A GENERALIZED DATA-DRIVEN ENERGY PREDICTION MODEL WITH UNCERTAINTY FOR A MILLING MACHINE TOOL USING GAUSSIAN PROCESS

被引:0
|
作者
Park, Jinkyoo [1 ]
Law, Kincho H. [1 ]
Bhinge, Raunak [2 ]
Biswas, Nishant [2 ]
Srinivasan, Amrita [2 ]
Dornfeld, David A. [2 ]
Helu, Moneer [3 ]
Rachuri, Sudarsan [3 ]
机构
[1] Stanford Univ, Engn Informat Grp, Stanford, CA 94305 USA
[2] Univ Calif Berkeley, Lab Mfg & Sustainabil, Berkeley, CA 94720 USA
[3] NIST, Syst Integrat Div, Gaithersburg, MD 20899 USA
来源
PROCEEDINGS OF THE ASME 10TH INTERNATIONAL MANUFACTURING SCIENCE AND ENGINEERING CONFERENCE, 2015, VOL 2 | 2015年
关键词
Energy prediction; Data-driven manufacturing; Gaussian Process; SURFACE-ROUGHNESS; NEURAL-NETWORK; WEAR; REGRESSION;
D O I
暂无
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Using a machine learning approach, this study investigates the effects of machining parameters on the energy consumption of a milling machine tool, which would allow selection of optimal operational strategies to machine a part with minimum energy. Data-driven prediction models, built upon a nonlinear regression approach, can be used to gain an understanding of the effects of machining parameters on energy consumption. In this study, we use the Gaussian Process to construct the energy prediction model for a computer numerical control (CNC) milling machine tool. Energy prediction models for different machining operations are constructed based on collected data. With the collected data sets, optimum input features for model selection are identified. We demonstrate how the energy prediction models can be used to compare the energy consumption for the different operations and to estimate the total energy usage for machining a generic part. We also present an uncertainty analysis to develop confidence bounds for the prediction model and to provide insight into the vast parameter space and training required to improve the accuracy of the model. Generic parts are machined to test and validate the prediction model constructed using the Gaussian Process and we consistently achieve an accuracy of over 95 % on the total predicted energy.
引用
收藏
页数:10
相关论文
共 50 条
  • [41] Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods
    Ozturk, Burak
    Aydin, Kutay
    Ugur, Levent
    MULTIDISCIPLINE MODELING IN MATERIALS AND STRUCTURES, 2025,
  • [42] Tool Wear Prediction Based on Gaussian Process Latent Force Model
    Liu H.
    Yuan D.
    Zhu K.
    Jixie Gongcheng Xuebao/Journal of Mechanical Engineering, 2023, 59 (17): : 310 - 324
  • [43] Scalable Gaussian Processes for Data-Driven Design Using Big Data With Categorical Factors
    Wang, Liwei
    Yerramilli, Suraj
    Iyer, Akshay
    Apley, Daniel
    Zhu, Ping
    Chen, Wei
    JOURNAL OF MECHANICAL DESIGN, 2022, 144 (02)
  • [44] Convolutional Forecasting of Particulate Matter: Toward a Data-Driven Generalized Model
    Ferrari, Luca
    Guariso, Giorgio
    ATMOSPHERE, 2024, 15 (04)
  • [45] STUDY ON PREDICTION OF TIDE AND OCEAN CURRENT BY DATA-DRIVEN MODEL
    Sun, Zhaochen
    Li, Mingchang
    Liang, Shuxiu
    ADVANCES IN WATER RESOURCES AND HYDRAULIC ENGINEERING, VOLS 1-6, 2009, : 1163 - 1168
  • [46] Data-driven nonintrusive reduced order modeling for dynamical systems with moving boundaries using Gaussian process regression
    Ma, Zhan
    Pan, Wenxiao
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 373
  • [47] Data-driven model for predicting production periods in the SAGD process
    Huang, Ziteng
    Yang, Min
    Yang, Bo
    Liu, Wei
    Chen, Zhangxin
    PETROLEUM, 2022, 8 (03) : 363 - 374
  • [48] PID based nonlinear processes control model uncertainty improvement by using Gaussian process model
    Chan, Lester Lik Teck
    Chen, Tao
    Chen, Junghui
    JOURNAL OF PROCESS CONTROL, 2016, 42 : 77 - 89
  • [49] Prediction and Uncertainty Propagation for Completion Time of Batch Processes Based on Data-Driven Modeling
    Zhou, Le
    Chuang, Yao-Chen
    Hsu, Shao-Heng
    Yao, Yuan
    Chen, Tao
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2020, 59 (32) : 14374 - 14384
  • [50] Tool temperature prediction in end milling using voxel model-based simulation
    Matsumura, Rei
    Nishida, Isamu
    Shirase, Keiichi
    JOURNAL OF ADVANCED MECHANICAL DESIGN SYSTEMS AND MANUFACTURING, 2024, 18 (07):