Singapore Soundscape Site Selection Survey (S5): Identification of Characteristic Soundscapes of Singapore via Weighted k-Means Clustering
Abstract
:1. Introduction
1.1. Background and Motivation
- crowdsourcing opinions from a large sample of local experts via the administration of a standardized questionnaire,
- accounting for the reliability of each local expert in the sample via the numerical weighting of each opinion, and
- summarizing the crowdsourced opinions via an automatic, replicable clustering algorithm,
1.2. Organization and Scope
- Section 2 provides a brief overview of work related to our study.
- Section 3 describes the study area, the questionnaire used to elucidate locations from the participants of the study, and details on the weighted k-means clustering method we used to obtain locations of the characteristic soundscapes from the locations elucidated from the participants.
- Section 4 presents the results of our proposed clustering method.
- Section 5 analyzes the clusters and characteristic soundscapes obtained to validate the method.
- Section 6 concludes our study and suggests possible directions for future work.
2. Related Work
3. Materials and Methods
3.1. Study Area and Context
- has resided in Singapore for at least 10 years, or
- is a Singapore Tourism Board (STB)-licensed tourist guide (STB-licensed tourist guides are required to undergo the training described at https://www.stb.gov.sg/content/stb/en/assistance-and-licensing/licensing-overview/tourist-guide-licence.html [accessed on 11 May 2022] before obtaining their license).
3.2. Participants
3.3. Questionnaire
3.4. Weight Assignment Accounting for Reliability
- denotes the reliability measure of the coordinates of the chosen location,
- denotes the sigmoid function,
- denotes the frequency weight for as coded by Table 2, and
- denotes the average duration of each visit to in minutes.
3.5. Clustering Method
- the latitude of the location ,
- the longitude of the location , and
- the weight, , associated with the location.
3.5.1. Standard k-means Clustering Method
Algorithm 1 Standard k-means clustering method | ||||||||
Inputs: | Set of points to be clustered Number of clusters | |||||||
Outputs: | Set of cluster centers Set of clusters , where for all and | |||||||
Initialization: | ||||||||
Random -element subset of | / / | Each subset chosen with equal probability. | ||||||
while not converged do | / / | Convergence is reached when remains | ||||||
unchanged for 1 iteration of the “while” loop. | ||||||||
fortodo | ||||||||
/ / | Assign points to the cluster whose center they are closest in Euclidean distance. | |||||||
/ / | Update cluster center as mean of all points in cluster. | |||||||
Return: |
3.5.2. Modification 1: Haversine Distance Metric
- denotes the haversine distance between two points and on a sphere,
- denotes the sphere radius (with [in km] assuming a spherical Earth),
- denotes the latitude of the point on the sphere,
- denotes the longitude of the point on the sphere,
- denotes the latitude of the point on the sphere, and
- denotes the longitude of the point on the sphere.
3.5.3. Modification 2: Cluster Center Initialization with k-Means++
Algorithm 2 Cluster center initialization with k-means++ (adapted from [32]) | ||||||||
Inputs: | Set of points to be clustered Number of clusters Distance metric | |||||||
Output: Set of initial cluster centers | ||||||||
Initialization: | ||||||||
/ / | Initialize set of cluster centers as empty set. | |||||||
/ / | is the distance from the point to its closest center in . | |||||||
/ / | is the probability that the point is chosen as an initial cluster center in . Probabilities are initialized uniformly. | |||||||
fortodo | ||||||||
/ / | Choose as a random point from , where is chosen with probability . | |||||||
/ / | Append to the set of cluster centers. | |||||||
fortodo | ||||||||
/ / | Update the distance from each point to its nearest cluster center in . | |||||||
fortodo | ||||||||
/ / | Update the new probability for each point using . | |||||||
Return: |
3.5.4. Modification 3: Cluster Center Computation with Weighted Means
- denotes the cluster center of the -th cluster,
- denotes the set of all points in the -th cluster,
- denotes the point with index ,
- denotes the weight of the point computed via Equation (1), and
- denotes the set of indices of all the points in the -th cluster.
