Intelligent Force-Measurement System Use in Shock Tunnel

The inertial vibration of the force measurement system (FMS) has a large influence on the force measuring result of aircraft, especially on some tests carried out in high-enthalpy impulse facilities, such as in a shock tunnel. When force tests are conducted in a shock tunnel, the low-frequency vibra...

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Main Authors: Yunpeng Wang, Zonglin Jiang
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/21/6179
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spelling doaj-c99b22330e3841a6956ac0273a0904792020-11-25T03:44:05ZengMDPI AGSensors1424-82202020-10-01206179617910.3390/s20216179Intelligent Force-Measurement System Use in Shock TunnelYunpeng Wang0Zonglin Jiang1State Key Laboratory of High Temperature Gas Dynamics, Institute of Mechanics, Chinese Academy of Sciences, Beijing 100190, ChinaState Key Laboratory of High Temperature Gas Dynamics, Institute of Mechanics, Chinese Academy of Sciences, Beijing 100190, ChinaThe inertial vibration of the force measurement system (FMS) has a large influence on the force measuring result of aircraft, especially on some tests carried out in high-enthalpy impulse facilities, such as in a shock tunnel. When force tests are conducted in a shock tunnel, the low-frequency vibrations of the FMS and its motion cannot be addressed through digital filtering because of the inertial forces, which are caused by the impact flow during the starting process of the shock tunnel. Therefore, this paper focuses on the dynamic characteristics of the performance of the FMS. A new method—i.e., deep-learning-based single-vector dynamic self-calibration (DL-based SV-DSC) of an impulse FMS, is proposed to increase the accuracy of aerodynamic force measurements in a shock tunnel. A deep-learning technique is used to train the dynamic model of the FMS in this study. Convolutional neural networks with a simple structure are applied to describe the dynamic modeling so that the low-frequency vibration signals are eliminated from the test results of the shock tunnel. By validation of the force test results measured in a shock tunnel, the current trained model can realize intelligent processing of the balance signals of the FMS. Based on this new method of dynamic calibration, the reliability and accuracy of force data processing are well verified.https://www.mdpi.com/1424-8220/20/21/6179artificial intelligencedeep learningdynamic calibrationforce-measurement systemstrain-gauge balance
collection DOAJ
language English
format Article
sources DOAJ
author Yunpeng Wang
Zonglin Jiang
spellingShingle Yunpeng Wang
Zonglin Jiang
Intelligent Force-Measurement System Use in Shock Tunnel
Sensors
artificial intelligence
deep learning
dynamic calibration
force-measurement system
strain-gauge balance
author_facet Yunpeng Wang
Zonglin Jiang
author_sort Yunpeng Wang
title Intelligent Force-Measurement System Use in Shock Tunnel
title_short Intelligent Force-Measurement System Use in Shock Tunnel
title_full Intelligent Force-Measurement System Use in Shock Tunnel
title_fullStr Intelligent Force-Measurement System Use in Shock Tunnel
title_full_unstemmed Intelligent Force-Measurement System Use in Shock Tunnel
title_sort intelligent force-measurement system use in shock tunnel
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-10-01
description The inertial vibration of the force measurement system (FMS) has a large influence on the force measuring result of aircraft, especially on some tests carried out in high-enthalpy impulse facilities, such as in a shock tunnel. When force tests are conducted in a shock tunnel, the low-frequency vibrations of the FMS and its motion cannot be addressed through digital filtering because of the inertial forces, which are caused by the impact flow during the starting process of the shock tunnel. Therefore, this paper focuses on the dynamic characteristics of the performance of the FMS. A new method—i.e., deep-learning-based single-vector dynamic self-calibration (DL-based SV-DSC) of an impulse FMS, is proposed to increase the accuracy of aerodynamic force measurements in a shock tunnel. A deep-learning technique is used to train the dynamic model of the FMS in this study. Convolutional neural networks with a simple structure are applied to describe the dynamic modeling so that the low-frequency vibration signals are eliminated from the test results of the shock tunnel. By validation of the force test results measured in a shock tunnel, the current trained model can realize intelligent processing of the balance signals of the FMS. Based on this new method of dynamic calibration, the reliability and accuracy of force data processing are well verified.
topic artificial intelligence
deep learning
dynamic calibration
force-measurement system
strain-gauge balance
url https://www.mdpi.com/1424-8220/20/21/6179
work_keys_str_mv AT yunpengwang intelligentforcemeasurementsystemuseinshocktunnel
AT zonglinjiang intelligentforcemeasurementsystemuseinshocktunnel
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