1. Introduction
With continuous changes in the form of warfare, the operational environment faced by infrared precision weapon systems is becoming increasingly harsh, which greatly reduces the probability and the accuracy of flight vehicle hits. Therefore, higher requirements are put forward for the precise strike capability of terminal guidance [
1]. In complex adversarial scenarios, a target aircraft not only performs maneuvers but also uses the deployment of an infrared decoy to deceive the infrared imaging seeker, causing the seeker to identify the equivalent radiation energy center between the target and the infrared decoy. When the seeker’s head re-identifies the target, it will cause a sudden change in the LOS angle rate, then a sudden change in flight vehicle guidance commands. The divergence of the LOS angle rate at the final guidance time will lead to a sharp increase in the required overload, which may lead to the loss of stability of the guidance loop and affect the accurate guidance of the flight vehicle. Therefore, it is necessary to study the improvement of robustness of the accurate guidance law.
Currently, there have been many studies on the influence of infrared decoys on flight vehicle guidance accuracy. Reference [
1] established a complex adversarial scenario composed of a guidance model and an infrared decoy motion model and analyzed the effects of the deployment distance of infrared decoys, the recognition time of the seeker, and the deployment interval of multiple infrared decoys on the guidance accuracy. The adjoint method is used to analyze the effects of the target barrel roll rate, the number of simultaneous deployments of point source decoys, and the deployment interval on the miss distance in Reference [
2]. Reference [
3] analyzed the miss distance and anti-jamming probability of different anti-jamming methods for seekers in complex adversarial scenarios. The guidance laws mentioned in the above references are all analyzed using the PNG, indicating that infrared decoys have a significant impact on the PNG. Both the PNG and SMGL are used by the miss distance in complex adversarial scenarios, and the SMGL has better robustness than the PNG in Reference [
4].
The above references are based on traditional guidance laws for attack and propose anti-interference algorithms based on the algorithm of the seeker head, without using more robust and accurate modern guidance laws for simulation verification. Currently, various modern control methods are applied in the field of flight vehicle guidance, such as sliding mode control [
5,
6,
7], finite-time control [
8,
9,
10], optimal control [
11,
12,
13], etc. However, many modern guidance laws are designed based on asymptotic stability. Only when time tends to infinity will the LOS angle rate converge. Therefore, using finite-time control theory to derive guidance laws can make the LOS angle rate converge within a finite time. References [
14,
15,
16] respectively use finite-time control theory to derive guidance laws with finite-time convergence of the LOS angle rate and prove their finite-time convergence. However, the above references consider the target maneuver as a bounded disturbance compensation in the guidance law, without accurate estimation of the target maneuver. In References [
10,
17,
18,
19,
20], an ESO is used to observe and compensate for the target maneuver in real time, solve the problem of excessive overload in the terminal guidance process effectively, and provide the flight vehicle with a higher interception accuracy. References [
7,
21,
22] adopt an FTDO to estimate the target maneuver. The guidance laws and observers in the above references can accurately hit targets and accurately estimate target maneuvers under normal adversarial scenarios. However, these methods have not been applied in complex adversarial scenarios, so their undetermined robustness and accuracy limits the application in reality.
In response to the limited application of advanced guidance laws in complex adversarial scenarios, this paper proposes an FTCG that takes into account the dynamic characteristic of the autopilot based on sliding mode control theory and finite-time control theory. The FTCG combines with an FTDO to be applied in complex adversarial scenarios, aiming to determine its accuracy and robustness and provide an idea for confronting infrared decoys.
The remaining structure of this article is as follows: problem statement and preliminaries, design and analysis of guidance law, simulation results and analysis, and discussion. In
Section 2, a complex adversarial scenario composed of the flight vehicle, the target, and the infrared decoy is constructed, and the foundation of finite-time control theory is elucidated. In
Section 3, an FTCG considering the dynamic characteristics of the autopilot is derived through finite-time control theory. Its stability and convergence are proved, and an FTDO is used to estimate and compensate for the target maneuvering into the guidance law. In
Section 4, the guidance law is validated and analyzed in different complex adversarial scenarios and compared with other guidance laws to mainly analyze its accuracy and robustness. Finally, the conclusions of this study are summarized in
Section 5.
4. Simulation Results and Analysis
According to Equation (36) of the guidance law, the guidance law has a variable structure term which contains the switching function term
and the control quantity needs to be switched constantly. But due to the limited calculation delay and switching speed of the control system, the jitter of the actuator will be caused. This jitter is the jitter of the flight vehicle body. If the jitter is too large, the flight vehicle will lose stability and affect the accuracy of hitting the target. In order to reduce the jitter and smooth the switching function in the above guidance law, a saturation function
can be used to replace the switching function
. The expression of the saturation function is shown as follows:
There is also a switching function in Equation (32) of the finite-time disturbance observer, and the saturation functions
and
are used to replace the switching function in Equation (32) in order to reduce the observer jitter.
