URBAN INTEGRATED METEOROLOGICAL OBSERVATIONS: Practice and Experience in Shanghai, China
The Shanghai Urban Integrated Meteorological Observation Network (SUIMON) is introduced with examples of intended applications in this megacity.
The world's population exceeds 7 billion, with half living in urban areas (
Observations of atmospheric conditions and processes in urban areas are fundamental to understanding the interactions between the underlying surface and the weather/climate and improving the performance of urban weather, air quality, and climate models. Such observations also provide key information for end users (e.g., decision makers, stakeholders, public) for a myriad of applications [see, e.g., the range described by Dabberdt (2012)].
A number of major field campaigns in urban areas have been conducted in various parts of the world for different purposes (Table 1). These include short-term campaigns such as in
In addition, observational networks have been established to focus on urban weather research. One notable example is the Helsinki Testbed concerned with mesoscale weather forecasting and dispersion. This has involved model development and verification, demonstration of integration of modern technologies with complete weather observation systems, end user product development, and data distribution for the public and research community (Dabberdt et al. 2005; Koskinen et al. 2011). Other examples include the
In 1872,
Today in
THE MULTIFUNCTION OF SUIMON. Features of SUIMON. The coastal city of
To understand the interactions between the urban surface and atmospheric processes; improve the performance of urban weather, air quality, and climate models; and provide key information for city end users (e.g., decision makers, stakeholders, public), SUIMON has been established (see "SUIMON design features" for more information). The initial foci for SUIMON relate to high impact weather, urban environmental and micrometeorological conditions, and special needs for end users, along with data acquisition, integration, and assimilation systems. Of particular interest are rapidly changing atmospheric conditions associated with low pressure systems (e.g., severe convective weather) and more stagnant periods (e.g., fog and haze).
Today
Mega cities and conurbations have vast infrastructure-for example, transport networks, transmission lines, drainage networks, and underground spaces (e.g., metro lines, parking garages). These are all vulnerable to weather and can benefit from focused observations (Tang 2008). User-driven observations can provide the tailored, information-rich products and services that decision makers can use effectively. See the sidebar on "Examples of urban weather-sensitive applications in
Some of the pressing air quality related scientific questions that are being addressed drawing on SUIMON relate to the temporal and spatial extent of the pollution plume from the
With the development of SUIMON, and public environmental awareness of the data and observational capability, the range of end users is increasing. These now include urban managers concerned with air pollution control and regulation and the public wanting information related to air quality. There is interest in real-time conditions and the forecast for the next few hours to days, tied to concerns about environmental exposure and its health effects. Other end users include those who need to aid decision making in an emergency response to nuclear, biological, or chemical (NBC) releases.
Observation networks within SUIMON. The locations of the stations within the networks of SUIMON were selected to provide spatial coverage across the
A hierarchy of surface-level weather stations has been developed that include the
A key characteristic of SUIMON is that the surface-based network is complemented with the capacity to observe the vertical characteristics of the atmosphere. This provides a four-dimensional dataset of the
The lightning mapping system, including three LS7000 sensors and one LS8000 sensor (Table 3) covering the whole
A network of 13 instrumented broadcasting masts (Fig. 1), with wind sensors at 10, 30, 50, 70, and 100 m above ground level (AGL), plus temperature and humidity sensors at 10 and 70 m AGL, provide vertical information close to the surface (lower boundary layer) (Fig. 2a). Ground-based remote sensing includes 10 wind profilers (Table 3) that provide detailed information about boundary layer wind fields and mixing layer height (Fig. 2b). These provide information from 60 to 3000 m with gates of 60 m or about 100-m resolution that vary with model and operating mode (high or low) across the network.
