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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