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Sustainable Development and Industry 4.0

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Handbook of Smart Materials, Technologies, and Devices

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.

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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

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