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A NEURAL NETWORK OPTIMIZER FOR SCHEDULING HYDROPOWER GENERATIONS

机译:调度水电发电量的神经网络优化器

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摘要

An approach based on neural network optimizer is proposed for determining the optimal short-term scheduling of multi-reservoir hydropower system. The proposed method is based on the Lagrange multiplier theory and search for solutions satisfying the necessary conditions of optimality in the state space. The equilibrium point of the network optimizer corresponds to the Lagrange solution of the problem and satisfies the Kuhn-Tucker condition for the problem. Here the main objective is to determine the optimal amounts of water to be released from each reservoir during each interval so as to minimize the overall energy shortages over the complete planning horizon. The method takes into account the water transportation delays between upstream and downstream reservoirs and a nonlinear hydropower generation function. An algorithm based on the proposed neural network optimizer has been developed and implemented on a multi-chain cascade of reservoir type hydropower system. Results so achieved have been compared with those obtained using conventional augmented Lagrange multiplier method. From the results, it is concluded that the proposed method is very effective in providing a good optimal solution along with constraint satisfaction.
机译:提出了一种基于神经网络优化器的多水库水电系统短期优化调度方法。所提出的方法基于拉格朗日乘数理论,并寻找满足状态空间中最优性必要条件的解。网络优化器的平衡点对应于问题的Lagrange解,并满足该问题的Kuhn-Tucker条件。此处的主要目的是确定在每个时间间隔内从每个水库中释放的最佳水量,以最大程度地减少整个规划范围内的总体能源短缺。该方法考虑了上游和下游水库之间的输水延迟以及非线性水力发电函数。已经开发了基于所提出的神经网络优化器的算法,并在水库型水电系统的多链级联中实现。已将如此获得的结果与使用常规增强拉格朗日乘数法获得的结果进行了比较。从结果可以得出结论,所提出的方法在提供良好的最佳解决方案以及约束满足方面非常有效。

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