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首页> 外文期刊>PLoS One >Site-specific machine learning predictive fertilization models for potato crops in Eastern Canada
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Site-specific machine learning predictive fertilization models for potato crops in Eastern Canada

机译:加拿大东部土豆作物的现场专用机器学习预测施肥模型

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Statistical modeling is commonly used to relate the performance of potato ( Solanum tuberosum L.) to fertilizer requirements. Prescribing optimal nutrient doses is challenging because of the involvement of many variables including weather, soils, land management, genotypes, and severity of pests and diseases. Where sufficient data are available, machine learning algorithms can be used to predict crop performance. The objective of this study was to determine an optimal model predicting nitrogen, phosphorus and potassium requirements for high tuber yield and quality (size and specific gravity) as impacted by weather, soils and land management variables. We exploited a data set of 273 field experiments conducted from 1979 to 2017 in Quebec (Canada). We developed, evaluated and compared predictions from a hierarchical Mitscherlich model, k -nearest neighbors, random forest, neural networks and Gaussian processes. Machine learning models returned R 2 values of 0.49–0.59 for tuber marketable yield prediction, which were higher than the Mitscherlich model R 2 (0.37). The models were more likely to predict medium-size tubers (R 2 = 0.60–0.69) and tuber specific gravity (R 2 = 0.58–0.67) than large-size tubers (R 2 = 0.55–0.64) and marketable yield. Response surfaces from the Mitscherlich model, neural networks and Gaussian processes returned smooth responses that agreed more with actual evidence than discontinuous curves derived from k -nearest neighbors and random forest models. When conditioned to obtain optimal dosages from dose-response surfaces given constant weather, soil and land management conditions, some disagreements occurred between models. Due to their built-in ability to develop recommendations within a probabilistic risk-assessment framework, Gaussian processes stood out as the most promising algorithm to support decisions that minimize economic or agronomic risks.
机译:统计建模通常用于将马铃薯(Solanum Tuberosum L.)的性能与肥料要求相关。规定的最佳营养剂量是挑战,因为许多变量包括天气,土壤,土地管理,基因型和害虫和疾病的严重程度。如果有足够的数据,机器学习算法可用于预测作物性能。本研究的目的是确定受天气,土壤和土地管理变量影响的高块茎产量和质量(尺寸和比重)预测氮,磷和钾要求的最佳模型。我们利用了1979年至2017年在魁北克(加拿大)进行的273个现场实验的数据集。我们从分层Mitscherlich模型,K-Nearest邻居,随机林,神经网络和高斯过程中开发了评估和比较预测。机器学习模型返回R 2值为0.49-0.59的块茎营销收益率预测,其高于Mitscherlich Model R 2(0.37)。该模型更有可能预测中尺寸的块茎(R 2 = 0.60-0.69)和块茎比重(R 2 = 0.58-0.67),而不是大尺寸的块茎(R 2 = 0.55-0.64)和可销售产量。来自Mitscherlich模型的响应表面,神经网络和高斯过程返回了平滑的响应,这些响应与实际证据相同,而不是来自k-nearest邻居和随机林模型的不连续曲线。当调理从剂量响应表面获得最佳剂量时,给定恒定的天气,土壤和土地管理条件,模型之间发生了一些分歧。由于其内置能力在概率的风险评估框架内制定建议,高斯进程被视为最有前途的算法,以支持最大限度地减少经济或农艺风险的决策。

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