基于深度强化学习的wsn智能家居监控系统设计

Ahmad Taqwa, None Indra Griha Tofik Isa, None Indri Ariyanti
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引用次数: 0

摘要

智能家居系统技术发展迅速,为人类生活提供了便利。几种智能家居技术,特别是监控系统,是通过集成安防系统、模糊方法、节能方法等几个方面发展起来的。然而,问题是如何构建一个准确、方便、低成本的智能家居系统。在本研究中,基于温度、湿度和二氧化碳浓度三个参数,开发了一种集成无线传感器网络(WSNs)和深度强化学习(DRL)的智能家居监控系统。实验方法通过(1)验证WSNs的精度质量;(2)确定系统中实现的最佳模型;(3)在智能家居监控系统上测量DRL系统的质量。根据测试结果,得出以下几个指标:(1)WSN测试的准确率为98.52%;(2)系统实现的建模结果准确率为97.70%;(3)通过21个测试场景对智能家居监控系统进行DRL系统测试,准确率达到95.52%。该智能监控系统的测试指标证明,所开发的系统具有精度高、使用方便、成本低等优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing A WSNs-based Smart Home Monitoring System through Deep Reinforcement Learning
The technology of smart home systems has developed rapidly and provides convenience for human life. Several smart home technologies, especially monitoring systems, have been developed by integrating several aspects, including security systems, fuzzy methods, and energy saving methods. However, the problem is how to build a smart home system that is accurate, convenient, and low-cost. In this research, the development of a smart home monitoring system that integrates wireless sensor networks (WSNs) and deep reinforcement learning (DRL) is carried out based on three parameters, i.e. temperature, humidity and CO2 level. The experimental method is carried out by (1) validating the accuracy quality of WSNs; (2) determining the best model implemented in the system; and (3) measuring the quality of the DRL system on the smart home monitoring system. Based on the test results, several indicators were obtained: (1) WSN testing resulted in an accuracy of 98.52%; (2) the accuracy of the modeling results implemented in the system is 97.70%; and (3) DRL system test on the smart home monitoring system through 21 test scenarios resulted in an accuracy of 95.52%. The indicators of testing this smart monitoring system prove that the developed system provides the advantages of accuracy, ease of use, and low cost.
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