Application of Three Deep Machine-Learning Algorithms in a Construction Assessment Model of Farmland Quality at the County Scale: Case Study of Xiangzhou, Hubei Province, China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.1.1. Data Collection
2.1.2. Data Processing
- (1)
- Soil index data processing
- (2)
- Socioeconomic index data processing
2.2. Methods
2.2.1. Building a Comprehensive Index System for Farmland Quality Assessment
- (1)
- Preliminary Selection of Indicators
- (2)
- Correlation Analysis
- (3)
- Validity Test
2.2.2. Determining the Classification of Indicators and Their Affiliation
2.2.3. Construction of Farmland Quality Assessment Model
RF Assessment Model
- (1)
- Training set generation
- (2)
- Parameter optimization
- (3)
- Determination of weighted indicators
- (4)
- Calculation of farmland quality index
Comparison Methods
- (1)
- Compared to other conventional weight assessment methods, EW is an objective weight method that is free from human influence and has the most basic and simple model construction, which enables better interpretation of assessment results. Therefore, EW was chosen as a typical representative of conventional weight-assessment methods. The fundamental principle of EW is to calculate objective weight based on the amount of variability in the indicator. The less information entropy there is, the greater the variation and weight of the indicator. Due to the wide application of this method, it was not repeated in this paper concerning the specific calculation procedure [19].
- (2)
- BPNN and SVM are classical representatives of machine-learning methods, both of which are more stable and flexible than conventional weight-assessment methods. However, compared to BPNN, the choice of SVM parameters poses greater constraints to construction, which largely limits the depth of research and breadth of SVM application. Artificial neural networks tend to mature in farmland quality assessment studies, mainly using BPNN or its deformed form model. Therefore, in this study, BPNN was chosen as a typical representative of machine-learning methods, and we attempted to construct a five-layer BPNN structure for farmland quality assessment model using R.
3. Results
3.1. Analysis of Indicator Weights Determined Based on Three Models
3.2. Analysis and Comparison of Results of Farmland Quality Assessment
3.2.1. Analysis of RF Assessment Results
3.2.2. Comparison of Assessment Results
3.3. RF Model Reasonableness Test
3.3.1. Consistency Test
3.3.2. Superiority Test
4. Discussion
4.1. Construction of a Comprehensive Assessment Index System for Farmland Quality
4.2. The Influence of Research Scale on Indicator Selection
4.3. Construction of Farmland Quality Assessment Model
5. Conclusions
- (1)
- The results showed that as far as the average farmland quality index in Xiangzhou is concerned, RF > BPNN > EW, and the assessment results of RF and BPNN showed more similar spatial distribution, while that of EW differed greatly. From a practical point of view, the assessment result of RF was more in line with the local natural conditions and socioeconomic development and was more objective. In terms of assessment accuracy, the RF model had the advantage of digging deeper into the nonlinear relationship between the indicators and the evaluated object. Its generalization ability was stronger, its assessment accuracy was higher, and its assessment results were more in line with the spatial distribution of farmland quality, which were consistent, typical, and superior to those of BPNN and EW.
- (2)
- The quality of farmland in Xiangzhou was generally high, with a large area being of second- and third-grade quality, accounting for 54.63% of the total farmland area, and the grades basically conformed to a positive distribution trend. From the distribution point of view, the spatial distribution of farmland quality in Xiangzhou was unbalanced, influenced by the topography and socioeconomic development level and showing an obvious geographical distribution pattern, with overall characteristics of high in the north-central area and low in the southern area. The distribution of farmland quality grades also differed greatly among regions.
- (3)
- To a certain degree, due to the complexity, uncertainty, and nonlinearity of farmland quality systems, farmland quality from the perspective of the RF model was researched as an expansion of assessment methods, based on the theories and methods of artificial intelligence technology, which can improve the accuracy and quantitative level of farmland quality assessment. This study provides a new assessment method for farmland quality that can support the formulation of rational and effective management policies toward realizing the sustainable use of farmland resources. Moreover, the assessment model constructed in this study could be used as a reference for similar countries and regions.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Normative Layer | Indicator Layer | Basis of Calculation | Explanation |
---|---|---|---|
Terrain | Slope | Based on digital elevation model (DEM) calculations | Reservation |
Topographic site (TS) | Based on sample point assay data from survey and assessment of farmland quality grade of Xiangzhou in 2018 | Reservation | |
