Sequential Monte Carlo in Probabilistic Planning Reachability Heuristics
نویسندگان
چکیده
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT problem. While these approaches can find optimal solutions for given plan lengths, they often do not scale for large problems or plan lengths. As has been shown in classical planning, heuristic search outperforms CSP/SAT techniques (especially when a plan length is not given a priori). The problem with applying heuristic search in probabilistic planning is that effective heuristics are as yet lacking. In this work, we apply heuristic search to conformant probabilistic planning by adapting planning graph heuristics developed for non-deterministic planning. We evaluate a straight-forward application of these planning graph techniques, which amounts to exactly computing the distribution over reachable relaxed planning graph layers. Computing these distributions is costly, so we apply Sequential Monte Carlo to approximate them. We demonstrate on several domains how our approach enables our planner to far out-scale existing (optimal) probabilistic planners and still find reasonable quality solutions.
منابع مشابه
Sequential Monte Carlo in Probabilistic Planning Reachability Heuristics
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT problem. While these approaches can find optimal solutions for given plan lengths, they often do not scale for large problems or plan lengths. As has been shown in classical planning, heuristic search outperforms CSP/SAT techniques (especially when a plan length is not given a priori). The probl...
متن کاملSequential Monte Carlo in reachability heuristics for probabilistic planning
Some of the current best conformant probabilistic planners focus on finding a fixed length plan with maximal probability. While these approaches can find optimal solutions, they often do not scale for large problems or plan lengths. As has been shown in classical planning, heuristic search outperforms bounded length search (especially when an appropriate plan length is not given a priori). The ...
متن کاملApplying Point Estimation and Monte Carlo Simulation Methods in Solving Probabilistic Optimal Power Flow Considering Renewable Energy Uncertainties
The increasing penetration of renewable energy results in changing the traditional power system planning and operation tools. As the generated power by the renewable energy resources are probabilistically changed, the certain power system analysis tolls cannot be applied in this case. Probabilistic optimal power flow is one of the most useful tools regarding the power system analysis in presen...
متن کاملCost-Sensitive Reachability Heuristics for Probabilistic Planning
Reachability heuristics have lead to impressive scale-ups in deterministic planning making their application to probabilistic planning a promising research direction. We describe how one such reachability heuristic (based on planning graphs) can be extended to handle a class of cost-sensitive probabilistic planning problems. Specifically, we address the problem of conformant (non-observable) pr...
متن کاملTowards Automated Sequential Monte Carlo for Probabilistic Graphical Models
We revisit the idea of using sequential Monte Carlo (SMC) for inference in general probabilistic graphical models. By constructing a sequence of auxiliary target distributions (also known as a sequential decomposition) based on the graph structure we can run a standard SMC sampler on the graph. In this paper we study the impact of the sequential decomposition on the accuracy of the SMC method b...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2006