Smart Farming Technology Trends: Economic and Environmental Effects, Labor Impact, and Adoption Readiness

Farming faces challenges that increase the adverse effects on farms’ economics, labor, and the environment. Smart farming technologies (SFTs) are expected to assist in reverting this situation. In this work, 1064 SFTs were derived from scientific papers, research projects, and industrial products. They were classified by technology readiness level (TRL), typology, and field operation, and they were assessed for their economic, environmental, and labor impact, as well as their adoption readiness from end-users. It was shown that scientific articles dealt with SFTs of lower TRL than research projects. In scientific articles, researchers investigated mostly recording technologies, while, in research projects, they focused primarily on farm management information systems and robotic/automation systems. Scouting technologies were the main SFT type in scientific papers and research projects, but variable rate application technologies were mostly located in commercial products. In scientific papers, there was limited analysis of economic, environmental, and labor impact of the SFTs under investigation, while, in research projects, these impacts were studied thoroughly. Further, in commercial SFTs, the focus was on economic impact and less on labor and environmental issues. With respect to adoption readiness, it was found that all of the factors to facilitate SFT adoption became more positive moving from SFTs in scientific papers to fully functional commercial SFTs, indicating that SFTs reach the market when most of these factors are addressed for the benefit of the farmers. This SFT analysis is expected to inform researchers on adapting their research, as well as help policy-makers adjust their strategy toward digitized agriculture adoption and farmers with the current situation and future trends of SFTs.

[1]  Tomlinson Holman Chapter 2 – Monitoring , 2008 .

[2]  David J. Teece,et al.  The role of emergence in dynamic capabilities: a restatement of the framework and some possibilities for future research , 2018 .

[3]  Panagiotis G. Sarigiannidis,et al.  A Review on UAV-Based Applications for Precision Agriculture , 2019, Inf..

[4]  Khalid A. Al-Gaadi,et al.  Development and performance evaluation of a control system for variable rate granular fertilizer application , 2019, Comput. Electron. Agric..

[5]  Kelly Bronson,et al.  Big Data in food and agriculture , 2016 .

[6]  P. Reyns,et al.  A Review of Combine Sensors for Precision Farming , 2002, Precision Agriculture.

[7]  Gemma Hornero,et al.  Design of a low-cost Wireless Sensor Network with UAV mobile node for agricultural applications , 2015, Comput. Electron. Agric..

[8]  Jessica Lindblom,et al.  Promoting sustainable intensification in precision agriculture: review of decision support systems development and strategies , 2016, Precision Agriculture.

[9]  Francesco Montemurro,et al.  Precision nitrogen management of wheat. A review , 2012, Agronomy for Sustainable Development.

[10]  Andreas Kamilaris,et al.  A review on the practice of big data analysis in agriculture , 2017, Comput. Electron. Agric..

[11]  Anthony King,et al.  Technology: The Future of Agriculture , 2017, Nature.

[12]  S. Fountas,et al.  Agricultural robots—system analysis and economic feasibility , 2006, Precision Agriculture.

[13]  Chunhua Zhang,et al.  The application of small unmanned aerial systems for precision agriculture: a review , 2012, Precision Agriculture.

[14]  R. Gerhards,et al.  Precision farming for weed management: techniques , 2008, Gesunde Pflanzen.

[15]  N. Zhang,et al.  Precision agriculture—a worldwide overview , 2002 .

[16]  Spyros Fountas,et al.  Farm management information systems: Current situation and future perspectives , 2015, Comput. Electron. Agric..

[17]  Søren Marcus Pedersen,et al.  Precision Agriculture – From Mapping to Site-Specific Application , 2017 .

[18]  Eldert J. van Henten,et al.  Robotics in Agriculture and Forestry , 2008, Springer Handbook of Robotics.

[19]  E. Rogers,et al.  Diffusion of innovations , 1964, Encyclopedia of Sport Management.

[20]  Nazmuzzaman Khan,et al.  GPS Guided Autonomous Navigation of a Small Agricultural Robot with Automated Fertilizing System , 2018 .

[21]  Andrea Knierim,et al.  Experience versus expectation: farmers’ perceptions of smart farming technologies for cropping systems across Europe , 2019, Precision Agriculture.

[22]  Salah Sukkarieh,et al.  Machine learning approaches for crop yield prediction and nitrogen status estimation in precision agriculture: A review , 2018, Comput. Electron. Agric..

[23]  K. Helming,et al.  Rebound effects in agricultural land and soil management: Review and analytical framework , 2019, Journal of Cleaner Production.

[24]  Newell R. Kitchen,et al.  Emerging technologies for real-time and integrated agriculture decisions , 2008 .

[25]  Qin Zhang,et al.  Technology Application of Smart Spray in Agriculture: A Review , 2015, Intell. Autom. Soft Comput..

[26]  Avital Bechar,et al.  Agricultural robots for field operations: Concepts and components , 2016 .

[27]  Hartmut Stützel,et al.  A new method for assessing the sustainability of land-use systems (I): Identifying the relevant issues , 2009 .

[28]  J. Alex Thomasson,et al.  A review of the state of the art in agricultural automation. Part III: Agricultural machinery navigation systems , 2018 .

