Design Optimization and Fabrication of High-Sensitivity SOI Pressure Sensors with High Signal-to-Noise Ratios Based on Silicon Nanowire Piezoresistors

In order to meet the requirement of high sensitivity and signal-to-noise ratios (SNR), this study develops and optimizes a piezoresistive pressure sensor by using double silicon nanowire (SiNW) as the piezoresistive sensing element. First of all, ANSYS finite element method and voltage noise models...

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Main Authors: Jiahong Zhang, Yang Zhao, Yixian Ge, Min Li, Lijuan Yang, Xiaoli Mao
Format: Article
Language:English
Published: MDPI AG 2016-10-01
Series:Micromachines
Subjects:
Online Access:http://www.mdpi.com/2072-666X/7/10/187
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spelling doaj-53493238c6f245f8ba5761bacfae33052020-11-24T23:38:34ZengMDPI AGMicromachines2072-666X2016-10-0171018710.3390/mi7100187mi7100187Design Optimization and Fabrication of High-Sensitivity SOI Pressure Sensors with High Signal-to-Noise Ratios Based on Silicon Nanowire PiezoresistorsJiahong Zhang0Yang Zhao1Yixian Ge2Min Li3Lijuan Yang4Xiaoli Mao5Jiangsu Key Laboratory of Meteorological Observation and information Processing, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaSchool of Electronic and Information Engineering, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaJiangsu Key Laboratory of Meteorological Observation and information Processing, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaJiangsu Key Laboratory of Meteorological Observation and information Processing, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaSchool of Information Science and Technology, Suqian College, Suqian 223800, ChinaJiangsu Key Laboratory of Meteorological Observation and information Processing, Nanjing University of Information Science and Technology, Nanjing 210044, ChinaIn order to meet the requirement of high sensitivity and signal-to-noise ratios (SNR), this study develops and optimizes a piezoresistive pressure sensor by using double silicon nanowire (SiNW) as the piezoresistive sensing element. First of all, ANSYS finite element method and voltage noise models are adopted to optimize the sensor size and the sensor output (such as sensitivity, voltage noise and SNR). As a result, the sensor of the released double SiNW has 1.2 times more sensitivity than that of single SiNW sensor, which is consistent with the experimental result. Our result also displays that both the sensitivity and SNR are closely related to the geometry parameters of SiNW and its doping concentration. To achieve high performance, a p-type implantation of 5 × 1018 cm−3 and geometry of 10 µm long SiNW piezoresistor of 1400 nm × 100 nm cross area and 6 µm thick diaphragm of 200 µm × 200 µm are required. Then, the proposed SiNW pressure sensor is fabricated by using the standard complementary metal-oxide-semiconductor (CMOS) lithography process as well as wet-etch release process. This SiNW pressure sensor produces a change in the voltage output when the external pressure is applied. The involved experimental results show that the pressure sensor has a high sensitivity of 495 mV/V·MPa in the range of 0–100 kPa. Nevertheless, the performance of the pressure sensor is influenced by the temperature drift. Finally, for the sake of obtaining accurate and complete information over wide temperature and pressure ranges, the data fusion technique is proposed based on the back-propagation (BP) neural network, which is improved by the particle swarm optimization (PSO) algorithm. The particle swarm optimization–back-propagation (PSO–BP) model is implemented in hardware using a 32-bit STMicroelectronics (STM32) microcontroller. The results of calibration and test experiments clearly prove that the PSO–BP neural network can be effectively applied to minimize sensor errors derived from temperature drift.http://www.mdpi.com/2072-666X/7/10/187silicon nanowirepiezoresistive pressure sensorhigh-sensitivityhigh signal-to-noise ratiooptimized designfabrication processdata fusionparticle swarm optimization–back-propagation (PSO–BP) neural networktemperature drift compensation
