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Adapting to the Weather: Lessons from U.S. History

Published online by Cambridge University Press:  21 August 2017

Hoyt Bleakley
Affiliation:
Hoyt Bleakley is Associate Professor, Department of Economics, University of Michigan, 611 Tappan Avenue, Ann Arbor, MI 48109-1220. E-mail: hoytb@umich.edu.
Sok Chul Hong*
Affiliation:
Sok Chul Hong is Associate Professor, Department of Economics, Seoul National University, 1 Gwanak-ro, Gwanak-gu, Seoul, 08826, South Korea.
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Abstract

An important unknown in understanding the impact of climate change is the scope of adaptation, which requires observations on historical time scales. We consider how weather across U.S. history (1860–2000) has affected various measures of productivity. Using cross-sectional and panel methods, we document significant responses of agricultural and individual productivity to weather. We find strong effects of hotter and wetter weather early in U.S. history, but these effects have generally been attenuated in recent decades. The results suggest that estimates from a given period may be of limited use in forecasting the longer-term impacts of climate change.

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Articles
Copyright
Copyright © The Economic History Association 2017 
Figure 0

Figure 1 LOG COUNTY AVERAGE FARM VALUE PER ACRE BY 10-YEAR AVERAGE TEMPERATURE AND PRECIPITATION

Notes: Each weather variable on the x-axis denotes the 10-year average of annual weather values prior to each census year. The y-axis denotes the logarithm of the county average farm value per farmland acre. Solid curves are lowess fit curves, and dotted lines are linear fit lines.Sources: Authors' calculations based on farm statistics found in the historical census records (Haines and ICPSR 2010) and Kriging-interpolated weather variables. Details are provided in Appendices 1 and 2.
Figure 1

Figure 2 TREND OF THE ESTIMATED EFFECT OF LONG-TERM TEMPERATURE AND PRECIPITATION ON COUNTY FARM VALUE PER ACRE

Notes: We ran the weighted regressions of the logarithm of county average farm value on the 10-year average of annual mean temperature or annual accumulated precipitation prior to each census year, standard controls, and their interactions with the dummies that indicate the 1880–2000 census years, per equation (1). Thus, the reference year is 1870. Each panel is the graphical presentation of regression coefficients of each weather variable. The dotted and dashed lines are the estimation results that employ year and state-by-year fixed effects, respectively; the solid lines additionally employ county fixed effects. The detailed regression results with county fixed effects are reported in Appendix Table 3 in Appendix 3.Sources: Authors' calculations.
Figure 2

Table 1 CENTURY DIFFERENCE IN THE RESPONSE OF COUNTY FARM VALUE TO LONG-TERM WEATHER CONDITIONS

Figure 3

Table 2 CENTURY DIFFERENCES IN THE RESPONSE OF COUNTY FARM OUTPUT VALUE TO SHORT-TERM WEATHER CONDITIONS

Figure 4

Table 3 ALTERNATIVE WEATHER VARIABLES AND INFLUENCE OF LARGE-SCALE AGRICULTURAL COUNTIES

Figure 5

Table 4 ALTERNATIVE MEASURES OF FARM PRODUCTIVITY

Figure 6

Figure 3 THE RELATION BETWEEN AVERAGE WEATHER CONDITIONS IN EARLY LIFE AND ADULT INCOME BY TWO COHORTS

Notes: This figure plots a proxy of adult income against the state-of-birth average temperature and precipitation for earlier- and later-born cohorts in the United States. We use the 1860–2000 average of annual mean temperature and annual accumulated precipitation by state. A cohort is defined by year of birth and state of birth. Data on native adult white males are drawn from the 1880 and 1900–1990 IPUMS, which span the years of birth 1860–1960. The outcome variable is the average occupational income score, transformed into natural logarithms. Cohorts are grouped into those born before 1900 (in the left plots) and those born after 1930 (in the right plots). The x-axis is the state-of-birth average temperature in the upper plots or precipitation in the bottom plots. The y-axis in each plot refers to the cohort group's average income score. State abbreviations are used to denote the position of each point. The solid line is the best-fit regression line between the points.Sources: Authors' calculations based on IPUMS dataset (Ruggles et al. 2015) and Kriging-interpolated weather variables.
Figure 7

Figure 4 SHORT-TERM WEATHER FLUCTUATIONS AROUND YEAR OF BIRTH AND OCCUPATIONAL INCOME IN ADULTHOOD

Notes: This figure summarizes regressions of cohort outcome on early-life weather conditions, per equation (3) in the text. Short-term weather variable is annual mean temperature or accumulated precipitation in each state. A cohort is defined by year of birth and state of birth. Data on native adult white males are drawn from U.S. censuses of 1880 and 1900–1990, which span the years of birth 1860–1960. The outcome variable is, at the cohort level, the occupational income score transformed into natural logarithms. The x-axis in each plot refers to the calendar year minus the year of birth. The y-axis in each plot displays the estimated regression coefficient on the interaction of the indicated weather variable (temperature or precipitation) and a dummy for the calendar year minus year of birth. The error bars reflect 95 percent confidence intervals for each coefficient.Sources: Authors' calculations.
Figure 8

Figure 5 THE DIMINISHING EFFECTS OF EARLY-LIFE WEATHER FLUCTUATIONS ON OCCUPATIONAL INCOME IN ADULTHOOD

Notes: We estimated equation (3) for a 40-year-wide moving window so that the sample for each regression includes white-male cohorts born 20 years before and after the target year. Regarding weather variables, we only control for temperature in the period one year after birth and precipitation at the year of birth according to the results in Figure 4. The x-axis in each plot refers to the average year of birth for cohort samples used. The y-axis in each plot displays the estimated regression coefficient on the interaction of the indicated weather variable (temperature or precipitation) and a dummy for the year chosen as explained above. The error bars reflect 95 percent confidence intervals for each coefficient.Sources: Authors' calculations.
Figure 9

APPENDIX FIGURE 1 COMPARISON BETWEEN ACTUAL AND ESTIMATED WEATHER VARIABLES

Notes: In the figures, we test the validity of Kriging estimation for 60 counties randomly selected. We estimated their annual and decadal weather variables and compared with actual values. P-values denoted on the figures accept the null hypothesis that estimated and actual values are statistically the same. Each line on the figures is a 45-degree line. The correlation coefficients between estimated and actual values are 0.9699 (left) and 0.9683 (right) for the upper panel, and 0.9284 (left) and 0.9791 (right) on the lower panel.Sources: Authors' calculations.
Figure 10

Appendix Table 1 SUMMARY STATISTICS: COUNTY WEATHER VARIABLES

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Appendix Table 2 SUMMARY STATISTICS: FARM PRODUCTIVITY MEASURES AND CONTROLS

Figure 12

Appendix Table 3 THE EFFECTS OF LONG-TERM TEMPERATURE AND PRECIPITATION ON FARM VALUE: USING DATA WITH AND WITHOUT COUNTY BOUNDARY ADJUSTMENT

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Appendix Table 4 EFFECT OF COUNTY BOUNDARY CHANGE

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