A Review of Sequential Analysis

Sequential analysis concerns statistical evaluation in situations in which the number, pattern, or composition of the data is not determined at the start of the investigation, but instead depends upon the information acquired throughout the course of the investigation. Expanding the use of sequential analysis has the potential to save resources and reduce test time (National Research Council, 1998). This paper summarizes the literature on sequential analysis and offers fundamental information for providing recommendations for its use in DoD test and evaluation....

2020 · Rebecca Medlin, John Dennis, Keyla Pagan-Rivera, Leonard Wilkins, Heather Wojton

A Validation Case Study- The Environment Centric Weapons Analysis Facility (ECWAF)

Reliable modeling and simulation (M&S) allows the undersea warfare community to understand torpedo performance in scenarios that could never be created in live testing, and do so for a fraction of the cost of an in-water test. The Navy hopes to use the Environment Centric Weapons Analysis Facility (ECWAF), a hardware-in-the-loop simulation, to predict torpedo effectiveness and supplement live operational testing. In order to trust the model’s results, the T&E community has applied rigorous statistical design of experiments techniques to both live and simulation testing....

2020 · Elliot Bartis, Steven Rabinowitz

Circular Prediction Regions for Miss Distance Models under Heteroskedasticity

Circular prediction regions are used in ballistic testing to express the uncertainty in shot accuracy. We compare two modeling approaches for estimating circular prediction regions for the miss distance of a ballistic projectile. The miss distance response variable is bivariate normal and has a mean and variance that can change with one or more experimental factors. The first approach fits a heteroskedastic linear model using restricted maximum likelihood, and uses the Kenward-Roger statistic to estimate circular prediction regions....

2020 · Thomas Johnson, John Haman, Heather Wojton, Laura Freeman

T&E Contributions to Avoiding Unintended Behaviors in Autonomous Systems

To provide assurance that AI-enabled systems will behave appropriately across the range of their operating conditions without performing exhaustive testing, the DoD will need to make inferences about system decision making. However, making these inferences validly requires understanding what causally drives system decision-making, which is not possible when systems are black boxes. In this briefing, we discuss the state of the art and gaps in techniques for obtaining, verifying, validating, and accrediting (OVVA) models of system decision-making....

2020 · Daniel Porter, Heather Wojton

Test & Evaluation of AI-Enabled and Autonomous Systems- A Literature Review

We summarize a subset of the literature regarding the challenges to and recommendations for the test, evaluation, verification, and validation (TEV&V) of autonomous military systems. This literature review is meant for informational purposes only and does not make any recommendations of its own. A synthesis of the literature identified the following categories of TEV&V challenges Problems arising from the complexity of autonomous systems, Challenges imposed by the structure of the current acquisition system,...

2020 · Heather Wojton, Daniel Porter, John Dennis

Trustworthy Autonomy- A Roadmap to Assurance -- Part 1- System Effectiveness

The Department of Defense (DoD) has invested significant effort over the past decade considering the role of artificial intelligence and autonomy in national security (e.g., Defense Science Board, 2012, 2016, Deputy Secretary of Defense, 2012, Endsley, 2015, Executive Order No. 13859, 2019, US Department of Defense, 2011, 2019, Zacharias, 2019a). However, these efforts were broadly scoped and only partially touched on how the DoD will certify the safety and performance of these systems....

2020 · Daniel Porter, Michael McAnally, Chad Bieber, Heather Wojton, Rebecca Medlin

Visualizing Data- I Don't Remember that Memo, but I Do Remember that Graph

IDA analysts strive to communicate clearly and effectively. Good data visualizations can enhance reports by making the conclusions easier to understand and more memorable. The goal of this seminar is to help you avoid settling for factory defaults and instead present your conclusions through visually appealing and understandable charts. Topics covered include choosing the right level of detail, guidelines for different types of graphical elements (titles, legends, annotations, etc.), selecting the right variable encodings (color, plot symbol, etc....

2020 · Matthew Avery, Andrew Flack, Brian Vickers, Heather Wojton