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Future distribution of cotton and wheat in Australia under potential climate change

Published online by Cambridge University Press:  19 June 2015

F. SHABANI*
Affiliation:
Ecosystem Management, School of Environmental and Rural Science, University of New England, Armidale, NSW 2351, Australia
B. KOTEY
Affiliation:
School of Business, University of New England, Armidale, NSW 2351, Australia
*
*To whom all correspondence should be addressed. Email: fshabani@myune.edu.au
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Summary

The present study applies refined and improved scenarios for climate change to quantify the effects of potential alterations in climatic factors on localities for wheat and cotton production, which are two crops important to Australia's economy. The future distributions of Gossypium (cotton) and Triticum aestivum L. (wheat) were modelled using CLIMEX software with the A2 emission scenario generated by CSIRO-Mk3·0 and MIROC-H global climate models. The results were correlated to identify areas suitable for these economically important crops for the years 2030, 2050, 2070 and 2100 in Australia. The analysis shows that the areas where wheat and cotton can be grown in Australia will diminish from 2030 to 2050 and 2070 through to 2100. While cotton can be grown over extensive areas of the country until 2070, the area grown to wheat will decrease significantly over the period.

Type
Climate Change and Agriculture Research Papers
Copyright
Copyright © Cambridge University Press 2015 

INTRODUCTION

The production of crop and livestock, hydrologic balances, input supplies and other agricultural system components are expected to be influenced by climate change (Adams et al. Reference Adams, Hurd, Lenhart and Leary1998). The potential impact of climate change on different species has been researched worldwide. The majority of studies link dynamic models with the general circulation model (GCM) for downscaled outputs. From these models, it is predicted, for example, that climate change will reduce agricultural profit by US$2.4 billion, close to 0·50 of the current annual profit, in California (Deschênes & Greenstone Reference Deschênes and Greenstone2007). Similar trends have been projected for climate change in Colorado and Oklahoma (Deschênes & Greenstone Reference Deschênes and Greenstone2007). In North Africa, it is projected that date production will become totally unviable by 2100 in countries such as Sudan, Algeria, Niger, Mauritania and Mali (Pearson et al. Reference Pearson, Thuiller, Araújo, Martinez-Meyer, Brotons, McClean, Miles, Segurado, Dawson and Lees2006). Projections show that by 2055 three quarters of countries in Africa and Central and South America will be less suitable for maize cultivation than they are currently (Elith & Leathwick Reference Elith and Leathwick2009). In contrast, Song et al. (Reference Song, Zhang and Dong2004) found that climate change has produced a positive impact on cotton (Gossypium) growth and yield in the Xingjiang Autonomous region over the last 50 years. Nonetheless, a related study has demonstrated that if global warming predictions are reliable, the high temperatures and humid environment will cause food and fibre production to become limited to vegetative structures (Reddy et al. Reference Reddy, Hodges and McKinion1997). A similar study by Ortiz et al. (Reference Ortiz, Sayre, Govaerts, Gupta, Subbarao, Ban, Hodson, Dixon, Ortiz-Monasterio and Reynolds2008) suggested that wheat, a crop providing 0·21 of global food and using a total of 200 million hectares of global farmland will be affected significantly by changes in climatic factors. Morton (Reference Morton2007) predicted that the major impacts of global climate change will be most severe for populations comprising ‘subsistence’ or ‘smallholder’ farmers who will have limited capacity to adapt to the changes, constrained by socioeconomic and demographic trends and institutional effects.

The Stern Review on the Economics of Climate Change (Stern Reference Stern2006) identified Australia as one of the country's most vulnerable to climate change because of its high dependence on primary production, extensive arid and semi-arid areas, high annual rainfall variability and existing pressures on water supply. According to a technical report on climate change in Australia by the Commonwealth Scientific and Industrial Research Organisation and Intergovernmental Panel on Climate Change (IPCC 2007), average temperatures in Australia have increased by 0·9 °C since 1950. The report estimated increases in the range of 1·2–2·2 °C by 2050 under conditions of low and high emissions, respectively. There are several consequences, including increasing occurrence of drought and significant reductions in important water sources such as the Murray and Darling rivers and Melbourne's water supply. The impact is predicted to be higher inland than in coastal areas.

Two crops most likely to be affected by climate change are wheat and cotton. Australia produces on average 24 million tonnes (t) of wheat a year, of which 0·75–0·80 is exported (Australian Bureau of Agricultural and Resource Economics (ABARE) 2011). In 2010/2011, total output of wheat amounted to 28 million t (ABARE 2011). Data for 2010/2011 indicates that production occurs mostly in New South Wales (NSW) (11 million t), followed by South Australia (6 million t), Western Australia (WA) (5 million t) and Victoria (4·5 million t).

Cotton is also one of Australia's largest rural export earners, generating more than $2 billion in annual export income (Cotton Australia 2014). In 2011/2012, the industry recorded its highest output of 5·3 million bales worth almost $3 billion. Currently, there are 1500 cotton farms, with about half in NSW and the other half in Queensland. However, most of Australia's cotton is produced in NSW, in the area extending from the MacIntyre River in the south through the Gwydir, Namoi and Macquarie Valleys, and along the Barwon and Darling Rivers. The rest of the production occurs in Southern and Central Queensland from Emerald in Central Queensland southwards through the Darling Downs, especially along the Condamine River (Cotton Australia 2014).

