Abstract

It is estimated that more than half of the world population lives in cities according to (UN forecasts, 2014), so cities are vital. Cities, as we all know facing with complex challenges – for smart cities the outdated traditional planning of transportation, environmental contamination, finance management and security observations are not adequate. The developing framework for smart-city requires sound infrastructure, latest current technology adoption. Modern cities are facing pressures associated with urbanization and globalization to improve quality-of-life of their citizens. A framework model that enables the integration of cloud-data, social network (SN) services and smart sensors in the context of smart cities is proposed. A service-oriented radical framework enables the retrieval and analysis of big data sets stemming from Social Networking (SN) sites and integrated smart sensors collecting data streams for smart cities. Smart cities’ understanding is a broad concept transportation sector focused in this article. Fuzzification is shown to be a capable mathematical approach for modelling traffic and transportation processes. To solve various traffic and transportation problems a detailed analysis of fuzzy logic systems is developed. This paper presents an analysis of the results achieved using Mamdani Fuzzy Inference System to model complex traffic processes. These results are verified using MATLAB simulation.

Highlights

  • Areej FatimaAbstract—It is estimated that more than half of the world population lives in cities according to (UN forecasts, 2014), so cities are vital

  • It is the time of Social Networking, Cloud Computing and explosion of smart sensors deployed everywhere [1]

  • Internet of Vehicle (IoV), a unique solution for smart traffic management is discussed by Dandala et al They argued that IoV can be an effective solution conventional Internet of Things (IoT) based traffic management technique to overcome traditional traffic issues

Read more

Summary

Areej Fatima

Abstract—It is estimated that more than half of the world population lives in cities according to (UN forecasts, 2014), so cities are vital. As we all know facing with complex challenges – for smart cities the outdated traditional planning of transportation, environmental contamination, finance management and security observations are not adequate. A framework model that enables the integration of cloud-data, social network (SN) services and smart sensors in the context of smart cities is proposed. A service-oriented radical framework enables the retrieval and analysis of big data sets stemming from Social Networking (SN) sites and integrated smart sensors collecting data streams for smart cities. This paper presents an analysis of the results achieved using Mamdani Fuzzy Inference System to model complex traffic processes. These results are verified using MATLAB simulation

INTRODUCTION
LITERATURE REVIEW
SMART-CITY KEY FEATURES REALIZATION
SOCIAL ANALYSES
PROPOSED MFIS BASED SOLUTION
Inputs
Input Fuzzy Sets
Membership Functions
Rule-Based
Findings
CONCLUSION AND FUTURE WORK

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.