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A quantized-feedback-based adaptive event-triggered tracking problem is investigated for strict-feedback nonlinear systems with unknown nonlinearities and external disturbances. All state variables are quantized through a uniform quantizer and the quantized states are only measurable for the control design. An approximation-based adaptive event-triggered control strategy using quantized states is presented. Compared with the existing recursive quantized feedback control results, the primary contributions of the proposed strategy are (1) to derive a quantized-states-based function approximation mechanism for compensating for unknown and unmatched nonlinearities and (2) to design a quantized-states-based event triggering law for the intermittent update of the control signal. A Lyapunov-based stability analysis is provided to conclude that closed-loop signals are uniformly ultimately bounded and there exists a minimum inter-event time for excluding Zeno behavior. In simulation results, it is shown that the proposed quantized-feedback-based event-triggered control law can be implemented with less than 10% of the total sample data of the existing quantized-feedback continuous control law.
As networked control systems including digital communication channels have been successfully utilized in various industrial applications, significant research efforts have been devoted to control designs using input and state quantization [1,2,3]. Concurrently, nonlinear systems have been widely studied and significant progress has been achieved in the analysis and the control of nonlinear systems. On the other hand, recursive control techniques have attracted much attention as effective ways for dealing with the unmatched nonlinearities of lower-triangular nonlinear systems [4,5,6]. Based on these recursive control techniques, adaptive control strategies were presented for input-quantized lower-triangular nonlinear systems with unknown parameters [7,8] and completely unknown nonlinearities [9,10,11,12]. Fundamentally, the controllers designed in [9,10,11,12] assume that state variables are continuously measurable. As opposed to the previous works [7,8,9,10,11,12] considering input quantization, the control design problem of state-quantized nonlinear systems in a lower-triangular form has received limited attention. In [13], an adaptive quantized feedback backstepping controller using quantized state variables was presented under the assumption that the partial derivatives of recursive virtual controllers were constants. Thus, the result [13] is only usable for systems with nonlinear functions matched to a control input. In order to overcome this restriction, an adaptive quantized feedback control design methodology adopting the command filtered backstepping technique for lower-triangular nonlinear systems was recently presented in [14]. Despite this progress, two aspects still need to be addressed to realize further improvement in the quantized feedback control design [14].
(P1) In the existing work [14], unmatched nonlinearities should be known and satisfy the Lipchitz condition with known Lipchitz constants. Thus, it is still necessary to determine a method to address completely unknown and unmatched nonlinearities in the quantized feedback tracker design of lower-triangular nonlinear systems.
(P2) The result [14] may be impractical for a network-based control implementation in limited network resources because the control law designed in [14] should be updated continuously in time. Thus, the event-triggered operation strategy of the quantized-feedback-based controller needs to be studied.
Emerging event-triggered methodologies for network-based control have received increasing attention in the control society because of limited communication bandwidths in networks [15,16]. Unlike the conventional time-triggered strategy, an event-triggered strategy can reduce the amount of computation and communication resources required in networked control systems. Owing to these advantages, some event-triggered control methods were presented for linear and nonlinear networked control systems [17,18,19,20]. For lower-triangular nonlinear systems with parametric uncertainties, Xing et al. [21] first suggested an adaptive recursive event-triggered control approach using three types of thresholds. Thereafter, numerous event-triggered control issues have been addressed for uncertain lower-triangular nonlinear systems [22,23]. In [24,25,26,27,28], adaptive fuzzy or neural network event-triggered control methods were developed to compensate for non-parametric nonlinear uncertainties. However, in the event-triggered control field, the quantized state-feedback information of uncertain lower-triangular nonlinear systems has not been used to address the neural-network-based adaptive tracking problem thus far.
The aim of this paper is to establish a quantized-feedback-based event-triggered control methodology for the adaptive tracking of nonlinear strict-feedback systems with unknown nonlinearities and external disturbances. An approximation-based recursive control design using quantized state variables is developed to deal with unmatched and unknown nonlinearities and the time-varying disturbances. In the proposed design, adaptive laws and a triggering law using an auxiliary filter are derived by the quantized state variables. Furthermore, an adaptive tuning mechanism is provided to compensate for the effects of quantization and triggering errors. The stability of the closed-loop system and the prevention of Zeno behavior are analyzed in the Lyapunov sense.
