Increasing Green Infrastructure in Cities: Impact on Ambient Temperature, Air Quality and Heat-Related Mortality and Morbidity
Abstract
:1. Introduction
2. The Nature of the Study
3. The Impact of Increased Green Infrastructure on Ambient Temperature-Mitigation Potential
3.1. Identity of the Existing Studies
3.2. Association of the Temperature Drop and GI
3.3. Discussion and Conclusions on the Mitigation Potential of GI
- (a)
- The maximum potential drop of the average daily peak temperature caused by the increased tree cover in cities may not exceed 1.8 °C even if the green infrastructure increases up to 100%. For a reasonable increase of the GI by 20%, the average expected peak temperature drop is close to 0.3 °C.
- (b)
- During the night, the maximum ambient temperature decrease corresponding to a GI rise of 80% may not exceed 2.3 °C, while the temperature drop for a GI increase by 20% is close to 0.5 °C.
- (c)
- Of the 22 studies reporting both the daytime and night-time temperature drop, 19 studies reported a higher temperature drop during the night than the day. This is due to two main reasons: (a) increased tree cover considerably reduces the daytime stored heat in the ground and the corresponding release of heat by the ground during the night, and (b) the released sensible heat by the trees during the night is considerably lower than the corresponding heat released by impervious urban surfaces [59,61]. During the daytime, evapotranspiration is the main cooling mechanism, however its impact on the surface energy budget may not be enough to compensate and counterbalance heat fluxes due to advection and sensible heat released by the impervious surfaces. The calculated magnitude of evaporation losses depends highly on the humidity of the ground assigned by the models and the humidity content of the atmosphere [73,74].
- (d)
- Several articles report warming effects during the night because of the increased tree cover [60,70]. Increase of the night-time temperature may be as high as 2 °C and is explained by the decreased sky view factor in the urban canyons where trees are located, reducing the escape of long-wave radiation [75].
- (e)
- The calculated magnitude of the temperature drop highly depends on the considered urban landscape assumptions about the location and the sizing of the additional tree cover. Simulations considering patches of urban greenery fully covering several grid cells, when compared to simulations considering a mixture of impervious and green surfaces in the grid cells, present higher evapotranspiration and less heat storage during the day, and thus a considerably lower night-time temperature. In parallel, when urban trees are surrounded by other quite warm urban impervious surfaces and/or zones of high anthropogenic heat release, they present a considerably lower cooling potential [76]. However, it has to be recognised that it is difficult to evaluate sources of uncertainty regarding the simulation assumptions and accuracy around the coupling and evaluation of the specific land conditions in cities.
- (f)
- Simulations carried out with the WRF mesoscale model are highly influenced by the considered parameterisation scheme. The tool offers four parameterisation schemes presenting different ways to characterise the interaction between the land surfaces and the lower atmosphere: The bulk urban parameterisation, the single layer and the multi-layer parameterisation schemes [77,78,79], and another multilayer scheme considering outdoor–indoor interactions [80]. Simulations carried out for the city of Stuttgart using different parameterisation schemes revealed important differences in the obtained results [67].
- (g)
- Deployment of additional trees in cities may raise the levels of ambient relative humidity and deteriorate the levels of thermal comfort. Especially in tropical cities where relative humidity is considerably high, a further rise of the ambient humidity levels may be a serious problem. Simulations for Singapore have shown that deployment of additional greenery may increase the levels of relative humidity by up to 8% [69].
4. Impact of Increased Green Infrastructure on Urban Pollution Levels
4.1. Introduction and Identity of the Studies
4.2. Impact of Additional Greenery on Particulate Matter
- (a)
- Additional urban green infrastructure substantially increases the removal of particles from the atmosphere mainly through deposition processes. The magnitude of the removal depends on several parameters like the type and size of trees, the type of tree cover, the concentration of the particles in the atmosphere and the specific transport and climatic conditions. Particle size determines the magnitude and the process of deposition. While large particles, >10 mm in diameter, fall in the soil below the trees by sedimentation, particles with diameter between 1 to 10 mm are deposited as trees force the air flow to bend, while ultrafine particles below 1 mm are deposited by diffusion [100,101]. Numerical simulations have shown that increased greenery in canyons contributes to reduce the concentration of airborne particles in canyons up to 60%, which seems a quite high value [102].
