Tool condition monitoring in drilling using artificial neural networks

被引:0
|
作者
Baone, AD [1 ]
Eswaran, K [1 ]
Rao, GV [1 ]
Komariah, M [1 ]
机构
[1] BHEL, Corp R&D, Hyderabad 500093, Andhra Pradesh, India
关键词
drill wear monitoring; tool condition monitoring; Artificial Neural Network;
D O I
10.1117/12.380593
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In modern day production, tool condition monitoring systems are needed to get better quality of jobs and to ensure reduction in the downtime of machine tools due to catastrophic tool failures. Tool condition monitors alert the operator about excessive tool wear and stop the machine in case of an impending breakage or collision of tool. A tool condition monitoring system based on measurement of thrust has been developed for a CNC gantry-drilling machine. The system, though performing well, has limitations due to its total dependence on single sensor input. In view of this, investigations have been carried out to adopt a multi-sensor approach for this system. The inputs of axial thrust, spindle motor current and vibrations are used and the decision regarding the condition of tool is made using Artificial Neural Networks. Initially, a training algorithm is used to learn the complex association between sensor inputs and drill wear. Later on the trained network is employed to assess the condition of drill on new sensory information. An Artificial Neural Network based on Error Back propagation algorithm is employed. The paper discusses various aspects considered in choosing the design parameters for the Neural Network. The experimental results are presented in the paper.
引用
收藏
页码:401 / 410
页数:10
相关论文
共 50 条
  • [41] IoT-complex for Monitoring and Analysis of Motor Highway Condition Using Artificial Neural Networks
    Leizerovych, Roman
    Kondratenko, Galyna
    Sidenko, Ievgen
    Kondratenko, Yuriy
    2020 IEEE 11TH INTERNATIONAL CONFERENCE ON DEPENDABLE SYSTEMS, SERVICES AND TECHNOLOGIES (DESSERT): IOT, BIG DATA AND AI FOR A SAFE & SECURE WORLD AND INDUSTRY 4.0, 2020, : 207 - 212
  • [42] The use of artificial neural networks for condition monitoring of electrical power transformers
    Booth, C
    McDonald, JR
    NEUROCOMPUTING, 1998, 23 (1-3) : 97 - 109
  • [43] A novel normalisation procedure for the sensor positioning problem in vibration monitoring of drilling using artificial neural networks
    Nakandhrakumar, R. S.
    Dinakaran, D.
    Gopal, M.
    Pattabiraman, J.
    INSIGHT, 2016, 58 (10) : 556 - 563
  • [44] Condition monitoring of planetary gearbox by hardware implementation of artificial neural networks
    Dabrowski, Dariusz
    MEASUREMENT, 2016, 91 : 295 - 308
  • [45] Artificial Neural Network on Tool Condition Monitoring in Hard Turning of AISI4140 Steel Using Carbide Tool
    Ajitha Priyadarsini, S.
    Rajeev, D.
    S. Rai, Rajakumar
    Nadar, Kannan Pauliah
    Christopher Ezhil Singh, S.
    Mathematical Problems in Engineering, 2023, 2023
  • [46] Rotating machine condition monitoring using neural networks
    McCormick, AC
    Nandi, AK
    TRENDS IN NDE SCIENCE AND TECHNOLOGY - PROCEEDINGS OF THE 14TH WORLD CONFERENCE ON NDT (14TH WCNDT), VOLS 1-5, 1996, : 1845 - 1848
  • [47] Estimating Drilling Parameters for Diamond Bit Drilling Operations Using Artificial Neural Networks
    Akin, Serhat
    Karpuz, Celal
    INTERNATIONAL JOURNAL OF GEOMECHANICS, 2008, 8 (01) : 68 - 73
  • [48] Monitoring micro-drilling operations using neural networks
    Tansel, IN
    ADVANCED CERAMIC TOOLS FOR MACHINING APPLICATION - III, 1998, 138-1 : 575 - 592
  • [49] Condition Monitoring of Induction Motor using Artificial Neural Network
    Bhavsar, Ravi C.
    Patel, Rakeshkumar A.
    Bhalja, B. R.
    2014 ANNUAL INTERNATIONAL CONFERENCE ON EMERGING RESEARCH AREAS: MAGNETICS, MACHINES AND DRIVES (AICERA/ICMMD), 2014,
  • [50] Transformer insulation condition monitoring using Artificial Neural Network
    Husain, E
    Mohsin, MM
    Satyaprakash
    ICSD '01: PROCEEDINGS OF THE 2001 IEEE 7TH INTERNATIONAL CONFERENCE ON SOLID DIELECTRICS, 2001, : 295 - 298