Compared with existing related literature, the primary contributions of this paper are emphasized as follows:
(C1) Different from the recursive quantized feedback tracking method [14] where unmatched nonlinearities were known, the proposed tracking approach is capable of dealing with unmatched and unknown nonlinearities. This is achieved by designing quantized-states-based adaptive approximators and deriving three lemmas for the boundedness of the adaptation parameters and the quantization error signals.
(C2) The existing adaptive event-triggered control schemes [18,21,22,23,24,25,26,28] for nonlinear systems in a lower-triangular form did not consider the state quantization problem of nonlinear systems. In this paper, we first present a quantized-feedback-based event-triggered control strategy with a triggering law using quantized state variables. For this purpose, a triggering law using an auxiliary control input filter is designed to ensure the existence of inter-event time.
2. Problem Formulation
Consider a class of uncertain nonlinear systems in a strict-feedback form described by
where , , , are state variable vectors, are unknown time-varying disturbances satisfying with unknown constants , is the control input, and are unknown nonlinear functions. In this paper, the control input u is an intermittently updated signal in time by an event-triggering law to be designed later. In addition, u is designed based on the quantized state variables obtained through the following uniform quantizer
where , , is the length of the quantization interval, , and . Note that is in a countable set and the quantization error has the property where [17].
Assumption1.
Ref. [13] The quantized states , , are available for feedback, instead of .
Assumption2.
Ref. [5] The reference signal r and its time derivatives and are bounded.
Ref. [30] When a matrix is Hurwitz, it is satisfied that with and . Here, G is a symmetric positive definite matrix such that where I is an identity matrix of order n. In addition, and are the maximum and minimum eigenvalues of G, respectively.
Problem1.
Consider the uncertain strict-feedback nonlinear system (1) with unknown nonlinearities and state quantizer (2). Our control problem is to provide a quantized-feedback-based event-triggered tracking law u so that the state follows the reference signal r while all the closed-loop signals remain bounded.
Remark1.
Several real-world applications such as robot manipulations, electrical power systems, and aircraft systems can be modeled as system (1) [4,5]. Recent advances in the network technology enable the control of these systems over a network with limited communication resources. Then, the proposed theoretical result can be applied to these network-based practical control problems.
Remark2.
Compared with the existing control results reported in the related literature [13,14,21,22,23,24,25,26], this study considers both the quantized state feedback and the event-triggered control problems in the recursive control framework of nonlinear lower-triangular systems. Accordingly, Problem 1 cannot be resolved by using the approaches presented in [13,14,21,22,23,24,25,26].
According to the universal approximation property of radial basis function neural networks (RBFNNs) [31], if the number of neural nodes N is sufficiently large and the basis functions , , are appropriately chosen, there exists an ideal bounded weight vector , that satisfies with a constant , such that
where is an unknown function; is a compact set, is an input vector with M elements, represents an approximation reconstruction error satisfying with a constant , and is a basis function vector. In this study, are chosen as Gaussian functions where , is the center of the receptive field and is the width of the Gaussian functions. Note that Gaussian basis function vector is bounded as where is a constant [32,33].
Based on the command filtered backstepping control technique [6], the proposed controller design procedure is conducted recursively. In this recursive design procedure, we use the following coordinate transformation
where , , are error surfaces, are filtering errors, and and are virtual control laws and their filtered signals, respectively. The signals are calculated from the following low-pass filters
with and . and are the damping factors and the natural frequencies, respectively.
Step 1: Consider the first error surface . From (1) and (4), we have . Define a Lyapunov function candidate . Then, employing an RBFNN to estimate the unknown function , the time derivative of is given by
where is an optimal weight, denotes a basis function vector, and is the reconstruction error for estimating .
The virtual control law is designed as
where is a control gain, is the estimate of , are the estimate of an unknown constant to be defined later, and ; is a design parameter.
Step n: Consider a Lyapunov function candidate . Similar to the previous steps, the time derivative of satisfies
where is an optimal weight, is a basis function vector, and is the reconstruction error.
In order to design an actual control law u based on the quantized states, quantized-states-based error surfaces , virtual control laws , and adaptation laws for and are defined as follows:
where , , ; , , and . are tuning gain matrices, are tuning gain constants, and are positive constants for modification. The filtered signals and are obtained from the following filters
with and .
Then, a quantized-feedback-based adaptive event-triggered actual control law u with a triggering law is presented as
where , , , denotes the lth event time, are design parameters for the triggering law (19), is the estimate of , and is the estimate of unknown constant to be defined later, ; is a design constant, ; , is a control gain, and are tuning gains, and and are small constants for modification. Here, in is a filtered signal of given by
where and are filter design parameters, , and . Note that the actual input u is fixed as a constant value until the next event occurs at and each event time is determined by checking the condition in (19). The block diagram of the proposed control scheme consisting of (14)–(23) is shown in Figure 1.
