| Literature DB >> 31561415 |
Anis Taleb Bendiab1,2, Maxime Ryckewaert3, Daphné Heran4, Raphaël Escalier5, Raphaël K Kribich6, Caroline Vigreux7, Ryad Bendoula8.
Abstract
The leaf coverage surface is a key measurement of the spraying process to maximize spray efficiency. To determine leaf coverage surface, the development of optical micro-sensors that, coupled with a multivariate spectral analysis, will be able to measure the volume of the droplets deposited on their surface is proposed. Rib optical waveguides based on Ge-Se-Te chalcogenide films were manufactured and their light transmission was studied as a response to the deposition of demineralized water droplets on their surface. The measurements were performed using a dedicated spectrophotometric bench to record the transmission spectra at the output of the waveguides, before (reference) and after drop deposition, in the wavelength range between 1200 and 2000 nm. The presence of a hollow at 1450 nm in the relative transmission spectra has been recorded. This corresponds to the first overtone of the O-H stretching vibration in water. This result tends to show that the optical intensity decrease observed after droplet deposition is partly due to absorption by water of the light energy carried by the guided mode evanescent field. The probe based on Ge-Se-Te rib optical waveguides is thus sensitive throughout the whole range of volumes studied, i.e., from 0.1 to 2.5 μL. Principal Component Analysis and Partial Least Square as multivariate techniques then allowed the analysis of the statistics of the measurements and the predictive character of the transmission spectra. It confirmed the sensitivity of the measurement system to the water absorption, and the predictive model allowed the prediction of droplet volumes on an independent set of measurements, with a correlation of 66.5% and a precision of 0.39 μL.Entities:
Keywords: crop protection; droplet characterization; infrared spectroscopy; optical micro-sensors; partial least squares (PLS); precision agriculture; principal component analysis (PCA)
Year: 2019 PMID: 31561415 PMCID: PMC6806293 DOI: 10.3390/s19194168
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Spectrophotometric bench used to characterize droplet deposits onto the rib waveguide surface. Zoom on the component to visualize the droplet deposited on the top to perform the tests.
Figure 2Writing of the matrix X of the initial data according to the PCA model.
Ge-Se-Te core and cladding layer compositions and optogeometrical properties.
| Film | Thickness (μm) ± 0.01 μm | Composition ± 2 at.% | n at 1.55 μm ± 0.01 | Δn = ncore − ncladd |
|---|---|---|---|---|
| Cladding layer | 5.85 | Ge25Se61Te14 | 2.49 | 0.11 |
| Core layer | 5.91 | Ge26Se53Te21 | 2.60 |
Figure 3SEM picture of a typical rib waveguide.
Figure 4Transmittance spectra obtained from measurements. Outliers are highlighted in dashed lines. The insert shows the transmittance at 1450 nm for each volume.
Figure 5Scores (a) and loadings (b) related to principal component 1 (PC1). Note that in (a) the samples are classified by increasing volume, regardless of the origin of the series (S1, S2, or S3).
Figure 6Scores (a) and loadings (b) related to PC2. Note that in (a) the samples are classified by increasing volume, regardless of the origin of the series (S1, S2, or S3).
Figure 7Score plot on PC1 and PC2 generated from the whole dataset.
Figure 8Model performance for the (a) cross-validation and (b) prediction.