Abstract
Industrialization is the major feature in calculating the development of the country. Since last decade, industrial manufacturing processes are converting from manual to mechanical processes. Mainly the development of manufacturing processes is of two types; intelligent and digital. Industry 4.0 is relatively a new option to observe closely life cycle of the product. This aspect can add up in originating and implementing the innovative ideas to attain sustainable development approach in industrial sector. Sustainability is an integrated approach to maintain balance in three main domains, i.e., environment, social, and economic. So, new industrial projects and manufacturing units can be designed by keeping in view the sustainable development goals, that are formulated to develop a sustainable relationship between society and environment without compromising any aspect of both. Contents of Industry 4.0 are most suitable in order to achieve the set goals of sustainable development in three major dimensions: environment, economic, and social. Whereas, environmental dimension is linked with the safety of all including humans and biodiversity; economic dimension focuses on developmental projects; and social dimension is associated with public safety and security in all aspects. There are several methods for designing integrated manufacturing units to reduce pressure on environment and society without compromising the economic value of industrialization.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
A PLC as a modification 4.0 component in Proceedings of 2016 13th international conference on remote engineering and virtual instrumentation, Rev 2016, 10–15
Abbas HA (2014) Future SCADA challenges and the promising solution: the agent-based. Int J Crit Infrastruct. Inderscience Enterprises Ltd, 10(3/4):307–333
Aggarwal M (2019) History of the Industrial Revolution. http://www.historydiscussion.net/history/industrial-revolution/history-of-the-industrialrevolution/1784. Accessed 7 May 2019
Akram MW, Akram N, Wang H, Andleeb S, Khalil ur Rehman, Kashif U, Mehmood A (2019) Impact of land use rights on the investment and efficiency of organic farming. Sustainability 11:7148. https://doi.org/10.3390/su11247148
Banavar G, Bernstein A (2002) Software infrastructure and design challenges for ubiquitous computing applications. Commun ACM 45(12):92–96
Barbosa JLV (2015) Ubiquitous computing: Applications and research opportunities. In: IEEE International Conference on Computational Intelligence and Computing Research (ICCIC), Madurai
Barcus J (29 March 2018) 5 benefits of shifting to smart manufacturing. Oracle. https://blogs.oracle.com/5benefits-of-shifting-to-smart-manufacturing. Accessed 07 May 2019
Beebe C (2019) The benefits of smart manufacturing fishman. https://www.fishmancorp.com/benefits-smartmanufacturing/. Accessed 07 May 2019
Bhadra A, Kachwala T (2014) Impact of CSR on business. Int J Multidiscip Manag Stud 4:144–160
Bi Z, Da Xu L, Wang C (2014) Internet of things for enterprise systems of modern manufacturing. IEEE Trans Ind Inform 10(2):1537–1546
Chen T, Tsai H-R (2017) Ubiquitous manufacturing: Current practices, challenges, and opportunities. Robot Comput Integr Manuf 45:126–132
Chen C, Zhang B, Vachtsevanos G (2012) Prediction of machine health condition using neuro-fuzzy and bayesian algorithms. IEEE Trans Instrum Meas 61(2):297–306
Cheng FT, Tieng H, Yang HC, Hung MH, Lin YC, Wei CF, Shieh ZY (2016) Industry 4.1 for wheel machining automation. IEEE Robot Autom Lett 1(1):332–339
Chi M, Plaza A, Benediktsson JA, Sun Z, Shen J, Zhu Y (2016) Big data for remote sensing: challenges and opportunities. Proc IEEE 104(11):2207–2219. Clustering algorithms for big data. Rev Comput Eng Res 4(2):54–80
