Integration of Improvement Strategies and Industry 4.0 Technologies in a Dynamic Evaluation Model for Target-Oriented Optimization
Abstract
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Abstract
1. Introduction
2. Methodology, Fundamentals, and Materials
2.1. Methodology
- Literature research on:
- (a)
- Organizational areas of manufacturing companies and current challenges in organizational assessments based on maturity level models.
- (b)
- Identification of optimization alternatives in Industry 4.0 environments.
- Development of the conceptual model for the continuous improvement of manufacturing organizations to achieve their organizational goals.
- Description of production areas and factors for the design, monitoring, and assessment of manufacturing organizations.
- Derive how the optimization alternatives, which in this research are relevant improvement strategies and new technologies within Industry 4.0 environments, can be integrated into a model with different recommended sequential steps. Additionally, determine how the different Industry 4.0 related technologies can be implemented for the optimization of the production system.
- Development of an evaluation scheme for new optimization alternatives which can serve as a framework for optimal decision-making when selecting appropriate concepts, techniques and steps for new improvement project initiatives.
- Design of simulation models for modelling and assessing the different steps of the sequence model for Industry 4.0 related technologies.
- Discussion of how to apply the conceptual and simulation models for developing digital twin models for dynamic maturity assessments providing insights on the impacts of Industry 4.0 related technologies implementation projects.
- Critical reflection of the research performed, and outlook of potential future research based on the paper.
2.2. Organizational Areas and Maturity Models
2.3. Optimization Alternatives: Improvement Strategies and New Technologies
- Lean manufacturing (LM): Lean manufacturing arose from the Toyota Production System and is described as manufacturing without waste [28].
- Six Sigma (SS): After the inception of TQM in the early 1980s, Six Sigma emerged as an element of TQM that could be seen as the current state of evolution in quality management. Six Sigma is a strategy that helps to identify and eliminate the defects which lead to customer dissatisfaction in tire industries [29].
- Theory of constraints (TOC): Goldratt (1990) declares that “any system in reality must have at least one constraint”. In the case of chains, the strength of the whole chain equals the strength of the weakest link. Similarly, in the case of organizations’ performance, the final throughput of a company is limited by the resource with the lowest capacity [5].
- Quick response manufacturing (QRM): Based on time-based competition (TBC), QRM is a companywide strategy in which the main focus is to reduce the lead time [28].
- Agile manufacturing (AM): Agile manufacturing is a responsive manufacturing strategy with the goal to survive in continuously and unpredictably changing environments as it focuses on fast response throughout the supply chain to mitigate the effects of variability [30].
2.4. Materials
- Literature review: It is based on the search of articles, books, conference papers, etc., for the following keywords: “Capability Maturity Model”; “Industry 4.0 Maturity Model”; “Dynamic Maturity Model Assessment”; “Improvement Strategies”; “Industry 4.0 technologies”; “Integration of Lean and Industry 4.0”; “Integration of improvement strategies and Industry 4.0”; “Implementation sequence of Industry 4.0 technologies”; and “Evaluation Scheme for Industry 4.0 technologies”.
- System Dynamics: System dynamics is a computer-guided approach for studying, managing and solving complex feedback problems with a focus on policy analysis and design [37].
- Simulation and Vensim Software: Simulation is the only practical way to test models because our mental models are dynamically deficient, omitting feedback, time delays, accumulations and nonlinearities [38]. For all of these reasons, simulation is used to reproduce the conceptual model and to validate the initial hypotheses. In the market, there are different software packages that enable system dynamics modeling, such as: AnyLogic, DYNAMO, iTHINK, POWERSIM, STELLA and VENSIM [39]. From these, VENSIM simulation software was selected for the research.
3. Conceptual Model Development
3.1. Model for Continuous Business Transformation Aligned with Current and Future Manufacturing Organisational Goals
3.2. Production Areas and Factors for Maturity Level Evaluation
3.3. Integration of Improvement Strategies and Industry 4.0 Technologies
- Cluster 1—Monitoring and data gathering phase: it consists of sensors and actuators (T1) as well as RFID and RTLS (T2) for the system monitoring enabling, and also works to collect data about products, equipment, staff, tools, etc. This phase is recommended to be implemented before starting the lean optimization process. This cluster makes it possible to have less product, equipment, staff coordination, data quality failures, and less production lead time as it would be easy to find and know the status of any element, as well as less reaction time for maintenance activities as breakdowns would be known in real time.
