2015
DOI: 10.1371/journal.pone.0125835
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A Control Chart Based on Cluster-Regression Adjustment for Retrospective Monitoring of Individual Characteristics

Abstract: The tendency for experimental and industrial variables to include a certain proportion of outliers has become a rule rather than an exception. These clusters of outliers, if left undetected, have the capability to distort the mean and the covariance matrix of the Hotelling’s T 2 multivariate control charts constructed to monitor individual quality characteristics. The effect of this distortion is that the control chart constructed from it becomes unreliable as it exhibits masking and swamping, a phenomenon in … Show more

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Cited by 10 publications
(7 citation statements)
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“…`} RwD |=v@tQ@ = Q 1 R=i |rQDvm OwOL [9] nv=} w uwU}t 'CU= n = 1 xm |Dr=L QO %Ov=xDiQo Q_v QO T 2 pQDvm Q=Owtv |= Q@ 4 |x]@= Q CQwYx@ 8 < : UCL = p(m 1) 2 m ; p/2; m p 1/2 LCL = 0 (4) [10] "CU= ?U=vt 'OW=@ Vy=m |yHwD p@=k Qw] x@ =yl}vmD u}= CQOk 'OW=@ xDW=O OwHw =yxO=O xawtHt xDW=O OwHw Ov}=Qi QO CQB |xO=O l} R= V}@ xm |t=ovy |DQ=@a x@ [12w11] "O@=}|t [13] "OwW|t pmWt CQB \=kv X}NWD 2 '|Q@uwQ@ w 1 |Qw;uwQO QF= p}rO x@ 'OW=@ CQB u=wvax@ |ak=w CQB C=Oy=Wt X}NWD xm ODi=|t j=kD= |t=ovy |Qw;uwQO CQwYx@ C=Oy=Wt xm ODi=|t j=iD= |t=ovy |Q@uwQ@ xm |r=L QO "OwW|tv sqa= C}r@=k 'hWm sOa CQwY QO 'CQB |=yxO=O [14] "OwW sqa= CQB u=wvax@ CUQO=v nv}rDy T 2 |xQ}eDtOvJ pQDvm |=yQ=Owtv Tv=} Q=wwm T} QD=t w u}ov=}t h= QLv= xm CU= u}= h} QLD u}= Q}F -=D "OvQ=O = Q |OQi C}i}m |=y|oS}w Q@ CQ=_v |= Q@ w |Qw;uwQO QF= |= Q=O = Q} R 'OwW|t O=tDa= p@=kQ}e u; R= xOW xDN=U pQDvm Q=Owtv Q=}U@ =yxO=O p}rLD w x} RHD R= p@k CQB \=kv |}=U=vW 'u}= Q@=v@ [10] "CU= |Q@uwQ@ [8] "O}rwD Ov}=Qi pwYLt C}i}m Q@ CQ=_v QO XwYNx@ CU= syt |R=Ux}@W |=yl}vmD R= xO=iDU= =@ T 2 |}xU}=kt |xar=]t l} QO [22] T=oQ=w XN=W R= xO=iDU= =@ w CQBxO=O l} X}NWD T=U= Q@ = Q |rQDvm Q=Owtv OQmrta O=O u=Wv OQmrta |@=} RQ= w xrY=L G}=Dv "OQm |UQQ@ (ncp) C} RmQt sOa (MVE) |[}@ sHL pk=OL |=yQoOQw; Q@ R= xO=iDU= =@ T 2 pQDvm Q=Owtv xm O=OaD |}=U=vW QO SW1 VwQ w CU= QFwt CQB \=kv O=OaD |}=U=vW QO =@ |}=yxO=O p@=kt