Robust Controller for Pursuing Trajectory and Force Estimations of a Bilateral Tele-Operated Hydraulic Manipulator

In hazardous/emergency situations, public safety is of the utmost concern. In areas where human access is not possible or is restricted due to hazardous situations, a system or robot that can be distantly controlled is mandatory. There are many applications in which force cannot be applied directly while using physical sensors. Therefore, in this research, a robust controller for pursuing trajectory and force estimations while deprived of any signals or sensors for bilateral tele-operation of a hydraulic manipulator is suggested to handle these hazardous, emergency circumstances. A terminal sliding control with a sliding perturbation observer (TSMCSPO) is considered as the robust controller for a coupled leader and hydraulic follower system. The ultimate use of this controller is as a sliding perturbation observer (SPO) that can estimate the reaction force without any physical force sensors. Robust and perfect position tracking is attained with terminal sliding mode control (TSMC) in addition to control of the hydraulic follower manipulator. The force estimation and pursuing trajectory for the leader–follower system is built upon a bilateral tele-operation control approach. The difference between the reaction forces (caused by the remote environment) and the operating forces (applied by the human operator) required the involvement of an impedance model. The impedance model is implemented in the leader manipulator to provide human operators with an actual sense of the reaction force while the manipulator connects with the remote environment. A camera is used to ensure the safety of the workplace through visual feedback. The experimental results showed that the controller was robust at pursuing trajectory and force estimations for the bilateral tele-operation control of a hydraulic manipulator.


Introduction
The modern world requires an uninterrupted source of electrical energy for sustainable development; for this, nuclear power plants (NPP) are a promising energy resource option. The operational lifespan of nuclear power plants is around 40-65 years [1]. Consequently, upon the completion of its life cycle, the nuclear power plant must be decommissioned properly. Decommissioning of a nuclear power plant mainly involves the clean-up of all the residual radioactive waste materials. This residual waste emits an energy known as radiation, which is proven to be extremely fatal for humans [2]. The concentrated amount of radioactive emission makes the dismantling process highly unsafe for a human workforce. Consequently, the involvement of a human workforce must be minimized for the sake of their health and safety. Robots can be considered as an alternative solution [2] to safely complete the clean-up jobs.
For example, in [27], the authors used the sliding mode while fabricating the regulator to compensate for the nonlinearities introduced in the actuators. Several recent studies have shown a considerable improvement for dealing with nonlinearities based on a similar approach [28][29][30]. The purpose of these estimations are to minimize the chattering from the output of system by exploiting perturbation compensation. Additionally, in [31], the authors used a sliding mode controller to calculate an approximation of the reaction force of a bilateral tele-operation system.
Similarly, Cao and co-workers [32] addressed the problem of tracking the position and estimating the state of a robotic manipulator with a hybrid approach. Two techniques, neural network and TSMC, were applied by the authors. Specifically, the neural network was used to estimate the system dynamics and TSMC was applied to estimate the position and the velocity of system. The methodology was validated using a simulation analysis. Likewise, another variant of TSMC was used for position tracking of a three-DOF hydraulic manipulator in [31]. Xuan et al. [33] also used a slightly modified version of TSMC for tracking the trajectory of a hydraulic manipulator with three DOF.
Based on the prior outcomes, we proposed a terminal sliding-mode control with a sliding perturbation observer (TSMCSPO) for pursuing trajectory and force estimations for the bilateral tele-operation of a hydraulic manipulator. The strategic structure competently follows the trajectory and the estimate of the reaction forces of the leader-follower roboticarm in addition to bi-lateral tele-operation control of the leader/follower manipulator based on the hydraulic manipulator. In our work, by implementing the sliding perturbation observer (SPO), we estimated the reaction force of the hydraulic follower manipulator. A precise and effective tracking of the position and force was achieved via the bilateral tele-operation control system suggested in this study. While designing the bilateral teleoperation control system, the difference between the follower system's reaction forces and the leader system's applied forces was considered with the impedance model. Here, it should be noted that the reaction force is the actual effect of the hydraulic follower manipulator in remote environments. On the other hand, additionally, the applied force of the leader system is the force an operator generates. The results presented in this research effectively show the summary of trajectory tracking of both position and force with high accuracy.
The remainder of the manuscript is organized as follow: Section 2 defines the dynamics of the hydraulic manipulator. Section 3 deals with the TSMCSPO theory and the algorithm to estimate reaction force. Afterwards, Section 4 outlines the bilateral tele-operation control method. Sections 5 and 6, respectively, summarize the experimental setup and the corresponding results. Finally, concluding observations about the research are presented in Section 7.

