Tidal prediction using time series analysis of Buoy observations

Authors

  • Parvazi, Kamal University of Tehran
  • Namazi, Bahare University of Tehran
  • Sharifi, Mohammad Ali University of Tehran
Abstract:

Although tidal observations which are extracted from coastal tide gages, have higher accuracy due to their higher sampling rate, installing these types of gages can impose some spatial limitation since we cannot use every part of sea to install them. To solve this limitation, we can employ satellite altimetry observations. However, satellite altimetry observations have lower sampling rate. According to spatial limitation in installing tide gages and lower rate of satellite altimetry observations, we need observation as along with gathered information which can solve those two main margins. Buoy observations not only for its higher accuracy and sampling rate, but also because of its exclusive features can let us observe further coastal regions to record sea level observations. In this study, buoy observations are analyzed using Least Square Harmonic Estimation (LS-HE) method. According to this, important frequencies in those data can be extracted. This process is equally important in Tidal modeling as well as prediction. Tidal modeling and prediction are based on frequency which is derived from observations. In this contribution, time-series data of 57 buoy stations from 2005 to 2017 are processed and a list of important frequencies is prepared. In the following, the comparison between tidal prediction modeling extracted from buoy and tide gage observation was made by using this frequency list. Tide prediction of all the stations during a month was made according to important frequency list extracted in this study. The average RMSE for predicted data in buoy stations has been about 6 cm. Finally, to validate buoy’s data, comparison between buoy and tide gage data was made which represents about 9 cm difference in sea level prediction.

Upgrade to premium to download articles

Sign up to access the full text

Already have an account?login

similar resources

a time-series analysis of the demand for life insurance in iran

با توجه به تجزیه و تحلیل داده ها ما دریافتیم که سطح درامد و تعداد نمایندگیها باتقاضای بیمه عمر رابطه مستقیم دارند و نرخ بهره و بار تکفل با تقاضای بیمه عمر رابطه عکس دارند

Vehicle's velocity time series prediction using neural network

This paper presents the prediction of vehicle's velocity time series using neural networks. For this purpose, driving data is firstly collected in real world traffic conditions in the city of Tehran using advance vehicle location devices installed on private cars. A multi-layer perceptron network is then designed for driving time series forecasting. In addition, the results of this study are co...

full text

Semiparametric Bootstrap Prediction Intervals in time Series

One of the main goals of studying the time series is estimation of prediction interval based on an observed sample path of the process. In recent years, different semiparametric bootstrap methods have been proposed to find the prediction intervals without any assumption of error distribution. In semiparametric bootstrap methods, a linear process is approximated by an autoregressive process. The...

full text

Modeling and prediction of time-series of monthly copper prices

One of the main tasks to analyze and design a mining system is predicting the behavior exhibited by prices in the future. In this paper, the applications of different prediction methods are evaluated in econometrics and financial management fields, such as ARIMA, TGARCH, and stochastic differential equations, for the time-series of monthly copper prices. Moreover, the performance of these metho...

full text

Stock Market Indices Prediction Using Time Series Analysis

In this paper we present two non-parametric approaches used for time series analysis and modeling for a financial time series: the DJIA stock index open values. We used two recently developed algorithms and methods for time series prediction, Gene Expression Programming and Neural Networks because they are suitable for the series that present high variability, as in the present situation. After...

full text

Influence-Driven Model for Time Series Prediction from Partial Observations

Applications in sustainability domains such as in energy, transportation, and natural resource and environment monitoring, increasingly use sensors for collecting data and sending it back to centrally located processing nodes. While data can usually be collected by the sensors at a very high speed, in many cases, it can not be sent back to central nodes at a frequency that is required for fast ...

full text

My Resources

Save resource for easier access later

Save to my library Already added to my library

{@ msg_add @}


Journal title

volume 7  issue 1

pages  211- 224

publication date 2019-05

By following a journal you will be notified via email when a new issue of this journal is published.

Keywords

No Keywords

Hosted on Doprax cloud platform doprax.com

copyright © 2015-2023