QO R}v SW2 VwQ "CU}v QFwt |i=QLv= \=kv R= |O=}R xDU@=w x}rw= |iO=YD |xvwtv x@ u}vJty w CU= Q}PB? }U; 'O=}R xO=Di= QwO \=kv "CU= VwQ R= xO=iDU= =@ T 2 |=H x@ C=@F=@ QoOQw;Q@ l} [16] =oDQ= w wQ=ir= Q=OQwNQ@ T 2 x@=Wt Q=DN=U R= O}OH pQDvm Q=Owtv u}= "OvOQm O=yvW}B xDU=Q}B x@ V}=Q}B R= xO=iDU= =@ Tv=} Q=wwm T} QD=t OQw; Q@ w C}akwt Q=OQ@ =t= 'CU= p=Ft l} R= xO=iDU= =@ = Q Q=Owtv wO u}= OQmrta w Q=DiQ =yu; "O};|t CUO xU}=kt CQB |=yxO=O |xawtHt X}NWD T=U= Q@ |R=Ux}@W xar=]t l} w p}rLD |= Q@ |R=Ux}@W |xar=]t l} [11] QoVywSB wO u}= Oa@ p=U l} "OvOQm QO = Q xDU=Q}B QoQw;Q@ w uwRwtR=@ MCD 'MCD 'MVE |=yQoOQw; Q@ OQmrta ?…”
Section: S Wmentioning
confidence: 99%
See 1 more Smart Citation
“…`} RwD |=v@tQ@ = Q 1 R=i |rQDvm OwOL [9] nv=} w uwU}t 'CU= n = 1 xm |Dr=L QO %Ov=xDiQo Q_v QO T 2 pQDvm Q=Owtv |= Q@ 4 |x]@= Q CQwYx@ 8 < : UCL = p(m 1) 2 m ; p/2; m p 1/2 LCL = 0 (4) [10] "CU= ?U=vt 'OW=@ Vy=m |yHwD p@=k Qw] x@ =yl}vmD u}= CQOk 'OW=@ xDW=O OwHw =yxO=O xawtHt xDW=O OwHw Ov}=Qi QO CQB |xO=O l} R= V}@ xm |t=ovy |DQ=@a x@ [12w11] "O@=}|t [13] "OwW|t pmWt CQB \=kv X}NWD 2 '|Q@uwQ@ w 1 |Qw;uwQO QF= p}rO x@ 'OW=@ CQB u=wvax@ |ak=w CQB C=Oy=Wt X}NWD xm ODi=|t j=kD= |t=ovy |Qw;uwQO CQwYx@ C=Oy=Wt xm ODi=|t j=iD= |t=ovy |Q@uwQ@ xm |r=L QO "OwW|tv sqa= C}r@=k 'hWm sOa CQwY QO 'CQB |=yxO=O [14] "OwW sqa= CQB u=wvax@ CUQO=v nv}rDy T 2 |xQ}eDtOvJ pQDvm |=yQ=Owtv Tv=} Q=wwm T} QD=t w u}ov=}t h= QLv= xm CU= u}= h} QLD u}= Q}F -=D "OvQ=O = Q |OQi C}i}m |=y|oS}w Q@ CQ=_v |= Q@ w |Qw;uwQO QF= |= Q=O = Q} R 'OwW|t O=tDa= p@=kQ}e u; R= xOW xDN=U pQDvm Q=Owtv Q=}U@ =yxO=O p}rLD w x} RHD R= p@k CQB \=kv |}=U=vW 'u}= Q@=v@ [10] "CU= |Q@uwQ@ [8] "O}rwD Ov}=Qi pwYLt C}i}m Q@ CQ=_v QO XwYNx@ CU= syt |R=Ux}@W |=yl}vmD R= xO=iDU= =@ T 2 |}xU}=kt |xar=]t l} QO [22] T=oQ=w XN=W R= xO=iDU= =@ w CQBxO=O l} X}NWD T=U= Q@ = Q |rQDvm Q=Owtv OQmrta O=O u=Wv OQmrta |@=} RQ= w xrY=L G}=Dv "OQm |UQQ@ (ncp) C} RmQt sOa (MVE) |[}@ sHL pk=OL |=yQoOQw; Q@ R= xO=iDU= =@ T 2 pQDvm Q=Owtv xm O=OaD |}=U=vW QO SW1 VwQ w CU= QFwt CQB \=kv O=OaD |}=U=vW QO =@ |}=yxO=O p@=kt QO R}v SW2 VwQ "CU}v QFwt |i=QLv= \=kv R= |O=}R xDU@=w x}rw= |iO=YD |xvwtv x@ u}vJty w CU= Q}PB? }U; 'O=}R xO=Di= QwO \=kv "CU= VwQ R= xO=iDU= =@ T 2 |=H x@ C=@F=@ QoOQw;Q@ l} [16] =oDQ= w wQ=ir= Q=OQwNQ@ T 2 x@=Wt