The paper presents a new optimization model and solution approach for the investment and operations planning of offshore oil and gas field infrastructure. As compared to the conventional models where either fiscal rules or uncertainty in the field parameters is considered, the proposed model is the first one in the literature that includes both of these complexities in an efficient manner. In particular, a tighter formulation for the production sharing agreements based on our recent work, and a perfect positive or negative correlation among the endogenous uncertain parameters (field size, oil deliverability, water–oil ratio and gas–oil ratio) is considered to reduce the total number of scenarios in the resulting multistage stochastic formul...
This paper presents the development of a method to provide decision support in the feasibility studi...
Multistage stochastic programming is a key technology for making decisions over time in an uncertain...
In this paper, we present a new decomposition algorithm for solving large-scale multistage stochasti...
<p>The paper presents a new optimization model and solution approach for the investment and operatio...
The paper presents a new optimization model and solution approach for the investment and operations ...
The objective of this paper is to present a unified modeling framework to address the issues of unce...
Multilateral wells promise cost savings to oil and fields as they have the potential to reduce overa...
This dissertation addresses the modeling and solution of mixed-integer linear multistage stochastic ...
Oil and gas companies are facing low output prices and are forced to focus on the development of mat...
Mathematical programming has been widely applied for the planning of natural gas production infrastr...
2019-04-26Reservoir simulation is a valuable tool for model-based field development and production p...
This thesis applies operations research methods to planning problems related to the plugging and aba...
<p>The optimal development planning of offshore oil and gas fields has received significant attentio...
<p>We present a scenario decomposition framework based on Lagrangean decomposition for the multi-pro...
During the lifecycle of an oilfield project, well development is a critical phase due to intensive i...
This paper presents the development of a method to provide decision support in the feasibility studi...
Multistage stochastic programming is a key technology for making decisions over time in an uncertain...
In this paper, we present a new decomposition algorithm for solving large-scale multistage stochasti...
<p>The paper presents a new optimization model and solution approach for the investment and operatio...
The paper presents a new optimization model and solution approach for the investment and operations ...
The objective of this paper is to present a unified modeling framework to address the issues of unce...
Multilateral wells promise cost savings to oil and fields as they have the potential to reduce overa...
This dissertation addresses the modeling and solution of mixed-integer linear multistage stochastic ...
Oil and gas companies are facing low output prices and are forced to focus on the development of mat...
Mathematical programming has been widely applied for the planning of natural gas production infrastr...
2019-04-26Reservoir simulation is a valuable tool for model-based field development and production p...
This thesis applies operations research methods to planning problems related to the plugging and aba...
<p>The optimal development planning of offshore oil and gas fields has received significant attentio...
<p>We present a scenario decomposition framework based on Lagrangean decomposition for the multi-pro...
During the lifecycle of an oilfield project, well development is a critical phase due to intensive i...
This paper presents the development of a method to provide decision support in the feasibility studi...
Multistage stochastic programming is a key technology for making decisions over time in an uncertain...
In this paper, we present a new decomposition algorithm for solving large-scale multistage stochasti...