A Systematic Literature Review of Successful Implementation of Industry 4.0 Technologies in Companies: Synthesis of the IPSI Framework
Abstract
:Featured Application
Abstract
1. Introduction
2. Context and Problems
- Big data and analytics [18];
- Autonomous machines [19];
- Advanced simulation towards digital twins [20];
- Industrial IoT [21];
- Cloud manufacturing [22];
- Additive manufacturing [23];
- Augmented reality [24].
3. Literature Review
3.1. Structure of the Review
- 1.
- Definition of the review scope: this step is used to define an appropriate perimeter of the scope and orientation of the review;
- 2.
- Conceptualization of the topic: this step intends to define the keywords that will be used in the next step, searching for articles;
- 3.
- Literature search: this step includes the choice of the source of information and the design of the queries in accordance with the previously defined topics;
- 4.
- Literature analysis and synthesis: this step shows the process of inclusion/exclusion of the results of the requests, and a categorization of the reasons that led to this result;
- 5.
- Research agenda: the last step consists in an analysis of the content of the included articles, showing the evidence retrieved from the review.
3.1.1. First Step: Definition of Review Scope
3.1.2. Second Step: Conceptualization of Topic
3.1.3. Third Step: Literature Search
3.1.4. Fourth Step: Literature Analysis and Synthesis
- Wrong publication type: special issue proposals, preface of proceedings, etc. A total of 24 records were excluded based on this criterion;
- Background articles: records where Industry 4.0 terminology is only used as the background or for future research directions. A total of 749 records were excluded based on this criterion;
- Early TRL technologies: records introducing innovative technologies, only available at low TRL levels and/or in a laboratory proof-of-concept. A total of 55 records were excluded based on this criterion;
- Implementation examples: records stating the application of one specific technology in industry, but not general. A total of 36 records were excluded based on this criterion;
- Implementation architectures: records exhibiting a framework of implementation of a specific technology in industry, without enough generalization. A total of 49 records were excluded based on this criterion.
3.1.5. Fifth Step: Research Agenda
3.2. Detailed Analysis
- 1.
- Definition of company vision and strategy for the implementation of Industry 4.0;
- 2.
- Identification and description of company processes;
- 3.
- Implementation of fully-fledged information system (e.g., ERP/ERP II) and manufacturing data;
- 4.
- Digitalization of collected data, creation of digital twins and modification or purchase of machines;
- 5.
- Implementation of horizontal integration;
- 6.
- Data analysis and vertical integration;
- 7.
- Self-managed production and logistics.
- 1.
- Identify available manufacturing data;
- 2.
- Readiness assessment of data-hierarchy steps;
- 3.
- Smart manufacturing tailored vision development;
- 4.
- Tools and practices identification.
- 1.
- An iterative and step-by-step transformation of the manufacturing systems;
- 2.
- Decomposition of the framework into four phases;
- 3.
- Integration of the management layer at different stages of the framework;
- 4.
- Mandatory definition of levers of enhancement;
- 5.
- Importance of a specific phase of simulation-based evaluation.
4. Synthesis of Literature: Introduction of the IPSI Framework
4.1. Stage I: Identification
4.2. Stage P: Preparation
4.3. Stage S: Simulation
4.4. Stage I: Implementation
5. Applicability on Various Technologies
5.1. Evaluation Methodology
5.2. Reconfigurable Manufacturing System for Car Manufacturing
5.3. Additive Manufacturing for Optronics Parts
5.4. Holonic Manufacturing System for Distribution Systems
6. Conclusions
Funding
Conflicts of Interest
References
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Reference | Field of Application | Range of Application | Methodology Description |
---|---|---|---|
[30,31] | IIoT | Whole project lifecycle | None |
[32] | Industrial cyber-security | Technical study | None |
[33] | All industrial fields | Whole project lifecycle | Detailed for managers |
[34] | Data management in SMEs | Whole project lifecycle | Basic for practitioners |
[35] | Innovative ICT technologies in industry | Technical study | Basic for managers |
[36,37] | Innovative ICT technologies in industry | Technical study | Basic for practitioners |
[38,39] | All industrial fields | Technical study | Basic for managers |
[40] | Evolution of SMEs | Whole project lifecycle | Detailed for managers |
[41] | Lean based organizations | Whole project lifecycle | Application specific |
This Study | All industrial fields | Whole project lifecycle | Detailed for practitioners |
IPSI Steps | Manufacturing Systems Design [50,51] | Product Design [52] | Manufacturing Control [53,54] |
---|---|---|---|
I1 | Variability of the demand | Complexity reduction | Variability of the demand |
I2 | RMS | Additive manufacturing | HMS |
I3 | One assembly line | One single part | One robotic pick-and-place station |
P4 | 5 KPIs | 4 KPIs | 2 KPIs |
P5 | Dedicated manufacturing system | Classical design and machining | Expert-based model evaluation by simulation |
P6 | Zero reconfiguration time | N/A | Zero operation times and infinite buffer sizes |
S7 | Exact methods for optimization | DBAM methodology | Heuristics definition |
S8 | Evaluation of optimization results by discrete-event simulation | Low cost materials | Discrete-event simulation-based evaluation |
I9 | Investment strategy definition | Use of actual machine | Emulation-based software development |
I10 | Integration of reconfigurability in future line design | Design framework integration in design office | Extension of the control to interconnected services |
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Cardin, O. A Systematic Literature Review of Successful Implementation of Industry 4.0 Technologies in Companies: Synthesis of the IPSI Framework. Appl. Sci. 2021, 11, 8917. https://doi.org/10.3390/app11198917
Cardin O. A Systematic Literature Review of Successful Implementation of Industry 4.0 Technologies in Companies: Synthesis of the IPSI Framework. Applied Sciences. 2021; 11(19):8917. https://doi.org/10.3390/app11198917
Chicago/Turabian StyleCardin, Olivier. 2021. "A Systematic Literature Review of Successful Implementation of Industry 4.0 Technologies in Companies: Synthesis of the IPSI Framework" Applied Sciences 11, no. 19: 8917. https://doi.org/10.3390/app11198917
APA StyleCardin, O. (2021). A Systematic Literature Review of Successful Implementation of Industry 4.0 Technologies in Companies: Synthesis of the IPSI Framework. Applied Sciences, 11(19), 8917. https://doi.org/10.3390/app11198917