Reynolds Daniel, Ball Joshua, Bauer Alan, Davey Robert, Griffiths Simon, Zhou Ji
Engineering Biology, Earlham Institute, Norwich Research Park, Colney Lane, Norwich, NR4 7UZ, UK.
Plant Phenomics Research Center, China-UK Plant Phenomics Research Centre, Nanjing Agricultural University, No 1, Weigang, Nanjing, Jiangsu Province, China, 210095.
Gigascience. 2019 Mar 1;8(3). doi: 10.1093/gigascience/giz009.
High-quality plant phenotyping and climate data lay the foundation for phenotypic analysis and genotype-environment interaction, providing important evidence not only for plant scientists to understand the dynamics between crop performance, genotypes, and environmental factors but also for agronomists and farmers to closely monitor crops in fluctuating agricultural conditions. With the rise of Internet of Things technologies (IoT) in recent years, many IoT-based remote sensing devices have been applied to plant phenotyping and crop monitoring, which are generating terabytes of biological datasets every day. However, it is still technically challenging to calibrate, annotate, and aggregate the big data effectively, especially when they were produced in multiple locations and at different scales.
CropSight is a PHP Hypertext Pre-processor and structured query language-based server platform that provides automated data collation, storage, and information management through distributed IoT sensors and phenotyping workstations. It provides a two-component solution to monitor biological experiments through networked sensing devices, with interfaces specifically designed for distributed plant phenotyping and centralized data management. Data transfer and annotation are accomplished automatically through an hypertext transfer protocol-accessible RESTful API installed on both device side and server side of the CropSight system, which synchronize daily representative crop growth images for visual-based crop assessment and hourly microclimate readings for GxE studies. CropSight also supports the comparison of historical and ongoing crop performance while different experiments are being conducted.
As a scalable and open-source information management system, CropSight can be used to maintain and collate important crop performance and microclimate datasets captured by IoT sensors and distributed phenotyping installations. It provides near real-time environmental and crop growth monitoring in addition to historical and current experiment comparison through an integrated cloud-ready server system. Accessible both locally in the field through smart devices and remotely in an office using a personal computer, CropSight has been applied to field experiments of bread wheat prebreeding since 2016 and speed breeding since 2017. We believe that the CropSight system could have a significant impact on scalable plant phenotyping and IoT-style crop management to enable smart agricultural practices in the near future.
高质量的植物表型分析和气候数据为表型分析以及基因型与环境的相互作用奠定了基础,不仅为植物科学家理解作物性能、基因型和环境因素之间的动态关系提供了重要依据,也为农学家和农民在不断变化的农业条件下密切监测作物提供了重要依据。近年来,随着物联网技术(IoT)的兴起,许多基于物联网的遥感设备已应用于植物表型分析和作物监测,每天都会产生数TB的生物数据集。然而,有效校准、注释和汇总这些大数据在技术上仍然具有挑战性,尤其是当它们在多个地点和不同规模下产生时。
CropSight是一个基于PHP超文本预处理器和结构化查询语言的服务器平台,通过分布式物联网传感器和表型分析工作站提供自动数据整理、存储和信息管理。它提供了一种双组件解决方案,通过联网传感设备监测生物实验,其接口专为分布式植物表型分析和集中式数据管理而设计。数据传输和注释通过安装在CropSight系统设备端和服务器端的超文本传输协议可访问的RESTful API自动完成,该API同步每日代表性作物生长图像用于基于视觉的作物评估,以及每小时微气候读数用于基因型与环境相互作用研究。CropSight还支持在进行不同实验时比较历史和当前的作物性能。
作为一个可扩展的开源信息管理系统,CropSight可用于维护和整理物联网传感器和分布式表型分析装置捕获的重要作物性能和微气候数据集。它通过集成的云就绪服务器系统提供近实时的环境和作物生长监测,以及历史和当前实验比较。CropSight既可以通过智能设备在本地田间访问,也可以使用个人计算机在办公室远程访问,自2016年以来已应用于面包小麦预育种的田间试验,自2017年以来应用于快速育种。我们相信,CropSight系统可能会对可扩展的植物表型分析和物联网式作物管理产生重大影响,以便在不久的将来实现智能农业实践。