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

Author:

Potgieter Andries B1ORCID,Zhao Yan1,Zarco-Tejada Pablo J2,Chenu Karine1ORCID,Zhang Yifan1,Porker Kenton3,Biddulph Ben4,Dang Yash P1,Neale Tim5,Roosta Fred6,Chapman Scott7

Affiliation:

1. The University of Queensland, Queensland Alliance for Agriculture and Food Innovation, Centre for Crop Science, Gatton, Queensland 4343, Australia

2. School of Agriculture and Food (SAF) and Faculty of Engineering and Information Technologies (FEIT), The University of Melbourne, Melbourne, Victoria 3010, Australia

3. The University of Adelaide, South Australia Research and Development Institute, and School of Agriculture, Food & Wine, Crop Sciences, Urrbrae, South Australia 5064, Australia

4. Department of Primary Industries and Regional Development, 3 Baron-Hay Court, South Perth, Western Australia 6151, Australia

5. Data Farming Pty Ltd, P.O.Box 253, Highfields, Toowoomba, Queensland 4352, Australia

6. The University of Queensland, School of Mathematics and Physics, Brisbane, Queensland 4072, Australia

7. The University of Queensland, School of Agriculture and Food Sciences, Gatton, Queensland 4343, Australia

Abstract

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.

Funder

Development Corporation Australia

‘CropPhen’ project

Queensland University

University of Melbourne

Data Farming Pty Ltd

Primary Industries and Regions of South Australia

Department of Primary Industries and Regional Development

Publisher

Oxford University Press (OUP)

Subject

Plant Science,Agronomy and Crop Science,Biochemistry, Genetics and Molecular Biology (miscellaneous),Modelling and Simulation

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