A Metamodel for Evaluating Enterprise Readiness in the Context of Industry 4.0
Abstract
:1. Introduction—Industry 4.0 Trends Are Part of a Society-Wide Digitalization
2. Methodology and Data Collection
- A view of the present with future development termed “5.0”. The inclusion of the 0th level in the metamodel corresponds with this;
- A view of the “macro,” i.e., state, level, as well as of the “micro,” i.e., enterprise level. Levels 1 and 2 correspond to this, or more precisely, these two along with levels 3 and 4 (for the “macro” level) and 4 through 6 (for the “micro” level) as well.
3. Theoretical Background—An Overview of the Readiness Indexes and Maturity Models for Evaluating Enterprises’ Readiness for Industry 4.0
3.1. Enterprises’ Industry 4.0 Readiness Based on Readiness Indexes
- OECD scoreboard [13].
- The Industry 4.0 Readiness Index from Roland Berger [14].
3.2. Enterprises’ Industry 4.0 Readiness Based on Maturity Models
- RAMI 4.0 (The Reference Architectural Model Industry 4.0) from BITCON VDI/VDE, ZVEI (Germany) [15];
- Industry 4.0 Component Model–derived from RAMI 4.0 and oriented on information technology (Germany) [16];
- IMPULS (Industry 4.0 Readiness) from VDMA and RWTH (Germany) [17];
- SIMMI 4.0 (System Integration Maturity Model Industry 4.0) from TU Dresden and TU Heilbronn (Germany) [18];
- M2DDM (Maturity Model for Data Driven Manufacturing) from University Stuttgart (Germany) [19];
- Digitalization Degree of Manufacturing Industry from Friedrich-Alexander University Erlangen (Germany) [20];
- Industry 4.0 Maturity Model from the Austrian Fraunhofer and the Austrian Vienna University of Technology (Austria) [21];
- Reifegradmodell Industrie 4.0 developed at the Fachhochschule Oberösterreich in collaboration with Mechatronik-Clusters (Austria) [22];
- Roadmap Industry 4.0 from University Caphenberg (Austria) [23];
- Digital Maturity Model developed by the Swiss University of St. Gallen, in collaboration with Crosswalk (Switzerland) [24];
- DREAMY (The Digital Readiness Assessment Maturity Model) from Confindustria, Assoconsult and the University of Politecnico di Milano (Italy) [25];
- Industry 4.0 Readiness Evaluation for Manufacturing Enterprises from Academy of Science Hungary (Hungary) [26];
- Industrie 4.0 MM (Assessment model for Industry 4.0) from University Ankara (Turkey) [27];
- An Industry 4 readiness assessment tool developed at the University of Warwic (The United Kingdom) [28];
- Stage maturity model in SME towards Industry 4.0 [29];
- Industry 4.0/ Digital Operation Self-Assessment from Price Waterhouse Coopers [30];
- APM Maturity Model (Asset Performance Management Maturity Model from Capgemini) [31];
- The Connected Enterprise Maturity Model from Rockwell Automation [32];
- Industrie 4.0 Maturity Model from Acatech Studie [33];
- Firma4.cz from the Ministry of Industry and Trade of the Czech Republic [34];
- Pathfinder 4.0 [35];
- The Singapore smart industry readiness index developed by the Singapore Economic Development Board, Singapore [36].
4. An Analysis of the Available Models and a Proposal for a Metamodel for Enterprises’ Industry 4.0 Readiness
4.1. The Main Evaluating Dimensions and Scales Found in the Available Models
- The scope of the evaluation—this is usually an enterprise-wide scope, but it can also be a focus on a particular area, such as enterprise technologies, or perhaps on only enterprise IT and its information systems;
- Dimensions of the evaluation—usually, these dimensions are related to the evaluation’s scope (see above), but they are also related to the depth of the evaluation, i.e., its amount of detail. Where a high-detail evaluation focused exclusively on IT is involved, a large number of component attributes can then be taken into account;
- Evaluation scale—this sets the scope, degrees, and approach to enterprise maturity in the given dimension, or to its evaluation of the enterprise overall.
- Strategy;
- Leadership;
- Corporate culture;
- Human resources;
- Technology.
- Product digitalization;
- Process digitalization;
- Digital management.
- in the area of evaluation, no sector-wide solutions have been fully elaborated to date (e.g. for automotive, food, or chemistry), and there are no solutions for various types of enterprises or that take into account the specifics of small and medium enterprises (SME);
- attributes of the IT dimension that are key for digitalization are not elaborated in the individual models;
- cross-sectional dimensions such as, e.g., the issue of security, which can also represent new risks in the implementation of Industry 4.0, are not elaborated in the models;
- many dimensions are not disjunct, but instead internally mutually repeat a view of a higher enterprise level, in the spirit of a fractal approach [37];
- it would be appropriate to fill in orders and degrees within the evaluation scales, e.g., based on the work of professor Valenta, who works with null and even negative dimensions [38];
- last but not least, certain states in principle cannot be maturity states, but only binary states. Legislative recommendations concerning GDPR rules and the upholding of norms for Industry 4.0 are examples here.
