Digital strategies for nitrogen management in grain production systems: lessons from multi-method assessment using on-farm experimentation

被引:2
|
作者
Colaco, A. F. [1 ]
Whelan, B. M. [2 ]
Bramley, R. G. V. [1 ]
Richetti, J. [3 ]
Fajardo, M. [2 ]
McCarthy, A. C. [4 ]
Perry, E. M. [5 ]
Bender, A. [2 ]
Leo, S. [6 ]
Fitzgerald, G. J. [5 ]
Lawes, R. A. [2 ]
机构
[1] CSIRO, Waite Campus, Glen Osmond, SA 5064, Australia
[2] Univ Sydney, Sch Life & Environm Sci, Precis Agr Lab, Camperdown, NSW 2006, Australia
[3] CSIRO, Floreat, WA 6014, Australia
[4] Univ Southern Queensland, Ctr Agr Engn, Toowoomba, Qld 4350, Australia
[5] Agr Victoria Res, Horsham, Vic 3400, Australia
[6] Queensland Univ Technol, Ctr Agr & Bioecon, Brisbane, Qld 4000, Australia
关键词
Nitrogen decision tools; Crop sensing; Machine learning; Site-specific nutrient management; Digital agriculture; PRECISION AGRICULTURE; GEOSTATISTICAL ANALYSIS; USE EFFICIENCY; WINTER-WHEAT; FERTILIZATION; YIELD; WATER; OPPORTUNITIES; PREDICTION; ALGORITHM;
D O I
10.1007/s11119-023-10102-z
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
During the past few decades, a range of digital strategies for Nitrogen (N) management using various types of input data and recommendation frameworks have been developed. Despite much research, the benefits accrued from such technology have been equivocal. In this work, thirteen methods for mid-season N recommendations in cereal production systems were evaluated simultaneously, ranging from simple mass balance through to non-mechanistic approaches based on machine learning. To achieve this, an extensive field research program was implemented, comprising twenty-one N strip trials implemented in wheat and barley fields across Australia over four cropping seasons. A moving window regression approach was used to generate crop response functions to applied N and calculate economically optimal N rates along the length of the strips. The N recommendations made using various methods were assessed based on the error against the optimal rate and expected profitability. The root mean squared error of the recommendations ranged from 15 to 57 kg/ha. The best performing method was a data-driven empirical strategy in which a multivariate input to characterise field and season conditions was abundantly available and used to predict optimal N rates using machine learning. This was the only approach with potential to substantially outperform the existing farmer management, reducing the recommendation error from 42 to 15 kg/ha and improving profitability by up to A$47/ha. Despite being reliant on extensive historical databases, such a framework shows a promising pathway to drive production systems closer towards season- and site-specific economically optimum recommendations. Automated on-farm experimentation is a key enabler for building the necessary crop response databases to run empirical data-driven decision tools.
引用
收藏
页码:983 / 1013
页数:31
相关论文
共 15 条
  • [1] Digital strategies for nitrogen management in grain production systems: lessons from multi-method assessment using on-farm experimentation
    A. F. Colaço
    B. M. Whelan
    R. G. V. Bramley
    J. Richetti
    M. Fajardo
    A. C. McCarthy
    E. M. Perry
    A. Bender
    S. Leo
    G. J. Fitzgerald
    R. A. Lawes
    [J]. Precision Agriculture, 2024, 25 : 983 - 1013
  • [2] Creating shared value(s) from On-Farm Experimentation: ten key lessons learned from the development of the SoYield® digital solution in Africa
    Alexandre, Chloe
    Tresch, Lea
    Sarron, Julien
    Lavarenne, Jeremy
    Bringer, Gaspard
    Chaham, Hamza Rkha
    Bendahou, Hamza
    Carmeni, Sofia
    Borianne, Philippe
    Koffi, Jean-Mathias
    Faye, Emile
    [J]. AGRONOMY FOR SUSTAINABLE DEVELOPMENT, 2023, 43 (03)
  • [3] Creating shared value(s) from On-Farm Experimentation: ten key lessons learned from the development of the SoYield® digital solution in Africa
    Chloé Alexandre
    Léa Tresch
    Julien Sarron
    Jéremy Lavarenne
    Gaspard Bringer
    Hamza Rkha Chaham
    Hamza Bendahou
    Sofia Carmeni
    Philippe Borianne
    Jean-Mathias Koffi
    Emile Faye
    [J]. Agronomy for Sustainable Development, 2023, 43
  • [4] Agronomic management strategies to increase soil organic carbon in the short-term: evidence from on-farm experimentation in the Veneto region
    Vittoria Giannini
    Giorgia Raimondi
    Arianna Toffanin
    Carmelo Maucieri
    Maurizio Borin
    [J]. Plant and Soil, 2023, 491 : 561 - 574
  • [5] Agronomic management strategies to increase soil organic carbon in the short-term: evidence from on-farm experimentation in the Veneto region
    Giannini, Vittoria
    Raimondi, Giorgia
    Toffanin, Arianna
    Maucieri, Carmelo
    Borin, Maurizio
    [J]. PLANT AND SOIL, 2023, 491 (1-2) : 561 - 574
  • [6] Forage management to improve on-farm feed production, nitrogen fluxes and greenhouse gas emissions from dairy systems in a wet temperate region
    Doltra, J.
    Villar, A.
    Moros, R.
    Salcedo, G.
    Hutchings, N. J.
    Kristensen, I. S.
    [J]. AGRICULTURAL SYSTEMS, 2018, 160 : 70 - 78
  • [7] Using Grafted Plants for Early-Season Cucumber Production in the Midwest - Lessons Learned from on-Farm Trials
    Guan, Wenjing
    Haseman, Dean
    [J]. HORTSCIENCE, 2020, 55 (09) : S181 - S182
  • [8] The Choices, Challenges, and Lessons Learned from a Multi-Method Social-Emotional / Character Assessment in and Out of School Time Setting
    Shapiro, Valerie B.
    Accomazzo, Sarah
    Claassen, Jennette
    Robitaille, Jennifer L. Fleming
    [J]. JOURNAL OF YOUTH DEVELOPMENT, 2015, 10 (03): : 31 - 45
  • [9] Assessment of grazing management on farm greenhouse gas intensity of beef production systems in the Canadian Prairies using life cycle assessment
    Alemu, Aldilu W.
    Janzen, Henry
    Little, Shannan
    Hao, Xiying
    Thompson, Donald J.
    Baron, Vern
    Iwaasa, Alan
    Beauchemin, Karen A.
    Krobel, Roland
    [J]. AGRICULTURAL SYSTEMS, 2017, 158 : 1 - 13
  • [10] Coopetition, strategy, and business performance in the era of digital transformation using a multi-method approach: Some research implications for strategy and operations management
    Meena, Abhilasha
    Dhir, Sanjay
    Sushil, Sushil
    [J]. INTERNATIONAL JOURNAL OF PRODUCTION ECONOMICS, 2024, 270