- Cluster 2—Make use of data phase: from the data collected, the second phase deals with the transformation of this data into usable information in order to support decision-making activities at the strategic, tactical and operative levels. For this purpose, phase 1 serves as the basis and T8, data analytics and artificial intelligence, serve as means. This step is recommended to be applied as soon as data are available and therefore it can be tackled in parallel or after the analysis of the current state or in any moment of the lean optimization steps, as soon as reliable data is available.
- Cluster 3—Applying and sharing information knowledge for specific purposes phase: information from the previous phase can be shared with different locations at any time with cloud technology (T11), with cybersecurity (T12) and also applied for specific purposes. Virtual reality (VR, T6) can be, for example, applied for training and improving manual assembly activities; augmented reality (AR, T6) can be applied for improving maintenance activities on-site; and simulations (T7) can be applied for improving decision-making for various what-if scenarios of the production system. This step is recommended to be applied after the current state has been analyzed and all available data have been gathered. As a result, it could be initiated in parallel or after the lean manufacturing and Six Sigma optimization steps.
- Cluster 4—Development of end-to-end vertical and horizontal integration phase: with data availability, information based on this data, and already specific applications, a global solution with interactions of suppliers, producers and distributors, as well as with the real-time interaction of all different agents, persons, products, equipment, etc., interacting in the production system can be implemented. For this purpose, cyber-physical-systems (T4) can be developed by building digital twin models of the production system using communication and networking technologies (T10) that can provide real-time information anywhere with mobile devices (T3) and are applied for introducing self-adaptive/optimized robots (T9). This step is recommended to be applied after the lean manufacturing and Six Sigma optimization steps and in parallel or after the application of the TOC.
- Cluster 5—Make it fast, effective, and with efficiency: it refers to the continuous optimization of the technologies already implemented in the previous clusters, as well as to the improvement of lead times, effectiveness and efficiency with the use of additive manufacturing (T5). This step is recommended to be applied in parallel or after the introduction of QRM and AM.
3.4. Evaluation Scheme for Optimization Alternatives
4. Simulation of Use Cases
- Generic simulation model serving as basis for develop specific simulation models. It provides the required complexity level as well as implements the criteria for enabling later comparisons.
- Specific simulation models for a selection of technologies from the ones exposed in Section 3. The scope of these models does not include all of the potentials within the technology cluster, but a specific use case for the technology that will be specified in Section 4.2, where the logic and implications of the models are also to be explained.
- Improvement of some indicators with each Industry 4.0 technology use case.
- Some Industry 4.0 case studies may need to assume previous lean activities to be coherent.
- Definition of the objective, scope, hypothesis and methodology, including a general description of target simulation models and scenarios;
- Definition of the production system: flow and characteristics;
- Definition of quantitative parameters, key performance indicators (KPIs) to obtain results and compare models;
- Determination of the interrelationships among variables within the model;
- Description of the main assumptions for the simplification of the complexity of the model;
- Creation of the simulation models based on various Industry 4.0 case studies;
- Validation of the behavior of the simulation models;
- Determination of scenarios;
- Simulation and extraction of results;
- Evaluation of the results and derivation of conclusions.
4.1. Design of the Generic Use Case
4.1.1. Structure of the Simulation Use Cases: Production System Flow and Characteristics
4.1.2. Key Performance Indicators
- Cumulated demand (# thous. products);
- Cumulated production (# thous. products): the cumulative sum of all car units produced over the 500 simulated production weeks;
- Ø Availability of the production plant (%);
- Ø Performance at the final production step (# thous. products/week);
- Ø Quality at the final production step with one-way and no loops (%);
- Ø Capacity level (# thous. products);
- Implementation time (time period);
- Labor productivity (products/employee × week);
- Cumulated stocks (# mill. products);
- Ø Production lead time (# weeks): the number of weeks between the placement of the order and the delivery of the product for its distribution;
- Cumulated service level (%): the quantity of units delivered on time divided by the total number of delivered units;
- Profits (million euros): the result of the multiplication of the number of produced units by the margin that was provided for the type of produced car;
- Cumulated operational costs (million euros): consists of all costs related to the production system operations. It is the sum of procurement, production and distribution costs considering raw materials costs, transportation activities, working capital, labor costs, working shifts, and maintenance costs. The running costs of the project initiative are also included;
- Cumulated investment (million euros): the amount of the investment made to improve the production system. It can be due to the implementation of Industry 4.0 technologies;
- Return on investment (ROI) (million euros): the margin of the products that can be produced thanks to the Industry 4.0 related investment minus the investment value.
