Prediction of Grape Berry Temperature Using Wireless Dataloggers Contained Within a Grape Mimic

IF 1 4区 农林科学 Q3 HORTICULTURE
Annie R. Vogel, M. V. van Iersel, L. Seymour, Brett Forman, Jordyn Gulle, Chloe MacIntyre, C. Hickey
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引用次数: 0

Abstract

Fruit zone leaf removal effects on grapevine (Vitis sp.) productivity and fruit quality have been widely researched. Many fruit zone leaf removal studies state that grape temperature influences grape composition; however, few studies have quantified grape berry temperature fluctuations over time, likely because of technical challenges. An efficient, simple, and economical way to estimate grape berry temperature would be valuable for researchers and industry. Consistent quantification of grape temperature would allow researchers to compare the effects of leaf removal on grape composition across varying climates and regions. A cost-effective means to quantify berry temperature would also provide industry members site-specific information on berry temperature patterns and guide leaf removal practice. Our goals were to develop a method and model to estimate berry temperature based on air temperature and berry mimics, thereby precluding the need to measure solar radiation or obtain expensive equipment. We evaluated the ability of wireless temperature sensors, submerged in various volumes of water within black or white balloons, to predict berry temperature. Treatments included 0-, 10-, 30-, 50-, and 70-mL volumes of deionized water in black and white balloons and a clear plastic bag with no water. Regression analysis was used to determine the relationship between sensor-logged temperatures and ‘Camminare noir’ berry temperatures recorded with hypodermic thermocouples. Nighttime berry temperatures were close to air temperature in all treatments. Using a piecewise regression model, the 30-mL white- and 30-mL black-balloon treatments predicted berry temperature with the greatest accuracy (R2 = 0.98 and 0.96, respectively). However, during daytime hours only, the 30-mL white-balloon treatment (R2 = 0.91) was more effective at estimating temperature than the 30-mL black-balloon treatment (R2 = 0.78). Housing temperature sensors in balloons proved to be an accurate, practical, and cost-effective solution to estimate berry temperature. Further refinement of this method in different regions, row orientations, training systems, and cultivars is necessary to determine applicability of this approach under a wide range of conditions.
利用葡萄模拟物内的无线数据记录器预测葡萄果实温度
果区叶片去除对葡萄产量和果实品质的影响已被广泛研究。许多果区叶片去除研究表明,葡萄温度影响葡萄成分;然而,很少有研究量化葡萄浆果温度随时间的波动,这可能是因为技术挑战。一种高效、简单、经济的方法来估计葡萄浆果的温度对研究人员和工业界都很有价值。对葡萄温度的一致量化将使研究人员能够比较不同气候和地区的落叶对葡萄成分的影响。量化浆果温度的成本效益高的方法还将为行业成员提供浆果温度模式的特定地点信息,并指导叶片去除实践。我们的目标是开发一种基于空气温度和浆果模拟物来估计浆果温度的方法和模型,从而排除了测量太阳辐射或获得昂贵设备的需要。我们评估了淹没在黑色或白色气球内不同体积水中的无线温度传感器预测浆果温度的能力。处理包括0、10、30、50和70 mL体积的去离子水,装在黑色和白色气球中,以及一个无水的透明塑料袋中。回归分析用于确定传感器记录的温度与皮下热电偶记录的“Camminale noir”浆果温度之间的关系。所有处理的夜间浆果温度都接近空气温度。使用分段回归模型,30mL白气球和30mL黑气球处理预测浆果温度的准确性最高(R2=0.98和0.96)。然而,仅在白天,30毫升白气球处理(R2=0.91)在估计温度方面比30毫升黑气球处理(R2=0.78)更有效。气球中的温度传感器被证明是估计浆果温度的准确、实用和成本效益高的解决方案。有必要在不同地区、行方向、训练系统和品种中进一步完善该方法,以确定该方法在各种条件下的适用性。
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来源期刊
Horttechnology
Horttechnology 农林科学-园艺
CiteScore
2.30
自引率
10.00%
发文量
67
审稿时长
3 months
期刊介绍: HortTechnology serves as the primary outreach publication of the American Society for Horticultural Science. Its mission is to provide science-based information to professional horticulturists, practitioners, and educators; promote and encourage an interchange of ideas among scientists, educators, and professionals working in horticulture; and provide an opportunity for peer review of practical horticultural information.
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