Application of Artificial Neural Network to Predict the Performance of Thermoelectric Power Plants at Design Conditions

R. Carapellucci, L. Giordano
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Abstract

Recently Artificial Neural Networks (ANNs) have been gaining an important role in the analysis of complex power cycles, since they have the potential to reduce the computational effort in designing and control of power plants operating conditions compared to rigorous thermodynamic models. This paper presents a novel methodology for the prediction and optimization of the performance of thermoelectric power plants at design conditions using ANNs. The methodology involves a preliminary study to randomly generate the dataset of input variables (i.e., power plant operating conditions) and evaluate the dataset of output variables (i.e., energy and economic performance indicators) via thermodynamic simulation. Using these datasets, ANNs are trained and validated. Finally, the ability of ANN algorithms to replicate thermodynamic models is assessed in terms of absolute relative errors and coefficient of determination. The proposed methodology is flexible with regard to the type of power plants to be replicated and the extent of the investigation, that can be easily adapted by properly selecting the set of input and output variables. To prove its feasibility, the methodology is applied to a coal-fired power plant and a triple-pressure reheat combined cycle. In both case studies, the methodology provided a very good accuracy in predicting the power plant behavior and optimizing their energy or economic performance.
人工神经网络在热电厂设计工况性能预测中的应用
近年来,人工神经网络(ann)在复杂电力循环分析中发挥了重要作用,因为与严格的热力学模型相比,它们有可能减少电厂运行条件设计和控制的计算工作量。本文提出了一种利用人工神经网络预测和优化热电厂在设计条件下的性能的新方法。该方法包括初步研究,随机生成输入变量(即发电厂运行条件)的数据集,并通过热力学模拟评估输出变量(即能源和经济绩效指标)的数据集。使用这些数据集,对人工神经网络进行训练和验证。最后,根据绝对相对误差和决定系数对人工神经网络算法复制热力学模型的能力进行了评估。拟议的方法在要复制的发电厂类型和调查范围方面是灵活的,通过适当选择一组投入和产出变量可以很容易地加以调整。为验证该方法的可行性,将该方法应用于某燃煤电厂和某三压再热联合循环。在这两个案例研究中,该方法在预测电厂行为和优化其能源或经济绩效方面提供了非常好的准确性。
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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