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DEPARTMENT for ENVIRONMENT, FOOD and RURAL AFFAIRS Research and Development CSG 15 Final Project Report (Not to be used for LINK projects) Two hard copies of this form should be returned to: Research Policy and International Division, Final Reports Unit DEFRA, Area 301 Cromwell House, Dean Stanley Street, London, SW1P 3JH. An electronic version should be e-mailed to [email protected] Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 Contractor organisation and location Rothamsted Research West Common Harpenden Total DEFRA project costs Project start date £ 90,649 01/08/03 Project end date 31/05/04 Executive summary (maximum 2 sides A4) This project re-assessed the risk of drought-related yield loss for representative arable crops using (a) new climatic predictions based on UKCIP02 emission scenarios, and (b) more advanced crop modelling approaches. The aim was to address DEFRA policy on “Climate adaptation, risk, uncertainty and decision-making” with respect to typical winter-sown crops and spring-sown crops growing throughout the summer (examples chosen: winter wheat, sugar beet). The results are compared with outputs of the preceding project (CC0336), based on the UKCIP98 Medium-High scenario. Methods: 1. Weather scenarios were generated by the LARS-WG stochastic weather generator using the UKCIP02 scenarios and the output from the HadRM3 climate model. We used Low and High emission projections to generate daily site specific weather data for 17 selected representative sites in the UK. Each scenario consists of 50 years of daily weather with minimum and maximum temperature, rainfall and radiation. 2. The Sirius2003 wheat model with the new canopy model was used in the project; it was re-calibrated for two varieties (Mercia, Consort) using ADAS experimental datasets. 3. A more detailed hydrology model was implemented into the Broom’s Barn sugar beet model, calibrated and evaluated for annual and long-term experimental data. 4. Drought indicators were displayed as relative soil moisture deficit (rSMD) with reference to physiological thresholds (senescence) and the reduction of potential yields (YR) for different emission scenarios. 5. Probability distributions of future yields were determined, by using the models for temperature-driven and water-limited crop production for a range of emission scenarios and time-lines. 6. Management options (crop allocation, variety selection) were evaluated to adapt to increased risks if necessary. CSG 15 (Rev. 6/02) 1 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 Results: In the future, with greater warming, the weather is likely to be wetter in winter, spring and autumn but drier in summer compared with the past. This is likely to increase the soil moisture deficit in mid summer, which winter-sown crops are likely to escape, but which will affect spring-sown crops which grow throughout the summer, like sugar beet. According to our new simulations drought will be more severe and more frequent than estimated before. Instead of 3-4 % increase of moisture deficit in East Anglia by the 2050s, the new scenarios predict an increase of 8 to 12 %, for the low and high emissions. The probability of exceeding the physiological threshold of enhanced senescence could rise to 84 or 90 % by the 2050s, and to more than 95 % by the 2080s (Table 3). In conclusion, we must anticipate more drought stress in sugar beet production. In comparison with the earlier scenarios (2050s-MH) based on HadCM2 the drought stress may be doubled. While the drought-related yield reduction (YRdr) is likely to be small for winter wheat, YRdr for sugar beet will increase by 30 to 50 % by the 2050s-High, depending on the region (see Fig. 6). By the 2080s drought-related yield loss in sugar beet could be as high as 40 to 100 %. In conclusion, YRdr of sugar yield may actually double compared with the current situation, and 20 % more loss is likely to occur within our lifetime. Future yield distributions Wheat yields as simulated with the new scenarios and Sirius2003 will increase and have less variation (decrease in CV %). The overall average increase of wheat yield by the 2050s (1.55 t/ha) is very similar to the yield increase predicted in the earlier scenarios (Richter et al., 2002). The reasons for this result are the increase in RUE due to CO2 elevation and the acceleration of development by five to six weeks allowing wheat to escape the drought stress at the end of the season. Crucially, late sowing dates are to be avoided not to delay anthesis and shorten grain filling. For sugar beet, earlier simulations gave a yield increase of 1.9 t/ha sugar by the 2050s. In the new simulations, the sugar yield increases by between 1.4 and 2 t/ha in the 2050s low and high emission scenarios, respectively. Unlike the results for wheat, the range of yields becomes much wider in the future. Yield variation increases from 15-18% (baseline) to about 18-23 % (2050s) and 19-25 % by the end of the century. The differences between the regions are not very large with respect to yield, on average less than 1 t/ha, but greater with respect to variation due to soil properties. In comparison to earlier simulations (see Fig. 17 in Richter et al., 2002), the uncertainty of yields is generally higher now. The response to low soil available water capacity (AWC) is slightly different with the new hydrology module. Variation of yields decreases with improving AWC to 7 % but maximum variation increased by 3 to 4 %. Yields increase from 8 t/ha on sand to about 11 t/ha on good soils (baseline), in the future (2050s), yields will remain low on sands but increase to 15 t/ha on deep soils. Yields of sugar on the best soils may increase by more than 3 t/ha (2050s) and 5 t/ha (2080s). Management options to mitigate climate impacts For winter wheat we tested the effects of (a) variety selection, (b) sowing date, and (c) crop allocation to soils: For the baseline scenario, Consort yielded 1.0 t/ha more than Mercia due to earlier anthesis and longer period of grain fill. For Consort simulated yields were on average 1.5 t/ha higher than Mercia in all scenarios. Late sowing results in later anthesis date, smaller final leaf number and reduced yields, compared to the earliest sowing date, for both Mercia and Consort. The increase of wheat yields is greatest on shallow and light soils in future. In future, with earlier development wheat will benefit more from winter and spring rainfall, however, yield variation remaining higher in soils with low AWC compared with soils of high AWC. For sugar beet production, further drought stress reduces suitability of shallow and light soils, if irrigation cannot be secured. Breeding for drought tolerance could improve yields. CSG 15 (Rev. 6/02) 2 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 Conclusions Under the UKCIP02 climatic change scenarios we reach the following conclusions with respect to drought risk: Risk and uncertainty: Wheat is simulated to escape drought, which is likely to occur in mid-summer (August), due to accelerated development of current varieties. This is dependent on a low vernalisation requirement and early anthesis. All simulated indicators have a smaller variation in the future compared with the baseline scenario. For summer grown crops like sugar beet drought stress is very likely to be more severe than in the past due to much drier summers, especially in the High emission scenario. Rising atmospheric CO2 concentration will compensate for drought-related losses. Management decisions for adaptation More intense rainfall events in the winter may have implications for seedling damage and water logging in poor draining and lowland soils, resulting in substantially reduced