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South African Emme2 Users Conference 10-11 September 2004 Winterveld Mabopane Rooiwal Garankuwa Pretoria TSHWANE TRANSPORT DEMAND MODEL Kameeldrift Hartbeespoort Centurion Midrand Presented by: CM Olivier (CTMM) CONTENTS • MODEL • LAND USE • TRAFFIC ZONING AND TRANSPORT NETWORKS • TRIP GENERATION AND DISRIBUTION • MODAL SPLIT • LESSONS LEARNED • CONCLUSIONS MODEL DATA CPTR ODHIS RP & SP RSI’s Traffic Counts TT Surveys MODEL UTILIZATION MODEL DATA ZONES TRIP GENERATION ATTRACTION PRIVATE NETWORK TRIP DISTRIBUTION PUBLIC TRANSPORT NETWORK MODAL SPLIT CPTR ODHIS RP & SP RSI’s EXTERNAL TRIPS Traffic Counts TT Surveys UTILIZATION MODEL TRIP ASSIGNMENT CALIBRATION Done first for free flow conditions Then for congested conditions MODEL DATA ZONES TRIP GENERATION ATTRACTION PRIVATE NETWORK TRIP DISTRIBUTION CPTR ODHIS RP & SP UTILIZATION MODEL PUBLIC TRANSPORT NETWORK CALIBRATION Land Use Network MODAL SPLIT Public Trans. RSI’s EXTERNAL TRIPS Traffic Counts TT Surveys TRIP ASSIGNMENT Not app.. POPULATION & EMPLOYMENT • Population derived from: – Flats, duplex, simplex & sectional titles – Formal & informal houses – Hostels & single people • Population divided into: – Economic Active = 910 800 – Economic non-active=1 140 500 • • • • • Age < 15 years Scholar/full time student Housewife Pensioner Other – Total =2 051 300 – Nett. Inflow of 69 500 workers • Employment divided into: – Formal = 630 200 – Informal = 103 300 • • • • • • • • • Retail Office Industrial Ware house Local serving Other inside workers Agriculture/mining Construction Transport • Domestics • Informal at home, at work – Unemployed = 246 800 • Unemployed at home, ?work – Total = 980 300 TRIP CHAINS RECORDED Trip Description No Trip chain 1 13 Home-Education 8 588 41.241 41.241 2 12 Home-Work 7 737 37.154 78.395 3 14 Home-Shop 1 091 5.239 83.634 4 16 Home-Day mother 692 3.323 86.957 5 15 Home-Other 476 2.286 89.243 6 132 Home-Education-Work 329 1.580 90.823 7 18 Home-Friends house 240 1.153 91.976 8 131 Home-Education-Home 238 1.143 93.119 9 141 Home-Shop-Home 126 0.605 93.724 10 162 Home-Day mother-Work 122 0.586 94.309 212 Freq Total 20 824 % Of Total Cum% 100.000 ZONES • Total zones = 756 • 704 internal & 52 external • Zones were developed according to: – Homogeneity – Maximum number of Private vehicle Public transport person trips for target year 2020 – Zones must fit within GTS2000 zones • Zones were aggregated into: – 60 int+10 ext sub regions – & 19 functional areas for modeling & reporting purposes PRIVATE NETWORK • Expand network to cover area • Transfer bus only links to private network • Correct the network based on collective knowledge • Had to verify according to aerial photographs • Had to travel parts of the network • Correct network geographically PUBLIC TRANPORT NETWORK (1) • Major problems were experienced with CPTR data • The route data does not cover the whole study area • Bus route data – – – – – Some routes were incomplete Directions changes along routes 650 routes had to be corrected by hand Only 13% of the routes had time tables Only 13% of the routes had passenger volumes • Taxi route data – More than two thirds of the routes were only bits & pieces – taxi data were therefore discarded • Rail data – Was not part of the CPTR data PUBLIC TRANPORT NETWORK (3) • Rail – Railway lines from GIS – No operational data -> use previous model’s data • Bus – Route data based on CPTR – Aggregated – Operational data from CPTR and guessed • Taxi – Synthetic hub & spoke system – Operational data guessed – Not used – additional assignment • Walk – On all streets in residential and employment areas – At major transfer areas PUBLIC TRANSPORT NETWORK (2) OPERATOR Taxi Atteridgeville Bothlaba Gare Mamelodi Pretoria PUTCO Distribution PUTCO Ekangala PUTCO Homelands PUTCO Soshanguve Thari TOTAL ROUTES ROUTES BEFORE AFTER 696 83 154 90 87 327 180 8 547 67 46 2 285 462 68 114 77 77 283 165 6 82 59 26 1419 SEGMENTS SEGMENTS BEFORE AFTER 18 3 11 5 6 16 10 392 079 337 853 336 673 958 536 27 977 2 749 2 535 106 725 13 2 8 4 6 14 9 176 579 197 912 087 056 393 402 4 455 2 398 2 085 67 740 TRIP GENERATION & ATTRACTION (1) • Start with activity based approach – Too many market segments – End with 5 trip purposes (2 two leg trip chains) • Accept statistic reliable trip generation rates: – Rates based on sub area, functional area or PDI/non-PDI areas – Separate rates for car users and non-car users • Trip generation & attraction is done in EXCEL – Reasons • Socio-economic data, rates and number of trips on one spreadsheet • Easy to balance production & attractions • Easy to determine the effect of assuming rates for external trips & secondary study area • Automate the calculation process for future scenarios MODAL SPLIT (1) • • • • Multi Nomial Logit model Hierarchical split Done per group and per trip purpose Utilities are based on the following variables: – – – – – – – – – – – Trip distance Personal income Household income Population density Employment density Population & employment mix Walk time Transfer time Total travel time Fare Historical choice MODAL SPLIT (2) Combine Without Car & With Car per trip purpose Home-based work person trips Non Vehicle Vehicle Primary Car Public Transport Secondary Rail Tertiary Bus Taxi LESSONS LEARNT - Consultant • Expectations must be in line with the budget & available data • Don’t try to save money by scaling down on: – surveys – tasks • Don’t interrupt the process • Data collection not for modeling purposes, but to be used for modeling purposes does not work • The purpose(s) of the model must be clear • The accuracy of the model must be in line with the purpose(s) & available data • Authority must have a modeler • Simple easy to use models stand better chance to be used than complicated and clumsy models LESSONS LEARNT - Client • Ensure fully committed budget before appointments • Evaluate available data in advance – Comprehensiveness – Mistakes & Format – Pilot study may be needed • Don’t be too ambiguous – start with simplified model • Data in general are expensive – Make sure that data are collected for all important processes dependant on the data – Modelers should drive the data collection process – Design model before planning data collection • A well designed public transport model needs: – – – – Proper survey procedures (checks & balances) Comprehensive data, including agreements & contracts All public transport modes included Sufficient resources CONCLUSIONS In conclusion it can be stated/confirmed that: • Several draw backs were experienced throughout the project • This resulted in unexpected delays & over expenditure of the project • The negative effect of insufficient PT data were overcome to such an extend that • A reasonable model could be developed and calibrated THANK YOU