| Literature DB >> 30191570 |
Mark Shepherd1, James A Turner1, Bruce Small1, David Wheeler1.
Abstract
The world needs to produce more food, more sustainably, on a planet with scarce resources and under changing climate. The advancement of technologies, computing power and analytics offers the possibility that 'digitalisation of agriculture' can provide new solutions to these complex challenges. The role of science is to evidence and support the design and use of digital technologies to realise these beneficial outcomes and avoid unintended consequences. This requires consideration of data governance design to enable the benefits of digital agriculture to be shared equitably and how digital agriculture could change agricultural business models; that is, farm structures, the value chain and stakeholder roles, networks and power relations, and governance. We argue that this requires transdisciplinary research (at pace), including explicit consideration of the aforementioned socio-ethical issues, data governance and business models, alongside addressing technical issues, as we now have to simultaneously deal with multiple interacting outcomes in complex technical, social, economic and governance systems. The exciting prospect is that digitalisation of science can enable this new, and more effective, way of working. The question then becomes: how can we effectively accelerate this shift to a new way of working in agricultural science? As well as identifying key research areas, we suggest organisational changes will be required: new research business models, agile project management; new skills and capabilities; and collaborations with new partners to develop 'technology ecosystems'.Entities:
Keywords: digital agriculture; digital science; digitalisation; precision agriculture; technology; value chain
Mesh:
Year: 2018 PMID: 30191570 PMCID: PMC7586842 DOI: 10.1002/jsfa.9346
Source DB: PubMed Journal: J Sci Food Agric ISSN: 0022-5142 Impact factor: 3.638
Figure 1Summary of four potential agricultural scenarios, as identified by Saunders et al.26
Science and technology requirements required to support possible future agricultural scenarios, adapted from Saunders et al.26
| Overall goal | Technologies | Science challenges |
|---|---|---|
| To demonstrate value‐add attributes along the supply chain to consumers | Evidence for the consumers that the use of practices, sensors, traceability, and analytics achieves the desired attributes | |
| Sensors, analytics and traceability | ||
| New supply chain business models | Can information from consumers feed back along the value chain to improve production and processing methods to achieve desired food attributes? | |
| Improve productivity | Sensors and analytics | Can the tools deliver lower cost productivity without unforeseen consequences? Is it practically possible to manage (e.g. irrigate, fertilise, spray) at the sub‐field scale indicated by the sensors/analytics? |
| To lower the cost of achieving compliance | Sensors, analytics and decision support systems | Can the tools deliver improved decision‐making to achieve compliance with environmental, health, safety, and animal welfare requirements at lower cost than current approaches? |
| To lower the cost of demonstrating compliance to regulators | Sensors, analytics and decision support systems | Evidence that adoption of practices, sensors, and analytics achieves the desired goals relating to environmental, health, safety, and animal welfare requirements |
Recommendation for priority areas for scientists/institutions to enable the potential benefit of digitalisation of science to be captured
| Priority | Issue to be resolved | |
|---|---|---|
| Digitalisation of science |
Move from reductionist approaches | The emerging science of big data, data veracity, and analytics will require a very different skillset. |
| Interdisciplinary research |
Move out of silos | Solutions are beyond the scope of a single discipline or area of research practice, requiring interdisciplinary and transdisciplinary approaches. Digitalisation can serve as a catalyst. |
| Organisational change |
Reassess business models | ‘New organizational structures, processes and business models that leverage ever‐advancing technology and human skills’. |
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Pace of change | The predicted pace of technology progress will also provide challenges for the traditional 3–5 year funding cycles, the annual funding calls, and the time that it traditionally takes to achieve scientific progress. | |
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Beyond business as usual | Many organisations cannot visualise the paradigm shift that digital agriculture could cause, focusing more on the here and now; that is, at the tactical and operational levels. | |
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New skills, capabilities | Skills and technological capability to operate in this field; will need to be able to apply scientific knowledge to capture, interpret, share, and apply digital information appropriately. | |
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New partnerships | One way for research organisations to develop new skills and capabilities is through partnerships or collaborations among partners that have not traditionally worked together; for example, linking agricultural scientists with technology companies (‘technology ecosystems’). | |
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Project management | The funding and project management required to optimise outcomes from digital‐based programmes has the potential to be different to conventional funding methodologies based on hypothesis‐driven reductionist science carried out in commercial or public‐funded research organisations. |