[29]  George K. Karagiannidis,et al.  Internet of Things (IoT) and Agricultural Unmanned Aerial Vehicles (UAVs) in smart farming: A comprehensive review , 2020, Internet Things.

[30]  M. Batte Precision Farming and Land Leasing Practices , 2003 .

[31]  Matthias Rothmund,et al.  Precision agriculture on grassland : Applications, perspectives and constraints , 2008 .

[32]  Gershon Feder,et al.  The Acquisition of Information and the Adoption of New Technology , 1984 .

[33]  Anjum Awasthi,et al.  Monitoring for Precision Agriculture using Wireless Sensor Network-A review , 2013 .

[34]  S. Fountas,et al.  Exploring the adoption of precision agricultural technologies: A cross regional study of EU farmers , 2019, Land Use Policy.

[35]  C. Walter,et al.  Multi-year assessment of Unilever's progress towards agricultural sustainability I: indicators, methodology and pilot farm results , 2008 .

[36]  D. Rose,et al.  Agriculture 4.0: Broadening Responsible Innovation in an Era of Smart Farming , 2018, Front. Sustain. Food Syst..

[37]  S. Wolfert,et al.  Big Data in Smart Farming – A review , 2017 .

[38]  Jirapond Muangprathub,et al.  IoT and agriculture data analysis for smart farm , 2019, Comput. Electron. Agric..

[39]  F. H. Newell,et al.  United States Geological Survey , 1900, Nature.

[40]  Timothy S. Stombaugh Satellite‐based Positioning Systems for Precision Agriculture , 2018 .

[41]  EdanYael,et al.  Harvesting Robots for High-value Crops , 2014 .

[42]  Abdul Mounem Mouazen,et al.  Delineation of Soil Management Zones for Variable-Rate Fertilization: A Review , 2017 .

[43]  Noman Islam,et al.  A review of wireless sensors and networks' applications in agriculture , 2014, Comput. Stand. Interfaces.

[44]  Rosdiadee Nordin,et al.  Energy-Efficient Wireless Sensor Networks for Precision Agriculture: A Review , 2017, Sensors.

[45]  P. David Zvi Griliches and the Economics of Technology Diffusion: Linking innovation adoption, lagged investments, and productivity growth , 2015 .

[46]  A. Walter,et al.  Precision Farming at the Nexus of Agricultural Production and the Environment , 2019, Annual Review of Resource Economics.

[47]  Dionysis Bochtis,et al.  Robotics and labour in agriculture. A context consideration , 2019, Biosystems Engineering.

[48]  Margarita Genius,et al.  Information Acquisition and Adoption of Organic Farming Practices , 2006 .

[49]  C N Merfield,et al.  Robotic weeding's false dawn? Ten requirements for fully autonomous mechanical weed management , 2016 .

[50]  David C. Slaughter,et al.  Autonomous robotic weed control systems: A review , 2008 .

[51]  Da-Wen Sun,et al.  Inspection and grading of agricultural and food products by computer vision systems—a review , 2002 .

[52]  Oliver Musshoff,et al.  A trans-theoretical model for the adoption of drones by large-scale German farmers , 2020 .

[53]  H. S. Abdullahi,et al.  Technology Impact on Agricultural Productivity: A Review of Precision Agriculture Using Unmanned Aerial Vehicles , 2015, WISATS.

[54]  R. Bongiovanni,et al.  Economics of Variable Rate Lime in Indiana , 2000, Precision Agriculture.

[55]  Y. Ge,et al.  Remote sensing of soil properties in precision agriculture: A review , 2006 .

[56]  Clayton M. Christensen,et al.  Disruptive Technologies: Catching the Wave , 1995 .

[57]  Paramasivam Ilango,et al.  The Impact of Wireless Sensor Network in the Field of Precision Agriculture: A Review , 2017 .

[58]  Stefania Matteoli,et al.  Smart farming: Opportunities, challenges and technology enablers , 2018, 2018 IoT Vertical and Topical Summit on Agriculture - Tuscany (IOT Tuscany).

[59]  S. Fountas,et al.  Precision Agriculture Technologies positively contributing to GHG emissions mitigation, farm productivity and economics , 2017 .

[60]  Patrizia Busato,et al.  Machine Learning in Agriculture: A Review , 2018, Sensors.

[61]  L. Tian,et al.  A Review on Remote Sensing of Weeds in Agriculture , 2004, Precision Agriculture.

[62]  B. Brisco,et al.  Precision Agriculture and the Role of Remote Sensing: A Review , 1998 .

[63]  Ralf Bill,et al.  Applications of open geospatial web services in precision agriculture: a review , 2009, Precision Agriculture.

[64]  Dr. Y. P. Reddy Agro-ecological Approaches to Pest Management for Sustainable Agriculture , 2017, Springer Singapore.

[65]  Andreas Meyer-Aurich,et al.  Economic analysis of precision farming technologies at the farm level: Two german case studies , 2008 .

[66]  Bert Beck,et al.  Influencing factors and incentives on the intention to adopt precision agricultural technologies within arable farming systems , 2019 .

