Current Scenario of Maintenance 4.0 and Opportunities for Sustainability-Driven Maintenance

Authors

  • S. H. Sarje JSPM Narhe Technical Campus, Pune
  • Manoj A. Kumbhalkar JSPM Narhe Technical Campus, Pune
  • Dinesh N. Washimkar Vishwakarma Institute of Information Technology, Pune
  • Rajesh H. Kulkarni MVSR College of Engineering, Hyderabad
  • Maheswar D. Jaybhaye College of Engineering Pune
  • Wadhah Hussein Al Doori Tikrit University

DOI:

https://doi.org/10.26877/asset.v7i1.1028

Keywords:

Industry 4.0, Maintenance 4.0, Sensor, Condition monitoring, Overall equipment effectiveness, Triple bottom line, Sustainability driven maintenance

Abstract

Industry 4.0, a shift from Industry 3.0, aims to enhance productivity and efficiency in operations and supply chain management. Maintenance plays a crucial role in this process, and IoT-enabled (Ind. 4.0) condition monitoring is a key component of this technology. However, challenges persist in implementing effective IoT-enabled condition monitoring solutions. The triple bottom line perspective (Economical, Ecological, and Social) is also crucial for realizing Ind. 4.0. This paper investigates the state of IoT-enabled industrial condition monitoring (Maintenance 4.0) and sustainability-driven maintenance (Maintenance 5.0), focusing on the challenges associated with implementing these concepts. The IoT-enabled technologies are divided into three layers: the application layer, the networking layer, and the physical layer. The physical layer, the lowest layer, faces numerous challenges in realizing maintenance 4.0 effectively. A new system configuration for vibration-based condition monitoring in an Ind. 4.0 environment is proposed to address these shortcomings. Wi-Fi technology is found to be the best option for high-throughput communication needs in the current scenario. The literature review reveals that while the economic aspect of maintenance 5.0 has been thoroughly examined, the environmental and social aspects have not been thoroughly assessed. Future research should focus on developing a new sustainable maintenance model that incorporates IoT-enabled technologies and investigates sustainable performance indicators to understand sustainability aspects quantitatively.

Author Biographies

S. H. Sarje, JSPM Narhe Technical Campus, Pune

Department of Mechanical Engineering

Dinesh N. Washimkar, Vishwakarma Institute of Information Technology, Pune

Department of Mechanical Engineering

Rajesh H. Kulkarni, MVSR College of Engineering, Hyderabad

Department of Computer Engineering

Maheswar D. Jaybhaye, College of Engineering Pune

Department of Manufacturing Engineering and Industrial Management

References

H. Lasi, P. Fettke, H. G. Kemper, T. Feld, and M. Hoffmann, “Industry 4.0,” Bus. Inf. Syst. Eng., vol. 64, pp. 239–242, 2014.

I. Zolotova, P. Papcun, E. Kajati, M. Miskuf, and J. Mocnej, “Smart and cognitive solutions for operator 4.0: Laboratory H-CPPS case studies,” Comput. Ind. Eng., 2018.

L. Silvestri, A. Forcina, V. Introna, A. Santolamazza, and V. Cessarotti, “Maintenance transformation through Industry 4.0 technologies: A systematic literature review,” Comput. Ind., vol. 123, pp. 10–33, 2020.

I. Porcelli, M. Rapaccini, D. B. Espindola, and C. E. Pereira, “Technical and organizational issues about the introduction of augmented reality in maintenance and technical assistance services,” IFAC Proc., vol. 46, no. 7, pp. 257–262, 2013.

G. Bocewicz, R. Wojcik, Z. Banaszak, and P. Pawlewski, “Multimodal processes rescheduling: Cyclic steady states space approach,” Math. Probl. Eng., vol. 24, pp. 407096–407096, 2013.

M. Relich, “A computational intelligence approach to predicting new product success,” in Proc. 11th Int. Conf. Strategic Manage. Support by Inf. Syst., 2015, pp. 142–150.

M. Compare, P. Baraldi, and E. Zio, “Challenges to IoT-enabled predictive maintenance for industry 4.0,” IEEE Internet Things J., vol. 7, no. 5, pp. 4585–4597, 2020.

E. Negri et al., “A digital twin-based scheduling framework including equipment health index and genetic algorithms,” IFAC Pap. Online, vol. 52, no. 10, pp. 43–48, 2019.

D. Mourtzis, V. Siatras, and J. Angelopoulos, “Real-time remote maintenance support based on augmented reality (AR),” Appl. Sci., vol. 10, no. 5, pp. 1855–1855, 2020.

