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A New Dynamic Programming Based Hopfield Neural Network to Unit Commitment and Economic Dispatch

机译:一种新的基于动态规划的Hopfield神经网络用于机组承诺和经济调度

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This paper develops a new Dynamic Programming based direct computation Hopfield method for solving short term Unit Commitment (UC) problems of thermal generators. The proposed two step process uses a direct computation Hopfield neural network to generate Economic Dispatch (ED). Then using Dynamic Programming (DP) the generator schedule is produced. The method employs a linear input-output model for neurons. Formulations for solving the UC problems are explored. Through the application of these formulations, direct computation instead of iterations for solving the problems becomes possible. However, it has been found that the UC problem cannot be tackled accurately within the framework of the conventional Hopfield network. Not like the usual Hopfield methods which select the weighting factors of the energy function by trials, the proposed method determines the corresponding factor using formulation calculation. Hence, it is relatively easy to apply the proposed method. The effectiveness of the developed method is identified through its application to 10 and 20 unit systems.
机译:本文开发了一种新的基于动态规划的直接计算Hopfield方法来解决热力发电机的短期机组承诺(UC)问题。所提出的两步过程使用直接计算的Hopfield神经网络来生成经济调度(ED)。然后使用动态编程(DP)生成发电机时间表。该方法对神经元采用线性输入-输出模型。探索解决UC问题的公式。通过应用这些公式,可以直接计算而不是迭代来解决问题。然而,已经发现,在传统的霍普菲尔德网络的框架内不能精确地解决UC问题。与通过试验选择能量函数的加权因子的常规Hopfield方法不同,该方法使用公式计算来确定相应的因子。因此,应用所提出的方法相对容易。通过将其应用于10和20单位系统,可以确定所开发方法的有效性。

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