Define an ideal control signal as
and its filtered signals and obtained from the following filter
where and .
Note that the following property holds.
where and .
By substituting (26) into (12) and using (24), we have
where and are estimation errors.
Remark3.
In the proposed triggering law (19), the adaptive terms depend on the time-varying error surface . Note that is the filtered signal of from (14) and includes the adaptation parameters and and the error surface . A similar reasoning can apply the error surface recursively. In addition, obtained from (20) is employed in of (19). Therefore, it concludes that the triggering law (19) depends on the information of all adaptation parameters and where .
3.3. Stability Analysis
Let us define and , , , , , , , and for . Then, the dynamics of along (5) and (25) is given by
where , , and
for .
Owing to and , are Hurwitz matrices. Then, for any matrix , is satisfied where is a symmetric matrix.
For the stability analysis of the closed-loop system, three lemmas (i.e., Lemmas 3–5) are presented. Lemmas 3 and 4 give the boundedness of the estimation errors and , respectively, where . In Lemma 5, we show that the errors between the quantized signals , , , , , and and the unquantized signals , , , , , and are bounded where .
Lemma3.
Consider the adaptation laws (15) and (21). Then, there exists a compact set such that for all provided that where is an unknown constant.
Proof.
Let us consider a Lyapunov function candidate . Then, is given by
Here, each term can be represented by , , and . Here, since the optimal weights and the basis function vectors are bounded, there exist constants and satisfying and , respectively. Based on these facts, satisfies
From this inequality, we have that when with . Thus, decreases when and finally remains within . Consequently, if , for all which completes the proof. □
Lemma4.
Consider the adaptation laws (16) and (22). Then, there exists a compact set such that for all provided that where is an unknown constant.
Proof.
Similar to the proof of Lemma 3, a Lyapunov function candidate is considered. Then, we have
Using and the inequality , it is obtained that , , and . Then, becomes
Let . Then, following an argument similar to that in the proof of Lemma 3, it is ensured that if , for all which completes the proof. □
Lemma5.
Consider the quantization errors of the closed-loop signals as
where . Then, there exist positive constants , , , , and such that , , , , and , respectively, where .
Proof.
(i) Based on the boundedness of Guassian basis functions and hyperbolic tangent functions, we can easily obtain
where and . Using the property of the uniform quantizer (2) and , satisfies
From Lemmas 3 and 4, we have and where and . Then, using and , the bounding constant is obtained as .
The low-pass filters for in (5) and for in (17) induce
where and . Solving this differential equation leads to
Since is invertible, the following inequality is satisfied.
From Lemma 2, the inequality holds with positive constants and . Due to and , we have . Then, we have
Thus, it is guaranteed that and .
(ii) From and , it holds that
where ; owing to the property . From (10) and (14), we have . Then, it holds that
where . Following a procedure similar to that from (36)–(39), we can obtain the constant satisfying .
(iii) According to the similar recursive derivation procedure, it holds that , , and , , are bounded as
This completes the proof of Lemma 5. □
Choose a Lyapunov function candidate V as
Theorem1.
Consider the uncertain strict-feedback nonlinear system (1) with the uniform state quantizer (2). Then, for any initial conditions satisfying , the quantized-feedback-based adaptive event-triggered tracker consisting of the command filters (17) and (23), the virtual control laws (14), the actual event-triggered control law (18)–(20) with the adaptation laws (15), (16), (21) and (22) ensures that all the closed-loop signals are uniformly ultimately bounded, the tracking error converges to an adjustable compact set around zero, and the inter-event times are lower bounded by the minimum inter-event time where .
The reconstruction errors , basis function vectors , and time-varying disturbances are bounded signals where . In addition, , , are bounded from Lemma 3 and and are bounded from Lemma 5. Therefore, and are bounded as
Then, using the boundedness of , , and applying Lemma 1, it holds that
From , we get . Then, since , , , and are satisfied for , there exist positive bounding functions such that
where .
