This thesis deals with a type of stochastic optimization problem where the decision maker does not have complete information concerning the objective function. Specifically, we consider a discrete time-and-space search optimization problem where we seek to find a moving target in an area of operations. There are two sources of uncertainty: the target location and the sensor performance. We formulate the objective function for this problem in terms of a risk measure of a parameterized random variable and consider three cases involving various degrees of knowledge about the sensor performance. In all cases, we consider both the expectation and superquantile risk measures. While the expectation results in an objective function representing th...
The minimum time search in uncertain domains is a searching task, which appears in real world proble...
This thesis studies a class of sensor management problems called informative path planning (IPP). Se...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...
The detection search problem is the identification of search paths for a specified time interval [0,...
Abstract This paper investigates a search problem for a moving target on a network in which any time...
In this paper we study convex stochastic search problems where a noisy objective function value is o...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Abstract—This paper investigates the comparative performance of several information-driven search st...
We consider the problem of scheduling an agile sensor for performing optimal search for a target. A ...
We consider the problem of searching for an object in a set of N locations (or bins) {C1,...CN}. The...
Many practical applications, such as search and rescue operations and environmental monitoring, invo...
In this paper, we propose a formulation of the spatial search problem, where a mobile searching agen...
In this study we discuss a class of stochastic optimization problems for the cases where parameter o...
It is often necessary, in scientific or everyday life problems, to find a randomly hidden target. Wh...
We examine the conventional wisdom that commends the use of directe search methods in the presence o...
The minimum time search in uncertain domains is a searching task, which appears in real world proble...
This thesis studies a class of sensor management problems called informative path planning (IPP). Se...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...
The detection search problem is the identification of search paths for a specified time interval [0,...
Abstract This paper investigates a search problem for a moving target on a network in which any time...
In this paper we study convex stochastic search problems where a noisy objective function value is o...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Abstract—This paper investigates the comparative performance of several information-driven search st...
We consider the problem of scheduling an agile sensor for performing optimal search for a target. A ...
We consider the problem of searching for an object in a set of N locations (or bins) {C1,...CN}. The...
Many practical applications, such as search and rescue operations and environmental monitoring, invo...
In this paper, we propose a formulation of the spatial search problem, where a mobile searching agen...
In this study we discuss a class of stochastic optimization problems for the cases where parameter o...
It is often necessary, in scientific or everyday life problems, to find a randomly hidden target. Wh...
We examine the conventional wisdom that commends the use of directe search methods in the presence o...
The minimum time search in uncertain domains is a searching task, which appears in real world proble...
This thesis studies a class of sensor management problems called informative path planning (IPP). Se...
Stochastic optimization algorithms have been growing rapidly in popularity over the last decade or t...