collection DOAJ
language English
format Article
sources DOAJ
author Jiahong Zhang
Yang Zhao
Yixian Ge
Min Li
Lijuan Yang
Xiaoli Mao
spellingShingle Jiahong Zhang
Yang Zhao
Yixian Ge
Min Li
Lijuan Yang
Xiaoli Mao
Design Optimization and Fabrication of High-Sensitivity SOI Pressure Sensors with High Signal-to-Noise Ratios Based on Silicon Nanowire Piezoresistors
Micromachines
silicon nanowire
piezoresistive pressure sensor
high-sensitivity
high signal-to-noise ratio
optimized design
fabrication process
data fusion
particle swarm optimization–back-propagation (PSO–BP) neural network
temperature drift compensation
author_facet Jiahong Zhang
Yang Zhao
Yixian Ge
Min Li
Lijuan Yang
Xiaoli Mao
author_sort Jiahong Zhang
title Design Optimization and Fabrication of High-Sensitivity SOI Pressure Sensors with High Signal-to-Noise Ratios Based on Silicon Nanowire Piezoresistors
title_short Design Optimization and Fabrication of High-Sensitivity SOI Pressure Sensors with High Signal-to-Noise Ratios Based on Silicon Nanowire Piezoresistors
title_full Design Optimization and Fabrication of High-Sensitivity SOI Pressure Sensors with High Signal-to-Noise Ratios Based on Silicon Nanowire Piezoresistors
title_fullStr Design Optimization and Fabrication of High-Sensitivity SOI Pressure Sensors with High Signal-to-Noise Ratios Based on Silicon Nanowire Piezoresistors
title_full_unstemmed Design Optimization and Fabrication of High-Sensitivity SOI Pressure Sensors with High Signal-to-Noise Ratios Based on Silicon Nanowire Piezoresistors
title_sort design optimization and fabrication of high-sensitivity soi pressure sensors with high signal-to-noise ratios based on silicon nanowire piezoresistors
publisher MDPI AG
series Micromachines
issn 2072-666X
publishDate 2016-10-01
description In order to meet the requirement of high sensitivity and signal-to-noise ratios (SNR), this study develops and optimizes a piezoresistive pressure sensor by using double silicon nanowire (SiNW) as the piezoresistive sensing element. First of all, ANSYS finite element method and voltage noise models are adopted to optimize the sensor size and the sensor output (such as sensitivity, voltage noise and SNR). As a result, the sensor of the released double SiNW has 1.2 times more sensitivity than that of single SiNW sensor, which is consistent with the experimental result. Our result also displays that both the sensitivity and SNR are closely related to the geometry parameters of SiNW and its doping concentration. To achieve high performance, a p-type implantation of 5 × 1018 cm−3 and geometry of 10 µm long SiNW piezoresistor of 1400 nm × 100 nm cross area and 6 µm thick diaphragm of 200 µm × 200 µm are required. Then, the proposed SiNW pressure sensor is fabricated by using the standard complementary metal-oxide-semiconductor (CMOS) lithography process as well as wet-etch release process. This SiNW pressure sensor produces a change in the voltage output when the external pressure is applied. The involved experimental results show that the pressure sensor has a high sensitivity of 495 mV/V·MPa in the range of 0–100 kPa. Nevertheless, the performance of the pressure sensor is influenced by the temperature drift. Finally, for the sake of obtaining accurate and complete information over wide temperature and pressure ranges, the data fusion technique is proposed based on the back-propagation (BP) neural network, which is improved by the particle swarm optimization (PSO) algorithm. The particle swarm optimization–back-propagation (PSO–BP) model is implemented in hardware using a 32-bit STMicroelectronics (STM32) microcontroller. The results of calibration and test experiments clearly prove that the PSO–BP neural network can be effectively applied to minimize sensor errors derived from temperature drift.
topic silicon nanowire
piezoresistive pressure sensor
high-sensitivity
high signal-to-noise ratio
optimized design
fabrication process
data fusion
particle swarm optimization–back-propagation (PSO–BP) neural network
temperature drift compensation
url http://www.mdpi.com/2072-666X/7/10/187
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