Application of steady-state and dynamic modeling for the prediction of the BOD of an aerated lagoon at a pulp and paper mill [An article from: Chemical Engineering Journal] Buy on Amazon

https://www.ebooknetworking.net/books_detail-B000RR4NOK.html

Application of steady-state and dynamic modeling for the prediction of the BOD of an aerated lagoon at a pulp and paper mill [An article from: Chemical Engineering Journal]

8.95 USD
Buy New on Amazon 🇺🇸

Available for download now

Book Details

PublisherElsevier
ISBN / ASINB000RR4NOK
ISBN-13978B000RR4NO0
AvailabilityAvailable for download now
Sales Rank99,999,999
MarketplaceUnited States  🇺🇸

Description

This digital document is a journal article from Chemical Engineering Journal, published by Elsevier in 2004. The article is delivered in HTML format and is available in your Amazon.com Media Library immediately after purchase. You can view it with any web browser.

Description:
Accurate well-timed measurement of quality variables is essential to the successful monitoring and controlling of wastewater treatment systems. Because the measurements of these variables are difficult and often involve large time delays, predictive models for target quality variables have been widely considered. However, many microbial reactions and their interactions with the environment result in time dependent processes, making the development of bioprocess models difficult and time-consuming. In this paper, steady-state and dynamic predictive models based on multiple linear regression (MLR) and partial least squares (PLS) regression are presented. Water quality measurements and process information are used to develop models to predict biochemical oxygen demand (BOD) at the inlet and outlet of an aerated lagoon of a pulp and paper mill operated by International Paper of Brazil (IPB). The results show that linear steady-state and dynamic models are able to predict inlet and outlet BOD even for a complex process that has operational data limitations (imprecise measurements, a large number of missing values, etc.). A companion paper [Chem. Eng. J., submitted for publication] reports static and dynamic nonlinear models that were developed from the same 4 years of data using a neural network approach. Together, the two papers provide a well-documented application of linear and nonlinear empirical modeling techniques to an industrial case study. The modeling techniques are also valid for other types of industrial applications.
Donate to EbookNetworking
Prev
Next