Abstract
Urban heat island intensity (UHII) in Kolkata has been assessed using simplified numerical model for vertical temperature measurement in tropical monsoon summer month (June, 2015) during pre-onset of monsoon season. The data of 25 field observation sites show that the surface temperature curves are likely to mathematical trapeziums, and surface temperatures are related to vertical air temperatures. Therefore, approximated temperature trapeziums that are determined by high and lower air temperatures can be used to numerical simulation the vertical surface temperature fluctuation or variation. Two different field observation sites respectively in the urban and suburban areas were taken as model purpose. Distinct and good agreement was obtained between numerical simulation and observed temperature. Observed temperatures indicate the mean temperature under urban concrete surface environment is about 3.54 °C greater than that of adjacent suburban open surface. The deviation from normal is due to the heat wave environmental effect and different surface thermal effect, which are about 2.08 °C and 2.92 °C, respectively. Combined with air relative humidity (RH), ‘Heat’ islands associated with ‘Dry’ island, which means urban air relative humidity is lower than suburban air relative humidity (79.52 %,). According to the variation of RH and temperature deviation graphs, urban heat island, vertical surface types and rainfall are important factors that influence the air humidity and temperature.
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Introduction
Researchers are being carried out world-wide to understand the nature of temperature change during recent past at different geographical scales so that comprehensive inferences can be drawn about recent temperature trend and future urban climate (Chatterjee et al. 2013; Khan et al. 2014; Bisai et al. 2014a). The urban heat island (UHI) effect is the phenomenon that a metropolis is usually significantly warmer than its rural surroundings. It occurs because city centre buildings and street surface materials, which have high heat capacities, store heat during the day, and release heat slowly at night. The adverse energy and environmental effects of UHIs, and methods to alleviate them, has become a major research topic in sustainability programs. Decreasing the energy consumption of buildings is an important topic in environmental engineering (Wang and Akbari 2014). An urban area with lower albedo absorbs more than 80 % of the solar energy that increases their air temperature compared to rural areas (Touchaei and Wang 2015). In the community scale UHI is close to the urban surface, surface temperatures have an indirect, but significant influence on air temperatures and urban thermal comfort. Daytime solar energy absorption is the primary cause of the urban heat island effect in summer. Pavements and roofs comprise over 60 % of urban surfaces. Dark materials, dark pavements and roofs, absorb 80–90 % of sunlight. Lighter materials, white roofs and lighter colored pavements, absorb only 30–65 % of sunlight. There is an interaction of thermal radiation between roof, wall and ground surfaces. The use of reflective building surface materials is a critical solution for UHI mitigation (Akbari et al. 1997; Berdahl and Bretz 1994; Bretz and Akbari 1997; Bretz et al. 1998; Konopacki and Akbari 2001; Synnefa et al. 2006, 2007; Taha et al. 1988). Along with urban centres of developed nations, the phenomenon is now prevalent in many Asian cities as well (Santamouris 2015).Temperature variation impacts on the engineering properties of urban surface, and consequently changes the strength and stability of various engineered structures. Many previous studies show that the increase of shallow soil temperature influences soil permeability, suction of unsaturated soils, and soils shear strength etc. (Jacinto et al. 2009; Tang and Cui 2005). Vertical air temperature prediction therefore plays an important role in the research of issues related to environment, energy sources and engineering (Florides and Kalogirou 2007; Pouloupatis et al. 2011; Shi et al. 2008). The causes of UHI are not the same in different climates or city features. Therefore, many models and approaches, including observation and simulation techniques, have been proposed to understand the causes of UHI formation and to mitigate the corresponding effects (Huang et al. 2008a, b; Mirzaei and Haghighat 2010; Yao et al. 2011). Urban heat islands are studied through in situ experiments (Mohan et al. 2012, 2013; Ren et al. 2007; Kolokotroni et al. 2006; Stewart 