In order to verify the applicability of the guidance law in the complex adversarial scenarios, the interception simulation is carried out on the targets in multiple environments. The set parameters of flight vehicle, target, infrared decoy, finite-time convergent disturbance observer, and guidance law are shown in
Table 1,
Table 2 and
Table 3:
The constant time of the flight vehicle’s autopilot is and the recognition time of the flight vehicle seeker is 0.1 s. The burning time of the infrared decoy is 1 s. The initial velocity of the infrared decoy is the same as the velocity of the target at the moment it is released. Therefore, and have the same components in the and directions as the target’s velocity at the time of release. The gravitational acceleration is taken as and the air density as .
In order to fully verify the robustness of the guidance law, it is assumed that the target can take two different maneuvers and release infrared decoys with a different remaining time to evade the flight vehicle:
(1) Scenario 1: The target undertakes a constant maneuver and releases an infrared decoy when the remaining time is or .
(2) Scenario 2: The target undertakes a sinusoidal maneuver and releases an infrared decoy when the remaining time is or .
(3) Scenario 3: The target undertakes a constant maneuver and respectively releases an infrared decoy once when the remaining time is and . The interval between the two releases of the infrared decoy is 0.6 s.
(4) Scenario 4: The target undertakes a sinusoidal maneuver and respectively releases an infrared decoy once when the remaining time is and . The interval between the two releases of the infrared decoy is 0.6 s.
For these four different complex adversarial scenarios, the simulation results obtained using the guidance law (36) are shown in
Figure 3,
Figure 4 and
Figure 5.
Figure 3 represents the simulation results for Scenario 1,
Figure 4 represents the simulation results for Scenario 2,
Figure 5 represents the simulation results for Scenario 3 and Scenario 4.
Table 4 shows the miss distance, strike time, and convergence time in the above scenario.
The proposed FTCG can accurately strike the target in the scenarios of infrared interference, as shown in
Figure 3a and
Figure 4a. The validation results in
Table 4 indicate that the miss distance is only 0.1560 m when the remaining time is
and it is only 0.1423 m when the remaining time is
in Scenario 1. In Scenario 2, the miss distance is only 0.3018 m when the remaining time is
, and it is only 0.3029 m when the remaining time is
. This illustrates the good accuracy of the FTCG in complex adversarial scenarios.
Figure 3b and
Figure 4b show that the infrared decoy has a significant impact on the LOS angle rate, and the impact becomes greater as the remaining time decreases. However, the FTCG can quickly converge the LOS angle rate to 0 rad/s after the disturbance and
Table 4 shows that the LOS angle rate can converge to 0 rad/s for about 0.4 s after disturbance, enhancing the guidance stability and demonstrating the good robustness of the FTCG in complex adversarial scenarios.
Figure 3c and
Figure 4c show that FTCG experiences overload saturation at the initial stage of terminal guidance, indicating the maximum utilization of the flight vehicle’s overload capacity during this period.
Figure 3d and
Figure 4d show that the infrared decoy also has a considerable impact on the observer. However, the FTDO accurately estimates and compensates for the target maneuver in the guidance law in a limited time after the disturbance, showcasing the good robustness of the FTDO in complex adversarial scenarios.
The FTCG can rapidly converge the LOS angle rate to 0 rad/s in both Scenario 3 and Scenario 4, as shown in
Figure 5a. According to
Table 4, the miss distance is only 0.0457 m in Scenario 3 and 0.2884 m in Scenario 4, indicating that the FTCG exhibits a good accuracy in the aforementioned scenarios.
Figure 5b illustrates that the FTDO also accurately estimates and compensates for target maneuvers within a finite time even under disturbances, demonstrating its good robustness in the aforementioned scenarios.
The above target maneuver is merely a simple maneuver using a certain constant value. In order to further illustrate the performance of the FTCG, it will be validated through simulation in Scenario 5. The target maneuver is characterized by the following random movements:
Six sets of infrared decoys will be released with a 0.6 s release interval. Each release comprises 10 infrared decoys and denoted as
. The simulation results are illustrated in
Figure 6:
When the target is undergoing irregular acceleration motion, it can be seen from
Figure 6a that the FTCG can accurately strike the target in Scenario 5. The miss distance is only 0.1152 m, indicating that the FTCG still maintains a good accuracy in more complex adversarial scenarios. From
Figure 6b, it can be observed that the infrared decoy has a significant impact on the LOS angle rate, the effect is greater as the remaining time decreases. The LOS angle rate can converge to zero after being disturbed for approximately 0.37 s. The FTDO can quickly catch up with the target’s overload after the target’s acceleration has changed. It also accurately estimates the target’s overload after being disturbed and compensates for the target’s overload to the guidance law.
In order to further illustrate the advantages of the guidance law (36), a comparative simulation verification is conducted with the SMGL and the ASMGL based on ESO.
The SMGL is defined as follows:
is used to replace the switching function of Equation (39) and let the guidance law parameters
,
,
.
