{"title":"Stochastic Model for Project Performance Control","authors":"P. Grabov, Amnon Sommer","doi":"10.1109/SMRLO.2016.101","DOIUrl":null,"url":null,"abstract":"A common problem, throughout various industries, is expansion of projects beyond their originally allocated resources (time and money). A recent report of American Society for Quality shows, that less than 35% of projects could be considered successful, i.e. they both met the project objectives and were completed for the time and cost they were agreed to. Traditional project management practices include project planning & control from a pure deterministic standpoint. A typical project schedule is based on a series of deterministic assumptions regarding the duration of each one of the activities that together, make up the project as a whole. The same is true about a budget, as the sum of deterministic estimates of each cost component. The proposed model for project performance control from schedule and budget points of view creates a planning & control framework, deployed in parallel to (but not instead of) the traditional methods. The model is based on the procedure of Probability Encoding developed by Lockheed-Georgia Company [1] (in the framework of NASA projects - end of 1980's). The utilization of this model is based on an iterative process that occurs at pre-defined Control-Points or Gates along the project timeline. Each iteration includes a process of collecting duration and cost estimates, given by a multi-disciplinary team of experts. Those estimates are encoded into corresponding distribution functions, and the model is developed to reflect the inter-relations and dependencies between project activity packages. Using a Monte-Carlo simulation, two distributions for the total cost and for the potential finish dates are characterized. These distributions reflect a whole range of potential project outcomes (in terms of schedule and cost), i.e. the uncertainty associated with the cost estimate as well as with the expected finish date.","PeriodicalId":254910,"journal":{"name":"2016 Second International Symposium on Stochastic Models in Reliability Engineering, Life Science and Operations Management (SMRLO)","volume":"35 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2016-02-15","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"2016 Second International Symposium on Stochastic Models in Reliability Engineering, Life Science and Operations Management (SMRLO)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/SMRLO.2016.101","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
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Abstract

A common problem, throughout various industries, is expansion of projects beyond their originally allocated resources (time and money). A recent report of American Society for Quality shows, that less than 35% of projects could be considered successful, i.e. they both met the project objectives and were completed for the time and cost they were agreed to. Traditional project management practices include project planning & control from a pure deterministic standpoint. A typical project schedule is based on a series of deterministic assumptions regarding the duration of each one of the activities that together, make up the project as a whole. The same is true about a budget, as the sum of deterministic estimates of each cost component. The proposed model for project performance control from schedule and budget points of view creates a planning & control framework, deployed in parallel to (but not instead of) the traditional methods. The model is based on the procedure of Probability Encoding developed by Lockheed-Georgia Company [1] (in the framework of NASA projects - end of 1980's). The utilization of this model is based on an iterative process that occurs at pre-defined Control-Points or Gates along the project timeline. Each iteration includes a process of collecting duration and cost estimates, given by a multi-disciplinary team of experts. Those estimates are encoded into corresponding distribution functions, and the model is developed to reflect the inter-relations and dependencies between project activity packages. Using a Monte-Carlo simulation, two distributions for the total cost and for the potential finish dates are characterized. These distributions reflect a whole range of potential project outcomes (in terms of schedule and cost), i.e. the uncertainty associated with the cost estimate as well as with the expected finish date.
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项目绩效控制的随机模型
在各个行业中,一个常见的问题是项目的扩展超出了最初分配的资源(时间和金钱)。美国质量协会最近的一份报告显示,只有不到35%的项目可以被认为是成功的,也就是说,它们既达到了项目目标,又在约定的时间和成本内完成了。传统的项目管理实践包括从纯粹确定性的角度进行项目计划和控制。一个典型的项目进度表是建立在一系列确定性假设的基础上的,这些确定性假设是关于组成整个项目的每一个活动的持续时间。预算也是如此,它是每个成本组成部分的确定性估计的总和。从进度和预算的角度提出的项目绩效控制模型创建了一个计划和控制框架,与传统方法并行部署(但不是取代)。该模型基于洛克希德-乔治亚公司[1]开发的概率编码程序(在NASA项目框架内- 80年代末)。该模型的利用基于一个迭代过程,该过程发生在项目时间轴上预定义的控制点或门。每个迭代都包括一个收集持续时间和成本估算的过程,由一个多学科的专家团队给出。这些估计被编码成相应的分布函数,模型被开发以反映项目活动包之间的相互关系和依赖关系。使用蒙特卡罗模拟,描述了总成本和潜在完成日期的两种分布。这些分布反映了整个范围的潜在项目结果(在进度和成本方面),即与成本估算和预期完成日期相关的不确定性。
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