提出了一种基于切片技术和基于组成的聚类物联网的智能建筑温度控制方法

Armin Rabieifard, Lida Naderlou, Zahra Tayyebi Qasabeh
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引用次数: 0

摘要

今天,在计算住宅、工业和其他单位的冷热负荷时,能源消耗是很重要的。为了计算、设计和选择供热制冷系统,需要一种合适的消耗和成本分析方法来准备空调电机所需的数据,并设计一个智能系统。在本研究中,提出了一种基于网络切割和聚类技术相结合的物联网背景下智能建筑温度平衡方法。为了实现该方法中算法的优化,需要将异构数据转化为同构数据,这需要引入复杂的网络和适当的聚类技术。在该方法中,通过物联网收集信息,生成这些数据的图矩阵,然后通过人工智能方法和分层聚类、高斯混合、K-means三种方法相结合的方法进行记录,与初步结果进行比较。最后,由于K-means方法的可靠性和使用多数投票的权重,K-means方法达到0.4,被选为聚类方法。提出的方法的主要部分是基于不同的分类在适当的标准进行评估。记录了可接受的结果,最小值为88%,最大值约为100,可以确认所提出方法的结果。该方法的所有假设都是可能的和可接受的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PROVIDE A METHOD IMPROVING TEMPERATURE CONTROL IN SMART BUILDINGS BASED IN SLICING TECHNIQUE AND CLUSTERING IOT NETWORK BASED ON COMPOSITION
Today, energy consumption is important in calculating the heating and cooling loads of residential, industrial, and other units. In order to calculate, design, and select the heating-cooling system, a suitable method of consumption and cost analysis is needed to prepare the required data for air conditioning motors and design an intelligent system. In this research, a method for balancing the temperature of an intelligent building in the context of the Internet of Things is presented based on a combination of network cutting and clustering techniques. In order to achieve the optimization of the algorithm in this method, it is necessary to convert heterogeneous data into homogeneous data, which was done by introducing a complex network and appropriate clustering techniques. In this method, information was collected by the IoT, and a graph matrix of these data was generated, then recorded by an artificial intelligence method and a combination of three methods of hierarchical clustering, Gaussian mixture, and K-means for comparison with the preliminary results. Finally, due to the reliability of the K-means method and the use of majority voting for weights, the K-means method reached 0.4 and was selected as the clustering method. The main part of the proposed method is based on different classifications in Appropriate criteria that were evaluated. Acceptable results were recorded so that with the minimum value of 88% and the highest value of about 100, the results of the proposed method can be confirmed. All hypotheses of the method can be declared possible and acceptable.
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