FPGA-Based Smart Sensor for Drought Stress Detection in Tomato Plants Using Novel Physiological Variables and Discrete Wavelet Transform

نویسندگان

  • Carlos Duarte-Galvan
  • René de Jesús Romero-Troncoso
  • Irineo Torres-Pacheco
  • Ramon Gerardo Guevara-Gonzalez
  • Arturo A. Fernandez-Jaramillo
  • Luis Miguel Contreras-Medina
  • Roberto V. Carrillo-Serrano
  • Jesus Roberto Millan-Almaraz
چکیده

Soil drought represents one of the most dangerous stresses for plants. It impacts the yield and quality of crops, and if it remains undetected for a long time, the entire crop could be lost. However, for some plants a certain amount of drought stress improves specific characteristics. In such cases, a device capable of detecting and quantifying the impact of drought stress in plants is desirable. This article focuses on testing if the monitoring of physiological process through a gas exchange methodology provides enough information to detect drought stress conditions in plants. The experiment consists of using a set of smart sensors based on Field Programmable Gate Arrays (FPGAs) to monitor a group of plants under controlled drought conditions. The main objective was to use different digital signal processing techniques such as the Discrete Wavelet Transform (DWT) to explore the response of plant physiological processes to drought. Also, an index-based methodology was utilized to compensate the spatial variation inside the greenhouse. As a result, differences between treatments were determined to be independent of climate variations inside the greenhouse. Finally, after using the DWT as digital filter, results demonstrated that the proposed system is capable to reject high frequency noise and to detect drought conditions.

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عنوان ژورنال:

دوره 14  شماره 

صفحات  -

تاریخ انتشار 2014