Using ANFIS and BPNN Methods to Predict the Unfrozen Water Content of Saline Soil in Western Jilin, China
Abstract
:1. Introduction
2. Test of Unfrozen Water Content
2.1. Samples Preparation
- The physical and chemical properties of the saline soil samples were tested;
- Salt was removed from the saline soil samples with deionized distilled water;
- The samples were prepared using deionized distilled water and soluble salt (a salt mixture of sodium sulfate and sodium carbonate, with a ratio of 2.8:1). After the salt in the saline soil was washed out, the sample was prepared according to the preset salt content and water content (Table 1);
- After the samples were well prepared, the samples were placed in a sealed fresh-keeping bag for 24 h, so that the solution was evenly distributed in the samples;
- The sample was prepared to the following size: 25 mm in diameter with a height of 50 mm, and about 70 g in weight.
2.2. Test Result
2.2.1. Varied Initial Water Content and Fixed Salt Content
2.2.2. Fixed Initial Water Content and Varied Salt Content
2.2.3. Freezing and Melting Process
3. Numerical Simulation
3.1. Numerical Simulation Based on a BP Neural Network
3.1.1. Determining the Network Structure
3.1.2. Input Layer and Output Layer
3.1.3. Number of Hidden Layer Nodes
3.1.4. Implementation Process
- Sample data were normalized, as shown in Equation (2);
- Sample data were classified;
- The BP neural network was established;
- Training was performed;
- After the training was completed, testing was carried out;
- Error analysis and result prediction were performed.
3.2. Numerical Simulation Based on an Adaptive Fuzzy Neural Inference System (FIS)
3.2.1. The Fuzzy Inference System
3.2.2. The Adaptive Network-Based Fuzzy Inference System (ANFIS)
4. Results and Discussion
5. Conclusions
- During the freezing process, the saline soil mainly experienced three stages: High temperature, mutation, and stability. When the content of salt was fixed, the greater the initial water content, the greater the content of unfrozen water. The content of unfrozen water decreased with decreasing temperature and eventually tended to stabilize.
- During the freezing process, the salt content was inversely proportional to the freezing point, and the ice point was reduced with increasing of salt content. As the temperature decreased, the content of unfrozen water was high in the samples with high salt content.
- In the process of freezing and melting, the content of unfrozen water decreased with decreasing temperature and increased with increasing temperature. At temperatures below freezing point, the unfrozen water content during the freezing process was always greater than that during the melting process, and the unfrozen water content showed as hysteresis phenomenon.
- The comparison shows that both BPNN and ANFIS prediction models can predict the unfrozen water content well. However, the accuracy of the two models was evaluated by way of their mean square error, mean absolute percentage error, and correlation coefficient. The ANFIS model had greater accuracy than did the BPNN. The ANFIS prediction model is more suitable for predicting the unfrozen water content in saline soil areas of Western Jilin.
