Department of Electrical and Electronics Engineering, University of West Attica, 12244 Athens, Greece.
Electrotechnics and Measurements Department, Technical University of Cluj-Napoca, 400114 Cluj-Napoca, Romania.
Sensors (Basel). 2023 Aug 11;23(16):7128. doi: 10.3390/s23167128.
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.
数字孪生体充当虚拟对应物,在数字空间中复制有形物体、流程或系统的特征和功能,利用其模拟和预测实际行为的能力。它们在智能农业中找到了有价值的应用,为农场提供了全面的虚拟副本,包括作物种植、土壤成分和当前天气状况等重要方面。通过合并来自不同来源的数据,包括土壤、植物状况、环境传感器网络、气象预测以及高分辨率无人机和卫星图像,农民可以获得其农业领域的动态和最新可视化,使他们能够就高效灌溉计划、最佳施肥方法和有效的病虫害管理策略等关键方面做出明智和及时的决策,从而提高整体农场的生产力和可持续性。本研究论文旨在全面概述智能农业中数字孪生的研究现状,包括作物建模、精准农业和相关技术,同时探讨它们在农业实践中的潜在应用及其对农业实践的影响,解决数据隐私问题、准确模拟和预测所需高质量数据以及整合多个数据源的复杂性等挑战和限制。最后,本文探讨了数字孪生在农业中的前景,强调了该领域未来研究和发展的潜在途径。