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Sensitivity analysis of energy inputs in crop production using artificial neural networks

机译:利用人工神经网络对作物生产中能量输入的敏感性分析

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Sensitivity analysis establishes priorities for research and allows to identify and rank the most important factors which lead to great improvements in output factors. The aim of this study is to examine sensitivity analysis of inputs in grape production. We are proposing to perform sensitivity analysis using partial rank correlation coefficient (PRCC) which is the most reliable and efficient method, and we apply this for the first time in crop production. This research investigates the use of energy in the vineyard of a semi-arid zone of Iran. Energy use efficiency, energy productivity, specific energy and net energy were calculated. Various artificial neural network (ANN) models were developed to predict grape yield with respect to input energies. ANN models consist of a multilayer perceptron (MLP) with seven neurons in the input layer, one and two hidden layer(s) with different number of neurons, and an output layer with one neuron. Input energies were labor, machinery, chemicals, farmyard manure (FYM), diesel, electricity and water for irrigation. Sensitivity analysis was performed on over 100 samples of parameter space generated by Latin hypercube sampling method, which was then fed to the ANN model to predict the yield for each sample. The PRCC between the predicted yield and each parameter value (input) was used to calculate the sensitivity of the model to each input. Results of sensitivity analysis showed that machinery had the greatest impact on grape yield followed by diesel fuel and labor. (C) 2018 The Authors. Published by Elsevier Ltd.
机译:敏感性分析确定了研究的重点,并允许确定和排名最重要的因素,这些因素可导致产出因素的大幅改善。这项研究的目的是检验葡萄生产中投入物的敏感性分析。我们建议使用部分秩相关系数(PRCC)进行敏感性分析,这是最可靠,最有效的方法,我们将其首次应用于作物生产。这项研究调查了伊朗半干旱地区葡萄园的能源使用情况。计算了能源利用效率,能源生产率,比能和净能。开发了各种人工神经网络(ANN)模型来预测葡萄相对于输入能量的产量。 ANN模型包括一个多层感知器(MLP),在输入层中具有七个神经元,一个和两个具有不同神经元数量的隐藏层,以及一个具有一个神经元的输出层。输入能量为劳动力,机械,化学药品,农家肥(FYM),柴油,电力和灌溉用水。对拉丁超立方体采样方法生成的100多个参数空间样本进行了敏感性分析,然后将其输入到ANN模型以预测每个样本的产量。预测产量和每个参数值(输入)之间的PRCC用于计算模型对每个输入的敏感性。敏感性分析结果表明,机械对葡萄产量的影响最大,其次是柴油和人工。 (C)2018作者。由Elsevier Ltd.发布

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