Analyzing cost, schedule, and engineering variances on acquisitions programs

MBA Professional Report === This study of cost, schedule, and engineering variance (CV, SV, and EV) data identified in the Selected Acquisition Reports (SARs) of acquisition programs indicates that early program variances are significantly associated with future program variances. An enhanced unders...

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Bibliographic Details
Main Authors: Griffin, William E., Schilling, Michael R.
Other Authors: Hawkins, Timothy G.
Published: Monterey, California. Naval Postgraduate School 2012
Online Access:http://hdl.handle.net/10945/10615
Description
Summary:MBA Professional Report === This study of cost, schedule, and engineering variance (CV, SV, and EV) data identified in the Selected Acquisition Reports (SARs) of acquisition programs indicates that early program variances are significantly associated with future program variances. An enhanced understanding of CV, SV, and EV interrelationships and the connection between these program variances and the cost and schedule Earned Value contract variances will allow program managers to better understand the full programmatic impact of a variance problem. This understanding could also aid future researchers in identifying best practices in recovering from the identification of such a problem. In addition, the identification of CV, SV, and EV differences across Major Defense Acquisition Program (MDAP) types highlights the connection between segments of the defense industry and the development of best program management practices. This research first examines data using traditional descriptive statistics in order to determine whether identifiable patterns exist among MDAPs and their associated contracts. A primary objective of the analysis is to develop empirical models that employ cross-sectional, time-series data contained in the SARs. These models help explain the full effect of fixed-price incentive RandD contracts within MDAPs on cost and schedule variance during both engineering and manufacturing development (EMD) and production and deployment. It is anticipated that this analysis will also help close any existing gaps in the understanding of program versus contract management data.