Consensus for agents with general dynamics using optimistic optimization

L. Buşoniu, I. Morǎrescu
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引用次数: 3

Abstract

An important challenge in multiagent systems is consensus, in which the agents must agree on certain controlled variables of interest. So far, most consensus algorithms for agents with nonlinear dynamics exploit the specific form of the nonlinearity. Here, we propose an approach that only requires a black-box simulation model of the dynamics, and is therefore applicable to a wide class of nonlinearities. This approach works for agents communicating on a fixed, connected network. It designs a reference behavior with a classical consensus protocol, and then finds control actions that drive the nonlinear agents towards the reference states, using a recent optimistic optimization algorithm. By exploiting the guarantees of optimistic optimization, we prove that the agents achieve practical consensus. A representative example is further analyzed, and simulation results on nonlinear robotic arms are provided.
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用乐观优化方法求解具有一般动力学的智能体的一致性
在多智能体系统中一个重要的挑战是共识,其中智能体必须就某些感兴趣的控制变量达成一致。到目前为止,大多数针对具有非线性动力学的智能体的一致性算法都利用了非线性的特定形式。在这里,我们提出了一种方法,只需要一个动力学的黑盒模拟模型,因此适用于广泛的非线性。这种方法适用于在固定连接的网络上进行通信的代理。采用经典的共识协议设计了一个参考行为,然后使用最新的乐观优化算法找到驱动非线性智能体向参考状态移动的控制动作。通过利用乐观优化的保证,我们证明了智能体实现了实际共识。最后对一个典型实例进行了分析,并给出了非线性机械臂的仿真结果。
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