4.1.3. Creation of a Generic Simulation Model
- Distribution of finished products as given;
- Procurement of raw material as given;
- Each order has a production unit;
- Bill of materials are not considered.
- The same demand using replication;
- Same number of employees with same initial distribution and same capacity to perform warehouse activities;
- Same production logic for all simulation models;
- The warehouses have no stock capacity limitations;
- There is no transport limitation between the different production stages;
- There are two products, one existing product is in a mature stage with stable demand and provides 10,000 euros/unit of margin. The new model is in the process of being launched and provides 20,000 euros/unit. These values were used to calculate profits. If there is loss in volume, it is assumed that the new model will have the loss in volume due to unknown future demand;
- The simulation model considers sales losses starting from a customer order lead time greater than 60 days;
- A product is a finished product after it leaves the production facility;
- Time restrictions: first, the modeler must define a time horizon and the units of time. It is easy to fulfill that step by asking to what extent the simulation should be considered. In the case of the study, it has been decided to simulate four working years to evaluate influences in the medium and long term.
4.2. Design of the Simulation Models Based on Various Industry 4.0 Use Cases
- Initial situation: the model starts with a supply chain system that has delivery problems. Therefore, there is a capability need, i.e., the production system is not able to supply the needed demand to the market. Causes are unknown and could be multiple, such as low availability level of machines, lack of training of employees, long lead times for procurement of spare parts, lack of supplies on-time, etc.
- Cluster 1 simulation model: from the basis of the initial situation, the use case of the first cluster consists of the implementation of sensors for equipment monitoring. As a result, it is possible to know the bottleneck resources, as well as to incur less reaction times for maintenance activities, as breakdowns would be known in real time.
- Cluster 2 simulation model: this steps consists of the utilization of data provided from sensors about availability, performance and quality to adjust the production planning to develop into reliable planning that can enhance service levels to customer and capacity utilization levels thanks to better forecasting and capacity planning.
- Cluster 3 simulation model: later, with the help of virtual reality, the training and qualification of employees can improve significantly, and problems can be detected earlier. Therefore, this use case will enable a better-quality rate, and a reduction of production times leading, as a result, to higher capacities.
- Cluster 4 simulation model: it consists of the implementation of CPS with mobile devices as well as intelligent AGV (automated guided vehicles) that will improve the availability and reaction times for manufacturing spare parts, as well as for production supplies as agents are interconnected and without delays in communication and decisions.
- Cluster 5 simulation model: finally, the last step consists of applying additive manufacturing to reduce production lead times, procurement lead times for raw materials, as well as for spare parts, enabling improvement of the capacity level of the plant and the reaction times.
