Hostname: page-component-cd9895bd7-mkpzs Total loading time: 0 Render date: 2024-12-23T04:26:29.309Z Has data issue: false hasContentIssue false

Climate change and productivity of northeastern dairy farms

Published online by Cambridge University Press:  16 March 2022

Rigoberto A. Lopez*
Affiliation:
Agricultural and Resource Economics, University of Connecticut, Storrs, CT, USA
Christopher Laughton
Affiliation:
Knowledge Exchange, Farm Credit East, Enfield, CT, USA
Donghoon Kim
Affiliation:
Agricultural and Resource Economics, University of Connecticut, Storrs, CT, USA
Hyun Soo Suh
Affiliation:
Economics, Washington University in St. Louis, St. Louis, MO, USA
*
*Corresponding author. Email: [email protected]
Rights & Permissions [Opens in a new window]

Abstract

This article examines the impact of extreme weather on dairy farm productivity in the northeastern U.S., accounting for the effects of extreme temperatures on dairy cow productivity and on feed production—the predominant feeding system in the region. Using a stochastic frontier production model and 2010–20 dairy farm-level data, we find that although heat stress impacts cow productivity negatively, it increases feed production. No discernable impacts of extreme cold temperatures were found. Additional results indicate the presence of significant labor-augmenting productivity and that larger farms experience larger productivity growth thanks to increasing returns to scale and allocative efficiency.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2022. Published by Cambridge University Press on behalf of the Northeastern Agricultural and Resource Economics Association

Introduction

Climate change is likely to continue to increase average daily temperatures and the frequency of heat waves, which can reduce meat and milk production in animals (Key, Sneeringer, and Marquardt Reference Key, Sneeringer and Marquardt2014). The effects of extreme heat on dairy production and the health and well-being of animals have been widely documented in the animal science literature. Warmer temperatures can lead to increased animal heat stress and economic losses (Mader Reference Mader2003; St. Pierre, Cobanov, and Schnitkey Reference St. Pierre, Cobanov and Schnitkey2003). With projected increases in heat and precipitation spells and continued technological changes, a greater understanding of the effects of weather and new technologies on the efficiency and productivity of dairy farm operations is important for focusing management and public policies on mitigating adverse weather effects and promoting adoption of input-augmenting technologies. In addition, extreme cold temperatures have been acknowledged as negatively affecting dairy cow production (West, Mullinix, and Bernard Reference West, Mullinix and Bernard2003). Understandably, previous studies in the animal science and agricultural economics literature (e.g., Key and Scneeringer Reference Key and Sneeringer2014; Mukherjee, Bravo-Ureta, and De Vries Reference Mukherjee, Bravo-Ureta and De Vries2013) focus on the effect of heat stress on cows. However, given that dairy farm operations in the Northeast region, as in many other areas of the world, rely in large part on home-grown feed, such as corn silage and hay, and that feed is by far the dominant input, the effect of climate change via feed input is bound to also affect productivity (Perez-Mendez, Roibas, and Wall Reference Perez-Mendez, Roibas and Wall2019).

The dairy farm sector in the northeastern United States has undergone significant changes over the past few decades. One of the drivers of these changes has been a desire among many dairy producers to achieve greater efficiencies and economies of scale, because milk prices have generally not kept pace with overall US inflation (US Bureau of Economic Analysis 2020; US Department of Agriculture 2020). Although milk production has generally declined in several New England states, it has increased in New York, which remains the dominant producer in the region (USDA 2020). Even within New York, however, much of the growth in milk production has occurred on larger farms in the western portion of the state, while production has declined in more traditional dairy areas, such as the Hudson Valley. More recently, in the 2010–2018 period, both the cow inventory and milk production in New York have increased, even as the number of producing farms has declined (USDA 2020) due to a combination of attrition primarily among smaller farms and expansion of the remaining farms.

At the same time, in the Northeast, as in most areas of the world, people, plants, and livestock are facing a steady increase in average temperatures due to global warming, which could reduce agricultural output by as much as 25% (IPCC 2014). In the animal science literature, an abundance of studies shows that milk cows are sensitive to extreme temperatures. Since cows are vulnerable to heat stress, the increase in average daily temperatures and the frequency of heat waves may result in the reduction of meat and milk production (Key, Sneeringer, and Marquardt Reference Key, Sneeringer and Marquardt2014). Both daytime mean air temperatures during heat waves and low daytime temperatures have an impact on morning and evening cow milk output (West, Mullinix, and Bernard Reference West, Mullinix and Bernard2003). For New York State, the dominant dairy producer in the Northeast, the number of days exceeding 90 degrees Fahrenheit is predicted to increase five- to tenfold for the 2020s, 2050s, and 2080s (NSERDA 2014).Footnote 1 Thus, the overall expected average temperatures are increasing due to both higher frequency of very hot days and a lower frequency of extreme cold temperatures. As a result, the potential effects of extreme temperatures on dairy production efficiency via cow productivity in the Northeast remain in part dependent on the future of climate change.

This article examines the effects weather and technological change on the efficiency and productivity of farm milk production in the northeastern United States.Footnote 2 This region provides a useful case study for at least three reasons. First, farm milk production is economically important in the Northeast. In fact, it is the leading farm sector as well as the leading agricultural processing sector in terms of direct sales (Lopez, Laughton, and Jelliffe Reference Lopez, Laughton and Jelliffe2020). Thus, the efficiency of dairy farming has profound implications throughout the region’s economy and milk supply chain. Second, milk cows in the Northeast have been subject to significant variations in weather and technological change, allowing us to capture the effects of those factors on milk production and efficiency. Third, as in many other regions, home-grown feed production is an integral part of dairy cow feeding in the Northeast, and climate change is bound to affect feed production.