Crandall RE (October 2017) Industry 1.0 to 4.0: the evolution of smart factories, APICS. http://www.apics.org/apics-for-individuals/apics-magazine-home/magazine-detailpage/2017/09/20/industry-1.0-to-4.0-the-evolution-ofsmart-factories. Accessed 7 Apr 2019
DataSyst (2020) 118:390–411. 2020. Sustainability 12, 4674 20 of 21
Dorofeev K, Cheng C, Guedes H, Ferreira M, Profanter P, Zoitl S (12–15 September 2017) A device adapter concept towards enabling plug & produce production
Drath R, Horch A (June 2014) Industrie 4.0: hit or hype [industry forum]. IEEE Ind Electron Mag 8(2):56–58
EOS GmbH. Additive manufacturing, laser-sintering and industrial 3D printing – benefits and functional principle, EOS GmbH, May 2018. https://www.eos.info/additive_manufacturing/for_technology_interested. Accessed 11 May 2019
Evan PC (2012) Industrial Internet: pushing the boundries of minds and machines. http://www.ge.com/docs/chapters/IndustrialInternet.pdf. 1–37
Fathym (2018) 5 powerful benefits of IoT for the manufacturing industry. https://fathym.com/2017/05/5-powerful-benefits-iot-manufacturing-industry/. Accessed 07 May 2019
Fuel Energy Abstracts (2007). https://www.sciencedirect.com/journal/fueland-energyabstracts/48/6. Accessed 5 Apr 2020. 148:394–448
GE, what is Additive Manufacturing? GE, 2019. https://www.ge.com/additive/additivemanufacturing. Accessed 11 May 2019
Henry Ford in collaboration with Samuel Crowther (1922) My life and work, Garden City
Howard E (5 September 2018) The evolution of the industrial ages industry 1.0 to 4.0. https://www.simio.com/blog/2018/09/05/evolution-industrial-ages-industry-1-0-4-0/. Accessed 7 Apr 2019
ICS & Cybersecurity (23 February 2017) The 4 industrial revolutions, Sentryo. https://www.sentryo.net/the-4-industrial-revolutions/. Accessed 7 Apr 2019. IEEE Access, 4:2751–2763. Industry 5.0 Supply Chain Game Changer™
Infinite Uptime, Smart Factory and Its benefits on manufacturing industry, Infinite Uptime, 21 August 2018. https://infinite-uptime.com/blog/smart-factory-benefitsmanufacturing/. Accessed 07 May 2019
Jazdi N (May 2014) Cyber physical systems in the context of industry 4.0 in Automation, Quality, Testing, Robotics, IEEE International Conference, 1–4
Juels (2006) RFID security and privacy: a research survey. pp 381–394
Kaur A, Gupta P, Singh M, Nayyar A (2019) Data placement in era of cloud computing: a survey, taxonomy and open research issues. Scalable Comput Pract Experience 20(2):377–398
Khalil ur Rehman, Bukhari SM, Andleeb S, Mahmood A, Erinle KO, Naeem MM, Imran Q (2019) Ecological risk assessment of heavy metals in vegetables irrigated with groundwater and wastewater: the particular case of Sahiwal district in Pakistan. Agric Water Manag 226:105816. https://doi.org/10.1016/j.agwat.2019.105816, ISSN 0378-37742019
Khan AG (2016) Electronic commerce: a study on benefits and challenges in an emerging economy. Glob J Manag Bus Res 16(1):19–22
Kulyk V, Škodová Parmová D (2017) E-business development the comparative study of the Czech Republic and the Ukraine. Deturope. http://www.deturope.eu/img/upload/content_95997736.pdf. Accessed 6 Apr 2020. 9(80–110)
Lei Y, Li N, Gontarz S, Lin J, Radkowski S, Dybala J (2016) A model-based method for remaining useful life prediction of machinery. IEEE Trans Reliab 65(3):1314–1326
Li H, Pan D, Chen CP (2014) Intelligent prognostics for battery health monitoring using the mean entropy and relevance vector machine. IEEE Trans Systems Man Cybern Syst 44(7):851–862
Lom M, Pribyl C, Svitek M (2016) Industry 4.0 as a part of Smart Cities Symposium Prague (SCSP), 1–6.
