Optimizing Low Power Near L-band Capacitive Resistive Antenna Design for in Silico Plant Root Tomography Based on Genetic Big Bang-Big Crunch
Created by W.Langdon from
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- @InProceedings{Concepcion:2023:IMCOM,
-
author = "Ronnie Concepcion and R-Jay Relano and
Kate Francisco and Jonah Jahara Baun and Adrian Genevie Janairo and
Joseph Aristotle {De Leon} and Llewelyn Espiritu and
Andres Philip Mayol and Mike Louie Enriquez and
Ryan Rhay Vicerra and Argel Bandala",
-
booktitle = "2023 17th International Conference on Ubiquitous
Information Management and Communication (IMCOM)",
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title = "Optimizing Low Power Near L-band Capacitive Resistive
Antenna Design for in Silico Plant Root Tomography
Based on Genetic Big Bang-Big Crunch",
-
year = "2023",
-
abstract = "Root system architecture (RSA) phenotyping is
essential in formulating suitable organic fertilizers,
irrigation, and protective regiments concerning its
functional role in resource acquisition for plant
growth. However, Ground Penetrating Radar, and Magnetic
Resonance, Positron Emission, and X-Ray Micro Computed
Tomography Scanning have high power requirements, and
RGB imaging demands an intrusive scheme. Existing
antenna-based imaging systems are not intelligently
optimized yet. To address these challenges, this study
developed a low power (10 W) near L-band capacitive
resistive antenna system for in silico maize root
tomography optimized using three novel advanced
evolutionary computing, namely, Genetic Particle
Collision Algorithm (gPCA), Genetic Integrated
Radiation Algorithm (gIRA), and Genetic Big Bang-Big
Crunch Algorithm (gBB-BC). Two capacitive resistive
antenna designs were developed using CADFEKO: single
parallel plate and 90-electrode dipole-dipole, where
root information acquisition and processing from
healthy maize seedling inside a PVC pipe intact with
soil were done. Maize root permittivity and soil
quality were set to resemble actual biological
experiments. Transmitter frequency was determined using
multigene (10 genes) genetic programming (MGGP)
integrated with PCA, IRA, and BB-BC to determine the
global maximum voltage at the receiver dipole. Based on
in silico experiments, gBB-BC resulted in 0.984463 GHz
operating frequency that lies within the global
solutions of gPCA (> 1 GHz) and gIRA (< gBB-BC). The
root tomography generated from electric field mapping
using the gBB-BC-based antenna exhibited more
pronounced RSA, while gIRA-based antenna is sensitive
only to root tips. Hence, the established root imaging
protocol here supports faster, low-power, and
non-destructive approaches.",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/IMCOM56909.2023.10035574",
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month = jan,
-
notes = "Also known as \cite{10035574}",
- }
Genetic Programming entries for
Ronnie S Concepcion II
R-Jay Relano
Kate Francisco
Jonah Jahara Garcia Baun
Adrian Genevie Galema Janairo
Joseph Aristotle R De Leon
Llewelyn Espiritu
Andres Philip Mayol
Mike Louie Enriquez
Ryan Rhay P Vicerra
Argel A Bandala
Citations