The contributions of this article are as follows. First, it updates estimates of the technical efficiency and productivity growth of dairy farms in the northeastern United States, which are rather dated (Tauer and Kelbase Reference Tauer and Belbase1987; Ahmad, Bravo-Ureta, and Mukherjee Reference Ahmad, Bravo-Ureta and Mukherjee1996). Second, we contribute to the growing literature on the effects of weather on the efficiency of dairy farms by considering the effects of extreme cold temperatures as well as the effects of heat on feed production.Footnote 3 To this end, we utilize an alternative measure of heat stress not used in previous dairy studies that use Temperature Humidity Index (THI) to capture heat stress. Third, we allow for input-saving technologies, rather than just Hick-neutral technical changes and, thus, for possible effects of labor-saving and other input-saving or augmenting technologies and their role in explaining changes in productivity growth in the dairy sector of the Northeast.

Using proprietary farm-level data from six northeastern states between 2010 and 2020, we apply a stochastic frontier (SF) translog production model using alternative measures of weather and find that farmers in this region are generally more technically efficient than suggested in previous studies and that extreme weather impairs technical efficiency considerably more than suggested by previous studies with older data sets or that are national in scope. We also find a benign effect of heat on feed production, which is consistent with Perez-Mendez, Roibas, and Wall (Reference Perez-Mendez, Roibas and Wall2019) for dairy production and on the effects of climate change on crops in colder areas (Jägermeyr, Müller, Ruane et al. Reference Jägermeyr, Müller and Ruane2021), such as the Northeast. Additionally, we find that dairy farms in this region exhibit significant increasing returns to scale and labor-augmenting technological changes, which support the tendency of the sector to become more consolidated and less labor-intensive.

Data

Production data

Our production data consist of proprietary farm-level milk production and financial data extracted from the annual Northeast Dairy Farm Summary (DFS) by the agricultural lender Farm Credit East, and it comprises 3,691 observations from dairy farms in the northeastern states from 2010 to 2020. Although the report is not a statistically random sample of the Northeast dairy industry, the farms are stripped of their names and randomly identified for the data analysis to preserve confidentiality.Footnote 4 Because of confidentiality concerns, the locations of the farms are only identified at the county level. The DFS has been produced for several years in a relatively consistent fashion, providing a valuable source of cross-sectional data. The data consist of balance sheet and income statement items as well as production information for each farm.Footnote 5

Output is measured by a farm’s total milk production. Inputs are divided into four categories: cows, machinery, labor, and feed. We treat cows, machinery and equipment, labor, and materials as variable inputs. Following De Loecker and Warzynski’s (Reference De Loecker and Warzynski2012) treatment of capital inputs, we treat cows as separable from other inputs and machinery as a non-separable input in the short run. Thus, our empirical model does not consider the possibility of substituting cows for machinery, labor, or feed in the short run.

For labor, the data set combines both hired labor and family labor and considers them as a single input. Small farms rely heavily on family labor, and total labor expenses are captured by the sum of hired labor expenses and family living expenses. Note that a part-time worker is considered half of a full-time worker equivalent. A feed quantity index is computed by adding up purchased feed plus crop production expenses and dividing the result by the NASS feed price index (price paid by farmers). Feed is by far the largest component of material inputs used by dairy farms in the Northeast. A trend variable (yearly trend starting from 1 in 2010 to 11 in 2020) is used to capture technical change. This trend variable is interacted with labor, feed, and machinery to capture any input-augmenting changes in technology, with a particular focus on the nature of labor-augmenting technical change.

Weather data

We collected weather information from 46 stations matching the counties where the farms in the sample are located.Footnote 6 Several measures of weather variables are considered. Following previous work, the THI is particularly useful in estimating the environmental conditions that induce heat stress (Chase Reference Chase2006). To capture potential heat stress, we measure THI at the state level. More specifically, following Chase (Reference Chase2006), THI at time t in a given location is computed as follows:

(1) $$\rm THI_t = dbt_t + (0.36 \times dew_t) + 41.2,$$

where dbt is the dry bulb temperature in degrees centigrade and dew is the dew point temperature in degrees centigrade at time t.Footnote 7 We utilize the number of days that the THI exceeds 72 at least once, which is the stress threshold for dairy cows (Chase Reference Chase2006). The advantage of the latter is that it captures the number of heat spells in a single variable while making it expedient to simulate optimal weather as the absence of heat spells.

Although most previous economic studies have not focused on extreme cold weather, we consider the possibility that extreme cold temperatures may affect technical efficiency and, therefore, include the average heating degree days (HDDs) at the state level (National Weather Service 2020). Extreme cold temperatures will result in high HDDs, requiring additional energy for heat, and cows will need to consume additional calories to keep themselves warm. In addition, cold weather requires increased management effort in terms of providing adequate shelter, water, health watch, and foot traction (University of Minnesota Extension 2019).

Finally, we also utilize alternative measures of extreme temperatures following the climate change measures used by NSERDA (2014) for New York State in all 46 weather stations used in the sample. For extreme heat, we use the number of days with maximum temperatures exceeding 90º Fahrenheit during a given year. For extreme cold, we use the number of days with minimum temperatures below 32º Fahrenheit.

