Salinity/(%) | –0.0056 | 0.0897 | 0.0741 | –0.0608 | 1.2061 |
Soil Moisture/(%) | –0.0012 | 0.1790 | 0.1651 | –0.0255 | 1.0901 |
Soil Salinity | Soil Moisture | ||||
---|---|---|---|---|---|
Interaction Factor | q-Value | Interaction Results | Interaction Factor | q-Value | Interaction Results |
X5∩X10 | 0.874 | Enhance, nonlinear | X7∩X10 | 0.938 | Enhance, nonlinear |
X1∩X10 | 0.851 | Enhance, nonlinear | X7∩ X8 | 0.820 | Enhance, nonlinear |
X8∩X9 | 0.823 | Enhance, nonlinear | X1∩X9 | 0.780 | Enhance, nonlinear |
X2∩X8 | 0.779 | Enhance, nonlinear | X2∩X8 | 0.736 | Enhance, nonlinear |
X5∩X8 | 0.762 | Enhance, nonlinear | X1∩X8 | 0.708 | Enhance, nonlinear |
X6∩X9 | 0.752 | Enhance, nonlinear | X8∩X9 | 0.706 | Enhance, nonlinear |
X1∩X6 | 0.728 | Enhance, nonlinear | X8∩X10 | 0.703 | Enhance, nonlinear |
X1∩X7 | 0.708 | Enhance, nonlinear | X7∩X9 | 0.701 | Enhance, nonlinear |
X1∩X8 | 0.683 | Enhance, nonlinear | X6∩X8 | 0.697 | Enhance, nonlinear |
X3∩X7 | 0.656 | Enhance, nonlinear | X3∩X7 | 0.692 | Enhance, nonlinear |
X2∩X9 | 0.656 | Enhance, nonlinear | X9∩X10 | 0.666 | Enhance, nonlinear |
X7∩X10 | 0.652 | Enhance, nonlinear | X2∩X9 | 0.661 | Enhance, nonlinear |
X2∩X7 | 0.650 | Enhance, nonlinear | X1∩X10 | 0.657 | Enhance, nonlinear |
X3∩X8 | 0.644 | Enhance, nonlinear | X5∩X9 | 0.649 | Enhance, nonlinear |
X1∩X9 | 0.642 | Enhance, nonlinear | X6∩X9 | 0.645 | Enhance, nonlinear |
X8∩X10 | 0.641 | Enhance, nonlinear | X6∩ X7 | 0.635 | Enhance, nonlinear |
X7∩X9 | 0.612 | Enhance, nonlinear | X2∩X10 | 0.629 | Enhance, nonlinear |
X6∩X8 | 0.604 | Enhance, nonlinear | X3∩X9 | 0.614 | Enhance, nonlinear |
X3∩X10 | 0.579 | Enhance, nonlinear | X2∩X6 | 0.612 | Enhance, nonlinear |
X2∩X10 | 0.563 | Enhance, nonlinear | X5∩X8 | 0.611 | Enhance, nonlinear |
X6∩X7 | 0.559 | Enhance, nonlinear | X1∩X3 | 0.606 | Enhance, nonlinear |
X5∩X6 | 0.553 | Enhance, nonlinear | X1∩X6 | 0.588 | Enhance, nonlinear |
X7∩X8 | 0.542 | Enhance, nonlinear | X2∩X7 | 0.569 | Enhance, nonlinear |
X9∩X10 | 0.539 | Enhance, nonlinear | X1∩X7 | 0.550 | Enhance, nonlinear |
X6∩X10 | 0.535 | Enhance, nonlinear | X3∩X8 | 0.521 | Enhance, nonlinear |
X5∩X9 | 0.525 | Enhance, nonlinear | X4∩X9 | 0.494 | Enhance, nonlinear |
X1∩X2 | 0.523 | Enhance, nonlinear | X1∩X4 | 0.483 | Enhance, nonlinear |
X5∩X7 | 0.513 | Enhance, nonlinear | X1∩X2 | 0.471 | Enhance, nonlinear |
X2∩X6 | 0.506 | Enhance, nonlinear | X6∩X10 | 0.426 | Enhance, nonlinear |
X1∩X5 | 0.499 | Enhance, nonlinear | X5∩X10 | 0.410 | Enhance, nonlinear |
X2∩X5 | 0.486 | Enhance, nonlinear | X5∩X6 | 0.401 | Enhance, nonlinear |
X4∩X7 | 0.486 | Enhance, nonlinear | X3∩X5 | 0.394 | Enhance, nonlinear |
X3∩X9 | 0.469 | Enhance, nonlinear | X2∩X3 | 0.391 | Enhance, nonlinear |
X2∩X3 | 0.426 | Enhance, nonlinear | X2∩X5 | 0.388 | Enhance, nonlinear |
X3∩X6 | 0.419 | Enhance, nonlinear | X5∩X7 | 0.387 | Enhance, nonlinear |
X1∩X4 | 0.411 | Enhance, nonlinear | X4∩X8 | 0.387 | Enhance, nonlinear |
X4∩X9 | 0.406 | Enhance, nonlinear | X3∩X10 | 0.379 | Enhance, nonlinear |
X1∩X3 | 0.377 | Enhance, nonlinear | X4∩X7 | 0.366 | Enhance, nonlinear |
X3∩X5 | 0.376 | Enhance, nonlinear | X1∩X5 | 0.364 | Enhance, nonlinear |
X3∩X4 | 0.367 | Enhance, nonlinear | X3∩X4 | 0.343 | Enhance, nonlinear |
X4∩X8 | 0.345 | Enhance, nonlinear | X3∩X6 | 0.342 | Enhance, nonlinear |
X4∩X5 | 0.329 | Enhance, nonlinear | X2∩X4 | 0.301 | Enhance, nonlinear |
X4∩X10 | 0.296 | Enhance, nonlinear | X4∩X10 | 0.258 | Enhance, nonlinear |
X2∩X4 | 0.288 | Enhance, nonlinear | X4∩X6 | 0.252 | Enhance, nonlinear |
X4∩X6 | 0.273 | Enhance, nonlinear | X4∩X5 | 0.204 | Enhance, nonlinear |
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Xu, L.; Du, H.; Zhang, X. Spatial Distribution Characteristics of Soil Salinity and Moisture and Its Influence on Agricultural Irrigation in the Ili River Valley, China. Sustainability 2019, 11, 7142. https://doi.org/10.3390/su11247142
Xu L, Du H, Zhang X. Spatial Distribution Characteristics of Soil Salinity and Moisture and Its Influence on Agricultural Irrigation in the Ili River Valley, China. Sustainability. 2019; 11(24):7142. https://doi.org/10.3390/su11247142
Chicago/Turabian StyleXu, Li, Hongru Du, and Xiaolei Zhang. 2019. "Spatial Distribution Characteristics of Soil Salinity and Moisture and Its Influence on Agricultural Irrigation in the Ili River Valley, China" Sustainability 11, no. 24: 7142. https://doi.org/10.3390/su11247142
APA StyleXu, L., Du, H., & Zhang, X. (2019). Spatial Distribution Characteristics of Soil Salinity and Moisture and Its Influence on Agricultural Irrigation in the Ili River Valley, China. Sustainability, 11(24), 7142. https://doi.org/10.3390/su11247142