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Reoptimization for Great Power Competition

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Department of the Air Force
 

 

 

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“We need these changes now; we are out of time to reoptimize our forces to meet the strategic challenges in a time of great power competition.”

~ Secretary of the Air Force Frank Kendall
 

Air Force & Space Force announce sweeping changes to maintain superiority amid Great Power Competition

The United States faces a time of consequence marked by significant shifts in the strategic environment. To remain ready, the U.S. Air Force must change.

In early 2024, the Department of the Air Force unveiled sweeping plans for reshaping, refocusing, and reoptimizing the Air Force and Space Force to ensure continued supremacy in their respective domains while better posturing the services to deter and, if necessary, prevail in an era of Great Power Competition. Through a series of 24 DAF-wide key decisions, four core areas which demand the Department’s attention will be addressed: Develop People, Generate Readiness, Project Power and Develop Capabilities.

Today, the Air Force once again finds itself at a critical juncture—an era of Great Power Competition marked by a new security environment, a rapidly evolving character of war, and a formidable competitor. This new era requires understanding its challenges and the attributes needed to succeed.

Embracing change is not a choice; it is a necessity. The Air Force must “reoptimize” into an enterprise prepared for high-end conflicts and long-term strategic competition.

 

Dr. Raj Sharma and Jasper Craig
Air Force Research Laboratory
Video by Kevin D Schmidt
Sept. 15, 2023 | 55:05
Description:
In this edition of QuEST, Dr. Raj Sharma and Jasper Craig with the SAFE Autonomy Team in ACT3 will discuss their work on implementation of reinforcement learning (RL) in a simulated environment.

Key Moments in the video include:
Quadrotor Dynamics
Differential flatness
Linear Quadratic Controller (LQR)
Formation Consensus
Reinforcement Learning (RL) for Trajectory Control
Benefits of LQR and RL
Future Work

Audience questions:
Kinematics that you used for this control - does that change for battery-powered or certainly gas-powered weight of the craft changes? How do people model that, or is it necessary to model that?
Would there be a place in that matrix you were describing a moment ago to account for some of those things?
Does every agent or node have perfect knowledge of the leader?
What mechanisms were used to work with Kerianne’s group - Summer Faculty Fellowship?
More


Space Force Great Power Competition

 
Department of the Air Force