Dynamics of the Hydraulic Manipulator
Hydraulic manipulators have been commonly used for handling and as machine tools in various industries over the past few decades. A schematic diagram of a three-DOF articulated hydraulic manipulator developed to dismantle an NPP is shown in Figure 1. The dynamics of the manipulator characterize the relationship between the applied forces, the resultant torques generated by the applied forces, and the final motion due to the torques. The basic equation demonstrating the robot dynamics in free space is given below The terminal sliding mode control (TSMC) relates the terminal sliding surfaces in the reaching phase and the sliding phase for robotic manipulators with global finitetime stability [35]. To explain the robustness of these kinds of control algorithms, the Lyapunov stability theory is best suited and also provides extra features related to precision. The TSMC can be expressed as a nonlinear differential equation of the first order of the form: e j + β j e j r sign e j = 0 In Equation (5), the sign e j is a sign function of e j , β j > 0, 0 < r < 1, and e j = x 1j − x 1dj is the actual position tracking error. An appropriate form that assures the presence of the TSMC can be expressed as: which guarantee |s(T r )| − |s(0)|> −ηT r . T r is the reaching time which fulfills T r = |s(0)|/η. Sliding dynamics are defined as follows.
. s j = −η 1j sign(s j ) − η 2j s j r sign(s j ) where η 1j , η 2j are greater than zero and η 1j > ψ j . The system control for maneuvering is described as x 1dj + f j (x) + β j r e j r−1 . Previously, Han et al. [36] explained that when the control approaches the sliding surface, s j = 0, the control input of Equation (8) will become non-singular. However, the singular function shall occur in the case of s j = 0, with . e j = 0 and e = 0. To avoid the existence of the singular function, the below equation must be satisfied: The authors of [37] confirmed the asymptotic stability of TSMCSPO.

Sliding Perturbation Observer (SPO)
The authors of [38] specified a momentary outline of perturbation. Sliding perturbation observer (SPO) is a permutation of an SO (sliding observer) and a perturbation observer. The SO is an observer that can estimate the state of an uncertain non-linear system. The state-space of the jth link in a second-order system can be signified as: In Equation (10), ψ j (x, t) signifies perturbation. The estimate of state variables is arithmetically stated as, Likewise,ψ j (x, t) signifies estimation of perturbation. A new control variable is defined to de-couple the control input for the estimation of perturbation and is described as, where α 3 > 0, u is new control variable. Hence, the control input might be arithmetically stated as, where u = [u 1 . . . u n ] T and B = b ji (x) n×n . The difference of b ji (x) and b ji (x) is actually part of ∆b ji . Lastly, the state dynamics corresponding to the transformation defined in Equation (14) are ..
. Slotine et al. [40] described the sat( x 1j ) as the structure for anti-chattering and the TSMC controller boundary layer was denoted by ε 0j . The estimation error of the measurable state and positive numbers are x =x − x, k 1j , k 2j , respectively. Finally, the error-dynamics of the SPO are established as, . .
The dynamics of x 2j , as an outcome of SPO shall establish .
The interaction of the frequency-domain between (b/w) Ψ j and Ψ j is mathematically represented as follow The above defined function in Equation (24) is nothing but a high-pass filter that represents the relation between actual and error perturbation. Equation (24) indicates that the estimated perturbation will be correct as the value of the perturbation is less than the range of low frequency.

Terminal Sliding Mode Control with Sliding Perturbation Observer (TSMCSPO)
By combining the controller (TSMC) and an observer (SPO), a new robust controller is formed, which is called the terminal sliding mode control with sliding perturbation observer (TSMCSPO) [37]. The errorê j between the required (expected) trajectories with estimation values is reduced by using the controller (TSMC). Theŝ j dynamics are described byŝ whereê j =x 1j − x 1dj is the estimated position tracking error. The suitable presence state of TSMCSPO can be insured by designing .ŝ j as .ŝ j = −Γ j R maxj k 1j /ε 0j sign(ŝ j ) − η 3j s j r sign(ŝ j ) (26) where Γ j is the perturbation of the anticipated boundary, η 3j > 0, and R maxj is described as follows: The control input u j for the corresponding TSMCSPO is as follows: Thus, the s j dynamics encircled by boundary ŝ j ≤ ε 0j are .
It is worth noting that estimation errors in state and perturbation can cause changes in the driving terms of s j dynamics.

