SlideShare a Scribd company logo
1 of 1
Download to read offline
ECWAY TECHNOLOGIES
IEEE PROJECTS & SOFTWARE DEVELOPMENTS
OUR OFFICES @ CHENNAI / TRICHY / KARUR / ERODE / MADURAI / SALEM / COIMBATORE
CELL: +91 98949 17187, +91 875487 2111 / 3111 / 4111 / 5111 / 6111
VISIT: www.ecwayprojects.com MAIL TO: ecwaytechnologies@gmail.com

T-Drive Enhancing Driving Directions with Taxi Drivers’ Intelligence

ABSTRACT:

This paper presents a smart driving direction system leveraging the intelligence of experienced
drivers. In this system, GPS-equipped taxis are employed as mobile sensors probing the traffic
rhythm of a city and taxi drivers’ intelligence in choosing driving directions in the physical
world.

We propose a time-dependent landmark graph to model the dynamic traffic pattern as well as the
intelligence of experienced drivers so as to provide a user with the practically fastest route to a
given destination at a given departure time. Then, a Variance-Entropy-Based Clustering
approach is devised to estimate the distribution of travel time between two landmarks in different
time slots. Based on this graph, we design a two-stage routing algorithm to compute the
practically fastest and customized route for end users.

We build our system based on a real-world trajectory data set generated by over 33,000 taxis in a
period of three months, and evaluate the system by conducting both synthetic experiments and
in-the-field evaluations. As a result, 60- 70 percent of the routes suggested by our method are
faster than the competing methods, and 20 percent of the routes share the same results. On
average, 50 percent of our routes are at least 20 percent faster than the competing approaches.

More Related Content

What's hot

Agi For Space Mission Analysis And Design
Agi For Space Mission Analysis And DesignAgi For Space Mission Analysis And Design
Agi For Space Mission Analysis And Designdiogoarodrigues
 
TC SMART MAPS - A 10 Years Journey with FME
TC SMART MAPS - A 10 Years Journey with FMETC SMART MAPS - A 10 Years Journey with FME
TC SMART MAPS - A 10 Years Journey with FMESafe Software
 
3 d express_coach
3 d express_coach3 d express_coach
3 d express_coachtruongk
 
Online/Offline Lane Change Events Detection Algorithms
Online/Offline Lane Change Events Detection AlgorithmsOnline/Offline Lane Change Events Detection Algorithms
Online/Offline Lane Change Events Detection AlgorithmsFeras Tanan
 
Toward a resilient prediction system for non-uniform traffic data
Toward a resilient prediction system for non-uniform traffic data Toward a resilient prediction system for non-uniform traffic data
Toward a resilient prediction system for non-uniform traffic data Osamu Masutani
 

What's hot (7)

Diya Resume
Diya ResumeDiya Resume
Diya Resume
 
Agi For Space Mission Analysis And Design
Agi For Space Mission Analysis And DesignAgi For Space Mission Analysis And Design
Agi For Space Mission Analysis And Design
 
TC SMART MAPS - A 10 Years Journey with FME
TC SMART MAPS - A 10 Years Journey with FMETC SMART MAPS - A 10 Years Journey with FME
TC SMART MAPS - A 10 Years Journey with FME
 
Integration of Land Use & Transportation Planning in the SMART Plan
Integration of Land Use & Transportation Planning in the SMART PlanIntegration of Land Use & Transportation Planning in the SMART Plan
Integration of Land Use & Transportation Planning in the SMART Plan
 
3 d express_coach
3 d express_coach3 d express_coach
3 d express_coach
 
Online/Offline Lane Change Events Detection Algorithms
Online/Offline Lane Change Events Detection AlgorithmsOnline/Offline Lane Change Events Detection Algorithms
Online/Offline Lane Change Events Detection Algorithms
 
Toward a resilient prediction system for non-uniform traffic data
Toward a resilient prediction system for non-uniform traffic data Toward a resilient prediction system for non-uniform traffic data
Toward a resilient prediction system for non-uniform traffic data
 

Viewers also liked

Dotnet quality-differentiated video multicast in multirate wireless networks
Dotnet  quality-differentiated video multicast in multirate wireless networksDotnet  quality-differentiated video multicast in multirate wireless networks
Dotnet quality-differentiated video multicast in multirate wireless networksEcwaytech
 
