A Strategic Roadmap for the Manufacturing Industry to Implement Industry 4.0
Abstract
:1. Introduction
2. Applications of Industry 4.0 Enabling Technologies
2.1. Additive Manufacturing
2.2. Augmented Reality
2.3. Simulation
2.4. Autonomous Robots
2.5. Industrial Internet of Things
2.6. Big Data Analytics
2.7. Cloud Computing
2.8. Cyber Security
2.9. Horizontal and Vertical Integration
3. Industry 4.0 Roadmap Conceptualization
4. Phases of the Strategic Industry 4.0 Roadmap
3.1. First Phase: DEFINE
3.2. Second Phase: MEASURE
3.3. Third Phase: EVALUATE
3.4. Fourth Phase: OPTIMIZE
3.5. Fifth Phase: DEVELOP
3.6. Sixth Phase: VALIDATE
3.7. Seventh Phase: IMPLEMENT
5. Conclusions
Funding
Conflicts of Interest
References
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Industry 4.0 Enabling Technologies | Opportunities | Development of Strategies | |
---|---|---|---|
1 | Additive Manufacturing | Design flexibility, reduced set-up and tooling time, lightweight and customized products, less waste, effective for mass production of both large-scale and small-scale structures |
|
2 | Augmented Reality | Faster and smarter product development and assembly, enhanced operator performance, expert support provision, effective machine maintenance and quality assurance | |
3 | Simulation | Optimize product/process parameters, reduced investment risk, waste minimization, allows faster prototyping, virtual analysis of complex scenarios | |
4 | Autonomous Robots | Increase efficiency and productivity, reduce error and re-work, operator safety, exponential learning by collecting and analyzing machine data | |
5 | Industrial Internet of Things | Interconnected systems, production visibility, better inventory management, safe working environment, reduce machine downtime, increase quality | |
6 | Big Data Analytics | Asset/supply chain optimization, product design/quality, better future forecasting and identification of trends, higher customer satisfaction | |
7 | Cloud Computing | Low capital costs, flexibility of operations, disaster recovery, automatic software updates, increased collaboration, freedom of operation, data security, opportunities for upskilling workforce | |
8 | Cyber Security | Protect data and reduce risk of hacking, inspires customer confidence, increase productivity, protect against spyware, worms, and viruses | |
9 | Horizontal and Vertical Integration | Optimize supply chain, increase differentiation from competition, high productivity, superior product quality, less waste, reduce set-up costs, errors, and machine downtime |
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Butt, J. A Strategic Roadmap for the Manufacturing Industry to Implement Industry 4.0. Designs 2020, 4, 11. https://doi.org/10.3390/designs4020011
Butt J. A Strategic Roadmap for the Manufacturing Industry to Implement Industry 4.0. Designs. 2020; 4(2):11. https://doi.org/10.3390/designs4020011
Chicago/Turabian StyleButt, Javaid. 2020. "A Strategic Roadmap for the Manufacturing Industry to Implement Industry 4.0" Designs 4, no. 2: 11. https://doi.org/10.3390/designs4020011