奶料价格比模型的构建与应用——基于中国大型奶牛场数据

IF 0.7 4区 农林科学 Q3 AGRONOMY Emirates Journal of Food and Agriculture Pub Date : 2023-08-16 DOI:10.9755/ejfa.2023.3137
Hao Liu, Hua Peng, Chao Zhang, Xiaoxia Dong
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引用次数: 0

摘要

尽管发展迅速,但中国乳业仍面临着奶农定价权不足、原料奶和饲料价格波动大、供需失衡、养殖积极性低等问题。奶料价格比(MF)作为具有重要地理特征的指标,是制定原料奶价格和衡量农场盈利能力的重要参考指标。本研究的主要目的是利用2018-2020年的统计数据,构建适合中国的奶料比模型,为其他发展中国家提供参考。采用矢量误差修正模型对中国原料奶价格与饲料价格的长期协方差进行了分析,并对中国规模化养殖场的饲料结构进行了分析。研究发现,玉米、豆粕、玉米青贮和苜蓿的价格权重分别为27%、17%、30%和26%,与发达国家存在显著差异,中国不同产区的MF模型参数也存在显著差异。在过去的三年里,中国的奶料比一直保持在1.89以上。原料奶价格的季节性变化导致MF呈u型趋势。近年来,中国养猪场由低水平向中水平转变,呈上升趋势,规模养殖场处于盈利水平。 关键词:MF应用;格兰杰因果检验;MF模型;大型农场
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Construction and application of milk-feed price ratio model - based on data from large scale dairy farms in China
Despite rapid development, the Chinese dairy industry still faces problems such as the lack of pricing power for dairy farmers, high fluctuations in raw milk and feed prices, imbalances between supply and demand, and low farming motivation. As an indicator with important geographical characteristics, the milk-feed price ratio (MF) is a critical reference indicator for setting raw milk prices and measuring farm profitability. The main aim of this study is to construct an appropriate milk-feed ratio model for China using statistical data for 2018-2020, which provides references for other developing countries. A vector error correction model was used to illustrate the long-term covariance between raw milk prices and feed prices in China and to analyze the feed structure of large-scale Chinese farms. The study found that the price weights of corn, soybean meal, corn silage, and alfalfa were 27%, 17%, 30%, and 26%, respectively, which are significantly different from those of developed countries, and the parameters of the model for the MF in different production areas in China also varied significantly. The milk-feed ratio in China has remained above 1.89 in the last three years. Seasonal variations in raw milk prices lead to a U-shaped trend in the MF. In recent years the MF in China has changed from a low level to a medium level, showing an upward trend, with large-scale farms at a profitable level. Keywords: Application of MF; Granger causality test; MF model; Large scale farm
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来源期刊
Emirates Journal of Food and Agriculture
Emirates Journal of Food and Agriculture AGRONOMYFOOD SCIENCE & TECHNOLOGY&nb-FOOD SCIENCE & TECHNOLOGY
CiteScore
1.80
自引率
0.00%
发文量
18
期刊介绍: The "Emirates Journal of Food and Agriculture [EJFA]" is a unique, peer-reviewed Journal of Food and Agriculture publishing basic and applied research articles in the field of agricultural and food sciences by the College of Food and Agriculture, United Arab Emirates University, United Arab Emirates.
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