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An approach for selecting cost estimation techniques for innovative high value manufacturing products

机译:一种选择创新高价值制造产品成本估算技术的方法

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This paper presents an approach for determining the most appropriate technique for cost estimation of innovative high value manufacturing products depending on the amount of prior data available. Case study data from the United States Scheduled Annual Summary Reports for the Joint Strike Fighter (1997-2010) is used to exemplify how, depending on the attributes of a priori data certain techniques for cost estimation are more suitable than others. The data attribute focused on is the computational complexity involved in identifying whether or not there are patterns suited for propagation. Computational complexity is calculated based upon established mathematical principles for pattern recognition which argue that at least 42 data sets are required for the application of standard regression analysis techniques. The paper proposes that below this threshold a generic dependency model and starting conditions should be used and iteratively adapted to the context. In the special case of having less than four datasets available it is suggested that no contemporary cost estimating techniques other than analogy or expert opinion are currently applicable and alternate techniques must be explored if more quantitative results are desired. By applying the mathematical principles of complexity groups the paper argues that when less than four consecutive datasets are available the principles of topological data analysis should be applied. The preconditions being that the cost variance of at least three cost variance types for one to three time discrete continuous intervals is available so that it can be quantified based upon its geometrical attributes, visualised as an n-dimensional point cloud and then evaluated based upon the symmetrical properties of the evolving shape. Further work is suggested to validate the provided decision-trees in cost estimation practice.
机译:本文提出了一种方法,用于确定创新高价值制造产品成本估算的最合适技术,具体取决于可用的现有数据量。来自美国的案例研究数据,联合罢工战斗机(1997-2010)的年度摘要报告用于举例说明如何根据先验数据的属性,成本估计的某些技术比其他人更合适。专注的数据属性是识别适合于传播的模式的计算复杂性。基于建立的模式识别的数学原理来计算计算复杂性,该模式识别旨在争论应用标准回归分析技术至少42个数据集。本文提出,低于该阈值,应该使用通用依赖性模型和启动条件,并迭代地适应上下文。在具有少于四个数据集的特殊情况下,建议没有类比或专家意见的当代成本估算技术目前适用,如果需要更多的定量结果,必须探索交替技术。通过应用复杂性组的数学原理,纸质旨在认为,当不到四个连续的数据集时,应采用拓扑数据分析的原则。前提是,至少三个成本方差类型为一到三个时间离散连续间隔的成本方差可用,从而可以基于其几何属性来量化,可视化为N维点云,然后基于演化形状的对称性。建议进一步的工作验证成本估算实践中提供的决策树。

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