4. Results
4.1. Optimal Number of Clusters
- denotes the set of clusters,
- denotes the number of clusters,
- denotes the set of all points in the -th cluster, and
- denotes the distance between two points and .
4.2. Cluster Centers
5. Discussion
5.1. Distribution of Cluster Centers
5.2. Characteristic Soundscapes
5.3. Limitations
6. Conclusions and Future Work
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
API | Application Programming Interface |
AUC | Area under curve |
CBD | Central Business District |
GPS | Global Positioning System |
ISO | International Organization for Standardization |
MRT | Mass rapid transit (train network) |
NTU | Nanyang Technological University (Singapore) |
SD | Standard deviation |
STB | Singapore Tourism Board |
URA | Urban Redevelopment Authority (Singapore) |
UK | United Kingdom |
USotW | Urban Soundscapes of the World (database) |
WNSS | Weinstein Noise Sensitivity Scale |
Appendix A. Questionnaire
- Considering public open spaces (e.g., streets, squares, parks, etc.) in the <Planning Region> of Singapore, where do you experience the soundscape to be most <Perceptual Attributes>?
- Coordinates of your chosen location.
- Please explain and elaborate on your choice of location. For example, you can indicate the typical time and day of the week, etc., that you find the location to have a soundscape that is <Perceptual Attributes>.
- How often do you visit your chosen location or pass by it on foot?
- How many times have you visited your chosen location or passed by it on foot?
- On average, how long do you spend at your chosen location or pass by it on foot?
Region | Latitude (Degrees) | Longitude (Degrees) | Description |
---|---|---|---|
Central Area (“CBD Area”) | 1.2830173 | 103.8513365 | Raffles Place MRT Station |
Central Region | 1.3199584 | 103.8259427 | Stevens MRT Station |
East Region | 1.3532359 | 103.9452235 | Tampines MRT Station |
North Region | 1.4273512 | 103.7931482 | Woodlands South MRT Station |
North-east Region | 1.3829481 | 103.8933582 | Buangkok MRT Station |
West Region | 1.3376415 | 103.6968990 | Pioneer MRT Station |
References
- ISO 12913-1:2014; Acoustics—Soundscape—Definition and Conceptual Framework. International Organization for Standardization: Geneva, Switzerland, 2014; ISBN 9780580783098.
- Torresin, S.; Albatici, R.; Aletta, F.; Babich, F.; Kang, J. Assessment Methods and Factors Determining Positive Indoor Soundscapes in Residential Buildings: A Systematic Review. Sustainability 2019, 11, 5290. [Google Scholar] [CrossRef] [Green Version]
- Lionello, M.; Aletta, F.; Kang, J. A systematic review of prediction models for the experience of urban soundscapes. Appl. Acoust. 2020, 170, 107479. [Google Scholar] [CrossRef]
- Yang, W.; Kang, J. Acoustic comfort evaluation in urban open public spaces. Appl. Acoust. 2005, 66, 211–229. [Google Scholar] [CrossRef]
- ISO 12913-3:2019; Acoustics—Soundscape–Part 3: Data Analysis. International Organization for Standardization: Geneva, Switzerland, 2019.
