Mobile Application to Provide Traffic Congestion Estimates and Tourism Spots to Promote Additional Stopovers
Abstract
:1. Introduction
2. Related Work
3. Methods
3.1. Experimental Overview
3.2. Application Requirements
3.3. Application Use and Data Acquisition Flow
3.4. Application Implementation
4. Results and Discussion
4.1. Participants
4.2. Analysis of App Operations Logs
4.3. Analysis of Questionnaire Results and Travel Trajectory
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Attributes | Number | Percentage | |
---|---|---|---|
Gender | Male | 53 | 73.6% |
Female | 19 | 26.4% | |
Age | 20s | 8 | 11.1% |
30s | 17 | 23.6% | |
40s | 19 | 26.4% | |
50s | 19 | 26.4% | |
60s | 8 | 11.1% | |
70s or more | 1 | 1.4% | |
Companion | Traveling alone | 7 | 9.7% |
Family with children | 30 | 41.7% | |
Family without children | 27 | 37.5% | |
Friends | 7 | 9.7% | |
Others | 1 | 1.4% | |
Purpose of travel | Sightseeing | 56 | 77.8% |
Homecoming/visiting friends | 11 | 15.3% | |
Business | 0 | 0.0% | |
Others | 5 | 6.9% |
Operation Type | Number of Operations | Number of Operators | Average Number of Operations |
---|---|---|---|
Route search | 907 | 60 | 15.12 |
Route choice | 234 | 58 | 4.03 |
Spot check | 341 | 57 | 5.98 |
Spot choice | 144 | 14 | 10.29 |
Route check | 19 | 9 | 2.11 |
Participant | Probe Data Recorded | Shortened Travel Time Min) | Chosen Option in the Application’s Operation Logs | Actual Behavior | Consistency of Chosen Option and Actual Behavior |
---|---|---|---|---|---|
#1 | Yes | 2.5 | Depart now | No stopover | Yes |
#2 | Yes | 22.1 | Depart later | Additional stopover | Yes |
#3 | No data | 3.3 | Depart later | Additional stopover | Yes |
#4 | Yes | 1.3 | Depart now | No stopover | Yes |
#5 | Yes | 2.2 | Depart now | No stopover | Yes |
#6 | Yes | 26.9 | Depart later | Additional stopover | Yes |
#7 | Yes | 10.4 | Depart now | No stopover | Yes |
#8 | Yes | 4.6 | Depart later | Additional stopover | Yes |
#9 | Yes | 1.5 | Depart later | No stopover | No |
#10 | No data | 4.1 | Depart now | Additional stopover | No |
#11 | No data | 6.2 | Depart now | No stopover | Yes |
#12 | Yes | 16.7 | Depart now | No stopover | Yes |
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Share and Cite
Aoyagi, S.; Le, Y.; Shimizu, T.; Takahashi, K. Mobile Application to Provide Traffic Congestion Estimates and Tourism Spots to Promote Additional Stopovers. Future Internet 2020, 12, 83. https://doi.org/10.3390/fi12050083
Aoyagi S, Le Y, Shimizu T, Takahashi K. Mobile Application to Provide Traffic Congestion Estimates and Tourism Spots to Promote Additional Stopovers. Future Internet. 2020; 12(5):83. https://doi.org/10.3390/fi12050083
Chicago/Turabian StyleAoyagi, Saizo, Yiping Le, Tetsuo Shimizu, and Kazuki Takahashi. 2020. "Mobile Application to Provide Traffic Congestion Estimates and Tourism Spots to Promote Additional Stopovers" Future Internet 12, no. 5: 83. https://doi.org/10.3390/fi12050083
APA StyleAoyagi, S., Le, Y., Shimizu, T., & Takahashi, K. (2020). Mobile Application to Provide Traffic Congestion Estimates and Tourism Spots to Promote Additional Stopovers. Future Internet, 12(5), 83. https://doi.org/10.3390/fi12050083