Summarization: The economic profitability of Smart Grid prosumers (i.e., producers that are simultaneously consumers) depends on their tackling of the decision-making problem they face when selling and buying energy. In previous work, we had modelled this problem compactly as a factored Markov Decision Process, capturing the main aspects of the business decisions of a prosumer corresponding to a community microgrid of any size. Though that work had employed an exact value iteration algorithm to obtain a near-optimal solution over discrete state spaces, it could not tackle problems defined over continuous state spaces. By contrast, in this paper we show how to use approximate MDP solution methods for taking decisions in this domain without t...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
This paper addresses the problem of planning under uncertainty in large Markov Decision Processes (M...
Summarization: Tackling the decision-making problem faced by a prosumer (i.e., a producer that is si...
Many real-world domains require that agents plan their future ac-tions despite uncertainty, and that...
Markov Decision Processes with factored state and action spaces, usually referred to as FA-FMDPs, pr...
We propose a novel approach to optimize Partially Observable Markov Decisions Processes (POMDPs) de...
Abstract Approximate linear programming (ALP) has emerged recently as one ofthe most promising metho...
This article proposes a three-timescale simulation based algorithm for solution of infinite horizon ...
This article proposes a three-timescale simulation based algorithm for solution of infinite horizon ...
We propose a novel approach for solving continuous and hybrid Markov Decision Processes (MDPs) based...
International audienceMarkov Decision Processes (MDPs) are employed to model sequential decision-mak...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
Partially observable Markov decision processes (POMDPs) provide a natural framework to design applic...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
This paper addresses the problem of planning under uncertainty in large Markov Decision Processes (M...
Summarization: Tackling the decision-making problem faced by a prosumer (i.e., a producer that is si...
Many real-world domains require that agents plan their future ac-tions despite uncertainty, and that...
Markov Decision Processes with factored state and action spaces, usually referred to as FA-FMDPs, pr...
We propose a novel approach to optimize Partially Observable Markov Decisions Processes (POMDPs) de...
Abstract Approximate linear programming (ALP) has emerged recently as one ofthe most promising metho...
This article proposes a three-timescale simulation based algorithm for solution of infinite horizon ...
This article proposes a three-timescale simulation based algorithm for solution of infinite horizon ...
We propose a novel approach for solving continuous and hybrid Markov Decision Processes (MDPs) based...
International audienceMarkov Decision Processes (MDPs) are employed to model sequential decision-mak...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
Partially observable Markov decision processes (POMDPs) provide a natural framework to design applic...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
This paper addresses the computational issues involved in the solution to an infinite-horizon optima...
This paper addresses the problem of planning under uncertainty in large Markov Decision Processes (M...