References
- Y. Wei, C. Huang, J. Li, L. Xie, An evaluation model for urban
carrying capacity: a case study of China’s mega-cities, Habitat
Int., 53 (2016) 87–96.
- Y. Jiang, China’s water scarcity, J. Environ. Manage., 90 (2009)
3185–3196.
- S.G. Li, Research on carrying capacity of urban water resource
and its adjusting method (PhD dissertation), Peking University,
Beijing, China, 2003 (in Chinese).
- L.N. Zheng, R.B. Lin, Analysis of water Pollution in China in
Recent Years, Guide of Sci-tech Magazine, Vol. 5, 2012, p. 246 (in
Chinese).
- X.X. Song, H.W. Yan, B.H. Tian, Analysis of pollution in Haihe
River and its conventional indicators, South-to-North Water
Divers, Water Sci. Technol., 10 (2012) 98–101 (in Chinese).
- Y.H. Jia, S.X. Liu, Analysis and discussion on the dissolved
oxygen pollution index of environmental quality assessment,
China Chem. Trade, 6 (2012) 213–213 (in Chinese).
- Y.C. Chen, F.U. Jian, Z.W. Liu, Analysis of the variety and
impact factors of dissolved oxygen downstream of Three
Gorges Dam after the impoundment, Adv. Water Sci., 20 (2009)
526–530.
- J. Huan, X. Liu, Dissolved oxygen prediction in water based on
K-means clustering and ELM neural network for aquaculture,
Trans. Chin. Soc. Agric. Eng., 32 (2016) 174–181.
- B. Bai, B. Yoo, X.Q. Deng, I. Kim, D.H. Gao, Linking routines
to the evolution of IT capability on agent-based modeling and
simulation: a dynamic perspective, J. Comput. Math. Organ.
Theory, 22 (2016) 184–211.
- S.Y. Liu, L.Q. Xu, Y. Jiang, D.L. Li, Y.Y. Chen, Z.B. Li, A hybrid
WA–CPSO-LSSVR model for dissolved oxygen content
prediction in crab culture, Eng. Appl. Artif. Intell., 29 (2014)
114–124.
- J.S. Matos, E.D.R. Sousa, Prediction of dissolved oxygen
concentration along sanitary sewers, Water Sci. Technol.,
34 (1996) 525–532.
- K.P. Singh, S. Gupta, P. Rai, Predicting dissolved oxygen
concentration using kernel regression modeling approaches
with nonlinear hydro-chemical data, Environ. Monit. Assess.,
186 (2014) 2749–2765.
- W.L. Li, Z.N. Wei, G.Q. Sun, Multi-interval wind speed forecast
model based on improved spatial correlation and RBF neural
network, Electr. Power Autom., 29 (2009) 89–92.
- S. Pritpal, B. Bhogeswar, An efficient time series forecasting
model based on fuzzy time series, Eng. Appl. Artif. Intell.,
26 (2013) 2443–2457.
- S. Heddam, Modeling hourly dissolved oxygen concentration
(DO) using two different adaptive neuro-fuzzy inference
systems (ANFIS): a comparative study, Environ. Monit. Assess.,
186 (2014) 597–619.
- O. Meryem, J. Ismail, E.M. Mohammed, A Comparative Study
of Predictive Algorithms for Time Series Forecasting, IEEE
5th International Conference on Information Science and
Technology (ICIST), Changsha, China, 2015, pp. 68–73.
- L. Chen, J.M. Liu, X.X. Liu, Application of support vector
machine in the ground water quality evaluation, J. Northwest
A&F Univ. (Nat. Sci. Ed.), 8 (2010) 221–226.
- P.J. García Nieto, E. García-Gonzalo, J.R. Alonso Fernández,
C. Díaz Muñiz, Hybrid PSO–SVM-based method for long-term
forecasting of turbidity in the Nalón river basin: a case study in
Northern Spain, Ecol. Eng., 73 (2014) 192–200.
- H. Huang, W.X. Lu, Assessment of water quality based on
support vector machine model, Water Saving Irrig., 2 (2012)
57–63.
