• DocumentCode
    3717451
  • Title

    Distributed dynamic elastic nets: A scalable approach for regularization in dynamic manufacturing environments

  • Author

    Naveen Ramakrishnan;Rumi Ghosh

  • Author_Institution
    Robert Bosch LLC, Palo Alto, CA
  • fYear
    2015
  • Firstpage
    2752
  • Lastpage
    2761
  • Abstract
    In this paper, we focus on the task of learning influential parameters under unsteady and dynamic environments. Such unsteady and dynamic environments often occur in the ramp-up phase of manufacturing. We propose a novel regularization-based framework, called Distributed Dynamic Elastic Nets (DDEN), for this problem and formulate it as a convex optimization objective. Our approach solves the optimization problem using a distributed framework. Consequently it is highly scalable and can easily be applied to very large datasets. We implement a L-BFGS based solver in the Apache Spark framework. For validating our algorithm, we consider the issue of scrap reduction at an assembly line during the ramp-up phase of a manufacturing plant. By considering the logistic regression as a sample model, we evaluate the performance of our approach although extensions of the proposed regularizer to other classification and regression techniques is straightforward. Through experiments on data collected at a functioning manufacturing plant, we show that the proposed method not only reduces model variance but also helps preserve the relative importance of features in dynamic conditions compared to standard approaches. The experiments further show that the classification performance of DDEN if often better than logistic regression with standard elastic nets for datasets from dynamic and unsteady environments. We are collaborating with manufacturing units to use this process for improving production yields during the ramp-up phase. This work serves as a demonstration of how data mining can be used to solve problem in manufacturing.
  • Keywords
    "Market research","Logistics","Optimization","Heuristic algorithms","Assembly"
  • Publisher
    ieee
  • Conference_Titel
    Big Data (Big Data), 2015 IEEE International Conference on
  • Type

    conf

  • DOI
    10.1109/BigData.2015.7364076
  • Filename
    7364076