Accurate prediction of heat flux is desired in many transient aerospace and heat treatment applications, but it is challenging since the heat flux-temperature integral relationship implicitly requires the time derivative of experimentally obtained temperature data. The temperature data collected in practical environments invariably contain noise from various sources. Predicting heat flux from transient temperature data is well known to be ill posed. High-frequency noise in the temperature data causes unbounded numerical derivatives with increasing sampling rate. However, it has theoretically been demonstrated that a stable and accurate heat flux can be predicted using the time derivative of temperature (dT/dt) even in the presence of significant white noise. This motivates this paper in developing a voltage-rate sensor interface for low-frequency applications in solid heat-conducting bodies. The present concept is to amplitude modulate the voltage data and then differentiate them at a higher frequency. The voltage-rate interface, which is used in conjunction with an existing in situ temperature sensor, can deliver real-time heating rate with improved SNR, which is verified by both simulation (Matlab and PSpice) and experiments. The SNR is also shown to improve with increasing sampling rate, which is an advantage of this interface.
[1]
M. Keyhani,et al.
Heating Rate dT/dt Measurements Developed from In-Situ Thermocouples using a Voltage-Rate Interface for Advanced Thermal Diagnostics AIAA-2006-3636
,
2006
.
[2]
Jay I. Frankel.
Regularization of inverse heat conduction by combination of rate sensor analysis and analytic continuation
,
2007
.
[3]
Jay I Frankel,et al.
Inferring convective and radiative heating loads from transient surface temperature measurements in the half-space
,
2007
.
[4]
Gabor C. Temes,et al.
Circuit techniques for reducing the effects of op-amp imperfections: autozeroing, correlated double sampling, and chopper stabilization
,
1996,
Proc. IEEE.
[5]
Otmar Scherzer,et al.
Inverse Problems Light: Numerical Differentiation
,
2001,
Am. Math. Mon..
[6]
J. I. Frankel.
Motivation for the development of new thermal rate sensors for material science applications
,
2005
.
[7]
Jay I. Frankel,et al.
Stabilization of Ill-Posed Problems Through Thermal Rate Sensors
,
2006
.