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Using clustering algorithms to characterise uncertain long-term decarbonisation pathways

机译:使用聚类算法表征不确定的长期脱碳途径

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摘要

Long-term decarbonisation pathways to achieve ambitious low-carbon targets involve a range of uncertainties. Different energy system modelling approaches can be used to systematically evaluate the influence of the uncertainties, but this often leads to an unmanageable number of pathways. Summarising the large ensemble through a more limited number of representative pathways, to inform stakeholders, can be challenging. This study thus explores how to identify representative decarbonisation pathways using clustering algorithms, which can assist in grouping similar data points in uncategorised datasets, such as pathway ensembles. However, the suitability of clustering algorithms for pathway characterisation has not been investigated to date. Hence, kmeans, hierarchical clustering, Gaussian mixture model, spectral clustering, and density-based clustering are adopted for comparisons. An illustrative pathway ensemble for the United Kingdom is applied to evaluate their performance based on cluster validity indices. Three metric transformations, including power, standardisation and sectoral standardisation, are also applied to create three additional sets of pathways for testing. The k-means algorithm is found to outperform others consistently, although hierarchical clustering might also be applicable if the distribution of pathway proximity is uneven. The results also highlight the utility of the approach in revealing distinctive trade-offs between technologies among the identified representative pathways. For instance, the electrification of heating can be replaced by district heating in the residential sector. The described, novel approach can be applied to characterise other sets of pathways, with greater technological details generated by any energy system models, to reveal insights for long-term decarbonisation.
机译:实现雄心勃勃的低碳目标的长期脱碳途径涉及一系列不确定性。不同的能源系统建模方法可用于系统地评估不确定性的影响,但这通常会导致无管理数量的途径。通过更多有限数量的代表途径来总结大型集合,以通知利益相关者,可能是挑战性的。因此,本研究探讨了如何使用聚类算法识别代表性脱碳途径,这可以有助于在未分类的数据集中分组类似的数据点,例如路径集合。然而,迄今尚未调查用于途径表征的聚类算法的适用性。因此,采用kmeans,分层聚类,高斯混合模型,光谱聚类和基于密度的聚类进行比较。适用于英国的说明性途径合奏,以评估其基于集群有效性指数的性能。还应用了三个公制变换,包括电源,标准化和部门标准化,以创建三组用于测试的途径。发现k-means算法始终始终如一,尽管分层聚类也可能适用,但如果路径接近的分布也是不均匀的。结果还突出了该方法在揭示了所识别的代表途径之间揭示技术之间的独特权衡的效用。例如,加热的电气化可以通过住宅扇区中的地区加热代替。所描述的新方法可以应用于表征其他途径,具有更大的技术细节,由任何能量系统模型产生,以揭示对长期脱碳的见解。

著录项

  • 来源
    《Applied Energy》 |2020年第15期|114947.1-114947.29|共29页
  • 作者单位

    UCL UCL Energy Inst Cent House 14 Upper Woburn Pl London WC1H 0NN England;

    UCL UCL Energy Inst Cent House 14 Upper Woburn Pl London WC1H 0NN England;

    UCL UCL Energy Inst Cent House 14 Upper Woburn Pl London WC1H 0NN England;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Uncertainty; Decarbonisation pathways; Energy transition; Clustering analysis;

    机译:不确定性;脱碳途径;能量转换;聚类分析;

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