Machine Learning in Additive Manufacturing
Abstract
Additive manufacturing (AM) has evolved as a game-changing digital manufacturing technique. The immoderate entry constraints of AM, restricted libraries, different performance disruptions, and poor product quality have all hampered its widespread acceptance. Machine learning (ML) may be used to create new, reasonably fine metamaterials and topological designs that have been produced. ML can assist workers in pre-production planning, checking out, and excellent product management in AM. Furthermore, as statistical infractions must come from the ML strategic source, there has been a rising endeavor around facts safety in AM. AM parameters are difficult to calibrate since they can have a considerable impact on the products, microstructure, and regular performance. In the current scenario, the ML approach provides a legitimate strategy for executing complex pattern identification and retrospective testing, in addition to the explicit necessity of building and altering the main physical models. This chapter will provide an insight into the discovery of ML, in-depth learning, and a variety of computer-related advanced manufacturing tactics, as well as future trends and embeddings, such as cloud production or Industry 4.0. Many challenges related to AM are reported to be solved with ML, including technique control, process monitoring, and overall performance improvements. In addition, there are archives defending the traditional blend of AM and ML as well as experiments and future research concerns. The study assesses several areas of AM employing ML, including materials and methods, alternative approaches, and the current state of production quality.
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- Center for Advanced Materials Research [1391 items ]