Marr B (2016) What is the difference between artificial intelligence and machine learning Forbes. https://www.forbes.com/sites/bernardmarr/2016/12/06
Marr (2018) Beyond automation: the cognitive IoT. Artificial intelligence brings sense to the Internet of Things. In: Cognitive computing for Big Data systems over IoT: frameworks, tools and application. Springer, pp. 1–37
Mikuf M, Zolotov I (2015) Application of business intelligence solutions on manufacturing data IEEE. In: 13th International Symposium on Applied Machine Intelligence and Informatics (SAMI), pp 193–197
Nayyar A (2011) INTEROPERABILITY OF CLOUD COMPUTING WITH WEB Private Virtual Infrastructure (PVI) Model for Cloud Computing. Int J Softw Eng Res Pract 1(1):10–14
Nayyar A, Puri V, Le DN (2017) Internet of nano things (IoNT): Next evolutionary step in nanotechnology. Nanosci Nanotechnol 7(1):4–8
Nissen P (2016) Factory Automation from Industry1.0 to Industry 4.0. https://www.qubiqa.com/Qubiqa-EN/Blog/Per-Nissen-gives-a-quick-overview-of-factoryautomationfrom-Industry-1.0-to-Industry-4.0-%E2%80%93-and-the-futureof-automation
Pao W (02 Oct 2018) Smart manufacturing technology and how it benefits factories, asmag.com. https://www.asmag.com/showpost/26303.aspx. Accessed 07 May 2019
Peiris P (25 May 2017) How IoT strengthens ubiquitous computing. https://dzone.com/articles/how-iot-strengthens-ubiquitous-computing. Accessed 30 November 2018
Performance Computing with Smartphone Crowd computing: benefits, enablers, and challenges (2019). Scalable Comput Pract Experience 20(2):259–283
Pramanik PKD, Choudhury P, Shandilya SK, Chun SA, Shandilya S, Weippl E (2018a) IoT data processing: the different archetypes and their security & privacy assessments. River Publishers, pp 37–54
Pramanik PKD, Pal S, Brahmachari A, Choudhury P (2018b) Processing IoT data: from Cloud to Fog – it’s time to be down to earth. In: Applications of Security, Mobile, Analytic, and Cloud (SMAC) technologies for effective information processing and management. IGI Global, pp 124–148
Pramanik PKD, Mukherjee B, Pal S, Pal T, Singh SP (2019a) Green smart building requisites, architecture, challenges, and use cases. In: Green building management and smart automation
Pramanik PKD, Pal S, Mukhopadhyay M (2019b) Healthcare big data: a comprehensive overview. In: Intelligent systems for healthcare management and delivery. IGI Global, pp 72–100
Pramanik PKD, Pal S, Choudhury P (2019c) Green and sustainable high-performance computing with smartphone crowd computing. Scalable Computing 20(10):259–284
Pramanik PKD, Pal S, Choudhury P (2019d) Smartphone crowd computing a rational solution towards minimising the environmental externalities of the growing computing demands. In: Das R, Banerjee M, De S (eds) Emerging trends in disruptive technology management. CRC Press, 1
Pramanik PKD, Upadhyaya BK, Pal S, Pal T (2019e) Internet of things, smart sensors, and pervasive systems: enabling connected and pervasive healthcare. In: Healthcare data analytics and management. Academic, pp 1–58
Pramanik PKD, Mukherjee B, Pal S, Upadhyaya BK, Dutta S (2020) Ubiquitous manufacturing in the age of industry 4.0: a State-of-the-Art primer. In: A roadmap to Industry 4.0: smart production, sharp business and Sustainable Development. Springer, Cham, pp 73–112
Prasanna KR, Hemalatha M (2012) RFID GPS and GSM based logistics vehicle load balancing and tracking. Procedia Eng 30:726–729
Putnik GD, Wang L (2017) Ubiquitous and cloud enterprise for manufacturing. Int J Comput Integr Manuf 30(4–5):344–346
Rouse M (November 2016 and July 2018) Cognitive computing TechTarget, IoT analytics guide: understanding Internet of Things data
Sachs J, Schmidt-Traub G, Kroll C, Lafortune G, Fuller G (2018) Implementing the goals. SDG index report 2018. Bertelsmann Stiftung and Sustainable Development Solutions Network, New York
Sanders CE, Wulfsberg J (2016) Industry 4.0 implies lean manufacturing research activities in Industry 4.0 Function as Enablers for Lean Manufacturing. J Ind Eng Manag 9(3). SCADA Int J Crit Infrastruct 10(3/4):307
Scherer et al (2018) Trade-offs between social and environmental Sustainable Development Goals. Environ Sci Policy 90:65–72. https://doi.org/10.1016/j.envsci.2018.10.002
