The least-square Fourier-series model-based evaluation and forecasting of monthly average water-levels

被引:0
作者
Zong-chang Yang
机构
[1] Hunan University of Science and Technology,School of Information and Electrical Engineering
来源
Environmental Earth Sciences | 2018年 / 77卷
关键词
Water-level fluctuation; Fourier analysis; Least-square fitting; Evaluation; Forecasting;
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学科分类号
摘要
Water-level fluctuation evaluation and forecasting for a river is increasingly important because of its close ties to human living and production. In this study, with annual periodic extension for monthly average water-level fluctuation, Fourier analysis employing finite Fourier series is presented for evaluating its fluctuation. Fourier analysis in the conventional form which is the most common analysis method in the frequency domain, however, cannot be straightly applied for forecasting. Then, the extended version of the Fourier-series model in the least-square sense is proposed for forecasting. The extended forecasting model obtains its optimum Fourier coefficients in the least-squares based on previous monthly water-level observations. Experiments at the different monitoring stations of the Yangtze River in China indicate potentiality of the proposed method. It is shown that the fluctuation of monthly average water-level is well described by about six-term harmonics. And the extended Fourier forecasting model predicts the fluctuation of monthly water level most fitting about three-term harmonics.
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  • [1] Acreman MC(1993)Modelling the decline in water level of Lake Toba, Indonesia Adv Water Resour 16 207-222
  • [2] Meigh JR(2011)Fuzzy neural networks for water level and discharge forecasting with uncertainty Environ Model Softw 26 523-537
  • [3] Sene KJ(2014)Water level stabilization in open channels using Chebyshev polynomials and teaching–learning-based optimization J Hydroinform 63 381-396
  • [4] Alvisi S(2005)Neural networks and M5 model trees in modelling water level-discharge relationship Neurocomputing 499 289-302
  • [5] Franchini M(2014)Analysis of transboundary Dojran Lake mean annual water level changes Environ Earth Sci 27 4469-4492
  • [6] Baghlani A(2013)Characterisation of hydrogeological connections in a lowland karst network using time series analysis of water levels in ephemeral groundwater-fed lakes (turloughs) J Hydrol 6 218-230
  • [7] Bhattacharya B(2013)Prediction of Urmia Lake water-level fluctuations by using analytical, linear statistic and intelligent methods Water Resour Manag 400 490-500
  • [8] Solomatine DP(2014)Improving applicability of neuro-genetic algorithm to predict short-term water level: a case study J Hydroinform 115 1522-1531
  • [9] Bonacci O(2011)Modeling the impact of in-stream water level fluctuations on stream-aquifer interactions at the regional scale J Hydrol 443 93-103
  • [10] Popovska C(2011)Inter-comparison study of water level estimates derived from hydrodynamic-hydrologic model and satellite altimetry for a complex deltaic environment Remote Sens Environ 39 81-102