2011), remote observations (Weng 2009, Yuan and Bauer 2007; Jin 2012), and numerical models. Numerical simulation of the urban heat island effect helps in increasing understanding of the phenomenon at region of interest, assessing major causative factors, and designing mitigation strategies. Over the years, numerical methods have evolved from simple energy budget model (Myrup 1969) to single and multi-layer urban canopy models (Kusaka and Kimura 2004; Kondo et al. 2005). Huang et al. (2008a, b) investigated the diurnal changes of urban and rural air temperatures in four types of ground cover and urban heat island intensity. Their study indicates that the urban heat island intensity varies in time and on different surface types. However, surface temperatures, vertical air temperatures, and corresponding UHI effect are not involved. Continuous monitoring of vertical air temperature is expensive. Analytical methods and computer technologies can provide cheaper, alternative ways to predict the vertical air temperature. However, the vertical air temperature field is influenced by many factors, including solar radiation, air temperature, wind speed, rainfall, shelter, and air properties (Mihalakakou 2002). Most of these factors change irregularly and as a result, the prediction and estimation of vertical air temperature is multifaceted. In previous studies, many analytical models (Smerdon et al. 2006), semi-analytical models (Droulia et al. 2009; Yuan et al. 2008), empirical models (Al-Ajmi et al. 2006), numerical methods (Janssen et al. 2004; Rees et al. 2000), Fourier models (Graham et al. 2010) and neural network methods (dos Santos Coelho et al. 2009) have been used to solve various heat transfer problems (Rees et al. 2000). Most of these methods require many measured parameters, some of which are hard to obtain under real field conditions. On the basis of the relationship between air temperatures and surface temperatures, a simplified model is introduced to simulate the variation of vertical air soil temperatures during summer hot weather (Liu et al. 2011). The method has been used to estimate the vertical air temperature of urban concrete surface and sub urban open surfaces in two sites of Kolkata city. The simulated temperatures are compared with the observed data to investigate the influence factors of the urban heat island. Combined with the air humidity, the influences of UHI, surface types and precipiation-evapotransporation on the vertical air temperature and air humidity are analyzed. Further study attempts to explore the selection of reference site for determining urban heat island intensity and applicability for in situ and numerical-simulated data.
In-situ characteristics of observation
Kolkata (22°57´N, 88°37´E) is the capital city of the state of West Bengal and situated in one of the largest economics hub of the eastern India. The city’s total geographical area is 185 km2 and urban population is over 14.1 million (Registrar General 2011). Seasons are distinct in city, with usually tropical savannah climate and tremendous temperature and rainfall during monsoon throughout year. The main purpose of the in situ temperature as well as humidity observation is to detect the diurnal variation of vertical air temperature and surface temperature with urban concrete surface and suburban open surface, so as to get the relationship between them. On the basis of relationship, the daily surface temperatures can be approximated by air temperature at peak 14:00 h and daily lowest temperatures. These data and the relationship are used to determine the top boundary temperatures in numerical simulation. Meanwhile, the air temperature, surface temperature, vertical temperatures and air moisture of two sites were recorded everyday during the study period in order to compare with simulation results.
Temperature
The month of June is characterized by falling daily high temperatures, with daily highs ranging from 36 to 33 °C over the course of the month, exceeding 38 °C or dropping below 30 °C only one day in ten. Daily low temperatures are around 27 °C, falling below 24 °C or exceeding 29 °C only one day in ten in Fig. 1.
Humidity
The relative humidity typically ranges from 58 % (mildly humid) to 96 % (very humid) over the course of a typical June, rarely dropping below 48 % (comfortable) and reaching as high as 100 % (very humid). The air is driest around June 1, at which time the relative humidity drops below 62 % (mildly humid) three days out of four; it is most humid around June 27, rising above 94 % (very humid) 3 days out of four in Fig. 2.
