人工神经网络在抽水蓄能调度中的应用

L. Ruomei, Chen Yunping, Guo Jianbo
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引用次数: 5

摘要

提出了一种基于人工神经网络的抽水蓄能调度优化方法。抽水蓄能电站的短期调度和实时调度是一个约束优化问题。当与其他发电资源协调时,它变得更加复杂。计算时间往往较长,操作条件可能发生不可预测的变化。期望一种快速实用的方法。神经网络作为一种信号处理装置,表示从输入空间到输出空间的映射函数。通过训练,多层前馈和神经网络可以在给定精度下逼近连续函数,并可以实现实时求解。本文采用三层前馈神经网络和改进BP算法来解决抽水蓄能调度问题。通过运行优化软件,获得了一组人工神经网络训练数据。本文介绍了如何选择和组织输入数据以及如何训练人工神经网络。给出了一个工程实例,并与传统方法进行了比较。结果表明,人工神经网络可以快速准确地解决抽水蓄能调度问题。
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An application of ANN in scheduling pumped-storage
An artificial neural network (ANN) based optimization method in scheduling pumped-storage is proposed in the paper. Short-term scheduling as well as real-time dispatch of a pumped-storage station is a constrained optimization problem. It becomes more complicated when coordinated with other generation resources. The computation time is often long and the operation conditions may change unpredictably. A fast and practical way is expected. The ANN is used as a signal processing device, which represents mapping functions from input space to output space. Through a training process, multi-layered feedforward and neural networks can be used to approximate the continuous functions with a given accuracy and real-time solution can be achieved. In this paper three layer feedforward ANN and improved BP algorithm are adopted to solve the problem of pumped-storage scheduling. A set of ANN training data are obtained by running an optimization software. The paper describes how to select and organize the input data and how to train the ANN. A work example is presented and a comparison with traditional method is made. It shows that a fast and accurate solution for pumped-storage scheduling can be achieved with ANN.
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