- (b)
- Dispersion because of the aerodynamic impact of trees may considerably decrease the concentration of airborne particles. Simulations carried out for the city of Leicester, UK, showed that aerodynamic dispersion resulted in a 9.0% reduction of PM2.5 concentration, while deposition on trees resulted in a reduction close to 2.8% [103]. However, several studies have reported that in urban canyons, trees may change the roughness properties, resulting in a considerable increase of the concentration of particulate matter [104,105,106].
- (c)
- Although additional tree cover is associated with a higher removal of particles, the concentration of particulate matter in the atmosphere may increase as additional greenery reduces the surface temperature, affecting the height of the PBL and trapping the particles in the lower atmosphere, thereby reducing ventilation and transport of pollutants. Increase of particle concentration was predicted for Kansas City but not for West Midlands and Glasgow. Analysis of relevant data from Montreal has also found that increase of the PBLH resulted in a negligible increase of the PM2.5 daily average concentration [107]. It is evident that meteorological as well as landscape parameters determine the potential decrease of the PBL and the corresponding rise of pollutant concentration in a city. Given that most of the information is from simulation studies and not systematic in situ measurements, the accuracy of the used models to describe the complex phenomena is a serious issue to be considered.
4.3. Impact of Additional Greenery on Ground-Level Ozone
- (a)
- The chemistry and atmospheric dynamics determining the concentration of ground-level ozone is complex and the relationship between increased tree cover and ozone concentration is not simple. Ozone is generated as a result of photolysis of NO2 when VOCs are present [85]. More urban green infrastructure increases the emission of BVOCs to the atmosphere. In parallel, it results in a higher dry deposition and absorption of ozone and NOx and lower ambient temperatures that decrease the emission rate of BVOCs and slow the photochemical reactions. Lower surface temperature usually decreases the height of the PBL, blocking pollutants in the lower atmosphere like NOx that may result in decreased ozone concentrations because of titration processes. However, an analysis carried out for Montreal, Canada, found that the decrease of the PBLH caused a negligible decrease of the ozone concentration [107]. More tree cover may result in a decrease of the wind speed in the lower atmosphere and a reduced removal of ozone.
- (b)
- The magnitude of the dry deposition of ground-level ozone considerably affects its balance in the atmosphere [15]. It is estimated that during 2010, urban trees removed almost 523 kilotonnes/year of ozone in 55 US cities [108] and 12.87 kilotonnes/year in 87 cities in Canada [109]. The standardised removal rates of ozone can be as high as 0.4 g/m2/y/ppb [15], while the mean annual reduction of the ozone hourly concentration varies from 0.1% to 1.5% [15]. In parallel, trees absorb ozone and assimilate NOx. Their assimilation capacity differs up to a factor of 122 between different species [110,111]. Although important models have been developed to assess the removal capacity of trees, there is considerable uncertainty regarding the reported values [15].
- (c)
- The chemistry between NOx and O3 is quite complex and depends on their relative concentrations. High concentration of NOx, mainly generated from motor traffic, react with O3, converting it to O2, decreasing its concentration through a titration effect. This is a potential source of uncertainties resulting in significantly contrasting results reported from experimental studies. Measurements carried out in parks and green zones found a low concentration of NOx and a high or equal concentration of ozone compared to adjacent non-vegetated zones, while in some experiments, lower ozone concentrations were observed in green areas only after rainfall [81,112,113,114,115]. Contrary to the above studies, measurements performed in Baltimore, MD, USA, did not find substantial differences in NOx concentration in green and adjacent open residential spaces, while the concentration of ozone was considerably lower in the green zones [116]. Similar conclusions were drawn in Reference [117], reporting measurements in Spain. As concluded in Reference [118], urban parks and forests do not significantly affect the concentration of NOx, and a potential decrease of the ozone concentration may be the result of the increased absorption by the trees and also of the reduced surface temperature and solar radiation in parks that slows down the photochemical reactions. Differences of NOx concentration between green and non-green zones may result because of the proximity to high-traffic areas.