- X.C. Liang, Y.B. Gong, D. Xiao, Novel method for water quality
prediction based on multi-kernel weighted support vector
machine, J. Southeast Univ., 41 (2011) 14–17.
- S. Roghayeh, M.Z. Rahm, S. Karim, V.D. Patrick, Use of
support vector machines (SVMs) to predict distribution of
an invasive water fern Azolla filiculoides (Lam.) in Anzali
wetland, southern Caspian Sea, Iran, Eco. Modell., 244 (2012)
117–126.
- H. Yang, S.P. Gu, M.D. Cui, Forecast of short-term wind speed
in wind farms based on GA optimized LS-SVM, Power Syst.
Prot. Control., 39 (2011) 44–48.
- S. Palani, S.Y. Liong, P. Tkalich, Development of a neural
network model for dissolved oxygen in seawater, Indian J. Mar.
Sci., 38 (2009) 151–159.
- Y.R. Xiang, L.Z. Jiang, Water Quality Prediction Using LS-SVM
With Particle Swarm Optimization, IEEE 2nd International
Workshop on Knowledge Discovery and Data Mining, Moscow,
Russia, 2009, pp. 900–904.
- G.N. Kariniotakis, G.S. Stavrakakis, E.F. Nogaret, Wind power
forecasting using advanced neural networks models, IEEE
Trans. Energy Convers., 11 (1996) 762–767.
- P. Fang, R.H. Shao, Q.Y. Si, J. Ren, The application of least
squares support vector machine regression in water quality
forecast of Xi’an Ba River, Syst. Eng., 6 (2011) 113–116.
- T. He, P. Chen, Prediction of Water-quality Based on
Wavelet Transform Using Vector Machine, IEEE: 2010 Ninth
International Symposium on Distributed Computing and
Applications to Business, Engineering and Science (DCABES),
HongKong, 2010, pp. 76–81.
- X. Wang, J. Lv, D. Xie, A Hybrid Approach of Support Vector
Machine With Particle Swarm Optimization for Water Quality
Prediction, IEEE 2010 5th International Conference on
Computer Science & Education (ICCSE), Hefei, China, 2010,
pp. 1158–1163.
- R.Z. Li, Advance and trend analysis of theoretical methodology
for water quality forecast, J. Hefei Univ. Technol., 29 (2006) 26–30.
- I. Partalas, G. Tsoumakas, E.V. Hatzikos, I. Vlahavas, Greedy
regression ensemble selection: theory and an application to
water quality prediction, Inform. Sci., 178 (2008) 3867–3879.
- K. Hojat, K. Sohrab, R. Mohammad, F. Saeed, Predicting
discharge coefficient of triangular labyrinth weir using support
vector regression, support vector regression-firefly, response
surface methodology and principal component analysis, Flow.
Meas. Instrum., 55 (2017) 75–81.
- L. Tang, A.Y. Wang, Z.J. Xu, J. Li, Online-purchasing behavior
forecasting with a firefly algorithm-based SVM model
considering shopping cart use, Eurasia J. Math. Sci. Technol.
Ed., 13 (2017) 7967–7983.
- E. Ceperic, V. Ceperic, A. Baric, A strategy for short-term load
forecasting by support vector regression machines, IEEE Trans.
Power Syst., 28 (2013) 4356–4364.
- F. Chen, B. Tang, R. Chen, A novel fault diagnosis model for
gearbox based on wavelet support vector machine with immune
genetic algorithm, Measurement, 46 (2013) 220–232.
- W.C. Hong, Traffic flow forecasting by seasonal SVR with
chaotic simulated annealing algorithm, Neurocomputing,
74 (2011) 2096–2107.
- C.N. Ko, C.M. Lee, Short-term load forecasting using SVR
(support vector regression)-based radial basis function neural
network with dual extended Kalman filter, Energy, 49 (2013)
413–422.
- R.J. Liao, H.B. Zheng, G. Stanislaw, L.J. Yang, Particle swarm
optimization-least squares support vector regression based
forecasting model on dissolved gases in oil-filled power
transformers, Electr. Power Syst. Res., 84 (2011) 2074–2080.
