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IAQVEC 2016, 9th International Conference on Indoor Air Quality Ventilation & Energy Conservation In Buildings Impact of Climate Change on Annual Cooling and Heating Load in Tokyo Using Prototype of Near-Future Weather Data Yusuke Arima1,*, Ryozo Ooka2 and Hideki Kikumoto2 1 The University of Tokyo, 4-6-1 Komaba, Meguro-ku, Tokyo, Japan Institute of Industrial Science, The University of Tokyo, 4-6-1 Komaba, Meguro-ku, Tokyo, Japan 2 * Corresponding email: [email protected] ABSTRACT During building design processes, energy simulations are often used to calculate building energy consumption and to evaluate the indoor environment. In these simulations, regional weather data, based on current or past weather events, are commonly used. However, most buildings have existed for several decades, during which time climate conditions have gradually changed due to global warming. Therefore, development of future weather data and assessment of the impact on buildings are important for climate change mitigation and adaptation. In this study, we dynamically downscale current (2006–2010) and near future (2031–2035) weather data projected by a global climate model (GCM), MIROC4h, with a regional climate model in order to obtain near- future weather data for building design. Our previous study focused on only summer seasons, whereas in this paper we conduct dynamically downscaling throughout the year. We then conduct building energy simulations using the bias-corrected weather data as prototypes of current and near future weather data. In the simulation, we assessed the impact of climate change on annual cooling and heating loads of a two-story detached house in Tokyo. Five-year-averaged and maximum cooling and heating loads are calculated. According to the analysis, the sensible cooling load increases by 12 % and the sensible heating load decreases by 8%. Consequently, annual sensible cooling and heating load increases by only 1 % from current to future simulations. Latent cooling load increases by 11% and annual sensible and latent heating and cooling load increases by 3 %. The increase in the maximum cooling (1 %) and heating load (-4 %) rate is smaller than that of the averaged seasonal cooling (12 %) and heating load (-8 %). The maximum latent heat load increases by 15 %, and consequently, the maximum sensible and latent cooling and heating load increases by 8%. KEYWORDS Reference weather data, Design weather data, Global climate model, Dynamical downscaling, Building energy simulation INTRODUCTION Climate change phenomena, such as global warming and urban heat island effects, cause serious problems (Intergovernmental Panel on Climate Change, 2013). During architectural design processes, energy simulations are often used to evaluate the indoor thermal environment and energy consumption of buildings. In these simulations, it is common to use regional weather data known as typical weather data, which is typically based on current or past weather events (Cooperman et al. 2010). However, most buildings have existed for several decades, during which time climate conditions have gradually changed. Therefore, development of future weather data and effective assessment of climatic impacts on buildings have become very important issues for both climate change mitigation and adaptation (Robert et al. 2012; Jentsch et al. 2008). In this study, we attempt to construct near-future weather data in order to assist architectural design using numerical meteorological models. Climate data projected by global climate models (GCMs) are available. Although GCMs can predict long-term global warming, they cannot illustrate the details of local phenomena due to their coarse grid resolution (~100 km). Therefore, we input GCM data into a regional climate model (RCM) as initial and boundary conditions and downscale the data physically with the RCM; this process is known as dynamical downscaling (Dickinson et al. 1989; Giorgi et al. 1989). The RCM uses nested regional climate modeling and can analyze local climate with high resolution (~1 km). We employed the Model for Interdisciplinary Research on Climate version 4 (MIROC4h) as the GCM and the Weather Research and Forecasting (WRF) model as the RCM. Similar previous studies have