4.3. Simulation Models Logic Formulation
5. Results
6. Discussion
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
- Zaidin, N.H.M.; Diah, M.N.M.; Yee, P.H.; Sorooshian, S. Quality management in industry 4.0 era. J. Manag. Sci. 2018, 8, 82–91. [Google Scholar] [CrossRef] [Green Version]
- Klingenberg, C.; Antunes, J. Industry 4.0: What makes it a revolution. EurOMA 2017, 2017, 1–11. [Google Scholar]
- Tortorella, G.L.; Fogliatto, F.S.; Cauchick-Miguel, P.A.; Kurnia, S.; Jurburg, D. Integration of Industry 4.0 technologies into Total Productive Maintenance practices. Int. J. Prod. Econ. 2021, 240, 108224. [Google Scholar] [CrossRef]
- Frank, A.G.; Dalenogare, L.S.; Ayala, N.F. Industry 4.0 technologies: Implementation patterns in manufacturing companies. Int. J. Prod. Econ. 2019, 210, 15–26. [Google Scholar] [CrossRef]
- Garza-Reyes, J.A.; Lim, M.K.; Zisis, S.; Kumar, V.; Rocha-Lona, L. Adoption of operations improvement methods in the Greek engineering sector. In Proceedings of the 2015 International Conference on Industrial Engineering and Operations Management (IEOM), Dubai, United Arab Emirates, 3–5 March 2015; pp. 1–8. [Google Scholar]
- Sanders, A.; Elangeswaran, C.; Wulfsberg, J.P. Industry 4.0 implies lean manufacturing: Research activities in industry 4.0 function as enablers for lean manufacturing. J. Ind. Eng. Manag. (JIEM) 2016, 9, 811–833. [Google Scholar] [CrossRef] [Green Version]
- Sony, M. Industry 4.0 and lean management: A proposed integration model and research propositions. Prod. Manuf. Res. 2018, 6, 416–432. [Google Scholar] [CrossRef] [Green Version]
- Kolberg, D.; Zühlke, D. Lean automation enabled by industry 4.0 technologies. IFAC-PapersOnLine 2015, 48, 1870–1875. [Google Scholar] [CrossRef]
- Dubey, R.; Gunasekaran, A. Agile manufacturing: Framework and its empirical validation. Int. J. Adv. Manuf. Technol. 2015, 76, 2147–2157. [Google Scholar] [CrossRef]
- Qin, J.; Liu, Y.; Grosvenor, R. A categorical framework of manufacturing for industry 4.0 and beyond. Procedia CIRP 2016, 52, 173–178. [Google Scholar] [CrossRef] [Green Version]
- Mortensen, S.T.; Nygaard, K.K.; Madsen, O. Outline of an industry 4.0 awareness game. Procedia Manuf. 2019, 31, 309–315. [Google Scholar] [CrossRef]
- Fatorachian, H.; Kazemi, H. A critical investigation of Industry 4.0 in manufacturing: Theoretical operationalisation framework. Prod. Plan. Control. 2018, 29, 633–644. [Google Scholar] [CrossRef]
- Nascimento, D.L.M.; Alencastro, V.; Quelhas, O.L.G.; Caiado, R.G.G.; Garza-Reyes, J.A.; Rocha-Lona, L.; Tortorella, G. Exploring Industry 4.0 technologies to enable circular economy practices in a manufacturing context: A business model pro-posal. J. Manuf. Technol. Manag. 2019, 30, 607–627. [Google Scholar] [CrossRef]
- Chiarello, F.; Trivelli, L.; Bonaccorsi, A.; Fantoni, G. Extracting and mapping industry 4.0 technologies using wikipedia. Comput. Ind. 2018, 100, 244–257. [Google Scholar] [CrossRef]
- Dalmarco, G.; Ramalho, F.R.; Barros, A.C.; Soares, A.L. Providing industry 4.0 technologies: The case of a production technology cluster. J. High Technol. Manag. Res. 2019, 30, 100355. [Google Scholar] [CrossRef]
- Gökalp, E.; Şener, U.; Eren, P.E. Development of an assessment model for industry 4.0: Industry 4.0-MM. In Proceedings of the International Conference on Software Process Improvement and Capability Determination, Palma de Mallorca, Spain, 4–5 October 2017; Springer: Cham, Switzerland, 2017; pp. 128–142. [Google Scholar]