T. Zonta et al., “Predictive maintenance in the industry 4.0: A systematic literature review,” Comput. Ind. Eng., vol. 150, no. 106889, 2020.

B. Sun et al., “Failure-based sealing reliability analysis considering dynamic interval and hybrid uncertainties,” Eksploat. Niezawodn. – Maint. Rel., vol. 23, no. 2, pp. 278–284, 2021.

S. Mi et al., “Prediction maintenance integrated decision-making approach supported by digital twin-driven cooperative awareness and interconnection framework,” J. Manuf. Syst., vol. 58, pp. 329–345, 2021.

I. S. Khan et al., “Industry 4.0 and sustainable development: A systematic mapping of triple bottom line, circular economy and sustainable business models perspectives,” J. Clean. Prod., vol. 297, p. 126655, 2021.

A. Bousdekis, B. Magoutas, D. Apostolous, and G. Mentzas, “A proactive decision making framework for condition-based maintenance,” Ind. Manag. Data Syst., vol. 115, no. 7, pp. 1225–1250, 2015.

L. Fumagalli and M. Macchi, “Integrating maintenance within the production process through a flexible e-maintenance platform,” IFAC Pap. Online, vol. 48, no. 3, pp. 1457–1462, 2015.

S. H. Sarje, G. S. Lathkar, and S. K. Basu, “CBM policy for an online continuously monitored deteriorating system with random change of mode,” J. Inst. Eng. India: C., vol. 93, pp. 27–32, 2012.

A. Bousdekis and G. Mentzas, “Condition-based predictive maintenance in the frame of Industry 4.0,” IFIP Adv. Inf. Commun. Technol., pp. 399–406, 2017.

M. Jasiulewicz-Kaczmarek et al., “Assessing the barriers to Industry 4.0 implementation from a maintenance management perspective: Pilot study results,” IFAC Pap. Online, vol. 55, no. 2, pp. 223–228, 2022.

J. Bokrantz et al., “Smart maintenance: An empirically grounded conceptualization,” Int. J. Prod. Econ., vol. 223, no. 107534, 2020.

V. Klathae and P. Ruangchoengchum, “The predictable maintenance 4.0 by applying digital technology: A case study of heavy construction machinery,” Rev. Integr. Bus. Econ. Res., vol. 8, pp. 34–46, 2019.

M. Jasiulewicz-Kaczmarek et al., “Maintenance 4.0 technologies: New opportunities for sustainability-driven maintenance,” Manag. Prod. Eng. Rev., vol. 11, no. 2, pp. 74–87, 2020.

K. Matyas et al., “A procedural approach for realizing prescriptive maintenance planning in manufacturing industries,” CIRP Ann. Manuf. Technol., vol. 66, pp. 461–464, 2017.

L. Fumagalli et al., “A smart maintenance tool for a safe electric arc furnace,” IFAC Pap. Online, vol. 49, no. 3, pp. 19–24, 2016.

Y. Kihel et al., “Contribution of Maintenance 4.0 in sustainable development with an industrial case study,” Sustainability, vol. 14, no. 11, p. 09022, 2022.

M. Kans and D. Galar, “The impact of maintenance 4.0 and big-data analytics within strategic asset management,” MPMM Conf. Proc., pp. 96–103, 2017.

O. Glazer, “Is there a shortcut to industrial analytics/maintenance 4.0 implementation?” [Online]. Available: http://www.presenso.com/blog/maintenance4deploymentshortcuts. Accessed: Oct. 18, 2024.

M. Haarman, “Predictive maintenance 4.0,” Mainnovation, 2017. [Online]. Available: https://www.mainnovation.com/nl/events/vdm-xl-value-driven-maintenance-asset-management/.

A. Kinz et al., “Lean smart maintenance: Efficient and effective asset management for smart factories,” MOTSP Int. Sci. Conf., 2016.

U. Kumar and D. Galar, “Maintenance in the era of Industry 4.0: Issues and challenges,” in Quality, IT, and Business Operations: Modeling and Optimization, pp. 231–250, 2018.

B. Einabadi, A. Baboli, and M. Ebrahimi, "Dynamic predictive maintenance in Industry 4.0 based on real-time information: Case study in automotive industries," IFAC-PapersOnline, vol. 52, 2019, pp. 1069-1074.