yields. On sloping sites late sowing of winter wheat will not only result in poor yields, but may increase the risk of water erosion. Winter wheat may become more common on very sandy and shallow soils. These sites may, however, be more secure for the use of perennial (biofuel) crops or drought resistant crops like Triticale. Breeding and variety selection Unknown response of UK varieties to increased heat stress, which is very like to occur by the 2080s. Heat stress may become more of an issue as the number of hot days (>30°C) is predicted to increase sharply, thus reducing grain number and grain yield. As winters become warmer, winter wheat varieties will need to be selected with a low vernalisation requirement, because an early anthesis date is needed to avoid summer drought. Winter wheat varieties should be selected for weaker photoperiod sensitivity to make sure they are able to reach the anticipated earlier flowering date due to future warmer temperatures. Winter wheat varieties should be selected for resistance to water logging and heat stress Sugar beet varieties will be required which use water still more efficiently and which are more effective at acquiring water (root traits). CSG 15 (Rev. 6/02) 3 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 Scientific report (maximum 20 sides A4) 1 Introduction In our earlier risk assessment of drought impact on crops in the UK (project CC0336) the climate change scenarios were derived from the HadCM2 climate model. For the “medium-high” scenario (MH) we concluded that drought risk is likely to increase until the 2050s reducing potential yields. However, rising atmospheric CO2 concentrations, [CO2], more than compensated the drought-related yield reduction (Richter and Semenov, 2004; Richter et al., 2002). New scenarios have become available (UKCIP02; Hulme et al., 2002), which predict summers to be warmer and drier than in the old scenarios. We therefore update for DEFRA the drought risk assessment to answer the question to what extent crop production will be affected in future. 2 Methods applied in the risk assessment 2.1 Climate change scenarios The UKCIP02 climate change scenarios are based on the HadRM3 regional climate model with a spatial resolution of 50km. Using simple spatial interpolation techniques this resolution was increased to 5km, which is a big improvement compared with the ~350km resolution of the original HadCM3. Nevertheless the temporal resolution of the climate scenarios remains the same, i.e. monthly mean values. For agricultural applications daily weather is required. Agricultural extremes are usually recorded on a daily basis, e.g. the sequence of days with temperature below 0 °C or the sequence of days when total precipitation exceeds a particular threshold. Agricultural and hydrological models are non-linear, and their responses are different when monthly or daily data are used (Semenov, 1995; Porter, 1999). A methodology has been developed for temporal downscaling of GCMs based on a stochastic weather generator (Semenov, 1997). In this project we used a new version of the LARS-WG stochastic weather generator, version 4, which has been specifically developed and validated for climate change studies in the UK. The new version includes may new features compared to the version used in the previous DEFRA study (project CC0336). A methodology for spatial interpolation of LARS-WG was developed (Semenov & Brooks, 1999), which allows the generation of climate change scenarios at any site in the UK where observed data is not available. In this project, we have applied a methodology developed for temporal downscaling using UKCIP02 and HadRM3 projections. Changes in climatic variability such as duration of dry and wet spells or temperature variability were derived from daily output from HadRM3 and incorporated into the scenarios. Scenarios were generated for UK-HI and UK-LO projections for 2020s, 2050s and 2080s time intervals and for the baseline. 50 years of daily weather were generated with minimum and maximum temperature, rainfall and radiation, and used for the risk assessment. 2.2 Model modifications and validations The models used in the preceding project were changed by modifying (a) the canopy dynamics in Sirius and (b) the water balance sub-model in the Brooms Barn sugar beet model. A description of the changes and recent validation is summarised in the following: 2.2.1 Wheat model We used the Sirius2003 wheat model (Lawless et al, 2004) which includes a new canopy model compared with Sirius2000 (Jamieson et al, 1998). The new canopy model was developed as part of the DEFRA funded project (AR0906) “A Rational Basis for Design of Wheat Canopy Ideotypes for UK Environments”. The new canopy model replaces the empirical curve representing green area index (GAI) development used in Sirius2000. The two parameters used in Sirius2000 to describe GAI were replaced by a single parameter, AreaMax in Sirius2003. AreaMax can easily be measured as the maximum GAI achieved by a crop grown in non-limited conditions (soil water and nutrition). Calibration was done on observed GAI of the same wheat data sets as used before (varieties Mercia and Consort) from three sites in England, Boxworth (Cambs.), Sutton Bonington (Leics.) and Rosemaund (Hereford) (HGCA 1998a; b; 2000). The varieties Mercia and Consort were reparameterised for use with Sirius2003. Combine-harvested yields of the same data set were used to evaluate the CSG 15 (Rev. 6/02) 4 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 new simulation of dry matter production and yield as these give a better representation of yields achieved on real farms. Overall, the best fit to the anthesis dates and observed yields was obtained by: Adjusting the parameters which model the response to vernalisation (VAI and VBEE) for Mercia and for Consort. These were finally fixed to 0.004 and 0.04 respectively for both varieties, which is outside their normal range. Increasing the phyllochron to 108 for Mercia and to 100 for Consort based on recorded dates between GS39 and GS61 Adjusting thermal time of grain fill (TTBGEG) to 950 for Mercia and 1050 for Consort, to describe measured grain yield. Anthesis can also be delayed by increasing the vernalisation temperature response, VAI. This was obtained purely by fitting the data; it was not based on any experimental evidence. Unfortunately there were no data available in this dataset to calibrate the vernalisation parameters (see Section 4). Adjusting the day length response within the typical range did not improve anthesis date. Reducing thermal time from sowing to emergence from 250 to 150 improved the simulation of anthesis date. 150 is the typical value for this parameter (Jamieson et al. 1998). The variety Consort was grown at the three sites in 1997. This is higher yielding than Mercia, and later maturing (NIAB 1999). Parameters were adjusted to fit the observed data. Yields were fitted by adjusting thermal time of grain fill (TTBGEG) to 1050 degree days. As with Mercia, anthesis date could be made to fit by adjusting either the phyllochron or vernalisation parameters. All other parameters were unchanged from Mercia. None of these parameter changes were based on any experimental data (except the phyllochron). Boxworth 01-Sep LAI 1997 Sutton Bonington 25 20-Mar 06-Oct 01-Sep 20-Mar 06-Oct 01-Sep 20-Mar 06-Oct 9 8 7 6 5 4 3 2 1 0 01-Sep Biomass & yield for all sites Simulated yield, biomass (t/ha) LAI 1993 Rosemaund 9 8 7 6 5 4 3 2 1 0 20 15 10 5 0 0 20-Mar 06-Oct 01-Sep 20-Mar 06-Oct 01-Sep 20-Mar 06-Oct 5 10 15 20 25 Observed yield, biomass (t/ha) Figure 1: Green leaf area index (GLAI) for Mercia (1993) and Consort (1997) and biomass (closed) and yields (open symbols) at different sites (■□ Boxworth, ▲∆ Sutton Bonington, ◊ Rosemaund) The newly parameterised model showed good agreement for most indicators (Figure 1). GLAI dynamics were best described at the wettest site (Rosemaund, Herefordshire) and in a generally moist year – 1993. In 1997 crop establishment was impaired in Boxworth due to seed bed quality. In Sutton Bonington the experiments may have been N-limited (185 kgN/ha), which was not accounted for in the simulation. Biomass production and yields were well described. The anthesis date was difficult to predict in 2 out of 5 years, which was related to warm winter temperatures (2-4 oC higher than the long-term average). This suggests that the variety trait of vernalisation and associated parameters need special attention in the future because winters will be warmer and varieties with lower vernalisation requirement will be needed. CSG 15 (1/00) 5 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 2.2.2 Sugar beet model Two major points were pursued in the modification of the sugar beet model: (a) include a multi-layer soil hydrology module and (b) re-evaluate the parameters for canopy senescence. Independent referees reviewing our regional assessment of drought risk for sugar beet (Richter et al. 2003) had criticised the soil hydrology sub-model to be over-simplified with respect to the soil moisture dynamics. This was one of the possible reasons to underestimate dry matter production above 21 t/ha in a long-term data set from continental Europe (Richter et al., 2004). Recent simulations for the UK revealed that simulated yields in high productivity sites may be too low due to overestimated canopy senescence, which proved to be a crucial parameter to estimate production in deep continental soils (Qi et al. (2004). The principal changes in the simulation of transpiration and water stress in the sugar beet model are the following: Distinguish two soil horizons with different physical parameters to account for variable available water capacity Implement a simple water redistribution and surface evaporation routine to account for drying and rewetting of the surface horizon and variable soil water content (SWC) in the profile, Simulate rooting depth and root elongation rate (RER) according to penetration resistance as a function of soil water content in the profile, and calculate dry matter accumulation of fine roots and empirical distribution of root length density (RLD) Simulate water uptake from individual layers according to variable RLD and root efficiency (REFF) dependent on relative SWC The original FORTRAN code was extensively re-written to implement the above into the model and input parameters were derived to describe a range of soil profiles. We analysed the sensitivity of the new model to variation of initial conditions, fractional changes of flux resistance and transpiration coefficients to describe different hydrological and meteorological boundary conditions. 18 35 (a) (b) 16 30 Modelled TDM (t/ha) Modelled suger yield (t/ha) 14 12 10 8 6 4 New (CTc = 1) Orig. model New (CTc = 1.25) 2 25 20 15 10 Reduced senescence 5 New Hydrology Orig. model 0 0 0 2 4 6 8 10 12 14 16 18 Observed sugar yield (t/ha) 0 5 10 15 20 25 30 35 Observed TDM (t/ha) Figure 2: Graphic evaluation using observed de-trended vs. simulated (a) sugar yield at Brooms Barn (24 yrs) and (b) total biomass (TDM at Bad Lauchstädt (32 yrs); representation of different model versions (see text) We validated the new model against the state variables of the hydrological and the crop growth compartments for a range of experiments. In summary, the dynamics of soil hydrology are well described under rain-fed cultivation. Under extreme (imposed) drought, transpiration may be underestimated as shown for the rainshelter experiment; observed yields could be described by reducing potential ET or the crop transpiration coefficient (CTc 1 vs. 1.25). This suggests that (a) water uptake is beyond the observed and simulated root distribution and that (b) the canopy and transpiration must fully recover from water stress due to subsequent irrigation. The uptake of soil water from below the root zone is physically plausible and could be imitated by CSG 15 (1/00) 6 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 ignoring rooting constraints. Increasing AWC for this particular experiment resulted in higher yields at higher transpiration. Further investigation was beyond the scope of the project. We further tested the new model for two sets of long-term observations (Figure 2). We confirmed that initial conditions are of little importance for simulating the climatic impact in the UK, unless we include an extreme year in the data set (e.g. 1976). In the UK it is justified to assume field capacity. In continental locations variable initial conditions are crucial. In the UK, the new hydrology model conserved the predictive capacity of the model (Fig 2a; R2 improved) but the Residual Mean Square Error (RMSE) and bias (MD) increased depending on the crop transpiration coefficients. Varying ETP (CTc = 1.25/1.0) the RMSE increased compared with the original, simpler model (1.4/ 1.1 t/ha versus 1.0 t/ha). The model under- or over-estimated yields depending on the evaporation demand (MD = 0.75 and –0.59 t/ha, respectively). For simulations of the dry matter production at Bad Lauchstädt (Fig. 2b) the new hydrology model reduced the bias significantly (MD 1.6 vs. 3.8 t/ha) but did not improve the simulation of high yielding years. Reducing the senescence parameter to the value derived by Qi et al. (2004) for high-productivity sites in Germany, however, increased many high yields towards the 1:1-relationship, further reducing the bias to less that 1 t/ha. However, both modifications of the model and the parameters resulted in simulated biomass with a high RMSE (3.3 t/ha), especially due to over-estimated dry matter production below 21 t/ha. In conclusion, the expansion and improvement of the code for the hydrology sub-model proved to describe the dynamics of the soil water content within reasonable agreement. However, water uptake is beyond rooting depth, which is plausible because of capillary rise. The simulation of long-term yields in the UK (Broom’s Barn data set) is of similar quality as before without changing the parameters of canopy senescence. In highproductivity sites this is not quite satisfactory, and different senescence and partitioning parameters are needed. The scatter was fairly large and it will be necessary to develop a unified approach describing canopy senescence as a function of soil water uptake for a wider ranging data set. 2.3 Construction of regional scenario simulations The procedure for the regional simulation was identical with that chosen in the previous project (CC0336) except that the simulations were run for each ((crop + variety)*soil* management) with 50 years of weather instead of 35 years. The regions were grouped according to the former MAFF-classification, except that for sugar beet all outer western weather stations were pooled in one region (WEST). The allocation of wheat and sugar beet to the regions and to the soils were following the surveys published in the Soil Bulletins (giving data for the 1980s) and a more recent compilation published by the Central Science Laboratory in York (MAFF 1999) and more recent publications (http://farmstats.defra.gov.uk/). CSG 15 (1/00) 7 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 Table 1: Regional distribution of wheat in England and Wales and allocation to different classes of available soil water capacity (AWC, mm) – fraction per region and total area per class of AWC Class of AWC (mm) Wheat Area (103 ha) 80-120 -160 - 180 North N West N East W Mid 42 13 180 123 0.4 0.4 0.3 0.4 0.3 0.3 0.26 0.3 