Towards Digital Twin Implementation for Assessing Production Line Performance and Balancing †
Abstract
:1. Introduction
1.1. Previous Researches
1.2. Purpose and Article Outline
2. Methodological Framework
- transferring experimental data collected during the real production to a simulation environment;
- evaluating specific parameters such as cycle time, workers’ saturation, etc., and measuring the Performance Efficiency—E of the production line by implementing the experimental data in the simulation environment;
- comparing the results with the nominal values, defined during the design phase, when experimental data were not available;
- transferring the results of the simulation to production line manager who will have the possibility to modify and re-balance the line.
2.1. Data Collection
- Optical systems: they consist of cameras installed within the test environment that capture the position of on-body sensors (in most cases they are simply markers) and allow to reproduce movements. They are mainly used in the field of biomechanics to record human motion because of their high accuracy and their capacity of real time preview of the motion, even if they are very expensive and bulky to be used in production lines.
- Non-Optical systems: all the other systems that do not use cameras may be classified in this category. Depending on the type of used sensors, there are several devices useful to acquire human body postures, such as:
- (i.)
- Electromechanical system, mainly consisting in wearable suites with wires and joints. This device is cheaper than the optical one, but it is less accurate and it obstructs the user’s movements.
- (ii.)
- Magnetic system, which uses magnetic sensors to evaluate the position and the directions of human body segments with respect to a magnetic field generator. The problem of this device is that the magnetic field generator cannot work in many real production environments because of magnetic interferences. So, magnetic systems can be used only in a laboratory environment, keeping the sensors near to the magnetic field generator.
- (iii.)
- Inertial Movements Unit (IMU) sensors, which integrate magnetometer, accelerometer, and gyroscope to capture the orientation of each segment of human body. Inertial sensors are worn by the user and, usually, they do not obstruct the working activities; moreover, as opposed to magnetic sensors, IMU sensors can be used in a real working environment, even if they require an accurate initial calibration. Finally, inertial motion tracking systems are cheaper than the optical systems, but the accuracy is limited and the measurements may also be affected by electromagnetic noise due to the presence of metals in a real factory environment.
2.1.1. Number of Acquired Cycles
2.1.2. Data Acquisition Session
2.1.3. Post Process
- t0i = timeframe corresponding to the start of the ith production cycle;
- t1i = timeframe corresponding to the end of the ith production cycle.
- ∆tij = time needed for the jth operation in the ith acquisition;
- t0ij = timeframe corresponding to the start of the jth operation in the ith acquisition;
- t1ij = timeframe corresponding to the end of the jth operation in the ith acquisition;
- it will be:
2.2. Simulation
- Virtual scenario setting: the first step regards the virtual representation of the investigated workstation. Having 3D models of resources and parts, it is possible to set up the virtual scenario according to the design specifications. Once the objects are positioned, the male/female DHM is created and customized according to the desired anthropometric characteristics.
- Simulation: the software for human simulation, such as Tecnomatix by Siemens® [42] or Delmia by Dassault Sistèmes® [43], allows creating operations (walking, reaching, gripping, positioning, assuming a posture, applying force…) in a very intuitive way. These environments allow integrating motion capture systems (such as Kinect®, Vicon®, or XSens®), with already implemented communication interfaces, to connect the DHM with the user, replicating the motion. In addition, they give the possibility to build an own interface in order to connect any motion capture system. Since, by using these devices, it is possible to replicate the only motion, it may be necessary to refine other operations, such as grasping, picking/placing, or handling of objects. Simulating an entire work shift, by means of event-based simulation, allows evaluating the performance parameters of the line (working times, number of produced items…), ergonomics and so on.
- Results analysis: numerical data, related to the line performance parameters, need to be analyzed and evaluated in order to deal with the decision-making process, suggesting corrective measures to the team leader.
3. Case Study
3.1. Data Collection
3.2. Simulation
Algorithm 1 Pseudocode to link virtual environment with sensors data |
Load data from CSV file cocd=new TxCompoundOperationCreationData(“Root Folder”,1,”root”) rootcompound=TxApplication.ActiveDocument.OperationRoot.CreateCompoundOperation(cocd) For each line in CSV
|
4. Results Analysis and Discussions
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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∆tj,μ [s] | σj [s] | ∆tj,theor [s] | |
---|---|---|---|
OP 10 (j = 1) | 2.30 | 0.10 | 2.30 |
OP 20 (j = 2) | 10.40 | 2.78 | 9.20 |
OP 30 (j = 3) | 5.10 | 1.30 | 4.60 |
OP 40 (j = 4) | 3.80 | 0.32 | 3.90 |
TOTAL | 21.60 (∆tμ) | 3.08 (σ) | 20.00 (∆ttheor) |
∆tj | εj | ||
---|---|---|---|
OP10 (j = 1) | 0 | < | 0.23 |
OP20 (j = 2) | 1.20 | > | 0.92 |
OP30 (j = 3) | 0.5 | > | 0.46 |
OP40 (j = 4) | 0.1 | < | 0.39 |
Values | |
---|---|
Total number of completed cycles (controlled components) | 1205 |
Working cycles requiring more than 20 s | 1005 |
Working cycles requiring less than (or equal to) 20 s | 200 |
Value [s] | |
---|---|
Theoretical cycle time—∆ttheor | 20 |
Experimental mean cycle time—∆tμ | 21.6 |
Numerical mean cycle time—∆tμ,s | 22.4 |
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Share and Cite
Fera, M.; Greco, A.; Caterino, M.; Gerbino, S.; Caputo, F.; Macchiaroli, R.; D’Amato, E. Towards Digital Twin Implementation for Assessing Production Line Performance and Balancing. Sensors 2020, 20, 97. https://doi.org/10.3390/s20010097
Fera M, Greco A, Caterino M, Gerbino S, Caputo F, Macchiaroli R, D’Amato E. Towards Digital Twin Implementation for Assessing Production Line Performance and Balancing. Sensors. 2020; 20(1):97. https://doi.org/10.3390/s20010097
Chicago/Turabian StyleFera, Marcello, Alessandro Greco, Mario Caterino, Salvatore Gerbino, Francesco Caputo, Roberto Macchiaroli, and Egidio D’Amato. 2020. "Towards Digital Twin Implementation for Assessing Production Line Performance and Balancing" Sensors 20, no. 1: 97. https://doi.org/10.3390/s20010097
APA StyleFera, M., Greco, A., Caterino, M., Gerbino, S., Caputo, F., Macchiaroli, R., & D’Amato, E. (2020). Towards Digital Twin Implementation for Assessing Production Line Performance and Balancing. Sensors, 20(1), 97. https://doi.org/10.3390/s20010097