- (d)
- Chemical reactions associated with the titration of ozone are less temperature-sensitive than photochemical reactions generating the atmospheric ozone. According to Reference [55], titration is the dominant mechanism depleting ozone at the ground level, while at the upper levels of the atmosphere, ozone is created through photochemical reactions, and then is transferred to the ground level because of the vertical diffusion. It was observed that high vertical diffusion values correspond to days with the highest ozone concentration.
- (e)
- Almost all studies concluded that increased urban tree cover results in a net decrease of the ozone concentration, however several urban zones may exhibit an increase. Most of the studies investigating the balance of ozone uptake and formation concluded that urban trees generally contribute to decrease the concentration of ground-level ozone [112,118]. However, numerous experimental studies have not found reduced ozone concentration in tree canopies compared to adjacent non-vegetated open zones [115,119].
- (f)
- The rate of BVOC emissions from the additional trees seems to be the determinant factor regulating the atmospheric concentration of ozone. Low emitters, emitting under 2 µg/g/h of isoprene and 1 µg/g/h of monoterpenes, may result in a net decrease of the atmospheric ozone [89]. On the contrary, moderately or highly emitting trees may result in increased ozone concentrations.
5. The Impact of Increased Green Infrastructure on Health
5.1. Introduction and Identity of the Studies
- (a)
- The natural outdoor environment influences health and wellbeing through viewing and observing green outdoor spaces.
- (b)
- Greener spaces are associated with lower pollution levels and reduced temperature in healthier environments that affect the human immune system.
- (c)
- Natural and green outdoor spaces offer higher opportunities to perform physical activity.
- (d)
- Natural and green outdoor spaces offer higher opportunities for social interactions.
5.2. Impact of Increased Green Infrastructure on Heat-Related Mortality
- (a)
- New green infrastructure in cities needs several years to grow and contribute substantially to lower urban temperatures and heat-related mortality and morbidity. According to the greening plans developed for several cities, the growing period may exceed 20 or even 30 years [140]. It is reasonable to consider that the future demographic and socioeconomic conditions will change considerably compared to the past and current times. Additionally, human technological and physiological adaptation may alter the existing relationship between the ambient temperature and heat-related mortality and morbidity [144,145]. Thus, the use of correlations between the ambient conditions and the heat-related mortality and morbidity based on past health data induces a very significant uncertainty regarding future health assessments. It is of considerable interest that new assessment studies should investigate and integrate the issues of altered socioeconomic, demographic and adaptation conditions in the global models.
- (b)
- It is well-documented that the frequency of heatwaves and extreme summer weather events is increasing constantly [146]. In parallel, heatwaves have a synergetic effect with the urban heat island, further increasing urban temperatures and drought conditions [147,148]. Recent research has shown that during extreme or high summer ambient temperatures, the cooling potential of trees is seriously reduced or even minimised [41,149]. During excessive temperature and drought conditions, trees may close their stomata while the surface temperature of leaves increases, contributing more sensible heat to the atmosphere and increasing the ambient temperature [150,151]. Incorporation of the new stomata model of trees into global climate models has shown that the maximum ambient temperature during heatwaves may increase up to 5 °C, on top of the temperature increase caused by the increase of greenhouse gases [152]. The specific predictions highly exceed previous assessments on the potential contribution of greenery during extreme heat events [153,154]. Given the high growth period of new trees and the expected increase of the ambient temperatures, the existing relations between additional tree cover and ambient temperature may be seriously modified, altering the capacity of urban greenery to reduce heat-related mortality and morbidity. The development of new genetically modified tree species resistant to higher temperatures may offer additional cooling opportunities [155].
- (c)
- Increased tree cover affects the concentration of harmful pollutants like O3, NOx, VOCs and particulate matter, while numerous studies have documented the impact of pollution levels on human health [108,109,156,157]. Existing studies evaluate the potential impact of additional green infrastructure on mortality and morbidity in terms of temperature or pollution decrease caused by the urban trees. However, it is evident that there is a synergetic impact that may enhance the magnitude of the potential benefits to health. It is characteristic that high ozone concentrations are usually observed during extreme heat events [157]. To our knowledge, no studies are available considering both the temperature and pollution variation in a synergetic way.