Precipitation
The probability that precipitation observed at this location varies throughout the month. Precipitation is most likely around June 30, occurring in 74 % of days. Precipitation is least likely around June 1, occurring in 56 % of days. Throughout June, the most common forms of precipitation are thunderstorms, light rain, and moderate rain. Thunderstorms are the most severe precipitation observed during 58 % of those days with precipitation. They are most likely around June 1, when it is observed during 39 % of all days. Light rain is the most severe precipitation observed during 24 % of those days with precipitation. It is most likely around June 30, when it is observed during 20 % of all days. Moderate rain is the most severe precipitation observed during 17 % of those days with precipitation. It is most likely around June 30, when it is observed during 16 % of all days in Fig. 3.
Hourly surface temperature observation
In this study 25 observation sites were randomly set-up in the urban area, suburbs and other sites of Kolkata city (Table 1). The sites are located on open space without any shelter of physical environment, such as bare land. The temperature sensor was set-up on a pole at base above the reference ground surface. During recording time of temperature and humidity, wind speed less than 5 m/s and wind direction was variable in direction. Then, temperature and humidity of urban concrete surface and suburban open surface were recorded simultaneously at the 25 observation sites.
The selected urban concrete surface temperature, urban open space temperature and vertical air temperature of a suburban site are plotted in Fig. 4. As shown in the Fig. 4, temperature begins to increase at 4:00 h; rise rapidly in the following 6:00 h and peak between 12:00 and 16:00 h, which is called the period of ‘high temperature’. Afterward, temperature steadily turns down, lowering at the period of ‘low temperature’ ranging from 3:00 to 4:00 h of the next calendar day. Therefore, the diurnal surface temperature curves can be approximated by ‘temperature trapeziums’ (Fig. 5), which are defined by temperature gradient (Tmax and Tmin). Surface temperature can easily be calculated by vertical air temperature on the basis of the relationship between them (Mihalakakou 2002). According to hourly temperature data of 25 field observation sites, surface temperature and vertical air temperatures are correlated significantly at night time in Fig. 4.
Generally, urban open surface temperatures are average 1.5–3.4 °C greater than the vertical air temperatures during low temperature period. However, the surface temperature fluctuates considerably at noon time, in particular between 12:00 and 14:00 h. As shown in Table 2, average difference between vertical air temperature and surface temperate is greater on dry days (up to 4.5 °C for urban concrete surface) and lower on rainy days (up to 3.2 °C). Therefore, average temperature should be used to establish the relationship between vertical air temperatures and surface temperatures.
As shown in Fig. 4, the temperature trapeziums can be defined by Tmax and Tmin surface temperatures, which are determined by vertical air temperatures. And the relationship is expressed as follows:
where AT max is the high air temperature at 14:00 h, AT min is the daily lowest air temperature; dT max and dT min are the corresponding average differences between surface temperatures and air temperatures; the function F creates a temperature trapezium according to the maximum- and minimum surface temperatures, then returns the temperature at the time t. The high air temperatures for soil surface and concrete surface were measured everyday at 14:00 h in the observation sites. And daily lowest air temperatures can be obtained from the India Meteorology Department (IMD), Kolkata. The diurnal temperature observation shows that dT max3.0 °C and dT min4.2 °C for the urban concrete surface, and 4.2 °C and dT min4.2 °C for the suburban open surface.
