1. Introduction
Filament thermocouple has as characteristics simple structure, fast dynamic response, wide range of temperature measurement, ability to measure the ‘single point’ temperature, and its electrical signal is easy to access to the test system, so it has been widely applied in industrial production and scientific research, such as wind tunnel heat flow experiment and explosive thermal shock experiment. Therefore, it is very important to accurately obtain the temperature of the heat sources during the actual tests [
1,
2,
3,
4]. Whether there is a wind tunnel environment or an explosion field one, the heat source is usually a directional narrow pulse signal. Its rising time can reach the level of microseconds, and pulse width is in milliseconds. The response of thermocouple to it is impulse response and limited by the dynamic characteristics of the thermocouple itself, such as the thermal inertia of temperature sensing element. Its dynamic response process cannot accurately recover the thermal shock process, which generates great dynamic error [
5]. Therefore, it is necessary to analyze whether thermocouple’s dynamic characteristics are competent for the transient temperature test.
The temperature measurement accuracy of the thermocouple is directly affected by the junction welding quality [
6]. For filament thermocouple to reduce the heat conduction error and dynamic response error, the structures of junction welded are different. The frequently-used structures are butt-welded and ball-welded as shown in
Figure 1a,b.
We can establish a dynamic calibration system with laser pulse as excitation source [
7,
8,
9], excite the thermocouple with a narrow pulse signal, and establish an inverse mathematical model of thermocouple by means of the inter-conversion for the input/output relationship of the thermocouple. Many scholars describe this model as a transfer function, and nonlinear system identification is often used to build a mathematical model to correct the dynamic error with the output of this model and recover the temperature signal at the thermocouple junction. The problem lies in neglecting the physical process of thermocouple heat conduction; thus, the models built are unpractical for engineering applications with large temperature range [
10,
11,
12]. Therefore, from the perspective of inverse filtering correction, the problem of inverse mathematical model identification for the thermocouple can be transformed into the problem of the solution of the process of inverse heat conduction [
13].
In inverse heat conduction, our purpose is to correct the impulse response error of thermocouple to approach the actual surface temperature of thermocouple junction. The thermocouple is composed of two metal conductors made of different materials; thus, the two conductors produce two thermal properties during heat conduction. According to the working principle of thermocouple, the thermoelectric potential of the thermocouple is determined by the difference in the temperature distribution function between the two ends of the thermocouple. Therefore, we define the temperature distribution functions at both ends of the thermocouple. The measured output thermoelectric potential difference of thermocouple during thermal shock can be used to solve the surface temperature of thermocouple junction. Therefore, this process can be called the non-characteristic Cauchy problem during heat conduction [
14,
15]. Any tiny measurement error in the non-characteristic Cauchy problem of heat equation may cause a large error of solution. The continuous dependence of Cauchy numerical solutions were obtained under additional conditions. This is known as conditional stability [
16]. In addition, the stable solution of ill-posed problem can be theoretically reconstructed under priori conditions. Due to the severity of this problem, no satisfactory stable approach was not obtained for the Cauchy problem of most classical heat conduction equations, then some regularization strategies are needed [
17]. For the 1D inverse heat conduction in monolayer domain, theoretical study and computational implementation have been well studied [
18,
19], but for thermocouple structure, the problem is transformed into complex inverse heat conduction in two-layer domain. We can decompose multilayer inverse heat conduction into multiple monolayer problems and solve each monolayer problem layer by layer by using the relationship between the layers.
The filament thermocouple was used as a two-layer volume; the junction was defined as the interface between two layers; the heat flow direction is perpendicular to the thermocouple junction; the two metal conductors were defined as of equal length, and one of them is as the free end that its boundary temperature is 0 °C. See
Figure 2.
Here, is the length of the two conductors of the thermocouple (the free end is the first layer; then, the initial value of the working end is ); and are the regions of the free end and the working end, respectively.
Let us say that
,
are the thermal conductivities of the thermocouple’s two conductors, and
are the thermal diffusion coefficients of the first layer and the second layer, respectively. The temperature distributions in the first and second layers are expressed by
and
,
t is the time of the heat transfer process. The temperature distributions in
and
are expressed by the following partial differential equations:
The additional initial value and the boundary conditions are as follows:
in Equation (4) is boundary temperature of the working end. When boundary temperature of the free end is 0 °C, we can use as junction temperature of the thermocouple.
