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A comparative study between parametric and artificial neural networks approaches for economical assessment of potato production in Iran

机译:参数和人工神经网络经济评估伊朗土豆盐生产经济评价的比较研究

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Potatoes are the single most important agricultural commodity in Hamadan province of Iran, where 25,503 ha of this crop were planted in 2008 under irrigated conditions. This paper compares results of the application of two different approaches, parametric model (PM) and artificial neural networks (ANNs), for assessing economical productivity (EP), total costs of production (TCP) and benefit to cost ratio (BC) of potato crop. In this comparison, Cobb-Douglas function for PM and multilayer feedforward for implementing ANN models have been used. The ANN, having 8-6- 12-1 topology with R 2 = 0.89, resulted in the best-suited model for estimating EP. Similarly, optimal topologies for TCP and BC were 8-13-15-1 ( R 2 = 0.97) and 8-15-13-1 ( R 2 = 0.94), respectively. In validating the PM and ANN models, mean absolute percentage error (MAPE) was used as performance indicator. The ANN approach allowed to reduce the MAPE from –184% for PM to less than 7% with a +30% to –95% variability range. Since ANN outperformed PM model, it should be preferred for estimating economical indices.
机译:土豆是伊朗哈马丹省最重要的农产品,其中25,503公顷在2008年在灌溉条件下种植。本文比较了两种不同方法,参数模型(PM)和人工神经网络(ANNS)的应用结果,用于评估经济生产率(EP),生产总成本(TCP),并利益到马铃薯的成本比(BC)庄稼。在此比较中,已经使用了用于PM和用于实现ANN模型的PM和多层前馈的Cobb-Douglas功能。具有8-6-22-1拓扑的ANN,R 2 = 0.89,导致最适合估算EP模型。类似地,TCP和BC的最佳拓扑分别为8-13-15-1(R 2 = 0.97)和8-15-13-1(R 2 = 0.94)。在验证PM和Ann模型时,平均绝对百分比误差(MAPE)用作性能指示符。 ANN方法允许将MAPE从-184%降低至小于7%,A + 30%至-95%可变性范围。由于ANN表现优于PM模型,因此应该优选估计经济索引。

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