Research on the Evaluation Index System of the Soil Remediation Effect Based on Blockchain
Abstract
:1. Introduction
2. Materials and Methods
2.1. Soil Remediation Effect Evaluation Indices
2.2. Method for Determining Index Weight
3. Method
3.1. Selection of Index System
3.1.1. Principles of Index Selection
- Principle of universality. There are many indices of soil remediation effects, but the premise is that they must be based on a comprehensive and systematic point of view. By analysing the primary and secondary effects of various soil characteristics on soil functions, the indices that have important effects are selected. Additionally, they do not unrestrictedly expand the choice of indices and complicate the entire index system.
- The principle of objectivity. The indices used for soil remediation evaluation should be objective and can reflect the remediation effect to the greatest extent. Quantitative indices should be the mainstay, and qualitative indices can be selected as auxiliary evaluation indices when necessary.
- Sensitivity principle. The selected soil remediation evaluation index must be sufficiently sensitive. If the selected index is not sensitive to soil changes, it is of no use value for monitoring soil performance changes. However, the sensitivity of the index depends on the time scale for monitoring changes in soil properties.
- Principle of evaluability. After the evaluation index of the soil remediation effect is measured, there must be corresponding standard values or reference values that can be used as the basis for evaluation. Based on this, it is determined whether the expected repair target has been achieved [26].
3.1.2. Method of Indices Selection
3.1.3. Selection of Indices
- (1)
- Design and distribution of questionnaires
- (2)
- Descriptive statistical analysis
- (3)
- Reliability analysis
- (4)
- Factor analysis
- Test whether it is suitable for factor analysis. Generally, the analysis is carried out by reflecting the image correlation matrix, the correlation coefficient matrix with the help of variables, Bartlett’s sphericity test and KMO test methods. After calculation, the KMO of the component supplier evaluation index is 0.823, and the significance probability Sig is 0.000, indicating that the data are relevant and suitable for factor analysis.
- Extract factors. The method of extracting factors mainly used in this paper is the principal component analysis method. The results of the variance contribution rate of the obtained factors are shown in Table 2. As shown in Table 2, there are eight common factors. They explained 78.060% of the total variance, indicating that these eight main factors can explain 78.060% of the original 47 variable indicators. Starting from the ninth factor, its characteristic root was less than 1, so the first eight factors are extracted as common factors.
3.2. Application of Blockchain
3.2.1. Demand Analysis
3.2.2. Soil Remediation Effect Evaluation Supervision Alliance Chain
3.3. Determination of Index Weight
4. Construction of the Evaluation Index System of the Soil Remediation Effect
4.1. Soil Remediation Effect Evaluation Index
4.2. Sensitivity Analysis
- (1)
- Define RPC (range of percent change). RPC is a finite set of discrete percentage changes with original basic data.
- (2)
- Define IPC (increment of percent change). IPC represents the percentage change of the factor weight each time within the RPC range.
- (3)
- Calculate the weight value. The sum of all factor weights W is 1:
- (4)
- Calculate the comprehensive evaluation result of each weight change.
4.3. Suggestions on the Application of Index System
5. Feedback and Suggestions
6. Conclusions
6.1. Conclusions
6.2. Futures
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Index | Mean | Variance | Screening Results |
---|---|---|---|
Soil total nitrogen content | 4.2 | 0.779 | 1 |
Soil total phosphorus content | 4.1 | 0.81 | 1 |
Soil total potassium content | 4.07 | 0.84 | 1 |
…… | …… | …… | …… |
DDT | 1.2 | 0.974 | 2 |
Initial Eigenvalue | Rotation Sums of Squared Loadings | Rotate the Sum of Squares Loading | |||||||
---|---|---|---|---|---|---|---|---|---|
Total | Variance % | Accumulation % | Total | Variance % | Accumulation % | Total | Variance % | Accumulation % | |
1 | 7.153 | 23.115 | 23.105 | 7.153 | 23.105 | 23.105 | 3.343 | 11.816 | 11.816 |
2 | 2.741 | 8.865 | 31.980 | 2.741 | 8.865 | 31.980 | 2.811 | 9.068 | 19.885 |
… | … | … | … | … | … | … | … | … | … |
8 | 1.116 | 3.653 | 78.060 | 1.136 | 3.664 | 78.060 | 1.747 | 5.635 | 78.060 |
9 | 0.963 | 3.107 | 81.167 | ||||||
10 | 0.868 | 2.703 | 83.871 | ||||||
… | … | … | … | ||||||
47 | 0.006 | 0.016 | 100.00 |
Common Factor | α | Index | Factor Loading after Rotation | |||
---|---|---|---|---|---|---|
