SMARTDC: MOBILITY PREDICTION BASED ADAPTIVE
DUTY CYCLING FOR EVERYDAY LOCATION MONITORING
ABSTRACT:
Monitoring a user’s
mobility during daily life is an essential requirement in providing advanced
mobile services. While extensive attempts have been made to monitor user
mobility, previous work has rarely addressed issues with predictions of temporal
behavior in real deployment. In this paper, we introduce SmartDC, a mobility
prediction-based adaptive duty cycling scheme to provide contextual information
about a user’s mobility: time-resolved places and paths. Unlike previous approaches
that focused on minimizing energy consumption for tracking raw coordinates, we propose
efficient techniques to maximize the accuracy of monitoring meaningful places
with a given energy constraint. SmartDC comprises unsupervised mobility
learner, mobility predictor, and Markov decision process-based adaptive duty
cycling. SmartDC estimates the regularity of individual mobility and predicts
residence time at places to determine efficient sensing schedules. Our experiment
results show that SmartDC consumes 81 percent less energy than the periodic
sensing schemes, and 87 percent less energy than a scheme employing context-aware
sensing, yet it still correctly monitors 90 percent of a user’s location
changes within a 160-second delay.
EXISTING SYSTEM:
Mobile phones are widely used for tracing human mobility
since mobile phones,
1) have almost 100 percent penetration,
2) are closely tied to daily life, and
3) are capable of locating themselves using various
approaches.
The global positioning system (GPS) and wireless
positioning system (WPS) using cell tower and Wi-Fi access points (AP) are
common technologies that provide a user’s raw coordinates (i.e., latitude and
longitude). Ambient fingerprints are often constructed to recognize semantic places
with room-level accuracy using radio beacons (e.g., cell towers, Wi-Fi APs, and
Bluetooth) and surrounding factors (e.g., light, color, texture, and sound
patterns). A simple choice for monitoring mobility is to periodically sense a
user’s location context. Such a scheme, however, significantly reduces the
battery’s lifetime in mobile devices. To optimize energy consumption for continuous
sensing, various approaches have been proposed. These include sensor selection
by movement detector using accelerometers minimizing energy consumption within
accuracy requirements, minimizing location error for a given energy budget and
utilizing a prediction-based approach. While extensive attempts have been made
to continuously examine a user’s mobility with less energy consumption, we
argue that previous work did not fully consider regular patterns in human
mobility to reduce energy consumption in real deployments.
DISADVANTAGES OF
EXISTING SYSTEM:
·
It reduces the battery’s lifetime in mobile
devices.
·
It
periodically senses the users location.
· GPS
is always turned on.
PROBLEM STATEMENT:
A simple choice for
monitoring mobility is to periodically sense a user’s location context. Such a
scheme, however, significantly reduces the battery’s lifetime in mobile
devices.
SCOPE:
The
main idea is that the system senses location context based on a predicted
schedule. And design a framework to minimize the energy consumption.
PROPOSED SYSTEM:
Our research goal is to develop a framework that continuously
provides location context with minimum energy consumption. We propose SmartDC:
mobility prediction-based adaptive duty cycling for everyday location monitoring.
SmartDC comprises three components: mobility learner, mobility predictor, and
adaptive duty cycling. Mobility
learner uses unsupervised learning to incrementally collect mobility patterns
in colloquial terms. Based on our previous work, we developed a personalized scheme
that collects POI’s raw coordinates and also recognizes POIs with room-level
accuracy. Mobility predictor uses a location predictor to predict departure
time to the next location. We implemented both location-dependent and
location-independent predictors, and compared their cost and performance.
Adaptive duty cycling uses a Markov decision process (MDP) to determine the
efficient sensing moment for a given energy budget. The proposed scheme maximizes
the accuracy of mobility monitoring based on the regularity in individual
mobility.
ADVANTAGES OF PROPOSED
SYSTEM:
·
An extensive performance analysis of
several location predictors for the estimation of predictable regularity in
human mobility.
·
Provides location context with minimum energy
consumption.
· Simultaneous
learning and predicting a user’s mobility.
· Adaptive
duty cycling that covers both the regularity and the randomness in human
mobility.
SYSTEM ARCHITECTURE:
SYSTEM CONFIGURATION:-
HARDWARE REQUIREMENTS:-
ü Processor - Pentium –IV
ü Speed - 1.1 Ghz
ü RAM - 512 MB(min)
ü Hard
Disk - 40 GB
ü Key
Board - Standard Windows Keyboard
ü Mouse - Two or Three Button Mouse
ü Monitor - LCD/LED
SOFTWARE
REQUIREMENTS:
•
Operating system : Android
•
Coding Language : Android
•
Data Base : SQLite
•
Tool : Eclipse
REFERENCE:
Yohan
Chon, Elmurod Talipov, Hyojeong Shin, and Hojung Cha “SmartDC: Mobility Prediction-Based
Adaptive Duty Cycling for Everyday Location Monitoring” IEEE
TRANSACTIONS ON MOBILE COMPUTING, VOL. 13, NO. 3, MARCH 2014.
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