A Strategic and Smart Environmental Assessment of Rapid Urbanization in Beijing
Abstract
:1. Introduction
1.1. Rapid Urbanization in China
1.2. Research Questions
- How can Smart city strategies lessen environmental impacts in cases of rapid urbanization?
- How can we leverage digital technology to promote environmental sustainability in developing countries experiencing rapid urbanization?
1.3. Organization of the Work and Structure
2. Materials and Methods
2.1. Environmental and Impact Analysis
2.2. Tools and Impact Identification
3. RIAM Methodology
- -
- Step 1: create a set of indicators
- -
- Step 2: provide numerical value for the indicators
- -
- Step 3: calculate environmental scores
- -
- Step 4: evaluate the alternatives
- (A)
- criteria which are important for the condition, which individually can change the score obtained
- (B)
- criteria which are useful for the situation, but should not be able to change individually the score obtained
- →
- A1: the conditions (existing)
- →
- A2: in respect to the magnitude of change
- →
- B1: the level of permanence
- →
- B2: the possibility of being reversible
- →
- B3: the level of being cumulative
3.1. Collection and Selection of KPI
3.2. Assessing the Impacts
3.3. Collection and Selection of KPIs
4. Case-Study Application in Beijing, China
4.1. Air Pollution
4.2. Energy Demand
4.3. Water Supply and Consumption
5. Results
6. Discussion
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Nomenclature
USD | United States Dollar |
UN | United Nations |
QoL | Quality of Life |
GDP | Gross Domestic Product |
EIA | Environmental Impact Assessment |
SEA | Strategic Environmental Assessment |
RIAM | Rapid Impact Assessment Matrix |
NEPA | National Environmental Policy Act |
EI | Environmental Impact |
SD | Sustainable Development |
KPI | Key Performance Indicator |
ISO | International Organization for Standardization |
ITU | International Telecommunication Union |
UNECE | United Nations Economic Commission for Europe |
PC | Physical/Chemical |
BE | Biological/Ecological |
SC | Social/Cultural |
EO | Economic/Operational |
PC | Principal Component |
PM | Particular Matter |
NO | Nitrogen Dioxide |
SO | Sulphur Dioxide |
WHO | World Health Organization |
GHG | Greenhouse Gas |
SE | Smart Environment |
EU | European Union |
SC | Smart Cities |
ICT | Information Communications Technology |
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Reference | EIA | SEA |
---|---|---|
[34] | Generates more environmentally sensitive decisions | Occurs at the earlier stages of the decision-making cycle |
[35] | Reactive approach to the development proposal | Pro-active approach to the development proposal |
[35] | Identifies specific impacts on the environment | Identifies environmental implications of SD |
[34] | Emphasis on mitigating and minimizing impact | Emphasis on meeting environmental objectives |
Tool | Characteristics |
---|---|
Checklist | Simple to understand and use Good for site selection and priority setting |
Matrices | Commonly used method Good method for displaying EIA results Visually describe relationships between factors |
Networks | Link action to impact Useful in simplified form for checking for second-order impacts |
Overlays | Easy to understand Used for illustrating the geographical extent of impacts |
computer expert systems | Good for impact identification and analysis Requires huge amount of data |
Source | Tool | Advantages | Disadvantages |
---|---|---|---|
[40] | Simple matrices | Short written descriptions are provided | Not a tractable proposition There is no scaling or quantification of these impacts |