For similar inverse heat conduction, Shcheglov analyzed the convergence of this problem by hyperbolic perturbation method [
20]. For 1D inverse heat conduction in Cartesian systems with two-layer domains, some numerical methods have been proposed [
21] but have not been verified in engineering application examples. The purpose of this paper is to obtain the two-layer domain analytic solution for the 1D inverse heat conduction based on the thermocouple during the laser pulse by Fourier transform (FT) [
22]. For the serious morbidity of this problem, a regularization strategy was proposed to reconstruct the solution of this problem stably. In order to explain this, we proposed a two-layer domain regularization method based on the analytic solution for the inverse heat conduction. In this method, we used a filtering kernel method to reconstruct stable monolayer solution and provided the selection strategy for optimal regularization parameters. This method is simple but effective.
This paper is composed of the following parts. In the second part, we analyzed the principle and ill-posed inverse heat conduction based on the working principle of thermocouple. In the third part, we used the filtering kernel method to reconstruct the stable solution for the inverse problem under error estimation and provided the convergence estimate. In the fourth part, we reproduced the laser pulse calibration experiment and verified the effectiveness of the proposed method by using experimental samples.
2. Principle Analysis of Inverse Problem
According to the working principle of the thermocouple, we hold that, after the thermocouple’s cold end is compensated, the boundary temperature at the working end
in Equation (3),
Section 1, is obtained by the actual output thermoelectric potential difference of the thermocouple, and that it is the output sample of the thermocouple in response to the laser pulse.
Assume that , and are the solutions of the positive problem; then, in the given , , and their partial differentials , also belong to space . The solution of the inverse problem is to solve in by using these two conditions: the known and adiabatic boundary .
In a dynamic calibration experiment, there is some error in the test results; then, the actual measured value is defined as
and meets.
represents measurement error bounds here. Since Cauchy problem is a typical ill-posed problem, any tiny error in experimental sample will cause the blow-up of the solution within the interval . The root of this problem lies in the kernel function in the high frequency part. The ill-posed inverse problem will be analyzed below:
is expressed as the norm of
, we have
Then, we take the FT of
as
Its inverse transformation is
We first conduct FT on
of the Equations (2)–(6) in the inverse problem in
and can obtain the following equation:
where
where
is a sign function.
Then, the first order partial derivative with respect to
is conducted on Equation (12):
FT is conducted with respect to
in Equations (12) and (14):
Next, FT is conducted with respect to
in Equations (1), (3), (6) and (7) in
:
Then, the first order partial derivatives with respect to
is conducted on Equation (17):
Then, FT is conducted with respect to
in Equations (17) and (18) to obtain
. That is, the numerical solution of the inverse problem is obtained. However, it can be seen from Equations (13) and (18) in
that the reason for its ill-posedness is the existence of unbounded kernel
which will be amplified infinitely with noise as a factor, thus causing the blow-up of the solution. Therefore, we use the idea of a corrected kernel [
23] and provide a bounded kernel to approach unbounded kernel in a new form of filtering kernel. This problem can be solved in this way.
3. Filtering Kernel Method
In
, if
, for the unbounded kernel
, we provide the filtering form as follows:
If is a minimal value, , if , then is bounded.
We provide an important lemma:
Lemma 1. If , , , then The following two theorems indicated that the regular solution is a good approach to the exact solution.
Theorem 1. Assume thatis the regular solution of the inverse problem for the exact solutionandis that for disturbance data; the disturbance datameetsand the boundary temperature meets
Here, is a given constant; ifthen the following convergence estimation within the length interval can be obtainedwhere is a positive constant. It is worth noting that in Theorem 1, the convergence estimation is only limited within the interval
. However, any useful information on the continuity of the solution cannot be obtained at the boundary
. Then, in order to obtain the continuous dependence of the solution at
, a stronger transcendental assumption is introduced:
where
represents a norm in Sobolev space
.
Theorem 2. Assume thatis the regular solution of the inverse problem for the exact solutionandis that for disturbance data; the disturbance datameetsand the boundary temperature meets Equation (25); ifthen the following convergence estimation can be obtained atwhere is a positive constant. Then, Theorem 2 is verified. It is divided into two parts. We can first obtain the following equation with Parseval’s equation and triangle inequality:
It can be concluded from Lemma 1 that
If
and
, it can be obtained by derivation that
It is easy to find that
meets
, besides, when
,
; when
,
. Therefore, maximum point of
is
, and
where
, thus,
It can be verified in combination with (28) and (32) that
Besides,
where
It can be concluded from Lemma 1 that
If , the estimation is conducted under two conditions:
(1) If
,
Therefore, it can be concluded in combination with (34) and (35) that
where
is a positive constant.
