用于发电、海水淡化和燃料合成的太阳能驱动混合系统的人工智能辅助多目标优化和性能分析

IF 7.9 Q1 ENGINEERING, MULTIDISCIPLINARY
Seyed Farhan Moosavian, Ahmad Hajinezhad
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引用次数: 0

摘要

本研究评估了一个多用途、自给自足的系统的性能,该系统包括定日太阳能农场、中央热接收器、超临界CO₂布雷顿循环、有机朗肯循环(ORC)、反渗透(RO)装置、PEM电解槽、CO 2吸收装置和甲醇合成装置。其目的是通过生物产品的整合实现可持续生产,同时最大限度地发挥设计的技术和经济潜力。据评估,该系统在执行情况和成本效益方面对投资具有吸引力。仿真结果表明,该配置可从超临界CO₂布雷顿循环中产生4.69 MW的功率,从ORC中产生383 kW的功率,同时产生0.2 m³/h的淡水,88 kg/h的CO₂,14 kg/h的氢气和63 kg/h的甲醇,总㶲效率为52.6%。最后,利用机器学习技术构建人工神经网络(ANN),并通过灰狼算法对系统进行优化,该算法考虑了二目标、三目标、四目标、五目标和六目标模式下的五个决策变量。6个目标方案实现了最佳性能,火用效率为54.18%,总成本率为6376美元/小时,氢气和甲醇产量分别为16.87 kg/h和65.3 kg/h, LCOE和LEIOE值分别为0.0744美元/kWh和20.45 Pts/MWh。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-assisted multi-objective optimization and performance analysis of a solar-driven hybrid system for power generation, desalination and fuel synthesis
This study evaluates the performance of a multipurpose, self-sufficient system comprising a heliostat solar farm, a central thermal receiver, supercritical CO₂ Brayton cycles, an organic Rankine cycle (ORC), a reverse osmosis (RO) unit, a PEM electrolyzer, a CO₂ absorption unit, and a methanol synthesis unit. The aim was to achieve sustainable production through the integration of bioproducts while maximizing the technical and economic potential of the design. The system was assessed to be attractive for investment in terms of both performance and cost-effectiveness. Simulation results indicate that the proposed configuration can generate 4.69 MW of power from the supercritical CO₂ Brayton cycle and 383 kW from the ORC, while producing 0.2 m³/h of freshwater, 88 kg/h of CO₂, 14 kg/h of hydrogen, and 63 kg/h of methanol, with an overall exergy efficiency of 52.6 %. In the final stage, an artificial neural network (ANN) was developed using machine learning techniques, and the system was optimized via the Gray Wolf algorithm considering five decision variables across two-, three-, four-, five-, and six-objective modes. The six-objective scenario achieved the best performance, yielding an exergy efficiency of 54.18 %, a total cost rate of 6376 $/h, hydrogen and methanol production rates of 16.87 kg/h and 65.3 kg/h, respectively, and LCOE and LEIOE values of 0.0744 $/kWh and 20.45 Pts/MWh.
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来源期刊
Results in Engineering
Results in Engineering Engineering-Engineering (all)
CiteScore
5.80
自引率
34.00%
发文量
441
审稿时长
47 days
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