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SBIR Topic DON26BZ01-NV02: Auto-Focus Detection Capability for SONAR Systems is a grant from the Department of the Navy that funds development of an automated signal processing capability to optimize detection of quiet underwater contacts by arrays of hydrophones. The work addresses a critical gap in current sonar systems, where operators face overwhelming data volumes and clutter from shipping, fishing, and marine life.
The goal is to develop an auto-focus algorithm that dynamically optimizes focus range and related parameters to improve detection performance without increasing false alert rates. Eligible applicants are Small Business Concerns (SBCs) only. Phase I awards are up to ,000.
The application deadline is April 29, 2026.
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Auto-Focus Detection Capability for SONAR Systems - SBIR Topic DON26BZ01-NV02 — BW&CO Auto-Focus Detection Capability for SONAR Systems - SBIR Topic DON26BZ01-NV02 Active specific topic DSIP 2 This topic was temporarily posted by the Department of War SBIR Program on March 2nd 2026 and removed the following day.
We believe this topic is planned to be released once the SBIR program is reauthorized; however, this topic may ultimately be modified or withdrawn. Notify Me When This is Released Notify Me When This is Released Develop an auto-focus signal processing capability to optimize detection of quiet contacts by arrays of hydrophones. Arrays of hydrophones are used to detect, classify, and localize contacts in the ocean environment.
Finding a contact, especially a quiet contact, is extremely challenging due to the large volume of data that needs to be searched as well as the large number of other noise sources (e.g., shipping, fishing, whales, etc.) that generate clutter on the displays.
Array signal processing, also known as beamforming, steers many beams to spatially filter the noise environment and generate a 3-D data volume that is a function of time, frequency, and bearing (i.e., steered beam) that are processed to generate several detection surfaces. Several parameters can be adjusted to optimize the detection of a signal on an array. One of these parameters is focus range.
(Other parameters are more sensitive and will be provided to Phase II awardees). However, only a limited number of display surfaces are typically generated due to processing constraints, and this may not provide the best opportunity to detect all signals. Furthermore, the operators typically have a large workload and are only able to search for a limited number of the available display surfaces.
Automation approaches have been developed for decades to help reduce operator workload. However, a well-trained operator can still detect lower Signal to Noise Ratio (SNR) signals than the state-of-the-art automation. The main reason for this is if the automation detection threshold is adjusted to detect lower SNR signals, it will cause an increase in the number of false alerts that detracts from the search process.
Another approach that is used to reduce the operator workload is ORing, which combines multiple Passive Narrow Band (PNB) displays by taking the maximum value at each time/frequency bin and then combines all contacts found on any of the displays onto a single display; however, it also takes the maximum of the noise bins. This results in ORing loss by increasing the noise floor and reducing the overall SNR.
As a result, automation has not yet solved the operator workload problem and operators are still required to conduct manual search on a limited number of detection surfaces. This leads to system losses that can at times be significant and offers an opportunity to mitigate those losses with a new processing paradigm.
The objective of this SBIR topic is to develop a signal processing approach that will auto-focus on the signal processing (much like a digital camera does) with respect to parameters such as focus range. There is currently nothing available commercially. The easiest example to understand is range focusing.
Let’s assume we are trying to track whales and there are several of them at different ranges. If we process a single far field (i.e., distant) focus range, then the close-range whales may barely be detected. Instead, if we process several focus ranges, let’s say 10, from close to far, there will be one focus range where each of the whales displays the clearest signal with the highest SNR.
Over time, the whales will swim closer and farther, and the best detection range will change. The problem is that the operator doesn’t have time to look at the detection surfaces for all 10 focus ranges so instead we need to combine them into a single display that contains the higher SNR instance of each whale regardless of the range where they are.
Different whales will also have different broadband signatures and would be more detectable when averaging over different frequency bands. The optimal frequency band may also vary as the ambient noise environment (such as nearby shipping and weather conditions) changes.
If the processing generates a large number of detections in multiple frequency bands, then a user will be able to find the most detectable instance of each whale over time. Processing multiple focus ranges is relatively straightforward and is largely just brute force processing.
The innovative part of this SBIR topic is the use of this larger data volume to build a combined display that contains the best representation of every available signal. This combined display would be the primary search space for the operators and would also be provided with other automation algorithms.
One of the keys to success will be developing an alternative to standard ORing that takes the maximum value at each pixel across the beams being ORed. It is speculated that improvements are possible since the SNR of the signals will be well behaved across the ORing dimension.
For example, if multiple focus ranges are combined, there will be one focus range where the signal is strongest, but the signal will gradually degrade as the difference between the focus range and the actual range increases. For pixels that contain noise instead of signal, it is expected that the levels will be more random and that this could be exploited to enhance the signal without increasing the background noise.
Overall, it is expected that this auto focus approach will allow system gains that are currently not being realized with the current signal processing and automation approach. This would significantly improve system performance by providing earlier detections and longer holding times of contact without increasing the operator workload or requiring a complete overhaul of the signal processing and automation framework.
And although this does come at an increased computational cost, it would allow us to squeeze every dB out of the signal processing. Work produced in Phase II may become classified. Note: The prospective contractor(s) must be U.S. owned and operated with no foreign influence as defined by 32 U.S.C.
