Sustainable Environmental Design Using Green IOT with Hybrid Deep Learning and Building Algorithm for Smart City

被引:0
作者
Yuting Zhong
Zesheng Qin
Abdulmajeed Alqhatani
Ahmed Sayed M. Metwally
Ashit Kumar Dutta
Joel J. P. C. Rodrigues
机构
[1] Southeast University,School of Civil Engineering
[2] Southeast University,The Key Laboratory of Concrete and Prestressed Concrete Structures of the Ministry of Education
[3] Najran University,Department of Information Systems, College of Computer Science and Information Systems
[4] King Saud University,Department of Mathematics, College of Sciences
[5] AlMaarefa University,Department of Computer Science and Information Systems, College of Applied Sciences
[6] Lusófona University,COPELABS
[7] Instituto de Telecomunicações,undefined
来源
Journal of Grid Computing | 2023年 / 21卷
关键词
Green IoT; Energy efficiency; Sustainable environment; Green energy; Deep learning techniques;
D O I
暂无
中图分类号
学科分类号
摘要
Smart cities and urbanization use enormous IoT devices to transfer data for analysis and information processing. These IoT can relate to billions of devices and transfer essential data from their surroundings. There is a massive need for energy because of the tremendous data exchange between billions of gadgets. Green IoT aims to make the environment a better place while lowering the power usage of IoT devices. In this work, a hybrid deep learning method called "Green energy-efficient routing (GEER) with long short-term memory deep Q-Network is used to minimize the energy consumption of devices. Initially, a GEER with Ant Colony Optimization (ACO) and AutoEncoder (AE) provides efficient routing between devices in the network. Next, the long short-term memory deep Q-Network based Reinforcement Learning (RL) method reduces the energy consumption of IoT devices. This hybrid approach leverages the strengths of each technique to address different aspects of energy-efficient routing. ACO and AE contribute to efficient routing decisions, while LSTM DQN optimizes energy consumption, resulting in a well-rounded solution. Finally, the proposed GELSDQN-ACO method is compared with previous methods such as RNN-LSTM, DPC-DBN, and LSTM-DQN. Moreover, we critically analyze the green IoT and perform implementation and evaluation.
引用
收藏
相关论文
共 92 条
[1]  
Laxmi LE(2021)Green energy efficient routing with deep learning based anomaly detection for internet of things (IoT) communications Mathematics. 9 500-100
[2]  
Sultan SMD(2021)Energy conservation for internet of things tracking applications using deep reinforcement learning Sensors. 21 3261-4918
[3]  
Liang X(2018)Device-Free Motion & Trajectory Detection via RFID ACM Trans. Embed. Comput. Syst. 17 78-490
[4]  
Huang Z(2023)Bi, Y, Urbanization and agriculture intensification jointly enlarge the spatial inequality of river water quality Sci. Total. Environ. 878 162559-43
[5]  
Yang S(2020)Huang, K, Mapping urban dynamics (1992–2018) in Southeast Asia using consistent nighttime light data from DMSP and VIIRS Remote. Sens. Environ. 248 111980-405
[6]  
Qiu L(2019)Internet of things based high security border surveillance strategy Asian J. Appl. Sci. Technol. (AJAST) 3 94-12517
[7]  
Li Y(2020)Consensus for Multiagent-Based Supply Chain Systems Under Switching Topology and Uncertain Demands IEEE Trans. Syst. Man. Cyberneti. Syst. 50 4905-1197
[8]  
Mi W(2022)Hong, X, Does social perception data express the spatio-temporal pattern of perceived urban noise? A case study based on 3,137 noise complaints in Fuzhou China. Applied Acoustics 201 109129-166
[9]  
Ji L(2023)Liu, J, Task Co-Offloading for D2D-Assisted Mobile Edge Computing in Industrial Internet of Things IEEE Trans. Industr. Inf. 19 480-2095
[10]  
He Q(2022)Wang, D, An Energy-Efficient Framework for Internet of Things Underlaying Heterogeneous Small Cell Networks IEEE Trans. Mob. Comput. 21 31-undefined