欢迎来到麦多课文档分享! | 帮助中心 海量文档,免费浏览,给你所需,享你所想!
麦多课文档分享
全部分类
  • 标准规范>
  • 教学课件>
  • 考试资料>
  • 办公文档>
  • 学术论文>
  • 行业资料>
  • 易语言源码>
  • ImageVerifierCode 换一换
    首页 麦多课文档分享 > 资源分类 > PDF文档下载
    分享到微信 分享到微博 分享到QQ空间

    ANSI ASTM E2782-2017 Standard Guide for Measurement Systems Analysis (MSA).pdf

    • 资源ID:432671       资源大小:713.84KB        全文页数:26页
    • 资源格式: PDF        下载积分:5000积分
    快捷下载 游客一键下载
    账号登录下载
    微信登录下载
    二维码
    微信扫一扫登录
    下载资源需要5000积分(如需开发票,请勿充值!)
    邮箱/手机:
    温馨提示:
    如需开发票,请勿充值!快捷下载时,用户名和密码都是您填写的邮箱或者手机号,方便查询和重复下载(系统自动生成)。
    如需开发票,请勿充值!如填写123,账号就是123,密码也是123。
    支付方式: 支付宝扫码支付    微信扫码支付   
    验证码:   换一换

    加入VIP,交流精品资源
     
    账号:
    密码:
    验证码:   换一换
      忘记密码?
        
    友情提示
    2、PDF文件下载后,可能会被浏览器默认打开,此种情况可以点击浏览器菜单,保存网页到桌面,就可以正常下载了。
    3、本站不支持迅雷下载,请使用电脑自带的IE浏览器,或者360浏览器、谷歌浏览器下载即可。
    4、本站资源下载后的文档和图纸-无水印,预览文档经过压缩,下载后原文更清晰。
    5、试题试卷类文档,如果标题没有明确说明有答案则都视为没有答案,请知晓。

    ANSI ASTM E2782-2017 Standard Guide for Measurement Systems Analysis (MSA).pdf

    1、Designation: E2782 17 An American National StandardStandard Guide forMeasurement Systems Analysis (MSA)1This standard is issued under the fixed designation E2782; the number immediately following the designation indicates the year oforiginal adoption or, in the case of revision, the year of last rev

    2、ision. A number in parentheses indicates the year of last reapproval. Asuperscript epsilon () indicates an editorial change since the last revision or reapproval.1. Scope1.1 This guide presents terminology, concepts, and selectedmethods and formulas useful for measurement systems analy-sis (MSA). Me

    3、asurement systems analysis may be broadlydescribed as a body of theory and methodology that applies tothe non-destructive measurement of the physical properties ofmanufactured objects.1.2 UnitsThe system of units for this guide is not speci-fied. Dimensional quantities in the guide are presented onl

    4、y asillustrations of calculation methods and are not binding onproducts or test methods treated.1.3 This standard does not purport to address all of thesafety concerns, if any, associated with its use. It is theresponsibility of the user of this standard to establish appro-priate safety and health p

    5、ractices and determine the applica-bility of regulatory limitations prior to use.1.4 This international standard was developed in accor-dance with internationally recognized principles on standard-ization established in the Decision on Principles for theDevelopment of International Standards, Guides

    6、 and Recom-mendations issued by the World Trade Organization TechnicalBarriers to Trade (TBT) Committee.2. Referenced Documents2.1 ASTM Standards:2E177 Practice for Use of the Terms Precision and Bias inASTM Test MethodsE456 Terminology Relating to Quality and StatisticsE2586 Practice for Calculatin

    7、g and Using Basic StatisticsE2587 Practice for Use of Control Charts in StatisticalProcess Control3. Terminology3.1 Definitions:3.1.1 Unless otherwise noted, terms relating to quality andstatistics are defined in Terminology E456.3.1.2 accepted reference value, na value that serves as anagreed-upon

    8、reference for comparison, and which is derivedas: (1) a theoretical or established value, based on scientificprinciples, (2) an assigned or certified value, based on experi-mental work of some national or international organization, or(3) a consensus or certified value, based on collaborativeexperim

    9、ental work under the auspices of a scientific orengineering group. E1773.1.3 calibration, nprocess of establishing a relationshipbetween a measurement device and a known standard value(s).3.1.4 gage, ndevice used as part of the measurementprocess to obtain a measurement result.3.1.5 measurement proc

    10、ess, nprocess used to assign anumber to a property of an object or other physical entity.3.1.5.1 DiscussionThe term “measurement system” issometimes used in place of measurement process. (See 3.1.7.)3.1.6 measurement result, nnumber assigned to a propertyof an object or other physical entity being m

    11、easured.3.1.6.1 DiscussionThe word “measurement” is used in thesame sense as measurement result.3.1.7 measurement system, nthe collection of hardware,software, procedures and methods, human effort, environmen-tal conditions, associated devices, and the objects that aremeasured for the purpose of pro

    12、ducing a measurement.3.1.8 measurement systems analysis (MSA), nany of anumber of specialized methods useful for studying a measure-ment system and its properties.3.2 Definitions of Terms Specific to This Standard:3.2.1 appraiser, nthe person who uses a gage or measure-ment system.3.2.2 discriminati

