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DCOPs Meet the Real World: Exploring Unknown Reward Matrices with Applications to Mobile Sensor Networks

机译:DCOPS符合现实世界:探索带有应用于移动传感器网络的未知奖励矩阵

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Buoyed by recent successes in the area of distributed constraint optimization problems (DCOPs), this paper addresses challenges faced when applying DCOPs to real-world domains. Three fundamental challenges must be addressed for a class of real-world domains, requiring novel DCOP algorithms. First, agents may not know the payoff matrix and must explore the environment to determine rewards associated with variable settings. Second, agents may need to maximize total accumulated reward rather than instantaneous final reward. Third, limited time horizons disallow exhaustive exploration of the environment. We propose and implement a set of novel algorithms that combine decision-theoretic exploration approaches with DCOP-mandated coordination. In addition to simulation results, we implement these algorithms on robots, deploying DCOPs on a distributed mobile sensor network.
机译:最近在分布式约束优化问题面积(DCOPS)中取得成功,本文解决了将DCOPS应用于现实世界领域时面临的挑战。一类现实世界领域必须解决三个基本挑战,需要新颖的DCOP算法。首先,代理可能不知道收益矩阵,必须探索环境以确定与变量设置相关的奖励。其次,代理人可能需要最大化总累积奖励而不是瞬时最终奖励。第三,时间限定视野不允许彻底探索环境。我们提出并实施了一组新颖的算法,将决策理论勘探方法与DCOP-Commedated协调相结合。除了仿真结果外,我们还在机器人上实现了这些算法,在分布式移动传感器网络上部署DCOPS。

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