- Axelsson, Ö.; Nilsson, M.E.; Berglund, B. A principal components model of soundscape perception. J. Acoust. Soc. Am. 2010, 128, 2836–2846. [Google Scholar] [CrossRef]
- Axelsson, Ö. How to Measure Soundscape Quality. In Proceedings of the Euronoise 2015 Conference, Maastricht, The Netherlands, 1–3 June 2015; pp. 1477–1481. [Google Scholar]
- Puyana Romero, V.; Maffei, L.; Brambilla, G.; Ciaburro, G. Acoustic, visual and spatial indicators for the description of the soundscape of water front areas with and without road traffic flow. Int. J. Environ. Res. Public Health 2016, 13, 934. [Google Scholar] [CrossRef] [PubMed]
- Aumond, P.; Can, A.; De Coensel, B.; Botteldooren, D.; Ribeiro, C.; Lavandier, C. Modeling soundscape pleasantness using perceptual assessments and acoustic measurements along paths in urban context. Acta Acust. United Acust. 2017, 103, 430–443. [Google Scholar] [CrossRef] [Green Version]
- Fan, J.; Thorogood, M.; Pasquier, P. Emo-soundscapes: A dataset for soundscape emotion recognition. In Proceedings of the 7th International Conference Affective Computing and Intelligent Interacttion, San Antonio, TX, USA, 23–26 October 2017; pp. 196–201. [Google Scholar] [CrossRef]
- Font, F.; Roma, G.; Serra, X. Freesound technical demo. In Proceedings of the 21st ACM international Conference on Multimedia, Barcelona, Spain, 21–25 October 2013; pp. 411–412. [Google Scholar] [CrossRef]
- Puyana-Romero, V.; Ciaburro, G.; Brambilla, G.; Garzón, C.; Maffei, L. Representation of the soundscape quality in urban areas through colours. Noise Mapp. 2019, 6, 8–21. [Google Scholar] [CrossRef]
- Masullo, M.; Maffei, L.; Iachini, T.; Rapuano, M.; Cioffi, F.; Ruggiero, G.; Ruotolo, F. A questionnaire investigating the emotional salience of sounds. Appl. Acoust. 2021, 182, 108281. [Google Scholar] [CrossRef]
- Yang, W.; Makita, K.; Nakao, T.; Kanayama, N.; Machizawa, M.G.; Sasaoka, T.; Sugata, A.; Kobayashi, R.; Hiramoto, R.; Yamawaki, S.; et al. Affective auditory stimulus database: An expanded version of the International Affective Digitized Sounds (IADS-E). Behav. Res. Methods 2018, 50, 1415–1429. [Google Scholar] [CrossRef]
- Hasegawa, Y.; Lau, S.K. Comprehensive audio-visual environmental effects on residential soundscapes and satisfaction: Partial least square structural equation modeling approach. Landsc. Urban Plan. 2022, 220, 104351. [Google Scholar] [CrossRef]
- Aletta, F.; Oberman, T.; Axelsson, Ö.; Xie, H.; Zhang, Y.; Lau, S.K.; Tang, S.K.; Jambrošic, K.; de Coensel, B.; van den Bosch, K.; et al. Soundscape assessment: Towards a validated translation of perceptual attributes in different languages. In Proceedings of the Inter-Noise and Noise-Con Congress and Conference Proceedings, Seoul, Korea, 23–26 August 2020; Institute of Noise Control Engineering: Petaluma, CA, USA, 2020. [Google Scholar]
- Daniel, T.C. Whither scenic beauty? Visual landscape quality assessment in the 21st century. Landsc. Urban. Plan. 2001, 54, 267–281. [Google Scholar] [CrossRef]
- Pijanowski, B.C.; Villanueva-Rivera, L.J.; Dumyahn, S.L.; Farina, A.; Krause, B.L.; Napoletano, B.M.; Gage, S.H.; Pieretti, N. Soundscape ecology: The science of sound in the landscape. Bioscience 2011, 61, 203–216. [Google Scholar] [CrossRef] [Green Version]
- Schulte-Fortkamp, B.; Jordan, P. When soundscape meets architecture. Noise Mapp. 2016, 3, 216–231. [Google Scholar] [CrossRef] [Green Version]
- De Coensel, B.; Sun, K.; Botteldooren, D. Urban Soundscapes of the World: Selection and reproduction of urban acoustic environments with soundscape in mind. In Proceedings of the INTER-NOISE and NOISE-CON Congress and Conference Proceedings, Hong Kong, China, 27–30 August 2017; Institute of Noise Control Engineering: Petaluma, CA, USA, 2017. [Google Scholar]
- Mediastika, C.E.; Sudarsono, A.S.; Utami, S.S.; Fitri, I.; Drastiani, R.; Winandari, M.R.; Rahman, A.; Kusno, A.; Mustika, N.M.; Mberu, Y.B. The Sound of Indonesian Cities. In Proceedings of the IINTER-NOISE and NOISE-CON Congress and Conference Proceedings, Seoul, Korea, 23–26 August 2020; Institute of Noise Control Engineering: Petaluma, CA, USA, 2020. [Google Scholar]
- Yong Jeon, J.; Young Hong, J.; Jik Lee, P. Soundwalk approach to identify urban soundscapes individually. J. Acoust. Soc. Am. 2013, 134, 803–812. [Google Scholar] [CrossRef] [PubMed]
- Pla-Sacristán, E.; González-Díaz, I.; Martínez-Cortés, T.; Díaz-de-María, F. Finding landmarks within settled areas using hierarchical density-based clustering and meta-data from publicly available images. Expert Syst. Appl. 2019, 123, 315–327. [Google Scholar] [CrossRef]
- ISO 12913-2: 2018; Acoustics—Soundscape—Part. 2: Data Collection and Reporting Requirements. International Organization for Standardization: Geneva, Switzerland, 2018.