A. Rahman, E. Pasaribu, Y. Nugraha, F. Khair, K. N. Soebandrija, and D. I. Wijaya, "Industry 4.0 and Society 5.0 through Lens of Condition Based Maintenance CBM and Machine Learning of Artificial Intelligence MLAI," IOP Conf. Ser.: Mater. Sci. Eng., vol. 852, no. 012022, 2020, pp. 1-7.

S. A. Ansari and R. Baig, "A PC-based vibration analyzer for condition monitoring of process machinery," IEEE Trans. Instrum. Meas., vol. 47, no. 2, pp. 378-383, Apr. 1998.

Z. Iqbal, K. Kim, and H. N. Lee, "A Cooperative Wireless Sensor Network for Indoor Industrial Monitoring," IEEE Trans. Ind. Inform., vol. 13, no. 2, pp. 482-491, Apr. 2017.

K. Shahzad and M. O' Nils, "Condition Monitoring in Industry 4.0 – Design Challenges and Possibilities: A Case Study," in IEEE Xplore, Aug. 2018, pp. 101-106.

V. R. Singh, "Smart sensors: Physics, technology and applications," IJPAP, vol. 43, pp. 7-16, Jan. 2005.

T. Brand, "Demands on sensors for future servicing: smart sensors for condition monitoring," Technical Article, Analog Devices, 2018, pp. 1-4.

J. Yan, Y. Meng, L. Lu, and L. Li, "Industrial Big data in an industry 4.0 Environment: challenges, schemes and applications for predictive maintenance," IEEE Access, vol. 5, pp. 23484-23491, Oct. 2017.

J. Lin, W. Yu, N. Zhang, Y. H. Zhang, and W. Zhao, "A Survey on Internet of Things: Architecture, Enabling Technologies, Security and Privacy, and Applications," IEEE Internet Things J., vol. 4, no. 5, pp. 1125-1142, Oct. 2017.

M. Chiang and T. Zhang, "Fog and IoT: An Overview of Research Opportunities," IEEE Internet Things J., vol. 3, no. 6, pp. 854-864, Dec. 2016.

M. S. Hossain and G. Muhammad, "Cloud-assisted Industrial Internet of Things IIoT – Enabled framework for health monitoring," Comput. Netw., vol. 101, pp. 192-202, Jun. 2016.

S. Mumtaz, A. Alsohaily, Z. Pang, A. Rayes, K. F. Tsang, and J. Rodriguez, "Massive Internet of Things for Industrial Applications: Addressing Wireless IIoT Connectivity Challenges and Ecosystem Fragmentation," IEEE Ind. Electron., vol. 11, no. 1, pp. 28-33, Mar. 2017.

A. Kourepenis, J. Borenstein, J. Connelly, R. Elliott, P. Ward, and M. Weinberg, "Performance of MEMS inertial sensors," in IEEE/ION Position Locat. Navig. Symp., Apr. 1998, pp. 20-23.

A. Albarbar, A. Badri, J. K. Sinha, and A. Starr, "Performance evaluation of MEMS accelerometers," Measurement, vol. 42, no. 5, pp. 790-795, Jun. 2009.

K. Shahzad and B. Oelmann, "A comparative study of in-sensor processing vs. raw data transmission using ZigBee, BLE and Wi-Fi for data intensive monitoring applications," in 11th ISWCS, Barcelona, 2014, pp. 519-524.

K. Shahzad, P. Cheng, and B. Oelmann, "Architecture Exploration for a High-Performance and Low-Power Wireless Vibration Analyzer," IEEE Sens. J., vol. 13, no. 2, pp. 670-682, Feb. 2013.

J. Tan and S. G. M. Koo, "A Survey of Technologies in Internet of Things," in IEEE Int. Conf. Distrib. Comput. Sens. Syst., Marina Del Rey, CA, 2014, pp. 269-274.

P. H. Sahare, M. A. Kumbhalkar, D. B. Nandgaye, S. V. Mate, and H. A. Nasare, "Concept of Artificial Intelligence in Various Application of Robotics," in Int. Proc. Econ. Develop. Res., vol. 6, ISSN 2010-4626, 2011, pp. 115-119.

D. V. Bhise, S. A. Choudhari, M. A. Kumbhalkar, and M. M. Sardeshmukh, "Modelling the Critical Success Factors for Advanced Manufacturing Technology Implementation in Small and Medium Sized Enterprises," 3C Empresa, vol. 11, no. 2, pp. 263-275, Aug.-Dec. 2022.

D. V. Bhise, S. A. Choudhari, M. Kumbhalkar, and M. M. Sardeshmukh, "Assimilation of advanced manufacturing technologies in small and medium sized enterprises: an empirical analysis," Multidisciplinary Sci. J., vol. 5, no. 4, 2023.

