Measuring the Spatial Allocation Rationality of Service Facilities of Residential Areas Based on Internet Map and Location-Based Service Data
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area and Data
2.2. The Assessment Methodology
2.3. The Construction Process of ASFC-RA
Program 1: Gaining service facilities of available service facilities capacity of residential areas (ASFC-RA) through Amap route planning API | |
1 | Input:the POI service facilities layer of one experimental area is a list of layer_s; the residential areas layer names layer_D |
2 | Input:the travel time costs threshold identification list is T=[t1,t2,……tS] |
3 | Output:a two-dimensional array of different types of service facilities in all the residential areas is named accessArray[D, S] |
4 | D = count of residential areas |
5 | S = count of service facilities types |
6 | fors = 0; s < S; s++ do |
7 | #Find out the service facilities of corresponding communities in S types of facilities |
8 | #Get the s service facilities layer deposited in layer_s |
9 | For j = 0; j < length(layer_s); j++ do |
10 | #Get the long-lat of the service facilities point j and save them into the facility |
11 | For I = 0; I < D; i++ do |
12 | #Get the longitude and latitude of the community i and store them into the residential area |
13 | #Request route planning API, return JSON object and store result, the request form is: #request.url(http://restAPI.amap.com/v3/direction/walking?origin=facility.X, #facility.Y&destination=residential area.X, residential #area.Y&output=json&key=<the key of users>) |
14 | #get the current path planning time in the result and store it into timeIJ |
15 | if timeIJ<T[s] then ## service facilities travel time costs |
16 | #Update the row i of the accessArray, and the s column object counts, accessArray[i, s]++ |
17 | returnaccessArray |
2.4. The Implementation Process of PDC-RA
2.5. The Measurement of SARSF-RA
3. Results
3.1. The ASFC-RA Results
3.2. The PDC-RA Results
3.3. The SARSF-RA Results
4. Discussion
Author Contributions
Funding
Conflicts of Interest
Appendix A
ID | Residential Area Name | Education Services | Employment Services | Leisure Services | Life Services | Medicine Services | Travel Services | Population Count | Building Area | Completion Year | Floors | |||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | LiRen Garden#2 | 0 | 0.680 | 0 | 22 | 1249 | 33 | 803 | 26 | 26 | 1976 | 43761 | 2012 | 18 |
2 | LiRen Garden#1 | 0.276 | 0.994 | 0.278 | 26 | 1411 | 35 | 1008 | 34 | 39 | 2888 | 365801 | 2010 | 18 |
3 | FuRunHuaYuan#1 | 0.559 | 0.857 | 0.652 | 27 | 1521 | 44 | 1170 | 41 | 59 | 2488 | 90012 | 2012 | 12 |
4 | FuAnHuaYuan #B | 0.614 | 1.000 | 0.614 | 29 | 1528 | 42 | 1314 | 43 | 60 | 2904 | 105389 | 2012 | 12 |
5 | FuAnHuaYuan #A | 0.606 | 0.733 | 0.827 | 30 | 1508 | 44 | 1290 | 40 | 57 | 2128 | 71925 | 2012 | 12 |
6 | HuaHuiYuan#3 | 0.81 | 0.782 | 1.035 | 31 | 1603 | 45 | 1392 | 44 | 100 | 2272 | 110903 | 2008 | 6 |
7 | HuaHuiYuan | 0.985 | 0.733 | 1.344 | 34 | 1608 | 48 | 1441 | 49 | 125 | 2129 | 145609 | 2008 | 6 |
8 | ZhangSheYuan#1 | 0.704 | 0.664 | 1.060 | 29 | 1554 | 44 | 1362 | 44 | 80 | 1928 | 69740 | 2012 | 12 |
9 | FuRunHuaYuan#3 | 0.501 | 0.328 | 1.528 | 26 | 1501 | 40 | 1273 | 40 | 57 | 952 | 43069 | 2012 | 12 |
10 | FuRunHuaYuan#2 | 0.514 | 0.672 | 0.765 | 26 | 1506 | 40 | 1289 | 41 | 57 | 1952 | 31860 | 2012 | 18 |
11 | HuaHuiYuan#2 | 0.83 | 0.433 | 1.919 | 33 | 1642 | 45 | 1311 | 42 | 103 | 1256 | 85329 | 2008 | 6 |
12 | HuiJingYuan | 0.917 | 0.342 | 2.684 | 34 | 1569 | 45 | 1424 | 49 | 117 | 992 | 40908 | 2009 | 6 |
13 | HuaHuiXinCun | 0.834 | 0.303 | 2.752 | 33 | 1572 | 45 | 1367 | 46 | 99 | 880 | 51238 | 2005 | 5 |
14 | Versailles Estate | 0.622 | 0.129 | 4.804 | 26 | 1529 | 42 | 1357 | 43 | 81 | 376 | 12711 | 2010 | 3 |
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Data Category | Dataset Name | Data Content | Data Application | Access Method |
---|---|---|---|---|
Internet map data | Route planning API | Three route planning methods, included driving, riding, and walking, requested opening API to obtain corresponding planned path. | Calculating travel time costs | Requesting from https://lbs.amap.com |
POI data | POI data was requested from Amap in BinHu District in 2018, including schools, banks, and restaurants. | Representing different service facilities | Requesting from https://lbs.amap.com | |
