Enhancing Smart Agriculture by Implementing Digital Twins: A Comprehensive Review

Sensors (Basel). 2023 Aug 11;23(16):7128. doi: 10.3390/s23167128.

Abstract

Digital Twins serve as virtual counterparts, replicating the characteristics and functionalities of tangible objects, processes, or systems within the digital space, leveraging their capability to simulate and forecast real-world behavior. They have found valuable applications in smart farming, facilitating a comprehensive virtual replica of a farm that encompasses vital aspects such as crop cultivation, soil composition, and prevailing weather conditions. By amalgamating data from diverse sources, including soil, plants condition, environmental sensor networks, meteorological predictions, and high-resolution UAV and Satellite imagery, farmers gain access to dynamic and up-to-date visualization of their agricultural domains empowering them to make well-informed and timely choices concerning critical aspects like efficient irrigation plans, optimal fertilization methods, and effective pest management strategies, enhancing overall farm productivity and sustainability. This research paper aims to present a comprehensive overview of the contemporary state of research on digital twins in smart farming, including crop modelling, precision agriculture, and associated technologies, while exploring their potential applications and their impact on agricultural practices, addressing the challenges and limitations such as data privacy concerns, the need for high-quality data for accurate simulations and predictions, and the complexity of integrating multiple data sources. Lastly, the paper explores the prospects of digital twins in agriculture, highlighting potential avenues for future research and advancement in this domain.

Keywords: 3D augmented reality; IoT; agriculture 4.0; cyber-physical systems; digital twin model; digital twins; precision farming; sensors; simulation; smart agriculture-farming; virtual reality.

Publication types

  • Review

MeSH terms

  • Agriculture*
  • Data Accuracy
  • Farms
  • Soil*
  • Technology

Substances

  • Soil

Grants and funding

This research received no external funding.