- Urban Redevelopment Authority Singapore Master Plan Written Statement. 2019. Available online: https://www.ura.gov.sg/-/media/Corporate/Planning/Master-Plan/MP19writtenstatement.pdf?la=en (accessed on 16 March 2022).
- Weinstein, N.D. Individual differences in reactions to noise: A longitudinal study in a college dormitory. J. Appl. Psychol. 1978, 63, 458–466. [Google Scholar] [CrossRef]
- Mitchell, A.; Oberman, T.; Aletta, F.; Kachlicka, M.; Lionello, M.; Erfanian, M.; Kang, J. Investigating urban soundscapes of the COVID-19 lockdown: A predictive soundscape modeling approach. J. Acoust. Soc. Am. 2021, 150, 4474–4488. [Google Scholar] [CrossRef]
- Woodcock, J.; Davies, W.J.; Cox, T.J. A cognitive framework for the categorisation of auditory objects in urban soundscapes. Appl. Acoust. 2017, 121, 56–64. [Google Scholar] [CrossRef]
- Hong, J.Y.; Ong, Z.T.; Lam, B.; Ooi, K.; Gan, W.S.; Kang, J.; Feng, J.; Tan, S.T. Effects of adding natural sounds to urban noises on the perceived loudness of noise and soundscape quality. Sci. Total Environ. 2020, 711, 134571. [Google Scholar] [CrossRef]
- Hastie, T.; Tibshirani, R.; Friedman, J. The Elements of Statistical Learning, 2nd ed.; Springer Science+Business Media, LLC: New York, NY, USA, 2009; Volume 103, ISBN 9780387848570. [Google Scholar]
- Flowers, C.; Le Tourneau, F.M.; Merchant, N.; Heidorn, B.; Ferriere, R.; Harwood, J. Looking for the -scape in the sound: Discriminating soundscapes categories in the Sonoran Desert using indices and clustering. Ecol. Indic. 2021, 127, 107805. [Google Scholar] [CrossRef]
- Arthur, D.; Vassilvitskii, S. K-means++: The advantages of careful seeding. In Proceedings of the Eighteenth Annual ACM-SIAM Symposium on Discrete Algorithms, New Orleans, LA, USA, 7–9 January 2007; pp. 1027–1035. [Google Scholar]
- Nielsen, F.; Nock, R. Total Jensen divergences: Definition, properties and clustering. In Proceedings of the 2015 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), Queensland, Australia, 19–24 April 2015. [Google Scholar]
- Alotaibi, Y. A New Meta-Heuristics Data Clustering Algorithm Based on Tabu Search and Adaptive Search Memory. Symmetry 2022, 14, 623. [Google Scholar] [CrossRef]
- Dunn, J.C. Well-separated clusters and optimal fuzzy partitions. J. Cybern. 1974, 4, 95–104. [Google Scholar] [CrossRef]
- Pita, A.; Rodriguez, F.J.; Navarro, J.M. Cluster analysis of urban acoustic environments on Barcelona sensor network data. Int. J. Environ. Res. Public Health 2021, 18, 8271. [Google Scholar] [CrossRef] [PubMed]
- Jeon, J.Y.; Hong, J.Y. Classification of urban park soundscapes through perceptions of the acoustical environments. Landsc. Urban. Plan. 2015, 141, 100–111. [Google Scholar] [CrossRef]
- Cartwright, M.; Cramer, J.; Mendez, A.E.M.; Wang, Y.; Wu, H.-H.; Lostanlen, V.; Fuentes, M.; Dove, G.; Mydlarz, C.; Salamon, J.; et al. SONYC-UST-V2: An Urban Sound Tagging Dataset with Spatiotemporal Context. arXiv 2020, arXiv:2009.05188. [Google Scholar]
- Schafer, R.M. The Tuning of the World; Alfred Knopf Inc.: New York, NY, USA, 1977; ISBN 0892814551. [Google Scholar]
