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    <pubDate>Thu, 18 Apr 2024 13:47:26 GMT</pubDate>
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      <title>Artificial Intelligence (AI)–Enabled Wargaming Agent Training</title>
      <link>https://www.erdc.usace.army.mil/Media/Publication-Notices/Article/3745670/artificial-intelligence-aienabled-wargaming-agent-training/</link>
      <description>Abstract: Fiscal Year 2021 (FY21) work from the Engineer Research and Development Center Institute for Systems Engineering Research lever-aged deep reinforcement learning to develop intelligent systems (red team agents) capable of exhibiting credible behavior within a military course of action wargaming maritime framework infrastructure. Building from the FY21 research, this research effort sought to explore options to improve upon the wargaming framework infrastructure and to investigate opportunities to improve artificial intelligence (AI) agent behavior. Wargaming framework infrastructure enhancements included updates related to supporting agent training, leveraging high-performance computing resources, and developing infrastructure to support AI versus AI agent training and gameplay. After evaluating agent training across different algorithm options, Deep Q-Network–trained agents performed better compared to those trained with Advantage Actor Critic or Proximal Policy Optimization algorithms. Experimentation in varying scenarios revealed acceptable performance from agents trained in the original baseline scenario. By training a blue agent against a previously trained red agent, researchers successfully demonstrated the AI versus AI training and gameplay capability. Observing results from agent gameplay revealed the emergence of behavior indicative of two principles of war, which were economy of force and mass.&lt;br/&gt; 


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      <pubDate>Thu, 18 Apr 2024 13:47:26 GMT</pubDate>
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      <category>Publications: Engineer Research &amp; Development Center (ERDC)</category>
      <category>Publications: Information Technology Laboratory (ITL)</category>
      <category>Regulatory</category>
      <category>Technology</category>
      <category>U.S. Army Corps of Engineers Engineer Research and Development Center</category>
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      <title>Internal Standard and Deuterated Solvent Selection: A Crucial Step in PFAS-based Fluorine-19 (¹⁹F) NMR Research</title>
      <link>https://www.erdc.usace.army.mil/Media/Publication-Notices/Article/3594068/internal-standard-and-deuterated-solvent-selection-a-crucial-step-in-pfas-based/</link>
      <description>Purpose: This work is vital because it provides researchers with a framework and rationale for selecting the best internal standard and deuterated solvent for their nuclear magnetic resonance (NMR) analysis of per- and polyfluoroalkyl substances (PFAS)-based compounds. Selecting the best internal standard and deuterated solvent will help to ensure that their results are accurate, precise, and sensitive. The internal standard that is chosen can significantly affect the accuracy, precision, sensitivity, and quantification of NMR measurements. Therefore, it is essential to carefully select an internal standard and a matching deuterated solvent that are well-suited for analyzing PFAS compounds. &lt;br/&gt; 


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      <pubDate>Mon, 20 Nov 2023 15:53:00 GMT</pubDate>
      <dc:creator>Press Operations</dc:creator>
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      <category>Publications: Engineer Research &amp; Development Center (ERDC)</category>
      <category>Publications: Environmental Laboratory (EL)</category>
      <category>Regulatory</category>
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      <title>Optimization of LC-MS/MS Parameters for Analysis of Per- and Polyfluoroalkyl Substances (PFAS)</title>
      <link>https://www.erdc.usace.army.mil/Media/Publication-Notices/Article/2367919/optimization-of-lc-msms-parameters-for-analysis-of-per-and-polyfluoroalkyl-subs/</link>
      <description>Purpose: Integrate US Environmental Protection Agency (USEPA) Method 537 on current instrumentation to provide per- and polyfluoroalkyl substances (PFAS) analytical capabilities for the US Army Engineer Research and Development Center (ERDC), US Army Corps of Engineers (USACE) and the Department of Defense (DoD).&lt;br/&gt; 


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      <pubDate>Thu, 01 Oct 2020 14:27:03 GMT</pubDate>
      <dc:creator>Press Operations</dc:creator>
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      <category>Publications: Engineer Research &amp; Development Center (ERDC)</category>
      <category>Regulatory</category>
      <category>Research</category>
      <category>U.S. Army Corps of Engineers Engineer Research and Development Center</category>
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