Solving a real large scale mid-term scheduling for power plants via hybrid intelligent neural networks systems

Ronaldo Aquino, O. N. Neto, M. Lira, Manoel A. Carvalho
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引用次数: 2

Abstract

This paper deals with an application of Artificial Neural Network (ANN) and a Hybrid Intelligent System (HIS) to solve a large scale real world optimization problem, which is an operation planning of generation system in the mid-term operation. This problem is related to economic power dispatch that minimizes the overall production cost while satisfying the load demand. These kinds of problem are large scale optimization problems in which the complexity increases with the planning horizon and the accuracy of the system to be modeled. This work considers the two-phase optimization neural network, which solves dynamically linear and quadratic programming problems with guaranteed optimal convergence and HIS, which combines ANN and Heuristics Rules (HRs) to boost the convergence speed. This network also provides the corresponding Lagrange multiplier associated with each constraint (marginal price). The results pointed out that the applications of the HIS have turned the implementation of ANN models in software more attractive.
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利用混合智能神经网络系统解决实际的大规模电厂中期调度问题
本文研究了人工神经网络(ANN)和混合智能系统(HIS)的应用,以解决一个大规模的实际优化问题,即发电系统中期运行规划问题。该问题涉及在满足负荷需求的前提下,使总生产成本最小化的经济调度问题。这类问题属于大规模优化问题,其复杂性随着规划水平和待建模系统精度的增加而增加。本文考虑了两阶段优化神经网络和HIS,前者解决了保证最优收敛的动态线性和二次规划问题,后者结合了人工神经网络和启发式规则(HRs)来提高收敛速度。该网络还提供了与每个约束(边际价格)相关的相应拉格朗日乘数。结果表明,HIS的应用使人工神经网络模型在软件中的实现更具吸引力。
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