- Sun, K.; Filipan, K.; Aletta, F.; Renterghem, T. Van Classifying urban public spaces according to their soundscape. In Proceedings of the 23rd International Congress on Acoustics, Aachen, Germany, 9–13 September 2019; pp. 6100–6105. [Google Scholar]
- Dumyahn, S.L.; Pijanowski, B.C. Soundscape conservation. Landsc. Ecol. 2011, 26, 1327–1344. [Google Scholar] [CrossRef]
- United Nations Division for Sustainable Development Goals. Transforming Our World: The 2030 Agenda for Sustainable Development; United Nations: New York, NY, USA, 2015. [Google Scholar]
- Mitchell, A.; Oberman, T.; Aletta, F.; Erfanian, M.; Kachlicka, M.; Lionello, M.; Kang, J. The Soundscape Indices (SSID) Protocol: A Method for Urban Soundscape Surveys—Questionnaires with Acoustical and Contextual Information. Appl. Sci. 2020, 10, 2397. [Google Scholar] [CrossRef] [Green Version]
- Abeßer, J.; Marco, G.; Clauß, T.; Zapf, D.; Kuhn, C.; Lukashevich, H.; Kuhnlenz, S.; Mimilakis, S. Urban Noise Monitoring in the Stadtlärm Project—A Field Report. In Proceedings of the Detection and Classification of Acoustic Scenes and Events, New York, NY, USA, 25–26 October 2019; pp. 3–6. [Google Scholar]
- Bello, J.P.; Silva, C.; Nov, O.; Luke Dubois, R.; Arora, A.; Salamon, J.; Mydlarz, C.; Doraiswamy, H. SONYC: A system for monitoring, analyzing, and mitigating urban noise pollution. Commun. ACM 2019, 62, 68–77. [Google Scholar] [CrossRef]
- Tan, E.L.; Karnapi, F.A.; Ng, L.J.; Ooi, K.; Gan, W.S. Extracting Urban Sound Information for Residential Areas in Smart Cities Using an End-to-End IoT System. IEEE Internet Things J. 2021, 8, 14308–14321. [Google Scholar] [CrossRef]
Study (Year) | Area(s) Stimuli Originated | Rationale for Choice | Perceptual Attribute(s) under Study |
---|---|---|---|
Axelsson et al. (2010) [6] | London (UK), Stockholm (Sweden) | Variety in overall sound pressure level, types of sound sources | Agreement with 116 different affective attributes (for example, “pleasant” and “calm”) |
Axelsson (2015) [7] | Sheffield, London, Brighton (UK) | Variety in types of urban and peri-urban areas | Agreement with adjectives “pleasant”, “vibrant”, “eventful”, “chaotic”, “annoying”, “monotonous”, “uneventful”, “calm” |
Puyana Romero et al. (2016) [8] | Naples (Italy) | Variety in conditions of road traffic flow | Perceived soundscape quality |
Aumond et al. (2017) [9] | Paris (France) | Variety in types of urban areas | Pleasantness |
Fan et al. (2017) [10] | Mixed (from Freesound [11]) | Variety in types of sound sources | Valence, arousal |
Puyana Romero et al. (2019) [12] | Naples (Italy) | Variety in types of urban spaces | Agreement with adjectives “pleasant”, “unpleasant”, “monotonous”, “exciting”, “eventful”, “uneventful”, “chaotic”, calm” |
Masullo et al. (2021) [13] | Mixed (from IADS-E database [14]) | Variety in types of urban sound sources | 2 sets of attributes (17 and 12 attributes) related to emotional salience |
Hasegawa and Lau (2022) [15] | Singapore (Singapore) | Presence of common noise sources and greenery, resident demographic similarity | Pleasantness, eventfulness, satisfaction |
Response (Number of Times Visited) | Frequency Weight |