Design Procedure of TSMCSPO
The mathematical detail regarding the design is presented in this section. In the case where ŝ j ≤ ε 0j , the dynamical representation shall become, The characteristic equation for the A matrix in Equation (32) is, Since A is a 3 × 3 matrix, let us suppose its characteristic equation is p(λ d ) = (λ + λ d ) 4 ; where λ d is a desired Eigen value. This polynomial results in the following solution set, The corresponding transfer function could be represented as

Bilateral Tele-Operation Control
First of all, the safety procedures were followed that ensured that the robotic actuators and end effectors did not pose a threat to the user or the surroundings. The system is a mixture of hydraulics and electronics, therefore, accidental spills of hydraulic fluids or electrocution due to electric wires were prevented. Consequently, the computers running client and server routines were powered-up. Here, in the context of the leader-follower configuration, the client refers to the follower while the server refers to leader. The client routine is executed after starting the server routine. The graphical user interface-based software was made using Microsoft Visual Studio in the Windows environment. The client robot attempts to connect with the server robot by utilizing the known parameters of IP address and port number. The server routine is waiting for approaching requests for establishing connection. Only after validating a connection request from the client robotic system does the server side authorize the connection. The leader robot requests the client identity, followed by sending a puzzle to the client. The client uses the established methodology of reversing the bits of the question and replies to the server in order to verify its identity. The status bar on the software turns green when the connection is successful, while it turns red if the connection failed. To ensure safety, the amplifiers are initially powered down (in case they were already powered up). After the successful link creation, the amplifiers are powered up again. This routine can be observed manually by using the "SWITCH ON" and "SWITCH OFF" buttons from the software. The operator presses the Read button on the leader computer followed by pressing the Read button on the follower computer. The leader software reads the data from encoders that provide the position information that is used to calculate the essential variables shown in the system equations. These variables are critical for tele-actuation and feedback. The validity of these variables is tested by making sure their values fall within the allowed range. Only the valid variable values are transferred to the follower computer. The orientation information of all axes is also sent to the follower using the TCP network socket. We used a TCP type network socket for reliable data transfer. Both of the leader and follower receive and transfer the data using their network sockets. The follower routine translates the variables into actuation commands according to the leader's information. Upon the follower's actuation, the software running on the follower computer reads the sensor value to compute the reaction force observed by the follower robot. This force calculation is performed by using a SMCSPO controller implemented in the software. Using the novel algorithm, the position and perturbation are projected and communicated to the leader computer using the already working network sockets. The communication can be continued flawlessly and without any delays for extended durations. The efficacy of the system was tested as the follower followed/tracked the leader positions. The block diagram for the complete system is shown in Figure 2. When a connection is broken due to any interruption at any side, the connection partner gets a notification for connection termination. This makes sure the amplifiers are powered down in case of any problems. is tested by making sure their values fall within the allowed range. Only the valid variable values are transferred to the follower computer. The orientation information of all axes is also sent to the follower using the TCP network socket. We used a TCP type network socket for reliable data transfer. Both of the leader and follower receive and transfer the data using their network sockets. The follower routine translates the variables into actuation commands according to the leader's information. Upon the follower's actuation, the software running on the follower computer reads the sensor value to compute the reaction force observed by the follower robot. This force calculation is performed by using a SMCSPO controller implemented in the software. Using the novel algorithm, the position and perturbation are projected and communicated to the leader computer using the already working network sockets. The communication can be continued flawlessly and without any delays for extended durations. The efficacy of the system was tested as the follower followed/tracked the leader positions. The block diagram for the complete system is shown in Figure 2. When a connection is broken due to any interruption at any side, the connection partner gets a notification for connection termination. This makes sure the amplifiers are powered down in case of any problems.