§ 2004. 20 et seq. , National Industrial Security Program Executive Agent and Operating Manual, unless acceptable mitigating procedures can and have been implemented and approved by the Defense Counterintelligence and Security Agency (DCSA) formerly Defense Security Service (DSS).
The selected contractor must be able to acquire and maintain a secret level facility and Personnel Security Clearances. This will allow contractor personnel to perform on advanced phases of this project as set forth by DCSA and NAVSEA in order to gain access to classified information pertaining to the national defense of the United States and its allies; this will be an inherent requirement.
The selected company will be required to safeguard classified material during the advanced phases of this contract IAW the National Industrial Security Program Operating Manual (NISPOM), which can be found at Title 32, Part 2004. 20 of the Code of Federal Regulations. If you can achieve the objective above better than any other company on the market, you have a very high-likelihood of success and should apply.
Who is eligible to apply? Any company that meets the following criteria: U.S.-owned and controlled. 500 or fewer employees (including affiliates) 1) End-to-end support including, strategy, writing of the full proposal, and administrative & compliance support.
2) Proposal strategy and review. 3) Administrative & compliance support. Request to talk with a member of our team by completing the form below: Defense & Dual Use Technology NAVY Artificial Intelligence & Machine Learning https://www.
bwcoconsulting. com Robocasting Ceramic Sensors - SBIR Topic DON26BZ01-NV021 High Voltage and Current Silicon-Carbide (SiC) Metal-Oxide Semiconductor Field-Effect Transistor (MOSFET) for Fast Turn-On Current Applications - STTR Topic DON26TZ01-NV019
Based on current listing details, eligibility includes: Small Business Concerns (SBCs) Applicants should confirm final requirements in the official notice before submission.
Current published award information indicates $240,000 Always verify allowable costs, matching requirements, and funding caps directly in the sponsor documentation.
The current target date is April 29, 2026. Build your timeline backwards from this date to cover registrations, approvals, attachments, and final submission checks.
Federal grant success rates typically range from 10-30%, varying by agency and program. Build a strong proposal with clear objectives, measurable outcomes, and a well-justified budget to improve your chances.
Requirements vary by sponsor, but typically include a project narrative, budget justification, organizational capability statement, and key personnel CVs. Check the official notice for the complete list of required attachments.
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Leveraging Machine Learning for Advanced Passive Sonar Tracking (SBIR Topic DON26BZ01-NV025) is a grant from the Department of the Navy that funds small businesses developing machine learning solutions for advanced passive sonar tracking capabilities. This Phase I SBIR award supports research and development projects that apply AI and machine learning to improve passive sonar signal processing, target detection, and tracking performance for naval applications. Eligible applicants are U.S. small businesses with no more than 500 employees that qualify for SBIR Phase I funding from the Department of the Navy. Awards are estimated at $240,000 with a deadline of April 29, 2026.
STTR DON26TZ01-NV016: Nudging Behaviors for Better Sleep is a grant from U.S. Department of the Navy that Funding Database We hear regularly from founders and companies that just missed the perfect multi-million dollar opportunity for. Innovation Funding Database We hear regularly from founders and companies that just missed the perfect multi-million dollar opportunity for them. Broad topics cover wide areas of interest where the government wants solutions. Eligible applicants include Small business concerns (SBCs) organized for profit, with a place of business in the United States; at least 51% owned and controlled by one or more U. S. citizens. Awards up to Up to $1,750,000 with a deadline of 2026-06-03 00:00:00+00.
FY26 SBIR/STTR Release 1 is a grant from the Department of the Navy that funds small businesses conducting research and development in technology areas supporting Navy and Department of Defense missions. The FY2026 Release 1 solicitation includes 39 conventional SBIR topics, 5 Direct-to-Phase II topics, and one Commercial Solutions Opening (CSO) topic from the Naval Information Warfare Systems Command (NAVWAR). The pre-release period allows small businesses to communicate directly with technical points of contact; the solicitation opened May 6, 2026 and closes June 3, 2026. The Navy has funded over $11 billion to commercialize SBIR/STTR technologies to date. Eligible applicants are small businesses with qualifying technology proposals responsive to stated Navy research topics.
ONR GlobalX AI for Advancing Maritime Security is a research and development solicitation from the Office of Naval Research that funds the development of artificial intelligence solutions for maritime security applications. The program seeks innovative AI technologies that can advance the state-of-the-art in naval and maritime threat detection, domain awareness, and autonomous systems for defense applications. Eligible applicants include commercial firms, academic institutions, and nonprofits capable of developing qualifying AI solutions; both US and international organizations may apply in some cases. Award amounts vary by project scope and are determined through BAA or NOFO solicitation review. There is no fixed deadline; solicitations are released periodically through ONR's Broad Agency Announcement process.
Operation Stonegarden (OPSG) is a federal grant program administered by FEMA through the Office of the Governor's Public Safety Office that funds enhanced border security cooperation among Customs and Border Protection (CBP), U.S. Border Patrol, and state, local, tribal, and territorial law enforcement agencies. The program supports joint operations to secure land and water border routes, improve intelligence sharing, and expand 287(g) screening operations within correctional facilities. In 2025, the national priority is Supporting Border Crisis Response and Enforcement, covering training, operational coordination, and risk management. Eligible expenses include operational overtime costs, staffing support for screening activities, and training programs in immigration law, civil rights protections, and 287(g) procedures.