Profile of vertical air temperature
A field campaign was conducted over the city region of Kolkata to quantify and analyze the urban heat island effect in Kolkata. Micrometeorological stations were set up at various sites throughout the Kolkata region for continuous measurement of air temperature and relative humidity. There were 25 locations in the field campaign numbered from 1 to 25 where instruments were installed. Out of these 25 sites, 16 are with urban characteristics while 9 are suburban (Table 1, Fig. 6). The urban observation station is located in an open place near Behala (22°51′N, 88°0.31′E), where the UHI intensity is known to be relatively high. In addition, a rural observation site (Amta, 22°34′N, 88°00′E) located about 43 km from periphery of Kolkata city was chosen as reference site for computing urban heat island intensity. The rural site was a farmland free from any urban influence. Hereafter in the text, station names will be followed by their number in brackets. Measurements in this field campaign have been utilized as temperature in summer hot weather. Three sites out of these installed at height of 10–15 m for measuring other numerical model evaluation for the urban heat island assessment meteorological parameters for rainfall. Temperature sensors and air moisture sensors were installed at specific height in the reference point (Fig. 6). The temperature sensors are Pt100, with a precision of ±0.1 °C. They were set up in reference at height of 0.1, 0.2, 0.3, 0.4, 0.6,1, 2, 3, 4 and 5 m, respectively. The humidity probe was used to measure the relative humidity at 9 different heights (0.1, 0.2, 0.3, 0.4, 0.6,1, 2, 3, 4 and 5 m). Its range is between 0 and 100 (%), with a precision of ±0.01 (%). In order to record near-surface air temperatures and humidity, a temperature-humidity sensor was fixed at the ground surface. Urban ground is generally covered with concrete and asphalt pavements, while suburban ground is mainly covered with bare land and grasses. Therefore, the changes of vertical air temperatures under an urban concrete surface and a suburban open soil surface act as representatives and are investigated. Figure 3a and b show the temperature data of the urban concrete- and suburban bare soil surfaces, respectively, for a period of 30 days beginning June 1, 2015 and ending June 30, 2015. According to historic daily temperature records, this period has the hottest days in Indian summer monsoon season as well as study area (IMD 2006 & 2007). As shown in the figures, the temperatures fluctuate dramatically during the June month (onset of monsoon). Air and shallow vertical air temperatures were high in mid June, while lowering late June (on advent of rainy days). The temperature fluctuations reveal that the vertical air temperatures depend on urban surface environments and lower atmospheric compositions (Bisai et al. 2014b).
Numerical simulation of observed temperature
Vertical air temperatures are influenced by solar radiation, air moisture, wind speed, and environmental shelter, etc. Essentially, these factors act on the ground surface and then affect the vertical temperature field. In order to simulate the vertical temperature variations, we will make three assumptions (Liu et al. 2011): (1) the air is homogeneous, and as a result, heat only flows in vertical direction; (2) no surface heat source; (3) air moisture is not considered. Therefore, the corresponding heat conduction equation is one-dimensional. In the Cartesian coordinates, the one-dimensional transient heat conduction differential equation is as follows (positive direction is downward):
where T is temperature (°C), t is time (s), z is height (m), α is thermal diffusivity (ms−2), k is thermal conductivity (w/mK), r is density (g/cm3), c is heat capacity (J/kg K), and L is the height of bottom boundary (8 m). The origin of the coordinates is attached to the ground surface. The related physical properties of urban open surface sand mixed soil and urban concrete surface are shown in Table 3.
Therefore, the differential equation can be solved when the top boundary temperature μ 1(t) and bottom boundary temperature μ 2(t) are given. Since surface temperature is influenced by many factors, it changes between different measured points on the same ground surface. The difference may be significant, especially on concrete surfaces. Although the problem is assumed to be one-dimensional, the Vertical temperatures are actually influenced by the whole ground surface. The error of the result may even larger if the temperatures of an arbitrary surface point are used in the simulation. However, near-surface air temperature indicates the surface temperature of the whole surface region. Therefore, the top boundary temperatures are calculated from air temperatures according to Eq. (1). The bottom boundary is the top of the constant temperature level, which is about 8 m in the Kolkata city area. The temperature of this level is generally equal to the historical average annual temperature. The value is about 30.3 °C in this area, and therefore the bottom boundary temperature μ 2(t) ≡ 30.3 °C. The vertical temperatures of the first day (i.e., on June 1) were employed as the initial temperatures in the numerical simulation. According to Eqs. 1, 2, 3 and the measured data, vertical temperature variations can be simulated in the computer. The simulated temperatures of urban site and suburban site are illustrated with corresponding measured data (points) in Figs. 7 and 8, respectively.