Dotnet importance of coherence protocols with network applications on multic...
Dotnet  importance of coherence protocols with network applications on multic...Dotnet  importance of coherence protocols with network applications on multic...
Dotnet importance of coherence protocols with network applications on multic...Ecwaytech
 
Dotnet harvesting-aware energy management for time-critical wireless sensor ...
Dotnet  harvesting-aware energy management for time-critical wireless sensor ...Dotnet  harvesting-aware energy management for time-critical wireless sensor ...
Dotnet harvesting-aware energy management for time-critical wireless sensor ...Ecwaytech
 
Dotnet in-network estimation with delay constraints in wireless sensor networks
Dotnet  in-network estimation with delay constraints in wireless sensor networksDotnet  in-network estimation with delay constraints in wireless sensor networks
Dotnet in-network estimation with delay constraints in wireless sensor networksEcwaytech
 
Dotnet supporting search-as-you-type using sql in databases
Dotnet  supporting search-as-you-type using sql in databasesDotnet  supporting search-as-you-type using sql in databases
Dotnet supporting search-as-you-type using sql in databasesEcwaytech
 
Dotnet toward a statistical framework for source anonymity in sensor networks
Dotnet  toward a statistical framework for source anonymity in sensor networksDotnet  toward a statistical framework for source anonymity in sensor networks
Dotnet toward a statistical framework for source anonymity in sensor networksEcwaytech
 
Dogum günü olanlara yaz d
Dogum günü olanlara yaz dDogum günü olanlara yaz d
Dogum günü olanlara yaz defeagbaba
 
Dotnet microarchitecture of a coarse-grain out-of-order superscalar processor
Dotnet  microarchitecture of a coarse-grain out-of-order superscalar processorDotnet  microarchitecture of a coarse-grain out-of-order superscalar processor
Dotnet microarchitecture of a coarse-grain out-of-order superscalar processorEcwaytech
 
Dotnet dynamic coverage of mobile sensor networks
Dotnet  dynamic coverage of mobile sensor networksDotnet  dynamic coverage of mobile sensor networks
Dotnet dynamic coverage of mobile sensor networksEcwaytech
 
Dotnet toward privacy preserving and collusion resistance in a location proo...
Dotnet  toward privacy preserving and collusion resistance in a location proo...Dotnet  toward privacy preserving and collusion resistance in a location proo...
Dotnet toward privacy preserving and collusion resistance in a location proo...Ecwaytech
 
Dotnet power allocation for statistical qo s provisioning in opportunistic m...
Dotnet  power allocation for statistical qo s provisioning in opportunistic m...Dotnet  power allocation for statistical qo s provisioning in opportunistic m...
Dotnet power allocation for statistical qo s provisioning in opportunistic m...Ecwaytech
 

Viewers also liked (11)

Dotnet quality-differentiated video multicast in multirate wireless networks
Dotnet  quality-differentiated video multicast in multirate wireless networksDotnet  quality-differentiated video multicast in multirate wireless networks
Dotnet quality-differentiated video multicast in multirate wireless networks
 
Dotnet importance of coherence protocols with network applications on multic...
Dotnet  importance of coherence protocols with network applications on multic...Dotnet  importance of coherence protocols with network applications on multic...
Dotnet importance of coherence protocols with network applications on multic...
 
Dotnet harvesting-aware energy management for time-critical wireless sensor ...
Dotnet  harvesting-aware energy management for time-critical wireless sensor ...Dotnet  harvesting-aware energy management for time-critical wireless sensor ...
Dotnet harvesting-aware energy management for time-critical wireless sensor ...
 
Dotnet in-network estimation with delay constraints in wireless sensor networks
Dotnet  in-network estimation with delay constraints in wireless sensor networksDotnet  in-network estimation with delay constraints in wireless sensor networks
Dotnet in-network estimation with delay constraints in wireless sensor networks
 
Dotnet supporting search-as-you-type using sql in databases
Dotnet  supporting search-as-you-type using sql in databasesDotnet  supporting search-as-you-type using sql in databases
Dotnet supporting search-as-you-type using sql in databases
 
Dotnet toward a statistical framework for source anonymity in sensor networks
Dotnet  toward a statistical framework for source anonymity in sensor networksDotnet  toward a statistical framework for source anonymity in sensor networks
Dotnet toward a statistical framework for source anonymity in sensor networks
 