Input prices

Regarding the prices of inputs used for the computation of allocative efficiency effects of weather changes, the price of feed used was proxied by a price index for feed published by USDA NASS (2020), the same one used to deflate purchase and crop feed expenses to compute the quantity of feed. For labor, we use the wage rate obtained by dividing labor expenses by the number of full-time worker equivalents, where family labor is valued at the opportunity cost of hiring workers. As in previous studies, we treat the number of cows as an input. The quantity of machinery is treated as a capital input, given its multi-year life span. Accordingly, we define the annual price of machinery based on the concept of the user cost of capital, that is, by adding interest for the opportunity cost of money and a depreciation rate for the annual loss of value of the capital stocks.Footnote 8 We then deflate machinery and equipment expenses by the user cost of capital.

The summary statistics of the variables in the sample are presented in Table 1.Footnote 9 The list of the 46 stations that supplied the weather data is found in Appendix A1, and the distribution of the observations across years is presented in Table A2.

Table 1. Summary statistics

Table 2. Effect of heat on feed

Note: Standard errors are written in parentheses. *, **, and *** denote the significance levels of 10%, 5%, and 1%, respectively.

Empirical model

Following the specification of a SF model, as in Battese and Coelli (Reference Battese and Coelli1995), to the variables assembled above, we propose the following model to estimate the effects weather on milk output:

(2) $${q_{it}} = {\alpha _i} + \sum\nolimits_{j} j{x_{ijt}} + \sum\nolimits_{jk} {{\beta _{jk}}} {x_{ijt}}{x_{ikt}} + \sum\nolimits_{jt} {{\gamma _{jt}}} {x_{ijt}}{T_t} + {\gamma _t}{T_t} + {v_{it}} - {u_{it}},$$

where ${q_{it}}$ is log of milk production by farm i in year t, ${x_{ijt}}$ denotes the log of the amount of input j utilized by farm i in year t, ${T_t}$ denotes a time trend to capture technological changes, ${v_{it}}$ is a random symmetric disturbance accounting for noise assumed to be independently, identically distributed with a mean of zero and variance $\;\sigma _v^2$ , and ${u_{it}}$ is an asymmetric error term that accounts for systematic deviations from the frontier due to weather shocks and unobservable factors such as management.

Following Greene (Reference Greene2005) and Battese and Coelli (Reference Battese and Coelli1995), we use maximum likelihood to estimate equation (2) under five alternative weather measures, using the frontier command in Stata 16. We assume that the deterministic deviation from the frontier due to weather variables is separable from purely stochastic deviations. Following the best practices for SF estimation, we estimate the deterministic component to the frontier, in the same fashion as O’Donnell (Reference O’Donnell2016), by adding the variables directly into the so-called environmental variables, thus leaving the deterministic variables outside the one-sided stochastic error. This reduces the possibility of biased estimates when the stochastic term includes determinants of the deviations (Wang and Schmidt Reference Wang and Schmidt2002). Following Coelli et al. (Reference Coelli, Rao, O’Donnell and Battesse2005), we treat weather as an environmental variable that affects deviations from the production frontier. For the sake of simplicity and without loss of generality, let weather be denoted by a single variable W. Thus, ${u_{it}}$ = ${\rho _\;}{W_{it}} + $ ${\varepsilon _{it,}}$ where ϵ is a one-sided stochastic component, such as management, that affects production. We then rewrite (2) as:

(3) $${q_{it}} = {\alpha _i} + \mathop \sum \nolimits_j {\beta _j}{x_{ijt}} + \mathop \sum \nolimits_{jk} {\beta _{jk}}{x_{ijt}}{x_{ikt}} + \mathop \sum \nolimits_{jt} {\gamma _{jt}}{x_{ijt}}{T_t} + {\gamma _t}{T_t} - {\rho _\;}{W_{it}} + {v_{it}} - {\varepsilon _{it,}}\;$$

where the random inefficiency term ϵ follows a truncated half-normal distribution ${\varepsilon _{it}}\sim{N^ + }\left( {\mu ,\sigma _\varepsilon ^2} \right)$ .Footnote 10 This is the standard form in which THI is entered in previous studies as a measure of heat stress. However, the expression in (3) assumes that the effect of weather is independent of its effects on inputs. In our case, we need to consider the effects of weather on cows as well as feed production. To consider the first, it is reasonable to assume that weather is shared across farms in the same location, but that its effects on milk output is proportional to the number of cows. Let ${x_{1it}}$ denote (the log of) the number of cows in the ith farm at time t and rewrite (3) as:

(4) $${q_{it}} = {\alpha _i} + \mathop \sum \nolimits_j {\beta _j}{x_{ijt}} + \mathop \sum \nolimits_{jk} {\beta _{jk}}{x_{ijt}}{x_{ikt}} + \mathop \sum \nolimits_{jt} {\gamma _{jt}}{x_{ijt}}{T_t} + {\gamma _t}{T_t} - {\rho _\;}{W_{it}}{x_{1it}} + {v_{it}} - {\varepsilon _{it.\;}} $$

To further characterize dairy farm operations in the region, let e i = $${{\partial {q_{it}}} \over {\partial {x_{iit}}}}$$ be the output elasticity with respect to the ith input. The degree of returns to scale is given by e = $\mathop \sum \limits_i {e_i}$ , where e > 1 denotes increasing returns to scale, which in turn denotes the expected case that output expands more than proportionally to an increase in all inputs. In the short run, when intermediate capital inputs such as cows and equipment remain fixed, the short-run returns to scale can be indicated as the sum of the elasticities for labor and feed, and this is expected to be less than 1.