There has been growing awareness of the value of plant and animal species distribution models (SDMs) over the past two decades. Some commonly used SDMs are Maximum Entropy modelling (MaxEnt), BIOCLIM and CLIMEX. Each species modelling technique has its own advantages and disadvantages. For example, Townsend Peterson et al. (Reference Townsend Peterson, Papesş and Eaton2007) documented that the effects of input data gaps and bias in the MaxEnt software necessitates careful interpretation of model results. A major criticism of BIOCLIM is that the inclusion of all 35 variables leads to ‘over-fitting’, which may result in misrepresentation of the distribution of the projected species (Beaumont et al. Reference Beaumont, Hughes and Poulsen2005). It is suggested that refining the CLIMEX output by including non-climatic parameters, such as suitability of soil physicochemical properties, soil taxonomy, slope and land use, are essential to achieving more realistic results than those based purely on climate (Shabani et al. Reference Shabani, Kumar and Esmaeili2014a). However, CLIMEX has been identified to be among the most reliable and comprehensive inferential modelling programs (Kriticos & Randall Reference Kriticos, Randall, Groves, Panetta and Virtue2001). The program produces a niche model that may be described as process-oriented and ecophysiological. It is capable of combining inferential and deductive models to describe responses of a species to climatic factor variability in order to project potential geographical distribution (Webber et al. Reference Webber, Yates, Le Maitre, Scott, Kriticos, Ota, McNeill, Le Roux and Midgley2011).

The present study aimed to refine projections for those localities that may be potentially suitable for the economic cultivation of cotton (Gossypium) and wheat (Triticum aestivum L.) based on changes in climate expected in Australia for the years 2030, 2050, 2070 and 2100, using CLIMEX, and the A2 emissions scenario together with two global climate models (GCMs): the CSIRO-Mk3·0 (CSI) model and the MIROC-H (MR) model.

MATERIALS AND METHODS

The A2 SRES scenario was chosen for the present study because it includes relevant demographic, financial and technological factors that relate to greenhouse gas (GHG) emissions drawn from independent and self-reliant nations (IPCC 2007). The predictions of the A2 scenario depict a relatively moderate increase in GHG, clustered around the midpoint of extreme low and high projections. The projections were then refined to enhance accuracy and reduce the uncertainties in assessing the impact of climate change on future climatic projections derived by GCMs (Masutomi et al. Reference Masutomi, Takahashi, Harasawa and Matsuoka2009; Shabani et al. Reference Shabani, Kumar and Taylor2014b, Reference Shabani, Kumar and Taylorc) by ascertaining common areas in the projections from different GCMs. Thus, the outputs were overlaid for each of these important species to establish the projected localities and associated suitability found from both models (CSI and MR). To this end, the CLIMEX program version 3.0.2 (available from http://www.hearne.software/Software/CLIMEX/Editions) was utilized to simulate responses of both species to changes in major climatic factors. The ArcGIS program was utilized to extract CLIMEX outputs for projecting suitable future localities.

CLIMEX software

CLIMEX incorporates the assumption that the chief determinant of the distribution of plants and poikilothermal animals is climate and therefore models climatic conditions for different scenarios for various species (Kriticos et al. Reference Kriticos, Potter, Alexander, Gibb and Suckling2007). It has been utilized with success in the matching of climates and to predict potential weed distribution, through its use of a thermo-hydrological Growth Index (GI) and the climatic stressors that apply to the particular climatic condition (Sutherst & Floyd Reference Sutherst, Floyd, Howden and Gorman1999). The Ecoclimatic Index (EI) (values between 0 and 100) denotes an overall assessment of a given locality's potential for supporting the permanent population of a species. It is calculated by subtracting from the GI the climatic stress variables Hot (HS), Cold (CS), Dry (DS) and Wet (WS) (Sutherst & Floyd Reference Sutherst, Floyd, Howden and Gorman1999). Where the stress indices exceed in total the GI (i.e. EI = 0), it is projected that the species will not be able to persist at that specific locality (Shabani & Kumar Reference Shabani and Kumar2013). In other words, CLIMEX incorporates an Annual Growth Index (GIA) that denotes the potential favourable season for growth of the species. The cold, hot, wet and dry stress indices and their interactions illustrate the impact of unfavourable seasons on reduction of the species’ population (Sutherst et al. Reference Sutherst, Maywald and Kriticos2007). The EI is formulated from a combination of the growth and stress indices and shows the favourability of the location or year for permanent occupation by the target species: it denotes the overall measure of the location or year's favourability for permanent occupation of the target species. The EI, which is based on weekly calculations of growth and stress indices, forms an average yearly index of the level of climatic suitability, rated from 0 to 100, where an EI > 0 denotes the potential level for establishment of the species. Climatic parameters of overall maximum and minimum monthly temperature (T max and T min), the overall monthly precipitation (P total) and the relative humidity at 09:00 h (RH09:00) and 15:00 h (RH15:00) were drawn from the meteorological database (Shabani & Kumar Reference Shabani and Kumar2014).

