| Literature DB >> 22163656 |
Jesus Roberto Millan-Almaraz1, Rene de Jesus Romero-Troncoso, Ramon Gerardo Guevara-Gonzalez, Luis Miguel Contreras-Medina, Roberto Valentin Carrillo-Serrano, Roque Alfredo Osornio-Rios, Carlos Duarte-Galvan, Miguel Angel Rios-Alcaraz, Irineo Torres-Pacheco.
Abstract
Plant transpiration is considered one of the most important physiological functions because it constitutes the plants evolving adaptation to exchange moisture with a dry atmosphere which can dehydrate or eventually kill the plant. Due to the importance of transpiration, accurate measurement methods are required; therefore, a smart sensor that fuses five primary sensors is proposed which can measure air temperature, leaf temperature, air relative humidity, plant out relative humidity and ambient light. A field programmable gate array based unit is used to perform signal processing algorithms as average decimation and infinite impulse response filters to the primary sensor readings in order to reduce the signal noise and improve its quality. Once the primary sensor readings are filtered, transpiration dynamics such as: transpiration, stomatal conductance, leaf-air-temperature-difference and vapor pressure deficit are calculated in real time by the smart sensor. This permits the user to observe different primary and calculated measurements at the same time and the relationship between these which is very useful in precision agriculture in the detection of abnormal conditions. Finally, transpiration related stress conditions can be detected in real time because of the use of online processing and embedded communications capabilities.Entities:
Keywords: field programmable gate array; phytomonitoring; precision agriculture; smart sensor; stomatal conductance; transpiration; water stress
Mesh:
Year: 2010 PMID: 22163656 PMCID: PMC3231202 DOI: 10.3390/s100908316
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.Leaf cut water scheme, showing CO2 and H2O flows.
Figure 2.Transpiration smart sensor architecture.
Figure 3.Block diagram of transpiration smart sensing cycle.
Figure 4.Transpiration estimation signal processing methodology.
Figure 5.Stomatal conductance estimation signal processing methodology.
Figure 6.VPD, LATD and Light estimation signal processing methodology.
Figure 7.(a) Transpiration smart sensor experimental setup. (b) Phytech PTM-48M setup.
Figure 8.Primary sensors signal comparison. The proposed smart sensor signals are in red and Phytech PTM-48M readings in blue.
Figure 9.Comparison between the developed smart sensor and the PTM-48M transpiration estimations.
Figure 10.Primary sensor readings of the proposed smart sensor.
Figure 11.Transpiration dynamics results.