基于生物质气化和地热能的可再生多发电系统:利用神经网络和灰狼优化技术进行技术经济分析

IF 8.9 2区 工程技术 Q1 ENERGY & FUELS
Jing Wang , Ali Basem , Hayder Oleiwi Shami , Veyan A. Musa , Pradeep Kumar Singh , Yousef Mohammed Alanazi , Ali Shawabkeh , Husam Rajab , A.S. El-Shafay
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引用次数: 0

摘要

由于能源普遍依赖化石燃料,气候变化、空气污染和资源枯竭等环境挑战日益严峻。要解决这些问题,就必须转向更清洁的可再生能源,在满足日益增长的能源需求的同时,最大限度地减少对环境的影响。本文结合热力学原理和机器学习,对一个包括生物质气化器、PEM 电解器、地热能源、热电发电机和加湿除湿(HDH)脱盐装置的新型系统进行了全面分析。生物质气化炉将原料转化为合成气,这是联合动力循环的主要燃料。氢气储存被认为是更广泛采用氢气作为清洁能源的关键因素,高效的储存方法对于氢气在燃料电池、运输和各种工业应用中的使用至关重要。地热能可补充系统的能源需求,增强可持续性。此外,卡利纳循环还能回收燃气轮机的废热,产生额外的电力,进一步提高系统效率。数据驱动模型在集成系统中用于预测系统行为,从而实现实时优化和自适应控制,并提高性能和资源利用率。结合热力学和机器学习分析,可以深入了解集成可再生能源系统内部复杂的相互作用和协同效应。研究结果表明,此类系统具有可行性和潜力,可持续满足能源需求,同时最大限度地减少对环境的影响。第一个优化方案的优化点描述了初始参数下的能效、Ẇnet 和 CPsys,分别为 47.93 %、5958 kW 和 56.97 美元/GJ。在第二种优化方案中,优化点的能效比、Ẇnet 和 CPsys 分别为 0.3996 kg/kWh、5957.88 kW 和 56.90 $/GJ。在第三个优化方案中,优化点的 EI、放能效率和ṁhydrogen 分别为 0.3996 kg/kWh、47.97 % 和 56.085 kg/h。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A renewable multigeneration system based on biomass gasification and geothermal energy: Techno-economic analysis using neural network and Grey Wolf optimization
Environmental challenges such as climate change, air pollution, and resource depletion are intensifying due to the widespread reliance on fossil fuels for energy. Addressing these problems requires a shift toward cleaner, renewable energy sources that can meet growing energy demands while minimizing environmental impact. This paper provides a comprehensive analysis, combining thermodynamic principles and machine learning, of a novel system that includes a biomass gasifier, PEM electrolyzer, geothermal energy source, thermoelectric generators, and a humidification-dehumidification (HDH) desalination unit. The biomass gasifier converts feedstock into syngas, the primary fuel for a combined power cycle. Hydrogen storage is identified as a key factor in the wider adoption of hydrogen as a clean energy source, with efficient storage methods crucial for its use in fuel cells, transportation, and various industrial applications. Geothermal energy is incorporated to supplement the system's energy needs, enhancing sustainability. Additionally, the Kalina cycle recovers waste heat from the gas turbine to generate extra electricity, further boosting the system's efficiency. Data-driven models are utilized in an integrated system to predict system behavior, enabling real-time optimization and adaptive control, and enhancing performance and resource utilization. The combined thermodynamic and machine learning analysis provides insights into the complex interactions and synergies within the integrated renewable energy system. Results demonstrate the feasibility and potential of such systems to meet energy demands sustainably while minimizing environmental footprint. Elicited optimized results are comprised of two scenarios including essential parameters such as exergy efficiency, Ẇnet (net produced work), and CPsys (cost of products).The optimized point in the first optimization scenario depicts exergy efficiency, Ẇnet, and CPsys of 47.93 %, 5958 kW, and 56.97 $/GJ with the initial parameters. In the second optimization scenario, the optimized point depicts EI, Ẇnet, and CPsys of 0.3996 kg/kWh, 5957.88 kW, and 56.90 $/GJ with the initial parameters. In the third optimization scenario, the optimized point depicts EI, exergy efficiency, and ṁhydrogen of 0.3996 kg/kWh, 47.97 %, and 56.085 kg/h with the initial parameters.
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来源期刊
Journal of energy storage
Journal of energy storage Energy-Renewable Energy, Sustainability and the Environment
CiteScore
11.80
自引率
24.50%
发文量
2262
审稿时长
69 days
期刊介绍: Journal of energy storage focusses on all aspects of energy storage, in particular systems integration, electric grid integration, modelling and analysis, novel energy storage technologies, sizing and management strategies, business models for operation of storage systems and energy storage developments worldwide.
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