旱作马铃薯关键作物生长模式的确定加拿大大西洋地区的生产系统:一个工作实例的回顾

IF 1.2 4区 农林科学 Q3 AGRONOMY
Mohammad Islam, Sheng Li
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引用次数: 0

摘要

马铃薯作物模式的选择是马铃薯增产的关键因素。这需要更好地了解作物管理的协同作用和权衡,同时考虑到马铃薯遗传和农业气候因素的控制作用。多年来,马铃薯作物模型一直依赖于历史数据和传统的管理方法。改进的建模技术最近被用于根据历史气候记录、未来气候不确定性和天气预报来确定特定的产量目标。然而,气候变化和新的信息来源激发了更好的建模策略,这些策略可能以更系统的方式利用实际、最佳和潜在产量和马铃薯管理方法范围内的大量信息来源。在这方面,有两个问题值得关注:(i)如何处理与其结构、数据需求和作物-土壤-环境因素相关的作物模型的可变性;(ii)如何在其结构、数据需求和气候因素发生意外变化的情况下,为特定应用的模型选择过程提供鲁棒性。本文综述了马铃薯模型发育的不同阶段。综述了33种作物生长模型,总结了它们的用途和特点。本文对文献进行了概述,并通过一个具体的例子进行了说明,以确定适用于加拿大大西洋省份马铃薯管理的关键模型。基于分类主成分分析(CatPCA)程序,确定了代表三个主成分(PCs)的三个马铃薯模型,这些模型将对该地理区域未来的马铃薯生产和产量模拟有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identifying Key Crop Growth Models for Rain-Fed Potato (Solanum tuberosum L.) Production Systems in Atlantic Canada: A Review with a Working Example

Identifying Key Crop Growth Models for Rain-Fed Potato (Solanum tuberosum L.) Production Systems in Atlantic Canada: A Review with a Working Example

The selective use of potato crop models is a key factor in increasing potato production. This requires a better understanding of the synergies and trade-off of crop management while accounting for the controlling effects of potato genetic and agro-climatic factors. Over the years, crop modeling for potato has relied on historical data and traditional management approaches. Improved modeling techniques have recently been exploited to target specific yield goals based on historical climatic records, future climate uncertainties and weather forecasts. However, climate change and new sources of information motivate better modeling strategies that might take advantage of the vast sources of information in the spectrum of actual, optimal and potential yield and potato management methodologies in a more systematic way. In this connection, two questions warrant interest: (i) how to deal with the variability of crop models relevant to their structure, data requirement and crop-soil-environmental factors, (ii) how to provide robustness to the selection process of a model for specific applications under unexpected change of their structure, data requirement and climatic factors. In this review, the different stages of potato model development are described. Thirty-three crop growth models are reviewed and their usage and characteristics are summarized. An overview of the literature is given, and a specific example is worked out for illustration purposes to identity key models suitable for potato management in the Atlantic provinces of Canada. Based on a categorical principal component analysis (CatPCA) procedure three potato models representing three principal components (PCs) were identified which will be useful for future potato production and yield simulation in this geographic area.

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来源期刊
American Journal of Potato Research
American Journal of Potato Research 农林科学-农艺学
CiteScore
3.40
自引率
6.70%
发文量
33
审稿时长
18-36 weeks
期刊介绍: The American Journal of Potato Research (AJPR), the journal of the Potato Association of America (PAA), publishes reports of basic and applied research on the potato, Solanum spp. It presents authoritative coverage of new scientific developments in potato science, including biotechnology, breeding and genetics, crop management, disease and pest research, economics and marketing, nutrition, physiology, and post-harvest handling and quality. Recognized internationally by contributors and readership, it promotes the exchange of information on all aspects of this fast-evolving global industry.
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