Evolution and application of digital technologies to predict crop type and crop phenology in agriculture

IF 2.6 Q1 AGRONOMY in silico Plants Pub Date : 2021-01-01 DOI:10.1093/INSILICOPLANTS/DIAB017
A. Potgieter, Yan Zhao, P. Zarco-Tejada, K. Chenu, Yifan Zhang, K. Porker, B. Biddulph, Y. Dang, Tim Neale, Fred Roosta, Scott A. Chapman
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引用次数: 26

Abstract

The downside risk of crop production affects the entire supply chain of the agricultural industry nationally and globally. This also has a profound impact on food security, and thus livelihoods, in many parts of the world. The advent of high temporal, spatial and spectral resolution remote sensing platforms, specifically during the last 5 years, and the advancement in software pipelines and cloud computing have resulted in the collating, analysing and application of ‘BIG DATA’ systems, especially in agriculture. Furthermore, the application of traditional and novel computational and machine learning approaches is assisting in resolving complex interactions, to reveal components of ecophysiological systems that were previously deemed either ‘too difficult’ to solve or ‘unseen’. In this review, digital technologies encompass mathematical, computational, proximal and remote sensing technologies. Here, we review the current state of digital technologies and their application in broad-acre cropping systems globally and in Australia. More specifically, we discuss the advances in (i) remote sensing platforms, (ii) machine learning approaches to discriminate between crops and (iii) the prediction of crop phenological stages from both sensing and crop simulation systems for major Australian winter crops. An integrated solution is proposed to allow accurate development, validation and scalability of predictive tools for crop phenology mapping at within-field scales, across extensive cropping areas.
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数字技术在农业作物类型和作物表型预测中的发展与应用
作物生产的下行风险影响到全国和全球农业产业的整个供应链。这也对世界许多地区的粮食安全以及生计产生了深远影响。高时间、空间和光谱分辨率遥感平台的出现,特别是在过去5年中,以及软件管道和云计算的进步,导致了“大数据”系统的整理、分析和应用,尤其是在农业中。此外,传统和新型计算和机器学习方法的应用有助于解决复杂的相互作用,以揭示生态生理系统的组成部分,这些组成部分以前被认为“太难”解决或“看不见”。在这篇综述中,数字技术包括数学、计算、近端和遥感技术。在这里,我们回顾了数字技术的现状及其在全球和澳大利亚大面积种植系统中的应用。更具体地说,我们讨论了以下方面的进展:(i)遥感平台,(ii)区分作物的机器学习方法,以及(iii)从澳大利亚主要冬季作物的传感和作物模拟系统预测作物的酚期。提出了一种集成的解决方案,以允许在大面积种植区的田间尺度上准确开发、验证和扩展作物酚学制图的预测工具。
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来源期刊
in silico Plants
in silico Plants Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
4.70
自引率
9.70%
发文量
21
审稿时长
10 weeks
期刊最新文献
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