Fernández-Novales Juan, Barrio Ignacio, Diago María Paz
Department of Agriculture and Food Science, University of La Rioja, 26007, Logroño, La Rioja, Spain.
Institute of Grapevine and Wine Sciences, University of La Rioja, Consejo Superior de Investigaciones Científicas, Gobierno de La Rioja, 26007, Logroño, La Rioja, Spain.
Sci Rep. 2023 Aug 17;13(1):13362. doi: 10.1038/s41598-023-39039-z.
Irrigation has a strong impact in terms of yield regulation and grape and wine quality, so the implementation of precision watering systems would facilitate the decision-making process about the water use efficiency and the irrigation scheduling in viticulture. The objectives of this work were two-fold. On one hand, to compare and assess grapevine water status using two different spectral devices assembled in a mobile platform and to evaluate their capability to map the spatial variability of the plant water status in two commercial vineyards from July to early October in season 2021, and secondly to develop an algorithm capable of automate the spectral acquisition process using one of the two spectral sensors previously tested. Contemporarily to the spectral measurements collected from the ground vehicle at solar noon, stem water potential (Ψ) was used as the reference method to evaluate the grapevine water status. Calibration and prediction models for grapevine water status assessment were performed using the Partial least squares (PLS) regression and the Variable Importance in the Projection (VIP) method. The best regression models returned a determination coefficient for cross validation (R) and external validation (R) of 0.70 and 0.75 respectively, and the standard error of cross validation (RMSECV) values were lower than 0.105 MPa and 0.128 MPa for Tempranillo and Graciano varieties using a more expensive and heavier near-infrared (NIR) spectrometer (spectral range 1200-2100 nm). Remarkable models were also built with the miniaturized, low-cost spectral sensor (operating between 900-1860 nm) ranging from 0.69 to 0.71 for R, around 0.74 in both varieties for R and the RMSECV values were below 0.157 MPa, while the RMSEP values did not exceed 0.151 MPa in both commercial vineyards. This work also includes the development of a software which automates data acquisition and allows faster (up to 40% of time saving in the field) and more efficient deployment of the developed algorithm. The encouraging results presented in this work demonstrate the great potential of this methodology to assess the water status of the vineyard and estimate its spatial variability in different commercial vineyards, providing useful information for better irrigation scheduling.
灌溉对产量调控以及葡萄和葡萄酒品质有着重大影响,因此实施精准灌溉系统将有助于在葡萄栽培中就水分利用效率和灌溉计划做出决策。这项工作有两个目标。一方面,在一个移动平台上使用两种不同的光谱设备比较和评估葡萄的水分状况,并评估它们在2021年生长季7月至10月初绘制两个商业葡萄园植物水分状况空间变异性的能力;其次,开发一种算法,能够使用之前测试过的两种光谱传感器之一自动进行光谱采集过程。在太阳正午从地面车辆收集光谱测量数据的同时,茎水势(Ψ)被用作评估葡萄水分状况的参考方法。使用偏最小二乘(PLS)回归和投影变量重要性(VIP)方法建立了用于评估葡萄水分状况的校准和预测模型。最佳回归模型的交叉验证决定系数(R)和外部验证决定系数(R)分别为0.70和0.75,使用更昂贵、更重的近红外(NIR)光谱仪(光谱范围1200 - 2100 nm)时,丹魄和格拉西亚诺品种的交叉验证标准误差(RMSECV)值分别低于0.105 MPa和0.128 MPa。使用小型化、低成本光谱传感器(工作在900 - 1860 nm之间)也建立了显著的模型,R值在0.69至0.71之间,两个品种的R值均约为0.74,RMSECV值低于0.157 MPa,而在两个商业葡萄园中RMSEP值均未超过0.151 MPa。这项工作还包括开发一种软件,该软件可自动采集数据,并能更快(在田间节省高达40%的时间)且更有效地部署所开发的算法。这项工作中呈现的令人鼓舞的结果表明,这种方法在评估葡萄园水分状况和估计不同商业葡萄园中其空间变异性方面具有巨大潜力,可为更好的灌溉计划提供有用信息。