Dogum günü olanlara yaz d
Dogum günü olanlara yaz dDogum günü olanlara yaz d
Dogum günü olanlara yaz d
 
Dotnet microarchitecture of a coarse-grain out-of-order superscalar processor
Dotnet  microarchitecture of a coarse-grain out-of-order superscalar processorDotnet  microarchitecture of a coarse-grain out-of-order superscalar processor
Dotnet microarchitecture of a coarse-grain out-of-order superscalar processor
 
Dotnet dynamic coverage of mobile sensor networks
Dotnet  dynamic coverage of mobile sensor networksDotnet  dynamic coverage of mobile sensor networks
Dotnet dynamic coverage of mobile sensor networks
 
Dotnet toward privacy preserving and collusion resistance in a location proo...
Dotnet  toward privacy preserving and collusion resistance in a location proo...Dotnet  toward privacy preserving and collusion resistance in a location proo...
Dotnet toward privacy preserving and collusion resistance in a location proo...
 
Dotnet power allocation for statistical qo s provisioning in opportunistic m...
Dotnet  power allocation for statistical qo s provisioning in opportunistic m...Dotnet  power allocation for statistical qo s provisioning in opportunistic m...
Dotnet power allocation for statistical qo s provisioning in opportunistic m...
 

Similar to Dotnet t-drive enhancing driving directions with taxi drivers’ intelligence

Cloudsim t-drive enhancing driving directions with taxi drivers’ intelligence
Cloudsim  t-drive enhancing driving directions with taxi drivers’ intelligenceCloudsim  t-drive enhancing driving directions with taxi drivers’ intelligence
Cloudsim t-drive enhancing driving directions with taxi drivers’ intelligenceecway
 
Java t-drive enhancing driving directions with taxi drivers’ intelligence
Java  t-drive enhancing driving directions with taxi drivers’ intelligenceJava  t-drive enhancing driving directions with taxi drivers’ intelligence
Java t-drive enhancing driving directions with taxi drivers’ intelligenceecwayerode
 
T drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceT drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceEcway Technologies
 
Java t-drive enhancing driving directions with taxi drivers’ intelligence
Java  t-drive enhancing driving directions with taxi drivers’ intelligenceJava  t-drive enhancing driving directions with taxi drivers’ intelligence
Java t-drive enhancing driving directions with taxi drivers’ intelligenceEcway Technologies
 
Android t-drive enhancing driving directions with taxi drivers’ intelligence
Android  t-drive enhancing driving directions with taxi drivers’ intelligenceAndroid  t-drive enhancing driving directions with taxi drivers’ intelligence
Android t-drive enhancing driving directions with taxi drivers’ intelligenceecway
 
T drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceT drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceEcway Technologies
 
Dotnet t-drive enhancing driving directions with taxi drivers’ intelligence
Dotnet  t-drive enhancing driving directions with taxi drivers’ intelligenceDotnet  t-drive enhancing driving directions with taxi drivers’ intelligence
Dotnet t-drive enhancing driving directions with taxi drivers’ intelligenceEcway Technologies
 
T drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceT drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceJPINFOTECH JAYAPRAKASH
 
T drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceT drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceIEEEFINALYEARPROJECTS
 
JAVA 2013 IEEE DATAMINING PROJECT T drive enhancing driving directions with t...
JAVA 2013 IEEE DATAMINING PROJECT T drive enhancing driving directions with t...JAVA 2013 IEEE DATAMINING PROJECT T drive enhancing driving directions with t...
JAVA 2013 IEEE DATAMINING PROJECT T drive enhancing driving directions with t...IEEEGLOBALSOFTTECHNOLOGIES
 
A Simulation-Based Dynamic Traffic Assignment Model With Combined Modes
A Simulation-Based Dynamic Traffic Assignment Model With Combined ModesA Simulation-Based Dynamic Traffic Assignment Model With Combined Modes
A Simulation-Based Dynamic Traffic Assignment Model With Combined ModesAllison Koehn
 
