2 research outputs found

    Time Series Modeling of Measured Wind & Wave Time Histories in Malay, Sabah & Sarawak Basin Using Autoregressive, Integrated, Moving Average (ARIMA) Method

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    It is very important to understand the metocean (meteorological and oceanographic) data since it is a fundamental in order to success in all marine projects as this information will provide the characteristics of the available resource for energy yield, the design requirements for survivalibility of the project and the strategy for maintenance and accessibility. So, in order to avoid bad events on the sea and to help with proceeding in situ operations, it will be very beneficial to perform the analysis of the time series modeled and obtain the forecasts of the metocean data from the time histories record which is consists of wind and wave parameters. The method that will be applied during the analysis and forecasting the measured metocean data is Autoregressive, Integrated, Moving Average (ARIMA) method

    Management of basidiomycete root- and stem-rot diseases in oil palm, rubber and tropical hardwood plantation crops

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