- The research shows that the ANFIS can be utilized for predicting unfrozen water content, and the model will be further applied to studying water and salt migration in frozen soil. The research results will contribute to soil and water conservation, soil improvement, and engineering construction in the saline soil area of Western Jilin, which is conducive to the restoration of the ecological environment and the sustainable development of economy and construction.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
- Andersland, O.B.; Ladanyi, B. An Introduction to Frozen Ground Engineering; ASCE & John Wiley & Sons: New York, NY, USA, 1994. [Google Scholar]
- Liu, H.Q.; Xu, J.W.; Wu, X.Q. Present situation and tendency of saline-alkali soil in west Jilin Province. J. Geogr. Sci. 2001, 11, 321–328. [Google Scholar]
- Wang, C.Y.; Wu, Z.J.; Shi, Y.L.; Wang, R.Y. The Resource of Saline Soil in the Northeast China. Chin. J. Soil Sci. 2004, 35, 643–647. [Google Scholar]
- Bao, S.C.; Wang, Q.; Wang, W.H.; Wang, Z.J. Influence of freezing-thawing process on dispersibility of cohesive soil in western Jilin seasonal frozen region. J. Heilongjiang Hydraul. Eng. Coll. 2014, 5, 155–160. [Google Scholar]
- Zhang, X.D.; Wang, Q.; Li, P.F.; Wang, R.Y. Research on Soil Dispersion of Qian’an Soil Forest. J. Northeast. Univ. (Nat. Sci.) 2015, 36, 1643–1647. [Google Scholar]
- Niu, C.C.; Wang, Q.; Wang, W.H.; Zhang, Y.G.; Ye, C. Research on Moisture Migration Experiment of Seasonally Frozen Zone Saline Soil. Adv. Mater. Res. 2015, 1065–1069, 168–171. [Google Scholar] [CrossRef]
- Zhang, X.D.; Wang, Q.; Wang, G.; Wang, W.H.; Chen, H.; Zhang, Z.Q. A study on the coupled model of hydrothermal-salt for saturated freezing salinized soil. Math. Probl. Eng. 2017, 2017, 4918461. [Google Scholar] [CrossRef]
- Zhang, Z.H.; Ma, H.W.; Liu, Q.; Zhu, W.; Zhang, T.X. Development and Drives of Land Salinization in Songnen Plain. Geol. Resour. 2007, 16, 120–124. [Google Scholar]
- Bao, S.C.; Wang, Q.; Bao, X.H.; Wang, Z.J. Characters of saline-alkali soil in western Jilin and biological treatment. J. Pure Appl. Microbiol. 2013, 7, 809–812. [Google Scholar]
- Wang, Q.; Liu, Y.F.; Liu, S.W. Evolution Law of Material Properties Under Multi Field Effect of Saline Soil in Western Jilin Province. J. Jilin Univ. (Earth Sci. Ed.) 2017, 47, 807–817. [Google Scholar]
- Baker, J.M. Water Relations in Frozen Soil. Encycl. Soil Sci. 2006, 1, 1858–1859. [Google Scholar]
- Zhang, X.D.; Liu, S.W.; Wang, Q.; Wang, G.; Liu, Y.F. Experimental investigation of water migration characteristics for saline soil. Pol. J. Environ. Stud. 2019, 28, 1–11. [Google Scholar] [CrossRef]
- Zhang, X.D.; Wang, Q.; Yu, T.W.; Wang, G.; Wang, W.H. Numerical study on the multifield mathematical coupled model of hydraulic-thermal-salt-mechanical in saturated freezing saline soil. Int. J. Geomech. 2018, 18, 04018064. [Google Scholar] [CrossRef]
- Kolaian, J.H.; Low, P.F. Calorimetric determination of unfrozen water in montmorillonite pastes. Soil Sci. 1963, 95, 376–384. [Google Scholar] [CrossRef]
- Williams, P.J. Unfrozen water content of frozen soils and soil moisture suction. Géotechnique 1964, 14, 231–246. [Google Scholar] [CrossRef]
