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Optimal Deployment Plan of Emission Reduction Technologies for TxDOT's Construction EquipmentBari, Muhammad Ehsanul 2009 August 1900 (has links)
The purpose of this study was to develop and test an optimization model that will
provide a deployment plan of emission reduction technologies to reduce emissions from
non-road equipment. The focus of the study was on the counties of Texas that have
nonattainment (NA) and near-nonattainment (NNA) status.
The objective of this research was to develop methodologies that will help to
deploy emission reduction technologies for non-road equipment of TxDOT to reduce
emissions in a cost effective and optimal manner. Three technologies were considered
for deployment in this research, (1) hydrogen enrichment (HE), (2) selective catalytic
reduction (SCR) and (3) fuel additive (FA). Combinations of technologies were also
considered in the study, i.e. HE with FA, and SCR with FA. Two approaches were
investigated in this research. The first approach was "Method 1" in which all the
technologies, i.e. FA, HE and SCR were deployed in the NA counties at the first stage.
In the second stage the same technologies were deployed in the NNA counties with the
remaining budget, if any. The second approach was called "Method 2" in which all the
technologies, i.e. FA, HE and SCR were deployed in the NA counties along with deploying only FA in the NNA counties at the first stage. Then with the remaining
budget, SCR and HE were deployed in the NNA counties in the second stage. In each of
these methods, 2 options were considered, i.e. maximizing NOx reduction with and
without fuel economy consideration in the objective function. Thus, the four options
investigated each having different mixes of emission reduction technologies include
Case 1A: Method 1 with fuel economy consideration; Case 1B: Method 1 without fuel
economy consideration; Case 2A: Method 2 with fuel economy consideration; and Case
2B: Method 2 without fuel economy consideration and were programmed with Visual
C++ and ILOG CPLEX. These four options were tested for budget amounts ranging
from $500 to $1,183,000 and the results obtained show that for a given budget one
option representing a mix of technologies often performed better than others. This is
conceivable because for a given budget the optimization model selects an affordable
option considering the cost of technologies involved while at the same time maximum
emission reduction, with and without fuel economy consideration, is achieved.
Thus the alternative options described in this study will assist the decision
makers to decide about the deployment preference of technologies. For a given budget,
the decision maker can obtain the results for total NOx reduction, combined diesel
economy and total combined benefit using the four models mentioned above. Based on
their requirements and priorities, they can select the desired model and subsequently
obtain the required deployment plan for deploying the emission reduction technologies
in the NA and NNA counties.
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Alocação de aeronaves a voos considerando restrições operacionais, de manutenção e de desempenho das aeronaves. / Aircraft assignment considering aircraft operational, maintenance and performance restrictions.Medau, João Carlos 25 April 2017 (has links)
O problema de alocação de aeronaves a voos, ou tail assignment problem (TAP), consiste em determinar qual aeronave realizará cada voo da malha de uma empresa aérea, visando a minimizar o custo total da operação e respeitando diversas restrições de conectividade de voos, permanência de aeronaves no solo, serviços obrigatórios de manutenção, limitações técnicas e desempenho de aeronaves, conexões de passageiros e tripulantes e famílias com diversos modelos de aeronaves. Este trabalho apresenta um modelo matemático exato e um método heurístico para a solução do TAP considerando todas as restrições citadas, o que não ocorre com os modelos encontrados na literatura. Os modelos desenvolvidos, baseados em programação linear inteira e na meta-heurística Busca Tabu, foram aplicados a problemas reais, extraídos da malha de uma empresa aérea brasileira, operadora de 35 aeronaves e cerca de 210 voos diários. Os resultados obtidos são compatíveis com a operação da empresa e apresentam ganhos em relação ao método de alocação de aeronaves utilizado na operação diária. Os tempos de processamento para solução pelo método exato são excessivamente longos, indicando que o método heurístico é mais adequado para a utilização em empresas aéreas, com resultados adequados obtidos em tempos de processamento satisfatórios. / The problem known as Aircraft Assignment or Tail Assignment Problem (TAP) is the problem of assigning flights to each aircraft of an airline\'s fleet, aiming at minimizing the total operating cost while complying with several constraints, such as network connectivity, aircraft time on ground, mandatory maintenance services, aircraft technical restrictions, passengers and crew connections, aircraft performance and aircraft families with more than one type. This work presents a deterministic mathematical model and a heuristic method to solve the TAP considering all constraints listed above, what does not happen with the models found in the literature. The proposed methods, based on mathematical integer programming and on the Tabu Search metaheuristic, were applied to problems obtained from the network of a Brazilian airline, operating 35 aircraft and around 210 daily flights. The results show the models are suitable to solve the problem and savings are observed when compared to the current assignment method. The long processing times intrinsic to the deterministic method show the heuristic method is more suitable for use in airlines, with suitable results obtained at acceptable computational times.
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Alocação de aeronaves a voos considerando restrições operacionais, de manutenção e de desempenho das aeronaves. / Aircraft assignment considering aircraft operational, maintenance and performance restrictions.João Carlos Medau 25 April 2017 (has links)
O problema de alocação de aeronaves a voos, ou tail assignment problem (TAP), consiste em determinar qual aeronave realizará cada voo da malha de uma empresa aérea, visando a minimizar o custo total da operação e respeitando diversas restrições de conectividade de voos, permanência de aeronaves no solo, serviços obrigatórios de manutenção, limitações técnicas e desempenho de aeronaves, conexões de passageiros e tripulantes e famílias com diversos modelos de aeronaves. Este trabalho apresenta um modelo matemático exato e um método heurístico para a solução do TAP considerando todas as restrições citadas, o que não ocorre com os modelos encontrados na literatura. Os modelos desenvolvidos, baseados em programação linear inteira e na meta-heurística Busca Tabu, foram aplicados a problemas reais, extraídos da malha de uma empresa aérea brasileira, operadora de 35 aeronaves e cerca de 210 voos diários. Os resultados obtidos são compatíveis com a operação da empresa e apresentam ganhos em relação ao método de alocação de aeronaves utilizado na operação diária. Os tempos de processamento para solução pelo método exato são excessivamente longos, indicando que o método heurístico é mais adequado para a utilização em empresas aéreas, com resultados adequados obtidos em tempos de processamento satisfatórios. / The problem known as Aircraft Assignment or Tail Assignment Problem (TAP) is the problem of assigning flights to each aircraft of an airline\'s fleet, aiming at minimizing the total operating cost while complying with several constraints, such as network connectivity, aircraft time on ground, mandatory maintenance services, aircraft technical restrictions, passengers and crew connections, aircraft performance and aircraft families with more than one type. This work presents a deterministic mathematical model and a heuristic method to solve the TAP considering all constraints listed above, what does not happen with the models found in the literature. The proposed methods, based on mathematical integer programming and on the Tabu Search metaheuristic, were applied to problems obtained from the network of a Brazilian airline, operating 35 aircraft and around 210 daily flights. The results show the models are suitable to solve the problem and savings are observed when compared to the current assignment method. The long processing times intrinsic to the deterministic method show the heuristic method is more suitable for use in airlines, with suitable results obtained at acceptable computational times.
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Developing a mathematical model for scheduling re-layout projectsVijayvargiya, Mool C. January 1994 (has links)
No description available.
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Financial Analysis and Global Supply Chain Design : A Case Study of Blood Sugar Monitoring IndustryYounes Sinaki, Roohollah January 2017 (has links)
No description available.
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