ZHANG Zeguo, YIN Jianchuan, WANG Nini, HU Jiangqiang, WANG Ning. A precise tidal prediction mechanism based on the combination of harmonic analysis and adaptive network-based fuzzy inference system model[J]. Acta Oceanologica Sinica, 2017, 36(11): 94-105. doi: 10.1007/s13131-017-1140-x
Citation: ZHANG Zeguo, YIN Jianchuan, WANG Nini, HU Jiangqiang, WANG Ning. A precise tidal prediction mechanism based on the combination of harmonic analysis and adaptive network-based fuzzy inference system model[J]. Acta Oceanologica Sinica, 2017, 36(11): 94-105. doi: 10.1007/s13131-017-1140-x

A precise tidal prediction mechanism based on the combination of harmonic analysis and adaptive network-based fuzzy inference system model

doi: 10.1007/s13131-017-1140-x
  • Received Date: 2017-02-25
  • Rev Recd Date: 2017-03-21
  • An efficient and accurate prediction of a precise tidal level in estuaries and coastal areas is indispensable for the management and decision-making of human activity in the field wok of marine engineering. The variation of the tidal level is a time-varying process. The time-varying factors including interference from the external environment that cause the change of tides are fairly complicated. Furthermore, tidal variations are affected not only by periodic movement of celestial bodies but also by time-varying interference from the external environment. Consequently, for the efficient and precise tidal level prediction, a neuro-fuzzy hybrid technology based on the combination of harmonic analysis and adaptive network-based fuzzy inference system (ANFIS) model is utilized to construct a precise tidal level prediction system, which takes both advantages of the harmonic analysis method and the ANFIS network. The proposed prediction model is composed of two modules:the astronomical tide module caused by celestial bodies' movement and the non-astronomical tide module caused by various meteorological and other environmental factors. To generate a fuzzy inference system (FIS) structure, three approaches which include grid partition (GP), fuzzy c-means (FCM) and sub-clustering (SC) are used in the ANFIS network constructing process. Furthermore, to obtain the optimal ANFIS based prediction model, large numbers of simulation experiments are implemented for each FIS generating approach. In this tidal prediction study, the optimal ANFIS model is used to predict the non-astronomical tide module, while the conventional harmonic analysis model is used to predict the astronomical tide module. The final prediction result is performed by combining the estimation outputs of the harmonious analysis model and the optimal ANFIS model. To demonstrate the applicability and capability of the proposed novel prediction model, measured tidal level samples of Fort Pulaski tidal station are selected as the testing database. Simulation and experimental results confirm that the proposed prediction approach can achieve precise predictions for the tidal level with high accuracy, satisfactory convergence and stability.
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  • Cakmakci M. 2007. Adaptive neuro-fuzzy modelling of anaerobic digestion of primary sedimentation sludge. Bioprocess and Biosystems Engineering, 30(5):349-357
    Chang F J, Lai H C. 2014. Adaptive neuro-fuzzy inference system for the prediction of monthly shoreline changes in northeastern Taiwan. Ocean Engineering, 84:145-156
    Chiu S L. 1994. Fuzzy model identification based on cluster estimation. Journal of Intelligent & Fuzzy Systems:Applications in Engineering and Technology, 2(3):267-278
    Clue V. 2004. Harmonic analysis. In:Proceedings of the 2004 IEEE Electro/Information Technology Conference. Milwaukee USA, 53-58
    Fang Guohong, Zheng Wenzhen, Chen Zongyong, et al. 1986. Analysis and Prediction of Tide and Tidal Currents (in Chinese). Beijing:China Ocean Press, 1-20
    Günaydın K. 2008. The estimation of monthly mean significant wave heights by using artificial neural network and regression methods. Ocean Engineering, 35(14–15):1406-1415
    Haykin S S. 1999. Neural Networks:A Comprehensive Foundation,:33-102
