Design optimization of a microelectromechanical electric field sensor using genetic algorithms

This thesis studies the application of a multi-objective niched Pareto genetic algorithm on the design optimization of an electric field mill sensor. The original sensor requires resonant operation. The objective of the algorithm presented is to optimize the geometry eliminating the need for resonan...

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Bibliographic Details
Main Author: Roy, Mark
Other Authors: Shafai, Cyrus (Electrical & Computer Engineering)
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/1993/8920
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spelling ndltd-MANITOBA-oai-mspace.lib.umanitoba.ca-1993-89202014-01-31T03:33:35Z Design optimization of a microelectromechanical electric field sensor using genetic algorithms Roy, Mark Shafai, Cyrus (Electrical & Computer Engineering) McLeod, Robert D. (Electrical & Computer Engineering); Wu, Christine (Mechanical & Manufacturing Engineering) MEMS Genetic Algorithm Optimization Sensors Evolutionary Computing Finite Element Analysis Electric Field Measurement This thesis studies the application of a multi-objective niched Pareto genetic algorithm on the design optimization of an electric field mill sensor. The original sensor requires resonant operation. The objective of the algorithm presented is to optimize the geometry eliminating the need for resonant operation which can be difficult to maintain in the presence of an unpredictable changing environment. The algorithm evaluates each design using finite element simulations. A population of sensor designs is evolved towards an optimal Pareto frontier of solutions. Several candidate solutions are selected that offer superior displacement, frequency, and stress concentrations. These designs were modified for fabrication using the PolyMUMPs abrication process but failed to operate due to the process. In order to fabricate the sensors in-house with a silicon-on-glass process, an anodic bonding apparatus has been designed, built, and tested. 2012-09-24T17:14:05Z 2012-09-24T17:14:05Z 2012-09-24 http://hdl.handle.net/1993/8920
collection NDLTD
sources NDLTD
topic MEMS
Genetic Algorithm
Optimization
Sensors
Evolutionary Computing
Finite Element Analysis
Electric Field Measurement
spellingShingle MEMS
Genetic Algorithm
Optimization
Sensors
Evolutionary Computing
Finite Element Analysis
Electric Field Measurement
Roy, Mark
Design optimization of a microelectromechanical electric field sensor using genetic algorithms
description This thesis studies the application of a multi-objective niched Pareto genetic algorithm on the design optimization of an electric field mill sensor. The original sensor requires resonant operation. The objective of the algorithm presented is to optimize the geometry eliminating the need for resonant operation which can be difficult to maintain in the presence of an unpredictable changing environment. The algorithm evaluates each design using finite element simulations. A population of sensor designs is evolved towards an optimal Pareto frontier of solutions. Several candidate solutions are selected that offer superior displacement, frequency, and stress concentrations. These designs were modified for fabrication using the PolyMUMPs abrication process but failed to operate due to the process. In order to fabricate the sensors in-house with a silicon-on-glass process, an anodic bonding apparatus has been designed, built, and tested.
author2 Shafai, Cyrus (Electrical & Computer Engineering)
author_facet Shafai, Cyrus (Electrical & Computer Engineering)
Roy, Mark
author Roy, Mark
author_sort Roy, Mark
title Design optimization of a microelectromechanical electric field sensor using genetic algorithms
title_short Design optimization of a microelectromechanical electric field sensor using genetic algorithms
title_full Design optimization of a microelectromechanical electric field sensor using genetic algorithms
title_fullStr Design optimization of a microelectromechanical electric field sensor using genetic algorithms
title_full_unstemmed Design optimization of a microelectromechanical electric field sensor using genetic algorithms
title_sort design optimization of a microelectromechanical electric field sensor using genetic algorithms
publishDate 2012
url http://hdl.handle.net/1993/8920
work_keys_str_mv AT roymark designoptimizationofamicroelectromechanicalelectricfieldsensorusinggeneticalgorithms
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