Simulation is carried out under the CHTC-TT China heavy-duty commercial vehicle driving cycle (tractor cycle). The
Figure 4 shows the comparison of vehicle dynamics, indicating that both the MPC and FLC energy management strategies can meet the vehicle’s dynamic performance requirements. Whether during vehicle start-up, acceleration, constant-speed cruising, or braking phases, the actual output torque of the drive motor remains highly consistent with the target torque, with the maximum tracking error being less than 3%. Moreover, the vehicle’s acceleration response curve shows no noticeable delay or oscillation, thereby fully meeting the dynamic performance requirements under real-world driving conditions.
4.1. Initial State of the Fuel Cell
Analysis of the fuel cell power variation
Figure 5 reveals that the fuzzy logic control (FLC) strategy and the model predictive control (MPC) strategy exhibit different fuel cell power output trends under the CHTC-TT cycle. Throughout the cycle, the FLC strategy results in more pronounced fluctuations in fuel cell power output, accompanied by multiple shutdowns. In contrast, under the MPC strategy, the frequency of fuel cell power fluctuations is reduced, and except for the initial and terminal phases of the cycle, no shutdown events occur.
Specifically, during 0–600 s and 950–1400 s of the driving cycle, the fuel cell output power under the MPC strategy remains highly stable, demonstrating significantly better control of power stability compared to the FLC strategy. However, during 600–950 s and 1400–1800 s, both MPC and FLC strategies experience noticeable fluctuations.
The performance degradation of the fuel cell can mainly be categorized into four aspects: cold start, idling, load variation, and high-power operation. By analyzing the fuel cell power output variations in conjunction with the fuel cell degradation model, the performance degradation results of the fuel cell under the CHTC-TT cycle can be obtained.
According to the end-of-life criteria widely recognized in the fuel cell industry, the service life of a fuel cell is considered to have ended when the nominal voltage or power at the rated operating point decreases by 10%. Analysis of the
Table 4 indicates that the vehicle control strategy has a significant impact on fuel cell degradation. After only one CHTC cycle, the fuel cell under the fuzzy logic control strategy experiences a degradation of more than 123 μV, accounting for 0.02% of the fuel cell’s entire life cycle. This implies that under adverse control strategy conditions, the actual operational lifetime of the fuel cell is only about 500 h. In contrast, under the model predictive control (MPC) strategy, after one CHTC cycle, the fuel cell only degrades by 15.67 μV; if start–stop effects are not considered, it would take approximately 15,345 h for the fuel cell to degrade to 10%. When start–stop effects are taken into account, MPC demonstrates a much smaller impact on fuel cell degradation compared to fuzzy logic control, exhibiting a better inhibitory effect on fuel cell degradation. The total degradation of the fuel cell under MPC is reduced by 87% compared to fuzzy logic control.
Among the various factors, start–stop cycles play a significant role in degradation. Under the fuzzy logic control strategy, there are 10 start–stop events during the CHTC-TT cycle, resulting in a degradation of 117.60 μV due to start–stop, which accounts for 92.3% of the total degradation. In comparison, the MPC strategy only incurs one start–stop event during the cycle, leading to a start–stop-related degradation of 11.76 μV—a ninefold reduction compared to fuzzy logic control. Excluding the impact of start–stop events, the degradation caused by other factors under fuzzy logic control is 5.78 μV, while that under MPC is 3.91 μV, representing a 32% reduction compared to fuzzy logic control. Even when excluding start–stop effects, MPC still exerts less impact on fuel cell degradation than fuzzy logic control.
The
Figure 6 illustrates the variation in the power battery SOC under the fuzzy logic control strategy and the model predictive control (MPC) strategy. As shown, the SOC of the power battery at the end of the cycle under MPC is 70.7%, with a net change of 0.7% over the entire cycle and a maximum SOC fluctuation of 3.5% during the cycle. Under the fuzzy logic control strategy, the SOC at the end of the cycle is 67.7%, with a net change of −2.7% and a maximum fluctuation of 4.4%.
Comparative analysis shows that the rolling optimization-based MPC outperforms the fuzzy logic control strategy in terms of maintaining the battery SOC, and it also results in a smaller SOC fluctuation throughout the cycle. The smaller SOC fluctuation further demonstrates the rationality of the vehicle energy management strategy, while reducing unnecessary energy losses and improving overall vehicle economy.
Analysis of the hydrogen consumption table indicates that, in terms of actual hydrogen consumption, the fuzzy logic control strategy saves 352.79 g compared to the model predictive control (MPC) strategy. However, due to differences in the final battery state of charge (SOC) after the execution of each control strategy, it is not appropriate to compare the results using conventional metrics such as cycle fuel consumption or fuel consumption per 100 km, as is common for traditional engines.
Combined with the fuel cell output power diagram, it can be observed that in the fuzzy logic control strategy, the power battery provides more output power, resulting in lower fuel cell output power and consequently lower measured hydrogen consumption. In practical operation, the loss in battery SOC must be compensated by additional hydrogen consumption from the fuel cell to restore the battery to its initial state at the start of the cycle. Therefore, in order to jointly evaluate both battery SOC and hydrogen consumption, the loss in battery SOC should be converted to an equivalent hydrogen consumption. The equivalent hydrogen consumption is then used as a comprehensive metric for comparing the two control strategies.
