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Adaptive Online Multivariate Signal Extraction With Locally Weighted Robust Polynomial Regression

  • Molly C. Klanderman
  • , Junho Lee
  • , Kris Villez
  • , Tzahi Y. Cath
  • , Amanda S. Hering

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

High-frequency, multivariate data collected in real-time and used to control or make decisions regarding a process’ operation often contain some noise and outliers. Thus, a method to extract the signal is needed in order to reduce the number and magnitude of control-based adjustments that are implemented. Such a method must be (i) online, depending only on past and current observations; (ii) fast, producing a smooth value more quickly than the measurement frequency; (iii) robust, ignoring brief bursts of erroneously measured values; (iv) multivariate, ignoring observations that are jointly unusual; (v) adaptive, adjusting to periods of rapid fluctuation in the signal versus periods of stability; and (vi) purely data-driven, not incorporating any information about the process from which the data are collected. Most existing methods are only able to address a subset of these six features. Furthermore, we also require the method to be nonlinear, providing a local nonlinear estimate of the signal. In this work, we propose a novel, real-time signal extraction method based on a local, robust polynomial fit. We demonstrate the performance of our method compared to a state-of-the-art competitor through simulation. For illustration, the methodology is applied to data collected from a reverse osmosis water treatment process.

Original languageEnglish
Article number2200856
JournalData Science in Science
Volume2
Issue number1
DOIs
StatePublished - 2023

Funding

This work is supported by the National Science Foundation PFI:BIC Award No: 1632227; the National Science Foundation Engineering Research Center program under cooperative agreement EEC-1028968 (ReNUWIt); and the National Alliance for Water Innovation (NAWI), funded by the US Department of Energy (DOE), Energy Efficiency and Renewable Energy Office, Advanced Manufacturing Office under Funding Opportunity Announcement DE-FOA-0001905. We also acknowledge Rudy Maltos and Mike Veras of Colorado School of Mines and Aqua-Aerobic Systems, Inc. for valuable contributions to this work.

Keywords

  • Filtering
  • multivariate
  • online
  • polynomial regression
  • robust
  • signal extraction

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