Schnase JL, Lee TJ, Mattmann CA, Lynnes CS, Cinquini L, Ramirez PM, Hart AF, Williams DN, Waliser D, Rinsland P, Webster WP, Duffy DQ, McInerney MA, Tamkin GS, Potter GL, Carriere L (2016) Big data challenges in climate science: improving the next-generation cyberinfrastructure. IEEE Geosci Remote Sens Mag 4(3):10–22
Sheth J (24 March 2019) The Industrial Revolution from Economic Development 1.0 to 4.0
Shukla S, Mohanty B, Kumar A (2018) Strategizing sustainability in e-commerce channels for additive manufacturing using value-focused thinking and fuzzy cognitive maps. Ind Manag
Simmon E, Kim KS, Lee V (2013) A vision of cyber-physical cloud computing for smart networked systems. Technical report
Singh P, Gupta P, Jyoti K, Nayyar A (2019a) Research on auto-scaling of web applications in cloud: survey, trends and future directions. Scalable Comput Pract Experience 20(2):399–432
Singh SP, Nayyar A, Kaur H, Singla A (2019b) Dynamic task scheduling using balanced VM allocation policy for fog computing platforms. Scalable Comput Pract Experience 20(2):433–456
Singh SP, Nayyar A, Kumar R, Sharma A (2019c) Fog computing: from architecture to edge computing and big data processing. J Supercomputing, Switzerland 75(4):2070–2105
Solanki A Nayyar A (eds) IGI Global. (2019a) AB&R, RFID, AB&R. https://www.abr.com/what-is-rfid-how-does-rfid-work/. Accessed 11 May 2019
Solanki A, Nayyar A (2019b) Green internet of things (G-IoT): ICT technologies, principles, applications, projects, and challenges. In: Handbook of research on Big Data and the IoT. IGI Global, Switzerland, pp 379–405
SPI lasers. Additive manufacturing – a definition. SPI lasers (2019). https://www.spilasers.com/applicationadditive-manufacturing/additive-manufacturing-adefinition/. Accessed 11 May 2019
Susto GA, Schirru A, Pampuri S, McLoone S, Beghi S (June 2015) Machine learning for predictive maintenance: A multiple classifier approach. IEEE Trans Ind Inform 11(3):812–820
Thomas (2019) Complete guide to actuators. (Types, Attributes, Applications and Suppliers). https://www.thomasnet.com/articles/pumps-valves-accessories/types-of-actuators. Accessed 11 May 2019
Ticaret SV (2017) A brief history of industry, Bosch. http://www.sanayidegelecek.com/en/sanayi-4-0/tarihsel-gelisim/. Accessed 7 Apr 2019
Villanustre F (2015) Industrial Big Data analytics: lessons from the trenches. In: Proceedings, 1st International Workshop on Big Data Software Engineering, BIGDSE 2015, pp 1–3
Wang X, Ong SK, Nee AYC (2017) A comprehensive survey of ubiquitous manufacturing research. Int J Prod Res 604–628
Want R, Krumm J (2010) An introduction to ubiquitous computing. In: Ubiquitous computing fundamentals. CRC Press, Boca Raton, pp 1–36
Weiser M (1993) Hot topics-ubiquitous computing. Computer 26(10):71–72
Xu C, Wang G, Liu X, Guo D, Liu TY (2016) Health status assessment and failure prediction for hard drives with recurrent neural networks. IEEE Trans Comput 65(11):3502–3508
Yick J, Mukherjee B, Ghosal D (2008) Wireless sensor network survey. Comput Netw 52(12):2292–2330
Yonder B (2015) Industrial Big Data, 1–3. 2014
Yu S (2016) Big privacy: challenges and opportunities of privacy study in the age of Big Data. 4:1–1. https://doi.org/10.1109/ACCESS.2016.2577036
Yu S, Liu M, Dou W, Liu X, Zhou S (2016) Networking for big data: a survey. IEEE Commun Surv Tutorials (99):1–1
Zhou K, Liu T, Zhou L (2015 August) Industry 4.0: towards future industrial opportunities and challenges. In: 2015 12th international conference on fuzzy systems and knowledge discovery (FSKD), pp 2147–2152
Author information
Authors and Affiliations
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2022 The Author(s), under exclusive license to Springer Nature Switzerland AG
About this entry
Cite this entry
Akram, M.W., Khalil Rehman, Mohsin bukhari, S., Akram, N., Andleeb, S. (2022). Sustainable Development and Industry 4.0. In: Hussain, C.M., Di Sia, P. (eds) Handbook of Smart Materials, Technologies, and Devices. Springer, Cham. https://doi.org/10.1007/978-3-030-84205-5_87
Download citation
DOI: https://doi.org/10.1007/978-3-030-84205-5_87
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-030-84204-8
Online ISBN: 978-3-030-84205-5
eBook Packages: EngineeringReference Module Computer Science and Engineering