Variance-based global sensitivity analysis and beyond in life cycle assessment: an application to geothermal heating networks

被引:15
|
作者
Jaxa-Rozen, Marc [1 ]
Pratiwi, Astu Sam [1 ]
Trutnevyte, Evelina [1 ]
机构
[1] Univ Geneva, Inst Environm Sci ISE, Sect Earth & Environm Sci, Renewable Energy Syst, CH-1205 Geneva, Switzerland
来源
关键词
Uncertainty; Sensitivity analysis; Clustering; Trade-off analysis; Scenario discovery; IMPROVING SCENARIO DISCOVERY; UNCERTAINTY IMPORTANCE; ENVIRONMENTAL-MODELS; IMPACT ASSESSMENT; LCA; VARIABILITY; ENERGY; SOBOL;
D O I
10.1007/s11367-021-01921-1
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Purpose Global sensitivity analysis increasingly replaces manual sensitivity analysis in life cycle assessment (LCA). Variance-based global sensitivity analysis identifies influential uncertain model input parameters by estimating so-called Sobol indices that represent each parameter's contribution to the variance in model output. However, this technique can potentially be unreliable when analyzing non-normal model outputs, and it does not inform analysts about specific values of the model input or output that may be decision-relevant. We demonstrate three emerging methods that build on variance-based global sensitivity analysis and that can provide new insights on uncertainty in typical LCA applications that present non-normal output distributions, trade-offs between environmental impacts, and interactions between model inputs. Methods To identify influential model inputs, trade-offs, and decision-relevant interactions, we implement techniques for distribution-based global sensitivity analysis (PAWN technique), spectral clustering, and scenario discovery (patient rule induction method: PRIM). We choose these techniques because they are applicable with generic Monte Carlo sampling and common LCA software. We compare these techniques with variance-based Sobol indices, using a previously published LCA case study of geothermal heating networks. We assess eight environmental impacts under uncertainty for three design alternatives, spanning different geothermal production temperatures and heating network configurations. Results In the application case on geothermal heating networks, PAWN distribution-based sensitivity indices generally identify influential model parameters consistently with Sobol indices. However, some discrepancies highlight the potentially misleading interpretation of Sobol indices on the non-normal distributions obtained in our analysis, where variance may not meaningfully describe uncertainty. Spectral clustering highlights groups of model results that present different trade-offs between environmental impacts. Compared to second-order Sobol interaction indices, PRIM then provides more precise information regarding the combinations of input values associated with these different groups of calculated impacts. PAWN indices, spectral clustering, and PRIM have a computational advantage because they yield stable results at relatively small sample sizes (n = 12,000), unlike Sobol indices (n = 100,000 for second-order indices). Conclusions We recommend adding these new techniques to global sensitivity analysis in LCA as they give more precise as well as additional insights on uncertainty regardless of the distribution of the model outputs. PAWN distribution-based global sensitivity analysis provides a computationally efficient assessment of input sensitivities as compared to variance-based global sensitivity analysis. The combination of clustering and scenario discovery enables analysts to precisely identify combinations of input parameters or uncertainties associated with different outcomes of environmental impacts.
引用
收藏
页码:1008 / 1026
页数:19
相关论文
共 50 条
  • [21] An efficient sampling method for variance-based sensitivity analysis
    Yun, Wanying
    Lu, Zhenzhou
    Zhang, Kaichao
    Jiang, Xian
    [J]. STRUCTURAL SAFETY, 2017, 65 : 74 - 83
  • [22] Application of a variance-based sensitivity analysis method to the Biomass Scenario Learning Model
    Jadun, Paige
    Vimmerstedt, Laura J.
    Bush, Brian W.
    Inman, Daniel
    Peterson, Steve
    [J]. SYSTEM DYNAMICS REVIEW, 2017, 33 (3-4) : 311 - 335
  • [23] Variance-Based Global Sensitivity Analysis: A Methodological Framework and Case Study for Microkinetic Modeling
    van den Boorn, Bart F. H.
    van Berkel, Matthijs
    Bieberle-Hutter, Anja
    [J]. ADVANCED THEORY AND SIMULATIONS, 2023, 6 (10)
  • [24] Variance-based sensitivity analysis of a forest growth model
    Song, Xiaodong
    Bryan, Brett A.
    Paul, Keryn I.
    Zhao, Gang
    [J]. ECOLOGICAL MODELLING, 2012, 247 : 135 - 143
  • [25] Variance-Based Sensitivity Analysis: Preliminary Results in COAMPS
    Marzban, Caren
    Sandgathe, Scott
    Doyle, James D.
    Lederer, Nicholas C.
    [J]. MONTHLY WEATHER REVIEW, 2014, 142 (05) : 2028 - 2042
  • [26] Analytical variance-based global sensitivity analysis in simulation-based design under uncertainty
    Chen, W
    Jin, RC
    Sudjianto, A
    [J]. JOURNAL OF MECHANICAL DESIGN, 2005, 127 (05) : 875 - 886
  • [27] Variance-based global sensitivity analysis of the performance of a proton exchange membrane water electrolyzer
    Laoun, Brahim
    Kannan, Arunachala M.
    [J]. INTERNATIONAL JOURNAL OF HYDROGEN ENERGY, 2024, 85 : 440 - 456
  • [28] Variance-Based Global Sensitivity Analysis via Sparse-Grid Interpolation and Cubature
    Buzzard, Gregery T.
    Xiu, Dongbin
    [J]. COMMUNICATIONS IN COMPUTATIONAL PHYSICS, 2011, 9 (03) : 542 - 567
  • [29] Change of Support in Spatial Variance-Based Sensitivity Analysis
    Saint-Geours, Nathalie
    Lavergne, Christian
    Bailly, Jean-Stephane
    Grelot, Frederic
    [J]. MATHEMATICAL GEOSCIENCES, 2012, 44 (08) : 945 - 958
  • [30] Change of Support in Spatial Variance-Based Sensitivity Analysis
    Nathalie Saint-Geours
    Christian Lavergne
    Jean-Stéphane Bailly
    Frédéric Grelot
    [J]. Mathematical Geosciences, 2012, 44 : 945 - 958