Let us define , , , and as , , and where and is a constant. Note that , , and are compact sets. Therefore, and are also compact. From (47), it is ensured that there exist constants and such that on and on . Then, using the following inequalities
with a constant , and selecting , , , with positive constants , , , and , we get
where . Since on , it is obtained that where . Here, when , on is ensured and thus the set is an invariant set. Therefore, we can conclude that the closed-loop signals and are bounded where . From the boundedness of and r, is bounded. Then, in (7) is bounded using the boundedness of and from Lemmas 3 and 4. Based on the boundedness of , it is induced that and are bounded owing to the stable filter (5). Thus, the boundedness of and leads to the boundedness of . By the similar reasoning, , , , and are bounded for . Then, from Lemma 5, , , and are also bounded. According to the triggering law (19) and the boundedness of , we can conclude that the implemented event-triggered control input u is bounded. In addition, the inequality is obtained by solving . Therefore, it is ensured that the tracking error converges to a compact set whose size can be adjusted by choosing appropriate design parameters (see Remark 5).
Now, to exclude Zeno behavior, we prove that there exists a minimum inter-event time . Since is differentiable except at each triggering instant, we obtain
Note that , and the uniform boundedness of is ensured from the previous analysis. Thus, there exists a positive constant such that . Consequently, according to the proposed triggering law (19), integrating during gives for all . That is, the minimum inter-event time can be defined as . □
3.4. Comparision with the Recent Work
In this section, the proposed control scheme is compared with the recent adaptive quantized feedback control scheme in [14]. In the recent work [14], an adaptive quantized feedback recursive controller was designed for nonlinear systems described by
where , , and h are known nonlinearities, and is an unknown parameter vector. Here, the unmatched nonlinear functions should be known and satisfy the Lipschitz conditions with known Lipschitz constants. On the contrary, the proposed controller is designed for system (1) involving completely unknown unmatched nonlinear functions and disturbances . Therefore, no information of the nonlinearities is necessary for designing the proposed quantied feedback controller. To deal with these nonlinearities and disturbances in the quantized feedback recursive control design, we present an adaptive function approximation technique using quantized-states-based adaptation laws (see (14) and (15)) and prove the boundedness between and .
On the other hand, the quantized feedback controller in [14] was designed as follows:
where , , , , and , are design parameters, is the estimate of , , and for . The definitions of and are same as ours. It should be emphasized that u in (51) is continuously updated. Therefore, this control scheme increases the load in communication through the controller-to-actuator channel which is unfavorable in practical networked control systems with limited communcation resources. In order to reduce this load, we developed our control scheme in an event-driven manner which means that u in (18) is updated only when the triggering condition (19) is satisfied.
In summary, compared with [14], the proposed controller can handle uncertain nonlinear systems with strict-feedback unknown nonlinearities while saving the communication resources by reducing the update of the control input u.
Remark4.
In the existing event-triggered controller design, the existence of the minimum inter-event time is necessary to avoid the Zeno behavior. To prove the existence of this minimum inter-event time, the triggering error signals should generally be differentiable [21,22,23,24,25,26]. However, the quantized feedback control laws reported in [13,14] were not differentiable because of the quantized state variables. To overcome this problem, we employ the auxiliary first-order low-pass filter (23) for the quantized-feedback-based control law in (20). Subsequently, the differentiable signal is used in the event-triggered actual control law u in (18). Consequently, the existence of the minimum inter-event time can be ensured by the analysis using (49). This design difficulty comes from the simultaneous handling of the quantized-feedback-based control and event-triggered control.
Remark5.
In the proposed quantized-feedback-based event-triggered tracking scheme, the selection of the design parameters is sufficient conditions. The guidelines for the selection of these parameters are based on the proof of Theorem 1 as follows:
(i) As the level of the quantizer δ in (2) decreases with the performance of digital devices or the communication environment, C can be reduced and thus the convergence bound can be reduced.
(ii) As and , , increase while fixing and as small constants, the tuning speed of the estimated parameters and and k can be increased and thus the bound can be reduced.
(iii) The eigenvalues of can be increased by adjusting the filter parameters and , , and the control gains can be increased. Then, the bound can be reduced by increasing the control gains .
(iv) Reducing the design parameters helps to reduce C, which subsequently reduces .
(v) Adjusting the triggering parameters and manipulates the number of event times along the limited network communication resources in transient and steady-state responses.
4. Simulation Results
In this section, a numerical example and a hydraulic servo system were simulated to validate the proposed quantized-feedback-based adaptive event-triggered control result. For the two simulations, the sampling time was set to ms. Thus, the quantized feedback triggering law (19) was monitored every 2 ms. Furthermore, the tracking performance of the proposed quantized feedback control scheme was compared with that of the previous adaptive quantized feedback control scheme reported in [14]. We show that although the proposed event-triggered control scheme was designed in the presence of unknown nonlinearities, its tracking performance was similar to the performance of the previous continuous controller [14] designed in the presence of known nonlinear functions.
