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Multiple Linear Regression Model Based on Neural Network and Its Application in the MBR Simulation

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  • Chunqing Li
  • Zixiang Yang
  • Yiquan Deng
  • Tao Wang

Abstract

The computer simulation of the membrane bioreactor MBR has become the research focus of the MBR simulation. In order to compensate for the defects, for example, long test period, high cost, invisible equipment seal, and so forth, on the basis of conducting in‐depth study of the mathematical model of the MBR, combining with neural network theory, this paper proposed a three‐dimensional simulation system for MBR wastewater treatment, with fast speed, high efficiency, and good visualization. The system is researched and developed with the hybrid programming of VC++ programming language and OpenGL, with a multifactor linear regression model of affecting MBR membrane fluxes based on neural network, applying modeling method of integer instead of float and quad tree recursion. The experiments show that the three‐dimensional simulation system, using the above models and methods, has the inspiration and reference for the future research and application of the MBR simulation technology.

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Handle: RePEc:wly:jnlaaa:v:2012:y:2012:i:1:n:703153
DOI: 10.1155/2012/703153
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