0.2 0.2 0.14 E Mid 330 0.1 0.45 0.45 E Anglia S East S West Wales Total 103 ha 305 413 155 9 0.1 0.25 0.35 0.25 0.5 0.55 0.5 0.5 0.4 1570 350 700 350 Region -220 >220 0.2 0.2 0.2 0.2 0.2 0.15 0.25 130 40 The scenarios for wheat production in England and Wales were represented using single weather stations in each region. Only in the southwest of the country did we distinguish coastal and inland sites. We think that this approach is sufficient to represent the national variation of climate, covering a climatic water balance from -40 to +300 mm. Table 2: Area (ha *1000) in the main growing regions that is in arable rotations involving sugar beet, grouped by soil texture class and AWC (mm) ; following Table 3.2.3 in MAFF (1999) Annual Area W N2 AWC E1 Σ Soil class (mm) Shallow (SH) 70-110 10 10 Sands (S) 80-120 20 5 5 30 Sandy Loam (L) 120-160 40 11 9 60 Clay Loam (CL) 160-200 30 7 7 44 Silt Loam (SiL) 200-220 *20 1 4 25 Organic (O) >300 *20 0 1 21 Total (*1000 ha) 140 24 26 190 1 East Midlands and Eastern (Anglia); 2 Yorkshire/Humberside The scenarios for sugar beet production in England and Wales were represented using several weather stations in each region. Since the 1980s, concentration and reduction in the production of sugar beet has continued as the number of factories was reduced from 18 to 9 in 2000 and to merely six in 2004. Shallow soils, as given in Table 2, have been taken out of sugar beet production. The ratio of potentially suitable soils for sugar beet is about 4 times higher than that actually used, which leaves room for better embedding into more diverse rotations. CSG 15 (1/00) 8 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 The different climate scenarios are sketched in Figure 3: Two different emission scenarios were chosen (LOW, HIGH), and four time slices (Baseline, 2020, 2050 and 2080) which results in seven different CO2concentrations and temperature/precipitation regimes for the simulation. In Figure 3 the change in total precipitation and distribution is sketched for the HIGH emission scenario only, the extreme events are visualised for the 2080s-HIGH. Management scenarios were selected as described before, selecting three different sowing dates for wheat (21 Sept, 11 Oct, 31 Oct.) and three different harvest dates for sugar beet (30 Sept, 25 Oct, 15 Dec), with a standard sowing date (01 Apr). Observations on sugar beet length of season were derived from a series of sowing and harvest date data collected in the East Midlands (ADAS, unpublished data); harvest dates ranged from late September (DOY 270) until late December (351), with a mean DOY 315. Scenarios were simulated by running each combination of soil-sowing/harvest date for 50 realisations of the climate variability generated by the stochastic weather generator. In the simulations for sugar beet the weighting of the soil properties and harvest date is already reflected in the simulation output and thus in the frequency distributions. For winter wheat weighting for both factors was done after the simulations. The difference between weighted and non-weighted means for winter wheat was about 0.3 t/ha (national, weighted according to area grown), and less than 0.2t/ha for soil distribution and sowing date. Mitigation options were assessed as (a) sowing (wheat) date (b) variety selection (wheat), and allocation to soil type. 3 Key findings 3.1 Climatic variability The new scenarios (UKCIP02; Hulme et al., 2002) include a more comprehensive analysis of extreme weather events, rainstorms and heat waves and have a native spatial resolution of 50km compared with the 350km resolution of the previous scenarios (UKCIP98). Compared with the earlier Medium-High (MH98), the new simulations predict a delayed but stronger increase of [CO2] in the high emission scenario. More warming than in the HadCM2 Medium-High scenarios is expected to occur by the 2080s. The new high-emission scenario (High02) predicts temperatures similar to the old medium-high from UKCIP98 (MH98) in the 2050s. In contrast to the old scenarios, summer will become drier, with only half as much rain in the southeast by the 2080s. The scenarios predict that soil moisture may be reduced by 30 and 40 % over large areas of England by the 2050s and 2080s. These changes are critical to the drought risk and its impact on key crops. However, the frequency distributions are discussed in the results of the water balance simulation for wheat and sugar beet. Statistics of weather for the different scenarios (UKCIP98 MH, UKCIP02 low – high) are displayed in Figure 3. The statistical analysis showed that the frequency of extreme events (high temperature, rainfall intensity) is markedly increasing in the end of the century. Days with Tair exceeding 30 °C will increase from less than one per year to more than 10 per year in the high emission scenario, mainly occurring in July and August. High rainfall intensities are also predicted for the 2080s-High in terms of shifting rainfall to the wet season (winter), in which the average rainfall may increase by up to 20 % with a small increase in the frequency of very wet days (>15mm) in winter and spring. The autumn and spring may show some reduction of average rainfall (max -10%) but the frequency of heavy rainfall is predicted to increase by between 2 and 5 days per decade. Summers will become substantially drier and receive fewer intensive rainfall events. CSG 15 (1/00) 9 Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios Increase [ o C] 700 600 4 High02 MH98 Low02 3 2 1 o Days with Tmax > 30 C 15 1961-90 2080s - HI 10 5 0 0 2020s 2050s 2080s SWest WMid EMid EAng SEast 500 20 20 10 400 300 Change [% ] CO 2 concentration [ppmv] 800 CC0368 20 Average temperature Tmax >30 o C [ d / yr ] 5 900 DEFRA project code Change [d/decade] Project title 0 -10 2020s 2050s 2080s Low02 422 489 525 MH98 447 554 697 -30 High02 437 593 810 -40 -20 Precipitation 2020s 2050s Annual DJF 2080s MAM JJA SON 15 10 Change in wet days (>15 mm) MAM JJA SON DJF 5 0 -5 -10 -15 S West WMid EMid EAng SEast Figure 3: Climatic variables derived from the UKCIP scenario simulations (Hulme and Jenkins, 1998; Hulme et al., 2002) 3.2 Risk assessment modelling scenarios The drought risk for the yields of the two crops winter wheat and sugar beet – were assessed in parallel for combinations of climate, soil type and management as outlined in the previous report. The emphasis was put on the new emission scenarios published by the UKCIP in 2002. Some of the old scenario runs were rerun for both crops with weather generated from parameters given UKCIP98-MH. From the comparison of old and new climate data we concluded that the old Medium-high emission scenario (2050s) was so close to the new 2050sHigh that - in contrast to the original idea – it was unnecessary to use the new Medium-High. We run the following climatic scenarios: baseline and UKCIP02-low and UKCIP02-high for 2020s, 2050s and 2080s. We assessed the drought risks in form of regional probability distributions of the following drought and crop performance indicators: (a) soil moisture deficit with reference to the prevailing soil types (available soil water capacities) and physiological thresholds, (b) reduction of potential yields, defined as the ratio of water-limited and potential yield (Ywl/Ypot), and (c) distribution of actual harvestable yields. 