92 resultados para Howland


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Cover title: Pond's lectures.

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Includes bibliography.

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Literature cited: p. 46-47.

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back row: manager George Howland, Robert Lilienfield, Fred Lounsberry, Robert Precious, coach Victor Heyliger

front row: Richard Mixer, Robert Graham, Karl Sulentich, captain Ted Greer, John Jenswold, Albert Allman, Charles Henderson

not pictured Herb Upton

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"The book is ... one of the many editions of Gutsmuths. In it he appears as author under one pseudonym and as editor under another!"--Howland catalogue.

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Travel demand models are important tools used in the analysis of transportation plans, projects, and policies. The modeling results are useful for transportation planners making transportation decisions and for policy makers developing transportation policies. Defining the level of detail (i.e., the number of roads) of the transport network in consistency with the travel demand model’s zone system is crucial to the accuracy of modeling results. However, travel demand modelers have not had tools to determine how much detail is needed in a transport network for a travel demand model. This dissertation seeks to fill this knowledge gap by (1) providing methodology to define an appropriate level of detail for a transport network in a given travel demand model; (2) implementing this methodology in a travel demand model in the Baltimore area; and (3) identifying how this methodology improves the modeling accuracy. All analyses identify the spatial resolution of the transport network has great impacts on the modeling results. For example, when compared to the observed traffic data, a very detailed network underestimates traffic congestion in the Baltimore area, while a network developed by this dissertation provides a more accurate modeling result of the traffic conditions. Through the evaluation of the impacts a new transportation project has on both networks, the differences in their analysis results point out the importance of having an appropriate level of network detail for making improved planning decisions. The results corroborate a suggested guideline concerning the development of a transport network in consistency with the travel demand model’s zone system. To conclude this dissertation, limitations are identified in data sources and methodology, based on which a plan of future studies is laid out.