- Rübel, S.; Emrich, A.; Klein, S.; Loos, P. A maturity model for business model management in industry 4.0. In Multikonferenz Wirtschaftsinformatik; Leuphana Universität Lüneburg, Institut für Wirtschaftsinformatik: Lüneburg, Germany, 2018; pp. 6–9. [Google Scholar]
- Lu, H.P.; Weng, C.I. Smart manufacturing technology, market maturity analysis and technology roadmap in the computer and electronic product manufacturing industry. Technol. Forecast. Soc. Change 2018, 133, 85–94. [Google Scholar] [CrossRef]
- Zeller, V.; Hocken, C.; Stich, V. Acatech Industrie 4.0 maturity index–a multidimensional maturity model. In Proceedings of the IFIP International Conference on Advances in Production Management Systems, Seoul, Korea, 26–30 August 2018; pp. 105–113. [Google Scholar]
- Lee, J.; Bagheri, B.; Kao, H.A. A cyber-physical systems architecture for industry 4.0-based manufacturing systems. Manuf. Lett. 2015, 3, 18–23. [Google Scholar] [CrossRef]
- Dalenogare, L.S.; Benitez, G.B.; Ayala, N.F.; Frank, A.G. The expected contribution of Industry 4.0 technologies for industrial performance. Int. J. Prod. Econ. 2018, 204, 383–394. [Google Scholar] [CrossRef]
- Porter, M.E. Creating and sustaining superior performance. In Competitive Advantage; The Free Press: New York, NY, USA, 1985; pp. 167–206. [Google Scholar]
- Schuh, G.; Anderl, R.; Gausemeier, J.; ten Hompel, M.; Wahlster, W. (Eds.) Industrie 4.0 Maturity Index: Managing the Digital Transformation of Companies; Herbert Utz Verlag GmbH: München, Germany, 2017. [Google Scholar]
- Lodgaard, E.; Dransfeld, S. Organizational aspects for successful integration of human-machine interaction in the industry 4.0 era. Procedia CIRP 2020, 88, 218–222. [Google Scholar] [CrossRef]
- Issa, A.; Hatiboglu, B.; Bildstein, A.; Bauernhansl, T. Industrie 4.0 roadmap: Framework for digital transformation based on the concepts of capability maturity and alignment. Procedia CIRP 2018, 72, 973–978. [Google Scholar] [CrossRef]
- Smętkowska, M.; Mrugalska, B. Using Six Sigma DMAIC to improve the quality of the production process: A case study. Procedia-Soc. Behav. Sci. 2018, 238, 590–596. [Google Scholar] [CrossRef]
- Alcalá Gámez, A.; Cadena Badilla, M. Situando el SMED como una Herramienta de “Lean Manufacturing” para Mejorar los Tiempos de Preparación, Ajuste y Cambios de Herramientas. 2009. Available online: http://repositorioinstitucional.unison.mx/handle/20.500.12984/1507 (accessed on 9 November 2021).
- Godinho Filho, M. Complementing lean with quick response manufacturing: Case studies. Int. J. Adv. Manuf. Technol. 2017, 90, 1897–1910. [Google Scholar]
- Gupta, V.; Jain, R.; Meena, M.L.; Dangayach, G.S. Six-sigma application in tire-manufacturing company: A case study. J. Ind. Eng. Int. 2018, 14, 511–520. [Google Scholar] [CrossRef] [Green Version]
- Stump, B.; Badurdeen, F. Integrating lean and other strategies for mass customization manufacturing: A case study. J. Intell. Manuf. 2012, 23, 109–124. [Google Scholar] [CrossRef]
- Groten, M.; Gallego-García, S. A Systematic Improvement Model to Optimize Production Systems within Industry 4.0 Environments: A Simulation Case Study. Appl. Sci. 2021, 11, 11112. [Google Scholar] [CrossRef]
- Chiarini, A.; Belvedere, V.; Grando, A. Industry 4.0 strategies and technological developments. An exploratory research from Italian manufacturing companies. Prod. Plan. Control. 2020, 31, 1385–1398. [Google Scholar] [CrossRef]