Current distribution of Gossypium and Triticum aestivum L.

Data on Gossypium and T. aestivum L. distributions were collected from the Global Biodiversity Information Facility (2015) and other related literature in CAB Abstracts databases (CAB Direct 2015).

A total of 19 302 records for Gossypium and 394 838 for T. aestivum L. were obtained from the literature and databases. Of these, 1224 Gossypium and 1940 of T. aestivum L. records had no geographic coordinates and were discarded, leaving a total of 18 078 for Gossypium and 392 898 for T. aestivum L. (Figs 1 and 2).

Fig. 1. Global distribution of Gossypium (cotton) cultivation and validation of the model.

Fig. 2. Global distribution of Triticum aestivum L. (wheat) cultivation and validation of the model.

Climate data and future projections using global climate models and climate change projection scenarios

The two GCMs selected were CSIRO-Mk3·0 (CSI) and MR, in conjunction with the A2 Special Report on Emissions Scenarios (SRES) for modelling potential distribution under future climates of Gossypium and T. aestivum L. An initial 23 GCMs were assessed to develop a dataset that included the following four variables: monthly daily averages of maximum and minimum temperature, precipitation levels, average sea level pressure and specific level of humidity (Kriticos et al. Reference Kriticos, Webber, Leriche, Ota, Macadam, Bathols and Scott2012). These variables are vital for calculating CLIMEX input data, in addition to the 35 Bioclim variables which together enabled the first requirement to be met. As a second requirement, an output capable of relatively small horizontal grid spacing was sought. Lastly, in terms of assessing GCMs, the software chosen performed best in relation to other GCMs for modelling basic aspects of the observed climate on a regional scale (Hennessy et al. Reference Hennessy, Colman, Watterson, Jones, Pearce, Holper, Hopkins, Bouma, Whetton, Hennessy and Power2007; Kriticos et al. Reference Kriticos, Webber, Leriche, Ota, Macadam, Bathols and Scott2012).

The IPCC established the so-called SRES scenarios, consisting of a set of forty emissions scenarios for future global emissions of greenhouse gases and sulphate aerosols (Nakicenovic & Swart Reference Nakicenovic and Swart2000). Each scenario depicts a ‘tale’ created from a set of logical assumptions associated with demographic, economic and technological factors, considered to impact future emissions. The SRES scenarios are based on a sub-set of six illustrative marker scenarios which range from the B1 scenario of diminishing GHG emission levels to the A1FI scenario in which the usage of fossil fuels continues at an intensive level. The perpetual inability to achieve international agreement in policy binding a global reduction in GHG emissions suggests that conservative emissions scenarios are no longer valid. For example, Rahmstorf et al. (Reference Rahmstorf, Cazenave, Church, Hansen, Keeling, Parker and Somerville2007) have shown that GCM projections have generally underestimated more recent trends in global temperature and sea level changes. Manning et al. (Reference Manning, Edmonds, Emori, Grubler, Hibbard, Joos, Kainuma, Keeling, Kram, Manning, Meinshausen, Moss, Nakicenovic, Riahi, Rose, Smith, Swart and van Vuuren2010) have also demonstrated that since 2000, carbon dioxide emissions of fossil fuels equate with the most extreme SRES scenarios. Hence, only ‘A’ family SRES emissions scenarios in the CliMond dataset were included in the models used for the present study (Kriticos et al. Reference Kriticos, Webber, Leriche, Ota, Macadam, Bathols and Scott2012).

Model framing

Matching CLIMEX parameters to the distribution of already established species essentially amounts to the construction of a hypothesis from the definitive factors that have been proven to limit its distribution (Sutherst et al. Reference Sutherst, Maywald and Kriticos2007). Responses of many species to temperature and moisture are as yet largely unrecorded or not yet researched. In such cases, CLIMEX values are derived from the CLIMEX template that best matches the observed distribution. The parameter values used in CLIMEX for Gossypium and T. aestivum L. in the present study, have been derived directly from intensive dedicated studies on these two species. CLIMEX inferential model validation may only be achieved where data on the distribution of the species have been derived from more than one geographic locality. A set of parameter values may be considered validated where values developed from distribution data in one area successfully predict distribution in another (Kriticos & Randall Reference Kriticos, Randall, Groves, Panetta and Virtue2001; Sutherst et al. Reference Sutherst, Maywald and Kriticos2007).

Cold stress

The CLIMEX parameters indicating cold stress variables of a species are the temperature threshold of cold stress (TTCS) and the associated weekly rate of cold stress (THCS). The temperature below which the accumulation of cold stress begins is established by TTCS and the rate of accumulation by THCS. Gossypium may establish in locations as low as 11 °C (Hearn Reference Hearn1994). Therefore, frost intolerance was incorporated by the aggregation of stress where the mean monthly minimum temperature was <11 °C, with the accumulation rate of frost stress (THCS) set at −0·1 per week. For T. aestivum L., the TTCS and associated THCS were set at −10 °C and −0·001 per week as this provided the best fit to the observed distribution of this species in North America, Canada and Asia.