Local-scale flux measurements (Table 3) are conducted within the densely built-up area of Xujiahui (Fig. 1). Within the footprint of the flux tower is the site where routine weather data have been collected for more than 140 years. The micrometeorological instrumentation, mounted at 80 m, includes eddy covariance measurement (Aubinet et al. 2012) of turbulent sensible and latent (water vapor) heat plus carbon dioxide fluxes. Simultaneously the four components of net all-wave radiation (longwave and shortwave incoming and outgoing/reflected radiation) with slow response air temperature and relative humidity sensors are measured. With the flux measurements, the surface energy balance and carbon fluxes are being investigated (X.-
In addition to the physical characteristics of the atmosphere, observations related to atmospheric composition [e.g., ozone (O3) and its precursors, aerosols] are measured at 10 sites (Fig. 1) across the region. As ground-level O3 is formed as a result of complex photochemical reactions of nitrogen oxides, carbon monoxide (CO), and various volatile organic compounds (VOCs), the concentration of O3 and its precursors are measured nearly 10 m above the surface (Table 3). VOCs concentrations sampled for 24 h are analyzed with a laboratory-based gas chromatography system coupled with mass-selective detection (Geng et al. 2008). Other surface-based in situ observations include particulate matter (PM , PM, 5, PM10) and black carbon (BC) (Table 3).
The vertical O3 concentration profile is observed by O3 GPS soundings to understand the exchange between the upper and lower parts of the boundary layer. Other ground-based remote sensing includes lidars [e.g., ceilometers, micropulse (MPL)] and a sun photometer. These provide continuous, real-time measurements of the boundary layer depth and coherent structures by sensing aerosol backscatter (Table 3). MPL data, available from
These data are complemented with those from satellite-based remote sensing [e.g., derived from Moderate Resolution Imaging Spectroradiometer (MODIS), Feng-Yun-3 (FY-3); Table 3] to study the aerosol distribution across
Data acquisition, integration, and assimilation in SUIMON. Critical to SUIMON is the integrated data management system (DMS) that has been built and operated by the Shanghai Meteorological Service (SMS) (Fig. 3). This acquires and stores the multiscale, multisource meteorological observations (e.g., AWS, weather radars, wind profilers, met tower observations; Table 3) with their metadata (e.g., Table 4). All the information collected at this stage is termed level 0 data.
The data undergo initial processing (e.g., decoding, extracting, format checking) and are loaded into raw databases (MySQL/SQL Sever file databases) to create level 1 data. These are stored in a series of different databases (e.g., surface observations, vertical profiler, atmospheric composition).
The QC subsystem includes an information feedback mechanism to improve the completeness, validity, and accuracy of the meteorological data. The metadata related to the regular instrument calibrations and format are utilized to assess data quality along with monitoring transmission, meteorologically based QC, and comprehensive manual QC. Currently, the QA/QC is performed on the AWS, wind profiler, and met tower data streams automatically by using the approach of both climatic and regional history extremes, a time consistency check, a logical consistency checkbetween variables, and a spatial consistency check. These metrics are used to generate QC flags, which are incorporated into secondary databases with the level 2 data, while the raw databases are kept intact.
The Local Analysis and Prediction System (LAPS) (Liu et al. 2012) and Advanced Regional Prediction System (ARPS) Data Analysis System (ADAS) are used with, and within, SUIMON for integrated data analysis and data assimilation using, for example, the sounding data, AWS, radar reflectivity, wind profiler, and GPS-Met to support mesoscale numerical weather prediction models (NWP). The mesoscale models used include
For climate modeling, a nested regional climate model developed by the China National Climate Center (RegCM_NCC) (Ding et al. 2006) is used and run operationally in the East China region (green area in Fig. 1 inset). To date, the model performance, evaluated using SUIMON data, has focused on temperature and precipitation (Chen et al. 2008; Dong et al. 2008; Yang et al. 2008). Currently, performance of the Climate extension of the
Depending on the requirements, personalized data sharing and services are established for different departments and users. The weather forecasters, researchers, end users, and others receive their required data by means of file transfer protocol (FTP), application programming interface (API), web services, and data pushed through intranet/Internet plus other approaches. Given weather forecasters and researchers within SMS currently are the main users of these observations, their data are available via intranet or Internet. The specialized end users in
Continuous regular assessment reports are prepared to evaluate the equipment (e.g., AWS, Met towers, weather radars) using indices such as fault time, data acquisition rate, and data errors rate, etc. The data collected regularly to describe the setting for each site are extensive (Table 4), reflecting WMO guidance (Oke 2006) and Muller et al. (2013). These data allow users to assess the characteristics of both individual sensors and the network in terms of applicability for a particular use. The design of individual networks and across networks is reviewed regularly. In addition, as demand from a broader range of sectors for applications has developed, SUIMON as a whole is reviewed to identify how these requests can best be met both with the current configuration plus additional data needs, or personnel with specific skills to support the better use of the data streams.
