N18A-T009
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TITLE:
Situational Awareness for Mission Critical Ship Systems
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TECHNOLOGY
AREA(S): Information Systems
ACQUISITION
PROGRAM: Robust Combat Power Control FNC
OBJECTIVE:
Develop machine learning and data analytics methods that enhance state and
situational awareness (SA) for shipboard machinery systems.
DESCRIPTION:
The Navy is planning to develop, qualify, supply, and maintain a standard,
Navy-owned, software baseline for surface ship machinery control and condition
monitoring systems (MCS).� Enhancements to the MCS baseline shall be capable of
running on a JAVA virtual machine. This MCS software baseline will have a
common look and feel, operating system, algorithmic infrastructure, application
interfaces, and qualification and transition process for new software modules,
across all future delivered surface platforms.� This will include robust
cybersecurity assurance.� The software products developed under this STTR topic
are primarily algorithmic in nature (vice standalone products that are directly
human-usable upon delivery), and as such will be incorporated and integrated
directly into the algorithmic base of the standardized MCS baseline, using all
the pre-established guidelines, processes, and procedures thereof.
Naval vessels are replete with state-of-the-art sensors that monitor vital ship
and auxiliary system functions.� Battle situations or other circumstances that
create rapid loss of offensive, operational, communication, and auxiliary
capacity present a series of challenges to operators tasked with rapidly
restoring capabilities.� Lack of prioritization of the importance and larger
contextual meaning of multiple alerts can prevent the operator from rapidly
reclaiming optimum state awareness for both the human operator and the
autonomous control system.� New tools and technologies are required to support
current alerts and control systems and help improve situational certainty so
that best-fit responses are applied as soon as possible.� Major gains have been
made in autonomy and Augmented Intelligence (AI), but additional work is
required for both automated response and operator situational awareness to
produce faster and better decisions.� Advances in data science, data fusion,
and machine learning show promise in effective management of continuous streams
of data to supplement current control systems, producing higher informational
accuracy in less time and getting the right data to operators when needed to
produce more optimal crisis responses.� The use of cognitive technology and
machine learning can process sensor data rapidly and analyze events, find
patterns, paths, and options for configuring auxiliary system capabilities with
much greater speed and agility than those reliant solely on human interpretation
and decision making.� Innovative methodology will provide real-time decision
tools, as the integration of high-energy weapons and sensors requires the
machinery systems to coordinate the delivery of power and cooling resources in
an optimal manner to support sustained combat operations.� This advanced state
awareness methodology must be compatible with control methods being developed
under the Robust Combat Power Control Future Naval Capability Program.� It is
necessary to communicate intent to the machinery control system, present
options for solutions to plant alignments and resource allocations, maintain SA
even in the event of battle damage, and present the right alarms and
information in a manner that does not overload the human operator but rather elicits
information from the human in a fashion complementary to the machine
intelligence.
This topic seeks to use various data fusion technologies for analysis of
unstructured data (text, images, etc.) and structured (signal feeds, database
items, etc.) information to make determinations and useful observations around
the context of the information combining data sets for automated decision
support and predictive capabilities.� Information collected from equipment and
sensors are expected to be combined with other contextual information to
provide more advanced predictive models and recommended actions.� Leveraging
historical situational data, best practice scenarios, and other data collected
from past events can help to provide operators with valuable insights and
recommendations for potential actions not previously available.� The software
products developed are primarily algorithmic in nature (vice standalone
products that are directly human-usable upon delivery), and as such will be
incorporated and integrated directly into the algorithmic base of the
standardized MCS baseline, using all the pre-established guidelines, processes,
and procedures.
A machine learning system can also provide a pathway to better item-specific
predictive maintenance based upon analytics and learning over time.� The
cognitive system that this topic addresses could also use data collected from a
wide range of venues to develop predictive maintenance schedules based on
patterns, and actual utilization of specific critical components like
generators and pumps.
The solution sought will develop a user interface that allows an operator view
data quickly from numerous components alongside suggestions and patterns based
upon past data or reoccurring incidents from related components to allow them
to provide prioritized recommended actions.� The goal is not to replace human
interaction and decision-making, rather it is to support the operator by
leveraging AI technologies that combine data, locate patterns more rapidly, and
provide operators with a more comprehensive view of their present situation.