Heat stress

Since Gossypium is able to persist up to 39 °C, this was the parameter value selected for heat stress (TTHS) (Wall et al. Reference Wall, Amthor and Kimball1994; Cothren Reference Cothren, Smith and Cothren1999; Rogers et al. Reference Rogers, Reid, Rogers and Addison2007). The accumulation rate of heat stress (THHS) was set at 0·001 per week, the rate that has enabled persistence of Gossypium in Southern Mexico, Colombia and Ecuador. Conversely, the TTHS parameter for T. aestivum L. of 39 °C was derived from documented research which demonstrates the species persistence when environmental conditions reach this temperature (Beddow et al. Reference Beddow, Hurley, Kriticos and Pardey2013) and also provides the best fit to the observed distribution of this species in North America, Canada, Australia and European countries. This temperature is just above the known maximum temperature for development of the species, and the rate of stress accumulation is in accordance with the known distribution in the Southwest USA. The THHS parameter for T. aestivum L. of 0·005 per week was chosen in accordance with its persistence in Europe.

Wet stress

Values for the parameter of moisture response in Gossypium were sourced from the literature on the physiology and growth of cotton (Feddes et al. Reference Feddes, Kowalik and Zaradny1978; Hearn Reference Hearn1994; Wall et al. Reference Wall, Amthor and Kimball1994). For Gossypium, the threshold value for wet stress (SMWS) was established as 3, with the associated accumulation rate (HWS) as 0·001. For T. aestivum L. SMWS and HWS parameter values selected were 3 and 0, respectively. These values fit the known distributions in Iran, Tunisia, Northern Algeria, Germany, Spain and France.

Growth index

The CLIMEX growth index is obtained by the product of the temperature and moisture indices. The temperature index components are: DV0, the lower temperature limit; DV1, lower optimal temperature; DV2, upper optimal temperature; and DV3, the high temperature limit. Gossypium cultivation is possible in areas with temperature ranges between 22 and 36 °C (Reddy et al. Reference Reddy, Hodges and McKinion1997; Cothren Reference Cothren, Smith and Cothren1999). Data on climatic conditions suitable for Gossypium cultivation match data derived from actual conditions in Madagascar, Ghana, Venezuela and Colombia. Based on the literature, the lower and upper limits (DV0 and DV3) were established at 10 and 36 °C, with optimum lower and upper values (DV1 and DV2) at 22 and 32 °C. For T. aestivum L. the lower and upper limits (DV0 and DV3) were established at 4 and 32 °C, with optimum lower and upper values (DV1 and DV2) at 14 and 25 °C (Reynolds et al. Reference Reynolds, Ortiz-Monasterio and McNab2001; Beddow et al. Reference Beddow, Hurley, Kriticos and Pardey2013).

The CLIMEX index of soil moisture comprises the following parameters: SM0 denotes lowest permissible; SM1 the lower optimum; SM1 the upper optimum and SM2 the upper permissible level. In the present study, Gossypium SM0 was established as 0·001, matching observed distributions in South America, with SM1 and SM2 at 0·3 and 1·9, to improve the cultivation in Madagascar and Mexico. The upper threshold (SM3) was set at 3, matching the observed distribution on a number of continents.

Combining outputs of both global climate models for Gossypium and Triticum aestivum L.

The overlaying of CSI and MR outputs facilitated the identification of common areas of projection likely to become highly conducive to Gossypium and T. aestivum L. for the designated years for future scenarios. All locations satisfying the condition EI > 20 for Gossypium and T. aestivum L., common in the two outputs, were categorized as potentially of high suitability for cultivation, while all locations satisfying the condition 10 < EI < 20 for each species common in the two outputs were categorized as areas of potential marginal suitability. Likewise, the condition 0 < EI < 10 identified areas of potential low suitability. This EI classification is based on research by Shabani et al. (Reference Shabani, Kumar and Taylor2014d). As already stated, the main aim in combining GCM outputs is to identify common localities projected, which enhances certainty regarding areas likely to become conducive to cultivation in the future.

RESULTS

Model validation and projections under current climate

The fitting parameters for both species in the present study used the indigenous range and worldwide agricultural crop distribution, although distribution data of the two species from Peru, Bolivia, Yemen, Ethiopia and Nigeria were set aside for model validation. In terms of validation of areas, 0·83 and 0·89 of the Gossypium and T. aestivum L. records matching the acceptable parameters of the suitable GCM confirm that values selected for the CLIMEX parameters were optimum (see Canada, USA, Bolivia, Yemen, Ethiopia and Nigeria in Figs 1 and 2).

Historical climate at global scale

Comparisons of the suitable GCM with the world distribution for Gossypium (Fig. 1) and for T. aestivum L. (Fig. 2) show consistency of the EI of the models with current world distributions. Climatic conditions conducive to Gossypium cultivation are projected for areas of the southern USA, Southern, Eastern and Western Mexico, Paraguay, Colombia, Venezuela, Ghana, Kenya, Swaziland, Northern Namibia and Madagascar. Suitable conditions are also projected for T. aestivum L. over large areas of the Central, Northern, Eastern and Western USA, Central Mexico, Central Ecuador, Northern Algeria, Spain, Portugal, France, Italy, Germany, Northern Tunisia, Iran, Ecuador and Nepal. The fact that nearly 0·95 of Gossypium and 0·93 of T. aestivum L. records matched the parameters of the suitable GCM (red and blue areas) proves that values selected were optimum (Figs 1 and 2).

