3 research outputs found
Decision Making in Non-Stationary Environments with Policy-Augmented Search
Sequential decision-making under uncertainty is present in many important
problems. Two popular approaches for tackling such problems are reinforcement
learning and online search (e.g., Monte Carlo tree search). While the former
learns a policy by interacting with the environment (typically done before
execution), the latter uses a generative model of the environment to sample
promising action trajectories at decision time. Decision-making is particularly
challenging in non-stationary environments, where the environment in which an
agent operates can change over time. Both approaches have shortcomings in such
settings -- on the one hand, policies learned before execution become stale
when the environment changes and relearning takes both time and computational
effort. Online search, on the other hand, can return sub-optimal actions when
there are limitations on allowed runtime. In this paper, we introduce
\textit{Policy-Augmented Monte Carlo tree search} (PA-MCTS), which combines
action-value estimates from an out-of-date policy with an online search using
an up-to-date model of the environment. We prove theoretical results showing
conditions under which PA-MCTS selects the one-step optimal action and also
bound the error accrued while following PA-MCTS as a policy. We compare and
contrast our approach with AlphaZero, another hybrid planning approach, and
Deep Q Learning on several OpenAI Gym environments. Through extensive
experiments, we show that under non-stationary settings with limited time
constraints, PA-MCTS outperforms these baselines.Comment: Extended Abstract accepted for presentation at AAMAS 202
Seaweed cultivation and the remediation of by-products from ethanol production: a glorious green growth
In this paper, seaweed cultivation is mathematically modelled. The potential use of the crop to consume by-products from ethanol production is considered with a feasibility study and simple financial model. The growth of seaweed is described using differential equations and considering various factors such as solar radiation
Seaweed cultivation and the remediation of by-products from ethanol production: A glorious green growth
In this paper, seaweed cultivation is mathematically modelled. The potential use of the crop to consume by-products from ethanol production is considered with a feasibility study and simple financial model. The growth of seaweed is described using differential equations and considering various factors such as solar radiation