- (d)
- Increase of urban greenery may affect the concentration of some pollutants in a negative way, like ground-level ozone, which could be detrimental to health [158]. It is characteristic that more than 21,000 premature deaths have been reported in the EU countries because of the increased ozone concentrations [159]. No studies are available on the potential negative impact of additional urban greenery on health, and although the impact may not be particularly high, it is important to be considered and analysed.
5.3. Impact of Green Infrastructure on Heat-Related Morbidity
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Part 1: Assessment of the Mitigation Potential, HR Mortality and Morbidity | |||||||
City | Scenario | Simulation Period | Simulation Tool | Impact on Temperature | Impact on Mortality | Impact on Morbidity | Reference |
Darwin, Australia | Increase of tree cover tree cover from 19% to 39%. | Wet and dry seasons in 2016 | ENVI-met 6 × 6 m | Decrease of the average peak daily temperature by 0.5 °C | Calculation of the HRM based on correlations between the local ambient temperature and mortality. Decrease of mortality by 19.3% against the base case. | Greenery reduces the annual excess hospital admissions of 40.14 to 27.51. | [65] |
Paramatta, Australia | Increase of the tree cover from 20% to 70%. | Summer months 2002–2016 | WRF Resolution: 500 × 500 m | Decrease of the average peak daily temperature by 1.0 °C | Calculation of the HRM based on correlations between the local ambient temperature and mortality. Decrease of mortality by 49% against the base case. | The daily excess HR morbidity decreases from 3.66 hospital admissions per day to about 2.6. | [64] |
Part 2: Assessment of the Mitigation Potential and HR Mortality | |||||||
City | Scenario | Simulation Period | Simulation Tool | Impact on Temperature | Impact on Mortality | Reference | |
New Orleans, LA, USA | Increase of the tree cover from 25% to 35% | Heatwaves 31 May–2 June 1998 16–18 June 1998 14–8 July 2000 | WRF Resolution 2 × 2 km | Reduction of the average afternoon ambient temperature by 0.21 °C | Calculation of the HRM for the offensive air mass types. Decrease of HRM by 0.82 deaths per day and 100,000 population, or 15% of the base case. | [58] | |
Philadelphia, PA, USA | Increase of the tree cover from 15% to 25% | Heatwaves 22-26 June 1997 3–8 July 1999 23–29 July 1999 | WRF Resolution 2 × 2 km | Reduction of the average afternoon ambient temperature by 0.32 °C | Calculation of the HRM for the offensive air mass types. Decrease of HRM by 0.67 deaths per day and 100,000 population or 5.7% of the base case. | [58] | |
Detroit, MI, USA | Increase of the tree cover from 15% to 25% | Heatwaves 13–16 July 1995, 6–11 June 1999, 6–9 August 2001 | WRF Resolution 1 × 1 km | Reduction of the average afternoon ambient temperature by 0.1 °C | Calculation of the HRM for the offensive air mass types. Decrease of HRM by 0.09 deaths per day and 100,000 population or 1.5% of the base case. | [58] | |
Philadelphia, PA, USA | Increase of the GI from 31% to 35% | Years 2020–2049 | Based on past WRF simulations | Reduction of the average peak daily ambient temperature by 0.14 °C | Calculation of the HRM for the offensive air mass types. Decrease of the mortality by 5.6% compared to the base case. | [140] | |
Philadelphia, PA, USA | Increase of the tree cover from 31% to 52% | 2020–2049 | Based on past WRF simulations | Reduction of the average peak daily ambient temperature by 0.97 °C | Calculation of the HRM for the offensive air mass types. Decrease of the mortality by 26.6% compared to the base case. Reduction of deaths by 135–315 deaths over the period 2020 through 2049. | [140] | |
