Perspectives on the Advancement of Industry 4.0 Technologies Applied to Water Pumping Systems: Trends in Building Pumps
Abstract
:1. Introduction
2. Methodology
2.1. Identification of the Main Technologies of I4.0
2.2. Mapping of Application Possibilities of I4.0 Technologies in Building Pumping Systems
3. Industry 4.0: Applications in Systems and Intelligent Building Pumping
3.1. Mapping and Identification of I4.0 Technologies Applicable in Building Pumping Systems
3.1.1. Smart Sensors
Sensors for Hydraulic Measurements and Water Quality
Sensors for Measuring Mechanical Quantities
Sensors for Measuring Electrical Quantities
3.1.2. Big Data & Data Mining
3.1.3. Cloud & Edge Computing
3.1.4. Machine Learning and Artificial Intelligence
3.1.5. Internet of Things (IoT)
3.1.6. Human Machine Interface (HMI)
3.1.7. Systems Integration & Network Operation
3.1.8. Cyber Security
3.2. Implementation of I4.0 Technologies in Building Pumping Systems
- Pump speed control maintaining a pressure requested by the system.
- Applying VSDs reduces motor wear due to reduced speed, vibration, and torque.
- Soft start of the motor and gradual accelerations to reduce large electrical transients where high-starting currents can cause voltage drops in the electrical network.
- Soft start of the motor and gradual accelerations, reducing the mechanical stress of the shaft, as well as the thermal stresses in the windings and mechanical stresses in the couplings and belts.
- Reduction of sudden changes in water speed (transients), which may result in water hammer, cavitation, and vibration of the pump motor assembly [42].
- A small reduction in speed or flow can significantly reduce energy usage.
- Reduction in the maintenance fee of the motor-pump set.
- A total of 20 to 40% energy consumption, a typical 38% water leakage reduction, 53% reduced breakdowns, and extended motor pump life.
3.2.1. Operation at the Point of the Best Performance
3.2.2. Demand Side Management (DSM) Using VSD
3.3. Research Limitations
- The research was limited to evaluating the possibilities of application of I4.0 technologies in a building water pumping system, but these technologies could be applied in other types of drives such as: compression, elevation, ventilation, etc.
- The research did not delve into the discussion of communication protocols between the various systems.
- We recommend continuing the research with the construction of an IoT architecture for application in a pumping system using I4.0 technologies, enabling the experimental validation of the proposal.
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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# | Title | Journal | Year | Reference |
---|---|---|---|---|
1 | From technological development to social advance: A review of Industry 4.0 through machine learning | Technological Forecasting and Social Change | 2021 | Lee and Lim [19] |
2 | Industry 4.0 as a data-driven paradigm: a systematic literature review on technologies | Journal of Manufacturing Technology Management | 2021 | Klingenberg et al. [20] |
3 | Industry 4.0: A technological-oriented definition based on bibliometric analysis and literature review | Journal of Open Innovation: Technology, Market, and Complexity | 2021 | Rupp et al. [21] |
4 | Evolutions and revolutions in manufacturers’ implementation of industry 4.0: a literature review, a multiple case study, and a conceptual framework | Production Planning & Control | 2021 | Calabrese et al. [22] |
5 | Industry 4.0 triggered by Lean Thinking: insights from a systematic literature review | International Journal of Production Research | 2020 | Bittencourt et al. [23] |
6 | Maintenance transformation through Industry 4.0 technologies: A systematic literature review | Computers in Industry | 2020 | Silvestri et al. [24] |
7 | Industry 4.0 in the port and maritime industry: A literature review | Journal of Industrial Information Integration | 2020 | De la Peña Zarzuelo et al. [25] |
8 | Industry 4.0 and its impact in plastics industry: A literature review | Journal of Industrial Information Integration | 2020 | Echchakoui and Barka [26] |
9 | Information and digital technologies of Industry 4.0 and Lean supply chain management: a systematic literature review | International Journal of Production Research | 2020 | Núñez-Merino et al. [27] |
10 | The sustainable manufacturing concept, evolution and opportunities within Industry 4.0: A literature review | Advances in Mechanical Engineering | 2020 | Sartal et al. [28] |