G. D. Bona, V. Cesarotti, G. Arcese, and T. Gallo, "Implementation of Industry 4.0 technology: New opportunities and challenges for maintenance strategy," Procedia Comput. Sci., vol. 180, pp. 424-429, 2021.

T. J. Ajith, G. Kumar, A. Q. Khan, and M. Asjad, "Maintenance 4.0: implementation challenges and its analysis," Int. J. Qual. Reliab. Manage., vol. 40, no. 7, 2023.

C. Franciosi, et al., "Maintenance for Sustainability in the Industry 4.0 context: a Scoping Literature Review," IFAC-PapersOnline, vol. 51-11, pp. 903-908, 2018.

N. K. Kasava, et al., "Sustainable Domain Value Stream Mapping SdVSM framework application in aircraft maintenance: a case study," Procedia CIRP, vol. 26, pp. 418-423, 2015.

C. Franciosi, et al., "Measuring maintenance impacts on sustainability of manufacturing industries: from a systematic literature review to a framework proposal," J. Clean. Prod., vol. 260, p. 121065, 2020.

B. Iung and E. Levrat, "Advanced maintenance services for promoting sustainability," Procedia CIRP, vol. 22, pp. 15-22, 2014.

G. Widotomo, D. Nurkertamanda, and H. Suliantoro, "Improving Analysis of Risk-Based Maintenance Management Strategies through reliability centered maintenance. Case study: Coal plant. Central Kalimantan. Indonesia," Adv. Sustain. Sci. Eng. Technol. vol. 6, no. 1, Jan. 2024.

M. Jasiulewicz-Kaczmarek and P. Zywica, "The concept of maintenance sustainability performance assessment by integrating balanced scorecard with non-additive fuzzy integral," Maint. Reliab., vol. 20, no. 4, pp. 650-661, 2018.

G. Buchi, M. Cugno, and R. Castagnoli, "Smart factory performance and Industry 4.0," Technol. Forecast. Soc. Change, vol. 150, p. 119790, 2020.

T. Passath and K. Mertens, "Decision Making in lean smart maintenance: Criticality Analysis as a support tool," IFAC-PapersOnline, vol. 52-10, pp. 364-369, 2019.

D. Catenazzo, B. O’Flynn, and M. Walsh, "On the use of wireless sensor networks in preventive maintenance for industry 4.0," in ICST, 2018, pp. 256-262.

H. Akkermans, et al., "Smart moves for smart maintenance. Findings from a Delphi study on ‘Maintenance Innovation Priorities’ for the Netherlands," Dutch Maintenance Association, Maastricht, 2016.

A. J. Cortadi et al., "Predictive maintenance on the machining process and machine tool," Applied Sciences, vol. 10, no. 224, 2020.

L. Cattaneo and M. Macchi, "A digital twin proof of concept to support machine prognostics with low availability of Run-to-Failure Data," IFAC PapersOnline, vol. 52, no. 10, pp. 37-42, 2019.

S. Boral et al., "A hybrid AI-based conceptual decision-making model for sustainable maintenance strategy selection," in Advanced Multi-Criteria Decision Making for Addressing Complex Sustainability Issues, P. Chatterjee, Ed. IGI Global, 2019, pp. 63-90.

R. K. Singh and A. Gupta, "Framework for sustainable maintenance system: ISM-fuzzy MICMAC and TOPSIS approach," Annals of Operation Research, 2019.

H. Rodseth and P. Schjolberg, "Data-driven predictive maintenance for green manufacturing," in IWA-MA 2016, Manchester, UK, Nov. 10-11, 2016, pp. 36-41.

I. Nielsen, Q.-V. Dang, P. Nielsen, and P. Pawlewski, "Scheduling of mobile robots with preemptive tasks," Advances in Intelligent Systems and Computing, vol. 290, pp. 19-27, 2014.

M. Jasiulewicz-Kaczmarek and A. Gola, "Maintenance 4.0 Technologies for Sustainable Manufacturing – an overview," IFAC PapersOnline, vol. 52, no. 10, pp. 91-96, 2019.

J. Baum et al., "Application of big data analytics and related technologies in maintenance – literature-based research," Machines, vol. 6, no. 54, 2018.

A. Thibbotuwawa, P. Nielsen, Z. Banaszak, and G. Bocewicz, "Energy consumption in unmanned aerial vehicles: A review of energy consumption models and their relation to the UAV routing," Advances in Intelligent Systems and Computing, vol. 853, pp. 173-184, 2019.