3.2.1 Soil moisture deficits under winter wheat and sugar beet In contrast to the scenarios based on HADCM2 and UKCIP98 the new scenario simulations show that in spite of reduced rainfall winter wheat will experience less water stress. On average, the soil moisture deficit (SMD) during the wheat growing season is predicted to diminish by about 4 % (2050s) and by about 9% in the 2080s. Even in the east (Anglia/ Midlands) and southeast of England the average soil moisture deficit may decrease during the growing season of winter wheat. However, there could be a slightly greater variation in some areas. This indicates that wheat may actually escape the summer drought in most instances, due to earlier development and ripening of the crop. Looking at the spring sown crop, sugar beet, it becomes clear that the maximum SMD is not reached before the end of August, irrespective of the scenario. CSG 15 (1/00) 10 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 Mean rleative SMD 0.7 0.6 0.5 Baseline 0.4 HI2050 0.3 HI2080 0.2 0.1 C ar lis Le le S em B on ing ni ng C am ton br id ge O xf Ly ord ne h Pl am ym o Sh uth aw bu ry R in gw Ab a er y po r th 0.0 Figure 4: Variation of average maximum relative soil moisture deficit rSMD (SMDmax/AWC) in the regions (represented by site of weather station) for winter wheat The probability of exceeding the threshold for leaf senescence (rSMD = 0.7) of winter wheat will be small and decrease compared to the baseline scenario. This is in contrast to the simulations using Sirus2000 which predicted that for example in Shawbury (West Midlands) this threshold would be exceeded in 70 % of years compared with 60 % in the baseline. Simulations with the new model and new climate scenarios are very different and reduce this estimate to about 7% of years in the baseline, 8 to 6 % by the 2050s and to about 4 to 3 % by the 2080s under LOW and HIGH CO2 emission, respectively. On the contrary, sugar beet is going to experience a greater degree of senescence enhancing drought stress in the future. The date of drought occurrence is predicted to be before the end of August, which is well in midseason and likely to have great impact on yields. The question is how long the maximum seasonal SMD will persist. Even the average of the SMD is predicted to exceed the threshold of 0.7 (Fig. 5a) and by the 2050s the average stress level is going to increase by 10 %. The change of drought stress is greater in the East Midlands than in East Anglia. As illustrated for the high emission scenario in East Anglia (Fig 5b) there are only a few sites left which are not exposed to an increased risk of senescence. The change in maximum drought level is drastic for all regions under the High emission scenario (Table 3), much less under the Low emission scenario. A probabilistic view of drought impact needs to be taken with respect to yield realisation and physiological margins. The threshold for enhanced senescence is set to 0.7 and this is compared to the probability of relative soil moisture deficit (rSMD) exceeding this threshold. Table 3: Probability of not exceeding the critical threshold of 0.7 for senescence simulated for the sugar beet season under two different emission scenarios (Low, High) for three different time slices. Region East Anglia East Midlands West Midlands CSG 15 (1/00) Scenario base 0.27 0.45 0.37 Low emission High emission 2020s 2050s 2080s 2020s 2050s 2080s 0.23 0.16 0.14 0.21 0.10 0.04 0.31 0.28 0.24 0.29 0.21 0.07 0.28 0.26 11 0.19 0.26 0.17 0.06 0.9 0.8 16 0.8 0.7 14 0.6 12 0.5 10 0.4 8 0.3 6 0.2 4 0.1 2 0.1 0 0 0 (b) DEFRA project code CC0368 East Anglia - High 0.7 0.6 0.5 0.4 0.3 0.2 0.2 ba se 20 20 lo 20 20 hi 20 50 lo 20 50 hi 20 80 lo 20 80 hi (a) Cumulative probability 1 18 1 0.9 Increase (%) 20 max Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios Relative SMD Project title 0.3 0.4 0.5 0.6 0.7 0.8 0.9 1 Relative SMD Figure 5: Maximum relative soil moisture deficit under sugar beet (a) in the major growing regions (East Anglia □; East Midlands ■) and average increase (▬), and (b) cumulative probability to exceed the threshold of 0.7 (vertical bar) simulated for the high emission scenario; baseline (▬▬), 2020s (——), 2050s (— —) and 2080s (– – –) In conclusion, - and recalling the information on climatic change, such as increasing temperature and decreasing summer rainfall - winter wheat is likely to escape the summer drought whereas we must anticipate more drought stress in sugar beet production. In comparison with the earlier scenarios (2050s-MH) based on HadCM2 the drought stress may be twice as high. Regional differences are likely to diminish. It is important to know how long the drought season will last. According to Figure 3, with the beginning of September more rainfall can be expected. 3.2.2 Reduction of potential yields (YR) Reduction of Y pot (%) 60 East Anglia East Midlands 50 40 30 20 10 i H Lo 20 80 20 80 i H 20 50 20 50 Lo i H Lo 20 20 20 20 ba se 0 Figure 6: Reduction of yield potential Ypot, of sugar beet (Mean ±SD) predicted for the UKCIP02 scenarios (Lo vs Hi; 2020s to 2080s). Based on the results of soil moisture, it is likely that the potential yields of winter wheat and sugar beet will be affected very differently. In contrast to the earlier model predictions, reduction of potential yields in winter wheat is going to be generally smaller in the future. In the East Midlands the yield loss due to drought will decrease from 19% (base) to 16 and 12 % by the 2080s, assuming LOW and HIGH emission of CO2, respectively. In the West Midlands the decrease is even greater (to 12 and 10 %, respectively). Wheat sown at later dates, however, might respond with later anthesis and will be affected more strongly since delayed grain filling is affected by accelerated maturation. These results again suggest that earlier development and anthesis CSG 15 (1/00) 12 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 of wheat will avoid the impact of greater summer drought. On the other hand, sowing dates become more critical for wheat production. For the production of sugar beet, the situation is quite different, and the examples for the main sugar beet growing area display a large increase in drought-related reduction of potential yields (Figure 6). Especially, by the 2050s the drought-related reduction of potential sugar yields may increase by 30 to 50 %, depending on the selected scenario (LOW vs. HIGH). By the end of the century (2080s) drought impact on yields may actually double. The yield reduction is widely spread, which reflects the great variation of future climate and uncertainty of yields. In conclusion, wheat is less likely to be negatively affected by changing temperature and water regime due to it’s terminate character than sugar beet. Drought effects on sugar beet may actually be up to twice that of the current situation, as 20 % more drought is likely to happen within our lifetime. 3.2.3 Distribution of winter wheat yields Indicators for the dynamics of yield formation are (a) the anthesis date, (b) the time of maturity, and (c) the number of leaves. The dates of anthesis are illustrated for the West Midlands only but are representative for the general trend: Anthesis of Mercia is moved forward from the 13 June by three to five weeks due to higher temperatures, occurring on average by 19 May (2080s-Low emission) or the 6 May (2080s-High emission). Consort is flowering one week earlier than Mercia and for the HIGH emission scenario flowering is predicted to occur six weeks earlier than in the past (end of April). It is important to notice that sowing date has an impact on anthesis date (see below) and will result in change of yield. Maturation dates of these two varieties are very similar, they are predicted to move from 27 August (baseline) to the end of July (2080s-Low) or even the middle of July (2080s-High). The increase of yield is very similar for both varieties: 18 to 38 % till the end of the century using the Low and High emission scenarios. The interregional variation of anthesis date is decreasing because warming in the west and north of the country accelerates the development but increases the time