- Zegelin, S.J.; White, I.; Jenkins, D.R. Improved field probes for soil water content and electrical conductivity measurement using time domain reflectometry. Water Resour. Res. 1989, 25, 2367–2376. [Google Scholar] [CrossRef]
- Azmatch, T.F.; Sego, D.C.; Arenson, L.U.; Biggar, K.W. Using soil freezing characteristic curve to estimate the hydraulic conductivity function of partially frozen soils. Cold Reg. Sci. Technol. 2012, 83–84, 103–109. [Google Scholar] [CrossRef]
- Wen, Z.; Feng, W.; Deng, Y.; Wang, D.; Fan, Z.; Zhou, C. Experimental study on unfrozen water content and soil matric potential of qinghai-tibetan silty clay. Environ. Earth Sci. 2012, 66, 1467–1476. [Google Scholar] [CrossRef]
- Watanabe, K.; Wake, T. Measurement of unfrozen water content and relative permittivity of frozen unsaturated soil using NMR and TDR. Cold Reg. Sci. Technol. 2009, 59, 34–41. [Google Scholar] [CrossRef]
- Long, T.; Wei, C.F.; Tian, H.H.; Zhou, J.Z.; Wei, H.Z. Experimental study of unfrozen water content of frozen soils by low-field nuclear magnetic resonance. Rock Soil Mech. 2015, 36, 1566–1572. [Google Scholar]
- Adeli, H. Neural networks in civil engineering: 1989–2000. Comput. Aided Civ. Infrastruct. Eng. 2010, 16, 126–142. [Google Scholar] [CrossRef]
- Wang, B.; Man, T.; Jin, H. Prediction of expansion behavior of self-stressing concrete by artificial neural networks and fuzzy inference systems. Construct. Build. Mater. 2015, 84, 184–191. [Google Scholar] [CrossRef]
- Zhang, X.D.; Wang, Q.; Huo, Z.S.; Yu, T.W.; Wang, G.; Liu, T.B.; Wang, W.H. Prediction of frost-heaving behavior of saline soil in western jilin province, china, by neural network methods. Math. Probl. Eng. 2017, 2017, 7689415. [Google Scholar] [CrossRef]
- Mohamad, E.T.; Armaghani, D.J.; Momeni, E. Prediction of the unconfined compressive strength of soft rocks: A pso-based ann approach. Bull. Eng. Geol. Environ. 2014, 74, 745–757. [Google Scholar] [CrossRef]
- Brown, D.A.; Murthy, P.L.N. Computational simulation of composite play micromechanics using artificial neural networks. Microcomput. Civ. Eng. 1991, 6, 87–97. [Google Scholar] [CrossRef]
- Theocaris, P.S.; Panagiotopoulos, P.D. Generalised hardening plasticity approximated via anisotropic elasticity: A neural network approach. Comput. Methods Appl. Mechan. Eng. 1995, 125, 123–139. [Google Scholar] [CrossRef]
- Bi, Z.; Ma, J.; Pan, X.; Wang, J.; Shi, Y. ANFIS-Based modeling for photovoltaic characteristics estimation. Symmetry 2016, 8, 96. [Google Scholar] [CrossRef]
- Fujitani, H.; Midorikawa, M.; Iiba, M.; Kitagawa, Y.; Miyoshi, T.; Kawamura, H. Seismic response control tests and simulations by fuzzy optimal logic of building structures. Eng. Struct. 1998, 20, 164–175. [Google Scholar] [CrossRef]
- Habibagahi, G. Post-construction settlement of rockfill dams analyzed via adaptive network-based fuzzy inference systems. Comput. Geotech. 2002, 29, 211–233. [Google Scholar] [CrossRef]
- Watanabe, K.; Mizoguchi, M. Amount of unfrozen water in frozen porous media saturated with solution. Cold Reg. Sci. Technol. 2002, 34, 103–110. [Google Scholar] [CrossRef]
