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使用季节性自回归积分移动平均、误差趋势季节性和混合模型预测泰国北部的牛奶产量。

Forecasting of Milk Production in Northern Thailand Using Seasonal Autoregressive Integrated Moving Average, Error Trend Seasonality, and Hybrid Models.

作者信息

Punyapornwithaya Veerasak, Jampachaisri Katechan, Klaharn Kunnanut, Sansamur Chalutwan

机构信息

Veterinary Public Health and Food Safety Centre for Asia Pacific (VPHCAP), Faculty of Veterinary Medicine, Chiang Mai University, Chiang Mai, Thailand.

Research Group for Veterinary Public Health, Faculty of Veterinary Medicine Chiang Mai University, Chiang Mai, Thailand.

出版信息

Front Vet Sci. 2021 Nov 30;8:775114. doi: 10.3389/fvets.2021.775114. eCollection 2021.

Abstract

Milk production in Thailand has increased rapidly, though excess milk supply is one of the major concerns. Forecasting can reveal the important information that can support authorities and stakeholders to establish a plan to compromise the oversupply of milk. The aim of this study was to forecast milk production in the northern region of Thailand using time-series forecast methods. A single-technique model, including seasonal autoregressive integrated moving average (SARIMA) and error trend seasonality (ETS), and a hybrid model of SARIMA-ETS were applied to milk production data to develop forecast models. The performance of the models developed was compared using several error matrices. Results showed that milk production was forecasted to raise by 3.2 to 3.6% annually. The SARIMA-ETS hybrid model had the highest forecast performances compared with other models, and the ETS outperformed the SARIMA in predictive ability. Furthermore, the forecast models highlighted a continuously increasing trend with evidence of a seasonal fluctuation for future milk production. The results from this study emphasizes the need for an effective plan and strategy to manage milk production to alleviate a possible oversupply. Policymakers and stakeholders can use our forecasts to develop short- and long-term strategies for managing milk production.

摘要

泰国的牛奶产量增长迅速,不过牛奶供应过剩是主要问题之一。预测能够揭示重要信息,支持当局和利益相关者制定应对牛奶供应过剩的计划。本研究的目的是使用时间序列预测方法对泰国北部地区的牛奶产量进行预测。将单一技术模型(包括季节性自回归积分滑动平均模型(SARIMA)和误差趋势季节性模型(ETS))以及SARIMA-ETS混合模型应用于牛奶产量数据,以开发预测模型。使用多个误差矩阵比较所开发模型的性能。结果显示,预计牛奶产量将以每年3.2%至3.6%的速度增长。与其他模型相比,SARIMA-ETS混合模型具有最高的预测性能,并且ETS在预测能力方面优于SARIMA。此外,预测模型突出显示了未来牛奶产量持续增长的趋势以及季节性波动的迹象。本研究结果强调需要制定有效的计划和策略来管理牛奶生产,以缓解可能出现的供应过剩情况。政策制定者和利益相关者可以利用我们的预测结果来制定管理牛奶生产的短期和长期策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d097/8669476/e439e4d058b7/fvets-08-775114-g0001.jpg

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