The ASMGL is defined as follows:
where:
where
is the output of the ESO Equation (42):
The function
is defined as follows:
where
is the error between the estimate of the observer and the true value,
and
respectively are the estimates of
and
,
is used to replace the switching function of Equation (40) in order to reduce vibration. Let the guidance law parameters
,
,
,
and the observer parameters
,
,
,
. The three guidance laws are compared and simulated in Scenario 6, where the target undertakes a constant maneuver for
. When the remaining time is
, the decoy is released once, the impact time is 0.3 s, and the second decoy is released when the impact is 0.5 s past. The simulation results are shown in
Figure 7.
Table 5 shows the miss distance, strike time, and convergence time of the three guidance laws.
From
Figure 7a, it can be seen that the FTCG, ASMGL, and SMGL are all pursuing the target. However, it can be seen from
Table 5 that the miss distance of the FTCG is only 0.1775 m, while the miss distance of the SMGL and ASMGL is as high as 2.1567 m and 12.0415 m, indicating that the FTCG has a better accuracy than the SMGL and ASMGL. From
Figure 7b, it can be seen that after being disturbed, the LOS angle rate of the FTCG rapidly converges to 0 rad/s, and the convergence time is about 0.837 s. However, the LOS angle rate of the SMGL and ASMGL diverges and does not converge to 0 rad/s. From
Figure 7c, it can be observed that the FTCG experiences overload saturation in the early terminal guidance phase, indicating that the flight vehicle’s overload capability is maximally utilized during this period, with a smaller overload in the later phase to improve the flight vehicle stability. On the other hand, the ASMGL and SMGL have a lower overload in the early terminal guidance phase and require higher overload or even saturation at the end, which is not conducive to a stable flight vehicle performance and is not practical in practice.
The above simulation cases illustrate the effectiveness of the FTCG in a two-dimensional longitudinal plane. Following this, the FTCG will be extended to a three-dimensional coordinate system which is typically divided into the pitch plane and horizontal plane for analysis. Without considering the dynamic characteristics, the guidance equations for the pitch plane and the horizontal plane are as follows:
where
and
are the LOS angles of the pitch plane and the horizontal plane,
and
are the normal acceleration of the flight vehicle in the pitch plane and the horizontal plane, and
and
are the normal acceleration of the target in the pitch plane and the horizontal plane. Ignoring the higher-order terms in the above equation, Equation (44) is simplified as follows:
In order to illustrate the advantages of this guidance law in the three-dimensional coordinate system, the PNG, which is most commonly used by the flight vehicle is used to compare with the FTCG. The PNG is in the following form:
where the guidance coefficient is
. The FTCG is in the following form:
where
and
respectively represent the LOS angle rate
in the pitch plane and
in the horizontal plane,
and
respectively represent the estimated value of the LOS angle acceleration
in the pitch plane and
in the horizontal plane,
and
respectively represent the estimated value of sliding mode in the pitch plane and in the horizontal plane,
and
respectively represent the pitch angle and roll angle of the flight vehicle; the parameter values of the FTCG have been given in
Table 3. At this time, the initial parameters of the flight vehicle and the target are shown in
Table 6:
The target adopts the random maneuver shown in Equation (38) in both the pitch plane and the horizontal plane. The infrared decoy is released when
and its parameters are given in
Table 2. In order to be closer to the real scenario, the flight vehicle has a guidance blind area of 200 m. The flight vehicle will fly according to the acceleration before entering the blind area until the end of the simulation. The simulation results are shown in
Figure 8 and
Table 7:
As shown in
Figure 8a, it can be seen in the three-dimensional coordinate system that both the FTCG and PNG are pursuing the target. However, it can be seen from
Table 7 that the miss distance of the FTCG is only 0.2481 m, while the miss distance of the PNG is as high as 3.5170 m, indicating that the FTCG is also effective in a three-dimensional coordinate system. From
Figure 8b,c, it can be seen that before entering the blind area,
and
rapidly converge to 0 rad/s after the FTCG experiences interference and finally converge to 1.46 × 10
−4 rad/s and 1.25 × 10
−4 rad/s. In the blind area, the target is attacked with the attitude of an almost constant LOS angle and the local quasi-parallel approach is realized. However,
and
cannot converge to 0 rad/s after the PNG experiences interference and finally converges to 6.13 × 10
−2 rad/s and 2.27 × 10
−1 rad/s. Therefore, the quasi-parallel approach cannot be achieved in the blind area, resulting in a large miss distance. From
Figure 8d,e, it can be seen that in the initial stage of final guidance, the FTCG experiences overload saturation in both the pitch plane and the horizontal plane, indicating that the flight vehicle’s overload capability has been utilized to the maximum extent during this period. In the final stage, the overload is small and the flight vehicle has a good stability. However, the PNG has a small overload in the initial stage of final guidance and a large required overload at the end. This is not conducive to the stability of the flight vehicle. Therefore, it can be shown that the FTCG also has a good effectiveness in three-dimensional space.