FIGURE 1. Estimating residence zones and activity zones of passengers
FIGURE 3. The cumulative distribution of duration for commute and school in survey data
FIGURE 4. Spatial distribution of estimated population of residence zones (a) and activity zones (b)
FIGURE 5. Comparing deparutre times of smartcard data and survey data
FIGURE 6. Comparing the travel times of between smartcard data and survey data
FIGURE 2. Determining university zones
TABLE 1. An example of smartcard data
TABLE 2. The variables in the algorithm
TABLE 3. Rules for estimating trip purposes
TABLE 4. Smartcard data with trip purposes estimated
TABLE 5. Comparison of travel ratio by trip purpose between smartcard data and survey data
참고문헌
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