[67]  C.W.J. Roest,et al.  Leaching of nitrate from agriculture to groundwater: the effect of policies and measures in the Netherlands , 1998 .

[68]  C. Dillon,et al.  The economic and environmental impacts of precision agriculture and interactions with agro-environmental policy , 2014, Precision Agriculture.

[69]  J. Erisman,et al.  Agriculture and biodiversity: a better balance benefits both , 2016 .

[70]  F Kuhlmann,et al.  Information technology and farm management: developments and perspectives , 2001 .

[71]  Kelly R. Thorp,et al.  Precision Agriculture , 2014, Encyclopedia of Remote Sensing.

[72]  Brian D. Luck,et al.  Assessment of digital technology adoption and access barriers among crop, dairy and livestock producers in Wisconsin , 2019, Comput. Electron. Agric..

[73]  Wenxuan Guo,et al.  Agronomic Basis and Strategies for Precision Water Management: A Review , 2019, Agronomy.

[74]  Tony Lewis,et al.  Evolution of farm management information systems , 1998 .

[75]  D. Makowski,et al.  Agri-environmental indicators to assess cropping and farming systems. A review , 2011, Agronomy for Sustainable Development.

[76]  Z. Griliches Hybrid Corn and the Economics of Innovation. , 1960, Science.

[77]  Paolo Barsocchi,et al.  The Digitisation of Agriculture: a Survey of Research Activities on Smart Farming , 2019, Array.

[78]  James R. Mahan,et al.  Agricultural applications of a low-cost infrared thermometer , 2008 .

[79]  Rafael Rieder,et al.  Computer vision and artificial intelligence in precision agriculture for grain crops: A systematic review , 2018, Comput. Electron. Agric..

[80]  Raul Morais,et al.  Recent advances in image processing techniques for automated harvesting purposes: A review , 2017, 2017 Intelligent Systems Conference (IntelliSys).

[81]  J. Schepers,et al.  Variable-rate application of high spatial resolution can improve cotton N-use efficiency and profitability , 2019, Precision Agriculture.

[82]  David Reiser,et al.  3-D Imaging Systems for Agricultural Applications—A Review , 2016, Sensors.

[83]  J. Pedersen,et al.  Adoption and perspectives of precision farming in Denmark , 2004 .

[84]  Um Rao Mogili,et al.  Review on Application of Drone Systems in Precision Agriculture , 2018 .

[85]  C. Arnade,et al.  U.S.-EU Food and Agriculture Comparisons , 2004 .

[86]  D. Teece Profiting from innovation in the digital economy: Enabling technologies, standards, and licensing models in the wireless world , 2018, Research Policy.

[87]  Can Chen,et al.  A review of precision fertilization research , 2014, Environmental Earth Sciences.

[88]  A. Tatem,et al.  Food and Agriculture Organisation of the United Nations , 2009 .

[89]  Søren Marcus Pedersen,et al.  Socioeconomic impact of widespread adoption of precision farming and controlled traffic systems in Denmark , 2012, Precision Agriculture.

[90]  E. Buijsman,et al.  Anthropogenic NH3 emissions in europe , 1987 .

[91]  Achim Walter,et al.  Opinion: Smart farming is key to developing sustainable agriculture , 2017, Proceedings of the National Academy of Sciences.

[92]  Charles K. Toth,et al.  Remote sensing platforms and sensors: A survey , 2016 .

[93]  Avital Bechar,et al.  Agricultural robots for field operations. Part 2: Operations and systems , 2017 .

[94]  Marco Pini,et al.  Investigation of performance of GNSS-based devices for precise positioning in harsh agriculture environments , 2019, 2019 IEEE International Workshop on Metrology for Agriculture and Forestry (MetroAgriFor).

[95]  Hossein Mousazadeh,et al.  A technical review on navigation systems of agricultural autonomous off-road vehicles , 2013 .

[96]  Ning Wang,et al.  Review: Wireless sensors in agriculture and food industry-Recent development and future perspective , 2006 .

[97]  J. Lowenberg‐DeBoer,et al.  Precision Agriculture and Sustainability , 2004, Precision Agriculture.

[98]  Bert Beck,et al.  Smart Farming Technologies – Description, Taxonomy and Economic Impact , 2017 .

[99]  Nancy Alonistioti,et al.  Farm management systems and the Future Internet era , 2012 .

[100]  Akash Kumar,et al.  Smart irrigation using low-cost moisture sensors and XBee-based communication , 2014, IEEE Global Humanitarian Technology Conference (GHTC 2014).

[101]  Lutz Plümer,et al.  A review of advanced machine learning methods for the detection of biotic stress in precision crop protection , 2014, Precision Agriculture.

[102]  M. Paoletti,et al.  Is There a Need for a More Sustainable Agriculture? , 2011 .

[103]  Soto Embodas Iria,et al.  The contribution of precision agriculture technologies to farm productivity and the mitigation of greenhouse gas emissions in the EU , 2019 .

[104]  Khairul Salleh Mohamed Sahari,et al.  Review of agriculture robotics: Practicality and feasibility , 2016, 2016 IEEE International Symposium on Robotics and Intelligent Sensors (IRIS).