J. D. Urrutia, Joshua Sy Bedana, Chloe Bernice V. Combalicer, Francis Leo T. Mingo
{"title":"基于时空综合预测框架的吕宋岛水稻产量预测","authors":"J. D. Urrutia, Joshua Sy Bedana, Chloe Bernice V. Combalicer, Francis Leo T. Mingo","doi":"10.1063/1.5139184","DOIUrl":null,"url":null,"abstract":"Rice is a staple in every Filipino home where it is eaten three times a day or sometimes more. Luzon is the top producer of rice for the past years among the other two island groups. Rice plays a critical role in food security. This is one of the importance of rice forecasting. This study explores the possibility of using spatial data and temporal data on forecasting the production of rice at the same time. A Spatio-temporal Forecasting model is used to forecast the quarterly harvest of each of the seven rice producing regions of Luzon. This enables the gathered data to be utilized and manipulated for rice production forecasting. The effect of spatial correlations on the prediction accuracy of spatial forecasting is explored. The study showed that Spatio-temporal forecasting model is better than the most commonly used ARIMA forecasting.Rice is a staple in every Filipino home where it is eaten three times a day or sometimes more. Luzon is the top producer of rice for the past years among the other two island groups. Rice plays a critical role in food security. This is one of the importance of rice forecasting. This study explores the possibility of using spatial data and temporal data on forecasting the production of rice at the same time. A Spatio-temporal Forecasting model is used to forecast the quarterly harvest of each of the seven rice producing regions of Luzon. This enables the gathered data to be utilized and manipulated for rice production forecasting. The effect of spatial correlations on the prediction accuracy of spatial forecasting is explored. The study showed that Spatio-temporal forecasting model is better than the most commonly used ARIMA forecasting.","PeriodicalId":209108,"journal":{"name":"PROCEEDINGS OF THE 8TH SEAMS-UGM INTERNATIONAL CONFERENCE ON MATHEMATICS AND ITS APPLICATIONS 2019: Deepening Mathematical Concepts for Wider Application through Multidisciplinary Research and Industries Collaborations","volume":"4 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2019-12-19","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":"{\"title\":\"Forecasting rice production in Luzon using integrated spatio-temporal forecasting framework\",\"authors\":\"J. D. Urrutia, Joshua Sy Bedana, Chloe Bernice V. Combalicer, Francis Leo T. Mingo\",\"doi\":\"10.1063/1.5139184\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Rice is a staple in every Filipino home where it is eaten three times a day or sometimes more. Luzon is the top producer of rice for the past years among the other two island groups. Rice plays a critical role in food security. This is one of the importance of rice forecasting. This study explores the possibility of using spatial data and temporal data on forecasting the production of rice at the same time. A Spatio-temporal Forecasting model is used to forecast the quarterly harvest of each of the seven rice producing regions of Luzon. This enables the gathered data to be utilized and manipulated for rice production forecasting. The effect of spatial correlations on the prediction accuracy of spatial forecasting is explored. The study showed that Spatio-temporal forecasting model is better than the most commonly used ARIMA forecasting.Rice is a staple in every Filipino home where it is eaten three times a day or sometimes more. Luzon is the top producer of rice for the past years among the other two island groups. Rice plays a critical role in food security. This is one of the importance of rice forecasting. This study explores the possibility of using spatial data and temporal data on forecasting the production of rice at the same time. A Spatio-temporal Forecasting model is used to forecast the quarterly harvest of each of the seven rice producing regions of Luzon. This enables the gathered data to be utilized and manipulated for rice production forecasting. The effect of spatial correlations on the prediction accuracy of spatial forecasting is explored. 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Forecasting rice production in Luzon using integrated spatio-temporal forecasting framework
Rice is a staple in every Filipino home where it is eaten three times a day or sometimes more. Luzon is the top producer of rice for the past years among the other two island groups. Rice plays a critical role in food security. This is one of the importance of rice forecasting. This study explores the possibility of using spatial data and temporal data on forecasting the production of rice at the same time. A Spatio-temporal Forecasting model is used to forecast the quarterly harvest of each of the seven rice producing regions of Luzon. This enables the gathered data to be utilized and manipulated for rice production forecasting. The effect of spatial correlations on the prediction accuracy of spatial forecasting is explored. The study showed that Spatio-temporal forecasting model is better than the most commonly used ARIMA forecasting.Rice is a staple in every Filipino home where it is eaten three times a day or sometimes more. Luzon is the top producer of rice for the past years among the other two island groups. Rice plays a critical role in food security. This is one of the importance of rice forecasting. This study explores the possibility of using spatial data and temporal data on forecasting the production of rice at the same time. A Spatio-temporal Forecasting model is used to forecast the quarterly harvest of each of the seven rice producing regions of Luzon. This enables the gathered data to be utilized and manipulated for rice production forecasting. The effect of spatial correlations on the prediction accuracy of spatial forecasting is explored. The study showed that Spatio-temporal forecasting model is better than the most commonly used ARIMA forecasting.