Traffic Accident System Analysis: Optimization and Interpretation of traffic studies using Pattern Search Recognition Case Studies
DOI:
https://doi.org/10.29070/g6rcsf97Keywords:
traffic accident system analysis, optimization, interpretation, traffic studies, pattern search recognition, roadside controllers, intelligent vehicles, highway system, intelligent transportation highway system, architectural layout, environmental effects, global business, resource productivity, highway construction, production rate, factors affecting productivity, graphs, formulas, charts, planningAbstract
The management and control of traffic system using roadside controllers and intelligentvehicles is innovative technique for the design of highway system. The Intelligent TransportationHighway System is the design concept introduced to enhance safety, efficiency and many othervehicular as well as user characteristics of highways. This concept has introduced for the improvedarchitectural layout of highway design and also helped in reducing the environmental effects of thevehicles running on the highways.Apart from project aspects, this study is necessary from global business point of view also. Today, inthis globalized business world, any company has to compete with competitors from throughout theglobe. In such a situation, optimum usage of resources, according to one pre planned schedule, for thedeliverance of an estimated output is an absolute necessity. This could only be done when a system ofestimating the resource productivity subject to the project constrains is in place. The main aim of thisproject is studying resources required for highway construction and increases Resource Productivity indifferent condition. A detailed study and analysis of the resources' productivity in highway projects isabsolutely essential for the prediction of production rate of any team group and as a whole of a projectteam. Identification of the factors affecting the productivity of each of the resources along with formationof graphs, formulas and charts to estimate production is also essential for the easy going of the job ofplanning.Downloads
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