Basic geographic data | Amap platform provides remote sensing image to request. | As map background | Downloading from https://ditu.amap.com | |
LBS data | Tencent LBS data | Requesting real-time population locations of Tencent one time per hour from 9 April 2018 to 22 April 2018; attained 1,570,000 records. | Reflecting spatial distribution of real population | Crawling from https://heat.qq.com/ |
Classification | Service Name | Indicator Interpretation |
---|---|---|
Life | life service | Life service place, travel agency, information consultation center, ticket office, post office, express delivery, telecommunication business hall, office, water supply business hall, and electric power business hall |
shopping service | Shopping malls, convenience stores, home appliance electronics stores, supermarkets, home building materials markets, stationery stores, sports stores, shoes, hats and leather stores, and personal products/cosmetic stores | |
catering service | Catering-related places, Chinese restaurants, foreign restaurants, fast food restaurants, casual restaurant, cafes, tea houses, cold drink shops, pastry shops, and dessert shops | |
accommodation service | Accommodation services, hotels, and hotel guest houses | |
financial insurance service | Financial and insurance services, banks, automated teller machines (ATMs), insurance companies, securities companies, and finance companies | |
public utilities | Public toilets, funded shelters, service facilities, newsstands, and public telephones | |
business residence | Related business housing and residential areas | |
Education | science and culture service | Science and culture education sites, museums, convention centers, art galleries, libraries, science and technology museums, planetariums, cultural palaces, literary and art groups, media organizations, schools, research institutions, and training institutions |
Leisure | park facility | Comprehensive parks, zoos, botanical gardens, children’s parks, and gardens providing places for residents to enjoy, watch, relax, and enjoy scenic spots |
sports and leisure services | Sports and leisure service places, sports venues, entertainment venues, resorts, leisure venues, and theaters | |
Travel | parking lot and repair facility | Gas stations, car sales, car repairs, private and public parking lots, parking spaces, auto repair shops, automobile sales service shop |
transportation facilities service | Related airport, railway station, long-distance bus station, subway station, light rail station, bus station, shuttle bus station, parking lot, border port, taxi, ferry station, and ropeway station | |
road auxiliary facilities | Road auxiliary facilities, warning information, toll stations, service areas, traffic lights, and street signs | |
Medicine | medical facility | It mainly includes first-level, second-level, and third-level hospitals, community clinics, private clinics, private hospitals, pharmacies, general hospitals, specialist hospitals, and emergency centers |
Employment | public enterprise | Companies, factories, bases with agriculture, forestry, herds, and fish |
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Zhou, X.; Ding, Y.; Wu, C.; Huang, J.; Hu, C. Measuring the Spatial Allocation Rationality of Service Facilities of Residential Areas Based on Internet Map and Location-Based Service Data. Sustainability 2019, 11, 1337. https://doi.org/10.3390/su11051337
Zhou X, Ding Y, Wu C, Huang J, Hu C. Measuring the Spatial Allocation Rationality of Service Facilities of Residential Areas Based on Internet Map and Location-Based Service Data. Sustainability. 2019; 11(5):1337. https://doi.org/10.3390/su11051337
Chicago/Turabian StyleZhou, Xinxin, Yuan Ding, Changbin Wu, Jing Huang, and Chendi Hu. 2019. "Measuring the Spatial Allocation Rationality of Service Facilities of Residential Areas Based on Internet Map and Location-Based Service Data" Sustainability 11, no. 5: 1337. https://doi.org/10.3390/su11051337
APA StyleZhou, X., Ding, Y., Wu, C., Huang, J., & Hu, C. (2019). Measuring the Spatial Allocation Rationality of Service Facilities of Residential Areas Based on Internet Map and Location-Based Service Data. Sustainability, 11(5), 1337. https://doi.org/10.3390/su11051337