Integration and Evaluation of Intra-Logistics Processes in Flexible Production Systems Based on OEE Metrics, with the Use of Computer Modelling and Simulation of AGVs
Abstract
:1. Introduction
2. State-of-the-Art
2.1. Issues Related to FMS and AGV
- they do not require an operator’s service, which allows reducing the labour costs,
- increased work efficiency—it can work 24 h a day,
- high positioning precision—less material losses during transport,
- high security—the replacement of the operator reduces the number of accidents at work, safety systems reduce the risk of collision,
- flexibility of use—the ability to program the route according to the requirements of the process, easy route change and system expansion.
- weight and size,
- load capacity (from a few kgs to several tons),
- driving speed 1–2 m/s,
- drive power,
- navigation method, positioning accuracy,
- time of loading and unloading,
- battery capacity,
- working time, battery charging time.
- photo-optical—with a passive lead line,
- inductive—with an active lead line,
- without a lead line—autonomous navigation with different location methods: incremental, infrared, ultrasonic, laser, gyroscopic, satellite (GPS).
- All AGV vehicles move in the same direction, which practically excludes collisions,
- system control is simplified due to the lack of alternative routes.
- Small fault tolerance, in the event of failure of one vehicle, the others usually cannot pass it by,
- if the vehicle passes the given transfer point, it cannot turn back, but it must cross the entire loop once again to reach it again,
- vehicles hold each other, which may lead to blockages of the system (deadlock).
2.2. Evaluation of FMS and AGV
- Production throughput,
- time of the production process (Manufacturing Lead Time),
- average waiting time for transport,
- length of queues in storage buffers,
- work in progress (WIP),
- downtime of workstations,
- delayed execution of production orders,
- OEE—Overall Equipment Effectiveness,
- OTE—Overall Throughput Effectiveness.
- MTBF—Mean Time Between Failures,
- MTTR—Mean Time To Repair.
3. Description of the Problem—Materials and Methods
4. Results of the Simulation Experiments
Second Experiment
5. Discussion
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Number of AGVs NAGV | Minimum Production Pmin [Pieces] | Lower Limit of 95% Confidence Interval [Pieces] | Average production Pavg [Pieces] | Upper Limit of 95% Confidence Interval [Pieces] | Maximum Production Pmax [Pieces] | Standard Deviation Σ |
---|---|---|---|---|---|---|
0 | 548 | 559.0 | 561 | 563 | 573 | 6.3 |
1 | 182 | 183.66 | 184.7 | 184.87 | 187 | 1.62 |
2 | 333 | 335.97 | 336.7 | 337.43 | 341 | 1.95 |
3 | 408 | 412.1 | 413.4 | 414.7 | 422 | 3.6 |
4 | 419 | 428.6 | 430.3 | 432 | 438 | 4.5 |
5 | 434 | 439.8 | 441.5 | 443.3 | 450 | 4.7 |
6 | 435 | 443.0 | 444.7 | 446.4 | 453 | 4.6 |
7 | 432 | 443.8 | 445.6 | 447.4 | 456 | 4.9 |
8 | 436 | 443.6 | 445.7 | 447.8 | 458 | 5.6 |
Time [Hours] | Minimum Production Pmin [pc.] | Lower Limit of 95% Confidence Interval [pc.] | Average Production Pavg [pc.] | Upper Limit of 95% Confidence Interval [pc.] | Maximum Production Pmax [pc.] | Standard Deviation σ | Average Throughput [pc./Hour] |
