SBIR-STTR Award

Pattern Recognition for Aircraft Maintainer Troubleshooting
Award last edited on: 4/3/2012

Sponsored Program
SBIR
Awarding Agency
DOD : AF
Total Award Amount
$849,958
Award Phase
2
Solicitation Topic Code
AF05-263
Principal Investigator
Thomas Burton

Company Information

DigiLore Inc (AKA: Internet & Computer Institute)

100 Techne Center Drive Suite 125
Milford, OH 45150
   (513) 831-2578
   jerry.mcfeeters@digilore.com
   www.digilore.com
Location: Multiple
Congr. District: 02
County: Clermont

Phase I

Contract Number: ----------
Start Date: ----    Completed: ----
Phase I year
2005
Phase I Amount
$99,959
Proposed work addresses the stated objective "Intelligently decipher text strings and determine when one Work Unit Code is related to a National Stock Number" while also advancing toward twin higher goals: more productive maintenance and better control of part inventories. Tasks include (1) Identification of some indentured parts, (2) Integration of some maintenance databases, (3) Correlation of Work Unit Codes and National Stock Numbers, and (4) Conceptualizing a new maintenance troubleshooter. Phase-I prototypes will be tested on one group of Work Unit codes from one aircraft. Experience with semantic analysis, learning, and computer interfaces positions us well for both Phase I and Phase II.

Keywords:
Maintenance, Wuc, Nsn, D043, Etims, Lsa, Clustering, Similarity

Phase II

Contract Number: ----------
Start Date: ----    Completed: ----
Phase II year
2006
Phase II Amount
$749,999
This project aims toward automated troubleshooting of aircraft maintenance supported by unprecedented connectivity: between the depot and the field, between maintainers and technical orders and other documents, and between novice and expert maintainers. Advances in semantic processing will automatically connect, for the first time, work units in the field with bills of materials and work control documents. The troubleshooter will converse with the maintainer in natural language as well as more conventional forms and text, analyzing the conversation, extracting topics, and then finding and presenting relevant topics from the large collection of technical orders.The front end of the troubleshooter will be designed to operate on devices as small as a pocket PC or smart phone, allowing point-of-task support in the field and in the depot.The dialog manager will tolerate a wide range of diction and will interact and choose data to present appropriately to the experience level of the maintainer. Novices will get extra help and exposure to best practices. Experts will do their job faster, while the troubleshooter learns from their experience, sharing their best practices with less experienced maintainers. The troubleshooter will be designed to learn on the job, improving service over time to all maintainers.

Keywords:
Maintenance, Aircraft, Troubleshooter, Point-Of-Task, Best Practices, Natural Language, Expert Knowledge, Diagnosis