Challenges of manufacturing for energy efficiency: towards a systematic approach through applications of machine learning

Q3 Engineering Production Pub Date : 2022-01-01 DOI:10.1590/0103-6513.20210147
E. G. Nabati, M. T. Alvela Nieto, Dennis Bode, T. Schindler, André Decker, K. Thoben
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引用次数: 1

Abstract

Paper aims: Due to increasing energy prices, manufacturers have to pay more attention to the energy efficiency of their production processes. This paper aims to support manufacturers in increasing processes’ energy efficiency by using production data and applying machine learning approaches. Originality: Systematic guidelines or standards for minimising the energy consumption of manufacturing processes through machine learning approaches are still lacking. This gap is addressed in this paper. Research method: The paper follows a qualitative research method to understand the manufacturing processes and their challenges in improving energy efficiency. The raw data for a 5-step approach were collected in research projects with manufacturing SMEs, and information about the processes through interviews and workshops with them. Then, an analysis of currently available machine learning frameworks and their selection and implementation is conducted. Main findings: The main result is a 5-step approach for increasing the energy efficiency of manufacturing processes through machine learning. Essential applications and technical challenges for data mapping, integrating, modelling, implementing, and deploying machine learning algorithms in manufacturing processes for increasing energy efficiency are presented. Implications for theory and practice: The findings can guide manufacturers, researchers, and data scientists to use machine learning in practice when they intend to increase the energy efficiency of manufacturing processes.
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能源效率制造业的挑战:通过机器学习的应用走向系统化的方法
论文目的:由于能源价格的上涨,制造商不得不更加关注其生产过程的能源效率。本文旨在通过使用生产数据和应用机器学习方法来支持制造商提高过程的能源效率。原创性:目前仍缺乏通过机器学习方法将制造过程的能耗降至最低的系统指南或标准。本文解决了这一差距。研究方法:本文采用定性研究方法来了解制造过程及其在提高能源效率方面面临的挑战。五步法的原始数据是在制造业中小企业的研究项目中收集的,并通过与他们的访谈和研讨会收集了有关该过程的信息。然后,分析了当前可用的机器学习框架及其选择和实现。主要发现:主要结果是通过机器学习提高制造过程能源效率的五步方法。提出了数据映射、集成、建模、实现和部署机器学习算法在制造过程中提高能源效率的基本应用和技术挑战。对理论和实践的启示:这些发现可以指导制造商、研究人员和数据科学家在实际中使用机器学习,以提高制造过程的能源效率。
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来源期刊
Production
Production Engineering-Industrial and Manufacturing Engineering
CiteScore
3.00
自引率
0.00%
发文量
26
审稿时长
40 weeks
期刊介绍: The Produção Journal (Production Journal), ISSN 0103-6513, is a Brazilian Association of Production Engineering (ABEPRO) publication. It was created in 1990 in order to provide a communication medium for academic articles in the Production Engineering field. Since 2002, the Production Engineering Department of Polytechnic School of the University of São Paulo (PRO/EPUSP) is responsible for the editorial process of Produção Journal, sponsored by Carlos Alberto Vanzolini Foundation (FCAV). Revista Produção has the tradition of eighteen published volumes and Qualis "B2" evaluation by CAPES in the Engineering III area. For Brazilian academic community it is a top journal in Production Engineering field.
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