| Literature DB >> 28638439 |
Lorenzo Baldacci1, Mario Pagano2, Luca Masini1, Alessandra Toncelli3, Giorgio Carelli4, Paolo Storchi2, Alessandro Tredicucci3.
Abstract
BACKGROUND: Plant water resource management is one of the main future challenges to fight recent climatic changes. The knowledge of the plant water content could be indispensable for water saving strategies. Terahertz spectroscopic techniques are particularly promising as a non-invasive tool for measuring leaf water content, thanks to the high predominance of the water contribution to the total leaf absorption. Terahertz quantum cascade lasers (THz QCL) are one of the most successful sources of THz radiation.Entities:
Keywords: Draught stress; Terahertz quantum cascade laser; Vitis vinifera L.; Water content
Year: 2017 PMID: 28638439 PMCID: PMC5474302 DOI: 10.1186/s13007-017-0197-z
Source DB: PubMed Journal: Plant Methods ISSN: 1746-4811 Impact factor: 4.993
Fig. 1a Experimental setup for THz transmission measurements. A current pulser drives a THz cryo-cooled QCL to generate laser radiation. The laser beam (red straight line in the picture) is coupled to a Fresnel Lens and a Picarin lens to produce a spot on the plane where the leaf is placed. The leaf is still attached to the plant, and its position is manually controlled. The laser beam transmitted by the leaf is collected by a Golay cell and sent to a lock-in amplifier. b Example of leaf projected area measurement. The picture to be analyzed is made by the fresh leaf with its upper side facing down on a white sheet, and a reference scale (ruler on the right hand side). Fiji ImageJ segmenting line tool was employed to trace the leaf contour and measure the area of the closed figure by using the reference scale. c Measured optical depth as function of the leaf thickness. The experimental data (black squares) are linearly fitted (red straight line), according to the Lambert–Beer’s law in Eq. (4). The linear fit has a coefficient of determination ; the slope stems from the absorption coefficient of the material, and it is consistent with other absorption coefficients measured for other plant species [16]. The model intercept has a p value of 0.75. Its poor statistical significance enforces the assumption of a Lambert–Beer’s law
Fig. 2a Measured optical depth as function of the leaf water mass . The experimental data (black squares) are linearly fitted (red straight line) as . The linear fit has a coefficient of determination ; the coefficients are and . b Measured optical depth versus . The coefficient of determination is greatly improved with respect to the previous model, by the simple measurement of the leaf projective area A. In this case the linear model produces a best fit with . There are two statistically significant parameters: the intercept may be ascribed to residual scattering and absorption from the leaf dry mass and vapor, whereas the slope is linked to the effective absorption coefficient of water; according to Eqs. (5) and (6) . If the intercept is set to 0 as proposed in Eq. (6), the absorption coefficient changes to , and the model fit accuracy is reduced (see the green line in the graph)
Fig. 3How the nonlinear relations between A, and can be used to improve the linear regression model. a Measured versus A. We report only some of the experimental data points, for the sake of clarity, grouped in three set according to similar mass: the light green squares represent all the samples having mg, the emerald squares mg, and the dark green squares mg. The dashed curves are obtained from Eq. (6), using the mean of each data group. b Measured A versus . Referring to the data points of Fig. 2b, multiplication of and by A improves the linearity of the model. The specific nonlinear relation between A and (b) spreads the data cloud horizontally, whereas the inverse proportionality between and A (a) reduces the data fluctuations at given . c The process explained before results in the graph of as function of the water mass . In this case the linear best fit (red line) has two statistically significant parameters. The intercept (p value ) is ascribed to light scattering, whereas the slope may be still related to an effective absorption coefficient of water. The linear regression best fit has a coefficient of determination , which means that our linear model explains of the experimental data fluctuations