小型水电站的智能模型及其自适应控制

Roxana-Maria Motorga, M. Abrudean, V. Muresan, V. Sita, Cristian Bondici, Adrian Popescu
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引用次数: 0

摘要

本文对小型水力发电计划功率控制的三种控制策略进行了比较。为开发和实施该控制器,根据电站运行过程中进行的实验,采用识别方法对电能生产进行数学建模。为了改进运行过程,利用人工智能手段学习实际功率随水流在水轮机叶片上的时间变化。学习过程是通过训练神经网络来完成的。所采用的控制结构包括一个级联结构,内环为 PD 控制器,外环为分数阶 PID 控制器。考虑到采样时间在时间上的变化,在将过程从连续时间转换到离散时间,然后再转换回连续时间的策略基础上,通过计算自适应系统,进一步提高了过程的性能。这种转换也是通过训练有素的神经网络实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Model For A Mini Hydropower Plant And Its Adaptive Control
This paper proposes a comparison between three control strategies for the power control of the mini hydropower plan. To develop and implement this controllers, the mathematical modelling of the electrical energy production is performed, by applying identification methods on based on the experiments performed during the operation of the power plant. To improve the operation process, the variation of the real power in time depending on the water flow on the turbine blades is learnt using means of artificial intelligence. The learning procedure is performed by training neural networks. The approached control structures consists of a cascade structure, with a PD controller in the internal loop and a fractional-order PID controller in its external loop. The achieved performances obtained by the process are improved furthermore by computing an adaptive system based on the strategy of converting the process between the continuous to discrete time and then back to the continuous time considering the variation in time of the sampling time. This conversion is implemented using trained neural networks, too.
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