
INTERDISCIPLINARY ENGINEER/ OPERATIONS RESEARCH ANALYST
Naval Air Systems CommandThis is a public notice flyer to notify interested applicants of anticipated vacancies through the STRL Direct Support Direct Hire Authorty. Applications will not be accepted through this flyer. Interested applicants must follow the directions in the "
You will author, review, and decompose system-levelrequirements for
RNP RNAV
capabilities from top-level Navy FunctionalRequirements Documents (FRDs) and PBN Specifications.You will serve as the PBN/RNP Subject Matter Expert (SME) in SETR design reviews (SRR, PDR, CDR), technical working groups, and supplier technical interchange meetings.You will assist in developing the certification strategy for new PBN navigation capabilities and legacy platform upgrades, addressing both bespoke military systems and the integration of Commercial-Off-The-Shelf (COTS) avionics.You will conduct Navigation System compatibility and performance testing with Fleet and Test Pilots in high-fidelity simulators and System Integration Labs (SILs) for both regression analysis and formal "for score" certification events.You will support Flight Test in the development of test procedures, and flight testrequirements to demonstrate compliance with
RNP RNAV
performance standards.You will provide expert guidance on the interpretation and application of FAA, EASA, and DoD PBN regulations, including Advisory Circulars, TSOs, RTCA DO-standards, and Military Standards.You will interface directly with program management, flight test directorates, and certification authorities to articulate compliance approaches and resolve complex technical issues.
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