物理污名在多重不可分约束下的分散优化中的应用:形式化方法和智能照明实例

Theodore P. Pavlic
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引用次数: 0

摘要

本文提出了一种分布式异步智能照明算法,该算法在满足多个用户照明约束的同时,最大限度地减少了集体用电量,并且参与分布式计算的智能体之间需要很少的通信。因此,该方法可以任意扩展,适应外部干扰,并且对单个代理的故障具有鲁棒性。该算法是用于约束非线性优化的分散原始空间算法的一个示例,该算法使用物理系统中存在的污名记忆线索实现代理之间的协调,而不是明确的通信和同步。这项工作不仅利用了污名化(一种最初用于描述群居昆虫分散决策的特性),而且该算法的细节也受到了经典的社会觅食理论和最近在群居昆虫大量营养调节方面的结果的启发。本文的理论分析保证了分散污名耦合系统收敛于最优资源配置的有限邻域内。这些结果通过在小型智能照明场景中使用该算法的硬件实现进行了验证。还有其他适合这些方法的实时分布式资源分配应用,如分布式发电,一般来说,本文的目的是提供概念证明,可以利用网络物理系统中的物理变量来减少算法的通信负担。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Physical Stigmergy in Decentralized Optimization under Multiple Non-separable Constraints: Formal Methods and an Intelligent Lighting Example
In this paper, a distributed asynchronous algorithm for intelligent lighting is presented that minimizes collective power use while meeting multiple user lighting constraints simultaneously and requires very little communication among agents participating in the distributed computation. Consequently, the approach is arbitrarily scalable, adapts to exogenous disturbances, and is robust to failures of individual agents. This algorithm is an example of a decentralized primal-space algorithm for constrained non-linear optimization that achieves coordination between agents using stigmergic memory cues present in the physical system as opposed to explicit communication and synchronization. Not only does this work make of stigmergy, a property first used to describe decentralized decision making in eusocial insects, but details of the algorithm are inspired by classic social foraging theory and more recent results in eusocial-insect macronutrient regulation. This theoretical analysis in this paper guarantees that the decentralized stigmergically coupled system converges to within a finite neighborhood of the optimal resource allocation. These results are validated using a hardware implementation of the algorithm in a small-scale intelligent lighting scenario. There are other real-time distributed resource allocation applications that are amenable to these methods, like distributed power generation, in general, this paper means to provide proof of concept that physical variables in cyberphysical systems can be leveraged to reduce the communication burden of algorithms.
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