As weather is also likely to affect feed production, the indirect effect of weather on feed must be considered. To this end, (the log of) feed is simply modeled as a function of weather and other factors and is assumed to be given by ${x_{2jt}}$ :

(5) $${x_{2it}} = {\alpha _0} + {\alpha _1}{W_{it}} + \mathop \sum \nolimits_f {\alpha _{2f}}{Z_{fit}} + {\varepsilon _2},$$

where ${\varepsilon _2}\;$ are the unobservable factors with distribution ${\varepsilon _2}$ N(0, $\sigma _{{\varepsilon _2}}^2$ ), and Z are other factors that affect feed production. Considering the effects through cows and feed, then, the total elasticity of milk output with respect to a percent change in a weather variable is the result of the direct effect through cow productivity and the indirect effect through feed production given by:

(6) $$d{q_{it}}d{W_{it}}{W_{it}} = \rho ({W_{it}}{x_{1it}}) + {\alpha _1}\partial {q_{it}}\partial {x_{2it}}{W_{it}} = \rho ({W_{it}}{x_{1it}}) + {\alpha _1}{e_{2it}}{W_{it}},$$

where the percent change in milk output given a 1% change in W is obtained by the sum of the direct effect through cow productivity (first term) plus the indirect effect through feed production. Note that the last term is proportional to feed elasticity of output. We estimate equation (6) for different weather variables but focus on the number of days with THI > 72 and days with temperatures >90F.

Following Coelli et al. (Reference Coelli, Rao, O’Donnell and Battesse2005), we utilize the results of model 5 in Table 3 to estimate technical efficiency scores and total factor productivity growth (TFPG). We decompose TFPG into three sources: technical changes (TCs), scale changes (SCs), and technical efficiency changes (TECs). The TC contribution is computed as the average of the partial derivatives of the output with respect to T. SC contribution is the geometric mean of two scale efficiency changes, composed of both the scale factor ( $S{F_{it}})$ and partial elasticities of production $\left( {{e_{it}}} \right)$ multiplied by the input share, where ${e_{it}} = \mathop \sum \nolimits_{j\ =\ 1}^J {e_{jit}}$ and $S{F_{it}}=1 -{ \frac{1}{e_{it}}}$ . Once operational, TFPG1 = TC + SC + TEC for each farm for which we have observations for two consecutive periods.

Table 3. Stochastic production frontier parameter estimates for northeastern dairy farms

Note: Standard errors are written in parentheses. *, **, and *** denote the significance levels of 10%, 5%, and 1%, respectively.

We also estimate a measure of productivity growth that includes allocative efficiency changes (AECs). Following Kumbhakar, Wang, and Horncastle (Reference Kumbhakar, Wang and Horncastle2015), we calculate deviations of input prices from the value of their marginal products in the allocation of inputs or departures of the marginal rate of technical substitution from the ratio of input prices. Thus, deviations from cost minimization input allocations denote allocative inefficiency in an analogous way, as Farrell (Reference Farrell1957) originally defined it. Once operational, we define TFPG, considering AECs, as TFPG2 = TFPG1 + AEC.

We utilize the predicted values from the feed equation as instrumental variables for the translog equation as well as to capture impacts of climate on feed production. We utilize model 3 in Table 2 and model 5 in Table 3 for the derived measures of weather impacts, technical efficiency scores, and productivity growth. We use maximum likelihood to estimate equation (3) under alternative weather measures, using the frontier command in Stata 16. The econometric results and weather impacts, along with technical efficiency and productivity growth effects, are presented in the section below.

Results and discussion

For the computation of the elasticities of output with respect to weather on milk production, we focus on heat stress, but we also compute the elasticities for other weather variables, that is, on the number of days with THI > 72, as in previous work on climate and dairy production, and, alternatively, on the number days when temperatures exceeded 90F, as in the NSERDA (2014) study.Footnote 11

Climate effects on feed

Table 2 presents the results for three alternative models of the effect of heat stress on feed using THI-based and 90F-based measures. For control, we use farm-size categories to proxy the feed requirements based on the number of cows. We avoid using the actual number of cows because of the spurious correlation with the cow input in the translog model. We also utilize time fixed effects and precipitation. We estimated three models: (1) THI-based, (2) 90F-based, and (3) a composite model with both THI72 and 90F days. An F-test of comparison of model 3 (unrestricted) to models 1 and 2 indicates that model 3 is significantly better in explaining feed at the 0.1% level. In addition, model 1 (THI-based) is preferred to model 2 (90F-based) at the 0.1% level. In other words, THI does a better job of explaining feed than extreme temperatures when days exceed 90F. However, both measures significantly indicate that an increase in heat measure results in a larger amount of feed. This confirms a beneficial effect of heat, as found by Perez-Mendez, Roibas, and Wall (Reference Perez-Mendez, Roibas and Wall2019) for dairy production in Asturias, Spain. We also confirm the positive effect of heat on crop production in cold and northern areas reported by Jägermeyr, Müller, Ruane et al. (Reference Jägermeyr, Müller and Ruane2021). Thus, given that home-grown production is the predominant system of feed production in the Northeast, the results indicate that climate change may result in some beneficial impacts on dairy farmers.

