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Encoding Lifted Classical Planning in Propositional Logic 命题逻辑中的经典规划编码
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19794
D. Höller, G. Behnke
Planning models are usually defined in lifted, i.e. first order formalisms, while most solvers need (variable-free) grounded representations. Though techniques for grounding prune unnecessary parts of the model, grounding might – nevertheless – be prohibitively expensive in terms of runtime. To overcome this issue, there has been renewed interest in solving planning problems based on the lifted representation in the last years. While these approaches are based on (heuristic) search, we present an encoding of lifted classical planning in propositional logic and use SAT solvers to solve it. Our evaluation shows that our approach is competitive with the heuristic search-based approaches in satisficing planning and outperforms them in a (length-)optimal setting.
规划模型通常以提升的形式定义,即一阶形式,而大多数求解器需要(无变量)接地表示。尽管接地技术可以去除模型中不必要的部分,但是接地在运行时可能会非常昂贵。为了克服这一问题,在过去几年中,人们重新关注在提高代表权的基础上解决规划问题。虽然这些方法是基于启发式搜索,但我们提出了命题逻辑中提升经典规划的编码,并使用SAT求解器来求解它。我们的评估表明,我们的方法在满足规划方面与基于启发式搜索的方法竞争,并且在(长度)最优设置中优于它们。
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引用次数: 6
Tuning the Hyperparameters of Anytime Planning: A Metareasoning Approach with Deep Reinforcement Learning 调优随时计划的超参数:一种基于深度强化学习的元推理方法
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19842
Abhinav Bhatia, Justin Svegliato, Samer B. Nashed, S. Zilberstein
Anytime planning algorithms often have hyperparameters that can be tuned at runtime to optimize their performance. While work on metareasoning has focused on when to interrupt an anytime planner and act on the current plan, the scope of metareasoning can be expanded to tuning the hyperparameters of the anytime planner at runtime. This paper introduces a general, decision-theoretic metareasoning approach that optimizes both the stopping point and hyperparameters of anytime planning. We begin by proposing a generalization of the standard meta-level control problem for anytime algorithms. We then offer a meta-level control technique that monitors and controls an anytime algorithm using deep reinforcement learning. Finally, we show that our approach boosts performance on a common benchmark domain that uses anytime weighted A* to solve a range of heuristic search problems and a mobile robot application that uses RRT* to solve motion planning problems.
随时计划算法通常具有可在运行时调优以优化其性能的超参数。虽然元推理的工作主要关注于何时中断随时计划器并对当前计划采取行动,但元推理的范围可以扩展到在运行时调优随时计划器的超参数。本文介绍了一种通用的决策理论元推理方法,该方法可以同时优化任意时间规划的停车点和超参数。我们首先提出对任意时间算法的标准元级控制问题的一般化。然后,我们提供了一种元级控制技术,该技术使用深度强化学习来监视和控制任何时间算法。最后,我们展示了我们的方法在使用任意加权a *来解决一系列启发式搜索问题的通用基准域和使用RRT*来解决运动规划问题的移动机器人应用程序上提高了性能。
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引用次数: 4
Optimising the Stability in Plan Repair via Compilation 通过编译优化计划修复的稳定性
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19815
A. Saetti, Enrico Scala
Plan repair is the problem of solving a given planning problem by using a solution plan of a similar problem. Plan repair problems can arise in execution contexts, that is, when an agent performing the plan has to deal with some unexpected contingency that makes the given plan invalid. Repairing a plan works often much better than replanning from scratch, and is crucial when plans have to be kept stable. There is no planning system until now that guarantees to find plans at the minimum distance from an input plan. This paper presents the first approach to such a problem; we indeed introduce a simple compilation scheme that converts a classical planning problem into another where optimal plans correspond to plans with the minimum distance from an input plan. Our experiments using a number of planners show that such a simple approach can solve the plan repair problem optimally and more effectively than replanning from scratch for a large number of cases. Last but not least, the approach proves competitive with LPG-ADAPT.
