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RESEARCH ARTICLE (Open Access)

Graincast™: monitoring crop production across the Australian grainbelt

R. Lawes https://orcid.org/0000-0002-1305-1478 A * , Z. Hochman B , E. Jakku C , R. Butler D , J. Chai E , Y. Chen F , F. Waldner https://orcid.org/0000-0002-5599-7456 B G , G. Mata https://orcid.org/0000-0003-3470-843X A and R. Donohue H
+ Author Affiliations
- Author Affiliations

A CSIRO Agriculture and Food, 147 Underwood Avenue, Floreat, WA 6014, Australia.

B CSIRO Agriculture and Food, 306 Carmody Road, St Lucia, Qld 4067, Australia.

C CSIRO Land and Water, 306 Carmody Road, St Lucia, Qld 4067, Australia.

D CSIRO Data61, 315 Brunswick Street, Fortitude Valley, Qld 4006, Australia.

E CSIRO Data61, 26 Dick Perry Avenue, Kensington, WA 6151, Australia.

F CSIRO Data61, Goods Shed North, 34 Village Street, Docklands, Vic. 3008, Australia.

G European Commission Joint Research Centre, Food Security, 21027 Ispra, Varese, Italy.

H CSIRO Land and Water, GPO Box 1700, Canberra, ACT 2061, Australia.

* Correspondence to: roger.lawes@csiro.au

Handling Editor: Simon Cook

Crop & Pasture Science - https://doi.org/10.1071/CP21386
Submitted: 4 June 2021  Accepted: 26 October 2021   Published online: 21 March 2022

© 2022 The Author(s) (or their employer(s)). Published by CSIRO Publishing. This is an open access article distributed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License (CC BY-NC-ND)

Abstract

The Australian dryland grain-cropping landscape occupies 60 Mha. The broader agricultural sector (farmers and agronomic advisors, grain handlers, commodity forecasters, input suppliers, insurance providers) required information at many spatial and temporal scales. Temporal scales included hindcasts, nowcasts and forecasts, at spatial scales ranging from sub-field to the continent. International crop-monitoring systems could not service the need of local industry for digital information on crop production estimates. Therefore, we combined a broad suite of satellite-based crop-mapping, crop-modelling and data-delivery techniques to create an integrated analytics system (Graincast™) that covers the Australian cropping landscape. In parallel with technical developments, a set of user requirements was identified through a human-centred design process, resulting in an end-product that delivered a viable crop-monitoring service to industry. This integrated analytics solution can now produce crop information at scale and on demand and can deliver the output via an application programming interface. The technology was designed to underpin digital agriculture developments for Australia. End-users are now using crop-monitoring data for operational purposes, and we argue that a vertically integrated data supply chain is required to develop crop-monitoring technology further.

Keywords: application programming interface, big data analytics, crop modelling, integrated land management, land use mapping, participatory research, remote sensing, user centred design.


References

Adjemian MK (2012) Quantifying the WASDE announcement effect. American Journal of Agricultural Economics 94, 238–256.
Quantifying the WASDE announcement effect.Crossref | GoogleScholarGoogle Scholar |

Allanwood G, Beare P (2014) ‘Basics interactive design: user experience design: creating designs users really love’, (Bloomsbury Publishing: London, UK) Available at https://www.bloomsbury.com/uk/basics-interactive-design-user-experience-design-9782940447695/

Angus JF (2001) Nitrogen supply and demand in Australian agriculture. Australian Journal of Experimental Agriculture 41, 277–288.
Nitrogen supply and demand in Australian agriculture.Crossref | GoogleScholarGoogle Scholar |

Becker-Reshef I, Barker B, Humber M, Puricelli E, Sanchez A, Sahajpal R, McGaughey K, Justice C, Baruth B, Wu B, Prakash A, Abdolreza A, Jarvis I (2019) The GEOGLAM crop monitor for AMIS: assessing crop conditions in the context of global markets. Global Food Security 23, 173–181.
The GEOGLAM crop monitor for AMIS: assessing crop conditions in the context of global markets.Crossref | GoogleScholarGoogle Scholar |

Boryan C, Yang Z, Mueller R, Craig M (2011) Monitoring US agriculture: the US Department of Agriculture, National Agricultural Statistics Service, Cropland Data Layer Program. Geocarto International 26, 341–358.
Monitoring US agriculture: the US Department of Agriculture, National Agricultural Statistics Service, Cropland Data Layer Program.Crossref | GoogleScholarGoogle Scholar |