Effects of climate change on milk output

The estimated parameters of the translog production function under various weather specifications are presented in Table 3. We estimate five alternative models: (1) no weather variables; (2) THI72 days without feed effects; (3) THI72 days with feed IV; (4) 90F days with feed IV; and (5) a composite model with THI72 and 90F days.Footnote 12 The IVs for models (3)–(5) correspond to models (1)–(3) in Table 2. Model 2 includes the number of days with THI > 72 during the year, and thus it is analogous to the way THI has been used in previous studies of climate change and dairy production in that the impact on feed is not recognized. In models (3)–(5), we interact THI72 and 90F days with the log of cows to acknowledge that the impact depends on herd size and that one size of impact does not fit all dairy operations.

Although THI is significant in the feed equation, it is not statistically significant in all versions of the milk production equations, confirming the finding of Perez-Mendez, Roibas, and Wall (Reference Perez-Mendez, Roibas and Wall2019). Model 4 includes the number of days exceeding 90F temperature, and, in fact, this variable is significant in both the feed and the translog equations. Extremely hot days have a positive effect on feed and a negative effect on cow milk productivity. Thus, at least for cold areas like the northeastern United States, the results do not support using THI to measure the negative effect of heat stress on cows. Instead, the results favor the use of the NSERDA measure of extreme heat to capture future climate change, that is, temperatures exceeding 90F.

The results in Table 3 also fail to support the hypothesis that cold temperatures have a discernable impact on cow productivity. Despite studies on the negative effects of extreme cold on dairy cows, dairy cows are cold weather animals, and these effects are not picked up on an annual basis in our results. Finally, precipitation also results in lower cow productivity, which is consistent with previous studies. To gain further insight, we estimated output elasticities with respect to weather variables, as noted in equation (6). We utilize model 5 of Table 3 for this purpose. The results are presented in Table 4 and indicate that while a 1% increase in extreme heat days has a negative (−0.0045%) effect on milk output due to lower cow productivity (stemming almost entirely from 90F days), there is also a (0.0069%) increase in feed input, resulting in a rather small but statistically significant increase in milk output of 0.0024%. That is, hot temperatures from climate change can have a benign effect on dairy production systems, such as those in the Northeast, that rely on home-grown crops. The results in Table 4 also indicate that the percent increases in cold temperature have a rather small effect on milk output. On the other hand, precipitation has a negative effect on milk output as measured by an elasticity of −.0494, basically equivalent to the mean elasticity for heat stress on direct cow production.

Table 4. Estimated input and weather elasticities of output

The above results contrast with the very modest effects of extreme heat (THI) on cow productivity estimated by Key, Sneeringer, and Marquardt (Reference Key, Sneeringer and Marquardt2014), who, using a THI-based measure and a national sample, concluded that heat stress effects on technical efficiency are under 1% for the three northeastern states that constitute their Northeast region. In addition, we conclude that cold weather temperatures do not have a discernable effect but also suggest consideration of the potential effects on feed production and alternative measures to THI > 72 to measure heat stress.

Technology results

From the results in Table 3, we compute the output elasticities with respect to inputs and present the results in Table 4. Their sum indicates that farmers in the Northeast experience significant returns to scale, estimated at 1.16 at mean values, which is statistically significant at the 0.01% level. That is, if all inputs are doubled, milk output more than doubles. This characterization of technology supports the ongoing consolidation in the region’s dairy farm sector.

Another result of interest is that technical change (time) interacted with labor has a negative sign and is practically unchanged across model specifications, indicating labor-saving technical change. Technology is evolving in ways that save farm labor, although machinery and equipment did not produce any measurable interaction with technology in the time span of our sample. It is also interesting to note the increasing importance of feed as a dominant non-cow input in dairy production, as indicated by the interactions of the log of feed and time, which are statistically significant at the 5% level.

Based on the results for model 5 in Table 3, we computed technical efficiency scores. The average score of technical efficiency across all farms is estimated at approximately 0.86 out of a maximum of 1.0 for firms to be on the frontier, with a minimum of 0.49 and a maximum of approximately 0.98. In other words, the average northeastern dairy farmer obtained 86% of potential output using their capital, labor, and materials, a loss of about 14% from the ideal output obtained for the same set of inputs.Footnote 13 As compared to previous studies on technical efficiency, dairy farms in the Northeast reach a higher level than in the past, 69% for New York dairy farms (Tauer and Belbase Reference Tauer and Belbase1987), 85% for Pennsylvania dairy farms (Wang Reference Wang2008), and 82% for New England dairy farms (Ahmad, Bravo-Ureta, and Mukherjee Reference Ahmad, Bravo-Ureta and Mukherjee1996).

Productivity growth results

The results for the decomposition of productivity growth changes between 2010 and 2020 are presented in Table 5. Note that these measures were computed at the farm level and thus include observations only for those farm records that were observed in consecutive years. Table 5 indicates that much of the productivity growth came from changes in technology, with average small negative effects of changes in scale and technical change over the whole sample. Technical change increased productivity by an average just over 1% per year (1.04% in the farm-weighted average), making technical change the largest contributor to productivity growth. Changes in technical efficiency and allocative efficiency contributed negatively to productivity growth. Overall, based on the 2011–2020 average using the number of farms as weights, TFPG increase at a rate of approximately 1% (TFPG1 = 0.98) and when allocative efficiency effects are included to obtain TFPG2, the average productivity drops to 0.65.

Table 5. Mean total factor productivity growth by year

Notes: The TC = technical change; SC = scale efficiency change; TEC= technical efficiency change; AEC= allocative efficiency change; TFPG1 = TC + SC + TEC and TFPG2 = TFPG1 + AEC. The farm-based averages are the weighed averaged based on the number of farms in the full sample while the year-averages are the simple averages across the means for each year.

