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Dive into the research topics where Scott Uk-Jin Lee is active.

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Featured researches published by Scott Uk-Jin Lee.


IEEE Access | 2017

Optimizing Lifespan and Energy Consumption by Smart Meters in Green-Cloud-Based Smart Grids

Isma Farah Siddiqui; Scott Uk-Jin Lee; Asad Abbas; Ali Kashif Bashir

Green clouds optimally use energy resources in large-scale distributed computing environments. Large scale industries such as smart grids are adopting green cloud paradigm to optimize energy needs and to maximize lifespan of smart devices such as smart meters. Both, energy consumption and lifespan of smart meters are critical factors in smart grid applications where performance of these factors decreases with each cycle of grid operation such as record reading and dispatching to the edge nodes. Also, considering large-scale infrastructure of smart grid, replacing out-of-energy and faulty meters is not an economical solution. Therefore, to optimize the energy consumption and lifespan of smart meters, we present a knowledge-based usage strategy for smart meters in this paper. Our proposed scheme is novel and generates custom graph of smart meter tuple datasets and fetches the frequency of lifespan and energy consumption factors. Due to very large-scale dataset graphs, the said factors are fine-grained through R3F filter over modified Hungarian algorithm for smart grid repository. After receiving the exact status of usage, the grid places smart meters in logical partitions according to their utilization frequency. The experimental evaluation shows that the proposed approach enhances lifespan frequency of 100 smart meters by 72% and optimizes energy consumption at an overall percentile of 21% in the green cloud-based smart grid.


Mathematical Problems in Engineering | 2015

An Effective Methodology with Automated Product Configuration for Software Product Line Development

Scott Uk-Jin Lee

The wide adaptation of product line engineering in software industry has enabled cost effective development of high quality software for diverse market segments. In software product line (SPL), a family of software is specified with a set of core assets representing reusable features with their variability, dependencies, and constraints. From such core assets, valid software products are configured after thoroughly analysing the represented features and their properties. However, current implementations of SPL lack effective means to configure a valid product as core assets specified in SPL, being high-dimensional data, are often too complex to analyse. This paper presents a time and cost effective methodology with associated tool supports to design a SPL model, analyse features, and configure a valid product. The proposed approach uses eXtensible Markup Language (XML) to model SPL, where an adequate schema is defined to precisely specify core assets. Furthermore, it enables automated product configuration by (i) extracting all the properties of required features from a given SPL model and calculating them with Alloy Analyzer; (ii) generating a decision model with appropriate eXtensible Stylesheet Language Transformation (XSLT) instructions embedded in each resolution effect; and (iii) processing XSLT instructions of all the selected resolution effects.


IEEE Access | 2017

Binary Pattern for Nested Cardinality Constraints for Software Product Line of IoT-Based Feature Models

Asad Abbas; Isma Farah Siddiqui; Scott Uk-Jin Lee; Ali Kashif Bashir

Software product line (SPL) is extensively used for reusability of resources in family of products. Feature modeling is an important technique used to manage common and variable features of SPL in applications, such as Internet of Things (IoT). In order to adopt SPL for application development, organizations require information, such as cost, scope, complexity, number of features, total number of products, and combination of features for each product to start the application development. Application development of IoT is varied in different contexts, such as heat sensor indoor and outdoor environment. Variability management of IoT applications enables to find the cost, scope, and complexity. All possible combinations of features make it easy to find the cost of individual application. However, exact number of all possible products and features combination for each product is more valuable information for an organization to adopt product line. In this paper, we have proposed binary pattern for nested cardinality constraints (BPNCC), which is simple and effective approach to calculate the exact number of products with complex relationships between application’s feature models. Furthermore, BPNCC approach identifies the feasible features combinations of each IoT application by tracing the constraint relationship from top-to-bottom. BPNCC is an open source and tool-independent approach that does not hide the internal information of selected and non-selected IoT features. The proposed method is validated by implementing it on small and large IoT application feature models with “n” number of constraints, and it is found that the total number of products and all features combinations in each product without any constraint violation.


international multi-topic conference | 2013

An Advanced Hyper-Efficient Design to Detect Random Peer-to-Peer Botnets

Isma Farah Siddiqui; Nawab Muhammad Faseeh; Scott Uk-Jin Lee; Mukhtiar Ali Unar

Botnets have become one of the most solemn threats to Internet security. Botnets comprises over a network of infected nodes known as ‘bot’. Bots are controlled by human operators (botmasters). Random nature of Peer-to-Peer botnets has influenced sinkhole researchers to compromise over occupation of hunted command and control in a complex manner and due to variable nature of action, they are often good deserters. In this paper, we present a design of an advanced hyper-efficient mechanism which has the ability to pursue Peer-to-Peer randomized botnets. It provides capacity to detain targeted sinkholes and identify arbitrary execution of contagion in infected nodes. In the end, method acquires the composition of different cubic formations for proper lookup of random natured Peer-to-Peer botnets.


Indian journal of science and technology | 2016

Multi-Objective Optimization of Feature Model in Software Product Line: Perspectives and Challenges

Asad Abbas; Isma Farah Siddiqui; Scott Uk-Jin Lee


Indian journal of science and technology | 2016

An Approach for Optimized Feature Selection in Software Product Lines using Union-Find and Genetic Algorithms

Asad Abbas; Zhiqiang Wu; Isma Farah Siddiqui; Scott Uk-Jin Lee


IEEE Access | 2018

Multi-Objective Optimum Solutions for IoT-Based Feature Models of Software Product Line

Asad Abbas; Isma Farah Siddiqui; Scott Uk-Jin Lee; Ali Kashif Bashir; Waleed Ejaz; Nawab Muhammad Faseeh Qureshi


Wireless Personal Communications | 2018

Stuck-at Fault Analytics of IoT Devices Using Knowledge-based Data Processing Strategy in Smart Grid

Isma Farah Siddiqui; Nawab Muhammad Faseeh Qureshi; Muhammad Akram Shaikh; Bhawani Shankar Chowdhry; Asad Abbas; Ali Kashif Bashir; Scott Uk-Jin Lee


KIISE Transactions on Computing Practices | 2018

Effective Methodology for Collecting Contextual Factors and Information that Affects The XACML Policy Evaluation

Youn-geun Ahn; Gichan Lee; Scott Uk-Jin Lee


한국컴퓨터정보학회 학술발표논문집 | 2017

Comparative Analysis of Centralized Vs. Distributed Locality-based Repository over IoT-Enabled Big Data in Smart Grid Environment

Isma Farah Siddiqui; Asad Abbas; Scott Uk-Jin Lee

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Ali Kashif Bashir

University of the Faroe Islands

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Bhawani Shankar Chowdhry

Mehran University of Engineering and Technology

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