Traffic Accident System Analysis: Optimization and Interpretation of traffic using Pattern Search Recognition Case Studies

Authors

  • Mr. Shankar Dawane PG Student, Department of Civil Engineering, TSSM’S Padmabhooshan Vasantdada Patil Institute Technology,Pune Author
  • Dr. R. R. Sorate Professor, Department of Civil Engineering, TSSM’S Padmabhooshan Vasantdada Patil Institute Technology,Pune Author

DOI:

https://doi.org/10.29070/934f2j63

Keywords:

Traffic, Pattern Search, Resource Productivity, Planning, Material Management, Cost, Accident

Abstract

Traffic management and control utilising roadside controllers and intelligent cars is aninnovative method for designing a roadway. In order to improve highway safety, efficiency, and many otheraspects for vehicles and users alike, the Intelligent Transportation Highway System (ITHS) is a new designidea. Improved highway design has been made possible by this notion, as well as a reduction in theenvironmental impact of automobiles on the roadways.This analysis is essential from a global business perspective as well as a project one. As a result oftoday's worldwide economic environment, any firm must compete against other businesses from acrossthe world. In a circumstance like this, maximising the use of resources in accordance with a pre-plannedtimetable is absolutely essential. A method for evaluating resource productivity within the constraints ofthe project must be in place before this can be done. The primary goal of this project is to investigate theresources needed for highway building and to boost Resource Productivity under various conditions.For any team or group to accurately forecast their output rate and that of the entire project team, it isimperative that the productivity of the resources used in highway projects be thoroughly studied andanalysed. To make the planning process move more smoothly, it is necessary to identify the elementsthat influence the productivity of each resource and to create graphs, formulae, and charts that estimateproduction.

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Published

2022-03-01