计划修复是通过使用类似问题的解决方案来解决给定计划问题的问题。计划修复问题可能出现在执行上下文中,也就是说,当执行计划的代理必须处理一些使给定计划无效的意外事件时。修复计划通常比从头开始重新规划要好得多,当计划必须保持稳定时,这一点至关重要。到目前为止,还没有一个规划系统能够保证在与输入计划的最小距离处找到计划。本文提出了解决这一问题的第一种方法;我们确实引入了一个简单的编译方案,将一个经典规划问题转化为另一个最优规划对应于与输入规划距离最小的规划。我们使用多个规划者进行的实验表明,这种简单的方法可以最优地解决计划修复问题,并且比在大量情况下从头开始重新规划更有效。最后但并非最不重要的是,该方法与LPG-ADAPT具有竞争力。
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引用次数: 0
Flexible FOND HTN Planning: A Complexity Analysis 灵活的FOND HTN规划:一个复杂性分析
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19782
Dillon Chen, P. Bercher
Hierarchical Task Network (HTN) planning is an expressive planning formalism that has often been advocated to address real-world problems. Yet few extensions exist that can deal with the many challenges encountered in the real world, one being the capability to express uncertainty. Recently, a new HTN formalism for fully observable nondeterministic problems was proposed and studied theoretically. In this paper, we lay out limitations of that formalism and propose an alternative definition, which addresses and resolves such limitations. We also study its complexity for certain problems.
分层任务网络(HTN)规划是一种表达性的规划形式,经常被提倡用于解决现实问题。然而,很少有扩展能够处理现实世界中遇到的许多挑战,其中之一就是表达不确定性的能力。最近,针对完全可观测不确定性问题提出了一种新的HTN形式,并进行了理论研究。在本文中,我们列出了这种形式主义的局限性,并提出了另一种定义,它解决了这些局限性。我们还研究了某些问题的复杂性。
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引用次数: 1
DOMA: Deep Smooth Trajectory Generation Learning for Real-Time UAV Motion Planning 面向实时无人机运动规划的深度平滑轨迹生成学习
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19855
Jin Yu, Haiyin Piao, Yaqing Hou, L. Mo, Xin Yang, Deyun Zhou
In this paper, we present a Deep Reinforcement Learning (DRL) based real-time smooth UAV motion planning method for solving catastrophic flight trajectory oscillation issues. By formalizing the original problem as a linear mixture of dual-objective optimization, a novel Deep smOoth Motion plAnning (DOMA) algorithm is proposed, which adopts an alternative layer-by-layer gradient descending optimization approach with the major gradient and the DOMA gradient applied separately. Afterward, the mix weight coefficient between the two objectives is also optimized adaptively. Experimental result reveals that the proposed DOMA algorithm outperforms baseline DRL-based UAV motion planning algorithms in terms of both learning efficiency and flight motion smoothness. Furthermore, the UAV safety issue induced by trajectory oscillation is also addressed.
本文提出了一种基于深度强化学习(DRL)的无人机实时平滑运动规划方法,用于解决突变飞行轨迹振荡问题。通过将原问题形式化为双目标优化的线性混合,提出了一种新的深度平滑运动规划(DOMA)算法,该算法采用主梯度和DOMA梯度分别应用的逐层梯度递减优化方法。然后,对两个目标间的混合权系数进行自适应优化。实验结果表明,该算法在学习效率和飞行运动平稳性方面均优于基于drl的基线无人机运动规划算法。此外,还讨论了由轨迹振荡引起的无人机安全问题。
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引用次数: 0
Simple Temporal Networks for Improvisational Teamwork 即兴团队合作的简单时间网络
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19809
Malia Morgan, Julianna Schalkwyk, Huaxiaoyue Wang, Hannah Davalos, Ryan Martinez, Vibha Rohilla, James C. Boerkoel
When communication between teammates is limited to observations of each other's actions, agents may need to improvise to stay coordinated. Unfortunately, current methods inadequately capture the uncertainty introduced by a lack of direct communication. This paper augments existing frameworks to introduce Simple Temporal Networks for Improvisational Teamwork (STN-IT)—a formulation that captures both the temporal dependencies and uncertainties between agents who need to coordinate but lack reliable communication. We define the notion of strong controllability for STN-ITs, which establishes a static scheduling strategy for controllable agents that produces a consistent team schedule, as long as non-communicative teammates act within known problem constraints. We provide both an exact and approximate approach for finding strongly controllable schedules, empirically demonstrate the trade-offs between these approaches on benchmarks of STN-ITs, and show analytically that the exact method is correct.
