Sustainable Materials as a Strategy for the Future

Key elements for corporate materials management

JournalIndustry 4.0 Science
Issue Volume 40, 2024, Edition 1, Pages 44-49
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Abstract

Materials and resources form the basis of our products and services as well as the manufacturing and logistics systems behind them. This results in enormous material flows along regional and global value chains – with diverse ecological, economic and social effects. In short: the sustainability profile of materials and resources is – or should be – an important factor in corporate policy. However, the transition from conventional to sustainable materials management is associated with major challenges, as various areas of the company are affected. In the following, we will first provide an introduction to the field of (corporate) sustainability and then highlight the areas and tasks we consider to be crucial for sustainable corporate materials management.

Keywords

Article

The flow of materials along regional and global value chains has far-reaching environmental, economic and social effects. The sustainability profile of materials should therefore play a central role in management. Adapting material flows to adhere to sustainable principles requires an integrated approach that includes all areas of the company. The decisive factor is that sustainable materials management ultimately requires the entire life cycle of a product to be taken into account – from design and produc- tion through to sales and aftercare measures.

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