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DESC0022923

Project Grant

Overview

Grant Description
In-sensor analog neural network framework for analog to information conversion.
Awardee
Funding Goals
DE-FOA-0002555
Place of Performance
Tempe, Arizona 85281-3052 United States
Geographic Scope
Single Zip Code
Analysis Notes
Amendment Since initial award the End Date has been extended from 06/26/23 to 08/27/26 and the total obligations have increased 575% from $199,922 to $1,349,859.
Alphacore was awarded Project Grant DESC0022923 worth $1,349,859 from the Office of Science in June 2022 with work to be completed primarily in Tempe Arizona United States. The grant has a duration of 4 years 2 months and was awarded through assistance program 81.049 Office of Science Financial Assistance Program. The Project Grant was awarded through grant opportunity FY 2022 SBIR/STTR Phase I Release 2.

SBIR Details

Research Type
SBIR Phase I
Title
In-Sensor Analog Neural Network Framework for Analog to Information Conversion
Abstract
Analog sensors are expected to produce 1020 bits of data per second by 2030, and data transmission for such high volumes of data, especially for wireless transmission, is extremely energy expensive. Digitizing the analog sensor data for transmission to remote location (e.g., cloud server) for processing creates an enormous amount of data that is predicted to grow at exponential rates. Improvements in the transmitter chain, such as higher energy-efficiency analog-to-digital converters (ADCs) or data compression techniques (compressive sensing), are not enough to result in orders-of-magnitude reduction in transmission volume and energy. Instead, addressing the data deluge problem requires re-imagining the entire signal acquisition chain and possibly drawing inspiration from human brain to efficiently extract information from the large volume of sensor data. General statement of how this problem is being addressed. Alphacore proposes embedding artificial intelligence (AI) locally on-sensor to intelligently determine/extract information from sensor signals and transmit only meaningful selected segments to achieve reduction in sensor data transmission volume and energy. The driving motivation behind on-sensor AI is to achieve sensor data compression ratios of 105:1 that is only possible through intelligent algorithms that can detect subtle and ‘rare’ pattern/information hidden in large volumes of sensor data. In addition, local AI capability lowers latency compared to remote (cloud-based) processing and is critical for applications that need real-time monitoring, such as for predictive maintenance in industrial manufacturing applications where in-sensor AI models can continuously monitor sensor data and look for early signs of malfunction. What is to be done in Phase I? During Phase I, Alphacore will meet the following objectives: Objective 1: Design of reservoir-computing network for sensor data classification Objective 2: Design in-memory computing circuit for read-out layer of reservoir-computer Objective 3: Analyze the performance improvements (in terms of data compression and energy reduction) of in-sensor AI across applications Commercial Applications and Other Benefits (limited to the space provided). Alphacore’s solution will enable sensors to determine and extract selected segments of the data signals, and transmit only the relevant data, achieving reduction in the data transmission volume, and therefore, energy consumption. Given the ubiquitous importance of saving energy, and the continuous demand to achieve as little power consumption as possible without sacrificing system performance, the market opportunity for this innovation is expected to be massive. Applications that will benefit include industrial automation and manufacturing, power and utilities, automotive applications, smart homes and cities, and more Internet-of-Things related applications. The main benefit for all these industries will be increased efficiency and reduced costs in data transmission and communication within the sensor networks, while progressing towards decarbonization and reducing greenhouse gas emissions.
Topic Code
C54-19d
Solicitation Number
None

Status
(Ongoing)

Last Modified 12/15/25

Period of Performance
6/27/22
Start Date
8/27/26
End Date
95.0% Complete

Funding Split
$1.3M
Federal Obligation
$0.0
Non-Federal Obligation
$1.3M
Total Obligated
100.0% Federal Funding
0.0% Non-Federal Funding

Activity Timeline

Interactive chart of timeline of amendments to DESC0022923

Transaction History

Modifications to DESC0022923

Additional Detail

Award ID FAIN
DESC0022923
SAI Number
None
Award ID URI
SAI EXEMPT
Awardee Classifications
Small Business
Awarding Office
892430 SC CHICAGO SERVICE CENTER
Funding Office
892401 SCIENCE
Awardee UEI
CXMPDDLFBCH3
Awardee CAGE
6SUZ5
Performance District
AZ-04
Senators
Kyrsten Sinema
Mark Kelly

Budget Funding

Federal Account Budget Subfunction Object Class Total Percentage
Science, Energy Programs, Energy (089-0222) General science and basic research Grants, subsidies, and contributions (41.0) $1,349,859 100%
Modified: 12/15/25