- Gottge, S.; Menzel, T.; Forslund, H. Industry 4.0 technologies in the purchasing process. Ind. Manag. Data Syst. 2020, 120, 730–748. [Google Scholar] [CrossRef]
- Crnjac, M.; Veža, I.; Banduka, N. From concept to the introduction of industry 4.0. Int. J. Ind. Eng. Manag. 2017, 8, 21–30. [Google Scholar]
- Ustundag, A.; Cevikcan, E. Industry 4.0: Managing the Digital Transformation; Springer: Cham, Switzerland, 2017. [Google Scholar]
- García, S.G.; García, M.G. Industry 4.0 implications in production and maintenance management: An overview. Procedia Manuf. 2019, 41, 415–422. [Google Scholar] [CrossRef]
- Angerhofer, B.J.; Angelides, M.C. System dynamics modelling in supply chain management: Research review. In Proceedings of the 32nd Conference on Winter Simulation, Society for Computer Simulation International, Orlando, FL, USA, 10–13 December 2000; pp. 342–351. [Google Scholar]
- Sterman, J.D. Business Dynamics: Systems Thinking and Modeling for a Complex World; Irwin/McGraw-Hill: New York, NY, USA, 2000. [Google Scholar]
- Campuzano, F.; Bru, J.M. Supply Chain Simulation: A System Dynamics Approach for Improving Performance; Springer Science & Business Media: Berlin/Heidelberg, Germany, 2011. [Google Scholar]
No. | Cluster | Use Cases Definition | ||
---|---|---|---|---|
Use Case | Technology | Standard Global Production System Element | ||
1 | Get Data | Equipment Monitoring | Sensors | Quality management and robust processes |
2 | Use Information | Production Planning | Data Analytics | Logistics and production control |
3 | Apply in Specific | Training and Task Optimization | Virtual Reality | Work organization and employee orientation |
4 | Expand to Global | Autonomous AGVs | CPS (T4) & Adaptive Robots (T9) | Logistics and production control |
5 | Continuous Improvement | Production, Maintenance and Equipment | Additive Manufacturing | Quality management and robust processes, logistics and production control, product and process development |
No. | Simulation Models | Logic Formulation | |||
---|---|---|---|---|---|
Use Case | Description of Impacts | Impact on KPIs | Implementation Lead Time (Weeks) | ||
1 | Cluster 1 | Equipment Monitoring | Maintenance Improvement | Plant Availability | 12 |
2 | Cluster 2 | Production Planning | Capacity Utilization Improvement, Reliable Planning | Service Level | 8 |
3 | Cluster 3 | Training and Task Optimization | Product and Process Optimization, Quality Improvement, Staff Qualification | Plant Capacity, Lead Times, Quality Rate | 24 |
4 | Cluster 4 | Autonomous AGVs | Logistics Improvement | Logistics Availability | 12 |
5 | Cluster 5 | Production, Maintenance and Equipment | Global Supply Chain Times Reduction | Lead Times | 18 |
No. | Key Indicator | Simulation Models: Cumulative Improvements with the GUVEI-Model | |||||
---|---|---|---|---|---|---|---|
Initial Situation | Cluster 1 | Cluster 2 | Cluster 3 | Cluster 4 | Cluster 5 | ||
1 | ∑ Demand (# 103 products) | 363,195 | 363,195 | 363,195 | 363,195 | 363,195 | 363,195 |
2 | ∑ Demand real (#103 products) | 124,488 | 155,100 | 176,413 | 277,361 | 296,543 | 342,043 |
3 | ∑ Production (# products) | 105,719 | 130,778 | 148,564 | 237,511 | 256,324 | 307,680 |
4 | Ø Availability rate (%) | 56.0 | 71.4 | 82.7 | 90.7 | 94.4 | 94.4 |
5 | Ø Performance rate (%) | 80.4 | 79.3 | 78.5 | 101.0 | 105.0 | 148.3 |
6 | Ø Quality rate (%) | 85.1 | 83.9 | 83.1 | 93.8 | 93.4 | 92.6 |
7 | ∑ Stocks (# 106 products) | 42.4 | 35.8 | 31.1 | 10.8 | 6.4 | 6.8 |
8 | Ø Capacity level (# thous. products) | 210.1 | 260.3 | 296.0 | 474.6 | 512.4 | 845.5 |