Q=DN=U R= O}OH pQDvm Q=Owtv u}= "OvOQm O=yvW}B xDU=Q}B x@ V}=Q}B R= xO=iDU= =@ Tv=} Q=wwm T} QD=t OQw; Q@ w C}akwt Q=OQ@ =t= 'CU= p=Ft l} R= xO=iDU= =@ = Q Q=Owtv wO u}= OQmrta w Q=DiQ =yu; "O};|t CUO xU}=kt CQB |=yxO=O |xawtHt X}NWD T=U= Q@ |R=Ux}@W xar=]t l} w p}rLD |= Q@ |R=Ux}@W |xar=]t l} [11] QoVywSB wO u}= Oa@ p=U l} "OvOQm QO = Q xDU=Q}B QoQw;Q@ w uwRwtR=@ MCD 'MCD 'MVE |=yQoOQw; Q@ OQmrta ?…”
Section: S Wmentioning
confidence: 99%
“…""" nv}rDy T 2 pQDvm Q=Owtv |L=Q] Tv=} Q=w T} QD=t w u}ov=}t uwJ ODi=|t j=iD= |Q@uwQ@ w |Qw;uwQO |xO}OB R= xO=iDU= 'CqmWt u}= pL |=yx= Q R= |m} [10] "OvDU}v C=@F=@ Tv=} Q=wwm w T} QD=t w C}akwt |= Q@ |}xv} Ro u=wvax@ 3 w 2 CqO=at |= Q@ C=@F=@ |=yQoOQw; Q@ [16w15] 'nv}rDy T 2 Ow@y@ =@ 3 xDU=Q}B VwQ pt=W =yQoOQw;Q@ u}= "CU= Tv=} Q=wwm KqY= w OvwW|t xO}t=v SW1 xm CU= [17] p=Oww w u=w}r=U |B QO|B hqDN= VwQ xm 'p=Oww w u=w}r=U swO OQm}wQ u=wvax@ [18] = Q}rwt w uwUv}mD= 4 C}Dm q=DU= KQ] Ow@y@ = Q nv}rDy T 2 Ovv=wD|t `k=w QO xOW Qm P |=yVwQ "Ov}wo|t SW2 = Q u; QFwt =yxO=O QO OwHwt CQB \=kv R= |O=}R O=OaD X}NWD QO Rwvy =t= 'OvWN@ [8] "OvDU}v VwQ pk=OL w 5 (MVE) Q=w|[}@ sHL pk=OL VwQ wO [19] wUQ |O=}R O=OaD X}NWD |xrUt |= Q@ = Q 6 (MCD) Tv=} Q=wwm |xOvvmu}}aD Q=}U@ C=@U=Lt x@ R=}v VwQ wO Qy 'p=L u}= =@ "OvOQm O=yvW}B CQB \=kv R= MVE ?} QkD OQwt QO |Q=}U@ |=yEL@ xDWPo |xyO wO QO "OQ=O u}ovU xO=iDU= C=ar=]t R= |NQ@ QO 'Q}N= |xyO QO =t= "CU= xOW s=Hv= MCD w "CU= xOW R=e; xQ}eDtOvJ pQDvm Q=Owtv Ow@y@ |= Q@ |}xWwNp}rLD |=yVwQ R= R= [20] s}m s=@ w nv=m 'uw}UQoQ |}xWwN p}rLD R= [10] |r= w nvw= p=Ft |= Q@ |@D=QtxrUrU |}xWwN p}rLD R= [8] Vv=Q=mty w u=i 'k-means |}xWwN p}rLD |Ov@xWwN |=yOQm}wQ "Ov=xOQm xO=iDU= SW2 xQ}eDtOvJ pQDvm Q=Owtv |= Q@ =@ =Pr [8] "CU= pQDvm Q=Owtv |=yVwQ R= QDOt;Q=m |D=@U=Lt ^=Lr R= , qwtat QO [8] 'CU= T=UL CQB |=yxO=O x@ C@Uv |}xWwN p}rLD xm u}= x@ xHwD R=i QO pQDvm Q=Owtv |L=Q] QO |@D=QtxUrU |Ov@xWwN l}vmD R= VywSB u}= w OwW|t xO=iDU= C=Oy=Wt R= C=@F=@ |}xawtHt uOQw; CUO x@ |= Q@ 'pw= CQB |=yxO=O |x}rw= QDr}i u=wvax@ |}xWwN |=yOQm}wQ R= xO=iDU= Q@ RmQtD "CU= CQB |xO=O u}OvJ uO=O MQ 'Q=Owtv uOW pQDvm R= GQ=N G}=Q pt=wa R= |m} C@Uv 'nv}rDy T 2 pQDvm Q=Owtv QO , =YwYNt P w |=yQDt= Q=B OQw; Q@ "CU= pQDvm Q=Owtv R= xOt; CUO x@ |=yxQ=t; =t= Ov=T=UL CQB |xOy=Wt l} x@ 'OW=@ xDW=O OwHw CQB