Melbourne CBD area Australia | Increase of the GI from 15% to 100% | 2009–2050 | (UCM-TAPM) Multiple one-way nesting procedure, steps of 30, 10, 3 and 1 km. | Decrease of the average peak daily temperature by 1.7 °C | Calculation of the HRM based on correlations between the local ambient temperature and mortality of elderly people. Decrease of mortality by 45% against the base case. | [59] | |
Melbourne CBD area Australia | Increase of the GI from 15% to 49% | 2009–2050 | (UCM-TAPM) Multiple one-way nesting procedure, steps of 30, 10, 3 and 1 km. | Decrease of the average peak daily temperature by 0.76 °C | Calculation of the HRM based on correlations between the local ambient temperature and mortality of elderly people. Decrease of mortality by 20% against the base case. | [59] | |
Melbourne CBD area Australia | Increase of the GI from 15% to 38% | 2009–2050 | (UCM-TAPM) Multiple one-way nesting procedure, steps of 30, 10, 3 and 1 km. | Decrease of the average peak daily temperature by 0.6 °C | Calculation of the HRM based on correlations between the local ambient temperature and mortality of elderly people. Decrease of mortality by 10% against the base case. | [59] | |
Melbourne CBD area Australia | Decrease of the GI from 15% to 5% | 2009–2050 | (UCM-TAPM) Multiple one-way nesting procedure, steps of 30, 10, and 1 km. | Increase of the average peak daily temperature by 0.2 °C | Calculation of the HRM based on correlations between the local ambient temperature and mortality of elderly people. Increase of mortality by 13% against the base case. | [59] | |
Melbourne CBD area Australia | Increase of the GI from 15% to 33% | 2009–2050 | (UCM-TAPM) Multiple one-way nesting procedure, steps of 30 m 10, 3 and 1 km. | Decrease of the average peak daily temperature by 0.25 °C | Calculation of the HRM based on correlations between the local ambient temperature and mortality of elderly people. Decrease of mortality by 12% against the base case. | [59] | |
Dallas, TX, USA | Increase of the GI from 27.5% to 35% | Summer months 2011 | WRF Resolution: 500 × 500 m | Decrease of the average peak daily temperature by 0.38 °C | Exposure-response relationship between temperature and mortality. Decrease of mortality by 5.7% against the base case. | [54] | |
Part 3: Assessment of the Mitigation Potential and HR Morbidity | |||||||
City | Scenario | Simulation Period | Simulation Tool | Impact on Temperature | Impact on Morbidity | Reference | |
Phoenix, AZ, USA | Increase the GI by 5% | 2002–2006 | Zero-dimensional energy balance model | Decrease of the average daily temperature by 1.7%. | Heat-related emergency calls decreased by 17%. | [160] | |
Phoenix, AZ, USA | Increase the GI by 10% | 2002–2006 | Zero-dimensional energy balance model | Decrease of the average daily temperature by 3.6%. | Heat-related emergency calls decreased by 35%. | [160] | |
Phoenix, AZ, USA | Increase the GI by 15% | 2002–2006 | Zero-dimensional energy balance model | Decrease of the average daily temperature by 5.4%. | Heat-related emergency calls decreased by 53%. | [160] | |
Phoenix, AZ, USA | Increase the GI by 20% | 2002–2006 | Zero-dimensional energy balance model | Decrease of the average daily temperature by 7.2%. | Heat-related emergency calls decreased by 70%. | [160] | |
Oslo, Norway | Zero GI in the city | Summer 2018 | Satellite measured surface temperature data correlated against ambient air temperature | - | No relation between temperature and morbidity except for skin-related problems. Trees reduce the potential heat exposure for the elderly by 1.3 ± 0.1 heat risk person days. | [161] | |
Part 4: Assessment of the Air Quality and Mitigation Potential | |||||||
City | Scenario | Simulation Period | Simulation Tool | Temperature Decrease | Impact on Air Quality | Reference | |