Bilateral Control
The bilateral control strategy is defined in such a way that the user (human operator) can give a trajectory to the leader and follower device can follow the trajectory of leader. The user can also feel the reaction force when the follower device interacts with the object. Leader and follower dynamics equation can be expressed as follow.
where u describes the control input and J signifies inertia. The structure of the bilat-

Bilateral Control
The bilateral control strategy is defined in such a way that the user (human operator) can give a trajectory to the leader and follower device can follow the trajectory of leader. The user can also feel the reaction force when the follower device interacts with the object. Leader and follower dynamics equation can be expressed as follow.
where u describes the control input and J signifies inertia. The structure of the bilateral control is demonstrated in Figure 3. The leader device control input is described as follows: where m u , θ  m , and θ m are control input, estimated speed profile, and estimated position profile for the leader device, respectively, and τ h is the estimated torque for the operator.
The user (human operator) gives instructions to the leader, and the follower manipulator follows those instructions. The controller for the follower device is considered through the TSMCSPO structure. The estimated sliding function is derived as,  The leader device control input is described as follows: where u m , .θ m , andθ m are control input, estimated speed profile, and estimated position profile for the leader device, respectively, andτ h is the estimated torque for the operator.
The user (human operator) gives instructions to the leader, and the follower manipulator follows those instructions. The controller for the follower device is considered through the TSMCSPO structure. The estimated sliding function is derived as, whereê j =x 1j − x 1dj defines errors in tracking of the leader-follower device, β j1 > 0 is constant. The new control for the follower device u s is chosen such that it fulfills the criterion .ŝŝ < 0. The dynamical equation for .ŝ is defined as, Thus, the follower manipulator control input can be determined through the expression,

Estimation of Reaction Force Using a Sliding Perturbation Observer (SPO)
The perturbation can be estimated with the SPO and be based upon the purpose of the reaction-force. The estimation of perturbation is done through Equations (2) and (3) that define the dynamical representation of the three-DOF manipulator. This helps to calculate reaction force. Likewise, the estimation of the perturbation of 2nd link and end effector is, ..
The calculation of reaction force by estimation of perturbation can be determined through Equations (46) and (47) as, whereτ e1 ,τ e2 are the estimated reaction-torques while connected to joint-1 or joint-2 and the environment, respectively, and ∆ operator is the uncertainty parameter. The uncertainties could be considered as null if the values of the parameters are well estimated, i.e., fewer errors.

Internet-Based Experimental Setup
The leader device was placed on the 8th floor while the follower was place in the basement of the same building, and both the leader and follower manipulators had three links. Link-1 in both the leader and the follower manipulators connects to the base of the corresponding systems. The follower device in our system is a hydraulic manipulator that consists of a servo-motor and two cylinders. The follower device in our system is a hydraulic manipulator that comprises a servo motor and two cylinders. The purpose of the hydraulic cylinder is to actuate link number 2 and the end effector. Additionally, the servo motor is in place to control the base of our manipulator.
The control input of TSMCSPO can be calculated accordingly, We used the three-DOF hydraulic manipulator to carry our extensive experimentation. The reaction forces were generated at the end effector and the second link. The reaction forces were estimated with the aforementioned TSMCSPO algorithm. The human operator present in the basement (leader) location produced the trajectory for leader manipulator, which was then tracked by the follower manipulator on the 8th floor of the building.
A visual display on a personal computer was provided to the human operator at the leader device location. The schemes of the SMC controlled the trajectory of the follower manipulator as per leader manipulator command. Figure 4 represents the leader device and the GUI for visual feedback.
We used the three-DOF hydraulic manipulator to carry our extensive experimentation. The reaction forces were generated at the end effector and the second link. The reaction forces were estimated with the aforementioned TSMCSPO algorithm. The human operator present in the basement (leader) location produced the trajectory for leader manipulator, which was then tracked by the follower manipulator on the 8th floor of the building. A visual display on a personal computer was provided to the human operator at the leader device location. The schemes of the SMC controlled the trajectory of the follower manipulator as per leader manipulator command. Figure 4 represents the leader device and the GUI for visual feedback.  Table 1 showed the parameter values of the TSMCSPO that were used in the experimental work.  Table 1 showed the parameter values of the TSMCSPO that were used in the experimental work. The tele-operated bilateral control strategy using the TSMCSPO was verified by performing many experiments under different circumstances. The scenarios of the experiment included the following: (1)  to the command evaluated by the TSMCSPO. From the first experiment, the results of the tele-operated bilateral control for position tracking of end effector are shown in Figure 5. The position of the leader device is shown with the blue dotted line while the position of the follower device is shown with the red dotted line of the base, end effector, and second link. The results of Figure 5 show that the follower device tracked the commands of the human operator, which were given to the leader device, with little inconsistency. A flawless tracking of the follower shows the competence of the proposed structure (TSMCSPO). It is also perceived from the results the that maximum value of the trajectories of the leader-follower was attained at 90 degrees at 45.4 s of the end effector. The end effector can move between 0 and 90 degrees in space. The inaccuracy between the leader-follower trajectories of the end effector are demonstrated in Figure 6. The extreme value of the error observed between the leader-follower trajectories was 0.6865 degrees at 77.57 s. It is also perceived from the results that 0.32 degrees is the average error between the leader-follower trajectories. The inaccuracy between the leader-follower trajectories of the end effector are demonstrated in Figure 6. The extreme value of the error observed between the leaderfollower trajectories was 0.6865 degrees at 77.57 s. It is also perceived from the results that 0.32 degrees is the average error between the leader-follower trajectories.

