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Main Authors: Paul C. Hershey, Mu‐Cheng Wang, Jennifer N. Coston, Jennifer L. Ryan, Brian D. Scarpiniti, Darin G. Kabalkin, Christopher R. Horner
Format: Artículo Open Access
Published: Wiley 2025
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Online Access:https://incose.onlinelibrary.wiley.com/doi/10.1002/sys.21813
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author Paul C. Hershey
Mu‐Cheng Wang
Jennifer N. Coston
Jennifer L. Ryan
Brian D. Scarpiniti
Darin G. Kabalkin
Christopher R. Horner
author_facet Paul C. Hershey
Mu‐Cheng Wang
Jennifer N. Coston
Jennifer L. Ryan
Brian D. Scarpiniti
Darin G. Kabalkin
Christopher R. Horner
Paul C. Hershey
Mu‐Cheng Wang
Jennifer N. Coston
Jennifer L. Ryan
Brian D. Scarpiniti
Darin G. Kabalkin
Christopher R. Horner
collection Wiley Open Access
contents Adaptable System for Disaggregated Distributed AI Chat Enablement (D2ACE) to Support Mission Engineering Paul C. Hershey Mu‐Cheng Wang Jennifer N. Coston Jennifer L. Ryan Brian D. Scarpiniti Darin G. Kabalkin Christopher R. Horner Systems Engineering ABSTRACT This paper presents an adaptable system for disaggregated and distributed chat communications that applies Artificial Intelligence (AI) to support time‐critical battlespace environments. In such environments, operators may have dozens of chat conversations ongoing simultaneously. Although some of these messages are sorted according to keywords to help the operators better prioritize them, these keywords are subject to typing errors and other corruptions that may lead to the operator missing key decision‐making information. Considering the present expansion of the battlespace to include multimission and multidomain, the number of chat sessions is greatly increasing. The challenge for mission engineering in this environment is how to reduce and prioritize the vastly expanding collection of chat messages so that operators focus only on those chat messages that are most critical to meeting mission success and to do so accurately and dynamically. The approach presented here introduces a real‐time tasking capability within a fully autonomous adaptable system for Disaggregated Distributed AI Chat Enablement (D2ACE) to support mission engineering. D2ACE applies AI/ML techniques to correct spelling, typos, and other corruptions in chat messages; to adapt to recognize uncommon language formats; and to prioritize and reduce the quantity of chat messages to only those relevant to specific commander's objectives and intent for the mission. D2ACE accomplishes these goals while maintaining security at a high level such that only authorized individuals have access to their respective relevant chat messages. 10.1002/sys.21813 http://onlinelibrary.wiley.com/termsAndConditions#vor
doi_str_mv 10.1002/sys.21813
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institution Wiley Open Access
license_str_mv http://onlinelibrary.wiley.com/termsAndConditions#vor
publishDate 2025
publisher Wiley
record_format wiley_oa
spellingShingle Adaptable System for Disaggregated Distributed AI Chat Enablement (D2ACE) to Support Mission Engineering
Paul C. Hershey
Mu‐Cheng Wang
Jennifer N. Coston
Jennifer L. Ryan
Brian D. Scarpiniti
Darin G. Kabalkin
Christopher R. Horner
Systems Engineering
Adaptable System for Disaggregated Distributed AI Chat Enablement (D2ACE) to Support Mission Engineering Paul C. Hershey Mu‐Cheng Wang Jennifer N. Coston Jennifer L. Ryan Brian D. Scarpiniti Darin G. Kabalkin Christopher R. Horner Systems Engineering ABSTRACT This paper presents an adaptable system for disaggregated and distributed chat communications that applies Artificial Intelligence (AI) to support time‐critical battlespace environments. In such environments, operators may have dozens of chat conversations ongoing simultaneously. Although some of these messages are sorted according to keywords to help the operators better prioritize them, these keywords are subject to typing errors and other corruptions that may lead to the operator missing key decision‐making information. Considering the present expansion of the battlespace to include multimission and multidomain, the number of chat sessions is greatly increasing. The challenge for mission engineering in this environment is how to reduce and prioritize the vastly expanding collection of chat messages so that operators focus only on those chat messages that are most critical to meeting mission success and to do so accurately and dynamically. The approach presented here introduces a real‐time tasking capability within a fully autonomous adaptable system for Disaggregated Distributed AI Chat Enablement (D2ACE) to support mission engineering. D2ACE applies AI/ML techniques to correct spelling, typos, and other corruptions in chat messages; to adapt to recognize uncommon language formats; and to prioritize and reduce the quantity of chat messages to only those relevant to specific commander's objectives and intent for the mission. D2ACE accomplishes these goals while maintaining security at a high level such that only authorized individuals have access to their respective relevant chat messages. 10.1002/sys.21813 http://onlinelibrary.wiley.com/termsAndConditions#vor
title Adaptable System for Disaggregated Distributed AI Chat Enablement (D2ACE) to Support Mission Engineering
topic Systems Engineering
url https://incose.onlinelibrary.wiley.com/doi/10.1002/sys.21813