供应市场前温室番茄价格的短期预测:伊斯法罕-伊朗

M. Ramezani, A. Papzan
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引用次数: 0

摘要

对农产品价格的可靠预测有助于优化资源配置,提高效率和农民收入,并减轻波动。鉴于准确预测的重要性,本文研究了如何使用不同的支持向量机和人工神经网络算法来预测温室番茄在1、2、3和6个月的价格。影响温室番茄价格的变量数据是通过2014年11月至2017年1月的短期实地研究收集的。该作物的批发价格是根据这一时期的市场研究得出的。结果表明,结合互易激活函数的广义回归神经网络预测趋势对训练数据的估计更有效。考虑了Epsilon-SVR SVM获取模式以及线性激活函数,以有效的方式估计两个月,三个月或两年的测试数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-term forecasting of greenhouse tomato price before supply to the market: Isfahan-Iran
A reliable forecast of the prices of agricultural commodities can help to allocate resources optimally, enhance efficiency and farmer income, and alleviate fluctuations. Given the importance of accurate forecasts, the present paper investigates how one can forecast greenhouse tomato prices at one, two, three, and six-month horizons using different support vector machines and artificial neural network algorithms. The data on variables affecting the price of greenhouse tomatoes were collected through a field study for a shortterm period from November 2014 to January 2017. The wholesale price of the crop was drawn from a market study for this period. The results show that the trend forecasted through General Regression Neural Network along with activating function of reciprocal is more efficient to estimate the training data. The Epsilon-SVR SVM acquisition pattern alongside the linear activating function was taken into consideration to estimate the testing data in an efficient way for two-month, three-month or biannual periods.
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