Experimental Results
where i a is the ith perturbation value. The result of the normalized estimated perturba-   The results in Figure 8 show that the follower device of second link tracked the command of the human operator, which was given to the leader device with the least inconsistency. It is also perceived from the results that the maximum value of the trajectories of the leader-follower attained 84.4 degrees at 37.42 s of second link. The second link can move between 0 and 90 degrees in space. The inaccuracy between the leader-follower trajectories of the second link are demonstrated in Figure 9. The extreme value of the error observed between the leaderfollower trajectories was 0.5373 degrees at 34.25 s. It is also perceived from the results that 0.23 degrees was the average error between the leader-follower trajectories. The results in Figure 8 show that the follower device of second link tracked the command of the human operator, which was given to the leader device with the least inconsistency. It is also perceived from the results that the maximum value of the trajectories of the leader-follower attained 84.4 degrees at 37.42 s of second link. The second link can move between 0 and 90 degrees in space.  The results in Figure 8 show that the follower device of second link tracked the command of the human operator, which was given to the leader device with the least inconsistency. It is also perceived from the results that the maximum value of the trajectories of the leader-follower attained 84.4 degrees at 37.42 s of second link. The second link can move between 0 and 90 degrees in space. The inaccuracy between the leader-follower trajectories of the second link are demonstrated in Figure 9. The extreme value of the error observed between the leaderfollower trajectories was 0.5373 degrees at 34.25 s. It is also perceived from the results that 0.23 degrees was the average error between the leader-follower trajectories. The inaccuracy between the leader-follower trajectories of the second link are demonstrated in Figure 9. The extreme value of the error observed between the leader-follower trajectories was 0.5373 degrees at 34.25 s. It is also perceived from the results that 0.23 degrees was the average error between the leader-follower trajectories.   Figure 11 show that the follower device of the base tracked the command of the human operator, which was given to the leader device with the least inconsistency. The second link can move from 0 to 360 degrees in space. It is also perceived from the results that the maximum value of the trajectories of the leader-follower attained 128.5 degrees at 4.51 s of the base.    Figure 11 show that the follower device of the base tracked the command of the human operator, which was given to the leader device with the least inconsistency. The second link can move from 0 to 360 degrees in space. It is also perceived from the results that the maximum value of the trajectories of the leader-follower attained 128.5 degrees at 4.51 s of the base.  An inconsistency in tracking of the base is presented in Figure 12. The extreme value of the error observed between the leader-follower trajectories was 1.528 degrees at 41.26 s. It is also perceived from the results that 0.09 degrees was the average error between the leader-follower trajectories. Figure 13 indicates the results of the follower's estimated perturbation for the base. The uppermost value of the estimated perturbation was at 15.7 s for the follower manipulator. The value of the follower manipulator was 163.6 N•m.   Figure 14 shows that the follower device of the end effector tracked the command of the human operator, which was given to the leader device when the follower manipulator was in contact with the environment. It is evident the follower's end effector follows the leader's trajectory, but when it was in contact with the environment there was a difference between both trajectories. It is also perceived from the results that the maximum value of the trajectories of the leader-follower attained 89.53 degrees at 134.6 s of the base. An inconsistency in tracking of the base is presented in Figure 12. The extreme value of the error observed between the leader-follower trajectories was 1.528 degrees at 41.26 s. It is also perceived from the results that 0.09 degrees was the average error between the leader-follower trajectories. Figure 13 indicates the results of the follower's estimated perturbation for the base. The uppermost value of the estimated perturbation was at 15.7 s for the follower manipulator. The value of the follower manipulator was 163.6 N·m. An inconsistency in tracking of the base is presented in Figure 12. The extreme value of the error observed between the leader-follower trajectories was 1.528 degrees at 41.26 s. It is also perceived from the results that 0.09 degrees was the average error between the leader-follower trajectories. Figure 13 indicates the results of the follower's estimated perturbation for the base. The uppermost value of the estimated perturbation was at 15.7 s for the follower manipulator. The value of the follower manipulator was 163.6 N•m.   Figure 14 shows that the follower device of the end effector tracked the command of the human operator, which was given to the leader device when the follower manipulator was in contact with the environment. It is evident the follower's end effector follows the leader's trajectory, but when it was in contact with the environment there was a difference between both trajectories. It is also perceived from the results that the maximum value of the trajectories of the leader-follower attained 89.53 degrees at 134.6 s of the base. An inconsistency in tracking of the base is presented in Figure 12. The extreme value of the error observed between the leader-follower trajectories was 1.528 degrees at 41.26 s. It is also perceived from the results that 0.09 degrees was the average error between the leader-follower trajectories. Figure 13 indicates the results of the follower's estimated perturbation for the base. The uppermost value of the estimated perturbation was at 15.7 s for the follower manipulator. The value of the follower manipulator was 163.6 N•m.   Figure 14 shows that the follower device of the end effector tracked the command of the human operator, which was given to the leader device when the follower manipulator was in contact with the environment. It is evident the follower's end effector follows the leader's trajectory, but when it was in contact with the environment there was a difference between both trajectories. It is also perceived from the results that the maximum value of the trajectories of the leader-follower attained 89.53 degrees at 134.6 s of the base.  Figure 14 shows that the follower device of the end effector tracked the command of the human operator, which was given to the leader device when the follower manipulator was in contact with the environment. It is evident the follower's end effector follows the leader's trajectory, but when it was in contact with the environment there was a difference between both trajectories. It is also perceived from the results that the maximum value of the trajectories of the leader-follower attained 89.53 degrees at 134.6 s of the base.  As we can see from the figures, the estimated perturbation is increased when follower end effector touches the environment at 100 s and human operator can also feel the reaction force. After some time, the operator pulls back the end effector from contact with the environment. The estimated perturbation is increased to reach the maximum value and then there is drop in estimated perturbation when the operator stops pushing.   As we can see from the figures, the estimated perturbation is increased when follower end effector touches the environment at 100 s and human operator can also feel the reaction force. After some time, the operator pulls back the end effector from contact with the environment. The estimated perturbation is increased to reach the maximum value and then there is drop in estimated perturbation when the operator stops pushing. As we can see from the figures, the estimated perturbation is increased when follower end effector touches the environment at 100 s and human operator can also feel the reaction force. After some time, the operator pulls back the end effector from contact with the environment. The estimated perturbation is increased to reach the maximum value and then there is drop in estimated perturbation when the operator stops pushing.