9 | Implementation time (weeks) | 0 | 12 | 20 | 44 | 56 | 74 |
10 | Labor productivity (tons/empl. × day) | 21.1 | 26.2 | 29.7 | 47.5 | 51.3 | 61.5 |
11 | Ø WIP stock (Mio. tons) | 0.7 | 0.8 | 0.9 | 1.3 | 1.3 | 1.6 |
12 | Ø Production lead time (# weeks) | 183.1 | 178.6 | 181.0 | 130.3 | 123.3 | 82.3 |
13 | Cumulated service level (%) | 77.2 | 83.6 | 87.0 | 97.4 | 97.8 | 98.4 |
14 | ∑ Sales (million euros) | 651 | 1263 | 1689 | 3708 | 4092 | 5002 |
15 | ∑ Operational costs (million euros) | 2544 | 2369 | 2215 | 1868 | 1865 | 2227 |
16 | ∑ Profits (million euros) | −1893 | −1106 | −526 | 1866 | 2226 | 2775 |
17 | ∑ Investment (million euros) | 0 | 100 | 150 | 750 | 950 | 1250 |
18 | Return on investment (ROI) (%) | - | 5.3 | 6.1 | 4.3 | 3.8 | 3.3 |
No. | Key Indicator | Simulation Models: Cumulative Improvements with the GUVEI-Model | |||||
---|---|---|---|---|---|---|---|
Initial Situation | Cluster 1 | Cluster 2 | Cluster 3 | Cluster 4 | Cluster 5 | ||
1 | ∑ Demand (# 103 products) | 308,738 | 308,738 | 308,738 | 308,738 | 308,738 | 308,738 |
2 | ∑ Demand real (#103 products) | 124,488 | 155,100 | 176,413 | 277,361 | 296,543 | 312,043 |
3 | ∑ Production (# products) | 105,719 | 130,778 | 148,564 | 237,511 | 256,324 | 307,680 |
4 | Ø Availability rate (%) | 56.0 | 71.4 | 82.7 | 90.7 | 94.4 | 94.4 |
5 | Ø Performance rate (%) | 80.4 | 79.3 | 78.5 | 101.0 | 105.0 | 148.3 |
6 | Ø Quality rate (%) | 85.1 | 83.9 | 83.1 | 93.8 | 93.4 | 92.6 |
7 | ∑ Stocks (# 106 products) | 42.4 | 35.8 | 31.1 | 10.8 | 6.4 | 6.8 |
8 | Ø Capacity level (# thous. products) | 210.1 | 260.3 | 296.0 | 474.6 | 512.4 | 845.5 |
9 | Implementation time (weeks) | 0 | 12 | 20 | 44 | 56 | 74 |
10 | Labor productivity (tons/empl. × day) | 21.1 | 26.2 | 29.7 | 47.5 | 51.3 | 61.5 |
11 | Ø WIP stock (Mio. tons) | 0.7 | 0.8 | 0.9 | 1.3 | 1.3 | 1.6 |
12 | Ø Production lead time (# weeks) | 174.6 | 168.1 | 170.2 | 109.7 | 99.7 | 34.1 |
13 | Cumulated service level (%) | 79.6 | 85.6 | 87.2 | 95.8 | 96.2 | 96.8 |
14 | ∑ Sales (million euros) | 1051 | 1647 | 2069 | 3957 | 4300 | 4802 |
15 | ∑ Operational costs (million euros) | 2544 | 2369 | 2215 | 1868 | 1866 | 2231 |
16 | ∑ Profits (million euros) | −1493 | −722 | −146 | 2089 | 2434 | 2571 |
17 | ∑ Investment (million euros) | 0 | 100 | 150 | 750 | 950 | 1250 |
18 | Return on investment (ROI) (%) | - | 5.2 | 6.0 | 4.1 | 3.6 | 2.9 |
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Gallego-García, S.; Groten, M.; Halstrick, J. Integration of Improvement Strategies and Industry 4.0 Technologies in a Dynamic Evaluation Model for Target-Oriented Optimization. Appl. Sci. 2022, 12, 1530. https://doi.org/10.3390/app12031530
Gallego-García S, Groten M, Halstrick J. Integration of Improvement Strategies and Industry 4.0 Technologies in a Dynamic Evaluation Model for Target-Oriented Optimization. Applied Sciences. 2022; 12(3):1530. https://doi.org/10.3390/app12031530
Chicago/Turabian StyleGallego-García, Sergio, Marcel Groten, and Johannes Halstrick. 2022. "Integration of Improvement Strategies and Industry 4.0 Technologies in a Dynamic Evaluation Model for Target-Oriented Optimization" Applied Sciences 12, no. 3: 1530. https://doi.org/10.3390/app12031530
APA StyleGallego-García, S., Groten, M., & Halstrick, J. (2022). Integration of Improvement Strategies and Industry 4.0 Technologies in a Dynamic Evaluation Model for Target-Oriented Optimization. Applied Sciences, 12(3), 1530. https://doi.org/10.3390/app12031530