As shown in the
Table 5, when equivalent hydrogen consumption is adopted as the evaluation index, both the battery SOC maintenance level and the equivalent hydrogen consumption of the fuzzy logic control strategy are inferior to those of the MPC strategy presented in this study. Specifically, the equivalent hydrogen consumption increases by 2.15%, and the SOC maintenance lags by 3.4% compared to the MPC strategy.
4.2. State at the End of Fuel Cell Life
In this section, a comparison is made of the overall vehicle performance when the fuel cell used in a fuel cell tractor experiences a 10% degradation in fuel cell performance. The study investigates the degradation trend of the fuel cell during actual operation. By analyzing the results of fuel cell degradation at the end of its service life and the overall vehicle economy, the control effects of different control strategies are compared and analyzed.
As shown in the
Figure 7, the fuzzy logic control strategy and the model predictive control (MPC) strategy exhibit different fuel cell power output trends under the CHTC-TT cycle. Similarly to the initial fuel cell operating state, the fuel cell power output under the fuzzy logic control strategy fluctuates more dramatically throughout the entire cycle and is accompanied by multiple shutdowns. In contrast, under the MPC strategy, the frequency of fuel cell power fluctuations is reduced, and except for the start and end of the cycle, the strategy deliberately avoids the start–stop states of the fuel cell, resulting in no shutdown events.
During the intervals of 0–200 s, 600–800 s, and 1000–1800 s within the driving cycle, the fuel cell output power under the MPC strategy remains highly stable, demonstrating a clear advantage over the fuzzy logic control strategy in terms of maintaining power stability during operating condition changes. However, in the periods of 200–600 s and 800–1000 s, both the MPC and fuzzy logic control strategies exhibit noticeable fluctuations.
After a 10% degradation in fuel cell performance, the variation in fuel cell power output, combined with the fuel cell degradation model, allows for the determination of the fuel cell degradation results under the CHTC-TT cycle. The results are shown in the
Table 6.
A comparison between the initial and end states of fuel cell degradation reveals that the operating characteristics of the degraded fuel cell differ significantly from those of a brand-new fuel cell. Under the fuzzy logic control strategy, after one CHTC-TT cycle, the total fuel cell degradation voltage is approximately 54.76 μV, which is markedly different from the 123.38 μV observed for a new fuel cell under the same control strategy. This improvement is attributed to the reduction in the number of start–stop events, which decreased from 9 to 4, resulting in a decrease in the degradation voltage attributable to start–stop events from 117.60 μV to 47.04 μV. This is because the rated power of the degraded fuel cell is lower, and to meet the vehicle’s power demand, the average operating power of the fuel cell increases.
Under the model predictive control (MPC) strategy, after completing one CHTC cycle, the fuel cell degradation voltage is only 16.23 μV, which is a 3.6% increase compared to the 15.67 μV degradation of a new fuel cell. This is mainly due to the substantial reduction in maximum power caused by severe fuel cell degradation, resulting in more degradation occurring in the high-power operating region.
At the end of the fuel cell’s service life, the MPC strategy has a significantly smaller impact on fuel cell degradation compared to the fuzzy logic control strategy, demonstrating a superior ability to mitigate fuel cell degradation. The total fuel cell degradation under MPC is approximately 70% lower than that under fuzzy logic control. The impact of start–stop events is particularly significant; under fuzzy logic control in the CHTC-TT cycle, four start–stop events result in a degradation voltage of 47.04 μV, accounting for 85.9% of the total degradation. In contrast, the MPC strategy involves only one start–stop event during the cycle, resulting in a degradation voltage of 11.76 μV, a 75% reduction compared to fuzzy logic control.
Excluding the manually controllable influence of start–stop events, the fuel cell voltage degradation caused by other factors is 7.72 μV under fuzzy logic control and 4.47 μV under MPC, representing a reduction of approximately 42% with MPC. Even when the influence of start–stop events is excluded, the MPC strategy still results in less fuel cell degradation than the fuzzy logic control strategy.
In terms of actual hydrogen consumption, the fuzzy logic control strategy results in a reduction of 752.49 g compared to the model predictive control (MPC) strategy. However, since the final state of charge (SOC) of the power battery differs between the two control strategies, it is more reasonable to use the vehicle’s equivalent hydrogen consumption for comparison. According to the fuel cell output power profiles, the fuzzy logic control strategy involves a greater output from the power battery, leading to lower fuel cell output power and, thus, lower measured hydrogen consumption for the entire vehicle. In practical operation, the power deficit in the battery must be replenished by the fuel cell through additional hydrogen consumption to restore the battery to its initial SOC at the start of the cycle. The comparative results are shown in the following table.
As shown in the
Table 7 and
Figure 8, using equivalent hydrogen consumption as an evaluation metric allows for a comprehensive assessment that considers both the maintenance of power battery SOC and the measured hydrogen consumption. Compared to the model predictive control (MPC) strategy employed in this study, the fuzzy logic control strategy achieves a 1.48% reduction in equivalent hydrogen consumption, but lags behind by 4.2% in SOC maintenance. This demonstrates that, after degradation, the fuzzy logic control strategy offers an advantage in hydrogen consumption under the CHTC-TT cycle compared to MPC, but exhibits inferior SOC maintenance performance.