...
首页> 外文期刊>Mathematical Modelling and Applications >Fitting Time-series Models to Kisumu Rainfall Data for the Period 1961-2014
【24h】

Fitting Time-series Models to Kisumu Rainfall Data for the Period 1961-2014

机译:将时间系列模型拟合到Kisumu降雨数据1961 - 2014年

获取原文
           

摘要

Many small-scale farmers require adequate forecasts to help them plan for the rainfall. The National Meteorological Service provides forecasts seasonally, monthly and weekly. The forecasts are qualitative in nature hence inform, but cannot be directly used with decision support models. It is therefore important to consider forecast methods that researchers can use to generate quantitative data that can be applied in the models. In particular, an increasing need for forecasting daily rainfall data. In this study, the ARIMA and VAR models have been used to forecast five time period data for daily, monthly and seasonal rainfall data. The objective was to find the model parameters that best fit the three time periods. Fifty-year data from Kenya Meteorological Station, Kisumu, was used for the analysis. For each time period, five events were used as the test dataset. The ARIMA model was found to be best for forecasting daily rainfall in comparison to the VAR model, while SARIMA was best for monthly and seasonal data. One difference was done for the seasonal rainfall total, but not for monthly and monthly rainfall data. The VAR models included the available daily minimum and maximum temperatures. However, forecasted daily rainfall deviated from the test data, while monthly and seasonal data deviated even more.
机译:许多小型农民需要足够的预测来帮助他们计划降雨。国家气象服务提供季节性,每周和每周预测。预测本质上是质量的,因此不能直接与决策支持模型一起使用。因此,重要的是要考虑研究人员可以使用的方法来生成可以在模型中应用的定量数据。特别是,越来越需要预测每日降雨数据。在本研究中,ARIMA和VAR模型已被用于预测每日,每月和季节降雨数据的五个时间数据。目标是找到最适合三个时间段的模型参数。来自肯尼亚气象站,kisumu的五十年数据用于分析。对于每个时间段,将五个事件用作测试数据集。与VAR模型相比,ARIMA模型最适合预测每日降雨,而Sarima最适合每月和季节性数据。季节性降雨量的总数是一个差异,但不是每月和每月降雨数据。 VAR模型包括可用的每日最低和最大温度。但是,预测日落降雨偏离了测试数据,而月度和季节性数据甚至更多。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号