The Random Neural Network with a Genetic algorithm in Intelligent Buildings

Will Serrano
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引用次数: 1

Abstract

The Random Neural Network with a Genetic algorithm and its integration into an Intelligent Building: iBuilding is proposed in this paper. The presented biological method, founded on the Genome, codifies and transmits the information from the Intelligent Building. Furthermore, it also multiplexes its data entirely to generate Clusters of Buildings that are interconnected with each other. The key concept proposed in this paper is that the learned information obtained by iBuilding after its interaction with the environment is never lost when the building is decommissioned or retrofitted but transmitted to future iBuilding generations as distributed organisms. Data is codified in the network weights instead of the neurons, similar as the Genome, in order to enable an Artificial Intelligence evolution in iBuilding. The presented biological algorithm is inserted into an iBuilding model where sensorial neurons distributed within the Intelligent Building collect measurements about its environment and select relevant information. This proposed model has been validated with several research datasets that cover several key scenarios; experimental results demonstrate that the Random Neural Network Genetic Algorithm codifies, transmits and multiplexes iBuilding information to future generations with insignificant error, therefore, successfully creating a cluster of buildings.
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基于遗传算法的随机神经网络在智能建筑中的应用
本文提出了一种基于遗传算法的随机神经网络及其在智能建筑中的应用。所提出的生物方法以基因组为基础,对智能建筑的信息进行编码和传输。此外,它还将其数据完全复用,以生成相互连接的建筑物集群。本文提出的关键概念是,iBuilding在与环境相互作用后获得的学习信息不会在建筑物退役或改造时丢失,而是作为分布式生物传递给未来的iBuilding后代。数据被编码在网络权重中,而不是神经元中,类似于基因组,以便在iBuilding中实现人工智能的进化。所提出的生物算法被插入到智能建筑模型中,其中分布在智能建筑中的感觉神经元收集有关其环境的测量并选择相关信息。这个提议的模型已经用涵盖几个关键场景的几个研究数据集进行了验证;实验结果表明,随机神经网络遗传算法对iBuilding信息进行编码、传输和复用,误差较小,因此可以成功地创建建筑集群。
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