Optimal Electric-Power Distribution and Load-Sharing on Smart-Grids: Analysis by Artificial Neural Network

D. D. Groff, R. Melendez, P. Neelakanta, Hajar Akif
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Abstract

This study refers to developing an electric-power distribution system  with optimal/suboptimal load-sharing in the complex and expanding metro power-grid infrastructure.  That is, the relevant exercise is to indicate a smart forecasting strategy on optimal/suboptimal power-distribution to consumers served by a smart-grid utility.  An artificial neural network (ANN) is employed to model the said optimal power-distribution between generating sources and distribution centers.  A compatible architecture of the test ANN with ad hoc suites of training/prediction schedules is indicated thereof. Pertinent exercise is to determine smartly the power supported on each transmission-line  between generating to distribution-nodes.  Further, a “smart” decision protocol prescribing  the constraint that no transmission-line carries in excess of a desired load.  An algorithm is developed to implement the prescribed constraint via the test ANN; and, each value of the load  shared by each distribution-line  (meeting the power-demand of the consumers) is elucidated from the ANN output. The test ANN includes the use of a traditional multilayer architecture with feed-forward and backpropagation techniques; and,  a fast convergence algorithm (deduced in terms of eigenvalues of a Hessian matrix associated with the input data) is adopted. Further, a novel method based on information-theoretic heuristics (in Shannon’s sense) is invoked towards model specifications. Lastly, the study results are discussed with exemplified computations using appropriate field data.    
基于人工神经网络的智能电网最优配电与负荷分担分析
本文研究的是在复杂且不断扩大的地铁电网基础设施中,开发一种具有最优/次最优负荷分担的配电系统。也就是说,相关的练习是指出智能电网公用事业服务的消费者的最优/次最优功率分配的智能预测策略。采用人工神经网络(ANN)对发电源和配电中心之间的最优功率分配进行建模。其中指出了具有特殊训练/预测计划套件的测试人工神经网络的兼容架构。相关的练习是巧妙地确定在发配电节点之间的每条输电线上所支持的功率。此外,“智能”决策协议规定了不允许在线传输超过期望负载的约束。提出了一种通过测试人工神经网络实现规定约束的算法;根据人工神经网络的输出,确定各配电线路所分担的负荷(满足用户的电力需求)的每个值。测试人工神经网络包括使用传统的多层结构与前馈和反向传播技术;采用快速收敛算法(根据与输入数据相关的Hessian矩阵的特征值推导)。在此基础上,提出了一种基于信息启发式的模型规范处理方法。最后,利用适当的现场数据,通过算例对研究结果进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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