- H.M. Sheng, J. Xiao, Electric vehicle state of charge estimation:
nonlinear correlation and fuzzy support vector machine,
J. Power Sources, 281 (2015) 131–137.
- Z. Wun, H. Zhang, J.H. Liu, A fuzzy support vector machine
algorithm for classification based on a novel PIM fuzzy
clustering method, Neurocomputing, 125 (2014) 119–124.
- X.J. Liu, Z.Q. Mi, Q.X. Yang, Wind speed forecasting based on
EMD and time series analysis, Acta Energiae Solaris Sinica,
31 (2010) 1037–1041.
- Q. Ouyang, W.X. Lu, X. Xin, Y. Zhang, W.G. Cheng, T. Yu,
Monthly rainfall forecasting using EEMD-SVR based on
phase-space reconstruction, Water Resour. Manage., 30 (2016)
2311–2325.
- N. Ramesh Babu, B. Jagan Mohan, Fault classification in power
systems using EMD and SVM, Ain Shams Eng. J., 8 (2017)
103–111.
- L. Ye, P. Liu, Combined Model Based on EMD-SVM for
Short-Term Wind Power Prediction, Proc. CSEE., 31 (2011)
102–108.
- H.Q. Li, X.F. Wang, L. Chen, E.B. Li, Denoising and R-peak
detection of electrocardiogram signal based on EMD and
improved approximate envelope, Circuits Syst. Signal Process.,
33 (2014) 1261–1276.
- D. Boutte, B. Santhanam, A Feature Weighted Hybrid ICASVM
Approach to Automatic Modulation Recognition, IEEE
13th Digital Signal Processing Workshop and 5th IEEE Signal
Processing Education Workshop, Marco Island, United States,
16 (2009) 399–403.
- J.G. Chen, Z.X. Zhang, Z.G. Guo, Application of independent
component analysis in empirical mode decomposition, J. Vib.
Shock, 28 (2009) 109–111.
- P. Nirmal Kumar, H. Kareemullah, EEG Signal with Feature
Extraction Using SVM and ICA Classifiers, IEEE: International
Conference on Information Communication and Embedded
Systems (ICICES2014), Tokyo, Japan, 2014, pp. 1–7.
- B. Sun, Short-Term Wind Speed Forecasting Based on FastICA
Algorithm and Improved LSSVM Model, Proc. CSU-EPSA.,
26 (2014) 22–27.
- H. Shao, X.H. Shi, L. Li, Power signal separation in milling
process based on wavelet transform and independent
component analysis, Int. Int. J. Mach. Tools Manuf., 51 (2011)
701–710.
- J. Li, Prevention and cure on Haihe valley’s pollution,
J. Changchun Normal Univ., 10 (2008) 20.
- H.Y. Wang, J. Teng, J. Zhang, Reason analysis of the high DO in
winter of Haihe River in Tianjin, Urban Environ. Urban Ecol.,
18 (2005) 27–28 (in Chinese).
- Y.G. Wei, C. Huang, P.T.I. Lam, Y. Sha, Y. Feng, Using urbancarrying
capacity as a benchmark for sustainable urban
development: an empirical study of Beijing, Sustainability,
7 (2015) 3244–3268.
- Y. Li, Y.G. Wei, S.Q. Shan, Y. Tao, Pathways to a low-carbon
economy: estimations on macroeconomic costs and potential
of carbon emission abatement in Beijing, J. Cleaner Prod.,
199 (2018) 603–615.
- Y.G. Wei, C. Huang, P.T.I. Lam, Z.Y. Yuan, Sustainable urban
development: a review on urban carrying capacity assessment,
Habitat Int., 46 (2015) 64–71.
- Y.G. Wei, Y. Li, M.Y. Wu, Y. Li, The decomposition of total-factor
CO2 emission efficiency of 97 contracting countries in Paris
agreement, Energy Econ., 2019 (78) 365–378.
- Y.G. Wei, Z.C. Wang, H.W. Wang, T. Yao, Y. Li, Promoting
inclusive water governance and forecasting the structure of
water consumption based on compositional data: a case study
of Beijing, Sci. Total Environ., 634 (2018) 407–416.