---|---|
1 to 3 | 1 |
4 to 6 | 2 |
7 to 9 | 3 |
10 or more | 4 |
ID | Region | Latitude (Degrees) | Longitude (Degrees) | Description |
---|---|---|---|---|
A01 | CBD | 1.291598203 | 103.8465300 | Opposite Clarke Quay Shopping Mall |
A02 | East | 1.354207500 | 103.9435079 | Tampines Bus Interchange |
A03 | East | 1.363875914 | 103.9914004 | Changi Airport Terminal 1 |
A04 | Central | 1.263173177 | 103.8228356 | VivoCity Shopping Mall |
A05 | Central | 1.301498905 | 103.9049564 | Parkway Parade Shopping Mall |
A06 | Central | 1.311034361 | 103.7943141 | Holland Village Market & Food Centre |
A07 | Central | 1.350677442 | 103.8494603 | Junction 8 Shopping Mall |
A08 | North | 1.404012379 | 103.7934915 | Singapore Zoo (Ah Meng Restaurant) |
A09 | North | 1.429740500 | 103.8351859 | Yishun MRT Station |
A10 | North | 1.437221700 | 103.7861714 | Woodlands MRT Station |
A11 | North | 1.446914441 | 103.7301914 | Sungei Buloh Wetland Reserve (Mangrove Boardwalk) |
A12 | North-east | 1.392070753 | 103.8956615 | Compass One Shopping Mall |
A13 | West | 1.333243872 | 103.7414451 | Jurong East MRT Station |
A14 | West | 1.336767900 | 103.6941672 | Jurong West Sports Hall (facing Jurong West Street 93) |
A15 | West | 1.343433486 | 103.6351438 | Raffles Marina |
ID | Region | Latitude (Degrees) | Longitude (Degrees) | Description |
---|---|---|---|---|
B01 | CBD | 1.300102657 | 103.8459222 | Handy Road (Opposite Plaza Singapura Shopping Mall) |
B02 | East | 1.324737167 | 103.9306484 | Bedok Interchange Hawker Centre |
B03 | East | 1.359156559 | 103.9407174 | Tampines Central 7 (Road) |
B04 | East | 1.364476558 | 103.9915721 | Changi Airport Terminal 1 |
B05 | Central | 1.310991457 | 103.7947432 | Holland Village Market & Food Centre |
B06 | Central | 1.335196760 | 103.8844747 | Harrison Industrial Building |
B07 | Central | 1.350930707 | 103.8480879 | Bishan MRT Station |
B08 | North | 1.429664842 | 103.8341680 | S-11 Yishun 744 Hawker Centre |
B09 | North | 1.442881682 | 103.7756387 | Opposite SPC Admiralty (Petrol Station) |
B10 | North-east | 1.391455032 | 103.8955306 | Sengkang Bus Interchange |
B11 | West | 1.333995645 | 103.6346393 | Intersection of Tuas West Drive & Pioneer Road |
B12 | West | 1.337641500 | 103.7036367 | Intersection of Jurong West Street 63 & Jurong West Street 64 |
B13 | West | 1.334852761 | 103.7461658 | IMM Shopping Mall |
B14 | West | 1.379686712 | 103.7606068 | Intersection of Woodlands Road & Choa Chu Kang Road |
ID | Region | Latitude (Degrees) | Longitude (Degrees) | Description |
---|---|---|---|---|
C01 | CBD | 1.290393318 | 103.8510017 | National Gallery Singapore (Museum) |
C02 | East | 1.362116882 | 103.9467685 | Tampines Eco Green Park |
C03 | East | 1.388507653 | 103.9884539 | Changi Beach Park |
C04 | Central | 1.301187849 | 103.9156572 | East Coast Park (Area C) |
C05 | Central | 1.320559055 | 103.8162867 | Botanic Gardens Eco Lake |
C06 | North | 1.404355599 | 103.8036195 | Upper Seletar Reservoir |
C07 | North | 1.441122864 | 103.7228199 | Sungei Buloh Wetland Reserve (Buloh Besar River) |