Bronx, NY, USA | Increase of GI from 24.9% to 26.2% | 2010–2030 | i-Tree assessment software | Decrease of the average peak daily temperature by 0.09 °C | Increase of the removal PM2.5 by 9.8%, 13.7% and 21.6% for the high, average and low tree mortality rate. | [51] | |
North-eastern USA | Increase of the urban GI from 20% to 40% | Period of heatwaves | CSUMM tool | Decrease of the average peak daily temperature by 0.4 °C | Decrease in daytime hourly ozone concentrations of 1 ppb (2.4%) with a peak decrease of 2.4 ppb (4.1%). Increases in some parts of the computational domain. | [55,56] | |
New York, NY, USA | Increase of GI from 10% to 30% | Heatwaves | MMA mesoscale tool | Decrease of the average peak daily temperature by 0.4 °C | Domain-wide drop of about 4 ppb of ozone (132 to 128 ppb). | [86] | |
New York, NY, USA | Increase of GI from 10% to 20% | Heatwaves | MMA mesoscale tool | Decrease of the average peak daily temperature by 0.15 °C | Domain-wide drop of about 4 ppb of ozone (132 to 128 ppb). | [86] | |
Part 5: Assessment of the Air Quality | |||||||
City | Scenario | Simulation Period | Simulation Tool | Impact on Air Quality | Reference | ||
Brooklyn, Melbourne, AU | Increase of trees from 20 to 80 trees per hectare | Current | i-Tree assessment software | Increase of pollutant removal by 660%, from 577 to 4500 kg NO2: from 68 to 964 kg; SO2: from 22 to 125 kg; PM10: from 225 to 1474 kg. PM2.5: from 7 to 43 kg; O3: from 246 to 1885 kg. CO: from 9 to 10 kg. | [83] | ||
Atlanta, GA, USA | Reduction of Urban GI by 20% | Current | The OZIPM4 Computer Tool | Increase of ozone concentration (0% to 5%). | [85] | ||
Kansas City, MO, USA | Non-quantified increase of GI | Current | WRF-CMAQ tool | Increase of PM2.5 10% or 1.1 μg m−3 during the night period. Decrease of O3 concentration by 2.0 ppbv during the daytime, and 5.2 ppbv during the night. Increase in some domains of the city. | [84] | ||
West Midlands, UK | Increase of GI from 3.75% to 16.5% | - | Atmospheric FRAME model | Reduction of the average PM10 concentrations by 10% from 2.3 to 2.1 mg m−3, removing 110 tonnes per year of primary PM10 from the atmosphere. | [97] | ||
West Midlands, UK | Increase of GI from 3.75% to 54% | - | Atmospheric FRAME model | Reduction of the average PM10 concentration by 26%, removing 200 tonnes of primary PM10 per year. | [97] | ||
Glasgow, UK | Increase of GI from 3.75% to 8.0% | - | Atmospheric FRAME model | Reduction of the primary PM10 concentrations by 2%, removing 4 tonnes of PM10 per year. | [97] | ||
Glasgow, UK | Increase of GI from 3.75% to 21% | - | Atmospheric FRAME model | Reduction of the primary PM10 air concentrations by 7%, removing 13 tonnes of primary PM10 per year. | [97] | ||
California’s South Coast Air Basin, CA, USA | Moderate Increase of greenery by 6% | - | CSUMM Tool | If low-emitting plants are used, the decrease of the population-weighted exceedance exposure to ozone above the Californian and National thresholds are up to 14% during peak afternoon hours, respectively. | [89] | ||
California’s South Coast Air Basin, CA, USA | High increase of greenery by 12% | - | CSUMM Tool | If low-emitting plants are used, the decrease of the population-weighted exceedance exposure to ozone above the Californian and National thresholds is up to 22% during peak afternoon hours, respectively. | [89] | ||
Greater London Area, UK | Increase of GI from 20% to 30%. | - | The Urban Forest Effects Model (UFORE) | Deposition of 1109–2379 tonnes of PM10 (1.1–2.6% removal) by 2050. | [98] | ||
Part 6: Assessment of the Mitigation Potential | |||||||
City | Scenario | Simulation Period | Simulation Tool | Temperature Decrease | Reference | ||
Sao Paolo, Brazil | Increase of GI from zero to 11%. Street trees | Summer 2014 | ENVI-met | Decrease of the peak daily temperature by 0.6 °C | [50] | ||