C5 | C6 | C7 | C8 | |||
C8 | 0.704 | Regional emergency capability | 0.023 | 0.457 | 0.076 | 0.565 |
Equipment characteristic | 0.316 | −0.523 | 0.091 | 0.693 | ||
Management system | 0.157 | −0.028 | 0.036 | 0.849 |
Total Target | First Level Index | Second Level Index | Third Level Index | Unit | Index Type | Relevance to Blockchain Technology | Reference |
---|---|---|---|---|---|---|---|
Soil remediation effect evaluation | Soil fertility (0.4) | Soil chemistry index (0.33) | Soil total nitrogen content (0.125) | % | Positive | + + | [41,42] |
Soil total phosphorus content (0.125) | % | Positive | + + | [42,43] | |||
Soil total potassium content (0.125) | % | Positive | + + | [42,43] | |||
Soil basic nitrogen content (0.125) | mg/kg | Positive | + + | [44] | |||
Soil available phosphorus content (0.125) | mg/kg | Positive | + + | [43] | |||
Soil available potassium content (0.125) | mg/kg | Positive | + + | [42] | |||
Cation exchange capacity (0.125) | cmol (+)/kg | Positive | + + | [43,45] | |||
C/N ratio (0.125) | \ | Range value | + + | [46] | |||
Soil physical properties index (0.33) | Bulk density (0.15) | kg/m3 | Negative | + − | [14,47] | ||
Soil texture (0.1) | % | Positive | + − | [14] | |||
Environmental capacity (0.1) | g/cm3 | Range value | + − | [48] | |||
Water stable aggregates (0.09) | % | Range value | + − | [49] | |||
Porosity (0.2) | % | Range value | + − | [50] | |||
Temperature variation of topsoil (0.09) | °C | Range value | + − | [51] | |||
Soil depth (0.09) | cm | Range value | + − | [52] | |||
Soil moisture content (0.09) | % | Range value | + − | [53,54] | |||
Clay content (0.09) | % | Positive | + − | [55] | |||
Soil biology index (0.33) | Soil organic matter (0.25) | % | Positive | + + | [14] | ||
Humic acid (0.15) | % | Range value | + + | [8] | |||
Microbial biomass carbon (0.175) | mg/kg | Positive | + + | [56] | |||
Microbial biomass nitrogen (0.175) | mg/kg | Positive | + + | [56] | |||
Soil enzyme activity (0.25) | μmol/min | Positive | + + | [57] | |||
Soil environment 0.4 | Soil pollutant index (0.4) | Soil Lead concentration (0.142) | mg/kg | Negative | + + | [11] | |
Soil arsenic concentration (0.142) | mg/kg | Negative | + + | [58] | |||
Soil cadmium concentration (0.142) | mg/kg | Negative | + + | [11] | |||
Soil mercury concentration (0.142) | mg/kg | Negative | + + | [59] | |||
Soil nickel concentration (0.142) | mg/kg | Negative | + + | [15] | |||
Soil copper concentration (0.142) | mg/kg | Negative | + + | [59] | |||
Soil benzo (a) pyrene concentration (0.148) | mg/kg | Negative | + + | [60] | |||
Lead concentration of groundwater (0.1) | mg/L | Negative | + + | [61] | |||
Water resources index (0.3) | Ground water depth (0.14) | cm | Range value | + + | [62] | ||
Mineralization of groundwater (0.26) | mg/L | Negative | + + | [62] | |||
Arsenic concentration of groundwater (0.1) | mg/L | Negative | + + | [62] | |||
Cadmium concentration in groundwater (0.1) | mg/L | Negative | + + | [61] | |||
Mercury concentration in groundwater (0.1) | mg/L | Negative | + + | [62] | |||
Chromium concentration in Groundwater (0.1) | mg/L | Negative | + + | [63] | |||
Copper concentration in groundwater (0.1) | mg/L | Negative | + + | [64] | |||
Biological index (0.2) | Population richness (0.35) | \ | Positive | + − | [65] | ||
Diversity index (0.27) | \ | Positive | + − | [17] | |||
Advantage index (0.19) | \ | Positive | + − | [17] | |||
Uniform index (0.19) | \ | Positive | + − | [17] | |||
Other index (0.1) | Soil pH(0.5) | \ | Range value | + + | [53] | ||
Slope (0.38) | % | Range value | + − | [66] | |||
Level of networking forest (0.12) | % | Positive | + − | [66] | |||
Regional policy 0.2 | Regional emergency capability (0.265) | Manual scoring | Positive | + + | Original | ||
Equipment characteristic (0.135) | Manual scoring | Positive | + + | Original | |||
Management system (0.6) | Manual scoring | Positive | + + | Original |
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Wang, M.; Liang, X.; Li, Z. Research on the Evaluation Index System of the Soil Remediation Effect Based on Blockchain. Land 2021, 10, 1274. https://doi.org/10.3390/land10111274
Wang M, Liang X, Li Z. Research on the Evaluation Index System of the Soil Remediation Effect Based on Blockchain. Land. 2021; 10(11):1274. https://doi.org/10.3390/land10111274
Chicago/Turabian StyleWang, Menghua, Xuedong Liang, and Zhi Li. 2021. "Research on the Evaluation Index System of the Soil Remediation Effect Based on Blockchain" Land 10, no. 11: 1274. https://doi.org/10.3390/land10111274
APA StyleWang, M., Liang, X., & Li, Z. (2021). Research on the Evaluation Index System of the Soil Remediation Effect Based on Blockchain. Land, 10(11), 1274. https://doi.org/10.3390/land10111274