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Power generation from medium temperature geothermal resources: ANN-based optimization of Kalina cycle system-34

机译:中温地热资源发电:基于神经网络的Kalina循环系统优化-34

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摘要

Recent technical developments have made it possible to generate electricity from geothermal resources of low and medium enthalpy. One of these technologies is the Kalina Cycle System. In this study, electricity generation from Simav geothermal field was investigated using the Kalina cycle system-34 (KCS-34). However, the design of these technologies requires more proficiency and longer times within complex calculations. An artificial neural network (ANN) is a new tool used to make a decision for the optimum working conditions of the processes within the expertise. In this study, the back-propagation learning algorithm with three different variants, namely Levenberg-Marguardt (LM), Pola-Ribiere Conjugate Gradient (CGP), and Scaled Conjugate Gradient (SCG), were used in the network so that the best approach could be found. The most suitable algorithm found was LM with 7 neurons in a single hidden layer. The obtained weights were used in optimization process by coupling the life-cycle-cost concepts.
机译:最近的技术发展使得利用中低焓的地热资源发电成为可能。这些技术之一是卡利纳循环系统。在这项研究中,使用Kalina循环系统-34(KCS-34)研究了Simav地热田的发电情况。但是,在复杂的计算中,这些技术的设计需要更高的熟练度和更长的时间。人工神经网络(ANN)是一种新工具,用于根据专业知识来决定过程的最佳工作条件。在这项研究中,在网络中使用了具有三种不同变体的反向传播学习算法,分别是Levenberg-Marguardt(LM),Pola-Ribiere共轭梯度(CGP)和Scaled Conjugate Gradient(SCG),以便采用最佳方法可以找到。发现的最合适的算法是在单个隐藏层中具有7个神经元的LM。通过耦合生命周期成本概念,将获得的权重用于优化过程。

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