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首页> 外文期刊>Journal of Cleaner Production >A two-stage DEA approach for quantifying and analysing the inefficiency of conventional and organic rain-fed cereals in Spain
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A two-stage DEA approach for quantifying and analysing the inefficiency of conventional and organic rain-fed cereals in Spain

机译:一种用于评估和分析西班牙传统和有机雨养谷物效率低下的两阶段DEA方法

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This paper assesses the efficiency of rain-fed cereals crops grown in Southern Spain. The proposed approach uses a two-stage Data Envelopment Analysis (DEA) plus regression approach. In the first stage a Slacks-based Inefficiency (SBI) DEA model is used to project conventional and organic cropping systems onto the efficient frontier. The results of the efficiency analysis show that conventional production is more inefficient than organic production and that the main sources of inefficiency in the case of conventional production correspond to excessive input consumption and GHG emissions. In the case of organic production, the inefficiency comes from output shortfalls. It is shown that reducing inefficiency would reduce the amount of GHG emitted per unit of fresh matter yielded. This potential gain is more pronounced in the case of conventional production but also occurs for organic production. In the second stage, the crops efficiency scores are regressed against some exogenous variables using a fractional regression model. The regression results confirm that organic production significantly decreases inefficiency and they also indicate that the larger the farm, the larger the inefficiency and that growing barley is more inefficient than wheat. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文评估了西班牙南部雨养谷物作物的生长效率。所提出的方法使用了两阶段的数据包络分析(DEA)和回归方法。在第一阶段,使用基于Slacks的低效率(SBI)DEA模型将常规和有机种植系统投影到有效边界上。效率分析的结果表明,常规生产比有机生产效率低,常规生产情况下效率低下的主要根源与投入品消耗过多和温室气体排放相对应。就有机生产而言,效率低下是由于产量不足。结果表明,减少低效率将减少每单位新鲜物质产量所排放的温室气体量。在常规生产的情况下,这种潜在收益更为明显,但在有机生产中也会发生。在第二阶段,使用分数回归模型针对一些外生变量对作物效率得分进行回归。回归结果证实有机生产显着降低了低效率,并且还表明农场越大,效率越低,并且大麦种植的效率比小麦低。 (C)2017 Elsevier Ltd.保留所有权利。

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