been conducted on future weather data and assessing the effect of climate change on building energy consumption. For example, Belcher and Hacker (2005) developed a method for producing future weather data, known as the morphing method, and Crawley (2008) used the morphing method to derive future weather data from existing typical weather data and calculate the impact of climate change on a small office building. In the morphing method, future weather data is produced by transforming current observation data using the difference between current and future weather conditions. Weather disturbances are important weather data components for building energy simulations, particularly for estimating peak demand. However, daily weather disturbances in future weather data obtained through the morphing method are based on present-day observations. Disturbances observed in weather data would be different in the future yet future weather data obtained through the morphing method does not represent disturbances predicted by the GCM. On the other hand, daily disturbances in future weather data using our dynamical downscaling method are based on future climatic conditions predicted by the GCM. This is one of the advantages of our method over the morphing method. In this study, we first dynamically downscaled current and future climate information projected by MIROC4h for a 5-year period (2006-2010, 2031-2035). However, the output from weather and climate models includes a systematical error, or bias, and the bias becomes problematic when the output is used without any correction. Thus, we corrected for the bias of the weather data. We conducted building energy simulations using these bias corrected weather data to assess the impact of climate change on building energy loads. Our previous study (Arima et al. 2016; Kikumoto et al. 2014) focused only on summer seasons. In this paper, however, we conducted simulations and climate change assessments throughout the years. METHODS In this study, we dynamically downscaled current (2006–2010) and near future (2031–2035) weather data projected by a GCM (MIROC4h) with an RCM (WRF) to produce the weather data for building energy simulations. MIROC4h reproduces global warming at a horizontal scale of approximately 60 km (Nozawa et al. 2007; Sakamoto, 2012). For the current simulations, we used the output of MIROC4h projected from 1981. For the near future simulations, we use the output of MIROC4h projected from 2006. Future climate conditions were projected by the GCM, assuming that concentrations of greenhouse gases such as CO2 will change in the future; these projected conditions are known as scenarios. The scenario adopted by MIROC4h simulations is RCP4.5 (Meinshausen et al. 2012; Richard et al. 2010), defined by the IPCC. There were no significant differences in radiative forcing among the various RCPs (representative concentration pathways) for the near future, which was the focus of this study. We used WRF version 3.4 as the RCM (Skamarock et al. 2008). Figure 1 and Table 1 show the nesting regions of the WRF. The target areas in this study were the Kanto region in Japan and, in particular, Tokyo (in this study, Tokyo refers to Otemachi, which is located in the center of Tokyo) and its surrounding area. We used four levels of nested regional climate modeling, in which the first and fourth levels have horizontal spatial resolutions of 54 km and 2 km, respectively. See Arima et al. (2016) for detailed information on the conditions of dynamical downscaling. Figure 1. Nesting region in the WRF simulation Table 1. Weather component used as initial and boundary conditions in WRF simulation Longitude, Latitude 0.5625º Time 6h Weather elements at 17 layers Temperature, specific humidity, wind velocity, geopotential height Surface Surface temperature, sea surface pressure, sea surface temperature 17 layers (1000, 950, 900, 850, 700, 500, 400, 300, 250, 200, 150, 100, 70, 50, 30, 20, 10 [hPa]) RESULTS Dynamically Downscaling MIROC4h with the WRF First, we compared the statistical value of the downscaled present-day output (2006–2010) of MIROC4h (CURRENT) with that of observations (OBS) to confirm that it can reproduce current climate conditions. Figure 2 shows the monthly average and bias of the 5-year mean of each weather