Towards big industrial data mining through explainable automated machine learning

被引:0
作者
Moncef Garouani
Adeel Ahmad
Mourad Bouneffa
Mohamed Hamlich
Gregory Bourguin
Arnaud Lewandowski
机构
[1] Univ. Littoral Cote d’Opale,CCPS Laboratory, ENSAM
[2] UR 4491,undefined
[3] LISIC,undefined
[4] Laboratoire d’Informatique Signal et Image de la Cote d’Opale,undefined
[5] University of Hassan II,undefined
[6] Study and Research Center for Engineering and Management (CERIM),undefined
[7] HESTIM,undefined
来源
The International Journal of Advanced Manufacturing Technology | 2022年 / 120卷
关键词
Machine learning; AutoML; Explainable AI; Data analysis; Decision-support systems; Industry 4.0;
D O I
暂无
中图分类号
学科分类号
摘要
Industrial systems resources are capable of producing large amount of data. These data are often in heterogeneous formats and distributed, yet they provide means to mine the information which can allow the deployment of intelligent management tools for production activities. For this purpose, it is necessary to be able to implement knowledge extraction and prediction processes using Artificial Intelligence (AI) models, but the selection and configuration of intended AI models tend to be increasingly complex for a non-expert user. In this paper, we present an approach and a software platform that may allow industrial actors, who are usually not familiar with AI, to select and configure algorithms optimally adapted to their needs. Hence, the approach is essentially based on automated machine learning. The resulting platform effectively enables a better choice among the combination of AI algorithms and hyper-parameters configurations. It also makes it possible to provide features of explainability of the resulting algorithms and models, thus increasing the acceptability of these models in practicing community of the users. The proposed approach has been applied in the field of predictive maintenance. Current tests are based on the analysis of more than 360 databases from the subjected field.
引用
收藏
页码:1169 / 1188
页数:19
相关论文
共 73 条
  • [1] Provost F(2013)Data science and its relationship to big data and data-driven decision making Big Data 1 51-59
  • [2] Fawcett T(2015)Deep learning Nature 521 436-444
  • [3] LeCun Y(2008)NVIDIA Tesla: a unified graphics and computing architecture IEEE Micro 28 39-55
  • [4] Bengio Y(2015)Metalearning: a survey of trends and technologies Artif Intell Rev 44 117-130
  • [5] Hinton G(2020)Machine learning algorithms for the prediction of non-metallic inclusions in steel wires for tire reinforcement J Intell Manuf 1 67-82
  • [6] Lindholm E(2020)Gear and bearing fault classification under different load and speed by using Poincaré plot features and SVM J Intell Manuf 17 83-96
  • [7] Nickolls J(1997)No free lunch theorems for optimization IEEE Trans Evol Comput 98 277-284
  • [8] Oberman S(2014)Automatic classifier selection for non-experts Pattern Anal Applic 2 56-67
  • [9] Montrym J(2019)Role of fairness, accountability, and transparency in algorithmic affordance Comput Hum Behav 65 211-222
  • [10] Lemke C(2020)From local explanations to global understanding with explainable AI for trees Nature Machine Intelligence 91 1-11