- Dongyang, L.I.; Liu, B.; Liu, N.; Yongjun, M.A.; Wang, L. A method to save the determining time of unfrozen water within frozen soil by nuclear magnetic resonance. J. Glaciol. Geocryol. 2014, 36, 1502–1507. [Google Scholar]
- Bittelli, M.; Flury, M.; Campbell, G.S. A thermodielectric analyzer to measure the freezing and moisture characteristic of porous media. Water Resour. Res. 2003, 39. [Google Scholar] [CrossRef] [Green Version]
- Wang, L.X.; Hu, Q.L.; Ling, X.Z.; Cai, D.S.; Xu, X.Y. Test study on unfrozen water content and thermal parameters of qinghai-tibet railway frozen silty clay. J. Harbin Inst. Technol. 2017, 39, 1660–1663. [Google Scholar]
- Xu, X.Z.; Wang, J.C.; Zhang, L.X. Permafrost Physics; The Science Publishing Company: Beijing, China, 2001. [Google Scholar]
- Fu, H.X. Application Design of MATLAB Neural Network; Machine Press: Beijing, China, 2010. [Google Scholar]
- Zhao, Z.; Xu, Y. Introduction to Fuzzy Theory and Neural Networks and Their Application; Tsinghua University Press: Beijing, China, 1996. [Google Scholar]
- Firat, M.; Gungor, M. Generalized regression neural networks and feed forward neural networks for prediction of scour depth around bridge piers. Adv. Eng. Softw. 2009, 40, 731–737. [Google Scholar] [CrossRef]
- Takagi, T.; Sugeno, M. Fuzzy identification of systems and its applications to modeling and control. IEEE Trans. Syst. Man Cybern. 1985, SMC-15, 116–132. [Google Scholar] [CrossRef]
- Zadeh, L.A. Fuzzy sets. Inf. Control 1965, 8, 338–353. [Google Scholar] [CrossRef] [Green Version]
Sample | Initial Water Content (%) | Salt Content (%) | Mass Percentage Concentration (%) |
---|---|---|---|
1 | 24 | 0 | 0 |
2 | 24 | 1.5 | 5.9 |
3 | 24 | 3 | 11.1 |
4 | 19 | 1.5 | 7.3 |
Samples | 1 | 2 | 3 | 4 | ||
---|---|---|---|---|---|---|
Wu (%) | ||||||
T (°C) | ||||||
−0.2 | 23.65 | 22.86 | 23.15 | 17.20 | ||
−0.5 | 23.38 | 23.13 | 23.45 | 17.18 | ||
−1 | 23.12 | 22.56 | 22.73 | 17.11 | ||
−3 | 5.73 | 22.27 | 22.65 | 16.87 | ||
−5 | 4.59 | 22.09 | 21.86 | 16.76 | ||
−10 | 2.94 | 6.38 | 15.08 | 6.39 | ||
−15 | 2.22 | 3.92 | 9.37 | 4.05 | ||
−20 | 1.60 | 2.66 | 9.08 | 2.90 |
Water Content (%) | Salt Content (%) | Temperature (°C) | Unfrozen Water Content (%) | |
---|---|---|---|---|
Maximum | 24 | 1.5 | −0.2 | 23.65 |
Minimum | 19 | 0 | −20 | 1.6 |
Range | 5 | 1.5 | 19.8 | 22.05 |
Variable properties | Input | Input | Input | Output |
Measured Value (%) | BPNN | ANFIS | ||
---|---|---|---|---|
Predictive Value (%) | Relative Error (%) | Predictive Value (%) | Relative Error (%) | |
23.65 | 23.56 | 0.36 | 23.93 | 1.21 |
23.15 | 22.83 | 1.42 | 23.31 | 0.66 |
17.20 | 17.28 | 0.48 | 17.29 | 0.55 |
23.38 | 23.41 | 0.13 | 24.05 | 2.88 |
23.45 | 22.81 | 2.72 | 23.13 | 1.35 |
17.18 | 17.03 | 0.87 | 17.05 | 0.79 |
23.12 | 22.44 | 2.95 | 22.02 | 4.75 |
22.73 | 22.78 | 0.19 | 22.92 | 0.83 |
17.11 | 16.75 | 2.07 | 17.15 | 0.27 |
5.73 | 6.71 | 17.11 | 6.05 | 5.55 |
22.27 | 23.01 | 3.34 | 22.27 | 0.00 |
22.65 | 22.57 | 0.34 | 22.62 | 0.12 |
4.59 | 3.83 | 16.50 | 4.34 | 5.52 |
22.09 | 21.23 | 3.89 | 22.09 | 0.00 |
21.86 | 22.12 | 1.18 | 21.87 | 0.03 |
16.76 | 16.77 | 0.05 | 16.75 | 0.06 |
2.94 | 3.18 | 8.50 | 3.06 | 4.37 |
6.38 | 7.34 | 14.96 | 6.38 | 0.01 |
15.08 | 15.04 | 0.32 | 15.08 | 0.01 |
6.39 | 7.04 | 10.14 | 6.40 | 0.09 |
2.22 | 2.79 | 26.01 | 2.04 | 7.84 |