component. The monthly amount of bias is different in each month and a clear annual trend cannot yet be confirmed, however, we confirmed the annual and seasonal average of the bias. The cooling season is from May to October and the heating seasons are from January to April and from November to December. Regarding temperature, the annual average bias is 1.49 ℃, and the values are similar and positive for both cooling and heating seasons (1.46 ℃ and 1.51 ℃). Concerning water vapor pressure, the annual average bias is 0.26 hPa and the seasonal average bias is positive (0.57 hPa) in cooling seasons and slightly negative (-0.05 hPa) in heating seasons. As for solar radiation, the annual average bias of the daily cumulative amount is 3.17MJ/m2, and the seasonal average bias in cooling seasons (4.90 MJ/m2) is larger than in heating seasons (1.44 MJ/m2). OBS (2006‐2010) Bias 2.80 30 2.40 25 2.00 20 1.60 15 1.20 10 0.80 5 0.40 0 0.00 1 2 3 4 5 6 7 8 month 9 10 11 Bias 30 1.40 25 0.70 20 0.00 15 ‐0.70 10 ‐1.40 5 ‐2.10 0 12 ‐2.80 1 2 3 4 5 6 7 8 month 9 10 11 12 b) Water vapor pressure [hPa] a) Temperature [℃] OBS (2006‐2010) CURRENT (2006‐2010) BIAS 25 10 20 8 15 6 10 4 5 2 0 difference [MJ] day cumlative amount of solar radiation [MJ] CURRENT (2006‐2010) difference [hPa] 35 water vapor pressure [hPa] CURRENT (2006‐2010) difference [℃] temperature increase [℃] OBS (2006‐2010) 0 1 2 3 4 5 6 7 8 9 10 11 12 month c) Solar radiation [MJ/m2] Figure 2. Monthly average and the bias of 5-year mean of each weather components Next, we compared the results of current and future weather predictions. Figure 3 shows the monthly average of current and future simulations and the difference in each weather component. The difference between water vapor pressure simulations seems to show an annual trend whereby the increase in cooling seasons is larger than that in heating seasons. However, the difference between temperature and solar radiation simulations does not seem to indicate a clear annual trend. We confirmed the annual and seasonal average of the differences. The annual difference of temperature data is 0.54 ℃, and the difference during cooling seasons (0.62 ℃) is slightly larger than that in heating seasons (0.46 ℃). Water vapor pressure increases by 0.52 hPa throughout the years, and the difference in cooling seasons (0.91 hPa) is larger than that in heating seasons (0.13 hPa). The annual averaged daily cumulative amount of solar radiation increases by 0.05 MJ/m2, and the difference in cooling seasons is negative (-0.27 MJ/m2), whereas in heating seasons it is positive (0.37 MJ/m2). Difference 1.50 30 1.20 25 0.90 20 0.60 15 0.30 10 0.00 5 ‐0.30 0 ‐0.60 1 2 3 4 5 6 7 month 8 9 a) temperature [℃] 10 11 12 FUTURE (2031‐2035) Differece 35 2.50 30 2.00 25 1.50 20 1.00 15 0.50 10 0.00 5 ‐0.50 ‐1.00 0 1 2 3 4 5 6 7 month 8 9 10 11 b) water vapor pressure [hPa] 12 difference [hPa] 35 CURRENT (2006‐2010) water vapor pressure [hPa] FUTURE (2031‐2035) difference [℃] temperature increase [℃] CURRENT (2006‐2010) FUTURE (2031‐2035) Differece 30 1.50 25 1.00 20 0.50 15 0.00 10 ‐0.50 5 ‐1.00 difference [MJ/m2] day cumlative solar radiation [MJ/m2] CURRENT (2006‐2010) ‐1.50 0 1 2 3 4 5 6 7 8 9 10 11 12 month c) solar radiation [MJ/m2] Figure 3. Monthly averages of current and future 5-year mean values for each weather components and the difference between them Maximum and minimum values are also important for designing weather data to estimate the maximum cooling and heating load. Table 2 shows the maximum and minimum values of each weather component for both current and future weather simulations. The maximum and minimum values are defined as the highest above 1 % and the lowest below 1 %, respectively, over 5 years. Regarding temperature, the maximum value increases by up to 0.93 ℃ and the minimum value increases by between 0.42 ℃ and 0.83 ℃. With regards to water vapor pressure, the maximum value increases by between 1.56 hPa and 2.05 hPa and the minimum value increases by 0.11 hPa to 0.37 hPa, which is lower than the increase of the maximum value. Regarding solar radiation, the maximum day cumulative amount does not show a significant change. Table 2. Maximum and minimum values of each weather component for current and future simulations a) Maximum 0.5% 34.42 34.81 34.42 