4.1. Example 1
The uncertain third-order strict-feedback systems are considered by
where , , , , , , and . For the state quantization, the length of the quantization interval was and the design parameters for the proposed controller were , , , , , , , , , , , , , , , , and where . The reference signal is and the initial conditions are , respectively. For the comparison of the simulation results, the controller in [14] was implemented with the same design parameters , , and under the assumption that and are known where and .
The tracking results and errors are compared in Figure 2a,b, respectively. In each figure, the upper one is the result of the proposed quantized feedback controller and the lower one is the result of the previous quantized feedback controller [14]. As shown in Figure 2, the quantized feedback tracking performances of both controllers were similar, although the proposed quantized feedback approach considers the unknown nonlinearities and the event-triggered inputs. In Figure 3, and are depicted where the adaptive parameters were bounded even though the quantized states were used to update them. Figure 4a displays the control signal and its triggered signal u. Figure 4b depicts the inter-event times where the maximum inter-event time was 0.3 s which is sixty times longer than the sampling time. The triggering error and the triggering threshold are shown in Figure 5a and the cumulative number of triggering instants of ours is displayed in Figure 5b. From Figure 4 and Figure 5, it is shown that the control input u is updated when reaches and the total number of events is 974 which implies that of the total sampled data of are only transmitted through a communication channel during 30 s. Based on these figures, we can conclude that the tracking of uncertain strict-feedback nonlinear systems can be achieved although the quantized state variables , , were used, the control input was intermittently updated via the triggering law (19), and the inherent nonlinearities and disturbances were completely unknown.
4.2. Example 2
Consider a servo system driven by a hydraulic actuator where an inertia load is held by a spring-damper and a hydraulic actuator is placed in parallel to the spring-damper. The dynamic model of hydraulic servo systems is described by [34]
where is the displacement of the inertia load, is the mass of the load, and are the spring constant and the damping constant, respectively, is the driving force produced by the hydraulic actuator; A is the ram area and is the pressure difference of the hydraulic actuator, d denotes the friction inside the cylinder, is the volume of the cylinder, is the effective bulk modulus of oil, is the total internal leakage factor, and is the supply input flow. For more information about the dynamics of the hydraulic servo systems, see [34].
Let us define the state variables and the control input u as , , , and . Then, (53) can be rewritten by
where , , and . For the simulation, , , and are assumed to be unknown and the system parameters are set to kg, N·s/m, N/m, m, m, N/m, and [34]. The friction term is set to N. The reference signal r is given by and the initial conditions of the state variables are . The design parameters are chosen as , , , , , , , , , , , , , , and where . Similar to the previous example, the simulation results of the proposed controller are compared with those of the controller in [14] with the same design parameters , , and with and and the known information of , , and . In Figure 6, the tracking results and errors are compared where the initial error under the proposed controller converges close to zero within a few seconds and the tracking performance of the proposed controller is similar to that of the controller in [14]. These figures reveal that the function approximation using quantized states can effectively compensate for the uncertainties , , and . In Figure 7, the estimation parameters and , are shown. Figure 8a,b depict the input triggering results and the inter-event times, respectively, under the proposed control scheme. The triggering error and the triggering threshold are demonstrated in Figure 9a and the cumulative number of events is displayed in Figure 9b where the total number of events of ours is 1388. Thus, only of the total sampled data of during 30 s are released to the communication channel. As illustrated in these figures, we can achieve a good tracking performance for uncertain hydraulic servo systems with state quantization and unknown uncertainties.
5. Conclusions
A quantized-feedback-based adaptive event-triggered tracking strategy has been provided for state-quantized nonlinear systems in strict-feedback form with unknown nonlinearities. Different from the existing control methods, an adaptive approximation-based controller has been designed by deriving quantized-states-based adaptive laws and the event triggering issue has firstly been addressed in the quantized feedback control field. The closed-loop stability of the quantized-feedback-based event-triggered recursive control system has been analyzed with three lemmas. Further studies on the quantized-feedback-based adaptive event-triggered tracking problem of robotic systems and nonlinear multi-agent systems are recommended as future works.
