物联网、大数据分析和深度学习助力可持续精准农业

E. Micheni, Jackson Machii, Julius Murumba
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引用次数: 4

摘要

由于人口增长、气候变化和粮食安全问题,农业正在经历数字化转型。农业在成本降低、效率和可持续性方面受到信息技术的影响。精准农业采用物联网、深度学习、预测分析和基于人工智能的技术来帮助检测农田中的植物病虫害和营养不良。本研究的目标如下:1)评估智能技术的作用及其对精准农业可持续性的影响;2)评估物联网数据分析和深度学习在精准农业中的典型应用;3)研究可持续精准农业发展的障碍。物联网技术收集数据并将其传递给数据分析和深度学习以进行深入分析。研究结果表明,数据有助于农民管理作物品种、表型和选择、作物性能、土壤质量、pH值、灌溉和肥料用量。该研究着眼于精准农业的典型应用领域和关键成功因素。技术问题、安全、隐私、成本和法律问题影响着这些技术的采用。个体农民、政府、学术界和农业当局都将从这项研究中受益。该研究建议采用和优化创新和技术,例如移动设备,获得更快的互联网速度,用于定位和成像的低成本和可靠的卫星,以及精准农业优化的农业机械。未来的研究应侧重于应用适当的决策支持系统来实施精确决策。
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Internet of Things, Big Data Analytics, and Deep Learning for Sustainable Precision Agriculture
Agriculture is undergoing a digital transformation because of population growth, climate change, and food security concerns. Agriculture is influenced by information technology in terms of cost reduction, efficiency, and sustainability. Precision agriculture employs IoT, deep learning, predictive analytics, and AI-based technologies to aid in the detection of plant diseases, pests, and poor plant nutrition in the field. The study’s objectives are as follows: 1) evaluate the role of smart technologies and their impact on precision agriculture sustainability; 2) assess the typical application of IoT data analytics and deep learning in precision agriculture; and 3) investigate the barriers to the adoption of sustainable precision farming. IoT technologies collect data and relay it to data analytics and deep learning for in-depth analysis. The findings indicate that data assists farmers in managing crop variety, phenotypes and selection, crop performance, soil quality, pH level, irrigation, and fertilizer application quantity. The study looks at typical application areas and critical success factors for precision agriculture. Technological issues, safety, privacy, cost, and legal issues influence the adoption of these technologies. Individual farmers, government, academics, and agricultural authorities will all benefit from the research. The study recommends the adoption and optimization of innovations and technologies e.g. mobile devices, access to better internet speed, low-cost and dependable satellites for positioning and imagery, and precision agriculture-optimized agricultural machinery. Future research should focus on the application of appropriate decision-support systems for implementing precision decisions.
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