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Errors in Global Positioning System

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Global Positioning System (GPS) technology has revolutionized navigation and positioning, but its accuracy is often compromised by various errors. These errors, stemming from environmental, satellite, and receiver-related factors, require careful mitigation to ensure reliable performance across applications.Atmospheric ErrorsGPS signals travel through the Earth’s ionosphere and troposphere, introducing delays which affect accuracy. The ionosphere is strongly influenced by charged particles,...
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GPS surveying methods vary in application, accuracy, and data collection techniques, catering to diverse surveying and mapping needs. Static GPS, kinematic GPS, and real-time kinematic (RTK) surveying are widely used. Each technique offers distinct advantages.Static GPS involves placing one receiver at a known reference point and another at the target point. It collects exact positional data by observing multiple satellite ranges over an extended period, achieving centimeter-level accuracy for...
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Surveyors use Global Positioning System (GPS) technology to measure the precise location and elevation of points on Earth. In a recent survey, GPS receivers were used to determine the coordinates and elevations of two park monuments. The process involved careful mission planning, data collection, and correction to ensure accuracy. The survey began with mission planning to identify optimal satellite visibility and minimize Position Dilution of Precision (PDOP). A geodetic control point...
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The Global Positioning System (GPS) has become an indispensable tool in fieldwork, offering unparalleled precision and efficiency for surveying, navigation, and infrastructure development. By harnessing signals from a constellation of satellites, GPS receivers determine the location of objects with remarkable speed and accuracy, often completing calculations within a second.Advantages of Modern GPS TechnologyContemporary GPS receivers are designed to meet the practical demands of field...
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Bicycle Data-Driven Application Framework: A Dutch Case Study on Machine Learning-Based Bicycle Delay Estimation at

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  • 1Faculty of Civil Engineering and Geosciences, Delft University of Technology, Stevinweg 1, 2628 CN Delft, The Netherlands.

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Summary
This summary is machine-generated.

Estimating bicycle delays at intersections is crucial for transportation performance. Machine learning models effectively use sparse GPS data and external factors to predict these delays, informing traffic management and policy.

Keywords:
GPS cycling databicycle delaysdata-driven bicycle applicationsmachine learningsignalized intersections

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Area of Science:

  • Transportation Engineering
  • Data Science
  • Urban Planning

Background:

  • Nations are increasingly adopting data-driven methods for transportation system evaluation.
  • The Netherlands has established protocols for bicycle traffic counting and GPS data collection.
  • Accurate estimation of bicycle delays at signalized intersections is vital for performance assessment.

Purpose of the Study:

  • To develop a generic framework for analyzing cycling data.
  • To estimate average bicycle delays at signalized intersections using machine learning.
  • To assess the feasibility of using sparse GPS data for delay estimation.

Main Methods:

  • Utilized a dataset of one million annual bicycle rides in The Netherlands.
  • Applied various machine learning models: Random Forest, k-Nearest Neighbor, Support Vector Regression, Extreme Gradient Boosting, and Neural Networks.
  • Integrated sparse GPS cycling data with external information like weather and intersection complexity.

Main Results:

  • Demonstrated the feasibility of estimating bicycle delays with incomplete GPS data.
  • Machine learning models successfully predicted delays by incorporating supplementary data sources.
  • Showcased the value of combining sparse sensor data with contextual information.

Conclusions:

  • Data-driven approaches, particularly machine learning, can effectively estimate bicycle delays.
  • Sparse GPS data, when augmented with external information, is a viable resource for transportation analysis.
  • Findings support informed traffic management, bicycle policy development, and infrastructure planning.