[39,41] | Scaled matrices | Intersections to indicate the magnitude and the importance The impacts could each be added and compared | Measurements do not necessarily directly correlate |
[39] | Component interaction matrix | Minimum the existence and length of a linkage between any two components | Structure of these linkages is exposed |
[41] | Rapid Impact Assessment Matrix | Efficient in terms of handling cases with large quantities of data RIAM allows reanalysis and in-depth analysis of selected components in a rapid and manner | Inability of these assessments to provide a record of the judgments |
CLASSIFICATION | NAME | CRITERIA | RANGE |
---|---|---|---|
Criteria related to importance of the condition | A1 | Importance of condition | from 4 to 0 |
A2 | Magnitude of change/effect | from 3 to −3 | |
Criteria that are useful for the situation | B1 | Permanence | from 1 to 3 |
B2 | Reversibility | from 1 to 3 | |
B3 | Cumulative | from 1 to 3 |
Environmental Score | Range Bands | Description of Range Bands |
---|---|---|
+72 to +180 | +E | Major positive changes |
+36 to +171 | +D | Important positive changes |
+19 to +35 | +C | Neutral positive changes |
+10 to +18 | +B | Accepted positive changes |
+1 to +9 | +A | Limited positive changes |
0 | N | No change or not applicable or no available data for evaluation |
−1 to −9 | -A | Limited negative changes |
−10 to −18 | -B | Negative changes |
−19 to −35 | -C | Neutral negative changes |
−36 to −171 | -D | Important negative changes |
−72 to −180 | -E | Major negative changes |
Geographic Focus | Indicator Standards on Smart Sustainable Cities | Organization |
---|---|---|
International | ISO 37122:2019 Sustainable cities and communities (Indicators for smart cities) ITU-T Y.4903/L.1603 (10/2016) | International Organization for Standardization International Telecommunication Union |
UN- SUSTAINABLE DEVELOPMENT GOAL 11 | United Nations | |
United for Smart Sustainable Cities (U4SSC) | ITU, UNECE and UN-Habitat) | |
National (China) | The China Urban Sustainability Index 2013 Urban China Initiative | Columbia University, Tsinghua University, and McKinsey & Company |
Categories | Indicators | Unit of Measure | Environment Sub-Dimensions |
---|---|---|---|
PC | PC1: Fine particle matter (PM2.5) concentration | μg/m3 | Environmental and climate change |
PC2: Particle matter (PM10) concentration | μg/m3 | ||
PC3: CO2 emissions measured in tones/ capita | CO2/capita | ||
PC4: NO2 concentration | Tonnes | ||
PC5: SO2 concentration | μg/m3 μg /m3 | ||
PC6: Proportion of the city inhabitants exposed to noise levels above international/national exposure limits | % | ||
BE | BE1: Percentage of city population with regular solid waste collection (residential) | % | Solid waste |
BE2: Percentage of the city’s solid waste that is recycled | % | Solid Waste | |
BE3: Percentage of city population served by wastewater collection | % | Wastewater | |
BE4: Percentage of city’s wastewater receiving centralized treatment | % | Wastewater | |
BE5: Percentage of city population with potable water supply service | |||
BE6: Total water consumption per capita (liters/day) | l/day | ||
SC | SC1: Green area (hectares) per 100,000 population | hec/100k inh | Urban planning |
EO | EO1: Total end-use energy consumption per capita EO2: Percentage of total end-use energy derived from renewable source | kWh/y % | Energy |
LABEL | INDICATOR | A1 | A2 | B1 | B2 | B3 | AT | BT | ES | RB |
---|---|---|---|---|---|---|---|---|---|---|
EO1 | Total end-use energy consumptions per capita | 4 | 1 | 3 | 2 | 3 | 4 | 8 | 32 | C+ |
