Energy system optimization based on fuzzy decision support system and unstructured data

Q2 Energy Energy Informatics Pub Date : 2024-09-27 DOI:10.1186/s42162-024-00396-2
Zhe Zhang
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Abstract

To address the complex challenges in energy systems, this study proposes a novel optimization framework that integrates fuzzy decision support and unstructured data processing technologies. This framework aims to improve efficiency, reduce costs, decrease environmental impact, increase system flexibility, and enhance user satisfaction, thereby promoting sustainable development in the energy industry. The framework combines the innovative Energy Semantic Mapping Model (ESMM) and the advanced deep learning architecture ResNet to process textual and visual data effectively. ESMM enables accurate prediction of energy demand, while ResNet significantly reduces equipment maintenance costs and improves energy distribution efficiency. These advancements are critical as they address the limitations of existing approaches in handling large-scale unstructured data and making informed decisions under uncertainty. The Environmental Impact Assessment (EIA) confirms the model's effectiveness in reducing carbon emissions. A comprehensive economic analysis demonstrates substantial cost savings in energy procurement and operations and maintenance, with overall savings exceeding 25%. Enhanced user satisfaction and reduced system response times further validate the practical utility of the proposed approach. Additionally, a genetic algorithm is used to optimize the fuzzy rule base, enhancing the robustness and adaptability of the model. Experimental results show superior performance compared to traditional systems, providing strong empirical evidence for the intelligent transformation of energy systems. This research contributes to the field by offering a more sophisticated and flexible solution for managing energy systems, particularly in terms of leveraging unstructured data and improving decision-making processes.

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基于模糊决策支持系统和非结构化数据的能源系统优化
为应对能源系统面临的复杂挑战,本研究提出了一种新型优化框架,该框架整合了模糊决策支持和非结构化数据处理技术。该框架旨在提高效率、降低成本、减少环境影响、增加系统灵活性并提高用户满意度,从而促进能源行业的可持续发展。该框架结合了创新的能源语义映射模型(ESMM)和先进的深度学习架构 ResNet,可有效处理文本和可视数据。ESMM 能够准确预测能源需求,而 ResNet 则能显著降低设备维护成本并提高能源分配效率。这些进步至关重要,因为它们解决了现有方法在处理大规模非结构化数据和在不确定情况下做出明智决策方面的局限性。环境影响评估(EIA)证实了该模型在减少碳排放方面的有效性。全面的经济分析表明,在能源采购和运营维护方面节省了大量成本,总体节省率超过 25%。用户满意度的提高和系统响应时间的缩短进一步验证了所提方法的实用性。此外,还使用遗传算法优化模糊规则库,增强了模型的稳健性和适应性。实验结果表明,与传统系统相比,该方法性能优越,为能源系统的智能化改造提供了有力的经验证据。这项研究为能源系统管理提供了一个更复杂、更灵活的解决方案,特别是在利用非结构化数据和改进决策过程方面,为该领域做出了贡献。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
期刊最新文献
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