DYNAMIC RESOURCE ALLOCATION IN ROAD TRANSPORT SECTOR USING MOBILE CLOUD COMPU...
DYNAMIC RESOURCE ALLOCATION IN ROAD TRANSPORT SECTOR USING MOBILE CLOUD COMPU...DYNAMIC RESOURCE ALLOCATION IN ROAD TRANSPORT SECTOR USING MOBILE CLOUD COMPU...
DYNAMIC RESOURCE ALLOCATION IN ROAD TRANSPORT SECTOR USING MOBILE CLOUD COMPU...IAEME Publication
 
Smart Mobility
Smart MobilitySmart Mobility
Smart MobilityinLabFIB
 
Dynamic resource allocation in road transport sector using mobile cloud compu...
Dynamic resource allocation in road transport sector using mobile cloud compu...Dynamic resource allocation in road transport sector using mobile cloud compu...
Dynamic resource allocation in road transport sector using mobile cloud compu...IAEME Publication
 
Inter vehicular communication using packet network theory
Inter vehicular communication using packet network theoryInter vehicular communication using packet network theory
Inter vehicular communication using packet network theoryeSAT Publishing House
 
Simulation Based Analysis of Bee Swarm Inspired Hybrid Routing Protocol Param...
Simulation Based Analysis of Bee Swarm Inspired Hybrid Routing Protocol Param...Simulation Based Analysis of Bee Swarm Inspired Hybrid Routing Protocol Param...
Simulation Based Analysis of Bee Swarm Inspired Hybrid Routing Protocol Param...Editor IJCATR
 
Neural Network Based Parking via Google Map Guidance
Neural Network Based Parking via Google Map GuidanceNeural Network Based Parking via Google Map Guidance
Neural Network Based Parking via Google Map GuidanceIJERA Editor
 
Driving cycle tracking device development and analysis on route-to-work for K...
Driving cycle tracking device development and analysis on route-to-work for K...Driving cycle tracking device development and analysis on route-to-work for K...
Driving cycle tracking device development and analysis on route-to-work for K...TELKOMNIKA JOURNAL
 
Real time vehicle counting in complex scene for traffic flow estimation using...
Real time vehicle counting in complex scene for traffic flow estimation using...Real time vehicle counting in complex scene for traffic flow estimation using...
Real time vehicle counting in complex scene for traffic flow estimation using...Journal Papers
 

Similar to Dotnet t-drive enhancing driving directions with taxi drivers’ intelligence (20)

Cloudsim t-drive enhancing driving directions with taxi drivers’ intelligence
Cloudsim  t-drive enhancing driving directions with taxi drivers’ intelligenceCloudsim  t-drive enhancing driving directions with taxi drivers’ intelligence
Cloudsim t-drive enhancing driving directions with taxi drivers’ intelligence
 
Java t-drive enhancing driving directions with taxi drivers’ intelligence
Java  t-drive enhancing driving directions with taxi drivers’ intelligenceJava  t-drive enhancing driving directions with taxi drivers’ intelligence
Java t-drive enhancing driving directions with taxi drivers’ intelligence
 
T drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceT drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligence
 
Java t-drive enhancing driving directions with taxi drivers’ intelligence
Java  t-drive enhancing driving directions with taxi drivers’ intelligenceJava  t-drive enhancing driving directions with taxi drivers’ intelligence
Java t-drive enhancing driving directions with taxi drivers’ intelligence
 
Android t-drive enhancing driving directions with taxi drivers’ intelligence
Android  t-drive enhancing driving directions with taxi drivers’ intelligenceAndroid  t-drive enhancing driving directions with taxi drivers’ intelligence
Android t-drive enhancing driving directions with taxi drivers’ intelligence
 
T drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceT drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligence
 
Dotnet t-drive enhancing driving directions with taxi drivers’ intelligence
Dotnet  t-drive enhancing driving directions with taxi drivers’ intelligenceDotnet  t-drive enhancing driving directions with taxi drivers’ intelligence
Dotnet t-drive enhancing driving directions with taxi drivers’ intelligence
 
T drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceT drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligence
 
T drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligenceT drive enhancing driving directions with taxi drivers’ intelligence
T drive enhancing driving directions with taxi drivers’ intelligence
 
JAVA 2013 IEEE DATAMINING PROJECT T drive enhancing driving directions with t...
JAVA 2013 IEEE DATAMINING PROJECT T drive enhancing driving directions with t...JAVA 2013 IEEE DATAMINING PROJECT T drive enhancing driving directions with t...
JAVA 2013 IEEE DATAMINING PROJECT T drive enhancing driving directions with t...
 
