Mr. Zeeshan Aslam
Last updated on March 15th, 2023
Personal Information | ||
Name | Zeeshan Aslam | |
zaslam.buic@bahria.edu.pk | ||
Phone | 9260002 ext 1447 | |
Research Area | Data Science, Machine learning, Smart Grids, Energy management | |
Number of Publications | Conferences = 3, Journals = 2 |
Affiliation | ||
Designation | Lecturer | |
Department | Computer Science | |
University | Bahria University Islamabad Campus |
Qualification | |||
Degree | Passing Year | Majors | University |
Master of Science in Software Engineering | 2020 | Software Engineering | COMSATS University Islamabad, Pakistan |
Bachelors of Science in Software Engineering | 2018 | Software Engineering | University of Sargodha |
Teaching Experience | |||
Designation | From | To | Organization |
Lecturer | Feb 2021 | Date | Bahria University Islamabad |
Industrial Experience | |||
Designation | From | To | Organization |
Research Associate | July 2019 | Feb 2020 | COMSATS University Islamabad, Pakistan |
Publications |
Journals:
Sr. # | |
1. | Aslam Z., Javaid N., Ahmad A., et. al., “A Combined Deep Learning and Ensemble Learning Methodology to Avoid Electricity Theft in Smart Grids”, Energies, 13, p.5599, 2020. Doi:10.3390/en13215599. (IF=2.702) |
2. | Aslam Z., Ahmed F., et. al., “An Attention Guided Semi-supervised Learning Mechanism to Detect Electricity Frauds in the Distribution Systems”, IEEE Access, vol. 8, pp. 221767-221782, 2020. DOI: 10.1109/ACCESS.2020.3042636. (IF=3.745) |
Conferences:
Sr. # | |
1. | Z. Aslam, et. al., “An Enhanced Convolutional Neural Network model based on weather parameters for short-term electricity supply and demand”, accepted in 34-th International Conference on Advanced Information Networking and Applications (AINA-2020), Caserta, Italy, pp. 22-35. |
2. | A. Naeem, Z. Aslam, et. al., “Analyzing quality of software requirements; a comparison study on nlp tools,” in 2019 25th International Conference on Automation and Computing (ICAC), 2019, pp. 1-6 |
3. | Shehzad, F., Asif, M., Aslam, Z., Anwar, S., Rashid, H., Ilyasd, M., & Javaid, N. “Comparative Study of Data Driven Approaches towards Efficient Electricity Theft Detection in Micro Grids”, 2021. |
Book Chapters:
Sr. # | |
1. | Z. Aslam, et. al., “An Enhanced Convolutional Neural Network model based on weather parameters for short-term electricity supply and demand”, accepted in 34-th International Conference on Advanced Information Networking and Applications (AINA-2020), Caserta, Italy, pp. 22-35. |