EO2 | Percentage of total end-use energy derived from renewable sources | 4 | 2 | 3 | 2 | 2 | 8 | 7 | 56 | D+ |
PC1 | Fine particle matter (PM2.5) concentration | 3 | −3 | 2 | 2 | 1 | −9 | 5 | −45 | D- |
PC2 | Particle matter (PM10) concentration | 3 | −3 | 2 | 2 | 1 | −9 | 5 | −45 | D- |
PC3 | CO2 emissions measured in tons per capita | 4 | −3 | 3 | 3 | 3 | −12 | 9 | −108 | E- |
PC4 | NO2 (nitrogen dioxide) concentration | 3 | −3 | 2 | 2 | 1 | −9 | 5 | −45 | D- |
PC5 | SO2 (sulfur dioxide) concentration | 3 | −3 | 1 | 2 | 1 | −9 | 4 | −36 | D- |
PC6 | Proportion of the city inhabitants exposed to noise levels above international/ national exposure limits | 1 | −2 | 2 | 1 | 1 | −2 | 4 | −8 | A- |
BE1 | Percentage of city population with regular solid waste collection (residential) | 2 | 1 | 2 | 2 | 3 | 2 | 7 | 14 | B+ |
BE2 | Percentage of the city’s solid waste that is recycled | 3 | 2 | 2 | 1 | 1 | 6 | 4 | 24 | C+ |
BE6 | Total water consumption per capita (liters/day) | 3 | 1 | 1 | 3 | 1 | −3 | 5 | −15 | B- |
BE3 | Percentage of city population served by wastewater collection | 2 | 3 | 2 | 2 | 1 | 6 | 5 | 30 | C+ |
BE4 | Percentage of city’s wastewater receiving centralized treatment | 3 | 3 | 2 | 3 | 3 | 9 | 8 | 72 | E+ |
BE5 | Percentage of city population with potable water supply service | 3 | 2 | 2 | 2 | 2 | 6 | 6 | 36 | D+ |
SC1 | Green area (hectares) per 100,000 population | 1 | 3 | 2 | 2 | 3 | 3 | 7 | 21 | C+ |
Strategic Areas | Smart Strategies and Applications | KPIs Involved |
---|---|---|
MOBILITY | Autonomous vehicles | E01, E02, PC1, PC2, PC3, PC4, PC5, PC6 |
Intelligent traffic signals | E01, E02, PC1, PC2, PC3, PC4, PC5, PC6 | |
Congestion pricing | E01, E02, PC1, PC2, PC3, PC4, PC5, PC6 | |
Real-time public transit information | PC1, PC2, PC3, PC4, PC5, PC6 | |
Demand-based micro-transit | PC1,PC2, PC3, PC4, PC5, PC6 | |
Smart parking | PC1, PC2, PC3 | |
Digital public transit payment | PC3, PC6 | |
Predictive maintenance of transportation infrastructure | E01, PC6 | |
ENERGY | Building automation systems | E01, E02, PC3 |
Home energy automation systems | E01, E02, PC3 | |
Home energy consumption tracking | E01, E02, PC3 | |
Smart streetlight | E01, E02, PC3 | |
Dynamic electricity pricing | E01, E02, PC3 | |
Distribution automation systems | E01, E02, PC3 | |
WATER | Water consumption tracking | BE6, BE3 |
Leakage detection and control | BE3, BE4 | |
Smart irrigation | SC1 | |
Water quality monitoring | BE6, BE3 | |
WASTE | Digital tracking and payment for waste disposal | BE1, BE2 |
Optimization of waste collection routes | BE1, BE2 |
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Fiscal, P.R.; Taratori, R.; Pacho, M.A.; Ioakimidis, C.S.; Koutra, S. A Strategic and Smart Environmental Assessment of Rapid Urbanization in Beijing. Energies 2021, 14, 5138. https://doi.org/10.3390/en14165138
Fiscal PR, Taratori R, Pacho MA, Ioakimidis CS, Koutra S. A Strategic and Smart Environmental Assessment of Rapid Urbanization in Beijing. Energies. 2021; 14(16):5138. https://doi.org/10.3390/en14165138
Chicago/Turabian StyleFiscal, Paulina Rodríguez, Rallou Taratori, Marie Abigail Pacho, Christos S. Ioakimidis, and Sesil Koutra. 2021. "A Strategic and Smart Environmental Assessment of Rapid Urbanization in Beijing" Energies 14, no. 16: 5138. https://doi.org/10.3390/en14165138
APA StyleFiscal, P. R., Taratori, R., Pacho, M. A., Ioakimidis, C. S., & Koutra, S. (2021). A Strategic and Smart Environmental Assessment of Rapid Urbanization in Beijing. Energies, 14(16), 5138. https://doi.org/10.3390/en14165138