当团队成员之间的交流仅限于观察彼此的行动时,代理人可能需要即兴发挥以保持协调。不幸的是,目前的方法不能充分捕捉到由于缺乏直接沟通而带来的不确定性。本文在现有框架的基础上,引入了临时团队合作的简单时间网络(STN-IT)——一种捕获需要协调但缺乏可靠通信的代理之间的时间依赖性和不确定性的公式。我们定义了STN-ITs的强可控性概念,它为可控代理建立了一个静态调度策略,只要非沟通的团队成员在已知的问题约束下行动,就会产生一致的团队调度。我们提供了一种精确和近似的方法来寻找强可控调度,并在STN-ITs的基准上实证地证明了这些方法之间的权衡,并分析地证明了精确方法是正确的。
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引用次数: 0
VizXP: A Visualization Framework for Conveying Explanations to Users in Model Reconciliation Problems 在模型协调问题中向用户传达解释的可视化框架
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19860
Ashwin Kumar, S. Vasileiou, Melanie Bancilhon, Alvitta Ottley, W. Yeoh
Advancements in explanation generation for automated planning algorithms have moved us a step closer towards realizing the full potential of human-AI collaboration in real-world planning applications. Within this context, a framework called model reconciliation has gained a lot of traction, mostly due to its deep connection with a popular theory in human psychology, known as the theory of mind. Existing literature in this setting, however, has mostly been constrained to algorithmic contributions for generating explanations. To the best of our knowledge, there has been very little work on how to effectively convey such explanations to human users, a critical component in human-AI collaboration systems. In this paper, we set out to explore to what extent visualizations are an effective candidate for conveying explanations in a way that can be easily understood. Particularly, by drawing inspiration from work done in visualization systems for classical planning, we propose a visualization framework for visualizing explanations generated from model reconciliation algorithms. We demonstrate the efficacy of our proposed system in a comprehensive user study, where we compare our framework against a text-based baseline for two types of explanations – domain-based and problem-based explanations. Results from the user study show that users, on average, understood explanations better when they are conveyed via our visualization system compared to when they are conveyed via a text-based baseline.
在自动规划算法的解释生成方面的进步,使我们更接近实现人类与人工智能在现实世界规划应用中协作的全部潜力。在这种背景下,一个被称为模型调和的框架获得了很大的吸引力,主要是因为它与人类心理学中一个流行的理论——心智理论——有很深的联系。然而,在这种情况下,现有的文献大多局限于生成解释的算法贡献。据我们所知,关于如何有效地向人类用户传达这些解释的工作很少,而这是人类与人工智能协作系统的关键组成部分。在本文中,我们着手探索可视化在多大程度上是一种以易于理解的方式传达解释的有效候选。特别地,通过从经典规划可视化系统的工作中汲取灵感,我们提出了一个可视化框架,用于可视化由模型调和算法生成的解释。我们在一项全面的用户研究中证明了我们提出的系统的有效性,我们将我们的框架与基于文本的基线进行了比较,以获得两种类型的解释——基于领域的解释和基于问题的解释。用户研究的结果表明,平均而言,通过我们的可视化系统传达的解释比通过基于文本的基线传达的解释更能让用户理解。
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引用次数: 8
Beyond Stars - Generalized Topologies for Decoupled Search 超越星形——解耦搜索的广义拓扑
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19791
Daniel Gnad, Á. Torralba, Daniel Fiser
Decoupled search decomposes a classical planning task by partitioning its variables such that the dependencies between the resulting factors form a star topology. In this topology, a single center factor can interact arbitrarily with a set of leaf factors. The leaves, however, can interact with each other only indirectly via the center. In this work, we generalize this structural requirement and allow arbitrary topologies. The components must not overlap, i.e., each state variable is assigned to exactly one factor, but the interaction between factors is not restricted. We show how this generalization is connected to star topologies, which implies the correctness of decoupled search with this novel type of decomposition. We introduce factoring methods that automatically identify these topologies on a given planning task. Empirically, the generalized factorings lead to increased applicability of decoupled search on standard IPC benchmarks, as well as to superior performance compared to known factoring methods.