needed to fulfil vernalisation in those parts of the country which are warmer. The phenology of wheat in the warmer and cooler regions will become more alike in the future. Numbers of leaves are decreasing with delay in sowing date, by two leaves from earliest (21 Sept) to latest of sowing (31 Oct). Rising temperature will increase the number of leaves but increase the difference between earliest and latest sowing (five leaves by the 2080s-High). Delayed anthesis will always result in reduced yields. Based on the indicators discussed above (rSMD, YR) wheat yields should be unaffected by drought and are expected to increase. In Table 4a we summarise the regional mean yields for the former reference variety, Mercia, for the HIGH emission scenario. The range of baseline yields (6.3-8.5 t/ha) simulated with the new Sirius version and parameterisation is considerably wider than simulated earlier (7.2- 8.1 t/ha). Further, the overall average of baseline yield is almost 0.9 t/ha smaller than simulated earlier. For East Anglia the difference is greater but there is no obvious Southwest – Northeast pattern in the deviation from earlier simulations. The difference between the high and low emission (Table 4b) scenarios is small, and it mostly concerns the yield level, which is between 0.1 (2020s), 0.5 (2050s) and 1.2 t/ha (2080s). The respective spread of the yield distributions are very similar (Figure 7), and in general the yield distributions are shifting almost parallel to each other to higher yields, more strongly in the High emission scenario. CSG 15 (1/00) 13 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 Table 4a: Regional mean winter wheat yields (t/ha) and CV (%) and increase in the HIGH emission scenario compared with the baseline scenario (weighted for soil distribution and sowing date within the region); * I = inland (Lyneham) and C = coastal (Plymouth) Region North North East East Midlands East Anglia South East South West I* South West C* West Midlands North West Wales Scenario Weight 3.6 12.9 21.4 17.5 24.9 5 5 7.8 1.2 0.6 English weighted mean Baseline Mean CV (%) 6.92 14.7 6.47 17.2 7.15 15.9 6.29 20.1 6.85 17.6 7.30 17.3 8.45 16.4 6.97 17.5 7.05 17.6 7.81 21.8 6.84 Mean 8.29 8.07 8.55 7.98 8.45 8.73 10.47 8.37 8.39 10.45 8.38 High 2050 CV (%) Increase 15.9 1.37 17.9 1.60 17.2 1.40 18.7 1.70 15.8 1.60 16.9 1.43 11.7 2.02 16.7 1.40 16.6 1.34 18.1 2.64 1.55 Mean 9.68 9.15 9.48 8.40 9.07 9.76 11.03 9.63 9.54 12.25 9.19 High 2080 CV (%) Increase 13.0 2.8 14.0 2.7 14.1 2.3 20.5 2.1 15.4 2.2 14.4 2.5 11.9 2.6 12.9 2.7 14.1 2.5 13.5 4.4 2.36 Table 4b: Regional mean winter wheat yields (t/ha) and CV (%) and increase in the LOW emission scenario compared with the baseline scenario (weighted for soil distribution and sowing date within the region); * I = inland (Lyneham) and C = coastal (Plymouth) Scenario Region Weight North 3.6 North East 12.9 East Midlands 21.4 East Anglia 17.5 South East 24.9 South West I 5 South West C 5 West Midlands 7.8 North West 1.2 Wales 0.6 English weighted mean CSG 15 (1/00) Baseline Mean 6.92 6.47 7.15 6.29 6.85 7.30 8.45 6.97 7.05 7.81 6.84 CV(%) 14.7 17.2 15.9 20.1 17.6 17.3 16.4 17.5 17.6 21.8 Mean 7.69 7.53 8.01 7.48 7.94 8.14 9.79 7.77 7.93 9.50 7.84 14 LOW 2050 CV(%) Increase 16.7 0.77 18.1 1.05 17.7 0.85 19.1 1.19 17.2 1.10 18.4 0.84 13.3 1.34 17.6 0.79 17.4 0.88 19.3 1.69 1.01 Mean 8.10 7.62 8.03 7.29 8.18 8.56 9.93 8.28 8.20 9.88 7.98 LOW 2080 CV(%) Increase 13.0 1.2 14.0 1.2 14.1 0.9 20.5 1.0 15.4 1.3 14.4 1.3 11.9 1.5 12.9 1.3 14.1 1.1 13.5 2.1 1.14 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios Low emission scenario 0.40 0.35 0.30 0.30 0.25 0.25 0.20 0.20 0.15 0.15 0.10 0.10 0.05 0.05 0.00 0.00 0.40 East Midlands Low West Midlands Low 0.35 0.35 0.30 0.30 0.25 0.25 0.20 0.20 0.15 0.15 0.10 0.10 0.05 0.05 0.00 0.00 0.40 0.40 South East Low South West Low CC0368 High emission scenario 0.40 North East Low 0.35 0.40 Probability East Anglia Low DEFRA project code 0.35 0.35 0.30 0.30 0.25 0.25 0.20 0.20 0.15 0.15 0.10 0.10 0.05 0.05 East Anglia High North East High West Midlands High East Midlands High South West High South East High 0.00 0.00 3 4 5 6 7 8 9 10 11 12 13 3 4 5 6 7 8 9 10 11 12 13 Yield class (t/ha) 3 4 5 6 7 8 9 10 11 12 13 3 4 5 6 7 8 9 10 11 12 13 Yield class (t/ha) Figure 7: Distribution of wheat yields in the major regions of England simulated with Sirius2003 for the UKCIP02 emission scenarios (Low and High); baseline (▬▬), 2020s (——), 2050s (— —) and 2080s (– – –) In conclusion, wheat yields as simulated with the new scenarios and the new Sirius version indicate increasing yields with lower uncertainty (decrease in CV %). The overall average increase of wheat yield by the 2050s (1.55 t/ha) is very similar to the yield increase predicted in the earlier scenarios (Richter et al., 2002). The most obvious reasons for this result are the increase in RUE due to higher CO2 concentrations and the acceleration of development by five to six weeks. Consequently the wheat crop will escape from the drought, which reaches its peak in August thus coinciding with natural maturation and harvest. Crucially, late sowing dates should be avoided so as not to delay anthesis, which would shorten grain filling. Further discussion will follow the paragraph on adaptation and mitigation (3.3). 3.2.4 Distribution of sugar beet yields The distributions of sugar yields displayed in the following were simulated for each region with a range of soil types and weather stations using a single sowing date only and a selection of harvest dates. Effects of earlier or later sowing were comprehensively covered in the earlier project (Richter et al., 2002). All distributions are distinctly peaked under the baseline scenario, and in contrast to the previous project, there is more homogeneity inside a region than between different weather sites. This is probably due to more homogenous weather and not due to changes in model algorithms. Earlier, we simulated a yield increase of 1.9 t/ha sugar by the 2050s, in the new simulations, the sugar yield increases by between 1.4 and 2 t/ha in the low and high emission scenarios, respectively (Table 5). The results are quite different from the results for wheat as with increasing CO2 emission and temperature in the future the range of yields becomes much wider (Figure 8). The CV increases from 15-18% (baseline) to about 18-23 % (2050s) and 19-25 % by the end of the century. CSG 15 (1/00) 15 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios 16 0 0 North low 12 0 0 12 0 0 800 800 400 400 0 0 16 0 0 West Midlands low North high 16 0 0 East Midlands low CC0368 East anglia high East Midlands high West Midlands high 12 0 0 12 0 0 Frequency Frequency 16 0 0 East Anglia low DEFRA project code 800 400 800 400 0 0 16 0 0 16 0 0 South low West low 12 0 0 12 0 0 800 800 400 400 0 West high South high 0 2 6 10 14 18 22 2 6 10 14 18 22 2 6 10 Yield class (t/ha) 14 18 22 2 6 10 14 18 22 Yield class (t/ha) Figure 8: Regional frequency distributions of sugar yields in the Low (left) and High (right) emission scenario; baseline (▬▬), 2020s (——), 2050s (— —) and 2080s (– – –). Table 5: Mean sugar yields, t/ha (and CV %) in the regions under different climate scenarios (low, high emission) for different phases of the century; weighted English mean yields (t/ha) for the scenarios Region East Anglia E. Midlands W.Midlands North South West Weighted Scenario weight base 0.36 9.9 (18) 0.36 9.9 (15) 0.144 9.6 (18) 0.133 9.5 (16) 10.3 (17) 0.003 10.6 (15) 1 9.8 Low emission 2020s 2050s 10.9 (20) 11.3 (21) 10.7 (17) 11.2 (19) 10.5 (19) 11.0 (20) 10.3 (17) 11.1 (18) 10.4 (22) 11.3 (23) 11.6 (16) 12.0 (17) 10.7 11.2 2080s 11.5 (21) 11.6 (19) 11.2 (22) 11.5 (18) 11.8 (22) 12.2 (18) 11.5 High emission 2020s 2050s 