C08 | North | 1.446485425 | 103.7805025 | Admiralty Park |
C09 | North | 1.451390510 | 103.8405410 | Sembawang Park |
C10 | North-east | 1.374836700 | 103.8455383 | Ang Mo Kio Town Garden West |
C11 | North-east | 1.408367898 | 103.9072628 | Punggol Waterway Park |
C12 | West | 1.334123398 | 103.7277980 | Jurong Lake Gardens |
C13 | West | 1.344436500 | 103.6339522 | Johor Straits Lighthouse |
C14 | West | 1.348941989 | 103.6876865 | NTU Sports and Recreation Centre |
C15 | West | 1.354816300 | 103.7762985 | Bukit Timah Hill Summit |
ID | Region | Latitude (Degrees) | Longitude (Degrees) | Description |
---|---|---|---|---|
D01 | CBD | 1.287693895 | 103.8514652 | Asian Civilisations Museum |
D02 | East | 1.321819702 | 103.9144639 | Jalan Senyum (Road) |
D03 | East | 1.342467129 | 103.9633338 | Singapore University of Technology and Design Staff Housing |
D04 | East | 1.372735405 | 103.9496974 | White Sands Shopping Mall |
D05 | Central | 1.305542629 | 103.8222091 | Napier Road |
D06 | Central | 1.336814235 | 103.7931607 | The Grandstand Shopping Mall |
D07 | Central | 1.344033838 | 103.8470656 | Bishan Harmony Park |
D08 | North | 1.407594732 | 103.7576143 | Mandai Estate |
D09 | North | 1.417440810 | 103.8332204 | Khatib MRT Station |
D10 | North | 1.443074739 | 103.7904874 | Woodlands North Plaza |
D11 | North | 1.448458900 | 103.8223306 | Intersection of Canberra Road and Old Nelson Road |
D12 | North-east | 1.358085773 | 103.8887448 | Hougang Block 236 (Residential Building) |
D13 | North-east | 1.399313682 | 103.8852278 | Sengkang Riverside Park |
D14 | West | 1.282380986 | 103.6306377 | Tuas South Avenue 7 |
D15 | West | 1.321123540 | 103.7405868 | Teban Neighborhood Park |
D16 | West | 1.332750479 | 103.6394783 | Tuas West Road MRT Station |
D17 | West | 1.336054064 | 103.6840244 | Singapore Discovery Centre (Museum) |
D18 | West | 1.391549335 | 103.6987229 | Lim Chu Kang Road |
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Ooi, K.; Lam, B.; Hong, J.-Y.; Watcharasupat, K.N.; Ong, Z.-T.; Gan, W.-S. Singapore Soundscape Site Selection Survey (S5): Identification of Characteristic Soundscapes of Singapore via Weighted k-Means Clustering. Sustainability 2022, 14, 7485. https://doi.org/10.3390/su14127485
Ooi K, Lam B, Hong J-Y, Watcharasupat KN, Ong Z-T, Gan W-S. Singapore Soundscape Site Selection Survey (S5): Identification of Characteristic Soundscapes of Singapore via Weighted k-Means Clustering. Sustainability. 2022; 14(12):7485. https://doi.org/10.3390/su14127485
Chicago/Turabian StyleOoi, Kenneth, Bhan Lam, Joo-Young Hong, Karn N. Watcharasupat, Zhen-Ting Ong, and Woon-Seng Gan. 2022. "Singapore Soundscape Site Selection Survey (S5): Identification of Characteristic Soundscapes of Singapore via Weighted k-Means Clustering" Sustainability 14, no. 12: 7485. https://doi.org/10.3390/su14127485
APA StyleOoi, K., Lam, B., Hong, J. -Y., Watcharasupat, K. N., Ong, Z. -T., & Gan, W. -S. (2022). Singapore Soundscape Site Selection Survey (S5): Identification of Characteristic Soundscapes of Singapore via Weighted k-Means Clustering. Sustainability, 14(12), 7485. https://doi.org/10.3390/su14127485