Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency through built-in slack and costly replanning when deadlines are missed. Due to the difficulty of reasoning about such likelihoods and consequences, a computational framework is needed to quantify and bound the risk of violating scheduling requirements. This work addresses the chance-constrained scheduling problem, where actions' durations are modeled probabilistically. Our solution method uses conflict-directed risk allocation to efficiently compute a scheduling policy. The key insight, compared to previous work in probabilistic scheduling, is to decouple the reasoning about temporal and risk constraints. This decomposes the problem into a separate...
This paper presents a multi objective chance constrained programming model for matching of goods and...
Proactive approaches to scheduling take into account information about the execution time uncertaint...
Resistance to adoption of autonomous systems in comes in part from the perceived unreliability of th...
Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency throug...
Scheduling under uncertainty is essential to many autonomous systems and logistics tasks. Probabilis...
Scheduling under uncertainty is essential to many au-tonomous systems and logistics tasks. Probabili...
When scheduling tasks for field-deployable systems, our solutions must be robust to the uncertainty ...
When scheduling tasks for field-deployable systems, our solutions must be robust to the uncertainty ...
MEng thesisTemporal uncertainty arises when performing any activity in the natural world. When activ...
This article considers a stochastic vehicle routing problem with probability constraints. The probab...
In this paper, we describe an approach to scheduling under uncertainty that achieves scalability thr...
Unmanned deep-sea and planetary vehicles operate in highly uncertain environments. Autonomous agents...
In Temporal Planning a typical assumption is that the agent controls the execution time of all event...
Most classical scheduling formulations assume a fixed and known duration for each activity. In this ...
In this paper, we consider the challenging problem of riskaware proactive scheduling with the object...
This paper presents a multi objective chance constrained programming model for matching of goods and...
Proactive approaches to scheduling take into account information about the execution time uncertaint...
Resistance to adoption of autonomous systems in comes in part from the perceived unreliability of th...
Temporal uncertainty in large-scale logistics forces one to trade off between lost efficiency throug...
Scheduling under uncertainty is essential to many autonomous systems and logistics tasks. Probabilis...
Scheduling under uncertainty is essential to many au-tonomous systems and logistics tasks. Probabili...
When scheduling tasks for field-deployable systems, our solutions must be robust to the uncertainty ...
When scheduling tasks for field-deployable systems, our solutions must be robust to the uncertainty ...
MEng thesisTemporal uncertainty arises when performing any activity in the natural world. When activ...
This article considers a stochastic vehicle routing problem with probability constraints. The probab...
In this paper, we describe an approach to scheduling under uncertainty that achieves scalability thr...
Unmanned deep-sea and planetary vehicles operate in highly uncertain environments. Autonomous agents...
In Temporal Planning a typical assumption is that the agent controls the execution time of all event...
Most classical scheduling formulations assume a fixed and known duration for each activity. In this ...
In this paper, we consider the challenging problem of riskaware proactive scheduling with the object...
This paper presents a multi objective chance constrained programming model for matching of goods and...
Proactive approaches to scheduling take into account information about the execution time uncertaint...
Resistance to adoption of autonomous systems in comes in part from the perceived unreliability of th...