Green Energy Water-Autonomous Greenhouse System: An Alternative Technology Approach Toward Sustainable Smart–Green Vertical Greening in a Smart City

Author(s):  
Paiyao Hung ◽  
KuangHui Peng
2021 ◽  
pp. 2141004
Author(s):  
Lingling Zhu ◽  
Jie Fangi Shi ◽  
Yi Hai Shi ◽  
Hai Peng Xu ◽  
A. Shanthini ◽  
...  

Energy is now seen as a significant resource that develops abundant on the world economy, with short supply and development. A study found that renewable energy systems are needed to prevent shortages. Hence, all the focus in this study to decrease electricity consumption and reduce the overall completion times for a regular console in green technology networks was an efficient and scalable production genomic solution. A Renewable green energy resources smart city (RGER-SC) framework is proposed that used a multi-target evolutionary algorithm was hybridized to be effective and calculated arithmetically in this study. This work deals with fostering renewable energy incorporation by adjusting federal charges to increase the energy accounting practitioners. Besides, this report analyses the timely generation of delay-tolerant demands and the maintenance of district heating at network infrastructure. In comparison, capacity differentials between consumers and information centres are considered and evaluated using the Renewable green energy resources smart city (RGER-SC) framework for energy conservation and controlled task management at an industrial level.


2020 ◽  
Vol 12 (8) ◽  
pp. 3140 ◽  
Author(s):  
Pei Pei ◽  
Zongjie Huo ◽  
Oscar Sanjuán Martínez ◽  
Rubén González Crespo

Presently, energy is considered a significant resource that grows scarce with high demand and population in the global market. Therefore, a survey suggested that renewable energy sources are required to avoid scarcity. Hence, in this paper, a smart, sustainable probability distribution hybridized genetic approach (SSPD-HG) has been proposed to decrease energy consumption and minimize the total completion time for a single machine in smart city machine interface platforms. Further, the estimated set of non-dominated alternative using a multi-objective genetic algorithm has been hybridized to address the problem, which is mathematically computed in this research. This paper discusses the need to promote the integration of green energy to reduce energy use costs by balancing regional loads. Further, the timely production of delay-tolerant working loads and the management of thermal storage at data centers has been analyzed in this research. In addition, differences in bandwidth rates between users and data centers are taken into account and analyzed at a lab scale using SSPD-HG for energy-saving costs and managing a balanced workload.


Author(s):  
Dr. Sumanta Bhattacharya

Abstract: Urban transformation is very important with rapid migration taking place from rural to urban sector. Smart city mission which was launched in 2015 , is a revolutionary approach to reform and rebuild old cities and develop 100 satellites based cities which will provide maximum benefit to people at a minimum cost with better infrastructure and services , smart agriculture and smart health care system , the smart cities are environmentally friendly and runs on technology , provide housing for all , it will also help to end poverty and alleviate the issue of urban slums . Smart cities is an area based approach for which India also needs to upgrade its cyber infrastructure and provide digital education to its citizens , a collaborative approach by the state and central government will make India’s smart city success . Decent cities which have no space left for accommodation is also rebuilding itself to make the standard of living better for people with sustainable development , promoting green economy , green energy and green funds . Keywords: Urban transformation, Smart cities, green economy, technology, rebuild, revolutionary approach


Sensors ◽  
2021 ◽  
Vol 21 (13) ◽  
pp. 4586
Author(s):  
Karisma Trinanda Putra ◽  
Hsing-Chung Chen ◽  
Prayitno ◽  
Marek R. Ogiela ◽  
Chao-Lung Chou ◽  
...  

The sparse data in PM2.5 air quality monitoring systems is frequently happened on large-scale smart city sensing applications, which is collected via massive sensors. Moreover, it could be affected by inefficient node deployment, insufficient communication, and fragmented records, which is the main challenge of the high-resolution prediction system. In addition, data privacy in the existing centralized air quality prediction system cannot be ensured because the data which are mined from end sensory nodes constantly exposed to the network. Therefore, this paper proposes a novel edge computing framework, named Federated Compressed Learning (FCL), which provides efficient data generation while ensuring data privacy for PM2.5 predictions in the application of smart city sensing. The proposed scheme inherits the basic ideas of the compression technique, regional joint learning, and considers a secure data exchange. Thus, it could reduce the data quantity while preserving data privacy. This study would like to develop a green energy-based wireless sensing network system by using FCL edge computing framework. It is also one of key technologies of software and hardware co-design for reconfigurable and customized sensing devices application. Consequently, the prototypes are developed in order to validate the performances of the proposed framework. The results show that the data consumption is reduced by more than 95% with an error rate below 5%. Finally, the prediction results based on the FCL will generate slightly lower accuracy compared with centralized training. However, the data could be heavily compacted and securely transmitted in WSNs.


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