APPLICATION CASE STUDIES. Heat island, sea breeze, and convective weather. Large cities are inherently vulnerable to severe weather such as torrential rain, lightning, and wind gusts. A typical example of the damage caused by torrential rain is inland flooding exacerbated by the large area of impervious surfaces (e.g., asphalt, concrete) and closely spaced buildings of cities. Li et al. (2003) developed a fine-mesh regional meteorological model that has been applied in
SUIMON has, and is being, used to investigate UHI effects on thermodynamic instability, UHI convergence in association with intensification and/or initiation of electrically active thunderstorms in the metropolitan area, and UHI enhancement of convective updraft strength in relation to the frequency of lightning. This is helping to characterize and evaluate thermodynamic and kinematic structures of thunderstorms, in the context of a better knowledge of the physical process of rain formation, maintenance and evolution. For example, a large hail-producing supercell developed ahead of a severe squall line around
Photochemical and urban aerosol pollution. Cities are a major source of air pollution emissions owing to the burning of fossil fuels for heating and cooling, industrial processing, and transport of people and goods. Cities also modify their ambient weather (especially winds, turbulence, radiation, mixing height, and temperature) in ways that often negatively affect the dispersion, transformation, and concentration of those pollutants. Air quality forecasts and warnings are needed at multiple scales of the region, city, and street. Information about the atmospheric circulation are combined with the higher temporal-, vertical-, and horizontal spatial-resolution data (e.g., urban boundary layer structure and mixing layer heights, vertical profiles of winds, turbulence, temperature inversion). The city, with its characteristic roughness height and temperature evolution, has a strong impact on the structure of the urban boundary layer and hence on the pollutant dispersion near the surface.
Within SUIMON, O3 concentration and photochemical precursors have been systemically measured and their relations investigated (Geng et al. 2007; Ran et al. 2009). For example, the ozone "weekend effect" (Tang et al. 2008) and the impacts of the precursors on ozone formation (Geng et al. 2008) have been revealed.
Ground-based remote sensing [e.g., sun photometer, micropulse lidar version 4 (MPL 4), ceilometer] have been used to investigate urban aerosol and fog/ haze events (Huang et al. 2010; He et al. 2012a,b). The observations have been used to evaluate the performance of the WRF-Chem Model. This is now used routinely for the chemical weather forecast for the
End user applications supported by SUIMON. The SUIMON data are provided in near-real time to weather forecasters. The publically accessible website (www.soweather.com/index.html) provides weather forecast/warnings, plus more specialized forecasts, such as for road and health. With the aid of a geographic information system (GIS) interface the public can access the real-time Met records and forecasts for the area of the city of interest to them. New specialized products are being developed in conjunction with end users-for example, urban inundation warnings, meteorological condition forecasts to aid safe driving, energy demand, and related loads on the electric grid (Table 5).
One impetus for enhancing the density of data collection near the city center was the
New specialized forecasts are being developed for different sectors. For example, with the building of the
Given the high frequency of intense storms, the design of billboards that are permitted in the city has become one area of focus given the damage caused when intense gusts cause them to become unattached (Fig. 6b). Combining Fluent computational fluid dynamics (CFD) modeling (Fang et al. 2013), with the extensive wind data available across the area, has resulted in new designs to reduce damage (Figs. 6d,e). Combining these with risk assessment, this information is intended to inform planning to identify areas that are likely to be better and poorer choices for installing different types of billboards (Fig. 6f).
FUTURE CONSIDERATIONS IN URBAN METEOROLOGICAL OBSERVATIONS IN
SUIMON, with measurements to end user support provides a prototype for integrated urban weather, environment, and climate services as suggested by Grimmond et al. (2014).
ACKNOWLEDGMENTS. This material is based upon work supported by
SUIMON DESIGN FEATURES
SuiMON is designed to satisfy the following features:
* Multipurpose: forecasts, research, service;
* Multifunction: high impact weather, urban environment, special end user needs;
* Multiscale: macro-/mesoscale, urban scale, neighborhood scale, street canyons, buildings;
* Multivariable: thermal, dynamic, chemical, biometeorological, ecological;
* Multiplatform: radar, wind profiler, ground-based, airborne, satellite based, in situ observation, sampling;
* Multilinked: linkages between all platforms;
with
* Management to facilitate exchange of data and information
* Ability to improve coordination of strategies and instruments and to identify gaps in observations based on science- and user-driven requirements
* Capability to intelligently combine observations from a variety of platforms using a data assimilation system that is tuned to produce the best estimate of the current state of the urban atmosphere
EXAMPLES OF URBAN WEATHERSENSITIVE APPLICATIONS IN
In
* Urban flood control: Flood control agencies need data on precipitation (rain, snow) distribution and runoff, as well as the water storage capability of urban pervious surfaces, drainage systems, and water-logged ground.
