Cargando…

Application of Internet of Things to Agriculture—The LQ-FieldPheno Platform: A High-Throughput Platform for Obtaining Crop Phenotypes in Field

The lack of efficient crop phenotypic measurement methods has become a bottleneck in the field of breeding and precision cultivation. However, high-throughput and accurate phenotypic measurement could accelerate the breeding and improve the existing cultivation management technology. In view of this...

Descripción completa

Detalles Bibliográficos
Autores principales: Fan, Jiangchuan, Li, Yinglun, Yu, Shuan, Gou, Wenbo, Guo, Xinyu, Zhao, Chunjiang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AAAS 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10027232/
https://www.ncbi.nlm.nih.gov/pubmed/36951796
http://dx.doi.org/10.34133/research.0059
_version_ 1784909675678924800
author Fan, Jiangchuan
Li, Yinglun
Yu, Shuan
Gou, Wenbo
Guo, Xinyu
Zhao, Chunjiang
author_facet Fan, Jiangchuan
Li, Yinglun
Yu, Shuan
Gou, Wenbo
Guo, Xinyu
Zhao, Chunjiang
author_sort Fan, Jiangchuan
collection PubMed
description The lack of efficient crop phenotypic measurement methods has become a bottleneck in the field of breeding and precision cultivation. However, high-throughput and accurate phenotypic measurement could accelerate the breeding and improve the existing cultivation management technology. In view of this, this paper introduces a high-throughput crop phenotype measurement platform named the LQ-FieldPheno, which was developed by China National Agricultural Information Engineering Technology Research Centre. The proposed platform represents a mobile phenotypic high-throughput automatic acquisition system based on a field track platform, which introduces the Internet of Things (IoT) into agricultural breeding. The proposed platform uses the crop phenotype multisensor central imaging unit as a core and integrates different types of equipment, including an automatic control system, upward field track, intelligent navigation vehicle, and environmental sensors. Furthermore, it combines an RGB camera, a 6-band multispectral camera, a thermal infrared camera, a 3-dimensional laser radar, and a deep camera. Special software is developed to control motions and sensors and to design run lines. Using wireless sensor networks and mobile communication wireless networks of IoT, the proposed system can obtain phenotypic information about plants in their growth period with a high-throughput, automatic, and high time sequence. Moreover, the LQ-FieldPheno has the characteristics of multiple data acquisition, vital timeliness, remarkable expansibility, high-cost performance, and flexible customization. The LQ-FieldPheno has been operated in the 2020 maize growing season, and the collected point cloud data are used to estimate the maize plant height. Compared with the traditional crop phenotypic measurement technology, the LQ-FieldPheno has the advantage of continuously and synchronously obtaining multisource phenotypic data at different growth stages and extracting different plant parameters. The proposed platform could contribute to the research of crop phenotype, remote sensing, agronomy, and related disciplines.
format Online
Article
Text
id pubmed-10027232
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher AAAS
record_format MEDLINE/PubMed
spelling pubmed-100272322023-03-21 Application of Internet of Things to Agriculture—The LQ-FieldPheno Platform: A High-Throughput Platform for Obtaining Crop Phenotypes in Field Fan, Jiangchuan Li, Yinglun Yu, Shuan Gou, Wenbo Guo, Xinyu Zhao, Chunjiang Research (Wash D C) Research Article The lack of efficient crop phenotypic measurement methods has become a bottleneck in the field of breeding and precision cultivation. However, high-throughput and accurate phenotypic measurement could accelerate the breeding and improve the existing cultivation management technology. In view of this, this paper introduces a high-throughput crop phenotype measurement platform named the LQ-FieldPheno, which was developed by China National Agricultural Information Engineering Technology Research Centre. The proposed platform represents a mobile phenotypic high-throughput automatic acquisition system based on a field track platform, which introduces the Internet of Things (IoT) into agricultural breeding. The proposed platform uses the crop phenotype multisensor central imaging unit as a core and integrates different types of equipment, including an automatic control system, upward field track, intelligent navigation vehicle, and environmental sensors. Furthermore, it combines an RGB camera, a 6-band multispectral camera, a thermal infrared camera, a 3-dimensional laser radar, and a deep camera. Special software is developed to control motions and sensors and to design run lines. Using wireless sensor networks and mobile communication wireless networks of IoT, the proposed system can obtain phenotypic information about plants in their growth period with a high-throughput, automatic, and high time sequence. Moreover, the LQ-FieldPheno has the characteristics of multiple data acquisition, vital timeliness, remarkable expansibility, high-cost performance, and flexible customization. The LQ-FieldPheno has been operated in the 2020 maize growing season, and the collected point cloud data are used to estimate the maize plant height. Compared with the traditional crop phenotypic measurement technology, the LQ-FieldPheno has the advantage of continuously and synchronously obtaining multisource phenotypic data at different growth stages and extracting different plant parameters. The proposed platform could contribute to the research of crop phenotype, remote sensing, agronomy, and related disciplines. AAAS 2023-03-20 2023 /pmc/articles/PMC10027232/ /pubmed/36951796 http://dx.doi.org/10.34133/research.0059 Text en https://creativecommons.org/licenses/by/4.0/Exclusive Licensee Science and Technology Review Publishing House. No claim to original U.S. Government Works. Distributed under a Creative Commons Attribution License 4.0 (CC BY 4.0) (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Research Article
Fan, Jiangchuan
Li, Yinglun
Yu, Shuan
Gou, Wenbo
Guo, Xinyu
Zhao, Chunjiang
Application of Internet of Things to Agriculture—The LQ-FieldPheno Platform: A High-Throughput Platform for Obtaining Crop Phenotypes in Field
title Application of Internet of Things to Agriculture—The LQ-FieldPheno Platform: A High-Throughput Platform for Obtaining Crop Phenotypes in Field
title_full Application of Internet of Things to Agriculture—The LQ-FieldPheno Platform: A High-Throughput Platform for Obtaining Crop Phenotypes in Field
title_fullStr Application of Internet of Things to Agriculture—The LQ-FieldPheno Platform: A High-Throughput Platform for Obtaining Crop Phenotypes in Field
title_full_unstemmed Application of Internet of Things to Agriculture—The LQ-FieldPheno Platform: A High-Throughput Platform for Obtaining Crop Phenotypes in Field
title_short Application of Internet of Things to Agriculture—The LQ-FieldPheno Platform: A High-Throughput Platform for Obtaining Crop Phenotypes in Field
title_sort application of internet of things to agriculture—the lq-fieldpheno platform: a high-throughput platform for obtaining crop phenotypes in field
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10027232/
https://www.ncbi.nlm.nih.gov/pubmed/36951796
http://dx.doi.org/10.34133/research.0059
work_keys_str_mv AT fanjiangchuan applicationofinternetofthingstoagriculturethelqfieldphenoplatformahighthroughputplatformforobtainingcropphenotypesinfield
AT liyinglun applicationofinternetofthingstoagriculturethelqfieldphenoplatformahighthroughputplatformforobtainingcropphenotypesinfield
AT yushuan applicationofinternetofthingstoagriculturethelqfieldphenoplatformahighthroughputplatformforobtainingcropphenotypesinfield
AT gouwenbo applicationofinternetofthingstoagriculturethelqfieldphenoplatformahighthroughputplatformforobtainingcropphenotypesinfield
AT guoxinyu applicationofinternetofthingstoagriculturethelqfieldphenoplatformahighthroughputplatformforobtainingcropphenotypesinfield
AT zhaochunjiang applicationofinternetofthingstoagriculturethelqfieldphenoplatformahighthroughputplatformforobtainingcropphenotypesinfield