Tsolakis Naoum, Harrington Tomás Seosamh, Srai Jagjit Singh
Centre for International Manufacturing, Institute for Manufacturing (IfM), Department of Engineering, School of Technology, University of Cambridge, Cambridge CB3 0FS, United Kingdom.
Innovation, Technology and Operations Management Group, Norwich Business School, University of East Anglia (UEA), Norwich NR4 7TJ, United Kingdom.
Smart Agric Technol. 2023 Aug;4:None. doi: 10.1016/j.atech.2022.100139.
Technology innovations present an opportunity for the agricultural sector to leverage in-field data and inform resource-demanding operations to ultimately promote Sustainable Development Goals (SDGs). The need for data-driven innovations in farming is particularly pertinent to resource-scarce regions, such as the Indian Punjab, where an amalgam of obscure policies and lack of real-time visibility of crops typically leads to the excessive use of farming inputs like freshwater. To this end, this research investigates the use of Internet of Things (IoT) implementations to cultivate (a high-value citrus fruit) for assessing the impact of data-informed irrigation practices on the appropriation of natural sources, farming operations efficiency, and the well-being of smallholder farmers. First, a literature taxonomy demonstrates that studies on agri-field logistics often do not consider operations' environmental and energy impact. In addition, the application of IoT and automated guided vehicles (AGVs) for informing farmers about precision irrigation planning has not been sufficiently explored. Second, an empirical-driven numerical investigation explores four alternative irrigation scenarios for cultivating , namely: (i) flood irrigation; (ii) manual irrigation; (iii) AGV-informed manual irrigation; and (iv) AGV-assisted irrigation, which was cast as a Capacitated Vehicle Routing Problem. The analysis results compare the overall sustainability impact of the investigated practices on the water-energy nexus. This research is innovative as it focuses on data-driven logistics operations on the environmental, energy and farmers' well-being impact associated with irrigation practices in agronomy. This study further supports the role of data-driven technology innovations towards the transition to SDG-centric food supply chains by providing guiding principles for community-led in-field logistics planning.
技术创新为农业部门提供了一个机会,可利用田间数据并为资源需求大的作业提供信息,以最终促进可持续发展目标(SDGs)的实现。在农业中,对数据驱动型创新的需求与资源稀缺地区(如印度旁遮普邦)尤为相关,在那里,模糊的政策与缺乏对作物的实时监测通常导致淡水等农业投入品的过度使用。为此,本研究调查了物联网(IoT)的应用,以种植(一种高价值柑橘类水果),评估数据驱动型灌溉实践对自然资源利用、农业作业效率以及小农户福祉的影响。首先,文献分类表明,关于农业田间物流的研究往往没有考虑作业对环境和能源的影响。此外,物联网和自动导引车(AGV)在为农民提供精准灌溉规划信息方面的应用尚未得到充分探索。其次,一项基于实证的数值研究探索了种植的四种替代灌溉方案,即:(i)漫灌;(ii)人工灌溉;(iii)AGV辅助人工灌溉;以及(iv)AGV辅助灌溉,后者被视为一个容量受限车辆路径问题。分析结果比较了所研究实践对水 - 能源关系的总体可持续性影响。本研究具有创新性,因为它关注数据驱动型物流作业对与农艺学灌溉实践相关的环境、能源和农民福祉的影响。本研究通过为社区主导的田间物流规划提供指导原则,进一步支持了数据驱动型技术创新在向以可持续发展目标为中心的食品供应链转型中的作用。