* Electric power: Power plants, grid operators, and local utilities need high-resolution airtemperatu re for assessing energy demand and resulting loads on the electric grid. Wind and solar radiation are also needed for renewable energy assessments.
* Urban design: Urban planners and design departments need information on the UHI, vegetation stress index, urban air quality, and wind.
* Public health: Pollutant emissions and concentration, solar radiation, wind, humidity, and air temperature are needed at appropriate scales for street level, air quality, pollen, and predictions of heat stress.
* Transport management: Transport agencies need data on strong winds (especially channeling wind), precipitation and its forms (i.e., rain, freezing rain, sheet, or snow), surface state (dry, wet, ice covered), and high-resolution spatial forecasts (e.g., roadway scale) for metros, highways, and seaports.
* Security and emergency response: Urban emergency response agencies need timely and accurate information on extreme weather, such as detailed street-level flood information, and high spatial- and temporal-resolution wind, temperature, and moisture data in and above the urban canopy.
FUTURE ENHANCEMENTS TO SUIMON
* Meso- and microscale processes over urban surfaces (such as cloud microphysics, precipitation processes)
* Height (and structure) of the PBL and vertical profiles of wind, temperature, water vapor, and atmospheric composition
* Field studies to validate satellite observations and modeling simulations of urban precipitation processes and to extend basic understanding of the processes involved
* Enhancing existing observing systems to focus on city-atmosphere interactions, especially to monitor and track land-cover/land-use changes, atmospheric composition, cloud microphysics, and precipitation processes
* Modeling systems that explicitly resolve multiscale (e.g., urban canopy, street, building) processes, aerosols and cloud microphysics, and complex land surfaces to enable a more complete understanding of the feedbacks and interactions
REFERENCES
Allwine, K. J.,
-,
Arnold, S. J., and Coauthors, 2004: Introduction to the DAPPLE air pollution project. Sci. Total Environ., 332, 139-153, doi:10.1016/j.scitotenv.2004.04.020.
Aubinet, M.,
Bohnenstengel S. L, and Coauthors, 2015: Meteorology, air quality, and health in
Cao, J. S., and Coauthors, 2009: Association of ambient air pollution with hospital outpatient and emergency room visits in
Chen, B. M.,
Chen, F., and Coauthors, 2011: The integrated WRF/ urban modelling system: Development, evaluation, and applications to urban environmental problems. Int. J. Climatol., 31, 273-288, doi:10.1002/joc.2158.
Chen, R. J., and Coauthors, 2010: Ambient air pollution and hospital admission in
Cros, B., and Coauthors, 2004: The ESCOMPTE program: An overview.
Cui, L. L., and
-, and -, 2012: Urbanization and its environmental effects in
-,
Dabberdt, W. F., 2012: Urban meteorological measurements. Urban Meteorology: Forecasting, Monitoring, and Meeting Users' Needs,
-,
Dai, J. H.,
Ding, Y. H., and Coauthors, 2006: Multi-year simulations and experimental seasonal predictions for rainy seasons in
Dong, G. T.,
Fang, P. Z.,
Geng, F. H.,
-, X. X. Tie,
Gherzi, E., 1950: The scientific work of the
Grimmond,
-, and Coauthors, 2011: Initial results from phase 2 of the
-,
Hanna, S. R.,
Harrison, R. M., and Coauthors, 2012: Atmospheric chemistry and physics in the atmosphere of a developed megacity (
He, Q. S.,
-,-,-,
Hicks, B. B.,
Huang, W., and Coauthors, 2009: Visibility, air quality and daily mortality in
Huang, X. Y.,
Järvi, L.,
Koskinen, J. T., and Coauthors, 2011: The Helsinki Testbed: A mesoscale measurement, research, and service platform. Bull. Amer. Meteor. Soc., 92, 325-342, doi:10.1175/2010BAMS2878.1.
