Performance evaluation, prediction analysis and optimization of experimental ORC using artificial neural networks (ANN)

IF 8 Q1 ENERGY & FUELS
Diki Ismail Permana , Federico Fagioli , Maurizio De Lucia , Dani Rusirawan , Istvan Farkas
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引用次数: 0

Abstract

The Organic Rankine Cycle (ORC) system stands out as the most efficient solution for converting low-grade thermal energy, making it highly effective for dispersed power generation and adaptable to various heat sources, such as solar energy, geothermal, biomass, and waste-heat recovery at different temperatures. Unlike traditional Rankine cycles, ORC systems use refrigerants or mixed fluids as working fluids, which have lower boiling points than water and are environmentally friendly, allowing efficient power generation on a smaller scale and at lower temperatures (above 200°C). While many experimental studies on ORC have been conducted, significant gaps remain in accurately predicting unknown or unmeasured data and identifying optimal operating conditions. This research addresses these challenges using machine learning, specifically an artificial neural network (ANN), a self-learning and nonlinear method capable of approximating complex functions, making it ideal for ORC prediction models. The novelty of this study lies in developing a 2 kW ORC prototype and applying ANN to predict and optimize performance using 102 experimental data sets—reducing experimental resource requirements and enhancing model accuracy. Additionally, a multi-objective optimization approach is used to simultaneously maximize net output work and thermal efficiency, setting a benchmark for efficient, low-cost, and sustainable ORC system designs. The benefits of this research include advancing predictive modeling for ORC systems, improving resource efficiency, and providing insights into optimized ORC operations for real-world applications.
基于人工神经网络(ANN)的实验ORC性能评价、预测分析与优化
有机朗肯循环(ORC)系统作为转换低品位热能的最有效解决方案脱颖而出,使其对分散发电非常有效,并适应各种热源,如太阳能、地热、生物质和不同温度下的废热回收。与传统的朗肯循环不同,ORC系统使用制冷剂或混合流体作为工作流体,这些流体的沸点比水低,并且对环境友好,可以在较小的规模和较低的温度(200°C以上)下进行高效发电。虽然已经进行了许多关于ORC的实验研究,但在准确预测未知或未测量数据以及确定最佳操作条件方面仍然存在重大差距。本研究使用机器学习解决了这些挑战,特别是人工神经网络(ANN),一种能够逼近复杂函数的自学习和非线性方法,使其成为ORC预测模型的理想选择。本研究的新颖之处在于开发了一个2kw的ORC原型,并使用102个实验数据集应用ANN来预测和优化性能,从而减少了实验资源需求并提高了模型准确性。此外,采用多目标优化方法同时最大化净输出功和热效率,为高效、低成本和可持续的ORC系统设计设定了基准。这项研究的好处包括推进ORC系统的预测建模,提高资源效率,并为实际应用提供优化ORC操作的见解。
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来源期刊
Energy nexus
Energy nexus Energy (General), Ecological Modelling, Renewable Energy, Sustainability and the Environment, Water Science and Technology, Agricultural and Biological Sciences (General)
CiteScore
7.70
自引率
0.00%
发文量
0
审稿时长
109 days
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