35.28 0.00 0.47 29.25 29.73 30.81 31.60 1.56 1.87 3.48 3.57 3.48 3.56 0.00 -0.01 b) Minimum 1% 0.5% 3.99 3.30 4.58 3.91 0.60 0.61 2.59 2.34 2.71 2.47 0.11 0.13 1% CURRENT (TEMP) [℃] FUTURE (TEMP) [℃] DIFFERENCE (TEMP) [℃] CURRENT (WATER) [hPa] FUTURE (WATER) [hPa] DIFFERENCE (WATER) [hPa] CURRENT (SOLAR) [MJ] FUTURE (SOLAR) [MJ] DIFFERENCE (SOLAR) [MJ] CURRENT (TEMP) [℃] FUTURE (TEMP) [℃] DIFFENRECE (TEMP) [℃] CURRENT (WATER) [hPa] FUTURE (WATER) [hPa] DIFFRENCE (WATER) [hPa] 0.2% 0.1% 35.56 36.49 0.93 30.24 32.28 2.05 3.65 3.64 -0.01 0.2% 36.27 37.07 0.80 30.73 32.63 1.90 3.68 3.68 0.00 0.1% 2.55 3.31 0.77 1.99 2.25 0.26 2.05 2.89 0.83 1.79 2.16 0.37 Conditions of Building Energy Simulation We conducted annual building energy simulations for the current period (2006-2010) and nearfuture period (2031-2035) in order to estimate the impact of climate change on building cooling and heating load. We used the TRaNsient SYstem Simulation Tool (TRNSYS) to estimate the building energy load (The University of Wisconsin). The target was a two-story detached house model IBEC defined as a standard Japanese house for building energy simulations, with a total floor space of 120 m2. The location was assumed as Tokyo. Input data were current and future bias-corrected weather data obtained from dynamical downscaling (Arima et al. 2016), referred to as CURRENT and FUTURE respectively. The rooms for air conditioning were the living room and dining kitchen (LDK), bedroom, and two children’s rooms, and the schedule of air conditioning is shown in Table 3. See Arima et al. (2016) for more detailed information on building energy simulation conditions and the bias correction method used in this study. Table 3. Air conditioning setting a) Cooling (5–10) ROOM Setting temperature [℃]/ Schedule (5–10) relative humidity [%] LDK 27 /60 6:00–10:00, 12:00– 14:00, 16:00–24:00 BEDROOM 28 /60 21:00–23:00 (sleeping) CHILD ROOM 1 27 /60 20:00–21:00, 22:00– 24:00 CHILD ROOM 2 27 /60 18:00–19:00, 21:00– 24:00 b) Heating (1–4, 11–12) Setting Schedule (1–4, 11–12) temperature [℃] 22 6:00–10:00, 12:00– 14:00, 16:00–24:00 22 22 20:00–21:00, 22:00– 24:00 18:00–19:00, 21:00– 23:00 Building Energy Simulation Results Table 4 shows the 5-year averaged annual cooling and heating load of current (CURRENT) and future (FUTURE) simulations, and any increase or decrease between the two (DIF). It is clear that global warming has increased the energy demand in cooling seasons and decreased it in heating seasons. In cooling seasons, the sensible cooling load increases by 12 % and the sensible heat load decreases by 8 %. Consequently, the annual sensible cooling and heating load increases by only 1 % from current to future simulations. The latent cooling load increases by 11% and the total annual sensible and latent heating and cooling load increases by 3%. Table 4. 5–year averaged annual cooling and heating load [MJ] Case CURRENT FUTURE DIF Cooling (sensible) 5.61ൈ103 6.26ൈ103 6.58ൈ102 (12 %) Case CURRENT FUTURE DIF Cooling (latent) 2.73ൈ103 3.03ൈ103 2.96ൈ102 (11 %) a) Sensible heat load Heating Annual heating and cooling 7.34ൈ103 1.31ൈ104 6.84ൈ103 1.31ൈ104 2 -5.55ൈ10 (-8 %) 1.03ൈ102 (1 %) b) Sensible and latent heat load Annual heating and cooling (sensible and latent) 1.57ൈ104 1.61ൈ104 4.00ൈ102 (3 %) Next, we assessed the impact of climate change on the maximum cooling and heating load. Maximum heat load is defined as the topmost 0.5 % among the annual heat loads for a period of 5 years (43805 hours), shown in Table 5. Regarding sensible heat load, the maximum sensible cooling load increases by only 1 %, and maximum heating load decreases by 4 %. Maximum latent cooling load increase by 15 % and sensible and latent cooling load increase by 8 %. Table 5. Maximum cooling and heating load [kW] over a 5 year period Case MAX_CURRENT MAX_FUTURE MAX_DIF Case MAX_CURRENT a) Sensible heat load Sensible cooling load Heating load 2.33 2.65 2.37 2.53 0.03 (1 %) 0.12 (-4 %) b) Sensible and latent heat load Latent cooling load Sensible and latent cooling load 0.97 2.68 MAX_FUTURE MAX_DIF 1.11 0.15 (15 %) 2.88 0.21 (8 %) CONCLUSIONS In this study, we dynamically downscaled the GCM (MIROC4h) and assessed the bias and climate change information in the downscaled weather data. In current simulations, we confirm