Results and discussion
Simulation of observed temperature and resultant simulated temperatures
As shown in Fig. 3a and b, both the observed and simulated temperature indicates a high correlation between vertical air temperatures and surface temperatures. The shallow vertical temperatures fluctuate with the surface temperature, and the amplitude decreases with increasing height. The temperature amplitude is greater for the urban concrete surface in comparison with that of the urban open surface, since both the air temperature amplitude and thermal diffusivity are much greater for urban concrete surfaces. Specifically, the temperature of 0.4 m fluctuates dramatically in diurnal scale. At the height of 1 m, diurnal temperature change is slight for the urban concrete surface (Fig. 7), and the diurnal temperature influence can be ignored in the case of suburban open surface (Fig. 8). Therefore, the influence of diurnal temperature variation is between 0 and 1 m. At the height of 2 m, diurnal temperature fluctuation has completely disappeared, whereas it is influenced by continuous hot or cool weather, such as a week of hot days in early June. The simulated temperature curves are consistent with the measured temperature points. This is especially true in the suburban open site, where the simulated- and measured temperatures share a common trend. Since the air temperatures within 1 m are influenced by diurnal temperature fluctuation, air temperature deviations between measured data and simulation results are greater in comparison with that of maximum height. In the urban site particularly, influenced by a complex and changing ground environment, the temperature of 0.6 m level fluctuates dramatically, which may account for the difference from the simulated temperature. However, corresponding temperature also shows similar trend. The simulated temperatures and measured data maintain a high consistency below the height of 1 m in both the urban and suburban sites. The results show that the method based on high- and lowest air temperatures is practicable.
Surface urban heat island intensity and relative humidity
The most important phenomenon of urban heat island is that urban air temperature is higher than suburban air temperature.UHI has a major influence on the atmospheric condition, as well as the urban surface environment. The average vertical temperatures of urban concrete surface (T ucs), urban open surface (T ous) and suburban open surface (T sos) are shown in Fig. 9. Here, Urban heat island intensity (UHII) is defined as the vertical air temperature difference between urban concrete surface and suburban open surface. As shown in Fig. 9, the total UHII includes environmental UHII ((T uos − T sos) and surface UHII (T ucs − T uos) that arise from heat environment and different surface, respectively. In this study, the environmental UHII and the surface UHII are about 2.08 °C and 2.92 °C (4–5 m height), respectively. Note that the environmental UHII is approximated to the corresponding air UHII Fig. 9.
Owing to long-term continuous heat island effect, the urban surface temperature field increases and air moisture reduces. ‘Heat’ Islands generally associates with ‘Dry’ Islands, which means urban air moisture is lower than suburban soil moisture (Shi et al. 2008). As shown in Fig. 9, the urban vertical air temperatures (concrete surface) are greater than the suburban vertical air temperatures, and the average difference is around 2–4 °C. Furthermore, the relative humidity content (RH) under the urban concrete surface and suburban open surface are plotted in Fig. 10a and b, respectively. And the average RHof the urban site is about 85.9 % lower than that of the suburban site. In conclusion, the Urban heat island intensity (UHII) and the urban dry island intensity are about 3.54 °C and 79.52 %, respectively.
Deviation between observed and simulated temperature
Observed, simulated temperatures are the temperatures under the ideal environment that defined by the model assumptions. However, real vertical air temperatures are influenced by different air moisture, precipitation, sun shine etc., and consequently different from the simulated temperatures. Therefore, the deviation between the Observed temperatures and the simulated temperatures may make available clues for analyzing these influence factors. Figure 11a and b show the deviations between simulated and observed temperatures under urban concrete surface and suburban open surface, respectively.