Boschetti M, Busetto L, Manfron G, Laborte A, Asilo S, Pazhanivelan S, Nelson A (2017) PhenoRice: a method for automatic extraction of spatio-temporal information on rice crops using satellite data time series. Remote Sensing of Environment 194, 347–365.
PhenoRice: a method for automatic extraction of spatio-temporal information on rice crops using satellite data time series.Crossref | GoogleScholarGoogle Scholar |

Carberry PS, McCown RL, Muchow RC, Dimes JP, Probert ME, Poulton PL, Dalgliesh NP (1996) Simulation of a legume ley farming system in northern Australia using the agricultural production systems simulator. Australian Journal of Experimental Agriculture 36, 1037–1048.
Simulation of a legume ley farming system in northern Australia using the agricultural production systems simulator.Crossref | GoogleScholarGoogle Scholar |

Chen Y, Donohue RJ, McVicar TR, Waldner F, Mata G, Ota N, Houshmandfar A, Dayal K, Lawes RA (2020) Nationwide crop yield estimation based on photosynthesis and meteorological stress indices. Agricultural and Forest Meteorology 284, 107872
Nationwide crop yield estimation based on photosynthesis and meteorological stress indices.Crossref | GoogleScholarGoogle Scholar |

Defourny P, Bontemps S, Bellemans N, Cara C, Dedieu G, Guzzonato E, Hagolle O, Inglada J, Nicola L, Rabaute T, Savinaud M, Udroiu C, Valero S, Bégué A, Dejoux J-F, El Harti A, Ezzahar J, Kussul N, Labbassi K, Lebourgeois V, Miao Z, Newby T, Nyamugama A, Salh N, Shelestov A, Simonneaux V, Traore PS, Traore SS, Koetz B (2019) Near real-time agriculture monitoring at national scale at parcel resolution: performance assessment of the Sen2-Agri automated system in various cropping systems around the world. Remote Sensing of Environment 221, 551–568.
Near real-time agriculture monitoring at national scale at parcel resolution: performance assessment of the Sen2-Agri automated system in various cropping systems around the world.Crossref | GoogleScholarGoogle Scholar |

Ditzler L, Klerkx L, Chan-Dentoni J, Posthumus H, Krupnik TJ, Ridaura SL, Andersson JA, Baudron F, Groot JCJ (2018) Affordances of agricultural systems analysis tools: a review and framework to enhance tool design and implementation. Agricultural Systems 164, 20–30.
Affordances of agricultural systems analysis tools: a review and framework to enhance tool design and implementation.Crossref | GoogleScholarGoogle Scholar |

Donohue RJ, Hume IH, Roderick ML, McVicar TR, Beringer J, Hutley LB, Gallant JC, Austin JM, van Gorsel E, Cleverly JR, Meyer WS, Arndt SK (2014) Evaluation of the remote-sensing-based DIFFUSE model for estimating photosynthesis of vegetation. Remote Sensing of Environment 155, 349–365.
Evaluation of the remote-sensing-based DIFFUSE model for estimating photosynthesis of vegetation.Crossref | GoogleScholarGoogle Scholar |

Donohue RJ, Lawes RA, Mata G, Gobbett D, Ouzman J (2018) Towards a national, remote-sensing-based model for predicting field-scale crop yield. Field Crops Research 227, 79–90.
Towards a national, remote-sensing-based model for predicting field-scale crop yield.Crossref | GoogleScholarGoogle Scholar |

Douthwaite B, Kuby T, van de Fliert E, Schulz S (2003) Impact pathway evaluation: an approach for achieving and attributing impact in complex systems. Agricultural Systems 78, 243–265.
Impact pathway evaluation: an approach for achieving and attributing impact in complex systems.Crossref | GoogleScholarGoogle Scholar |

Eichler Inwood SE, Dale VH (2019) State of apps targeting management for sustainability of agricultural landscapes. A review. Agronomy for Sustainable Development 39, 8
State of apps targeting management for sustainability of agricultural landscapes. A review.Crossref | GoogleScholarGoogle Scholar |

Fajardo M, Whelan BM (2021) Within-farm wheat yield forecasting incorporating off-farm information. Precision Agriculture 22, 569–585.
Within-farm wheat yield forecasting incorporating off-farm information.Crossref | GoogleScholarGoogle Scholar |

