IoT-based green city architecture using secured and sustainable android services

Green and smart cities deliver services to their residents using mobile applications that make daily life more convenient. The privacy and security of these applications are significant in providing sustainable services in a green city. The software cloning is a severe threat which may breach the se...

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Bibliographic Details
Published in:Environmental technology & innovation Vol. 20; p. 101091
Main Authors: Ullah, Farhan, Al-Turjman, Fadi, Nayyar, Anand
Format: Journal Article
Language:English
Published: Elsevier B.V 01.11.2020
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ISSN:2352-1864, 2352-1864
Online Access:Get full text
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Summary:Green and smart cities deliver services to their residents using mobile applications that make daily life more convenient. The privacy and security of these applications are significant in providing sustainable services in a green city. The software cloning is a severe threat which may breach the security and privacy of android applications. A centrally controlled and automated screening system across multiple app stores is inevitable to prevent the release of copyrighted or cloned copies of these apps. In this paper, we proposed IoT-enabled green city architecture for clone detection in android markets using a deep learning approach. First, the proposed system obtained an original APK file together with potential candidate cloned APKs via the cloud network. For each subject software, the system uses an APK Extractor tool to retrieve Dalvik Executable (DEX) files. The Jdex decompiler is utilized to retrieve Java source files through Dalvik Executables. Second, the AST features are extracted using ANother Tool for Language Recognition (ANTLR) parser. Third, the linear features are mined from these hierarchical structures, and Term Frequency Inverse Document Frequency (TFIDF) is applied to estimate the significance of each feature. Finally, the deep learning model is configured to detect cloned apps. The deep learning model is fine-tuned to get better accuracy. The proposed approach is analyzed on five different cloned applications collected from different android markets. The main objective of this system is to avoid the release of pirated apps with various pirated labels in multiple app markets. •Proposed the IoT-based Green city architecture for security and sustainable services.•Extracting the abstract view features of android application using Abstract Syntax Tree.•Preventing the software clone attacks by investigating the structure of code.•TFIDF method is proposed to analyze the significance of each feature in terms of local and global weights.•Implementing the deep learning approach to investigate the similar code fragments in different mobile applications
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ISSN:2352-1864
2352-1864
DOI:10.1016/j.eti.2020.101091