数据驱动多智能体非凸优化的概率可行性

IF 7.3 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Annual Reviews in Control Pub Date : 2023-01-01 DOI:10.1016/j.arcontrol.2023.100925
Lucrezia Manieri, Alessandro Falsone, Maria Prandini
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引用次数: 0

摘要

本文主要研究受不确定性影响的多智能体系统的最优运行问题。特别是,我们考虑了一种合作设置,其中智能体共同优化性能指标,该指标与对其离散和连续决策变量的单个约束以及耦合全局约束兼容。我们假设个体约束受到不确定性的影响,每个代理都通过一组私有数据知道不确定性,这些数据不能与其他代理共享。利用统计学习理论的工具,我们为通过分散/分布式方案获得的多代理问题(可能是次优的)解决方案提供基于数据的概率可行性保证,该方案保留了本地信息的隐私性。基于数据的解决方案的泛化特性取决于每个局部数据集的大小和不确定单个约束集的复杂性。在线性个体约束的情况下,导出了显式边界。对一个公共数据集和独立的局部不确定性进行了比较分析。
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Probabilistic feasibility in data-driven multi-agent non-convex optimization

In this paper, we focus on the optimal operation of a multi-agent system affected by uncertainty. In particular, we consider a cooperative setting where agents jointly optimize a performance index compatibly with individual constraints on their discrete and continuous decision variables and with coupling global constraints. We assume that individual constraints are affected by uncertainty, which is known to each agent via a private set of data that cannot be shared with others. Exploiting tools from statistical learning theory, we provide data-based probabilistic feasibility guarantees for a (possibly sub-optimal) solution of the multi-agent problem that is obtained via a decentralized/distributed scheme that preserves the privacy of the local information. The generalization properties of the data-based solution are shown to depend on the size of each local dataset and on the complexity of the uncertain individual constraint sets. Explicit bounds are derived in the case of linear individual constraints. A comparative analysis with the cases of a common dataset and of local uncertainties that are independent is performed.

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来源期刊
Annual Reviews in Control
Annual Reviews in Control 工程技术-自动化与控制系统
CiteScore
19.00
自引率
2.10%
发文量
53
审稿时长
36 days
期刊介绍: The field of Control is changing very fast now with technology-driven “societal grand challenges” and with the deployment of new digital technologies. The aim of Annual Reviews in Control is to provide comprehensive and visionary views of the field of Control, by publishing the following types of review articles: Survey Article: Review papers on main methodologies or technical advances adding considerable technical value to the state of the art. Note that papers which purely rely on mechanistic searches and lack comprehensive analysis providing a clear contribution to the field will be rejected. Vision Article: Cutting-edge and emerging topics with visionary perspective on the future of the field or how it will bridge multiple disciplines, and Tutorial research Article: Fundamental guides for future studies.
期刊最新文献
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