And the corresponding average errors are listed in Table 4, where the average temperature deviations generally decrease with increasing height. The deviation at 0.1 m is large (2.90 °C) under urban concrete, since it is at the interface between concrete layer and vertical surface. At the heights of 1, 2, 3, 4, and 5 m, the values are around 0.72 °C, i.e., about 3.22 %. These errors are mainly derived from precipitation and humidity variation. Obviously, the variation of relative humidity and urban open surface temperatures leads to changes in air thermal properties. According to Eq. (2), when top and bottom boundary temperatures are given, the vertical air temperatures are essentially determined by air thermal diffusivity (α), which is defined by thermal conductivity (k), air density (r) and specific heat (c) (Eq. 3). These properties are practically unchanged in the specific temperature range of this analysis. However, many previous studies show that thermal conductivity increases with increasing air humidity content. Therefore, the variation of the air moisture and the air thermal diffusivity should be taken into consideration. The average air thermal conductivity is used in this study to simulate the variation of vertical air temperature. Air thermal conductivity, however, varies with air relative humidity (RH) in the vertical direction. Shallow layers are generally drier than high layers (Fig. 4a, b), and the thermal diffusivities of shallow layers are therefore lower in comparison with deeper layers. It seems that measured temperatures should be lower than simulated temperatures in the shallow layers (0.2–0.4 m). However, rainfall and water infiltration reverse this law. Ground surface and the 0–0.4 m layers are cooled due to rainfall (Fig. 11a, b), and at the same time, the surface water is heated by the ground surface. In the case of urban concrete surfaces, most water is dispersed and only a small amount may evaporate into the upper air layer through air ventilation in the concrete. As shown in the relative humidity graph of the urban site (Fig. 11a), there is no obvious relationship between rainfall and relative humidity. However, in the case of the suburban open surface, relative humidity between 1 m and 4 m height rises dramatically on rainy days (Fig. 11b), which indicates water evaporate. On the one hand, air moisture increases rapidly and thus air thermal diffusivity rises during the process, i.e. the rate of heat conduction increases. On the other hand, the vertical air is also heated by the sunlight. Therefore, as shown in Fig. 5b, the absolute value of deviation is greater on rainy days (early June and middle June), while the value decreases on dry days (late-June). The phenomenon is more significant at the height of 0.3 m, which is not influenced by diurnal temperature fluctuation.
Conclusions
According to the analysis presented above it has been demonstrated that a simplified method is adopted to simulate the variation of vertical air temperatures. By transient heat conduction differential equation and the relationship between air and surface temperatures, only air temperatures at 14:00 h and diurnal lowest air temperatures are required in this model perform. This method was used in the numerical simulation of surface temperatures under urban concrete and suburban open surfaces. The results show that there is good agreement between simulated temperatures and the field observed temperature. The method adopted can be readily applied to estimate vertical air temperatures. Based on the simulation the following conclusions can be drawn:
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According to the measured temperatures, the average temperature under urban concrete surface is 3.54 °C greater than that of suburban open surface. It is due to the effects of the heat urban environment and different surfaces, which are about 2.08 °C and 2.92 °C, respectively. Furthermore, the average relative humidity of the urban site is about 79.52 % lower than suburban open surface.
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Relative humidity content also varies in vertical direction, which influences the thermal diffusivity of the surface and the vertical air temperatures. The simulation results indicate that the soil temperature within 0.6 m is influenced by diurnal temperature fluctuation.
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The average deviation between simulated temperatures and measured temperatures generally decreases with increasing depth. At the heights of 1, 2, 3, 4, and 5 m, the the average deviations are around 0.72 °C, i.e., about 3.22 %. Rainfall and humidity changes are important factors that result in the deviations.
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Surface types influence on air moisture, which is more significant for the open surface, and therefore, the observed temperatures are greater than simulated temperatures on rainy days.
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The data and the corresponding deviation analysis show that urban heat island, surface types and evaporation have major impacts on vertical air temperatures and air moisture condition. Urban heat island influences both the vertical air temperature field and humidity field, and therefore, changes the engineering properties of urban surface.
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Acknowledgments
The authors would like to give special thanks for IMD and weatherspark to provide supported micro-meteorological in situ information. Thanks to the anonymous reviewers for their careful review and insightful suggestions which led to a substantial improvement of the original paper.
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Khan, A., Chatterjee, S. Numerical simulation of urban heat island intensity under urban–suburban surface and reference site in Kolkata, India. Model. Earth Syst. Environ. 2, 71 (2016). https://doi.org/10.1007/s40808-016-0119-5
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DOI: https://doi.org/10.1007/s40808-016-0119-5