Knowledge Agora



Similar Articles

Title Considerations, challenges and opportunities when developing data-driven models for process manufacturing systems
ID_Doc 8069
Authors Fisher, OJ; Watson, NJ; Escrig, JE; Witt, R; Porcu, L; Bacon, D; Rigley, M; Gomes, RL
Title Considerations, challenges and opportunities when developing data-driven models for process manufacturing systems
Year 2020
Published
Abstract The increasing availability of data, due to the adoption of low-cost industrial internet of things technologies, coupled with increasing processing power from cloud computing, is fuelling increase use of data-driven models in manufacturing. Utilising case studies from the food and drink industry and waste management industry, the considerations and challenges faced when developing data-driven models for manufacturing systems are explored. Ensuring a high-quality set of model development data that accurately represents the manufacturing system is key to the successful development of a data-driven model. The cross-industry standard process for data mining (CRISP-DM) framework is used to provide a reference at to what stage process manufacturers will face unique considerations and challenges when developing a data-driven model. This paper then explores how data-driven models can be utilised to characterise process streams and support the implementation of the circular economy principals, process resilience and waste valorisation. (C) 2020 The Authors. Published by Elsevier Ltd.
PDF https://doi.org/10.1016/j.compchemeng.2020.106881

Similar Articles

ID Score Article
24814 Fisher, OJ; Watson, NJ; Escrig, JE; Gomes, RL Intelligent Resource Use to Deliver Waste Valorisation and Process Resilience in Manufacturing Environments Moving towards sustainable process manufacturing(2020)Johnson Matthey Technology Review, 64, 1
1320 Kristoffersen, E; Aremu, OO; Blomsma, F; Mikalef, P; Li, JY Exploring the Relationship Between Data Science and Circular Economy: An Enhanced CRISP-DM Process Model(2019)
Scroll