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首页> 外文期刊>Agricultural Systems >Interpretation of commercial production information: a case study of lulo (Solanum quitoense), an under-researched Andean fruit.
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Interpretation of commercial production information: a case study of lulo (Solanum quitoense), an under-researched Andean fruit.

机译:商业生产信息的解释:对lulo( Solanum quitoense )的研究,这是一个未充分研究的安第斯水果。

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Every time a farmer plants and harvests a crop represents a unique event or experiment. Our premise is that if it were possible to characterize the production system in terms of management and the environmental conditions, and if information on the harvested product were collected from a large number of harvesting events under varied conditions, it should be possible to develop data-driven models that describe the production system. These models can then be used to identify appropriate growing conditions and improved management practices for crops that have received little attention from researchers. The analysis and interpretation of commercial production data in the context of naturally occurring variation in environmental and management, as opposed to controlled experimental data, requires novel approaches. Information was available on both variation in commercial production of the tropical fruit, lulo (Solanum quitoense), and the associated environmental conditions in Colombia. This information was used to develop and evaluate procedures for the interpretation of the variation in commercial production of lulo. The most effective procedures depended on expert guidance: it was not possible to develop a simple effective one step procedure, but rather an iterative approach was required. The most effective procedure was based on the following steps. First, highly correlated independent variables were evaluated and those that were effectively duplicates were eliminated. Second, regression models identified those environmental factors most closely associated with the dependent variable of fruit yield. The environmental factors associated with variation in fruit yield were then used for more in depth analysis, and those environmental variables not associated with yield were excluded from further analysis. Linear regression and multilayer perceptron regression models explained 65-70% of the total variation in yield. Both models identified three of the same factors but the multilayer perceptron based on a neural network identified one location as an additional factor. Third, the three environmental factors common to both regression models were used to define three Homogeneous Environmental Conditions (HECs) using Self-Organizing Maps (SOM). Fourth, yield was analyzed with a mixed model with the categorical variables of HEC, location, as a proxy for cultural factors associated with a geographic region, and farm as proxy for management skills. The mixed model explained more than 80% of the total variation in yield with 61% associated with the HECs and 19% with farm. Location had minimal effects. The results of this model can be used to determine the appropriate environmental conditions for obtaining high yields for crops where only commercial data are available, and also to identify those farms that have superior management practices for given environmental conditions.Digital Object Identifier http://dx.doi.org/10.1016/j.agsy.2010.10.004
机译:每次农民种植和收割庄稼都代表着独特的事件或实验。我们的前提是,如果可以根据管理和环境条件来表征生产系统,并且如果在不同条件下从大量收获事件中收集了有关收获产品的信息,则应该有可能开发出以下数据:描述生产系统的驱动模型。然后,这些模型可用于识别适当的生长条件并改善农作物的管理方法,而这些研究很少受到研究人员的关注。与受控实验数据相反,在环境和管理中自然发生变化的情况下对商业生产数据的分析和解释需要新颖的方法。可获得有关热带水果lulo( Solanum quitoense )商业生产变化以及哥伦比亚相关环境条件的信息。该信息用于开发和评估用于解释lulo商业生产变化的程序。最有效的程序取决于专家的指导:不可能开发出简单有效的一步程序,而是需要一种迭代方法。最有效的过程是基于以下步骤。首先,评估高度相关的自变量,并消除那些有效重复的变量。其次,回归模型确定了与水果产量因变量最密切相关的那些环境因素。然后将与水果产量变化相关的环境因素用于更深入的分析,并将那些与产量无关的环境变量从进一步分析中排除。线性回归和多层感知器回归模型解释了总产量变化的65-70%。两种模型都识别出三个相同的因素,但是基于神经网络的多层感知器将一个位置识别为另一个因素。第三,这两个回归模型共有的三个环境因素用于使用自组织映射(SOM)定义三个同质环境条件(HEC)。第四,使用混合模型分析了产量,该模型具有HEC的分类变量,位置(代表与某个地理区域相关的文化因素)和农场(代表管理技能)。混合模型解释了总产量变化的80%以上,其中61%与HEC相关,19%与农场相关。位置影响最小。该模型的结果可用于确定适当的环境条件,以在只有商业数据的情况下获得高产量的农作物,还可以识别在给定的环境条件下具有优良管理实践的农场。 dx.doi.org/10.1016/j.agsy.2010.10.004

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