Modified augmented hopfield neural network for optimal thermal unit commitment

M. Kamh, A. Abdelaziz, S. Mekhamer, M. Badr
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引用次数: 6

Abstract

This paper develops a novel solution methodology of the Thermal Unit Commitment Problem (TUCP) using modified Augmented Hopfield Network (AHN) with enhanced performance. The modifications are mandatory to eliminate the error that conventional AHN structure is reported to suffer from. This error originates from the mapping process, the corner stone in using AHN as an optimization tool. A new solution algorithm is developed by combining the AHN with the proposed modifications. In order to verify the effectiveness of the new algorithm, it is applied and tested to some examples reported in literature and the solution is then compared with that obtained by counterpart Artificial Intelligence (AI) techniques. Unlike other AI techniques, the solution obtained using the modified AHN is more optimal and satisfying all the operating constraints.
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改进的增强hopfield神经网络的最优热机组承诺
本文提出了一种利用改进的增强Hopfield网络(AHN)求解热机组承诺问题(TUCP)的新方法。修改是强制性的,以消除传统的AHN结构所遭受的错误。这种错误源于映射过程,映射过程是使用AHN作为优化工具的基石。将AHN与所提出的修正相结合,提出了一种新的求解算法。为了验证新算法的有效性,对文献中报道的一些实例进行了应用和测试,并将其解与同类人工智能(AI)技术的解进行了比较。与其他人工智能技术不同的是,使用改进的AHN得到的解更优,并且满足所有的运行约束。
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