4.2. Proposal for a Metamodel for Evaluating Enterprise Readiness Within Industry 4.0
- Level 1—initial level a current view of society (Society 4.0);
- Level 2—an area of society (Industry 4.0 is one of them, Farming 4.0, Health 4.0 et al. are the other);
- Level 3—a sector within an individual area of society (for Industry 4.0, these can be, e.g., enterprises within the automotive, chemistry, electronics, or food industries; special attention should be paid to small and medium enterprises);
- Level 4—an enterprise as a whole;
- Level 5—an area within an enterprise, which based on the analysis of models, could mostly be:
- technologies,
- human resources,
- strategies,
- processes,
- data,
- security, etc.;
- Level 6—dimensions within the enterprise area. For the above-mentioned area of technology:
- information technologies,
- manufacturing technologies (additive manufacturing, 3D prints, predictive maintenance, and robotization of assembly and welding),
- handling and warehousing technologies (automated vehicles, drones, and handling robots);
- Level 7—a sub-dimension within an individual dimension of an area of an enterprise, e.g., a detailed elaboration of information technologies can provide maturity-model views for:
- Sub-dimensions of meaning: e.g., application software to support planning (such as ERP, MES, or APS), decision-making support (BI, CI, AI), and support for sharing information, product, and production-system digitalization (CAD, PLM);
- Cross-sectional sub-dimensions: e.g. security, quality, connectivity, and integrability.
- meaning-oriented sub-dimensions:
- ○
- ERP applications,
- ○
- production planning,
- ○
- workplace ergonomics;
- and cross-sectional sub-dimensions:
- ○
- security,
- ○
- maintenance,
- ○
- connectivity,
- ○
- data and processes.
4.3. The Growing Importance of Security-Type Cross-Sectional Dimensions
- The security of the integrity of transferred and processed data influences the trustworthiness and completeness of the data provided. The provider strives to ensure full data integrity such that the integrity of the data during transfer cannot be disrupted in any way;
- Jamming. There are two different aspects to this phenomenon. One of them is that of the jamming of an individual sensor or device. This fact is often very closely connected with the frequency band for data transfer, which can naturally disrupt the device. What is very important, however, is that these devices are not be easy to jam. The second, significantly more important, defense is against the jamming of the entire communication network. This kind of incident can have fairly large effects on an enterprise as a whole and on its outputs.
5. Conclusions and Final Recommendations
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Index Abbreviation | Index Name | Evaluating Authority | Number of Individual Indicators | Number of Countries Evaluated |
---|---|---|---|---|
NRI | Networked Readiness Index | WEF World Economic Forum | 51 | 139 |
GII | Global Innovation Index | Cornell University, INSEAD, WIPO | 81 | 127 |
OECD score-board | Science, industry and technology Scoreboard | OECD | 200 | 31 |
RBI | RB Industry 4.0 Readiness Index | Rolland Berger | The size of the industry’s share in the GDP forms the evaluation’s second axis alongside this RB Index itself | 24 |
Number of Metamodel Level | 1 | 2 | 3 | 4 | 5 | 6 | 7 |
Name of Metamodel Level | Society | Area of society | Branch of area of society | Enterprise | Area of enterprise | Dimension of enterprise area | Subdimension of enterprise area |
Main trends | Society 4.0 | Industry 4.0; Farming 4.0; Health 4.0; Alma Mater 4.0; and other | Automotive; Electronic; Food industry; etc. | Industry 4.0 | Technology; Strategies; Corporate culture; Human resources | IT (Information technology); Manufacturing technologies (3D); Assembly and handling technologies (robots) | ERP (Enterprise information systems) |
Main readiness indexes and maturity models within the given level of the model | NRI index; GCI index; Roland Industry 4.0 Readiness index | Maturity models for areas such as Industry 4.0 or Farming 4.0 etc. | NA * | RAMI 4.0; SIMMI 4.0; IMPULS; DDMI; M2DDM; and other analyzed models | Degrees from Basic Digitalization to Optimized Full Digitalization or from Outsider to Top Performer | NA ** | NA *** |
Note | Other trends are connected with the term “smart”: smart city, smart grid, smart home, and smart parking | No suitable models focused solely on a particular sector or branch of enterprises have been published so far | >20 Maturity evaluation models—see Section 4 | IT technology can also be divided up into: horizontal integration; vertical integration; digital twins; artificial intelligence |
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Basl, J.; Doucek, P. A Metamodel for Evaluating Enterprise Readiness in the Context of Industry 4.0. Information 2019, 10, 89. https://doi.org/10.3390/info10030089
Basl J, Doucek P. A Metamodel for Evaluating Enterprise Readiness in the Context of Industry 4.0. Information. 2019; 10(3):89. https://doi.org/10.3390/info10030089
Chicago/Turabian StyleBasl, Josef, and Petr Doucek. 2019. "A Metamodel for Evaluating Enterprise Readiness in the Context of Industry 4.0" Information 10, no. 3: 89. https://doi.org/10.3390/info10030089
APA StyleBasl, J., & Doucek, P. (2019). A Metamodel for Evaluating Enterprise Readiness in the Context of Industry 4.0. Information, 10(3), 89. https://doi.org/10.3390/info10030089