xOy=Wt u}OvJ xm |Dkw =yQoOQw;Q@ u}= T=U= Q@ 'QwmPt |= Q@ |O=}R |=yVywSB QO OW xDio xm Qw]v=ty [21] "Ovm|t pta h}a[ Q=}U@ O=OaD X}NWD QO Rwvy =t= 'CU= xOW s=Ok= 'nv}rDy T 2 pQDvm Q=Owtv Ow@y@ p}rLD R= xO=iDU= p}rO =Pr [8] "OvDU}v QFwt =yxO=O QO OwHwt CQB \=kv R= |O=}R u=mt= |@D=QtxrUrU |Ov@xWwN xm CU= u}= Q[=L j}kLD QO |@D=QtxrUrU |}xWwN =yxO=O |t=tD uwJ u}vJty "OQ=O = Q =yxO=O u}@ QO hrDNt |=yxrY=i R= xO=iDU= sy=Qi hrDNt |=ywor= =@ CQB \=kv |}=U=vW u=mt= 'OvwW|t xU}=kt Qo}Om} =@ [10] "OwW|t l} X}NWD T=U= Q@ =OD@= |O=yvW}B pQDvm Q=Owtv OQmrta |@=} RQ= |= Q@ "OwW|t xO=iDU= [22] T=oQ=w C} RmQt sOa XN=W R= xO=iDU= =@ w CQB |xO=O R= GQ=N u}ov=}t Q=OQ@ Q}}eD COW |xOvyOu=Wv (ncp) C} RmQt sOa XN=W "CU= 1 |x]@= Q j@=]t ( 0 ) u}ov=}t pQDvm CLD u}ov=}t Q=OQ@ R= ( 1 ) pQDvm xDUv=O =yxO=O QO p=vo}U l} smCUO X}NWD = Q VwQ CkO Q=}at T=oQ=w "CU= ncp = ( 1 0 ) 0 X 1 ( 1 0 ) (5) T=U= Q@ OQmrta |@=} RQ= R= 'T=oQ=w |@=} RQ= VwQ Q@ xwqa j}kLD u}= QO u}= QO "OwW|t xO=iDU= R}v [11] =oDQ= w wQ=ir= CQB |...…”
mentioning
confidence: 99%
“…The attribute control charts are relatively easy to apply as compared with variable control charts. As mentioned by Bersimis, “expensive and time‐consuming measurements may be avoided by attributes inspection.” More details and application of control charts can be seen in previous studies …”
Section: Introductionmentioning
confidence: 99%
“…More details and application of control charts can be seen in previous studies. [2][3][4][5][6][7][8][9] The c and u charts have been widely used in the industry to monitor the number of nonconforming items for the univariate process. However, monitoring more than one quality characteristic is also required in many industries such as telecommunication and electrolysis processes.…”
Section: Introductionmentioning
confidence: 99%
“…Abbassi and Riaz suggested control chart for Phase I. Aksioma et al proposed the use of multivariate regression adjustment control charts to determine the mean and variability of the production process. Ong and Alih proposed a control chart that is based on cluster‐regression adjustment for monitoring individual characteristics. Abbassi and Riaz proposed in SPC by making dual use of auxiliary information.…”
Section: Introductionmentioning
confidence: 99%