海洋数据集的质量检查验收抽样方法翻译.docx

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海洋数据集的质量检查验收抽样方法翻译.docx

海洋数据集的质量检查验收抽样方法翻译

Acceptancesamplingplanofqualityinspectionforoceandataset

Comparedwiththedatasetofindustrialproducts,oceandatasetshaveseveraldistinctcharacteristics,suchaslargequantitiesandbeingmulti-source,multi-dimensionandmulti-type.Basedontheacceptancequalitylevel(AQL)andlimitqualitylevel(LQL),wedesignedanacceptancesamplingplanofqualityinspectionforoceandatasets(ASP-OD),usedthisplantoinspectoceandatasetquality,andevaluateditsadvantage.ASP-ODhasaconsistentandstablediscriminatorypowerindependentoflotsize’whichsolvestheproblemof‘strictnessforlargelotsize,tolerationforsmalllotsize’inthepercentsamplingplan.ASP-ODestablishesarelationshipbetweenlotsizeandsamplingsize,andprovidesaplanforagivenlotsize.ThisplanovercomesthedeficiencyofISO2859-basedsamplingplans,differentlotsizecorrespondingtothesamesamplingplan,inthequalityinspectionofoceandatasets.Collectively,thisstudysuggeststhatASP-ODisasuitablesamplingplanfortheinspectionofoceandatasetquality.

Keywords:

oceandataset;qualityinspection;AQL;LQL;acceptancesamplingplan

1.Introduction

Withtherapiddevelopmentofoceanmonitoringtechnology,hugeamountsofoceandatahavebeencollectedfromvarioussources,suchasremotesensingimages,buoys,cruisedataandunderwaterobservationdata.Thus,oceandatasetshavegraduallybecomeaclassicexampleofmulti-modalbigdata.However,thebiggestobstacleforpreparinganoceanatlasishowtocontrolthequalityofdata.Thequalitycontrolofoceandatasetsisanimportantpartofanyoceananalysis/forecastingsystem.Usingoracceptingerroneousdatacouldleadtoaninvalidconclusionoranincorrectanalysis.Bycontrast,rejectingextremebutvaliddatasometimescouldcausethemissingofkeyeventsandanomalousfeatures.Todate,agrowingnumberofscientistshavebeguntofocusonthequalityinspectionofoceandata.Anautomatedqualitycontrolsystemwasproposedtoinspectoceanictemperatureandtemperature-salinityprofiles.TheSurfaceOceanCO2Atlas(SOCAT)projectwasperformedtoinvestigatetheglobaldatasetofmarinesurfaceCO2.Duringthisproject,alldataweredesignedtobeputinauniformformatfollowingastrictprotocol.Qualitycontrolwasconductedaccordingtoclearlydefinedcriteria.Inaddition,thequalityandconsistencyofNASAoceancolourdata,includingspectralwater-leavingreflectance,chlorophyll-αconcentration,anddiffuseattenuation,wereexaminedusingcommonalgorithmsandimprovedinstrumentcalibrationknowledge.Thesestudieshaveputforwardseveralqualityinspectionplansforoceandata,especiallyforoneorafewelements.Oceandatasetsareusuallycomposedofmulti-element,multi-scaleandmulti-temporalgeo-informationelements.Moreover,thereisapotentialinterplaybetweendifferentelementsinanoceandataset.Thus,itisrequiredtoproposeanovelacceptancesamplingplantoinspectthequalityofoceandataasacompleteandindivisibledataset.

Thegoalofqualityinspectionistojudgewhetherthedatareachtherequiredqualitythroughasamplingplan.Currently,theoptimisationofacceptancesamplingplanshasbeenconductedtosatisfythebalancebetweeninspectionriskandinspectioncostforthequalityinspectionofindustrialproducts.Someacceptancesamplingplanshavebeendesignedbasedoninspectionrisk,whichaimedtominimiseeithertheproducer’sriskortheconsumer’srisk.Someotheracceptancesamplingplansweredesignedbasedontheinspectioncost,whichaimedtoreducethesamplingnumber.Theseexistingplansaremainlyusedtoinspectthequalityofindustrialproducts.Generally,industrialproductsareproducedinacontrolledandconsistentmanner,andusuallyhavecertainitemsanduniformunits.Comparedwithindustrialproducts,oceandatahavesomedistinctcharacteristics,suchasbeingmulti-source,multi-dimensionalmulti-type,multi-time-state,withdifferentaccuracyandnonlinearity.Thus,theseexistingacceptancesamplingplansarenotsuitableforthequalityinspectionofoceandatasets.

Inthispaper,wedesignedanacceptancesamplingplanofqualityinspectionforanoceandataset(ASP-OD).Insection2,theconceptualframework,derivationprocessandtheformulasofASP-ODareshown.Insection3,weapplytheASP-ODtoinspectthequalityofoceandata,andcompareitsadvantagesoverexistingacceptancesamplingplans.Insection4,wesummarisethisstudy,andproposethatASP-ODisasuitableacceptancesamplingplanforthequalityinspectionofoceandatasets.

