Author
Listed:
- Akram AbdelQader
- Khalil Awad
- Mohammad A. Abedel Qader
Abstract
Internet of Things (IoT) is one of the growing technologies embedded in most application systems. It aims to solve real-world problems in different environmental fields such as industry, education, healthcare etc. IoT is becoming an integral part of daily devices and technologies opening a need for efficient and novel solutions to meet functional requirements that are more complex than those in traditional requirement engineering (RE). In addition, remotely smart systems present new challenges and lack in RE process that needs a solution. IoT systems open new research issues in RE such as elicitation, analysis, specification and management of IoT RE. To solve this lack of RE new smart techniques based on AI must be applied in the elicitation RE process. This paper presents a new smart dynamic approach in the RE elicitation phase to build dynamic functional requirements based on AI models. New stakeholder expectation needs from the smart IOT system are collected and stored in the requirements dataset. These new requirements are analyzed and classified into requirement features using the Support Vector Machine classifier. These classified functional requirements are compared to the IoT system, and the positive training requirements are added to the smart functional requirement presented in the IoT system. The proposed approach shows a significant accuracy of 95.64%, where 395 features were classified and detected from 413 entered features. This paper measures the gap between stakeholder expectations and device requirements in smart systems; these proposed measures can be implemented to optimize smart device specifications for manufacturers.
Suggested Citation
Akram AbdelQader & Khalil Awad & Mohammad A. Abedel Qader, 2024.
"A novel approach to elicit distributed requirements for IOT system using SVM classifier,"
Edelweiss Applied Science and Technology, Learning Gate, vol. 8(6), pages 6849-6857.
Handle:
RePEc:ajp:edwast:v:8:y:2024:i:6:p:6849-6857:id:3473
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