Humberto Sernaqué, Moly Meca, Eduardo Zapata, Berenise Marchan, Junior Medina, Denis Nole, C. Aldana, Y. Saavedra, Luis Trelles, Nelson Chuquihuanca, Gustavo Mendoza
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引用次数: 0
摘要
农业商品的生产水平极不稳定,严重影响到农民。所用投入品价格的变化动态和天气条件的不断变化对秘鲁的谷物生产链产生重大影响;结果表明,与ARIMA模型相比,加性冬至预报模型在预测水稻、玉米和苋的产量时,在赤池信息准则(AIC)和贝叶斯信息准则(BIC)下具有更好的拟合性;然而,由于生产的高季节性、波动性以及某些时期和地理区域的生产造成的大量异常值,霍尔特-温特乘法模型预测了秘鲁2000-2021年期间玉米(Zea mays L. ssp amiláceo)和藜麦(Chenopodium quinoa)的全国产量。
Comparison of Arima and Holt-Winters forecasting models for time series of cereal production in Peru
Agricultural commodities present remarkable volatility in their production levels, which severely affects farmers. The variational dynamics in the prices of the inputs used and the constant variations in weather conditions have a significant influence on the cereal production chain in Peru; therefore, compared to the ARIMA model, the Additive Holt-Winters forecasting model presented a better fit according to the Akaike Information Criterion (AIC) and the Bayesian Information Criterion (BIC), forecasting the production of Oryza sativa, Zea mays L. var. Indurata and Amaranthus caudatus; however, due to the high seasonality, volatility of production, and the greater amount of outliers due to production in certain periods and geographical areas, the Holt-Winters Multiplicative model predicted the national production of Zea mays L. ssp amiláceo and Chenopodium quinoa, in Peru in the period 2000-2021.