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A Neural Network Lab Experiment

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Conference

2001 Annual Conference

Location

Albuquerque, New Mexico

Publication Date

June 24, 2001

Start Date

June 24, 2001

End Date

June 27, 2001

ISSN

2153-5965

Page Count

11

Page Numbers

6.65.1 - 6.65.11

DOI

10.18260/1-2--9598

Permanent URL

https://peer.asee.org/9598

Download Count

1926

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Paper Authors

author page

Robert Muelller

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Abstract
NOTE: The first page of text has been automatically extracted and included below in lieu of an abstract

Session 2793

A Neural Network Lab Experiment

Robert Lynn Mueller The Pennsylvania State University New Kensington Campus

Abstract

Neural networks are becoming widely used in complex control problems. Many academic exercises approach neural network applications using only software simulations; however, simulations alone do not give students a full appreciation of the power and complexity of neural network-based controls. This paper describes a laboratory experiment that uses a temperature and airflow process simulator to demonstrate neural network control applications. The simulator is fundamentally a temperature controller in which large-scale changes in forced airflow produce significant changes in heat load.

The initial labs use PID control techniques to solve the temperature control problem and to demonstrate the problem that PID controllers have with large disturbances. The following labs address the same problem using a neural network control strategy. An actual neural network controller is built and used to perform the same temperature control as the classical PID system. Capabilities and drawbacks of neural network control are demonstrated.

Introduction

The classical PID feedback control system is shown in Figure 1. The setpoint (SP) is the system’s input and the process variable (PV) is the output. The PID controller uses the error signal (SP minus the PV) to calculate a value for the manipulated variable (MV). In turn, the value of the MV then determines the value of the process variable. Unexpected changes to the process output can be caused by system disturbances, and it is the PID controller’s job to adjust the MV to account for these changes.

Based on the characteristics of the process, the PID controller is tuned to achieve the desired system response. Unfortunately, when the disturbance input varies over a large range, the PID controller’s ability to achieve the desired system response is greatly reduced. For these situations, a more advanced control scheme is necessary. One possible method to overcome large disturbance variations is a neural network (NN)-based control strategy.

Muelller, R. (2001, June), A Neural Network Lab Experiment Paper presented at 2001 Annual Conference, Albuquerque, New Mexico. 10.18260/1-2--9598

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