Fletcher A, Lawes R, Weeks C (2016) Crop area increases drive earlier and dry sowing in Western Australia: implications for farming systems. Crop & Pasture Science 67, 1268–1280.
Crop area increases drive earlier and dry sowing in Western Australia: implications for farming systems.Crossref | GoogleScholarGoogle Scholar |

Fowler J, Waldner F, Hochman Z (2020) All pixels are useful, but some are more useful: efficient in situ data collection for crop-type mapping using sequential exploration methods. International Journal of Applied Earth Observation and Geoinformation 91, 102114
All pixels are useful, but some are more useful: efficient in situ data collection for crop-type mapping using sequential exploration methods.Crossref | GoogleScholarGoogle Scholar |

Freebairn DM, Ghahramani A, Robinson JB, McClymont DJ (2018) A tool for monitoring soil water using modelling, on-farm data, and mobile technology. Environmental Modelling & Software 104, 55–63.
A tool for monitoring soil water using modelling, on-farm data, and mobile technology.Crossref | GoogleScholarGoogle Scholar |

Fritz S, See L, Bayas JCL, Waldner F, Jacques D, Becker-Reshef I, Whitcraft A, Baruth B, Bonifacio R, Crutchfield J, Rembold F, Rojas O, Schucknecht A, Van der Velde M, Verdin J, Wu B, Yan N, You L, Gilliams S, Mücher S, Tetrault R, Moorthy I, McCallum I (2019) A comparison of global agricultural monitoring systems and current gaps. Agricultural Systems 168, 258–272.
A comparison of global agricultural monitoring systems and current gaps.Crossref | GoogleScholarGoogle Scholar |

Grundy MJ, Rossel RAV, Searle RD, Wilson PL, Chen C, Gregory LJ (2015) Soil and landscape grid of Australia. Soil Research 53, 835–844.
Soil and landscape grid of Australia.Crossref | GoogleScholarGoogle Scholar |

Grundy MJ, Bryan BA, Nolan M, Battaglia M, Hatfield-Dodds S, Connor JD, Keating BA (2016) Scenarios for Australian agricultural production and land use to 2050. Agricultural Systems 142, 70–83.
Scenarios for Australian agricultural production and land use to 2050.Crossref | GoogleScholarGoogle Scholar |

Hatt M, Heyhoe E, Whittle L (2012) Options for insuring Australian agriculture. ABARES report to client prepared for the Department of Agriculture, Fisheries and Forestry, Canberra. Available at https://www.awe.gov.au/sites/default/files/sitecollectiondocuments/ag-food/drought/ec/nrac/work-prog/abares-report/abares-report-insurance-options.pdf

He D, Wang EL (2019) On the relation between soil water holding capacity and dryland crop productivity. Geoderma 353, 11–24.
On the relation between soil water holding capacity and dryland crop productivity.Crossref | GoogleScholarGoogle Scholar |

Hertzler G, Sanderson T, Capon T, Hayman P, Kingwell R, McClintock A, Crean J, Randall A (2013) Real options for adaptive decisions in primary industries: will primary producers continue to adjust practices and technologies, change production systems or transform their industry? Technical Report. National Climate Change Adaptation Research Facility, Griffith University, Southport, Qld, Australia.
| Crossref |

Hochman Z, Dang YP, Schwenke GD, Dalgliesh NP, Routley R, McDonald M, Daniells IG, Manning W, Poulton PL (2007) Simulating the effects of saline and sodic subsoils on wheat crops growing on Vertosols. Australian Journal of Agricultural Research 58, 802–810.
Simulating the effects of saline and sodic subsoils on wheat crops growing on Vertosols.Crossref | GoogleScholarGoogle Scholar |

Hochman Z, van Rees H, Carberry PS, Hunt JR, McCown RL, Gartmann A, Holzworth D, van Rees S, Dalgliesh NP, Long W, Peake AS, Poulton PL, McClelland T (2009) Re-inventing model-based decision support with Australian dryland farmers. 4. Yield Prophet® helps farmers monitor and manage crops in a variable climate. Crop & Pasture Science 60, 1057–1070.
Re-inventing model-based decision support with Australian dryland farmers. 4. Yield Prophet® helps farmers monitor and manage crops in a variable climate.Crossref | GoogleScholarGoogle Scholar |