    He Shijun, Zhou Wenjun, Zhou Ruyan, et al. 2012. Study of tide prediction method influenced by nonperiodic factors based on support vector machines. Acta Oceanologica Sinica, 31(5):160-164
    Huang Wenrui, Murray C, Kraus N, et al. 2003. Development of a regional neural network for coastal water level predictions. Ocean Engineering, 30(17):2275-2295
    Jain P, Deo M C. 2007. Real-time wave forecasts off the western Indian coast. Applied Ocean Research, 29(1–2):72-79
    Jang J S R. 1993. ANFIS:adaptive-network-based fuzzy inference system. IEEE Transactions on Systems, Man, and Cybernetics, 23(3):665-685
    Jang J S R, Sun C T. 1995. Neuro-fuzzy modeling and control. Proceedings of the IEEE, 83(3):378-406
    Lee T L. 2004. Back-propagation neural network for long-term tidal predictions. Ocean Engineering, 31(2):225-238
    Lee T L. 2006. Neural network prediction of a storm surge. Ocean Engineering, 33(3–4):483-494
    Lee T L. 2008. Back-propagation neural network for the prediction of the short-term storm surge in Taichung harbor, Taiwan. Engineering Applications of Artificial Intelligence, 21(1):63-72
    Lee T L, Jeng D S. 2002. Application of artificial neural networks in tide-forecasting. Ocean Engineering, 29(9):1003-1022
    Lin Chunsheng, Deng Daxin, Ren Dekui. 2004. Adaptive AR model prediction filtering for ship hydraulic pressure signal on wind wave background. Haiyang Xuebao (in Chinese), 26(4):133-138
    Lu Xiaopeng, Ye Qingwei, L Cuilan. 2015. Tidal current prediction based on the sparse AR model. Journal of Marine Sciences, 33(2):14-18
    Mabrouk A B, Abdallah N B, Dhifaoui Z. 2008. Wavelet decomposition and autoregressive model for time series prediction. Applied Mathematics and Computation, 199(1):334-340
    Mekanik F, Imteaz M A, Talei A. 2016. Seasonal rainfall forecasting by adaptive network-based fuzzy inference system (ANFIS) using large scale climate signals. Climate Dynamics, 46(9-10):3097-3111
    Nezlin N P, Li Bailian. 2003. Time-series analysis of remote-sensed chlorophyll and environmental factors in the Santa Monica-San Pedro Basin off Southern California. Journal of Marine Systems, 39(3-4):185-202
    Ruano A E. 2005. Intelligent Control Systems Using Computational Intelligence Techniques,:219-252
    Stefanakos C. 2016. Fuzzy time series forecasting of nonstationary wind and wave data. Ocean Engineering, 121:1-12
    Takagi T, Sugeno M. 1985. Fuzzy identification of systems and its applications to modeling and control. IEEE Transactions on Systems, Man, and Cybernetics, SMC-15(1):116-132
    Xiao Bin, Qiao Fangli, Shu Qi. 2016. The performance of a z-level ocean model in modeling the global tide. Acta Oceanologica Sinica, 35(11):35-43
    Yetilmezsoy K, Özkaya B, Cakmakcı M. 2011. Artificial intelligence-based prediction models for environmental engineering. Neural Network World, 21(3):193-218
    Yin Jianchuan, Wang Nini. 2013. Online grey prediction of ship roll motion using variable RBFN. Applied Artificial Intelligence, 27(10):941-960
    Yin Jianchuan, Wang Nini. 2015. A variable multidimensional fuzzy model and its application to online tidal level prediction. Journal of Computational and Theoretical Nanoscience, 12(7):1384-1394
    Yin Jianchuan, Wang Nini. 2016. An online sequential extreme learning machine for tidal prediction based on improved Gath-Geva fuzzy segmentation. Neurocomputing, 174:85-98
    Yin Jianchuan, Zou Zaojian, Xu Feng. 2013. Sequential learning radial basis function network for real-time tidal level predictions. Ocean Engineering, 57:49-55
    Yin Jianchuan, Zou Zaojian, Xu Feng, et al. 2014. Online ship roll motion prediction based on grey sequential extreme learning machine. Neurocomputing, 129:168-174
    Young P, Shellswell S. 1972. Time series analysis, forecasting and control. IEEE Transactions on Automatic Control, 17(2):281-283
    Zhao Yingjie, Li Mingchang, Li Guanglou, et al. 2014. Time series correlation analysis of pollution in marine environment waters. Applied Mechanics and Materials, 522-524:52-55
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