Agreement between CSIRO-Mk3·0 and MIROC-H global climate models on areas becoming suitable for Gossypium cultivation in Australia for the designated years of future scenarios

The overlaying of results of the two GCMs indicated widespread agreement in projected areas suitable for Gossypium growth for 2030, 2050 and 2070 (Fig. 3). Almost the whole of NSW, Queensland, large northern areas in the Northern Territory, large southern areas in WA and areas between 10–20°S and 120–130°E, southern South Australia and Central and Western Victoria are shown by both models to become highly conducive to the cultivation of cotton by 2030, continuing through to 2050 (Fig. 3). However by 2070, this position will become limited to 145–155°E in NSW and Queensland and by 2100 to 148–155°E for the same regions (Fig. 3). Northern regions in WA and the Northern Territory display a similar downward trend by 2100. A comparison of the areas of unsuitability (EI = 0 or 0 < EI < 10) derived from both GCMs for 2030 indicates that nearly 0·65 of Australia will be unsuitable for the cultivation of cotton by 2100 (Fig. 3). However, the two models agreed that northern regions of WA and Victoria will retain a climate suitable for cultivation up to 2100 (Fig. 3).

Fig. 3. Common climate projections (EI) for Gossypium using CLIMEX under the CSI and MR GCMs running the A2 scenario for the designated years for future scenarios.

Agreement between CSIRO-Mk3·0 and MIROC-H global climate models of areas becoming suitable for Triticum aestivum L. cultivation in Australia for the designated years of future scenarios

Combining CSI and MR GCMs projections for T. aestivum L. for 2030 shows that wider areas of western Queensland, most of the Northern Territory and the northern and western regions of WA will become highly unsuitable for cultivation. This deteriorating trend is predicted to continue to 2050 and 2070 through to 2100 (Fig. 4). By 2100 the whole of the Northern Territory, Northern, Western and Central WA, most of Northern and Western Queensland and the northern regions of South Australia will no longer be suitable for growing T. aestivum L. Climatically, Northwestern NSW will experience a reduction in suitable areas of cultivation when the current cultivation areas are compared with those for 2030. This declining trend will extend through to 2050 and 2070 to 2100 (Fig. 4).

Fig. 4. Common climate projections (EI) for Triticum aestivum L. using CLIMEX under the CSI and MR GCMs running the A2 scenario for the designated years for future scenarios.

DISCUSSION

The importance of wheat and cotton to Australia's rural regions and the government's goal of encouraging residents in the highly populated major cities and coastal areas to migrate to the rural regions means understanding the impact of climate change on production of the two crops is critical to the future of the Australian economy. Therefore, the present study sought to assess the climate change impact on localities suitable for wheat and cotton cultivation in Australia over the periods 2030, 2050, 2070 and 2100.

The refined projections illustrated in Figs 3 and 4 provide greater certainty with regard to areas projected to become highly suitable to the cultivation of cotton and wheat than achieved by the majority of earlier studies that used a single high or low end scenario or single GCM (Brklacich & Stewart Reference Brklacich, Stewart, Rosenzweig, Allen, Harper, Hollinger and Jones1995; Mearns Reference Mearns and Rosenzweig1995; Luo et al. Reference Luo, Williams, Bellotti and Bryan2003). This is due to the overlaying of results from the two GCMs for each period of time. Results derived from a single GCM, while generally precise, are limited to projections valid only for that specific scenario and thereafter are purely speculative in terms of representing alternative future scenarios. While the outcomes in these single GCM studies have some application, they generate no information in terms of probable eventualities. Moreover, they provide no indications of how their results will match broader uncertainty ranges, or define these uncertainty ranges.

The current combined CSI and MR results shows that the western and northern areas of Queensland, most of the Northern Territory, central, northern and western areas of WA, the northern half of South Australia and the northwestern regions of NSW will gradually lose their suitability for the cultivation of T. aestivum L. from 2030 through 2050 and 2070 to 2100. Projected scenarios for 2030–2100 show that only a few southern regions of Australia, especially Victoria, will continue to be highly suitable for producing T. aestivum L. These findings are consistent with those reported by Howden & Jones (Reference Howden and Jones2001).

In contrast to the findings for T. aestivum L., the simulations indicate that almost all of NSW and Victoria, large parts of Queensland, the northern areas of the Northern Territory, large southern areas of WA and southern South Australia will become highly conducive to the cultivation of Gossypium (cotton) by 2030 and will continue through to 2050. However by 2070, this position will become limited to the eastern areas of NSW and Queensland, most of Victoria and the southeastern parts of WA. This deterioration in suitable areas will continue through to 2100. The projections indicate that drought stress will impact negatively on both Gossypium and T. aestivum L. production in Australia with regional differences in the effects of the stresses (temperature and drought).