Soil conditions | Surface soil texture (SST) | Reservation | |
Texture configuration (TC) | Deletion | ||
Tillage layer thickness (TLT) | Reservation | ||
Barrier factor (BF) | Deletion | ||
Soil pH | Reservation | ||
Soil moisture (SM) | Deletion | ||
Soil available phosphorus (SAP) | Reservation | ||
Soil available potassium (SAK) | Reservation | ||
Soil organic matter (SOM) | Reservation | ||
Socioeconomic | Drainage capacity (DC) | Distance from farmland to ditches | Reservation |
Irrigation capacity (IC) | Distance from farmland to rivers | Reservation | |
Farming distance (FD) | Distance from farmland to rural residential locations | Deletion | |
Ease of farming (EF) | Distance from farmland to rural roads | Reservation | |
Traffic accessibility (TA) | Distance from farmland to highway | Reservation | |
Ecological environment | Biodiversity | The percentage of earthworms | Reservation |
Cleanliness | Based on farmland soil environmental quality category classification database of Xiangzhou in 2018 | Reservation | |
Reticulation of agricultural land and forestry (ALRF) | Based on survey and assessment database of farmland quality grade of Xiangzhou in 2018 | Deletion |
Indicator Name | Classification and Affiliation | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Slope | <5° | 5–15° | 15–25° | >25° | |||||||
1 | 0.8 | 0.6 | 0.4 | ||||||||
Topographic site | Upper mountain slope | Middle mountain slope | Upper hill | Under mountain slope | Middle hill | Under hill | Mountain basin | Plain high order | Broad valley basin | Plain middle order | Plain low order |
0.3 | 0.45 | 0.6 | 0.68 | 0.7 | 0.8 | 0.8 | 0.9 | 0.95 | 0.95 | 1 | |
Surface soil texture | Medium soil | Light soil | Sand soil | Heavy soil | Clay | Sand soil | |||||
1 | 0.9 | 0.85 | 0.95 | 0.6 | 0.6 | ||||||
Drainage capacity | Full satisfaction | Satisfaction | Basic satisfaction | No satisfaction | |||||||
1 | 0.8 | 0.6 | 0.3 | ||||||||
Irrigation capacity | Full satisfaction | Satisfaction | Basic satisfaction | No satisfaction | |||||||
1 | 0.8 | 0.6 | 0.3 | ||||||||
Biodiversity | Enrichment | General | No enrichment | ||||||||
1 | 0.8 | 0.6 | |||||||||
Cleanliness | Cleaning | No cleaning | |||||||||
1 | 0.8 |
Indicator Name | Function Type | Function Formula | a | b | c | Lower Limit of u | Upper Limit of u |
---|---|---|---|---|---|---|---|
Soil organic matter | Upper precept | 0.001842 | 33.656446 | 0 | 33.7 | ||
Tillage layer thickness | Upper precept | 0.000205 | 99.092342 | 10 | 99 | ||
Soil pH | Peak | 0.221129 | 6.811204 | 3.0 | 10.0 | ||
Soil available phosphorus | Upper precept | 0.002025 | 33.346824 | 0 | 33.3 | ||
Soil available potassium | Upper precept | 0.000081 | 181.622535 | 0 | 182 | ||
Ease of farming | Negative linear | 0.000376 | 0.90188 | 5 | 1600 | ||
Traffic accessibility | Negative linear | 0.000318 | 0.90636 | 15 | 2400 |
Number (n) | Error | R2 |
---|---|---|
1 | 0.000211 | 0.7727 |
2 | 0.0000830 | 0.91 |
3 | 0.0000620 | 0.9332 |
4 | 0.0000548 | 0.9409 |
5 | 0.0000528 | 0.9432 |
6 | 0.0000499 | 0.9462 |
7 | 0.0000480 | 0.9483 |
8 | 0.0000495 | 0.9466 |
9 | 0.0000494 | 0.9468 |
10 | 0.0000502 | 0.9459 |
11 | 0.0000493 | 0.9469 |
12 | 0.0000482 | 0.948 |
13 | 0.0000497 | 0.9464 |
14 | 0.0000507 | 0.9454 |
Model | Area/Proportion | First Grade | Second Grade | Third Grade | Fourth Grade | Fifth Grade |
---|---|---|---|---|---|---|
Random forest (RF) | Area/hm2 | 14,680.44 | 41,365.19 | 48,912.49 | 46,704.13 | 13,594.74 |
Proportion/% | 8.88 | 25.03 | 29.60 | 28.26 | 8.23 | |
Backpropagation neural network (BPNN) | Area/hm2 | 19,163.23 | 40,484.52 | 43,261.89 | 45,500.65 | 16,846.71 |
Proportion/% | 11.60 | 24.50 | 26.18 | 27.53 | 10.19 | |
Entropy weight (EW) | Area/hm2 | 27,558.40 | 42,137.51 | 43,976.13 | 32,252.10 | 19,332.85 |
Proportion/% | 16.68 | 25.50 | 26.61 | 19.52 | 11.70 |
Model | MAE | MSE | R2 | Significance |
---|---|---|---|---|
RF | 0.009 | 0.012 | 0.8145 | 0.000 |
BPNN | 0.021 | 0.026 | 0.4594 | 0.213 |
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Wang, L.; Zhou, Y.; Li, Q.; Xu, T.; Wu, Z.; Liu, J. Application of Three Deep Machine-Learning Algorithms in a Construction Assessment Model of Farmland Quality at the County Scale: Case Study of Xiangzhou, Hubei Province, China. Agriculture 2021, 11, 72. https://doi.org/10.3390/agriculture11010072
Wang L, Zhou Y, Li Q, Xu T, Wu Z, Liu J. Application of Three Deep Machine-Learning Algorithms in a Construction Assessment Model of Farmland Quality at the County Scale: Case Study of Xiangzhou, Hubei Province, China. Agriculture. 2021; 11(1):72. https://doi.org/10.3390/agriculture11010072
Chicago/Turabian StyleWang, Li, Yong Zhou, Qing Li, Tao Xu, Zhengxiang Wu, and Jingyi Liu. 2021. "Application of Three Deep Machine-Learning Algorithms in a Construction Assessment Model of Farmland Quality at the County Scale: Case Study of Xiangzhou, Hubei Province, China" Agriculture 11, no. 1: 72. https://doi.org/10.3390/agriculture11010072
APA StyleWang, L., Zhou, Y., Li, Q., Xu, T., Wu, Z., & Liu, J. (2021). Application of Three Deep Machine-Learning Algorithms in a Construction Assessment Model of Farmland Quality at the County Scale: Case Study of Xiangzhou, Hubei Province, China. Agriculture, 11(1), 72. https://doi.org/10.3390/agriculture11010072