...
首页> 外文期刊>Electric power systems research >Load-flow parallel processing system. Conjugate-gradient neural network architecture
【24h】

Load-flow parallel processing system. Conjugate-gradient neural network architecture

机译:潮流并行处理系统。共轭梯度神经网络架构

获取原文
获取原文并翻译 | 示例
           

摘要

Whilst very many previously published papers have been devoted to the non-linear mapping functions of neural networks, the possible scope of neural networks in numerical analysis applications has not so far been the subject of correspondingly extensive investigation. In that acknowledgment, research has been undertaken in the area of solving by neural networks the large non-linear equation systems that arise in power network system analysis. From this research, the paper reports the development of neural network architectures for Newton-Raphson load-flow analysis. Load-flow analysis is interpreted as an unconstrained minimisation formulation. The linearised load-flow equations at each Newton iteration are transformed to a scalar objective function of quadratic form. Using standard minimisation procedures for minimising this objective function requires only the multiplications and additions which arise in matrix/vector operations. It is here where neural networks can excel. The paper shows how a massively parallel processing structure can be achieved in which very many multiplications are carried out at the same time. The neural network architecture developed, therefore, achieves ultra-high-speed load-flow analysis. The computing time to achieve a converged load-flow solution for a 1000 node power network is less than about 20 ms. Reference is made to validation studies in which load-flow solutions from the new neural network architecture are compared with those from a standard sequential processor Newton-Raphson load-flow program.
机译:尽管许多先前已发表的论文致力于神经网络的非线性映射功能,但迄今为止,神经网络在数值分析应用中的可能范围尚未成为相应广泛研究的主题。在这种认识中,已经在通过神经网络解决在电网系统分析中出现的大型非线性方程组的领域进行了研究。通过这项研究,本文报告了用于牛顿-拉夫森潮流分析的神经网络体系结构的发展。潮流分析被解释为无约束的最小化公式。每次牛顿迭代时线性化的潮流方程被转换为二次形式的标量目标函数。使用标准的最小化过程来最小化该目标函数仅需要矩阵/矢量运算中出现的乘法和加法。在这里神经网络可以脱颖而出。本文展示了如何实现大规模并行处理结构,其中同时执行很多乘法。因此,开发的神经网络架构实现了超高速潮流分析。为1000个节点的电网实现收敛的潮流解决方案的计算时间少于20毫秒。参考验证研究,其中将来自新神经网络体系结构的潮流解决方案与来自标准顺序处理器Newton-Raphson潮流程序的潮流解决方案进行比较。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号