11.0 (21) 11.8 (23) 10.8 (17) 11.9 (21) 10.6 (19) 11.5 (22) 10.4 (18) 11.8 (19) 10.7 (22) 11.6 (25) 11.7 (16) 12.7 (19) 10.8 11.8 2080s 12.5 (24) 12.9 (21) 12.1 (25) 12.7 (22) 12.4 (26) 13.6 (22) 12.6 The differences between the regions are not very large with respect to yield, on average less than 1 t/ha, but greater with respect to the expected variation. This is a consequence of the distributions of soils. In comparison to earlier simulations (see Fig. 17 in Richter et al., 2002), the uncertainty of yields – expressed as %CV per class of soil AWC – is similar with respect to response to available water capacity, yields increase from 8 t/ha on sand to about 11 t/ha on good soils in the baseline scenario(Figure 9). In the future, yields will remain low on sands but increase to 15 t/ha by 2050s on very deep soils. The variation of these yields decreases with improving AWC (24 down to 7 %) the maximum variation increase by 3 to 4 %. The response to low soil quality (AWC) is about 5 % higher with the new model using a stratified hydrology module. CSG 15 (1/00) 16 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 18 (a) 16 Sugar yield (t/ha) 14 12 10 8 6 4 2080 hi 2050 hi 2 base 0 Yield variation (CV %) 35 (b) 30 25 20 15 10 5 0 0 50 100 150 200 250 300 Available water capacity (mm) Figure 9: Dependence of (a) sugar yield with soil AWC (mm) and (b) variation of yield in the Baseline and High emission scenario; (▬) baseline; (—▲) 2050s (—■) 2080s. In conclusion, it is advisable not to grow sugar beet on shallow or very sandy soils but to keep better soils reserved to gain most of the productivity increase due to higher CO2 and RUE. Yields of sugar on the best soils may increase by more than 3 t/ha by the 2050s and 5 t/ha by the end of the century. 3.3 Adaptation strategies and mitigation options For sugar beet production it is clear that the quality of the soil should be good enough to buffer drought stress. All shallow and light soils should be taken out of production if irrigation cannot be secured. It is not clear whether further breeding for drought tolerance can improve yields on such soils. For winter wheat production we investigated the changes for three different management decisions (a) Variety selection (breeding for changing dates of anthesis and maturation in wheat). (b) Crop management such as sowing for winter wheat (c) Crop-soil allocation 3.3.1 Variety selection We investigated the effects of using the variety Consort, which is a later maturing variety than Mercia, yielding around 1t/ha more than Mercia in recent NIAB trials (NIAB 1999). The crop parameters for Consort were adjusted to give a longer period of grain fill than for Mercia and a slightly earlier anthesis date. With the baseline scenario, Consort yielded 1.0 t/ha more than Mercia, due to reaching anthesis one week earlier, and a longer period of grain fill. Both varieties matured on the same date. Consort was simulated to yield on average 1.5 t/ha more than Mercia with the 2050 and 2080 low and high scenarios, again due to an earlier anthesis date and longer period of grain fill. Both varieties showed a very similar response to climate change, with yields predicted to increase by up to 33% by the 2080 High scenario (Table 6). CSG 15 (1/00) 17 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 Table 6: Comparison of the wheat varieties Mercia and Consort for the East Midlands Consort Mercia Yield t/ha Scenario Baseline 2020LO 2050LO 2080LO 2020HI 2050HI 2080HI 8.2 8.6 9.2 9.2 8.7 9.8 10.9 Consort Mercia StDEV 7.2 7.4 8.0 8.0 7.6 8.5 9.5 1.22 1.38 1.41 1.39 1.38 1.46 1.30 1.14 1.31 1.42 1.39 1.32 1.47 1.34 Consort Mercia Increase from baseline (%) 4.4 11.6 12.3 5.6 18.6 32.5 Consort Mercia Anthesis date 4.1 11.9 12.3 5.7 19.5 32.6 02-Jun 22-May 15-May 10-May 20-May 08-May 28-Apr 10-Jun 31-May 23-May 19-May 29-May 17-May 06-May Such yields are dependent on the varieties having a relatively low vernalisation requirement. Anthesis is predicted to occur progressively earlier, occurring on April 27th in the West Midlands by 2080 High scenario with Consort. Mercia is predicted to reach anthesis one week later. 3.3.2 Sowing date Three sowing dates were compared, early (21 Sept) mid (11 Oct) and late (31 Oct). Late sowing results in later anthesis date, smaller final leaf number and reduced yields, compared to the earliest sowing date, for both Mercia and Consort. Yields were predicted to be around 1.5 t/ha less, except in the 2080 (High scenario) when the anthesis date of the early sow date was later than the mid sow date, due to a large increase in the number of leaves (Figure 10). Final leaf number Anthesis date 28-Jun 20 08-Jun 15 19-M ay 10 Yield t/ha 12 10 8 6 Y 4 2 50 20 80 LO LO I8 0 LO I5 0 H I2 0 H H Ba se I8 0 LO 20 LO 50 LO 80 I5 0 H H I2 0 0 H Ba se H H H I8 0 LO 20 LO 50 LO 80 0 I5 0 09-Apr I2 0 5 Ba se 29-Apr Figure 10: Effect of sowing date on anthesis date, final leaf number and yield for wheat variety Mercia in East Anglia, East Midlands and South East England. ■ 21 Sept, ■ 11 Oct, □ 31 Oct. 3.3.3 Soil quality – available water From Figure 11 it is clear that the increase of wheat yields is greatest on the shallow and light soils in the future. This is difficult to interpret but it could mean that future climate will accelerate development so that wheat can benefit from winter and spring rainfall. Yield variation is clearly higher in soils with low AWC compared with soils of high AWC, which affects yields more evenly by the mid-century. Later, regional differences in the climate may affect yields differently either de- or increasing variation. CSG 15 (1/00) 18 Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios 40 30 25 20 15 y = -0.06x + 30.47 R2 = 0.32 10 5 0 100 DEFRA project code CC0368 25 y = -0.08x + 41.39 R2 = 0.68 35 Yield variation ( CV % ) Yield increase (% over base) Project title 120 140 160 180 200 Soil Available Water (mm) 20 y = -0.09x + 29.63 R2 = 0.48 15 10 y = -0.09x + 29.54 R2 = 0.88 HI2050 5 0 100 HI2080 120 140 160 180 200 Soil Available Water (mm) Figure 11: Effect of soil available water on (a) wheat yield increase compared with baseline and (b) wheat yield variation (CV %); scenario specific for ∆2050s and ■ 2080s, high emission; soil specific means; data pooled from East Anglia, East Midlands and the Southeast. 4 Discussion and conclusions For both models certain improvements were implemented and have enabled us to test these against existing data and scenario simulations. In both cases we could test it against a wide range of existing field data, and we can assume that the new models describe the response to temperature, radiation, CO2-concentration and water uptake and transpiration (finally arriving at better estimates for water use efficiency (WUE). Wheat model Sirius: The recalibration of Sirius2003 left some questions about the phenology and especially the vernalisation parameters for Mercia and Consort. The difficulty with the calibration of vernalisation parameters is that it requires experiments with multiple sowing dates and multiple years. The experimental data used for the project was not suitable for the correct calibration of vernalisation parameters. An overestimated vernalisation requirement may result in an artificially late future anthesis date for different weather conditions. This could be a possible reason for underestimating yields in the baseline scenario. The weighted average yield for winter wheat simulated with the new parameters was 7 t/ha instead of 7.7 t/ha as simulated and validated against regional observations earlier (Richter and Semenov, 2004). In comparison with the earlier simulations the overall yield increase for the 2050s was very similar between the MH-98 and High-02. This is plausible because