From the current findings, the area currently planted to cotton can be extended from Queensland and NSW to other states and various species trialled to ascertain those that will provide the best yields under the climatic conditions available in these states. At the same time, production of wheat can be extended by trialling various farming strategies that can reduce and even improve yield loss at a cost that will enable farmers to continue to earn better returns on their output. It is reported that strategies such as reducing planting densities, increasing fallow, increasing residue retention or choosing shorter season varieties provide smaller offsets in yield loss than strategies that increase residue retention to conserve moisture under mix cropping and grazing systems. Therefore, a mix of cropping and grazing systems is recommended for reducing the rate of yield loss. In addition, income from crops more suited to the changed climatic conditions will offset losses from wheat. Farmers in the yellow areas in Fig. 4 can replace wheat production with cotton in the areas conducive to cotton while those in the blue and red areas for both crops can rotate the two crops to maximize yields from each. At the same time other crops suited to the changing climate conditions with high returns can be cultivated.

Furthermore, based on the projection of the present study, attention should be given to developing secondary and tertiary industries, especially manufacturing and tourism, for diversification and mitigation against the problems that will emerge from a diminishing primary food production sector. This is important as the majority of Australia's rural regions are dependent on agriculture and their economic conditions fluctuate with climate change, access to water and global demand for their produce. Without any interventions, the deteriorating climatic conditions will cause populations to migrate from rural to coastal areas and major cities, adding to the pressure on resources such as water, infrastructure and housing and increasing the unemployment rate.

Significant factors that contributed to the success of the present study were: (1) availability of and accessibility to all variables necessary for accurate CLIMEX modelling, including temperature, humidity and precipitation; (2) well documented historical data on the distribution of Gossypium and T. aestivum L.; and (3) the qualities of the two GCMs chosen in regard (a) small horizontal grid spacing design and (b) their strong representation of observed local climatic factors.

There were, however, limitations that must be noted. CLIMEX results are climate response based, the impact of non-climatic parameters such as biotic interactions and inter-species competition were not taken into account Shabani et al. (Reference Shabani, Kumar and Taylor2012). Thus, the following should be considered when interpreting the results:

  1. (i) The modelling is purely climate-based and does not take into account non-climatic factors such as use of land, type of soil, biotic interaction, competition and diseases.

  2. (ii) Current broad-scale climatic data was employed, and thus results present purely broad-scale shifts.

  3. (iii) Results are subject to the uncertainties surrounding future GHG emission levels.

  4. (iv) Similar modelling should be carried out for crop models using nitrogen, soil properties and irrigation.

  5. (v) In the present study, carbon dioxide enrichment and the potential genetic progress were not taken into account.

CONCLUSION

In conclusion, the distribution maps presented in the study provide information useful for the long-term planning of the cultivation of Gossypium and T. aestivum L. in the areas projected to become suitable, with strategic shifts in production away from areas projected to become unsuitable. The two species can be replaced with more suitable crops and broad diversification of the economic base undertaken to enhance economic activity and maintain the populations in rural Australia.

We thank Catherine MacGregor during the conduction of this study and we are very grateful to all three reviewers and editors, for their very thorough and helpful comments which greatly improved our manuscript.