Li, W. L.,
Liang, X. D., 2007: An integrating velocity-azimuth process single-Doppler radar wind retrieval method. J.
Liu, S. D.,
Maki, M., and Coauthors, 2012: Tokyo Metropolitan Area Convection Study for Extreme Weather Resilient Cities (TOMACS). Extended Abstracts, Seventh European Conf. on Radar in Meteorology and Hydrology,
Masson, V., and Coauthors, 2008: The Canopy and Aerosol Particles Interactions in Toulouse Urban Layer (CAPITOUL) experiment. Meteor.
Muller, C. L.,
-, 2012: Urban Meteorology: Forecasting, Monitoring, and Meeting Users' Needs.
Oke, T. R., 2006: Initial guidance to obtain representative meteorological observation at urban sites, Instruments and observing methods. WMO Tech. Rep. 81, 1-47. [Available online at http://library.wmo.int/opac/index .php?lvl=notice_display&id=9262#.VIM6QjGsVps.]
Orville, R.,
Ran, L., and Coauthors, 2009: Ozone photochemical production in urban
Rotach, M. W., and Coauthors, 2005: BUBBLE-An urban boundary layer meteorology project. Theor. Appl. Climatol., 81, 231-261, doi:10.1007/s00704 -004-0117-9.
Takahashi, K.,
Tang, W. Y.,
Tang, X., 2008: New challenges for weather services in changing urban environment. WMO Bull., 57, 244-248. [Available online at www.wmo.int/pages /public ations/bulletin_en/archive/57_4_en /documents/57_4_tang_sub_en.pdf.]
-,
Warner, T., and Coauthors, 2007: The Pentagon Shield Field Program: Toward critical infrastructure protection. Bull. Amer. Meteor. Soc., 88, 167-176, doi:10.1175/BAMS-88-2-167.
WMO, 1996: Guide to meteorological instruments and methods of observation. 7th ed. World Meteorological Organization Rep. WMO 8, 680 pp. [Available online at www.wmo.int/pages/prog/gcos /documents/gruanmanuals/CIMO/CIMO_Guide -7th_Edition-2008.pdf.] 08 .pdf.]
Yang, Y. W.,
Zhou, G. Q.,
Zhou, S. Z., and
-,
Zou, L. J.,
Zou, X. J., 2011: Analysis of population movement and distribution based on Sixth Census (in Chinese). Popul. Econ., 6, 24-33.
AFFILIATIONS: Tan, Shi, Gu, Chang, Ao, and
CORRESPONDING AUTHOR: Prof.
E-mail: [email protected]
The abstract for this article can be found in this issue, following the table of contents.
DOLIO.I I75/BAMS-D-I3-002I6.I
In final form
©2015



USING WEATHER FORECASTS TO HELP MANAGE MENINGITIS IN THE WEST AFRICAN SAHEL
Asset, patient tracking systems vie for dimensional expansion
Advisor News
- Retirement optimism climbs, but emotion-driven investing threatens growth
- US economy to ride tax cut tailwind but faces risks
- Investor use of online brokerage accounts, new investment techniques rises
- How 831(b) plans can protect your practice from unexpected, uninsured costs
- Does a $1M make you rich? Many millionaires today don’t think so
More Advisor NewsAnnuity News
- Great-West Life & Annuity Insurance Company Trademark Application for “EMPOWER BENEFIT CONSULTING SERVICES” Filed: Great-West Life & Annuity Insurance Company
- 2025 Top 5 Annuity Stories: Lawsuits, layoffs and Brighthouse sale rumors
- An Application for the Trademark “DYNAMIC RETIREMENT MANAGER” Has Been Filed by Great-West Life & Annuity Insurance Company: Great-West Life & Annuity Insurance Company
- Product understanding will drive the future of insurance
- Prudential launches FlexGuard 2.0 RILA
More Annuity NewsHealth/Employee Benefits News
Life Insurance News
- To attract Gen Z, insurance must rewrite its story
- Baby On Board
- 2025 Top 5 Life Insurance Stories: IUL takes center stage as lawsuits pile up
- Private placement securities continue to be attractive to insurers
- Inszone Insurance Services Expands Benefits Department in Michigan with Acquisition of Voyage Benefits, LLC
More Life Insurance News