Academic Editor
Author
Contributions by role
Author 3
Editor 4
Jianlei Kong
School of Computer Science and Artificial Intelligence, Beijing Technology and Business University, Beijing 100048, China
Summary
Jianlei Kong received the B.E. degree in industrial automation, the master’s degree in control theory engineering, and the Ph.D. degree in forestry engineering from Beijing Forestry University, China, in 2011, 2013, and 2016. He is currently an Associate Professor of system science with Beijing Technology and Business University. He has published a number of invention patents, software copyrights, and academic papers, including eight ESI hot papers (Top 0.1%) and 16 ESI highly cited papers (Top 1%). His research interests include time-series prediction, pattern recognition, deep learning, and blockchain traceability.
Edited Journals
IECE Contributions

Free Access | Research Article | 10 February 2025
High-Voltage Power Supply: Design Considerations and Optimization Techniques
IECE Transactions on Sensing, Communication, and Control | Volume 2, Issue 1: 1-10, 2025 | DOI: 10.62762/TSCC.2024.741277
Abstract
The main goal of this study is to design and develop a half-bridge inverter architecture specifically for high-voltage power supply applications. An effective, small, and affordable system that converts direct current (DC) to alternating current(AC) can be built, thanks to the IR2151 chip’s dependable characteristics and performance. To get the desired output voltage, the transformer first increases the voltage and then the voltage is increased with a voltage-doubling rectifier (VDR) circuit. The study emphasizes how crucial it is to choose components carefully and simulate the circuit design and implementation process to guarantee dependable performance. The experimental results validate... More >

Graphical Abstract
High-Voltage Power Supply: Design Considerations and Optimization Techniques

Free Access | Review Article | 29 October 2024 | Cited: 4
Synergistic UAV Motion: A Comprehensive Review on Advancing Multi-Agent Coordination
IECE Transactions on Sensing, Communication, and Control | Volume 1, Issue 2: 72-88, 2024 | DOI: 10.62762/TSCC.2024.211408
Abstract
Collective motion has been a pivotal area of research, especially due to its substantial importance in Unmanned Aerial Vehicle (UAV) systems for several purposes, including path planning, formation control, and trajectory tracking. UAVs significantly enhance coordination, flexibility, and operational efficiency in practical applications such as search-and-rescue operations, environmental monitoring, and smart city construction. Notwithstanding the progress in UAV technology, significant problems persist, especially in attaining dependable and effective coordination in intricate, dynamic, and unexpected settings. This study offers a comprehensive examination of the fundamental principles, mod... More >

Graphical Abstract
Synergistic UAV Motion: A Comprehensive Review on Advancing Multi-Agent Coordination

Free Access | Research Article | 21 October 2024 | Cited: 3
RF Planning And Optimization Of 5G On The City Campus (MUST) of Mirpur, Pakistan
IECE Transactions on Sensing, Communication, and Control | Volume 1, Issue 1: 52-59, 2024 | DOI: 10.62762/TSCC.2024.670663
Abstract
As we know, the world is rapidly moving towards 5G and B5G technology to achieve high data rates, massive communication capacity, connectivity, and low latency. 5G offers a latency of less than 1 ms and extremely high data volume compared to previous technologies. The main challenge is the complex nature of 5G network deployment, especially at high frequencies (3–300 GHz) on a university campus with varied building structures. In this paper, we will discuss a scenario for deploying 5G at the Mirpur University of Science and Technology (MUST) in Mirpur, Pakistan so that telecom operators and vendors who wish to deploy a 5G network on the campus in the future can draw on our research finding... More >

Graphical Abstract
RF Planning And Optimization Of 5G On The City Campus (MUST) of Mirpur, Pakistan

Free Access | Research Article | 20 October 2024 | Cited: 1
Comparison of Deep Learning Algorithms for Retail Sales Forecasting
IECE Transactions on Intelligent Systematics | Volume 1, Issue 3: 112-126, 2024 | DOI: 10.62762/TIS.2024.300700
Abstract
We investigate the use of deep learning models for retail sales predictions in this research. Having a proper sales forecasting can lead to optimization in inventory management, marketing strategies, and other core business operations. This research proposed to assess deep learning models such as Convolutional Neural Network (CNN), Long Short-Term Memory (LSTM), Multilayer Perceptron and hybrid CNN-LSTM model. The models are further improved by using some dense layers to embed daily sales data from the biggest pharmaceutical firm in the study. Models are then trained on 80% of the dataset and tested on remaining 20%. The accuracy of the proposed research is compared using evaluation metrics... More >

Graphical Abstract
Comparison of Deep Learning Algorithms for Retail Sales Forecasting