References

REFERENCES

Adams, R. M., Hurd, B. H., Lenhart, S. & Leary, N. (1998). Effects of global climate change on agriculture: an interpretative review. Climate Research 11, 1930.CrossRefGoogle Scholar
Australian Bureau of Agricultural and Resource Economics (ABARES) (2011). Agricultural Commodity Statistics. Canberra, Australia: Department of Agricultural Fisheries and Forestry, Australian Government Available online from: http://www.agriculture.gov.au/abares/publications/display?url=http://143.188.17.20/anrdl/DAFFService/display.php?fid=pe_agcstd9abcc002201121d.xml (accessed March 2015).Google Scholar
Beaumont, L. J., Hughes, L. & Poulsen, M. (2005). Predicting species distributions: use of climatic parameters in BIOCLIM and its impact on predictions of species’ current and future distributions. Ecological Modelling 186, 251270.CrossRefGoogle Scholar
Beddow, J. M., Hurley, T. M., Kriticos, D. J. & Pardey, P. G. (2013). Measuring the Global Occurrence and Probabilistic Consequences of Wheat Stem Rust. Harvest Choice Technical Note. Washington, D.C.: Harvest Choice.Google Scholar
Brklacich, M. & Stewart, R. B. (1995). Impacts of climate change on wheat yield in the Canadian prairies. In Climate Change and Agriculture: Analysis of Potential International Impacts (Eds Rosenzweig, C., Allen, L. H., Harper, L. A., Hollinger, S. E. & Jones, J. W.), pp. 147162. ASA Special Publication 59. Madison, WI: ASA.Google Scholar
CABI (2015). CAB Direct. Wallingford, UK: CABI. Available online from: http://www.cabdirect.org/web/about.html (accessed January 2015).Google Scholar
Cothren, J. (1999). Physiology of the cotton plant. In Cotton: Origin, History, Technology, and Production (Eds Smith, C. W. & Cothren, J. T.), pp. 207268. New York: John Wiley & Sons, Inc.Google Scholar
Cotton Australia (2014). The Australian Cotton Industry. Fact Sheet. Sydney: Cotton Australia. Available online from: http://cottonaustralia.com.au/cotton-library/fact-sheets/cotton-fact-file-the-australian-cotton-industry (accessed January 2015).Google Scholar
Deschênes, O. & Greenstone, M. (2007). The economic impacts of climate change: evidence from agricultural output and random fluctuations in weather. The American Economic Review 97, 354385.CrossRefGoogle Scholar
Elith, J. & Leathwick, J. R. (2009). Species distribution models: ecological explanation and prediction across space and time. Annual Review of Ecology, Evolution, and Systematics 40, 677697.CrossRefGoogle Scholar
Feddes, R. A., Kowalik, P. J. & Zaradny, H. (1978). Simulation of Field Water Use and Crop Yield. Wageningen: Centre for Agricultural Publishing and Documentation.Google Scholar
Global Biodiversity Information Facility (2015). Global Biodiversity Information Facility. Copenhagen: GBIF. Available online from: http://www.gbif.org/ (accessed January 2015).Google Scholar
Hearn, A. B. (1994). OZCOT: a simulation model for cotton crop management. Agricultural Systems 44, 257299.CrossRefGoogle Scholar
Hennessy, K., Colman, R., Watterson, I. & Jones, R. (2007). Global climate change projections. In Climate Change in Australia – Technical Report 2007 (Eds Pearce, K., Holper, P., Hopkins, M., Bouma, W., Whetton, P., Hennessy, K. & Power, S.), pp. 3648. Clayton, South Victoria, Australia: CSIRO.Google Scholar
Howden, S. M. & Jones, R. N. (2001). Costs and Benefits of CO2 Increase and Climate Change on the Australian Wheat Industry. Canberra, Australia: Australian Greenhouse Office.Google Scholar
IPCC (2007). Climate Change 2007: Synthesis Report. Summary for Policymakers. Geneva, Switzerland: IPCC.Google Scholar
Kriticos, D. J. & Randall, R. P. (2001). A comparison of systems to analyze potential weed distributions. In Weed Risk Assessment (Eds Groves, R. H., Panetta, F. D. & Virtue, J. G.), pp. 6179. Collingwood, Australia: CSIRO Publishing.Google Scholar
Kriticos, D. J., Potter, K. J. B., Alexander, N. S., Gibb, A. R. & Suckling, D. M. (2007). Using a pheromone lure survey to establish the native and potential distribution of an invasive Lepidopteran. Journal of Applied Ecology 44, 853863.CrossRefGoogle Scholar
Kriticos, D. J., Webber, B. L., Leriche, A., Ota, N., Macadam, I., Bathols, J. & Scott, J. K. (2012). CliMond: global high-resolution historical and future scenario climate surfaces for bioclimatic modelling. Methods in Ecology and Evolution 3, 5364.CrossRefGoogle Scholar
Luo, Q., Williams, M. A. J., Bellotti, W. & Bryan, B. (2003). Quantitative and visual assessments of climate change impacts on South Australian wheat production. Agricultural Systems 77, 173186.CrossRefGoogle Scholar
Manning, M. R., Edmonds, J., Emori, S., Grubler, A., Hibbard, K., Joos, F., Kainuma, M., Keeling, R. F., Kram, T., Manning, A. C., Meinshausen, M., Moss, R., Nakicenovic, N., Riahi, K., Rose, S K., Smith, S., Swart, R. & van Vuuren, D. P. (2010). Misrepresentation of the IPCC CO2 emission scenarios. Nature Geoscience 3, 376377.CrossRefGoogle Scholar
Masutomi, Y., Takahashi, K., Harasawa, H. & Matsuoka, Y. (2009). Impact assessment of climate change on rice production in Asia in comprehensive consideration of process/parameter uncertainty in general circulation models. Agriculture, Ecosystems & Environment 131, 281291.CrossRefGoogle Scholar
Mearns, L. O. (1995). Research issues in determining the effects of changing climate variability on crop yields. In Climate Change and Agriculture: Analysis of Potential International Impacts (Eds Rosenzweig, C.), pp. 123143. Madison, WI: ASA.Google Scholar
Morton, J. F. (2007). The impact of climate change on smallholder and subsistence agriculture. Proceedings of the National Academy of Sciences of the United States of America 104, 1968019685.CrossRefGoogle ScholarPubMed
