Neural Network Based Source Selection Scheme for Wind-solar Based Auxiliary Supply in Railway Traction Systems

S. Bakre, P. Gokhale
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引用次数: 1

Abstract

The concept of catering electric supply to the auxiliary loads of railway wagons using Wind-solar based renewable energy systems is under consideration at number of metro rail projects. In such systems the selection of source of supply from available sources is a matter of concern. The existing schemes of source selection are mostly hardware oriented that invite problems such as delay in selection, components becoming sluggish and insensitive and loose connections. This paper suggests a novice neural network based approach for source selection as a replacement against the existing schemes. The proposed method of software abstraction is simple, low cost and accurate.
基于神经网络的铁路牵引系统风光互补电源选择方案
一些地铁项目正在考虑使用基于风能太阳能的可再生能源系统为铁路货车的辅助负载提供电力供应的概念。在这种系统中,从现有来源中选择供应来源是一个令人关切的问题。现有的源选择方案大多是面向硬件的,存在选择延迟、器件迟钝不敏感、连接松散等问题。本文提出了一种基于新手神经网络的信号源选择方法,作为对现有方案的替代。提出的软件抽象方法简单、成本低、精度高。
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