Data mining
Data miningData mining
Data mining
 
A Simulation-Based Dynamic Traffic Assignment Model With Combined Modes
A Simulation-Based Dynamic Traffic Assignment Model With Combined ModesA Simulation-Based Dynamic Traffic Assignment Model With Combined Modes
A Simulation-Based Dynamic Traffic Assignment Model With Combined Modes
 
DYNAMIC RESOURCE ALLOCATION IN ROAD TRANSPORT SECTOR USING MOBILE CLOUD COMPU...
DYNAMIC RESOURCE ALLOCATION IN ROAD TRANSPORT SECTOR USING MOBILE CLOUD COMPU...DYNAMIC RESOURCE ALLOCATION IN ROAD TRANSPORT SECTOR USING MOBILE CLOUD COMPU...
DYNAMIC RESOURCE ALLOCATION IN ROAD TRANSPORT SECTOR USING MOBILE CLOUD COMPU...
 
Smart Mobility
Smart MobilitySmart Mobility
Smart Mobility
 
Dynamic resource allocation in road transport sector using mobile cloud compu...
Dynamic resource allocation in road transport sector using mobile cloud compu...Dynamic resource allocation in road transport sector using mobile cloud compu...
Dynamic resource allocation in road transport sector using mobile cloud compu...
 
Inter vehicular communication using packet network theory
Inter vehicular communication using packet network theoryInter vehicular communication using packet network theory
Inter vehicular communication using packet network theory
 
Simulation Based Analysis of Bee Swarm Inspired Hybrid Routing Protocol Param...
Simulation Based Analysis of Bee Swarm Inspired Hybrid Routing Protocol Param...Simulation Based Analysis of Bee Swarm Inspired Hybrid Routing Protocol Param...
Simulation Based Analysis of Bee Swarm Inspired Hybrid Routing Protocol Param...
 
Neural Network Based Parking via Google Map Guidance
Neural Network Based Parking via Google Map GuidanceNeural Network Based Parking via Google Map Guidance
Neural Network Based Parking via Google Map Guidance
 
Driving cycle tracking device development and analysis on route-to-work for K...
Driving cycle tracking device development and analysis on route-to-work for K...Driving cycle tracking device development and analysis on route-to-work for K...
Driving cycle tracking device development and analysis on route-to-work for K...
 
Real time vehicle counting in complex scene for traffic flow estimation using...
Real time vehicle counting in complex scene for traffic flow estimation using...Real time vehicle counting in complex scene for traffic flow estimation using...
Real time vehicle counting in complex scene for traffic flow estimation using...
 

Dotnet t-drive enhancing driving directions with taxi drivers’ intelligence

  • 1. ECWAY TECHNOLOGIES IEEE PROJECTS & SOFTWARE DEVELOPMENTS OUR OFFICES @ CHENNAI / TRICHY / KARUR / ERODE / MADURAI / SALEM / COIMBATORE CELL: +91 98949 17187, +91 875487 2111 / 3111 / 4111 / 5111 / 6111 VISIT: www.ecwayprojects.com MAIL TO: ecwaytechnologies@gmail.com T-Drive Enhancing Driving Directions with Taxi Drivers’ Intelligence ABSTRACT: This paper presents a smart driving direction system leveraging the intelligence of experienced drivers. In this system, GPS-equipped taxis are employed as mobile sensors probing the traffic rhythm of a city and taxi drivers’ intelligence in choosing driving directions in the physical world. We propose a time-dependent landmark graph to model the dynamic traffic pattern as well as the intelligence of experienced drivers so as to provide a user with the practically fastest route to a given destination at a given departure time. Then, a Variance-Entropy-Based Clustering approach is devised to estimate the distribution of travel time between two landmarks in different time slots. Based on this graph, we design a two-stage routing algorithm to compute the practically fastest and customized route for end users. We build our system based on a real-world trajectory data set generated by over 33,000 taxis in a period of three months, and evaluate the system by conducting both synthetic experiments and in-the-field evaluations. As a result, 60- 70 percent of the routes suggested by our method are faster than the competing methods, and 20 percent of the routes share the same results. On average, 50 percent of our routes are at least 20 percent faster than the competing approaches.