Nakicenovic, N. & Swart, R. (2000). Emissions Scenarios: a Special Report of Working Group III of the Intergovernmental Panel on Climate Change. Cambridge, UK: Cambridge University Press.Google Scholar
Ortiz, R., Sayre, K. D., Govaerts, B., Gupta, R., Subbarao, G. V., Ban, T., Hodson, D., Dixon, J. M., Ortiz-Monasterio, J. I. & Reynolds, M. (2008). Climate change: Can wheat beat the heat? Agriculture, Ecosystems & Environment 126, 4658.CrossRefGoogle Scholar
Pearson, R. G., Thuiller, W., Araújo, M. B., Martinez-Meyer, E., Brotons, L., McClean, C., Miles, L., Segurado, P., Dawson, T. P. & Lees, D. C. (2006). Model-based uncertainty in species range prediction. Journal of Biogeography 33, 17041711.CrossRefGoogle Scholar
Rahmstorf, S., Cazenave, A., Church, J. A., Hansen, J. E., Keeling, R. F., Parker, D. E. & Somerville, R. C. J. (2007). Recent climate observations compared to projections. Science 316, 709.CrossRefGoogle ScholarPubMed
Reddy, K. R., Hodges, H. F. & McKinion, J. M. (1997). A comparison of scenarios for the effect of global climate change on cotton growth and yield. Australian Journal of Plant Physiology 24, 707713.Google Scholar
Reynolds, M. P., Ortiz-Monasterio, J. I. & McNab, A. (2001). Application of Physiology in Wheat Breeding. Mexico, D.F.: CIMMYT.Google Scholar
Rogers, D. J., Reid, R. E., Rogers, J. J. & Addison, S. J. (2007). Prediction of the naturalisation potential and weediness risk of transgenic cotton in Australia. Agriculture, Ecosystems & Environment 119, 177189.CrossRefGoogle Scholar
Shabani, F. & Kumar, L. (2013). Risk levels of invasive Fusarium oxysporum f. sp. in areas suitable for date palm (Phoenix dactylifera) cultivation under various climate change projections. PLoS ONE 8, e83404. doi:10.1371/journal.pone.0083404.CrossRefGoogle ScholarPubMed
Shabani, F. & Kumar, L. (2014). Sensitivity analysis of CLIMEX parameters in modeling potential distribution of Phoenix dactylifera L. PLoS ONE 9, e94867. doi:10.1371/journal.pone.0094867.CrossRefGoogle ScholarPubMed
Shabani, F., Kumar, L. & Taylor, S. (2012). Climate change impacts on the future distribution of date palms: a modeling exercise using CLIMEX. PLoS ONE 7, e48021. doi:10.1371/journal.pone.0048021.CrossRefGoogle ScholarPubMed
Shabani, F., Kumar, L. & Esmaeili, A. (2014 a). Future distributions of Fusarium oxysporum f. spp. in European, Middle Eastern and North African agricultural regions under climate change. Agriculture, Ecosystems and Environment 197, 96105.CrossRefGoogle Scholar
Shabani, F., Kumar, L. & Taylor, S. (2014 b). Distribution of date palms in the middle east based on future climate scenarios. Experimental Agriculture 51, 244263.CrossRefGoogle Scholar
Shabani, F., Kumar, L. & Taylor, S. (2014 c). Projecting date palm distribution in Iran under climate change using topography, physicochemical soil properties, soil taxonomy, land use and climate data. Theoretical and Applied Climatology 118, 553567.CrossRefGoogle Scholar
Shabani, F., Kumar, L. & Taylor, S. (2014 d). Suitable regions for date palm cultivation in Iran are predicted to increase substantially under future climate change scenarios. Journal of Agricultural Science, Cambridge 152, 543557.CrossRefGoogle Scholar
Song, Y.-L., Zhang, Q. & Dong, W.-J. (2004). Impact of climate change on cotton production in Xingjiang Autonomous Region. Chinese Journal of Agrometeorology 3, 1520.Google Scholar
Stern, N. H. (2006). The Economics of Climate Change: The Stern Review. Cambridge, UK: Cambridge University Press.Google Scholar
Sutherst, R. & Floyd, R. B. (1999). Impacts of global change on pests, diseases and weeds in Australian temperate forests. In Impacts of Global Change on Australian Temperate Forests (Eds Howden, S. M. & Gorman, J. T.), pp. 9498. Working Paper Series 99/08. Canberra: CSIRO Wildlife and Ecology. Available online from: http://www.cse.csiro.au/publications/1999/temperateforests-99-08.pdf (accessed March 2015).Google Scholar
Sutherst, R. W., Maywald, G. & Kriticos, D. J. (2007). CLIMEX Version 3: User's Guide. South Yarra, Australia: Hearne Scientific Software.Google Scholar
Townsend Peterson, A., Papesş, M. & Eaton, M. (2007). Transferability and model evaluation in ecological niche modeling: a comparison of GARP and Maxent. Ecography 30, 550560.CrossRefGoogle Scholar
Wall, G. W., Amthor, J. S. & Kimball, B. A. (1994). COTCO2: a cotton growth simulation model for global change. Agricultural and Forest Meteorology 70, 289342.CrossRefGoogle Scholar
Webber, B. L., Yates, C. J., Le Maitre, D. C., Scott, J. K., Kriticos, D. J., Ota, N., McNeill, A., Le Roux, J. & Midgley, G. (2011). Modelling horses for novel climate courses: insights from projecting potential distributions of native and alien Australian acacias with correlative and mechanistic models. Diversity and Distributions 17, 9781000.CrossRefGoogle Scholar
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Fig. 1. Global distribution of Gossypium (cotton) cultivation and validation of the model.

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Fig. 2. Global distribution of Triticum aestivum L. (wheat) cultivation and validation of the model.

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Fig. 3. Common climate projections (EI) for Gossypium using CLIMEX under the CSI and MR GCMs running the A2 scenario for the designated years for future scenarios.

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Fig. 4. Common climate projections (EI) for Triticum aestivum L. using CLIMEX under the CSI and MR GCMs running the A2 scenario for the designated years for future scenarios.