Real-Time Estimation of Temperature Time Derivative in Inertial Measurement Unit by Finite-Impulse-Response Exponential Regression on Updates

We present a filtering technique that allows estimating the time derivative of slowly changing temperature measured via quantized sensor output in real time. Due to quantization, the output may appear constant for several minutes in a row with the temperature actually changing over time. Another iss...

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Main Authors: Alexander Kozlov, Ilya Tarygin
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/5/1299
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spelling doaj-7256524fa492472ca3bbc8be613255132020-11-25T01:55:18ZengMDPI AGSensors1424-82202020-02-01205129910.3390/s20051299s20051299Real-Time Estimation of Temperature Time Derivative in Inertial Measurement Unit by Finite-Impulse-Response Exponential Regression on UpdatesAlexander Kozlov0Ilya Tarygin1Lomonosov Moscow State University, Faculty of Mechanics and Mathematics, Navigation and Control Lab. Leninskiye Gory, Main Building, 119991 Moscow, RussiaLomonosov Moscow State University, Faculty of Mechanics and Mathematics, Navigation and Control Lab. Leninskiye Gory, Main Building, 119991 Moscow, RussiaWe present a filtering technique that allows estimating the time derivative of slowly changing temperature measured via quantized sensor output in real time. Due to quantization, the output may appear constant for several minutes in a row with the temperature actually changing over time. Another issue is that measurement errors do not represent any kind of white noise. Being typically the case in high-grade inertial navigation systems, these phenomena amid slow variations of temperature prevent any kind of straightforward assessment of its time derivative, which is required for compensating hysteresis-like thermal effects in inertial sensors. The method is based on a short-term temperature prediction represented by an exponentially decaying function, and on the finite-impulse-response Kalman filtering in its numerically stable square-root form, employed for estimating model parameters in real time. Instead of using all of the measurements, the estimation involves only those received when quantized sensor output is updated. We compare the technique against both an ordinary averaging numerical differentiator and a conventional Kalman filter, over a set of real samples recorded from the inertial unit.https://www.mdpi.com/1424-8220/20/5/1299temperature sensortemperature time derivativenumerical differentiationinertial measurement unit
collection DOAJ
language English
format Article
sources DOAJ
author Alexander Kozlov
Ilya Tarygin
spellingShingle Alexander Kozlov
Ilya Tarygin
Real-Time Estimation of Temperature Time Derivative in Inertial Measurement Unit by Finite-Impulse-Response Exponential Regression on Updates
Sensors
temperature sensor
temperature time derivative
numerical differentiation
inertial measurement unit
author_facet Alexander Kozlov
Ilya Tarygin
author_sort Alexander Kozlov
title Real-Time Estimation of Temperature Time Derivative in Inertial Measurement Unit by Finite-Impulse-Response Exponential Regression on Updates
title_short Real-Time Estimation of Temperature Time Derivative in Inertial Measurement Unit by Finite-Impulse-Response Exponential Regression on Updates
title_full Real-Time Estimation of Temperature Time Derivative in Inertial Measurement Unit by Finite-Impulse-Response Exponential Regression on Updates
title_fullStr Real-Time Estimation of Temperature Time Derivative in Inertial Measurement Unit by Finite-Impulse-Response Exponential Regression on Updates
title_full_unstemmed Real-Time Estimation of Temperature Time Derivative in Inertial Measurement Unit by Finite-Impulse-Response Exponential Regression on Updates
title_sort real-time estimation of temperature time derivative in inertial measurement unit by finite-impulse-response exponential regression on updates
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-02-01
description We present a filtering technique that allows estimating the time derivative of slowly changing temperature measured via quantized sensor output in real time. Due to quantization, the output may appear constant for several minutes in a row with the temperature actually changing over time. Another issue is that measurement errors do not represent any kind of white noise. Being typically the case in high-grade inertial navigation systems, these phenomena amid slow variations of temperature prevent any kind of straightforward assessment of its time derivative, which is required for compensating hysteresis-like thermal effects in inertial sensors. The method is based on a short-term temperature prediction represented by an exponentially decaying function, and on the finite-impulse-response Kalman filtering in its numerically stable square-root form, employed for estimating model parameters in real time. Instead of using all of the measurements, the estimation involves only those received when quantized sensor output is updated. We compare the technique against both an ordinary averaging numerical differentiator and a conventional Kalman filter, over a set of real samples recorded from the inertial unit.
topic temperature sensor
temperature time derivative
numerical differentiation
inertial measurement unit
url https://www.mdpi.com/1424-8220/20/5/1299
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