Hochman Z, Gobbett D, Horan H, Garcia JN (2016) Data rich yield gap analysis of wheat in Australia. Field Crops Research 197, 97–106.
Data rich yield gap analysis of wheat in Australia.Crossref | GoogleScholarGoogle Scholar |

Holzworth DP, Huth NI, deVoil PG, Zurcher EJ, Herrmann NI, McLean G, Chenu K, van Oosterom EJ, Snow V, Murphy C, Moore AD, Brown H, Whish JPM, Verrall S, Fainges J, Bell LW, Peake AS, Poulton PL, Hochman Z, Thorburn PJ, Gaydon DS, Dalgliesh NP, Rodriguez D, Cox H, Chapman S, Doherty A, Teixeira E, Sharp J, Cichota R, Vogeler I, Li FY, Wang E, Hammer GL, Robertson MJ, Dimes JP, Whitbread AM, Hunt J, van Rees H, McClelland T, Carberry PS, Hargreaves JNG, MacLeod N, McDonald C, Harsdorf J, Wedgwood S, Keating BA (2014) APSIM: evolution towards a new generation of agricultural systems simulation. Environmental Modelling & Software 62, 327–350.
APSIM: evolution towards a new generation of agricultural systems simulation.Crossref | GoogleScholarGoogle Scholar |

Hunt JR, Kirkegaard JA (2011) Re-evaluating the contribution of summer fallow rain to wheat yield in southern Australia. Crop & Pasture Science 62, 915–929.
Re-evaluating the contribution of summer fallow rain to wheat yield in southern Australia.Crossref | GoogleScholarGoogle Scholar |

Jeffrey SJ, Carter JO, Moodie KB, Beswick AR (2001) Using spatial interpolation to construct a comprehensive archive of Australian climate data. Environmental Modelling & Software 16, 309–330.
Using spatial interpolation to construct a comprehensive archive of Australian climate data.Crossref | GoogleScholarGoogle Scholar |

Khosravi I, Alavipanah SK (2019) A random forest-based framework for crop mapping using temporal, spectral, textural and polarimetric observations. International Journal of Remote Sensing 40, 7221–7251.
A random forest-based framework for crop mapping using temporal, spectral, textural and polarimetric observations.Crossref | GoogleScholarGoogle Scholar |

Lawes RA, Oliver YM, Robertson MJ (2009) Integrating the effects of climate and plant available soil water holding capacity on wheat yield. Field Crops Research 113, 297–305.
Integrating the effects of climate and plant available soil water holding capacity on wheat yield.Crossref | GoogleScholarGoogle Scholar |

Lawes RA, Oliver YM, Huth NI (2019) Optimal nitrogen rate can be predicted using average yield and estimates of soil water and leaf nitrogen with infield experimentation. Agronomy Journal 111, 1155–1164.
Optimal nitrogen rate can be predicted using average yield and estimates of soil water and leaf nitrogen with infield experimentation.Crossref | GoogleScholarGoogle Scholar |

Lawes R, Chen C, Whish J, Meier E, Ouzman J, Gobbett D, Vadakattu G, Ota N, van Rees H (2021) Applying more nitrogen is not always sufficient to address dryland wheat yield gaps in Australia. Field Crops Research 262, 108033
Applying more nitrogen is not always sufficient to address dryland wheat yield gaps in Australia.Crossref | GoogleScholarGoogle Scholar |

Maguire M (2001) Methods to support human-centred design. International Journal of Human-Computer Studies 55, 587–634.
Methods to support human-centred design.Crossref | GoogleScholarGoogle Scholar |

Massey R, Sankey TT, Yadav K, Congalton RG, Tilton JC (2018) Integrating cloud-based workflows in continental-scale cropland extent classification. Remote Sensing of Environment 219, 162–179.
Integrating cloud-based workflows in continental-scale cropland extent classification.Crossref | GoogleScholarGoogle Scholar |

McCown RL (2002) Changing systems for supporting farmers’ decisions: problems, paradigms, and prospects. Agricultural Systems 74, 179–220.
Changing systems for supporting farmers’ decisions: problems, paradigms, and prospects.Crossref | GoogleScholarGoogle Scholar |