    13、on ratio, nstatistical ratio calculatedfrom the statistics from a gage R control chart methodologies are as described in PracticeE2587.5. Characteristics of a Measurement System (Process)5.1 Measurement has been defined as “the assignment ofnumbers to material objects to represent the relations exis

    14、tingamong them with respect to particular properties. The numberassigned to some particular property serves to represent therelative amount of this property associated with the objectconcerned.” (1)35.2 A measurement system may be described as a collectionof hardware, software, procedures and method

    15、s, human effort,environmental conditions, associated devices, and the objectsthat are measured for the purpose of producing a measurement.In the practical working of the measurement system, thesefactors combine to cause variation among measurements of thesame object that would not be present if the

    16、system wereperfect. A measurement system can have varying degrees ofeach of these factors, and in some cases, one or more factorsmay be the dominant contributor to this variation.5.2.1 A measurement system is like a manufacturing pro-cess for which the product is a supply of numbers calledmeasuremen

    17、t results. The measurement system uses inputfactors and a sequence of steps to produce a result. The inputsare just varying degrees of the several factors described in 5.2including the objects being measured. The sequence of processsteps are that which would be described in a method orprocedure for

    18、producing the measurement. Taken as a whole,the various factors and the process steps work collectively toform the measurement system/process.5.3 An important consideration in analyzing any measure-ment process is its interaction with time. This gives rise to theproperties of stability and consisten

    19、cy. A system that is stableand consistent is one that is predictable, within limits, over aperiod of time. Such a system has properties that do notdeteriorate with time (at least within some set time period) andis said to be in a state of statistical control. Statistical control,stability and consis

    20、tency, and predictability have the same3The boldface numbers in parentheses refer to the list of references at the end ofthis standard.E2782 172meaning in this sense. Measurement system instability andinconsistency will cause further added overall variation over aperiod of time.5.3.1 In general, ins

    21、tability is a common problem in mea-surement systems. Mechanical and electrical components maywear or degrade with time, human effort may exhibit increas-ing fatigue with time, software and procedures may changewith time, environmental variables will vary with time, and soforth. Thus, measurement sy

    22、stem stability is of primary con-cern in any ongoing measurement effort.5.4 There are several basic properties of measurementsystems that are widely recognized among practitioners. Theseare repeatability, reproducibility, linearity, bias, stability,consistency, and resolution. In studying one or mor

    23、e of theseproperties, the final result of any such study is some assessmentof the capability of the measurement system with respect to theproperty under investigation. Capability may be cast in severalways, and this may also be application dependent. One of theprimary objectives in any MSA effort is

    24、 to assess variationattributable to the various factors of the system.All of the basicproperties assess variation in some form.5.4.1 Repeatability is the variation that results when a singleobject is repeatedly measured in the same way, by the sameappraiser, under the same conditions (see Fig. 1). T

    25、he term“precision” also denotes the same concept, but “repeatability”is found more often in measurement applications. The term“conditions” is sometimes combined with repeatability todenote “repeatability conditions” (see Terminology E456).5.4.1.1 The phrase “intermediate precision” is also used (for

    26、example, see Practice E177). The user of a measurementsystem shall decide what constitutes “repeatability conditions”or “intermediate precision conditions” for the given applica-tion. Typically, repeatability conditions for MSA will be asdescribed in 5.4.1.5.4.2 Reproducibility is defined as the var

    27、iation amongaverage values as determined by several appraisers whenmeasuring the same group of objects using identical measure-ment systems under the same conditions (see Fig. 2). In abroader sense, this may be taken as variation in average valuesof samples, either identical or selected at random fr

    28、om onehomogeneous population, among several laboratories or asmeasured using several systems.5.4.2.1 Reproducibility may include different equipmentand measurement conditions. This broader interpretation hasattached “reproducibility conditions” and shall be defined andinterpreted by the user of a me

    29、asurement system. (In PracticeE177, reproducibility includes interlaboratory variation.)5.4.3 Bias is the difference between a standard or acceptedreference value for an object, often called a “master,” and theaverage value of a sample of measurements of the object(s)under a fixed set of conditions

    30、(see Fig. 1).5.4.4 Linearity is the change in bias over the operationalrange of the measurement system. If the bias is changing as afunction of the object being measured, we would say that thesystem is not linear. Linearity can also be interpreted to meanthat an instrument response is linearly relat

    31、ed to the character-istic being measured.5.4.5 Stability is variation in bias with time, usually a driftor trend, or erratic behavior.5.4.6 Consistency is the change in repeatability with time.Asystem is consistent with time when the standard deviation ofthe repeatability error remains constant. Whe

    32、n a measurementsystem is stable and consistent, we say that it is a state ofstatistical control.5.4.7 The resolution of a measurement system has to dowith its ability to discriminate between different objects. Asystem with high resolution is one that is sensitive to smallchanges from object to objec

