PID Control System for a Distributed Parameter Process

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This paper presents the numerical simulation of a control system, with PID algorithm, for a process modeled through a partial differential equation of second order (PDE II.2), with respect to time (t) and to a spatial variable (p). Because these types of control systems are less usual, this paper develops a case study, with a program run on the computer. The details of using the PID control are pointed out, for an example of a system which contains a process with PDE II.2 structure.

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222-231

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June 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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