R. Geissbauer, J. Wunderlin, and J. Lehr, "The future of spare parts is 3D. A look at the challenges and opportunities of 3D printing," PwC, 2017.

T. Grubic, "Servitization and remote monitoring technology: A literature review and research agenda," Journal of Manufacturing Technology Management, vol. 25, no. 1, pp. 100-124, 2014.

O. Senechal, "Performance indicators nomenclatures for decision making in sustainable condition-based maintenance," IFAC PapersOnline, vol. 51, no. 11, pp. 1137-1142, 2018.

F. Tao, M. Zhang, and A. Y. C. Nee, Digital Twin Driven Smart Manufacturing, Academic Press, 2019.

X. Yao, Z. Sun, L. Li, and H. Shao, "Joint maintenance and energy management of sustainable manufacturing systems," in ASME 2015 International Manufacturing Science and Engineering Conference, Paper No. MSEC2015-9345, V002T04A008, 2015.

D. Sugiarto and Farikhah, "Sustainability strategies of traditional vannamei shrimp cultivation in East Java: A case study in Kudu hamlet, Lamongan district," Advance Sustainable Science, Engineering and Technology (ASSET), vol. 6, no. 2, Apr. 2024, pp. 02402023-01-02402023-14.

M. Achouch et al., "On Predictive Maintenance in Industry 4.0: Overview, Models, and Challenges," Applied Sciences, vol. 12, no. 8081, 2022.

[78] M. Di Nardo, M. Madonna, P. Addonizio, and M. Gallab, "A mapping analysis of maintenance in Industry 4.0," Journal of Applied Research and Technology, vol. 19, no. 6, pp. 653-675, 2021.

L. Silvestri et al., "Maintenance transformation through Industry 4.0 technologies: A systematic literature review," Computers in Industry, vol. 123, p. 103335, Dec. 2020.

M. Jasiulewicz-Kaczmarek et al., "Maintenance 4.0 Technologies – New Opportunities for Sustainability Driven Maintenance," Management and Production Engineering Review, vol. 11, no. 2, pp. 74-87, 2020.

S. Werbińska-Wojciechowska and K. Winiarska, "Maintenance Performance in the Age of Industry 4.0: A Bibliometric Performance Analysis and a Systematic Literature Review," Sensors, vol. 23, no. 1409, 2023.

S. B. Righetto, B. B. Cardoso, M. A. I. Martins, E. G. Carvalho, S. de Francisci, and L. T. Hattori, "Predictive Maintenance 4.0: Concept, Architecture and Electrical Power Systems Applications," in CIRED 2021 - The 26th International Conference and Exhibition on Electricity Distribution, IEEE Xplore, Jan. 2022.

P. Poór and J. Basl, "Machinery maintenance model for evaluating and increasing maintenance, repairs and operations within Industry 4.0 concept," IOP Conference Series: Materials Science and Engineering, vol. 947, p. 012004, 2020.

A. Sahlia, R. Evans, and A. Manohar, "Predictive Maintenance in Industry 4.0: Current Themes," Procedia CIRP, vol. 104, pp. 1948-1953, 2021.

H. Algabrroun, B. Al-Najjar, and M. Jonsson, "A framework for the integration of digitalized maintenance systems with relevant working areas: A case study," IFAC PapersOnline, vol. 53, no. 3, pp. 185-190, 2020.

P. Savolainen, J. Magnusson, M. Gopalakrishnan, E. T. Bekar, and A. Skoogh, "Organizational constraint in data-driven maintenance: A case study in the automotive industry," IFAC PapersOnline, vol. 53, no. 3, 2020.

M. Kans, J. Campos, and L. Hakansson, "A remote laboratory for maintenance 4.0 training and education," IFAC PapersOnline, vol. 53, no. 3, pp. 101-106, 2020.

A. S. Pradisthi and J. Aryanto, "Monitoring and automation system for bird feeding and drinking based on internet of things using ESP32," Advance Sustainable Science, Engineering and Technology (ASSET), vol. 5, no. 3, pp. 02303008-01-0230308-09, Oct. 2023.

E. Bayu E. Hakim and J. Aryanto, "Automated maintenance system for freshwater aquascape based on the internet of things," Advance Sustainable Science, Engineering and Technology (ASSET), vol. 6, no. 1, pp. 02401024-01-02401024-08, Jan. 2024.

Downloads

Published

2024-12-01