As shown in Table 6, when the productivity growth results are broken down by size categories based on the number of farms, it is interesting to note that smaller farms (<100 cows) are the only ones to exhibit negative effects of scale efficiency, although they exhibit the second highest technical change effects among the four size groups. In contrast, larger farms (>700 cows) exhibit the highest scale effects but the lowest effects from technological change. Overall, considering technology, scale, and technical efficiency changes, results show that the largest farms (>700 cows) exhibit the highest productivity growth rates per year (TFPG1 = 1.62). Farms with less than 300 cows exhibit either the lowest TFPG (<100 cows with TFPG1 = 0.01) or the lowest TFPG when allocative efficiency effects are considering (100–299 cows with TFPG2 = 0.27). This group also exhibits the highest productivity growth rates when AECs are taking into account. This suggest that that small- to medium-size operations are more likely to struggle to catch up in productivity with larger operations and also to allocate inputs in a manner consistent with cost minimization. This provides an opening for policy and managerial support to support small- to mid-size dairy farms to enhance their productivity growth to overcome scale disadvantages as well as better achieve allocative efficiency.

Table 6. Total factor productivity growth by herd size

Notes: TC = technical change; SC = scale efficiency change; TEC= technical efficiency change; AEC= allocative efficiency change; TFPG1 = TC + SC + TEC; TFPG2 = TFPG1 + AEC.

Conclusion

Adverse weather effects, which may be exacerbated by climate change, can significantly affect the productivity of dairy farms in the Northeast. Previous work focusing on weather effects in the northeastern dairy farm sector has focused on heat stress in cows, side-stepping effects on feed production, and is either dated and/or has utilized aggregate data. In this article, we ascertain the effect of heat stress as well as cold temperatures on milk productivity, accounting for effects on feed production and labor-augmenting technology. The empirical framework involves the use of a SF production function applied to farm-level data between 2010 and 2020.

In general, the empirical findings are consistent with previous studies reporting that heat stress reduces efficiency and in terms of the production function estimates. However, we do not find support for using THI as a measure to capture heat stress effects on cows in cold areas such as the Northeast but do find that it captures effects on home-grown feed production. We find heat stress, as measured by the number of days exceeding 90F, to have a detrimental effect on cow productivity but that heat stress, measured either by THI > 72 or 90F days, has a beneficial effect on feed production and an overall net positive effect on milk production. We also fail to find a discernable effect of cold temperatures on milk production. From a technological standpoint, we also find evidence of significant returns to scale, labor-augmenting technical change, and a rather modest level of productivity growth of approximately 1%, on average. In general, we find technical efficiency scores that are higher than those estimated in previous studies.

From a productivity standpoint, this paper offers some useful insights. The results confirm the presence of significant increasing returns to scale. Productivity growth rates across herd sizes reveal that scale efficiency is the greatest advantage of larger operations and the most disadvantage of smaller ones, even though smaller operations experience comparable or effects of technical changes on productivity rates than other groups. On average, the sector experience approximately a 1% TFPG per year mostly due to technical change, secondly due to scale efficiency, and with negative contributions of technical and AECs over the period. Another interesting finding is that the sector is experiencing labor-augmenting technical change, which is leading to a less labor-intensive production technology.

This paper has limitations due, in part, to data availability. Although we used a farm-level confidential data set, we did not have access to individual farm characteristics (e.g., precise location) or characteristics of the operators (e.g., age, experience, etc.) that may explain large variations in technical efficiency and productivity measures that remained unobserved. For instance, efficiency effects varied quite substantially (0.53 to 0.98) in the sample. Although one can rightly attribute this to variations in management, we do not have any individual farm data to measure this effect. Another data-related issue is the measurement of weather converted to annual data to match the paucity of the farm records at the county level. Obviously, weather varies substantially within a year, and a more granular measure of farm records and weather would fine-tune the weather effects. A longer time series would obviously provide a better assessment of long-term effects of temperature and climate change, as these changes are gradual. However, these limitations provide opportunities to expand the methods of this paper to other regions or farm sectors where climate change and weather also have the potential to significantly affect the productivity of future farm operations.

Data availability statement

The farm-level data utilized under a confidentiality agreement between Farm Credit East and the researchers, and it is not available to third parties. Note that Farm Credit East collects these data from farmers under a pledge of confidentiality. However, the computer codes and the weather data are available from the authors upon request.

Funding statement

This work was supported by USDA National Institute of Food and Agriculture, Hatch project accession number 1020636, and the Richard DelFavero Fund for Agricultural and Resource Economics at the University of Connecticut.

Competing interests

The authors have no conflict of interests regarding the research reported here.

Data Appendix

Table A1. List of weather stations used in the sample

Table A2. Mean values of observations over years

Footnotes

1 The northern areas of New York state, which only saw a couple of days above 90º Fahrenheit between 1971 and 2000, are bound to experience the largest increases in hot temperatures. These increases in temperature will also affect cold temperatures, with a projected reduction in the number of days with temperatures below 32º F (NSERDA 2014).

2 In our sample, farms are located in six states: CT, MA, ME, NH, NY, and VT.

3 We focus on the Northeast rather than weather effects in other US regions (c.f., Mukherjee, Bravo-Ureta, and De Vries (Reference Mukherjee, Bravo-Ureta and De Vries2013) for Georgia and Florida, and Qi, Bravo-Ureta, and Cabrera (Reference Qi, Bravo-Ureta and Cabrera2015) for Wisconsin) or other regions of the world (c.f., Perez-Mendez, Roibas, and Wall (Reference Perez-Mendez, Roibas and Wall2019) for Asturias, Spain).