4.05 | 3.77 | 6.88 | 4.04 | 0.21 |
1.60 | 1.66 | 3.64 | 1.71 | 7.33 |
2.66 | 2.06 | 22.31 | 2.66 | 0.00 |
9.08 | 8.33 | 8.32 | 9.08 | 0.00 |
2.90 | 2.82 | 2.67 | 2.91 | 0.20 |
Mean absolute percentage error | - | 6.05 | - | 1.72 |
Maximum relative error | - | 26.01 | - | 7.84 |
Measured Value (%) | BPNN | ANFIS | ||
---|---|---|---|---|
Predictive Value (%) | Relative Error (%) | Predictive Value (%) | Relative Error (%) | |
22.86 | 23.30 | 1.95 | 25.07 | 9.69 |
23.13 | 23.32 | 0.81 | 24.03 | 3.91 |
22.56 | 23.32 | 3.36 | 22.91 | 1.54 |
16.87 | 17.07 | 1.18 | 19.36 | 14.79 |
3.92 | 3.73 | 4.87 | 5.04 | 28.51 |
9.37 | 3.14 | 66.43 | 10.25 | 9.44 |
Mean absolute percentage error | - | 13.10 | - | 11.31 |
Maximum relative error | - | 66.43 | - | 28.51 |
Statistics Parameters | BPNN | ANFIS | ||
---|---|---|---|---|
Training Set | Testing Set | Training Set | Testing Set | |
R2 | 0.9965 | 0.9444 | 0.9988 | 0.9897 |
MSE | 5.366 × 10−4 | 1.360 × 10−2 | 1.704 × 10−4 | 4.833 × 10−3 |
Statistics Parameters | R2 | p-Value | MSE | MAPE | ||||
---|---|---|---|---|---|---|---|---|
Model | BPNN | ANFIS | BPNN | ANFIS | BPNN | ANFIS | BPNN | ANFIS |
k = 1 | 0.9939 | 0.9933 | 6.06 × 10−27 | 1.61 × 10−26 | 9.32 × 10−4 | 9.78 × 10−4 | 6.29 | 7.52 |
k = 2 | 0.9938 | 0.9965 | 4.98 × 10−28 | 5.76 × 10−31 | 9.26 × 10−4 | 5.11 × 10−4 | 7.22 | 5.63 |
k = 3 | 0.9944 | 0.9857 | 1.42 × 10−28 | 1.20 × 10−23 | 9.11 × 10−4 | 1.87 × 10−3 | 7.49 | 9.68 |
k = 4 | 0.994 | 0.9978 | 4.73 × 10−27 | 3.70 × 10−32 | 9.48 × 10−4 | 3.25 × 10−4 | 7.75 | 7.25 |
k = 5 | 0.9938 | 0.9968 | 4.90 × 10−28 | 1.68 × 10−31 | 9.11 × 10−4 | 4.61 × 10−4 | 7.31 | 5.65 |
average value | 0.9940 | 0.9940 | - | - | 9.26 × 10−4 | 8.30 × 10−4 | 7.21 | 7.15 |
Statistics Parameters | R2 | p-Value | MSE | MAPE | ||||
---|---|---|---|---|---|---|---|---|
Model | BPNN | ANFIS | BPNN | ANFIS | BPNN | ANFIS | BPNN | ANFIS |
k = 1 | 0.6309 | 0.8728 | 0.0329 | 0.0021 | 7.86 × 10−2 | 1.92 × 10−2 | 54.55 | 41.98 |
k = 2 | 0.5378 | 0.9667 | 0.0972 | 0.0004 | 9.61 × 10−2 | 8.44 × 10−3 | 59.28 | 15.56 |
k = 3 | 0.9809 | 0.9763 | 0.0001 | 0.0002 | 7.20 × 10−3 | 4.62 × 10−3 | 22.84 | 25.30 |
k = 4 | 0.7302 | 0.3723 | 0.0143 | 0.1457 | 3.17 × 10−2 | 8.37 × 10−2 | 27.15 | 38.65 |
k = 5 | 0.942 | 0.9816 | 0.0013 | 0.0001 | 1.19 × 10−3 | 3.86 × 10−3 | 14.84 | 9.16 |
average value | 0.7643 | 0.8339 | - | - | 4.51 × 10−2 | 2.40 × 10−2 | 35.73 | 26.13 |
© 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
Share and Cite
Liu, Y.; Wang, Q.; Zhang, X.; Song, S.; Niu, C.; Shangguan, Y. Using ANFIS and BPNN Methods to Predict the Unfrozen Water Content of Saline Soil in Western Jilin, China. Symmetry 2019, 11, 16. https://doi.org/10.3390/sym11010016
Liu Y, Wang Q, Zhang X, Song S, Niu C, Shangguan Y. Using ANFIS and BPNN Methods to Predict the Unfrozen Water Content of Saline Soil in Western Jilin, China. Symmetry. 2019; 11(1):16. https://doi.org/10.3390/sym11010016
Chicago/Turabian StyleLiu, Yufeng, Qing Wang, Xudong Zhang, Shengyuan Song, Cencen Niu, and Yunlong Shangguan. 2019. "Using ANFIS and BPNN Methods to Predict the Unfrozen Water Content of Saline Soil in Western Jilin, China" Symmetry 11, no. 1: 16. https://doi.org/10.3390/sym11010016