temperature and CO2 are very similar for these scenarios (Figure 3). Yield increase till the end of the century is more than 2 t/ha. This estimate, however, is ignoring the fact that high maximum temperatures (> 30 oC) will reduce the grain number and thus sink. Hot days are going to increase in the High emission scenario by the 2080s and some years with heat stress related yield reduction may occur. Sugar beet model: The hydrology model was improved, which creates a wider range of yield response due to higher yields. The effect of the new model is shown in Figure 12, which shows a distinct shift toward higher yields in the forecast (MH 2050s) purely due to the change in model. On average, yields change only marginally for the baseline scenario (< 0.1 t/ha) but by more than 1 t/ha in the MH2050s scenario with an increase in variation as well (see Table 7). The new hydrology model causes future yields to be more variable and generally to be higher than with the simple – 1-compartment – soil profile delivering a single average water content to control transpiration. CSG 15 (1/00) 19 Project title Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 Table 7: Statistical parameters for the distributions in Figure 12 East Midlands Old 8.9 1.45 16.3 Mean SD CV Baseline (0) New 9 1.54 17.1 Old (0) 1000 Medium High 2050s Old New 11.1 12.2 1.75 2.24 15.8 18.4 New (0) Old (MH50s) New (MH50s) 900 800 Frequency 700 600 500 400 300 200 100 0 0 2 4 6 8 10 12 14 16 18 20 Sugar yield class (t/ha) Figure 12: Distribution of sugar yield simulated for the East Midlands using the old and new hydrology model for sugar beet, baseline (0) and medium high scenario for the 2050s (MH50s) The parameter for reduced senescence in high fertility (available water, AWC) soils is not yet regarded in this distribution of yields. Canopy senescence still lacks a unified response which is essential for climate change. We did not change the related parameters, which would have been necessary because the deep organic and silty soils represent about 22 % of the total area. The highest sugar yields may therefore be another 2 t/ha higher than predicted now on the basis of a more sophisticated hydrology model. Overall, it is important to realise that there is a complex interaction between water stress and canopy expansion, which needs further evaluation and a more mechanistic approach than proposed here. Validity of the impact assessment It is obvious from the field data that simulations of wheat and sugar beet are in good agreement. Regional comparison needs to allow for loss processes along harvest and delivery. It is also very difficult to assign factory data from sugar beet to certain soil-management in the regions. We can also only compare data for the past, and differences in the model complexity may be more important in the future than in the past (Figure 12). For the past, the shapes of the distribution of sugar yields are very similar to what we have simulated (Figure 13). The average yield over all of England was about 8.1 t/ha (~ 90 % of simulated), and the variation was very similar to the result in the baseline simulation (CV 19 to 21 %), which is larger than simulated using either old or new model (Table 6). Some of the recorded variation is due to variable losses and errors in the delivery/area ratio. CSG 15 (1/00) 20 Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios 9.0 2000 Mean yield (t/ha) 4 1600 5 1400 12 1200 17 1000 18 800 600 22.5 22.0 8.5 21.5 21.0 8.0 20.5 20.0 19.5 7.5 19.0 18.5 400 7.0 200 0 0 2 4 6 8 10 12 14 16 Sugar yield class (t/ha) ls Al CC0368 23.0 1 1800 Frequency DEFRA project code Variation (CV %) Project title 18.0 tt co ) (1 ry Bu ) (4 C y tl e an ) (5 N ew k ar ( ) 12 n to ng si is W ( ) 17 rk Yo 8) (1 Figure 13: Distribution of sugar yield recorded in the factories across England (2000-2003); mean and CV (%) Benefits for the public From this risk assessment the public can be reassured of its food supply. One benefit of this project is that plant breeders should give appropriate priority to drought resistance as a target when breeding for the UK market. This is still true for sugar beet. For winter wheat there seems to be a need to be aware of varieties with a strong vernalisation requirement, and those sensitive to heat stress. Action required by policy makers Sugar beet: In contrast to earlier forecasts (UEA for DEFRA; CC0358) that sugar beet would exceed its lower economic margin in England by the 2080s, we can conclude from the above results that the compensatory effects of rising [CO2] and varietal progress may ensure high yields for sugar beet on some soils. This allows policy makers to consider sugar beet as a crop for biofuels, due to its high yield potential and adaptation to drought, at some sites, even were it to be no longer economic for sugar production. As is currently the case, all shallow and light soils should continue to remain out of sugar beet production, due to the high uncertainty of yield on these soils. Winter wheat: From these results it is hard to see any further problem in wheat production related to drought stress. More work might need to be done on high temperature effects and disease resistance. There may be a necessity to analyse lowland soil water regimes because heavy winter rains may cause flooding and anoxia in wheat. CSG 15 (1/00) 21 Project title 5 Re-assessing drought risks for UK crops using UKCIP02 climate change scenarios DEFRA project code CC0368 References HGCA 1998a Assessments of wheat growth to support its production and improvement. Volume 3 - the dataset. Home Grown Cereals Authority. Project Report No. 151, Vol. 3. HGCA 1998b Home Grown Cereals Authority. Project Report No. 174, Vol. 2. HGCA 2000 Reducing winter wheat production costs through crop intelligence information on variety and sowing date, rotational position and canopy management in relation to drought and disease control. Home Grown Cereals Authority. Project Report No. 235. Jamieson P D, Semenov M A, Brooking I R and Francis G S 1998 Sirius: a mechanistic model of wheat response to environmental variation. European Journal of Agronomy 8, 161-179. Lawless C, Semenov M A and Jamieson P D 2004 A wheat canopy model linking leaf area and phenology. European Journal of Agronomy. (in press). NIAB 1999. 1999 cereals variety handbook. UK Recommended Lists of cereals. National Institute of Agricultural Botany, Cambridge. 144 pp. Porter, J. R. and M. A. Semenov 1999. Climate variability and crop yields in Europe. Nature 400(6746): 724724 Qi A, Kenter C., Hoffmann C., and Jaggard, K. W., 2004. The Broom’s Barn sugar beet growth model and its adaptation to soils with varied available water content. European Journal of Agronomy (accepted) Richter G M, Jaggard K, Mitchell R and Semenov M A 2002 Assessing drought risks for UK crops under climate change. DEFRA Project CC0336, Final Report. 22pp. Richter G M, Semenov M A and Mitchell D 2001 Testing Sirius predictions against wheat data sets in the UK. In Modelling Cropping Systems, European Society of Agronomy 2nd International Symposium, Florence, Italy, 2001. pp 165-166. Richter G M and Semenov M A, 2004. Modelling impact of climate change on wheat yield in England and Wales: assessing drought risks. Agricultural Systems xxx, xxx-xxx. In print. Semenov, M. A. and E. M. Barrow 1997. Use of a stochastic weather generator in the development of climate change scenarios. Climatic Change 35: 397-414. Semenov, M. A., and Brooks, R. J. 1999. Spatial interpolation of the LARS-WG stochastic weather generator in Great Britain. Climate Research, 11(2):137-148. Semenov, M. A. and J. R. Porter 1995. Climatic variability and the modeling of crop yields. Agricultural and Forest Meteorology 73: 265-283. CSG 15 (1/00) 22