11 | The role of crowdsourcing in industry 4.0: a systematic literature review | International Journal of Computer Integrated Manufacturing | 2020 | Vianna et al. [29] |
12 | The smart factory as a key construct of industry 4.0: A systematic literature review | International Journal of Production Economics | 2020 | Osterrieder et al. [30] |
13 | Industry 4.0: A bibliometric review of its managerial intellectual structure and potential evolution in the service industries | Technological Forecasting and Social Change | 2019 | Mariani and Borghi [31] |
14 | Industry 4.0 in management studies: A systematic literature review | Sustainability | 2018 | Piccarozzi et al. [32] |
15 | Sustainable Industry 4.0 framework: A systematic literature review identifying the current trends and future perspectives | Process Safety and Environmental Protection | 2018 | Kamble et al. [13] |
16 | Industry 4.0 framework for management and operations: a review | Journal of Ambient Intelligence e Humanized Computing | 2018 | Saucedo-Martínez et al. [33] |
Item | Technologies Linked to I4.0 | Application in Building Water Pumping Systems | References Analyzed |
---|---|---|---|
1 | Smart Sensors | ● | [17,34,35,36,37,38] |
2 | Big Data & Data Mining | ● | [17,39] |
3 | Cloud & Edge Computing | ● | [39,40] |
4 | Machine Learning & Artificial Intelligence (AI) | ● | [39,40,41,42,43,44,45] |
5 | Internet of Things (IoT) | ● | [35,40] |
6 | Human Machine Interface (HMI) | ◐ | [46] |
7 | Systems Integration & Network Operation | ◐ | [47,48] |
8 | Cyber Security | ◐ | [49] |
9 | Autonomous Robotics | ◯ | - |
10 | Automatic identification and digital product memory | ◯ | - |
11 | 3D printing | ◯ | - |
12 | Augmented Reality or Virtual Reality | ◯ | - |
13 | Simulations | ◐ | [6,50] |
14 | Additive and Intelligent Manufacturing | ◯ | - |
15 | Machine-to-Machine (M2M) Communication | ◯ | - |
16 | Knowledge-Based Systems (KBS) & Semantic Web | ◐ | [51] |
17 | Automated guided vehicles (AGV) | ◯ | - |
18 | Cyberphysical Systems | ◯ | - |
Item | Method | Paper | Journal | Year | Reference |
---|---|---|---|---|---|
1 | Multi-objective optimization | An Updated Survey of GA-Based Multiobjective Optimization Techniques | ACM Computing Surveys | 2020 | Coello [60] |
2 | Genetic Algorithm | Decision support for sustainable option selection in integrated urban water management | Environmental Modelling & Software | 2008 | Klingenberg et al. [20] |
3 | Mixed-integer nonlinear programming | Optimization and validation of pumping system design and operation for water supply in high-rise buildings | Optimization and Engineering | 2021 | Müller et al. [6] |
4 | Multi-criteria analysis | An Analysis on Optimization of Living and Fire Water Supply Systems of Small High-Rise Residential Blocks | Earth and Environmental Science | 2017 | Yuan [51] |
5 | Multi-objective mixed integer linear programming | Integrating energy and water optimization in buildings using multi-objective mixed-integer linear programming | Sustainable Cities and Society | 2020 | Emami Javanmard et al. [58] |
6 | Mixed-integer nonlinear programming | Optimization of Pumping Systems for Buildings: Experimental Validationof Different Degrees of Model Detail on a Modular Test Rig | Operations Research Proceedings 2019 | 2019 | Müller et al. [59] |
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de Souza, D.F.; da Guarda, E.L.A.; da Silva, W.T.P.; Sauer, I.L.; Tatizawa, H. Perspectives on the Advancement of Industry 4.0 Technologies Applied to Water Pumping Systems: Trends in Building Pumps. Energies 2022, 15, 3319. https://doi.org/10.3390/en15093319
de Souza DF, da Guarda ELA, da Silva WTP, Sauer IL, Tatizawa H. Perspectives on the Advancement of Industry 4.0 Technologies Applied to Water Pumping Systems: Trends in Building Pumps. Energies. 2022; 15(9):3319. https://doi.org/10.3390/en15093319
Chicago/Turabian Stylede Souza, Danilo Ferreira, Emeli Lalesca Aparecida da Guarda, Welitom Ttatom Pereira da Silva, Ildo Luis Sauer, and Hédio Tatizawa. 2022. "Perspectives on the Advancement of Industry 4.0 Technologies Applied to Water Pumping Systems: Trends in Building Pumps" Energies 15, no. 9: 3319. https://doi.org/10.3390/en15093319
APA Stylede Souza, D. F., da Guarda, E. L. A., da Silva, W. T. P., Sauer, I. L., & Tatizawa, H. (2022). Perspectives on the Advancement of Industry 4.0 Technologies Applied to Water Pumping Systems: Trends in Building Pumps. Energies, 15(9), 3319. https://doi.org/10.3390/en15093319