4 The farms that participate each year in the DFS individually opt-in voluntarily to participate in the survey. Thus, the sample is nonrandom, Responses are likely skewed toward larger and more profitable dairy farms than the typical dairy farm in the region. Given our sample of convenience, we are unable to test whether dairy production has shifted from hot or cold areas to other areas in the region as, for example, in Texas (Russell, Reference Russell2018) over the last four decades. There is no evidence of relocation of production within the Northeast. There is some very limited anecdotal evidence of relocation of farmers (not farms) outside the region due to business considerations rather than weather.

5 Because of confidentiality requirements and the risk of disclosure, we did not have access to the location of farms other than the county where they operate. Nor did we have access to farmer characteristics, only to financial records regarding milk production and inputs. However, given the location of weather stations, we believe that county location is adequate for our purposes.

6 Weather information was measured every 15 to 30 min in the weather stations. We aggregated this information to daily and then to an annual basis for the measures in question.

7 The dew point temperature in Celsius is measured by (100-RH)/5, where RH is the relative humidity in percentage. The dry bulb temperature and relative humidity are collected hourly at the meteorological station closest to the milk farm production area for each state in the sample. The data are then aggregated to the yearly level to match the farm survey.

8 The interest rate used is the annual rate charged for borrowing money to purchase farm livestock or agricultural equipment (Federal Reserve Bank of Kansas 2020). The productive life span of cows is estimated at 5 years, based on the BEA and BLS average estimates. The life span of farm equipment is estimated at 13.5 years, averaged across the BEA and the BLS estimates (US Department of Labor 1997). We assume linear depreciation and use the inverse of the life spans as the depreciation rate (0.074) applied to the price of capital. Finally, the user cost, or annual price of cows and capital, is computed as their annual per unit user cost of capital times their values.

9 We do not separate out the potential indirect effects of extreme weather via inputs. Perez-Mendez, Roibas, and Wall (Reference Perez-Mendez, Roibas and Wall2019) account for the impact of weather on production of alfalfa and conclude that milk productivity is higher under warm weather due to increases in forage production.

10 While ${v_{it}}$ has distribution properties identical to errors with zero mean, as in the classical linear model, ${\varepsilon _{it,}}$ has a nonzero mean as frontier deviations are zero or, more likely, greater than zero, resulting in a truncated half-normal distribution. Other distribution assumptions include half-normal models (Aigner, Lovell, and Schmidt Reference Aigner, Lovell and Schmidt1977), exponential, and gamma distributions (Coelli et al. Reference Coelli, Rao, O’Donnell and Battesse2005)

11 We also conducted robustness checks with annual averages of THI during the warmer months (May–September). The results were no different but were, however, awkward to interpret since the data were annual, averaging out warmer (or more humid) days with colder ones during this period.

12 Based on the Akaike Information Criterion and the Bayesian Information Criterion tests (AIC and BIC in Table 3), model 5 is preferred to models 1–3 at the 95% confidence level.

13 Although the summary results in Table 5 suggest a wide range in technical efficiency, our model and data prevent us from further uncovering the sources of those relatively large deviations. We suspect that differences in management would be a main explanation for some of those deviations. We lack the appropriate explanatory variables on individual farms and farmers to capture management, such as education and years of experience, which were omitted due to confidentiality restrictions on the data.

