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首页> 外文期刊>Environmental Science & Technology >How Much Are We Saving after All? Characterizing the Effects of Commonly Varying Assumptions on Emissions and Damage Estimates in PJM
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How Much Are We Saving after All? Characterizing the Effects of Commonly Varying Assumptions on Emissions and Damage Estimates in PJM

机译:我们到底能节省多少?表征共同变化的假设对PJM中排放和损害估计的影响

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摘要

In recent years, several methods have emerged to estimate the emissions and health, environmental, and climate change damages avoided by interventions such as energy efficiency, demand response, and the integration of renewables. However, differing assumptions employed in these analyses could yield contradicting recommendations regarding intervention implementation. We test the magnitude of the effect of using different key assumptions-average vs marginal emissions, year of calculation, temporal and regional scope, and inclusion of nonemitting generation-to estimate Mid-Atlantic region power pool (PJM) emissions and damage factors. We further highlight the importance of factor selection by evaluating three illustrative 2017 power system examples in PJM. We find that for a simple building lighting intervention, using average emissions factors incorporating nonemitting generation underestimates avoided damages by 45% compared to marginal factors. For PJM demand response, outdated marginal emissions factors from 2016 overestimate avoided damages by 25% compared to 2017 factors. Our assessment of PJM summer load further suggests that fossil-only average emissions factors overestimate damages by 63% compared to average factors incorporating nonemitting generation. We recommend that energy modelers carefully select appropriate emissions metrics when performing their analyses. Furthermore, since the U.S. electric grid is rapidly changing, we urge decision-makers to frequently update (and consider forecasting) grid emissions factors.
机译:近年来,已经出现了几种方法来估算排放量以及对能源效率,需求响应和可再生能源整合等干预措施避免的健康,环境和气候变化损害。但是,在这些分析中采用的不同假设可能会产生有关干预措施实施的相互矛盾的建议。我们测试了使用不同关键假设(平均排放量与边际排放量,计算年份,时间和区域范围以及包括不排放发电量)的影响程度,以估算大西洋中部地区的电力池(PJM)排放量和损害因子。通过评估PJM中的三个2017年示例性电力系统示例,我们进一步强调了因素选择的重要性。我们发现,对于简单的建筑照明干预而言,使用平均排放因子并结合非排放产生量,与边缘性因素相比,低估了避免的损失45%。对于PJM需求响应,2016年过时的边际排放因子高估了避免损失,与2017年相比,减少了25%。我们对PJM夏季负荷的评估进一步表明,与纳入非排放发电的平均因素相比,仅化石燃料的平均排放因素高估了损失63%。我们建议能源建模人员在执行分析时,请仔细选择合适的排放指标。此外,由于美国电网瞬息万变,我们敦促决策者经常更新(并考虑预测)电网排放因子。

著录项

  • 来源
    《Environmental Science & Technology》 |2019年第16期|9905-9914|共10页
  • 作者单位

    Carnegie Mellon Univ Dept Engn & Publ Policy Pittsburgh PA 15213 USA|Carnegie Mellon Univ Comp Sci Dept Pittsburgh PA 15213 USA;

    Carnegie Mellon Univ Comp Sci Dept Pittsburgh PA 15213 USA|Bosch Ctr Artificial Intelligence Pittsburgh PA 15222 USA;

    Carnegie Mellon Univ Dept Engn & Publ Policy Pittsburgh PA 15213 USA|Stanford Univ Sch Earth Energy & Environm Dept Energy Resources Engn Stanford CA 94305 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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