2.DesignofASP-OD

ThetheoryofASP-OD

TheacceptancesamplingplanofqualityinspectionforoceandatasetswasdesignedasS(N,n,c).Here,Nisthelotsizeandcomprisesallinspectedoceandatafromwhichthesampleistobetaken;nisthesamplesizeandconsistsofanumberofsamplingunitsselectedfromthelotsize,whichisacompromisebetweentheaccuracyofproductinspectionandthecostoftheinspection;c,theacceptancenumber,isusedtojudgewhethertheinspectedoceandatameettherequirementoftheoceandataconsumer.Theprocessofqualityinspectionisshownasbelow:

(1)n-sampleddataareextractedfromthelotsizeN;

(2)thequalityofextracteddataisinspectedonebyone;(3)ifthenumberofnon-conformingdata(d)islargerthantheacceptancenumber(c),thequalityofinspectedoceandataisconsideredtobenon-conforming.Otherwise,thequalityofinspecteddataisconsideredtobeconforming.

BasedontheacceptancesamplingplanS(N,n,c),thepercentnon-conforming(P)iscalculatedby

(1)

whereDisthenumberofnon-conformingoceandatainthetotaloceandataset.

Generally,itisdifficulttoobtainthevaluesofDandPunlessthetotaldataare100percentinspected.Sampledoceandataareusedtoestimatetheparametersforlotsize.Thus,Pisusuallyestimatedusingthepercentnon-conformingestimator(p);piscalculatedby

(2)

wheredisthenumberofnon-conformingoceandatainthesampleddataset.

Basedontheabove-mentionedparameters,theacceptancequalityprobability(L(p))oftheacceptancesamplingplanS(N,n,c)canbecalculatedby

(3)

(0≦d≦n,d≦D,n-d≦N-Np)

Operatingcharacteristiccurves(OC-curve)arepowerfultoolsinthefieldofqualitycontrol,astheydisplaythediscriminatorypowerofanacceptancesamplingplan.Here,weconsideredthequalitylevelasthehorizontalaxisandthecorrespondingacceptanceprobabilityastheverticalaxis.TherelationshipbetweenL(p)andtheproportionpofnon-conformingitemswasrepresentedastheOC-curveofsamplinginspectioninarectangularcoordinatesystem.

Generally,consideringtheinterestsofboththeproducersandconsumers,acceptancequalitylevel(AQL)andlimitingqualitylevel(LQL)wereadoptedtodesigntheacceptancesamplingplan.LQLisamaximumqualitylevelofdefectivestoleratedintheinspectiondata.WhenthequalitylevelisworsethanLQL,theconsumerstendtorejecttheinspecteddata.AQLrepresentsameanqualitylevelofdefectivesamplestoleratedintheinspection.IfthequalityleveloftheinspecteddataisbetterthanAQL,theproducerstendtoaccepttheinspecteddata.

Tomeettherequirementofbothproducersandconsumers,AQLandLQLweretakenintoaccountintheASP-ODdesign,whichwasshownastwopointsintheOC-curve(Figure1).Thefirstpointisdenotedas

 

Figure1.OC-curveoftheacceptancesamplingplan

(p0,1-α)p0,i.e.AQL,istheproportionofnon-conformingitemsthatcanbetoleratedtojudgethattheentirelotcanbeaccepted.α,theproducer’srisk,istheprobabilityofrejectionoftheinspectedloteventhoughthequalitylevelofthelotisequaltoorbetterthanAQL.Thesecondpointisdenotedas(p1,β).p1,i.e.LQL,istheproportionofnonconformingitemsthatcanbetoleratedtojudgethattheentirelotcanberejected.β,theconsumer’srisk,istheprobabilityofacceptanceoftheinspectedloteventhoughthequalitylevelofthelotisequaltoorworsethanLQL.

UndertheconditionofthetwopointsontheOC-curve,therelationshipbetweenthelotsize,thesamplesizeandtheacceptancenumberiscalculated.Theproblemcouldbeformulatedasanonlinearprogrammingproblem.

TheASP-ODmodel

Fromtheperspectiveoftheproducer,theacceptancesamplingplanshouldsatisfythefollowingcondition:

(4)

D1,apositiveinteger,isthenumberofnon-conformingdataelementsintheinspectedoceandataset.Whentheproportionofnon-conformingdataisequaltoAQL,thevalueofD1iscalculatedby

D1=round(N·p1)(5)

Fromtheperspectiveoftheconsumer,theacceptancesamplingplanshouldsatisfythefollowingcondition

(6)

D2,apositiveinteger,isthenumberofnonconformingdataelementsintheinspectedoceandataset.Whentheproportionofnonconformingdataisworsethanthelimitingqualitylevel(LQL),thevalueofD2iscalculatedby

D2=round(N·p2)(7)

Thetotalresidualerror,ε,meansthesumofresidualerrorsoftheacceptanceprobabilityatbothAQLandLQL.Theroleofεisusedforthecalculationofthevalueofnandcintheacceptancesamplingplan.Here,wechosetheminimalεtodeterminetheoptimalnandcfortheacceptancesamplingplanatAQLandLQL.Theoptimalacceptancesamplingplanisformulatedasthefollowingnonlinearoptimisationproblem

s.t.

(8)

(9)

ε1istheresidualerroroftheacceptanceprobabilitybasedontheproducer’srisk.ε2istheresidualerroroftheacceptanceprobabilitybasedontheconsumer’srisk.Thenonlinearoptimisationproblemissolvedbasedontheiterativealgorithm.TheiterativealgorithmisimplementedinMatlabsoftware.

3.Casestudy

Inthissection,weemployedASP-OD,thepercentsamplingplan(PSP)andtheISO2859-basedsamplingplan(I

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