McCauley Dalyn, Keller Sadie, Transue Kody, Wiman Nik, Nackley Lloyd
North Willamette Research and Extension Center, Oregon State University, Aurora, OR 97002, USA.
Department of Horticulture, College of Agricultural Sciences, Oregon State University, Corvallis, OR 97333, USA.
Sensors (Basel). 2024 Dec 4;24(23):7764. doi: 10.3390/s24237764.
Incorporating data-driven technologies into agriculture presents a promising approach to optimizing crop production, especially in regions dependent on irrigation, where escalating heat waves and droughts driven by climate change pose increasing challenges. Recent advancements in sensor technology have introduced diverse methods for assessing irrigation needs, including meteorological sensors for calculating reference evapotranspiration, belowground sensors for measuring plant available water, and plant sensors for direct water status measurements. Among these, infrared thermometry stands out as a non-destructive remote sensing method for monitoring transpiration, with significant potential for integration into drone- or satellite-based models. This study applies infrared thermometry to develop a crop water stress index (CWSI) model for European hazelnuts (), a key crop in Oregon, the leading hazelnut-producing state in the United States. Utilizing low-cost, open-source infrared thermometers and data loggers, we aim to provide hazelnut farmers with a practical tool for improving irrigation efficiency and enhancing yields. The CWSI model was validated against plant water status metrics such as stem water potential and gas exchange measurements. Our results show that when stem water potential is below -6 bar, the CWSI remains under 0.2, indicating low plant stress, with corresponding leaf conductance rates ranging between 0.1 and 0.4 mol m s. Additionally, un-irrigated hazelnuts were stressed (CWSI > 0.2) from mid-July through the end of the season, while irrigated plants remained unstressed. The findings suggest that farmers can adopt a leaf conductance threshold of 0.2 mol m s or a water potential threshold of -6 bar for irrigation management. This research introduces a new CWSI model for hazelnuts and highlights the potential of low-cost technology to improve agricultural monitoring and decision-making.
将数据驱动技术应用于农业为优化作物生产提供了一种很有前景的方法,特别是在依赖灌溉的地区,气候变化引发的热浪和干旱不断加剧,带来了越来越多的挑战。传感器技术的最新进展带来了多种评估灌溉需求的方法,包括用于计算参考蒸散量的气象传感器、用于测量植物有效水分的地下传感器以及用于直接测量水分状况的植物传感器。其中,红外测温法作为一种监测蒸腾作用的无损遥感方法脱颖而出,具有很大的潜力可集成到基于无人机或卫星的模型中。本研究应用红外测温法为欧洲榛子(美国榛子主产州俄勒冈州的一种关键作物)开发了一种作物水分胁迫指数(CWSI)模型。利用低成本的开源红外温度计和数据记录器,我们旨在为榛农提供一种实用工具,以提高灌溉效率并增加产量。CWSI模型通过植物水分状况指标如茎水势和气体交换测量进行了验证。我们的结果表明,当茎水势低于-6巴时,CWSI保持在0.2以下,表明植物胁迫程度低,相应的叶片导度率在0.1至0.4摩尔·米⁻²·秒⁻¹之间。此外,未灌溉的榛子从7月中旬到季节结束都受到胁迫(CWSI>0.2),而灌溉过的植株则未受胁迫。研究结果表明,农民可以采用0.2摩尔·米⁻²·秒⁻¹的叶片导度阈值或-6巴的水势阈值进行灌溉管理。本研究为榛子引入了一种新的CWSI模型,并强调了低成本技术在改善农业监测和决策方面的潜力。