Author Contributions
Conceptualization, Formal analysis, methodology, software, writing—original draft preparation, Y.H.C.; Conceptualization, supervision, Validation, writing—review and editing, S.J.Y. All authors have read and agreed to the published version of the manuscript.
Funding
This research was supported by the National Research Foundation of Korea (NRF) grant funded by the Korea government (NRF-2019R1A2C1004898).
Conflicts of Interest
The authors declare no conflict of interest.
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Figure 1.
Block diagram of the proposed quantized-feedback-based event-triggered tracking system.
Figure 1.
Block diagram of the proposed quantized-feedback-based event-triggered tracking system.
Figure 2.
Comparison of tracking results and errors for Example 1 (a) and r (b) .
Figure 2.
Comparison of tracking results and errors for Example 1 (a) and r (b) .
Figure 3.
Estimation results of the proposed approach for Example 1 (a) (b) for .
Figure 3.
Estimation results of the proposed approach for Example 1 (a) (b) for .
Figure 4.
Input triggering result and inter-event times of the proposed approach for Example 1 (a) and u (b) .
Figure 4.
Input triggering result and inter-event times of the proposed approach for Example 1 (a) and u (b) .
Figure 5.
Triggering threshold and the comparison of the cumulative number of events of the proposed approach for Example 1 (a) and (b) the cumulative number of events.
Figure 5.
Triggering threshold and the comparison of the cumulative number of events of the proposed approach for Example 1 (a) and (b) the cumulative number of events.
Figure 6.
Comparison of tracking results and errors for Example 2 (a) and r (b) .
Figure 6.
Comparison of tracking results and errors for Example 2 (a) and r (b) .
Figure 7.
Estimation results of the proposed approach for Example 2 (a) (b) for .
Figure 7.
Estimation results of the proposed approach for Example 2 (a) (b) for .
Figure 8.
Input triggering result and inter-event times of the proposed approach for Example 2 (a) and u (b) .
Figure 8.
Input triggering result and inter-event times of the proposed approach for Example 2 (a) and u (b) .
Figure 9.
Triggering threshold and the comparison of the cumulative number of events of the proposed approach for Example 2 (a) and (b) the cumulative number of events.
Figure 9.
Triggering threshold and the comparison of the cumulative number of events of the proposed approach for Example 2 (a) and (b) the cumulative number of events.
Choi, Y.H.; Yoo, S.J.
Quantized-Feedback-Based Adaptive Event-Triggered Control of a Class of Uncertain Nonlinear Systems. Mathematics2020, 8, 1603.
https://doi.org/10.3390/math8091603
AMA Style
Choi YH, Yoo SJ.
Quantized-Feedback-Based Adaptive Event-Triggered Control of a Class of Uncertain Nonlinear Systems. Mathematics. 2020; 8(9):1603.
https://doi.org/10.3390/math8091603
Chicago/Turabian Style
Choi, Yun Ho, and Sung Jin Yoo.
2020. "Quantized-Feedback-Based Adaptive Event-Triggered Control of a Class of Uncertain Nonlinear Systems" Mathematics 8, no. 9: 1603.
https://doi.org/10.3390/math8091603
APA Style
Choi, Y. H., & Yoo, S. J.
(2020). Quantized-Feedback-Based Adaptive Event-Triggered Control of a Class of Uncertain Nonlinear Systems. Mathematics, 8(9), 1603.
https://doi.org/10.3390/math8091603
Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.
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Choi, Y.H.; Yoo, S.J.
Quantized-Feedback-Based Adaptive Event-Triggered Control of a Class of Uncertain Nonlinear Systems. Mathematics2020, 8, 1603.
https://doi.org/10.3390/math8091603
AMA Style
Choi YH, Yoo SJ.
Quantized-Feedback-Based Adaptive Event-Triggered Control of a Class of Uncertain Nonlinear Systems. Mathematics. 2020; 8(9):1603.
https://doi.org/10.3390/math8091603
Chicago/Turabian Style
Choi, Yun Ho, and Sung Jin Yoo.
2020. "Quantized-Feedback-Based Adaptive Event-Triggered Control of a Class of Uncertain Nonlinear Systems" Mathematics 8, no. 9: 1603.
https://doi.org/10.3390/math8091603
APA Style
Choi, Y. H., & Yoo, S. J.
(2020). Quantized-Feedback-Based Adaptive Event-Triggered Control of a Class of Uncertain Nonlinear Systems. Mathematics, 8(9), 1603.
https://doi.org/10.3390/math8091603
Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.