Conclusions
This study proposed a method that can calculate the reaction force from estimated perturbations by the SPO. Perturbation includes not only an external force but also elements that affect the reaction force estimation, such as model parameter errors of the mass and viscous friction, coulomb friction, interactive forces of manipulators, etc. Therefore, this new algorithm can reduce the uncertain effects in the estimated perturbation value and can calculate the pure reaction force. In addition, a tele-operated bilateral controller was designed based on the TSMCSPO for robust control of the follower. From the experimental results, it was confirmed that the proposed tele-operated bilateral controller has guaranteed good tracking performance of position and estimated reaction force in real time.
In this research, we have shown that the tele-operated bilateral control could be used in the dismantling of a nuclear power plant where human access is not possible. The results of this study can be applied in the dismantling of nuclear power plants, but they are not limited to that application as several other applications require leader-follower systems where human access is limited. These applications include those in hazardous areas with radiation from material with long half-lives, for example, uranium transportation in its active form, the disposal of explosive materials or handling of explosive/radioactive materials, and remote cutting in nuclear plant dismantling, etc. In our proposed scheme, we used a local area network that is also available in nuclear power plants. Therefore, we can avoid control performance degradation by utilizing a local area network. In the future, work will be done on a global network in which the time-delay will be a major issue. In GAN, the delay of latency almost remains constant throughout the communication, but the jitter's delay varies over time. In the future, modern techniques will need to tackle the delay issues related to GAN.