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<item>
  <id>05678945</id>
  <dt>a</dt>
  <an>05678945</an>
  <augroup>
    <au>Douglas, Craig C.</au>
    <au>Deng, Li</au>
    <au>Efendiev, Yalchin</au>
    <au>Haase, Gundolf</au>
    <au>Kucher, Andreas</au>
    <au>Lodder, Robert</au>
    <au>Qin, Guan</au>
  </augroup>
  <ti>Advantages of multiscale detection of defective pills during manufacturing.</ti>
  <so>Zhang, Wu (ed.) et al., High performance computing and applications. Second international conference, HPCA 2009, Shanghai, China, August 10--12, 2009. Revised selected papers. Berlin: Springer (ISBN 978-3-642-11841-8/pbk). Lecture Notes in Computer Science 5938, 8-16 (2010).</so>
  <py>2010</py>
  <pu>Berlin: Springer</pu>
  <lagroup>
    <la>EN</la>
  </lagroup>
  <ccgroup>
  </ccgroup>
  <utgroup>
    <ut>manufacturing defect detection</ut>
    <ut>dynamic data-driven application systems</ut>
    <ut>DDDAS</ut>
    <ut>integrated sensing and processing</ut>
    <ut>high performance computing</ut>
    <ut>parallel algorithms</ut>
  </utgroup>
  <cigroup>
  </cigroup>
  <ligroup>
    <li>doi:10.1007/978-3-642-11842-5_2</li>
  </ligroup>
  <abgroup>
    <ab>Summary: We explore methods to automatically detect the quality in individual or batches of pharmaceutical products as they are manufactured. The goal is to detect 100\% of the defects, not just statistically sample a small percentage of the products and draw conclusions that may not be 100\% accurate. Removing all of the defective products, or halting production in extreme cases, will reduce costs and eliminate embarrassing and expensive recalls. We use the knowledge that experts have accumulated over many years, dynamic data derived from networks of smart sensors using both audio and chemical spectral signatures, multiple scales to look at individual products and larger quantities of products, and finally adaptive models and algorithms.</ab>
    <rv></rv>
  </abgroup>
</item>