When we don't know the costs or the benefits: Adaptive strategies for abating climate change

被引:86
作者
Lempert, RJ [1 ]
Schlesinger, ME [1 ]
Bankes, SC [1 ]
机构
[1] UNIV ILLINOIS,DEPT ATMOSPHER SCI,URBANA,IL 61801
关键词
D O I
10.1007/BF00140248
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Most quantitative studies of climate-change policy attempt to predict the greenhouse-gas reduction plan that will have the optimum balance of long-term costs and benefits. We find that the large uncertainties associated with the climate-change problem can make the policy prescriptions of this traditional approach unreliable. In this study, we construct a large uncertainty space that includes the possibility of large and/or abrupt climate changes and/or of technology breakthroughs that radically reduce projected abatement costs. We use computational experiments on a linked system of climate and economic models to compare the performance of a simple adaptive strategy - one that can make midcourse corrections based on observations of the climate and economic systems - and two commonly advocated 'best-estimate' policies based on different expectations about the longterm consequences of climate change. We find that the 'Do-a-Little' and 'Emissions-Stabilization' best-estimate policies perform well in the respective regions of the uncertainty space where their estimates are valid, but can fail severely in those regions where their estimates are wrong. In contrast, the adaptive strategy can make midcourse corrections and avoid significant errors. While its success is no surprise, the adaptive-strategy approach provides an analytic framework to examine important policy and research issues that will likely arise as society adapts to climate change, which cannot be easily addressed in studies using best-estimate approaches.
引用
收藏
页码:235 / 274
页数:40
相关论文
共 46 条
[1]  
[Anonymous], LECT SCI COMPLEXITY
[2]  
[Anonymous], 1990, ELECT AM EC AGENT TE
[3]  
BANKES S, 1994, HIGH PERFORMANCE COMPUTING SYMPOSIUM 1994: GRAND CHALLENGES IN COMPUTER SIMULATION, P382
[4]   EXPLORATORY MODELING FOR POLICY ANALYSIS [J].
BANKES, S .
OPERATIONS RESEARCH, 1993, 41 (03) :435-449
[5]  
BANKES S, 1994, CHANCE, V7, P50
[6]  
BANKES S, 1994, P 3 ANN C EV PROGR, P353
[7]  
BANKES SC, 1996, IN PRESS IEEE SOFTWA
[8]  
DARMSTADTER J, 1993, ASSESSING SURPRISES, P70
[9]  
DEGEUS AP, 1988, HARVARD BUSINESS MAR, P70
[10]  
DEWAR JA, 1993, MR114A