References

Ahmad, M., Bravo-Ureta, B.E., and Mukherjee, D.. 1996. “Technical efficiency measures for dairy farms using panel data: A comparison of alternative model specifications.Journal of Productivity Analysis 7 (4): 399415.CrossRefGoogle Scholar
Aigner, D.J., Lovell, C.A.K., and Schmidt, P.. 1977. “Formulation and estimation of stochastic frontier production function models.Journal of Econometrics 6 (1): 2137.CrossRefGoogle Scholar
Battese, G. E., and Coelli, T.J.. 1995. “A model for technical inefficiency effects in a stochastic Frontier production function for panel data.Empirical Economics 20 (2): 325332.Google Scholar
Chase, L.E. 2006. “Climate change impacts on dairy cattle.” In: Climate Change and Agriculture: Promoting Practical and Profitable Responses, Proceedings. Cornell University (pp. 17–23).Google Scholar
Coelli, T.J., Rao, D.S., O’Donnell, C.J., and Battesse, G.E.. 2005. An Introduction to Efficiency and Productivity Analysis. New York: Springer.Google Scholar
De Loecker, J., and Warzynski, F.. 2012. “Markups and firm-level export status.American Economic Review 102 (6): 24372471.CrossRefGoogle Scholar
Farrell, M.J. 1957. “The measurement of productive efficiency.Journal of the Royal Statistical Society 120 (3): 253290.CrossRefGoogle Scholar
Federal Reserve Bank of Kansas City. 2020. Agricultural Finance Databook. Kansas City, MO. Available at https://www.kansascityfed.org/agriculture/agfinance-updates/ Google Scholar
Greene, W. 2005. “Reconsidering heterogeneity in panel data estimators of the stochastic frontier model.Journal of Econometrics 126 (2): 269303.CrossRefGoogle Scholar
IPCC (Intergovernmental Panel on Climate Change). 2014. Fifth Assessment Report. Cambridge, United Kingdom and New York, USA, IPCC.Google Scholar
Jägermeyr, J., Müller, C., Ruane, A.C., et al. 2021. Climate impacts on global agriculture emerge earlier in new generation of climate and crop models. Nature Food (November 2021), https://doi.org/10.1038/s43016-021-00400-y Google Scholar
Key, N., and Sneeringer, S.. 2014. “Potential effects of climate change on the productivity of U.S. dairies.American Journal of Agricultural Economics 96 (4): 11361156.CrossRefGoogle Scholar
Key, N., Sneeringer, S., and Marquardt, D.. 2014. Climate Change, Heat Stress, and U.S. Dairy Production. USDA. Economic Research Report No. 175.Google Scholar
Kumbhakar, S.C., Wang, H.J., and Horncastle, A.P.. 2015. A Practitioner’s Guide to Stochastic Frontier Analysis Using Stata. New York: Cambridge University Press.CrossRefGoogle Scholar
Lopez, R.A., Laughton, C., and Jelliffe, J.. 2020. Economic Impacts of Agriculture in the Northeastern U.S.: Update 2017. A Report for Farm Credit East. September 15.Google Scholar
Mader, T.L. 2003. “Environmental Stress in Confined Beef Cattle.Journal of Animal Science 81: E110E119.Google Scholar
Mukherjee, D., Bravo-Ureta, B.E., and De Vries, A.. 2013. “Dairy productivity and climatic conditions: Econometric evidence from South-eastern United States.Australian Journal of Agricultural and Resource Economics 57: 123140.CrossRefGoogle Scholar
National Weather Service. 2020. Degree Days Statistics. Climate Prediction Center. Available at https://www.cpc.ncep.noaa.gov/products/analysis_monitoring/cdus/degree_days/ Google Scholar
New York State Energy Research and Development Authority (NSERDA). 2014. Climate Change in New York State. Updating the 2011 ClimAID Climate Risk Information Supplement to NYSERDA Report 1118. Available at https://www.nyserda.ny.gov/-/media/Files/Publications/Research/Environmental/ClimAID/2014-ClimAid-Report.pdf Google Scholar
O’Donnell, C.J. 2016. “Using information about technologies, markets and firm behavior to decompose a proper productivity index.Journal of Econometrics 190 (2): 328340.CrossRefGoogle Scholar
Perez-Mendez, J.A., Roibas, D., and Wall, A.. 2019. “The influence of weather conditions on dairy production.Agricultural Economics 50 (2): 165175.CrossRefGoogle Scholar
Qi, L., Bravo-Ureta, B.E., and Cabrera, V.E.. 2015. “From cold to hot: Climatic effects and productivity in Wisconsin dairy farms.Journal of Dairy Science, 98 (2): 86648677.CrossRefGoogle ScholarPubMed
Russell, A. 2018. “Texas Dairy Production Has Shifted from the Northeast to the Panhandle, but Why?” Texas A&M Today, February 6, 2018.Google Scholar
St. Pierre, N.R., Cobanov, B., and Schnitkey, G.. 2003. “Economic losses from heat stress by US livestock industries.” Journal of Animal Science, 86, E2E77.Google Scholar
Tauer, L.W., and Belbase, K.P.. 1987. “Technical efficiency of New York dairy farms.Northeastern Journal of Agricultural and Resource Economics 16(1): 1016. https://doi.org/10.1017/S0899367X00000313 CrossRefGoogle Scholar
University of Minnesota Extension. 2019. Managing Dairy Cattle in Cold Weather. March 15. Available at https://extension.umn.edu/dairy-news/managing-dairy-cattle-cold-weather Google Scholar
U.S. Bureau of Economic Analysis. (2020, April 27). Personal Consumption Expenditures (Implicit Price Deflator). https://fred.stlouisfed.org/series/DPCERD3A086NBEA Google Scholar
U.S. Department of Agriculture. 2020. USDA NASS Quick Stats. Available at https://quickstats.nass.usda.gov/ Google Scholar
U.S. Department of Agriculture, National Agricultural Statistics Service. 2019. 2017 Census of Agriculture. Available at https://www.nass.usda.gov/Publications/AgCensus/2017/index.php.Google Scholar
U.S. Department of Labor. 1997. BLS Handbook of Methods. Bureau of Labor Statistics, Bulletin 2490.Google Scholar
West, J.W., Mullinix, B.G., and Bernard, J.K.. 2003. “Effects of hot, humid weather on milk temperature, dry matter intake, and milk yield of lactating dairy cows.Journal of Dairy Science 86: 232242.CrossRefGoogle ScholarPubMed
Wang, Q.A Technical Efficiency Analysis of Pennsylvania Dairy Farms.Paper presented at the 2001 Annual Meeting of the American Agricultural Economics Association (New Name 2008: Agricultural and Applied Economics Association), Chicago, IL, August 2001.Google Scholar
Wang, H.J., and Schmidt, P.. 2002. “One-step and two-step estimation of the effects of exogenous variables on technical efficiency levels.Journal of Productivity Analysis 18 (2): 129144.CrossRefGoogle Scholar
Figure 0

Table 1. Summary statistics

Figure 1

Table 2. Effect of heat on feed

Figure 2

Table 3. Stochastic production frontier parameter estimates for northeastern dairy farms

Figure 3

Table 4. Estimated input and weather elasticities of output

Figure 4

Table 5. Mean total factor productivity growth by year

Figure 5

Table 6. Total factor productivity growth by herd size

Figure 6

Table A1. List of weather stations used in the sample

Figure 7

Table A2. Mean values of observations over years