4.7 Article

Big Data enabled Intelligent Immune System for energy efficient manufacturing management

Journal

JOURNAL OF CLEANER PRODUCTION
Volume 195, Issue -, Pages 507-520

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jclepro.2018.05.203

Keywords

Big Data; Intelligent immune mechanism; Energy efficient manufacturing; CNC machining

Funding

  1. EU Smarter [PEOPLE-2013-IAPP-610675]
  2. Cloudflow [FP7-2013-NMP-ICT-FOF-609100]

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The Big Data driven approach has become a new trend for manufacturing optimisation. In this paper, an innovative Big Data enabled Intelligent Immune System ((IS)-S-2) has been developed to monitor, analyse and optimise machining processes over lifecycles in order to achieve energy efficient manufacturing. There are two major functions in (IS)-S-2: (1) an Artificial Neural Networks; (ANNs)-based algorithm and statistical analysis tools are used to identify the abnormal electricity consumption patterns of manufactured components from monitored Big Data. An intelligent immune mechanism is devised to adapt to the condition changes and process dynamics of machining systems; (2) a re-scheduling algorithm is triggered if abnormal manufacturing conditions are detected thereby achieving multi-objective optimisation in terms of energy consumption and manufacturing performance. In this research, Computer Numerical Controlled (CNC) machining processes and industrial case studies have been used for system validation. The novelty of l(2)S is that Big Data analytics and intelligent immune mechanisms have been integrated systematically to achieve condition monitoring, analysis and energy efficient optimisation over manufacturing execution lifecycles. The applicability of the system has been validated by multiple industrial trials in European factories. Around 30% energy saving and over 50% productivity improvement have been achieved by adopting (IS)-S-2 in the factories. (C) 2018 Elsevier Ltd. All rights reserved.

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