Design of Event Management System for Smart Retail Stores with IoT Edge

  IJETT-book-cover  International Journal of Engineering Trends and Technology (IJETT)          
  
© 2020 by IJETT Journal
Volume-68 Issue-11
Year of Publication : 2020
Authors : RR Karthikeyan, Dr. B. Raghu
DOI :  10.14445/22315381/IJETT-V68I11P210

Citation 

MLA Style: RR Karthikeyan, Dr. B. Raghu  "Design of Event Management System for Smart Retail Stores with IoT Edge" International Journal of Engineering Trends and Technology 68.11(2020):81-88. 

APA Style:RR Karthikeyan, Dr. B. Raghu. Design of Event Management System for Smart Retail Stores with IoT Edge  International Journal of Engineering Trends and Technology, 68(11),81-88.

Abstract
Handling the emergency events from the HVAC and Refrigeration system of the retail store is critical to avoid the food wastage, repair free cold storage, and maintain a comfortable shopping environment so the customer can spend more time and purchase more products. The refrigeration system keeps the food in good condition to avoid wastage before it expires. Proper lighting and air-conditioning provide a better shopping experience.
IoT Solutions are providing a real-time connected experience by interconnecting the machines, assets, and services. Retail stores can improve business profits, reduce food wastage, and increase the life of refrigeration and HVAC systems by doing predictive analysis from the sensor data. Sensors are attached to those assets to read the temperature, pressure, and setpoints.
Design of IoT Edge informed decision-making system for the retail store is explained, the Data Collector Module extracts the sensor Data (readings) from retail stores in Immediately. Automated work orders are created to assign the responsible team`s issues to take care of in a specific time based on the severity.

Reference

[1] Sanjana Kadaba Viswanath., et al., 2016 Senior Member, IEEE. System Design of Internet-of-Things for Residential Smart Grid. http://www.ietf.org/dyn/wg/charter/core-charter.html
[2] José Ramírez-Faz., et al., 2020 Monitoring of Temperature in Retail Refrigerated Cabinets Applying IoT over Open-Source Hardware and Software, www.mdpi.com/journal/sensors.
[3] MehalaChandran, Thennarasan., et al., 2019 An IoT Based Smart Parking System. International Conference Computer Science and Engineering-Journal of Physics: Conference Series.
[4] Mohammad NaimurRahman. et al., 2016. Machine Learning with Big Data, An Efficient Electricity Generation Forecasting System
[5] Amir Esmailpour., et al., 2016. Big Data Research www.elsevier.com/locate/bdr.
[6] Noura Alhakbani *, Mohammed Mehedi Hassan ID and Mourad Ykhlef, 2017. An Effective Semantic Event Matching System in the Internet of Things (IoT) Environment. www.mdpi.com/journal/sensors.
[7] RR Karthikeyan, Dr. B Raghu, IoT Edge Data Retrieval System for Big Data Analytics in Smart Retail Stores. International Journal of Innovative Technology and Exploring Engineering (IJITEE) ISSN: 2278-3075, 9(5) (2020).
[8] Surendiran, R., Rajan, K.P., and Sathish Kumar, M., 2010. Study on Customer targeting using Association Rule Mining. International Journal on Computer Science and Engineering, 2(7) (2010) 2483-2484.
[9] RR Karthikeyan, Dr. B Raghu, Sensor Data Collection and Its Architecture with the Internet of Things. International Journal of Engineering and Advanced Technology (IJEAT) ISSN: 2249 – 8958, 9(1) (2019).
[10] Abdulkadir A., et al., An Integrated IoT System Pathway for Smart Cities. International Journal on Emerging Technologies 11(1) (2020).
[11] RR Karthikeyan, Dr. B Raghu, Data Analytics on Big Data. International Journal of Advanced Research and Development ISSN: 2455-4030, 2(3) (2017).
[12] Han Chen, Paul Chou, Sastry Duri, Hui Lei, Johnathan Reason, The Design and Implementation of a Smart Building Control System 2009 IEEE International Conference on e-Business Engineering.
[13] Ben-Nakhi, A. E., & Mahmoud, M. A. Cooling load prediction for buildings using general regression neural networks. Energy Conversion and Management. 45(13-14) (2004) 2127-2141.
[14] Kwok, S. S., Yuen, R. K., & Lee, E. W. An intelligent approach to assessing the effect of building occupancy on building cooling load prediction. Building and Environment, 46(8) (2011) 1681-1690.
[15] Nguyen, T. A., & Aiello, M, Energy intelligent buildings based on user activity: A survey. Energy and Buildings, (56) 244-257.
[16] Li, Q., Meng, Q., Cai, J., Yoshino, H., & Mochida, A. (2009). Applying the support vector machine to predict the hourly cooling load in the building. Applied Energy, 86(10), 2249-2256.
[17] Surendiran, R., and Alagarsamy, K., A Novel Tree-Based Security Approach for Smart Phones, IJETT International Journal of Computer Trends and Technology (IJCTT), 3(6) (2012) 787-792.
[18] Xu, C., Chen, H., Wang, J., Guo, Y., & Yuan, Y. Improving prediction performance for indoor temperature in public buildings based on a novel deep learning method. Building and Environment, 148 (2019) 128-135.
[19] Doukas, H., Patlitzianas, K. D., Iatropoulos, K., & Psarras, J., Intelligent building energy management system using rule sets. Building and Environment, 42(10) (2007) 3562-3569.
[20] Alawadi, S., Mera, D., Fernández-Delgado, M., Alkhabbas, F., Olsson, C. M., & Davidsson, P. A comparison of machine learning algorithms for forecasting indoor temperature in smart buildings. Energy Systems, (2020) 1-17.
[21] Dezfouli, M. M. S., Yazid, M. Z. A., Zakaria, A., Ahmed, S. F., Ali, A., & Moghimi, S. Application of high-efficiency motors in the HVAC system for energy-saving purposes. In IEEE International Conference on Innovative Research and Development (ICIRD) IEEE (2018) (1-5).
[22] Chang, L., Wang, H., & Wang, L, Cloud-Based parallel implementation of an intelligent classification algorithm for fault detection and diagnosis of HVAC systems. In 2017 International Smart Cities Conference (ISC2) (2017) (1-6) IEEE.
[23] Preglej, A., Rehrl, J., Schwingshackl, D., Steiner, I., Horn, M., & Škrjanc, I. Energy-efficient fuzzy-model-based multivariable predictive control of an HVAC system. Energy and Buildings, 82 (2014) 520-533.

Keywords
Smart retail stores; IoT Edge; Building Management System; Event Management system