| contributor author | Jihong Yan |  | 
| contributor author | Jay Lee |  | 
| date accessioned | 2017-05-09T00:16:49Z |  | 
| date available | 2017-05-09T00:16:49Z |  | 
| date copyright | November, 2005 |  | 
| date issued | 2005 |  | 
| identifier issn | 1087-1357 |  | 
| identifier other | JMSEFK-27899#912_1.pdf |  | 
| identifier uri | http://yetl.yabesh.ir/yetl/handle/yetl/132126 |  | 
| description abstract | Real-time  health  monitoring  of  industrial  components  and  systems  that  can  detect,  classify  and  predict  impending  faults  is  critical  to  reducing  operating  and  maintenance  cost.  This  paper  presents  a  logistic  regression  based  prognostic  method  for  on-line  performance  degradation  assessment  and  failure  modes  classification.  System  condition  is  evaluated  by  processing  the  information  gathered  from  controllers  or  sensors  mounted  at  different  points  in  the  system,  and  maintenance  is  performed  only  when  the  failure∕malfunction  prognosis  indicates  instead  of  periodic  maintenance  inspections.  The  wavelet  packet  decomposition  technique  is  used  to  extract  features  from  non-stationary  signals  (such  as  current,  vibrations),  wavelet  package  energies  are  used  as  features  and  Fisher’s  criteria  is  used  to  select  critical  features.  Selected  features  are  input  into  logistic  regression  (LR)  models  to  assess  machine  performance  and  identify  possible  failure  modes.  The  maximum  likelihood  method  is  used  to  determine  parameters  of  LR  models.  The  effectiveness  and  feasibility  of  this  methodology  have  been  illustrated  by  applying  the  method  to  a  real  elevator  door  system. |  | 
| publisher | The American Society of Mechanical Engineers (ASME) |  | 
| title | Degradation Assessment and Fault Modes Classification Using Logistic Regression |  | 
| type | Journal Paper |  | 
| journal volume | 127 |  | 
| journal issue | 4 |  | 
| journal title | Journal of Manufacturing Science and Engineering |  | 
| identifier doi | 10.1115/1.1962019 |  | 
| journal fristpage | 912 |  | 
| journal lastpage | 914 |  | 
| identifier eissn | 1528-8935 |  | 
| keywords | Doors |  | 
| keywords | Maintenance |  | 
| keywords | Failure |  | 
| keywords | Feature extraction |  | 
| keywords | Feature selection |  | 
| keywords | Signals |  | 
| keywords | Wavelets |  | 
| keywords | Elevators |  | 
| keywords | Vibration |  | 
| keywords | Data acquisition systems |  | 
| keywords | Cycles |  | 
| keywords | Probability |  | 
| keywords | Control equipment |  | 
| keywords | Equipment performance |  | 
| keywords | Sensors AND Inspection |  | 
| tree | Journal of Manufacturing Science and Engineering:;2005:;volume( 127 ):;issue: 004 |  | 
| contenttype | Fulltext |  |