Design and implementation of a scenic fire detection system based on wireless network control

Lai WenYa, Wan Xinhai
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Abstract

Abstract: Most of the current fire detection systems are based on Zig Bee, WLAN or operator's 4G connections, which have the short communication distance, low capacity and high cost, and cannot meet the current and future needs of the Internet of Things for low power consumption, long distance, high capacity and low cost. In addition, these fire detection systems do not provide a good visualisation of the data and lack subsequent processing and analysis of the data. To address the shortcomings of current fire detection systems, this paper designs a Lo Ra wireless network-based fire detection system for scenic areas. (1) The Lo Ra terminal node is designed and built, including hardware design and software design. (2) The back-end system for fire detection in scenic areas is designed and built based on the Things Board framework.(3) A CNN-BLSTM algorithm model based on the attention mechanism was designed and built for environmental temperature prediction. In order to further enhance the analysis and utilisation of the data, the LSTM algorithm model was firstly built based on the characteristics of the existing collected data sources, and two levels of optimisation were carried out on the basis of the algorithm model. Firstly, to address the shortcomings that the LSTM model lacks the ability to deal with individual anomalous data disturbances and can only be trained forward to mine data links, a CNN and a BLSTM are introduced. and BLSTM pairs were introduced to extract the trend and pre/post features of temperature, respectively. Secondly, an attention mechanism is introduced to reconstruct the model for the final optimization of multiple environmental features that have different weights on temperature. The final reconstruction was carried out by combining with FNN, RNN.LSTM and CNN-BLSTM, it is concluded that the attention-based CNN-BLSTM .The results were compared with FNN, RNN, LSTM and CNN-BLSTM time-series models. Keywords: Fire Detection Systems, Lo Ra, Data Visualisation, Time Series Prediction
基于无线网络控制的景区火灾探测系统的设计与实现
摘要:目前的火灾探测系统大多基于zigbee、WLAN或运营商的4G连接,存在通信距离短、容量小、成本高的问题,无法满足当前和未来物联网对低功耗、远距离、高容量、低成本的需求。此外,这些火灾探测系统不能提供良好的数据可视化,并且缺乏对数据的后续处理和分析。针对现有火灾探测系统的不足,本文设计了一种基于Lo Ra无线网络的景区火灾探测系统。(1)设计并搭建Lo Ra终端节点,包括硬件设计和软件设计。(2)基于Things Board框架,设计构建景区火灾探测后端系统。(3)设计构建基于关注机制的CNN-BLSTM算法模型,用于环境温度预测。为了进一步提高数据的分析和利用能力,首先根据现有采集数据源的特点,建立LSTM算法模型,并在此基础上进行两级优化。首先,针对LSTM模型缺乏处理单个异常数据干扰的能力,只能前向训练挖掘数据链的缺点,引入了CNN和BLSTM。和BLSTM对分别提取温度变化趋势和前后特征。其次,引入注意机制重构模型,对具有不同温度权重的多个环境特征进行最终优化;最后结合FNN、RNN进行重建。LSTM和CNN-BLSTM,得出了基于注意力的CNN-BLSTM,并将结果与FNN、RNN、LSTM和CNN-BLSTM时间序列模型进行了比较。关键词:火灾探测系统,Lo Ra,数据可视化,时间序列预测
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