    33、t. Inadequate resolution may resultin identical measurements when the same object is measuredseveral times under identical conditions. In this scenario, themeasurement device is not capable of picking up variation as aresult of repeatability (under the conditions defined). Poorresolution may also re

    34、sult in identical measurements whendiffering objects are measured. In this scenario, the objectsthemselves are too close in true magnitude for the system todistinguish among.5.4.7.1 Resolution plays an important role in measurementin general. We can imagine the output of a process that is instatisti

    35、cal control and follows a normal distribution with mean, and standard deviation, . Based on the normal distribution,the natural spread of the process is 6. Suppose we measureobjects from this process with a perfect gage except for itsfinite resolution property. Suppose further that the gage we areus

    36、ing is “graduated” as some fraction, 1/k, of the 6 naturalprocess spread (integer k). For example, if k = 4, then thenatural process tolerance would span four graduations on thegage; if k = 6, then the natural process spread would span sixgraduations on the gage. It is clear that, as k increases, we

    37、would have an increasingly better resolution and would bemore likely to distinguish between distinct objects, howeverclose their magnitudes; at the opposite extreme, for small k,FIG. 1 Repeatability and Bias ConceptsFIG. 2 Reproducibility ConceptE2782 173fewer and fewer distinct objects from the pro

    38、cess would bedistinguishable. In the limit, for large k, every object from thisprocess would be distinguishable.5.4.7.2 In using this perfect gage, the finite resolutionproperty plays a role in repeatability. For very large k, theresulting standard deviation of many objects from the processwould be

    39、nearly the magnitude of the true object standarddeviation, .Ask diminishes, the standard deviation of themeasurements would increase as a result of the finite resolutionproperty. Fig. 3 illustrates this concept for a process centered at0 and having = 1 for k =4.5.4.7.3 The illustration from Fig. 3 i

    40、s a system capable ofdiscriminating objects into groups no smaller than 1.5 inwidth so that a frequency distribution of measured objects fromthis system will generally have four bins. This means fourdistinct product values can be detected. Using Fig. 3 and thetheoretical probabilities from the norma

    41、l distribution, it ispossible to calculate the variance of the measured values forvarious values of k. In this case, the variance of the measuredvalues is approximately 1.119 or 11.9 % larger than the truevariance. The standard deviation is, therefore, 1.058 or 5.8 %larger.5.4.7.4 This illustrates t

    42、he important role that resolutionplays in measurement in general and an MSA study inparticular. There is a subtle interaction between the degree ofresolution and more general repeatability and other measure-ment effects. In extreme cases of poor resolution, an MSAstudy may not be able to pick up a r

    43、epeatability effect (allobjects measured yield the same value). For an ideal system,for varying degrees of finite resolution as described in 5.4.7,there will be a component of variance as a result of resolutionalone. For positive integer value, k, when the smallest mea-surement unit for a device is

    44、1/kth of the 6 true natural processrange, the standard deviation as a result of the resolution effectmay be determined theoretically (assuming a normal distribu-tion). Table 1 shows the effect for selected values of k.5.4.7.5 A common rule of thumb is for a measurementdevice to have a resolution no

    45、greater than 0.6, where is thetrue natural process standard deviation. This would give usk = 10 graduation divisions within the true 6 natural processlimits. In that particular case, the resulting variance of allmeasurements would have increased by approximately 1.9 %(Table 1, k = 10).5.5 MSAis a br

    46、oad class of activities that studies the severalproperties of measurement systems, either individually, orsome relevant subset of properties taken collectively. Much ofthis activity uses well known methods of classical statistics,most notably experimental design techniques. In classicalstatistics, t

    47、he term variance is used to denote variation in a setof numbers. It is the square of the standard deviation. One ofthe primary goals in conducting an MSA study is to assess theseveral variance components that may be at play. Each factorwill have its own variance component that contributes to theover

    48、all variation. Components of variance for independentvariables are additive. For example, suppose y is the result ofa measurement in which three independent factors are at play.Suppose that the three independent factors are x1, x2, and x3.Asimple model for the linear sum of the three components is y

    49、 =x1+ x2+ x3. The variance of the overall sum, y, given thevariances of the components is:y25 12122132(1)5.5.1 We say that each variance on the right is a componentof the overall variance on the left. This model is theoretical; inpractice, we do not know the true variances and have toestimate their values from data.5.5.2 Statistical methods allow one to estimate the severalvariance components in MSA. Sometimes the analyst may onlybe interested in one of the components, for example, repeat-ability. In other cases, it may be two or more components thatmay be


    注意事项

    本文(ANSI ASTM E2782-2017 Standard Guide for Measurement Systems Analysis (MSA).pdf)为本站会员(roleaisle130)主动上传,麦多课文档分享仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对上载内容本身不做任何修改或编辑。 若此文所含内容侵犯了您的版权或隐私,请立即通知麦多课文档分享(点击联系客服),我们立即给予删除!




    关于我们 - 网站声明 - 网站地图 - 资源地图 - 友情链接 - 网站客服 - 联系我们

    copyright@ 2008-2019 麦多课文库(www.mydoc123.com)网站版权所有
    备案/许可证编号:苏ICP备17064731号-1 

    收起
    展开