解耦搜索通过划分变量来分解经典规划任务,从而使结果因素之间的依赖关系形成星形拓扑。在这种拓扑结构中,单个中心因子可以与一组叶因子任意交互。然而,叶子之间只能通过中心间接地相互作用。在这项工作中,我们推广了这种结构需求,并允许任意拓扑。组件不能重叠,即每个状态变量只分配给一个因素,但因素之间的相互作用不受限制。我们展示了这种泛化是如何与星型拓扑相联系的,这意味着这种新型分解解耦搜索的正确性。我们介绍了在给定的规划任务上自动识别这些拓扑的分解方法。根据经验,广义因式分解提高了解耦搜索在标准IPC基准测试中的适用性,并且与已知的因式分解方法相比具有更好的性能。
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引用次数: 1
Analyzing the Efficacy of Flexible Execution, Replanning, and Plan Optimization for a Planetary Lander 分析行星着陆器灵活执行、重新规划和计划优化的有效性
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19838
Daniel Wang, J. Russino, Connor Basich, S. Chien
Plan execution in unknown environments poses a number of challenges: uncertainty in domain modeling, stochasticity at execution time, and the presence of exogenous events. These challenges motivate an integrated approach to planning and execution that is able to respond intelligently to variation. We examine this problem in the context of the Europa Lander mission concept, and evaluate a planning and execution framework that responds to feedback and task failure using two techniques: flexible execution and replanning with plan optimization. We develop a theoretical framework to estimate gains from these techniques, and we compare these predictions to empirical results generated in simulation. These results indicate that an integrated approach to planning and execution leveraging flexible execution, replanning, and utility maximization shows significant promise for future tightly-constrained space missions that must address significant uncertainty.
在未知环境中执行计划会带来许多挑战:领域建模的不确定性、执行时的随机性以及外生事件的存在。这些挑战激发了一种能够对变化做出智能响应的计划和执行的综合方法。我们在欧罗巴着陆器任务概念的背景下研究了这个问题,并评估了一个计划和执行框架,该框架使用两种技术来响应反馈和任务失败:灵活执行和重新规划与计划优化。我们开发了一个理论框架来估计这些技术的收益,并将这些预测与模拟中产生的经验结果进行比较。这些结果表明,利用灵活执行、重新规划和效用最大化的综合规划和执行方法,为必须解决重大不确定性的未来严格约束的空间任务显示了巨大的希望。
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引用次数: 5
Best-First Width Search for Lifted Classical Planning 解除经典规划的最佳优先宽度搜索
Pub Date : 2022-06-13 DOI: 10.1609/icaps.v32i1.19780
Augusto B. Corrêa, Jendrik Seipp
Lifted planners are useful to solve tasks that are too hard to ground. Still, computing informative lifted heuristics is difficult: directly adapting ground heuristics to the lifted setting is often too expensive, and extracting heuristics from the lifted representation can be uninformative. A natural alternative for lifted planners is to use width-based search. These algorithms are among the strongest for ground planning, even the variants that do not access the action model. In this work, we adapt best-first width search to the lifted setting and show that this yields state-of-the-art performance for hard-to-ground planning tasks.
举起来的计划对于解决那些难以落地的任务很有用。然而,计算信息提升启发式是困难的:直接使地面启发式适应提升设置通常过于昂贵,并且从提升表示中提取启发式可能没有信息。对于提升的计划者来说,一个自然的选择是使用基于宽度的搜索。这些算法在地面规划中是最强的,即使是不访问行动模型的变体。在这项工作中,我们将最佳优先宽度搜索应用于提升设置,并表明这为难以落地的规划任务提供了最先进的性能。
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引用次数: 5
期刊
International Conference on Automated Planning and Scheduling
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