PHASE
I: Develop a concept for Situational Awareness for Mission Critical Ship
Systems for Naval Applications that meet the requirements described above.� The
small business will demonstrate the feasibility of the concept in meeting Navy
needs and will establish that the concept can be developed into a useful
product for the Navy.� Feasibility will be established by component evaluation
and analytical modeling.� The Phase I option, if awarded, will include the
initial layout and specifications to build the prototype in Phase II. Develop a
Phase II plan.
PHASE
II: Based on the results of Phase I and the Phase II Statement of Work (SOW),
the small business will develop a prototype for evaluation. The prototype will
be evaluated to determine its capability in meeting the performance goals
defined in Phase II SOW and the Navy requirements for Situational Awareness for
Mission Critical Ship Systems. System performance will be demonstrated through
prototype evaluation and modeling or analytical methods over the required range
of parameters including numerous deployment cycles.� Evaluation results will be
used to refine the prototype into an initial design that will meet Navy
requirements. The small business will assess integration and risk and develop a
Software Development Plan (SDP). The small business will prepare a Phase III
development plan to transition the technology to Navy use.
PHASE
III DUAL USE APPLICATIONS: Support the Navy in transitioning the technology for
Navy use.� The small business will develop Situational Awareness for Mission
Critical Ship Systems according to the Phase II SOW for evaluation to determine
its effectiveness in an operationally relevant environment.� The small business
will support the Navy for test and validation to certify and qualify the system
for Navy use.� The Navy is planning to develop, qualify, supply, and maintain a
standard, Navy-owned, software baseline for surface ship machinery control and
condition monitoring systems (MCS).� This MCS software baseline will have a
common look and feel, operating system, algorithmic infrastructure, application
interfaces, and qualification and transition process for new software modules,
across all future delivered surface platforms.� This will include robust
cybersecurity assurance.
Complex decision tools capable of alert prioritization and state awareness can
provide significant advantages in the fields of medicine and finance.� Advanced
cognitive controls are in demand in manufacturing, industrial facilities in
hazardous environments, space, shipbuilding, and in system management of power
plant and electric grid control.
REFERENCES:
1.
LeCun, Yann, Yoshua Bengio & Geoffrey Hinton. �Deep Learning.� Nature
International Weekly Journal of Science, Volume 521, Issue 7553, 27 May 2015. http://www.nature.com/nature/journal/v521/n7553/abs/nature14539.html
2.
Ngiam, J., A. Khosla, M. Kim, J. Nam, H Lee, and A.Y. Ng. �Multimodal Deep
Learning.� Proceedings of the 28th International Conference on Machine
Learning, Bellevue, WA, USA, 2011. http://machinelearning.wustl.edu/mlpapers/paper_files/ICML2011Ngiam_399.pdf
3.
Schmidhuber, J�rgen. �Deep Learning in Neural Networks: an Overview.� Neural
Networks, Volume 61, January 2015, Pages 85�117. http://doi.org/10.1016/j.neunet.2014.09.003
KEYWORDS: Alert Prioritization; Deep
Learning; Multimodal Learning; Informational Dosing; Augmented Intelligence;
Data Fusion
** TOPIC NOTICE **
These Navy Topics are part of the overall DoD 2018.A STTR BAA. The DoD issued its 2018.A BAA SBIR pre-release on November 29, 2017, which opens to receive proposals on January 8, 2018, and closes February 7, 2018 at 8:00 PM ET.
Between November 29, 2017 and January 7, 2018 you may talk directly with the Topic Authors (TPOC) to ask technical questions about the topics. During these dates, their contact information is listed above. For reasons of competitive fairness, direct communication between proposers and topic authors is not allowed starting January 8, 2018 when DoD begins accepting proposals for this BAA.
However, until January 24, 2018, proposers may still submit written questions about solicitation topics through the DoD's SBIR/STTR Interactive Topic Information System (SITIS), in which the questioner and respondent remain anonymous and all questions and answers are posted electronically for general viewing until the solicitation closes. All proposers are advised to monitor SITIS during the Open BAA period for questions and answers and other significant information relevant to their SBIR/STTR topics of interest.
Topics Search Engine: Visit the DoD Topic Search Tool at www.defensesbirsttr.mil/topics/ to find topics by keyword across all DoD Components participating in this BAA.
Proposal Submission: All SBIR/STTR Proposals must be submitted electronically through the DoD SBIR/STTR Electronic Submission Website, as described in the Proposal Preparation and Submission of Proposal sections of the program Announcement.
Help: If you have general questions about DoD SBIR program, please contact the DoD SBIR/STTR Help Desk at 800-348-0787 or via email at [email protected]
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