---|---|---|---|---|---|---|---|
24 | 593 | 611 | 614.2 | 617.5 | 634 | 8.7 | 25.59 |
120 | 3094 | 3131.8 | 3139.9 | 3148.1 | 3188 | 21.8 | 26.17 |
500 | 13,061 | 13,116.7 | 13,128.3 | 13,139.9 | 13,188 | 31.1 | 26.26 |
1500 | 39,288 | 39,387 | 39,406 | 39,425 | 39,534 | 51 | 26.27 |
Time [Hours] | Minimum Production Pmin [pc.] | Lower Limit of 95% Confidence Interval [pc.] | Average Production Pavg [pc.] | Upper Limit of 95% Confidence Interval [pc.] | Maximum Production Pmax [pc.] | Standard Deviation σ | Average Throughput [pc./Hour] |
---|---|---|---|---|---|---|---|
24 | 549 | 607.3 | 613.2 | 618.3 | 634 | 14.8 | 25.55 |
120 | 2810 | 3091 | 3116 | 3141 | 3174 | 68 | 25.97 |
500 | 12,327 | 12,965 | 13,030 | 13,094 | 13,162 | 173 | 26.06 |
1500 | 38,402 | 39,044 | 39,151 | 39,258 | 39,463 | 287 | 26.10 |
Time [Hours] | Plimit | Pavg1 | OFE1 | Pavg2 | OFE2 | Pavg3 | OFE3 |
---|---|---|---|---|---|---|---|
24 | 652 | 444.7 | 0.68206 | 614.2 | 0.94203 | 613.2 | 0.94049 |
120 | 3260 | 2252.3 | 0.69089 | 3139.9 | 0.96316 | 3116 | 0.95583 |
500 | 13,583.33 | 9407.6 | 0.69258 | 13,128.3 | 0.96650 | 13,030 | 0.95926 |
1500 | 40,750 | 28,230.7 | 0.69278 | 39,406 | 0.96702 | 39,151 | 0.96076 |
Nr of AGVs Nagv | Plimit [Pc.] | AGVlimit (4 × Plimit/Nagv) [Pc.] | Pavg [pc.] | Finished Transport Operation [pc.] | Average Transport Oper./AGV [pc.] | OTE | OFE |
---|---|---|---|---|---|---|---|
1 | 652 | 2608 | 186.7 | 781.9 | 781.9 | 0.29981 | 0.28635 |
2 | 652 | 1304 | 347.23 | 1428.2 | 714.1 | 0.54762 | 0.53256 |
3 | 652 | 869.3 | 516.7 | 2107.5 | 702.5 | 0.80812 | 0.79249 |
4 | 652 | 652.0 | 606.0 | 2461.4 | 615.4 | 0.94379 | 0.92945 |
5 | 652 | 521.6 | 614.0 | 2493.0 | 498.6 | 0.95590 | 0.94172 |
6 | 652 | 434.7 | 615.0 | 2497.0 | 416.2 | 0.95737 | 0.94325 |
7 | 652 | 372.6 | 614.0 | 2494.4 | 356.3 | 0.95637 | 0.94172 |
8 | 652 | 326.0 | 611.7 | 2484.5 | 310.6 | 0.95265 | 0.93819 |
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Foit, K.; Gołda, G.; Kampa, A. Integration and Evaluation of Intra-Logistics Processes in Flexible Production Systems Based on OEE Metrics, with the Use of Computer Modelling and Simulation of AGVs. Processes 2020, 8, 1648. https://doi.org/10.3390/pr8121648
Foit K, Gołda G, Kampa A. Integration and Evaluation of Intra-Logistics Processes in Flexible Production Systems Based on OEE Metrics, with the Use of Computer Modelling and Simulation of AGVs. Processes. 2020; 8(12):1648. https://doi.org/10.3390/pr8121648
Chicago/Turabian StyleFoit, Krzysztof, Grzegorz Gołda, and Adrian Kampa. 2020. "Integration and Evaluation of Intra-Logistics Processes in Flexible Production Systems Based on OEE Metrics, with the Use of Computer Modelling and Simulation of AGVs" Processes 8, no. 12: 1648. https://doi.org/10.3390/pr8121648
APA StyleFoit, K., Gołda, G., & Kampa, A. (2020). Integration and Evaluation of Intra-Logistics Processes in Flexible Production Systems Based on OEE Metrics, with the Use of Computer Modelling and Simulation of AGVs. Processes, 8(12), 1648. https://doi.org/10.3390/pr8121648