We theoretically proved that on the premise of appropriate selection rules for regularization parameters, filtering kernel method is effective. The regular solution for the inverse problem will be obtained by combining experimental samples with the proposed regularization strategy of inverse problem.
4. Calibration System and Experimental Analysis
Although the widely used excitation signal for the dynamic calibration of temperature sensor is temperature step signal, it is difficult to generate ideal step temperature signal, which has brought errors to the dynamic calibration of temperature sensor with step excitation signal, but semiconductor laser can generate very narrow pulse excitation signal. Narrow pulse high-temperature excitation signal is easy to produce and has broader frequency components than step signal; then, it can fully cover the spectrum of thermocouple sensor and excite all of its dynamic characteristics [
24]. The RFL-A500D high-power semiconductor laser manufactured by Wuhan Raycus in China is used as the excitation source. Its central wavelength is 915 nm, and its output power is 515 W and is adjustable. The laser pulse calibration system is constructed in this way. See
Figure 3 for the composition of the calibration system.
Figure 4 shows our experimental environment; the thermocouple calibrated is a
-type filament thermocouple with a junction diameter of 1 mm; its measuring range is 0–1200 °C. The conductors are made of nickel and chromium, (nickel: thermal conductivity is 90.0 W/m·k, thermal capacity is 0.46 kJ/kg·°C and density is 8.9 g/cm
3; chromium: thermal conductivity is 93.7 W/m·k, thermal capacity is 0.45 kJ/kg·°C and density is 7.19 g/cm
3). The filament thermocouple is fixed on the bracket. Uniform laser beams [
25,
26,
27] are formed after laser pulses converge in the laser flux uniformity system to heat the surface of thermocouple junction. The fiber optic probe of high speed infrared thermometer (the fast response time is 6 (
μs)) is aligned to the surface of thermocouple junction. The measured temperature signal is used as a response signal
that acts as a laser pulse on the junction surface. The thermocouple potential difference signal is amplified by an amplifier; and the thermocouple laser pulse response signal
and infrared thermometer output signal are synchronously collected by the data acquisition and processing system. Besides, the digital cold end compensation processing is conducted on the free end of the thermocouple, with the output signal of the infrared thermometer as the exact solution
The output power of the laser is adjusted by percentage; thus, we set the output power of the laser to 90%. The theoretical maximum temperature at 90% power should not be higher than 1000 °C. The pulse width is set to 5 ms. The sampling frequency of data acquisition and processing system is 1 MHz. Both butt-welded and ball-welded thermocouples are excited at an ambient temperature of 21 °C. The pulse response data and junction surface temperature data of the thermocouples at 90% powers are obtained. See
Figure 5 (the following operation results and charts are obtained in MATLAB).
It can be seen that peak value of infrared temperature is 694.8 °C and the rise time is 12.5 ms. Different response times of the two junction structures are obtained and both are slower than infrared signal, and there is large deviation in the peak value of temperature.
The following formula is used to generate error data.
where
is sample time, determined by sample size and sampling rate,
,
,
. According to Equation (8) in
Section 2, the value of
at the junction is:
On the basis of Equations (26), (27), (39) and (40) in
Section 3,
is used to take different
values under different
conditions to obtain a series of regular solutions
; the value of
is the maximum range of thermocouple;
is respectively 0.01, 0.001, 0.0001, and
is integer from 0 to 20. We first observed the changes in
as shown in
Figure 6a,b.
It can be seen from
Figure 6 that the two structures have the same tendency, and the smaller the
value, the more obvious the attenuation. However, when
values are different, the smaller the
value, the faster the convergence. When
,
, the error attenuation tends to be stable first, which indicates that the regularization parameters selected tend to be optimal.
When
,
is 2, 5 and 8, respectively; the regular solution and exact solution under 90% power output are as shown in
Figure 7a–d.
The calculation results under different conditions are acquired and listed in
Table 1 and
Table 2.
It can be seen from
Figure 7 and
Table 1 and
Table 2 that when the value of
is small, although the regular solutions of two junction structures have some distortion, both of them can still approach the exact solution. Furthermore, when the regularization parameters reach the optimal value, the regular solution and the exact solution are very close, we calculated the relative error of butt-welded signal between the regular solution and the exact solution in the pulse region when
and
. See
Figure 8.
The maximum relative error is 7.64%; the relative error of peak value is even less; thus, the proposed regularization method is effective for recovering the junction surface temperature of filament thermocouple.