Please use this identifier to cite or link to this item: https://hdl.handle.net/10321/3956
Title: Thermocouple signal conditioning using augmented device tables and table look-up neural networks, with validation in J-Thermocouples
Authors: Maseko, Moses L. 
Agee, John T. 
Davidson, Innocent
Keywords: Artificial neural networks;Thermocouples;Nonlinear, Multilayer perceptron
Issue Date: 25-Jan-2022
Publisher: IEEE
Source: Maseko, M.L., Agee, J.T. and Davidson, I. 2022. Thermocouple signal conditioning using augmented device tables and table look-up neural networks, with validation in J-Thermocouples. Presented at: 2022 30th Southern African Universities Power Engineering Conference (SAUPEC). doi:10.1109/saupec55179.2022.9730718
Conference: 2022 30th Southern African Universities Power Engineering Conference (SAUPEC) 
Abstract: 
The relatively high accuracy, large measurement range, and durability of thermocouple devices make these devices to probably be the most-widely used temperature measuring devices in industrial applications. The ability of thermocouples to sense temperature is derived from the generation of thermoelectric voltages arising due to temperature differences between the hot and cold junctions of the thermocouple. Thermocouple temperature measurement processes suffer from inaccuracies arising from both the unwanted or undetected variations in the cold junction temperature of the thermocouple, and nonlinearities in the generated thermoelectric voltage. This paper presents an enhancement of thermocouple temperature measurement using a combination of augmented thermocouple tables generated from thermocouple polynomial functions, look-up MLP neural networks trained to accept the thermocouple output voltage, and the cold or reference junction temperature measurements: to produce improved hot-junction temperature outputs. Experimental validation of the current approach for a J thermocouple, using data from augmented device tables, reproduced the measured temperature values with a worst-case error of 0.0094%.
URI: https://hdl.handle.net/10321/3956
ISBN: 9781665468879
DOI: 10.1109/saupec55179.2022.9730718
Appears in Collections:Research Publications (Engineering and Built Environment)

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