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Role of hybrid forecasting techniques for transportation planning of broiler meat under uncertain demand in thailand |
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| รหัสดีโอไอ | |
| Creator | 1. Thoranin Sujjaviriyasup 2. Komkrit Pitiruek |
| Title | Role of hybrid forecasting techniques for transportation planning of broiler meat under uncertain demand in thailand |
| Publisher | Faculty of Engineering, Khon Kaen University |
| Publication Year | 2557 |
| Journal Title | KKU Engineering Journal |
| Journal Vol. | 41 |
| Journal No. | 4 |
| Page no. | 427-435 |
| Keyword | Hybrid forecasting model,Transportation networks,ARIMA,Support vector machine |
| ISSN | 0125-8273 |
| Abstract | One of numerous problems experiencing in supply chain management is the demand. Most demands are appeared in terms of uncertainty. The broiler meat industry is inevitably encountering the same problem. In this research, hybrid forecasting model of ARIMA and Support Vector Machine (SVMs) are developed to forecast broiler meat export. In addition, ARIMA, SVMs, and Moving Average (MA) are chosen for comparing the forecasting efficiency. All the forecasting models are tested and validated using the data of Brazil's export, Canada's export, and Thailand's export. The hybrid model provides accuracy of the forecasted values that are 98.71%, 97.50%, and 93.01%, respectively. In addition, the hybrid model presents the least error of all MAE, RMSE, and MAPE comparing with other forecasting models. As forecasted data are applied to transportation planning, the mean absolute percentage error (MAPE) of optimal value of forecasted value and actual value is 14.53%. The hybrid forecasting model shows an ability to reduce risk of total cost of transportation when broiler meat export is forecasted by using MA(2), MA(3), ARIMA, and SVM are 50.59%, 60.18%, 68.01%, and 46.55%, respectively. The results indicate that the developed forecasting model is recommended to broiler meat industries' supply chain decision. |