the bias on the weather data. The temperature bias in cooling seasons (1.46 ℃) is close to that in heating seasons (1.51 ℃). Regarding water vapor pressure, the seasonal average bias is positive (0.57 hPa) in cooling seasons and slightly negative (-0.05 hPa) in heating seasons. As for solar radiation, the bias in cooling seasons (4.90 MJ) is larger than that in heating seasons (1.44 MJ). In future simulations, we confirm the climate change information for each weather components. The temperature increase in cooling seasons (0.62℃) is slightly larger than that in heating seasons (0.46 ℃), and the increase of water vapor pressure in cooling seasons (0.91 hPa) is much larger than that in heating seasons (0.13 hPa). Solar radiation slightly increases in heating seasons (0.37 MJ) and decreases in cooling seasons (-0.27 MJ). We also confirmed the increase in the maximum value of each weather component. Results showing that the increase of maximum water vapor pressure (1.56 to 2.63 hPa) is larger than the increase of minimum water vapor pressure (0.11 to 0.74 hPa) are noteworthy. We also assessed the impact of climate change on the annual building energy demand of a twostory detached house in Tokyo using near future weather data dynamically downscaled from MIROC4h. Regarding the sensible cooling load, the sum of the annual cooling and heating load increases by only 1 % from current to future simulations. The annual latent cooling load increases by 11 % and the total cooling and heating load increases by 3 %. In addition, we assessed the impact of climate change on the maximum cooling and heating load. Regarding the sensible cooling load, the maximum cooling load increases by only 1 % and the heating load decreases by 4 %. The increase in the rate of maximum cooling (1 %) and heating load (-4 %) is smaller than that of the averaged seasonal cooling (12 %) and heating load (-8 %). The maximum latent cooling load increases by 15 % and the total cooling and heating load increases by 8 %. The impact of climate change on sensible cooling and heating therefore cancel each other out. However, the increase in the annual and maximum values of water vapor pressure is large in cooling seasons. Consequently, the future increase in the latent cooling load is not negligible. ACKNOWLEDGEMENTS This study represents part of the research conducted by the working group on the near-future standard weather data using global climate modeling (project general manager Ryozo Ooka) (Working Group for Future Standard Weather Data using GCM results,AIJ, 2014). The authors are deeply grateful to WG members and express their gratitude to staff at Kimoto laboratory in the Atmosphere and Ocean Research Institute, University of Tokyo, who provided the MIROC4h data for this study. Part of this work was supported by JSPS KAKENHI Grant Number 24226013 “Development of a meteorological information platform with high spatial resolution for the urban environment and disaster reduction” (Project general manager: Ryozo Ooka). REFERENCES Arima, Y. et al. 2016: Effect of Climate Change on Building Cooling Loads in Tokyo in the Summers of the 2030s Using Dynamically Downscaled GCM Data., Energy and Buildings, Vol.114, pp.123-129. Belcher, S.E., Hacker, J.N., 2005: Constructing Design Weather Data for Future Climates, Building Services Engineering Research & Technology, 26(1), pp.49-61. Chen, F., Dudhia J., 2001: Coupling an Advanced Land-surface/ Hydrology Model with the Penn State/ NCAR MM5 Modeling System. Part I: Model Description and Implementation, Monthly Weather Review, 129, pp.569–585. Cooperman A., et al, 2010: Using Weather Data for Predictive Control, ASHRAE Journal, pp.130-132. 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Skamarock, W.C. et al. 2008: A Description of the Advanced Research WRF Version 3, NCAR Technical Note, NCAR/TN-475+STR The University of Wisconsin: The Official TRNSYS Website, http://sel.me.wisc.edu/trnsys/index.html Working Group for Future Standard Weather Data using GCM results, Sub-committee on Urban and Climate Adaptation, Research Committee on Global Environment, 2014: The Near Future Weather Data for Building Energy Simulation Using Dynamical Downscaling of Results from Global Climate Model, AIJ Journal of Technology and Design, 20(4), pp.1041-1046.