McNairn H, Champagne C, Shang J, Holmstrom D, Reichert G (2009) Integration of optical and Synthetic Aperture Radar (SAR) imagery for delivering operational annual crop inventories. ISPRS Journal of Photogrammetry and Remote Sensing 64, 434–449.
Integration of optical and Synthetic Aperture Radar (SAR) imagery for delivering operational annual crop inventories.Crossref | GoogleScholarGoogle Scholar |

Oliver YM, Robertson MJ (2009) Quantifying the benefits of accounting for yield potential in spatially and seasonally responsive nutrient management in a Mediterranean climate. Soil Research 47, 114–126.
Quantifying the benefits of accounting for yield potential in spatially and seasonally responsive nutrient management in a Mediterranean climate.Crossref | GoogleScholarGoogle Scholar |

Reeves MC, Zhao M, Running SW (2005) Usefulness and limits of MODIS GPP for estimating wheat yield. International Journal of Remote Sensing 26, 1403–1421.
Usefulness and limits of MODIS GPP for estimating wheat yield.Crossref | GoogleScholarGoogle Scholar |

Robertson MJ, Lawes RA, Bathgate A, Byrne F, White P, Sands R (2010) Determinants of the proportion of break crops on Western Australian broadacre farms. Crop & Pasture Science 61, 203–213.
Determinants of the proportion of break crops on Western Australian broadacre farms.Crossref | GoogleScholarGoogle Scholar |

Rose DC, Sutherland WJ, Parker C, Lobley M, Winter M, Morris C, Twining S, Ffoulkes C, Amano T, Dicks LV (2016) Decision support tools for agriculture: towards effective design and delivery. Agricultural Systems 149, 165–174.
Decision support tools for agriculture: towards effective design and delivery.Crossref | GoogleScholarGoogle Scholar |

Sari E, Tedjasaputra A (2017) Designing valuable products with design sprint. In ‘INTERACT 2017. Proceedings 16th IFIP TC 13 international conference on human–computer interaction’. (Eds R Bernhaupt, G Dalvi, A Joshi, DK Balkrishan, J O'Neill, M Winckler). Human-Computer Interaction – INTERACT 2017, Lecture Notes in Computer Science, vol. 10516, pp. 391–394. (Springer: Cham)
| Crossref |

Shepherd M, Turner JA, Small B, Wheeler D (2020) Priorities for science to overcome hurdles thwarting the full promise of the ‘digital agriculture’ revolution. Journal of the Science of Food and Agriculture 100, 5083–5092.
Priorities for science to overcome hurdles thwarting the full promise of the ‘digital agriculture’ revolution.Crossref | GoogleScholarGoogle Scholar | 30191570PubMed |

van der Velde M, van Diepen CA, Baruth B (2019) The European crop monitoring and yield forecasting system: celebrating 25 years of JRC MARS Bulletins. Agricultural Systems 168, 56–57.
The European crop monitoring and yield forecasting system: celebrating 25 years of JRC MARS Bulletins.Crossref | GoogleScholarGoogle Scholar |

van Ittersum MK, Cassman KG, Grassini P, Wolf J, Tittonell P, Hochman Z (2013) Yield gap analysis with local to global relevance: a review. Field Crops Research 143, 4–17.
Yield gap analysis with local to global relevance: a review.Crossref | GoogleScholarGoogle Scholar |

Waldner F, Diakogiannis FI (2020) Deep learning on edge: extracting field boundaries from satellite images with a convolutional neural network. Remote Sensing of Environment 245, 111741
Deep learning on edge: extracting field boundaries from satellite images with a convolutional neural network.Crossref | GoogleScholarGoogle Scholar |

Waldner F, Chen Y, Lawes R, Hochman Z (2019) Needle in a haystack: mapping rare and infrequent crops using satellite imagery and data balancing methods. Remote Sensing of Environment 233, 111375
Needle in a haystack: mapping rare and infrequent crops using satellite imagery and data balancing methods.Crossref | GoogleScholarGoogle Scholar |

Waldner F, Diakogiannis FI, Batchelor K, Ciccotosto-Camp M, Cooper-Williams E, Herrmann C, Mata G, Toovey A (2021) Detect, consolidate, delineate: scalable mapping of field boundaries using satellite images. Remote Sensing 13, 2197
Detect, consolidate, delineate: scalable mapping of field boundaries using satellite images.Crossref | GoogleScholarGoogle Scholar |