Sao Paolo, Brazil | Increase of GI from zero to 11%. Pocket parks | Summer 2014 | ENVI-met | Decrease of the peak daily temperature by 0.4 °C. | [50] | ||
Brisbane, Australia | Increase of GI from zero to 45% | 2000–2010 | CCAM CSIRO | Decrease of the night temperature by 1.83 °C, average T by 0.99 °C, and peak temperature by 0.44 °C. | [62] | ||
Archerfield, Australia | Increase of GI from zero to 45% | 2000–2010 | CCAM CSIRO | Decrease of the night temperature by 1.58 °C, average T by 0.94 °C, and peak temperature by 0.40 °C. | [62] | ||
Logan, Australia | Increase of GI from zero to 45% | 2000–2010 | CCAM CSIRO | Decrease of the night temperature by 1.58 °C, average T by 0.94 °C, and peak temperature by 0.40 °C. | [62] | ||
HK, China | Increase of the GI from zero to 100% | March 2000 | MM5 | Decrease of the peak daily temperature by 1.6 °C. | [71] | ||
Melbourne, Australia | Increase of the mixed Forest from zero tree cover to by 20–50% | Heatwaves 27–30 January 2009 | WRF | Decrease of the UHI intensity from 0.5 to 5 during the night-time. Non-significant differences during the daytime. | [60] | ||
Melbourne, Australia | Increase of the trees cover by 5%, 10%, 40%. Average initial trees cover 24%, Final tree cover 28%, 32%, 40%. | 12 heatwaves 1990–2014 | WRF | Decrease of the night temperature by 0.28, 0.38, and 1.08 °C cooler than the control for the three scenarios. | [61] | ||
Bochum, Germany | Increase of the GI by 25% in a specific urban zone. Initial tree cover: 9%, final tree cover: 25% | Heatwave of Summer 2010 | WRF | Decrease of the peak daily temperature by 0.45 °C | [66] | ||
Vienna, Austria | Increase of the size of urban parks by 20% | 1981–2010 | MUCLIMA 3 | Maximum decrease of the night-time ambient temperature by 1 °C | [68] | ||
New York City, NY, USA Mid-Manhattan West, Lower Manhattan East, Fordham Bronx, Maspeth Queens, Crown Heights, Ocean Parkway | Initial tree cover: around 20%. Additional tree cover from 6.2% to 14.4% | Heatwaves 2002 | MM5 | Average decrease at 3 p.m. close to 0.22 °C | [52] | ||
Heatwaves 2002 | MM | Average decrease at 3 p.m. between 0.22 to 0.5 °C | [52] | ||||
Singapore | Increase of the trees cover on the dense and industrial zones from 5% to 60% | April and May period | WRF | Decrease of the average peak daily temperature close to 0.3 °C, and close to 1.5 °C during the night. | [69] | ||
Stuttgart, Germany | Increase of the tree cover from 18% to 30% | Heatwaves August 2003 | WRF | Decrease of the average peak daily temperature by 0.13 °C. Maximum decrease up to 2 °C. | [67] | ||
Tehran, Iran | Increase of the tree cover from 8% to 28% | June 2016 | WRF | Decrease of the average peak daily temperature up to 0.6 °C. Increase of the night-time temperature up to 1.5 °C. | [70] | ||
Brampton, Toronto, ON, Canada | Increase of tree cover from 18% to 27% | Heatwaves 2018 | WRF | Decrease of the average peak daily temperature by 0.2 °C. | [57] | ||
Caledon, Toronto, ON, Canada | Increase of tree cover from 18% to 27% | Heatwaves 2018 | WRF | Decrease of the average peak daily temperature by 0.3 °C. | [57] |
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Santamouris, M.; Osmond, P. Increasing Green Infrastructure in Cities: Impact on Ambient Temperature, Air Quality and Heat-Related Mortality and Morbidity. Buildings 2020, 10, 233. https://doi.org/10.3390/buildings10120233
Santamouris M, Osmond P. Increasing Green Infrastructure in Cities: Impact on Ambient Temperature, Air Quality and Heat-Related Mortality and Morbidity. Buildings. 2020; 10(12):233. https://doi.org/10.3390/buildings10120233
Chicago/Turabian StyleSantamouris, Matthaios, and Paul Osmond. 2020. "Increasing Green Infrastructure in Cities: Impact on Ambient Temperature, Air Quality and Heat-Related Mortality and Morbidity" Buildings 10, no. 12: 233. https://doi.org/10.3390/buildings10120233