Data Analytics Tools for the Automated Logistics Environment (ALE)
Navy SBIR 2019.1 - Topic N191-007 NAVAIR - Ms. Donna Attick - [email protected] Opens: January 8, 2019 - Closes: February 6, 2019 (8:00 PM ET)
TECHNOLOGY
AREA(S): Air Platform ACQUISITION
PROGRAM: PMA231 E-2/C-2 Airborne Tactical Data System The
technology within this topic is restricted under the International Traffic in
Arms Regulation (ITAR), 22 CFR Parts 120-130, which controls the export and
import of defense-related material and services, including export of sensitive
technical data, or the Export Administration Regulation (EAR), 15 CFR Parts
730-774, which controls dual use items. Offerors must disclose any proposed use
of foreign nationals (FNs), their country(ies) of origin, the type of visa or
work permit possessed, and the statement of work (SOW) tasks intended for
accomplishment by the FN(s) in accordance with section 3.5 of the Announcement.
Offerors are advised foreign nationals proposed to perform on this topic may be
restricted due to the technical data under US Export Control Laws. OBJECTIVE:
Develop a toolset that would leverage machine learning and analytics to analyze
the system design with Automated Logistics Environment (ALE) data collected
across the fleet to design and develop improved maintenance procedures that
will improve readiness. DESCRIPTION:
The E-2D Advanced Hawkeye has an onboard data retrieval system, the ALE, that
monitors and records all bus communications, systems sensors, and built-in test
capability on every flight the aircraft makes, from the time the power is
turned on until engines are shut down in highly variable operating
environments. After each flight, the maintenance personnel review the data
using the E-2D ALE viewing tool to assist in identifying maintenance required
to be performed. Each flight file is stored for historical and analytical
purposes. The ALE environment, although more of a receive and display system,
has the potential to provide a deeper analytical capability. The longer the systems
are in the fleet, product teams are discovering the need to have ALE provide
side-by-side and overlay comparisons of performance metrics. ALE can currently
do this, albeit only through a manual process using the ALE viewing tool to see
faults or trends on that aircraft.� Built-in test (BIT) trending needs to be
more comprehensive in the sense that one BIT failure has value but seen side by
side with associated systems that trend within the same flight parameters
provides greater system health and diagnostics. For instance, if the historical
data could be queried to display the last 20 flights of a particular aircraft
and accumulate a percentage of confidence above average BIT failures,
associated trends could help determine more accurately the location of the
issue. Another example is if at 10K feet, humidity increases in the dome, and
temperatures increase in the amplifiers, this could indicate the presence of
accumulating water. ALE has limited capability to view data from multiple
flights or aircrafts. Each product team has a system(s) with critical
components that need up front metrics for that flight, and the ability to see
that system�s cumulative flight BIT trending. From here the vision is endless
if ALE were able to reach back into supply and work order data. By analyzing
factors such as heat/vibration and operational usage Navy personnel could
better understand "bad actors", which are the problematic aircraft
with chronic low reliability and potentially the greatest single driver of readiness.
Data mining can assist maintenance troubleshooting by analyzing bit-code data
generated during flight; then maintainers can be provided alternate paths in
hard-to-troubleshoot cases. By analyzing the data, the product team can
understand the normal operating parameters and then could potentially provide
warnings for catastrophic incidents by detecting/predicting these incidents
before they occur. Through predictive models using ALE data, there could be
some potential to consolidate scheduled maintenance actions. Sample data will
be provided during Phase II. PHASE
I: Utilize mock up, wireframes, and conceptual design to identify areas within
Automated Logistics Environment (ALE) that support trend analysis capability as
it relates to supportability, reliability and ultimately maintainability of the
E-2D platform. Design and demonstrate the feasibility of a toolset to analyze
ALE data. Determine key performance metrics of the platform that are of value
to the maintainer, IPT, and the enterprise and not necessarily a single
solution. The Phase I will include prototype plans to be developed under Phase
II. PHASE
II: Develop a prototype software toolset capable of machine learning, data
mining, and identifying trends to improve maintenance procedures and
readiness.� Identify whether this is a web-based solution or a closed loop
effort as IT framework, methodologies, and technologies determine the
sustainment barriers once fielded. Adhere to agnostic, non-proprietary,
interoperable and best industry development processes/ technologies as this
will ensure seamless integration of the toolset. Demonstrate the prototype
toolset. PHASE
III DUAL USE APPLICATIONS: Finalize development and perform testing. Transition
the technology and integrate the final developed toolset into the E-2D ALE. The
prototype tool set could be used for commercial aircraft to improve maintenance
procedures and readiness. The automotive industry, construction, or any
industry utilizing vehicles would benefit from this technology development. REFERENCES: 1.
Hess, A., Calvello, G., and Dabney, T.� �PHM A Key Enabler for the JSF
Autonomic Logistics Support Concept.� IEEE Aerospace Conference 2004 (IEEE Cat.
No.04TH8720): Big Sky. https://ieeexplore.ieee.org/abstract/document/1368171/ 2.
Lee, J., Bagheri, B., and Kao, H. �Recent Advances and Trends of Cyber-Physical
Systems and Big Data Analytics in Industrial Informatics.� International
Conference on Industrial Informatics (INDIN), Cincinnati, OH, 2014. https://pdfs.semanticscholar.org/d217/d5cfe218845da76852ce21fb46499e5c972b.pdf 3.
Reis, G., and Saha, A. �Watson Content Analytics: How Cognitive Computing is
Transforming Aircraft Maintenance.� MRO Americas, April 2017. http://mromarketing.aviationweek.com/downloads/mro2017/presentations/IBM-HowCognitiveComputingisTransformingCommercialAircraftMaintenance.pdf KEYWORDS:
Aircraft; Maintenance; Logistics; Machine Learning; Readiness; ALE
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