3.1. ADT Results
As shown in
Figure 1, considering the structure of this MEMS flow sensor, the output voltage changes were considered as the drifts of the characteristic parameters for the flow sensor, and the changes of the resistors were acquired as the drifts of the characteristic parameters for the sensor chip. The results of the drifts of the characteristic parameters were presented. Specifically, the resistance drifts of RHG, RDG, and RUG with 85 °C, 120 °C, and 150 °C
were tested. This is shown in
Figure 3a–c, where
is the change in the resistor and
is the initial resistor. After 3000 h of aging, the maximum drifts of 85 °C, 120 °C, and 150 °C were 1.35%, 2.09%, and 3.15%, respectively. It could be found that with the increases in
, the drift increased.
For the flow sensors, the drifts were also tested.
is the initial output voltage of various flow rates and
corresponds to the changes. Comparing
Figure 4a–d, from the #1–#6 samples, it can be found that the higher
, the stronger the attenuation. In addition, the attenuation value was turbulent with an increased
, and the larger flow rate was obviously enhanced. The biggest drift was −32.91% at 500 sccm with 150 °C.
To further analyze the attenuation of the SPS in the MEMS flow sensor system, the outputs of the SPS before and after the ADT were calculated. As shown in
Table 3, taking the flow rate of 500 sccm as an example, ADT-C was the initial value of the MEMS flow chip and ADT-S was the initial value of the SPS. C-ADT was the aging value of the MEMS flow chip and S-ADT was the aging value of the SPS. In comparison, it was found that the attenuation of the SPS in the ADT was significantly greater than that of the MEMS flow chip. The minimum drift of the SPS accounted for 82.01% of the MEMS flow sensor system. Because the SPS was composed of comparators, analog operational amplifiers, and the digital signal-processing chip, there were fault overlap circumstances in the SPS fault diagnosis. Identifying the source of the attenuation is a complex task. But for this MEMS flow sensor system, the attenuation performance of the SPS was certified.
3.2. Modelling Description
Resistance tends to produce a thermal drift, which is a function of time
and temperature
[
28,
29,
30]. Because there were thermal cycles in this SSADT, it was necessary to incorporate a Coffin–Manson component. The Coffin–Manson model reflects the fatigue failure of products under thermal sequential stress, and has also been successfully used to simulate the crack propagation process of solder joints subjected to temperature impact [
31]. Thus, it can be used to describe the relationship between thermal fatigue failure and the temperature cyclic stress of products. The resistance drift based on Coffin–Manson dependency was proposed.
is the Boltzmann’s constant . is the maximum temperature. is the activation energy of two different ADT stresses. is the drift. is the time of the ADT. and are different environmental temperatures. is the cycle index. is the operation temperature. is the cycle frequency. , , and are undetermined constants.
Based on
Figure 3 and
Figure 4, the drift rate can be calculated. For the MEMS sensor chip, we can obtain the
of assets with different stresses via the drift. Furthermore, the drift of RHG was more stable with a maximum average drift rate in various asset groups. Consequently, the activation energy of each group of tested assets can be acquired by calculating the RHG drift rate with different ADT conditions. Then, the activation energies of 85 °C (
), 120 °C (
), and 150 °C (
) of the sensor chip were obtained using Equation (4), with maximum average drifts of 1.01%, 1.47%, and 2.04%, respectively.
Meanwhile, the parameter of Coffin–Manson was obtained with the
of the SSADT. As shown in
Table 4, the value was 2.303 for
, 0.154 for
, and 0.187 for
. Based on the above research, the
of different SSADTs of this flow sensor can be estimated without having to calculate the
.
Similarly, the
of this MEMS flow sensor with different stresses via the drift can be obtained. Thus, the activation energy can be calculated with the maximum average drifts of 1.21%, 11.15%, and 16.82%, respectively, with a flow rate of 500 sccm. Then, the activation energies of 85 °C (
), 120 °C (
), and 150 °C (
) of the flow sensor were obtained using Equation (5), with maximum activation energies of 0.028 eV, 0.359 eV, and 0.421 eV, respectively. In the same way, the parameter of the Coffin–Manson of the flow sensor was obtained with the
of the SSADT. As shown in
Table 5, the value was 1.764 for
, 0.235 for
, and 0.298 for
, as shown in
Table 5.
According to the
obtained by the drifts, the lifetime can be estimated.
was obtained from the Coffin–Manson modeling. Specifically, the Arrhenius lifetime model was employed in the degradation model, which has been widely used in the reliability literature [
31,
32,
33,
34].
is the Arrhenius accelerator.
is the lifetime of
.
is the lifetime of
. The lifetimes under various conditions can be estimated. For this MEMS flow sensor system, the lifetime was calculated, as shown in
Table 6. It can be found that the lifetime shrunk more obviously from 8.290 years to 0.594 years in the range from 85 °C to 150 °C. But for the sensor chip, the change was from 29.702 to 14.724 years. In addition, the lifetime of other conditions was acquired with obtained lifetime–stress data fitting. As is shown in
Figure 5, the predicted lifetime distributions are presented.