Tech
AI in Power System Protection: New Horizons in Research
In the modern world, the application of Artificial Intelligence (AI) and automated technologies has opened new frontiers in securing power systems and ensuring sustainable energy. Engineer Md Al Imran is at the forefront of this transformation, working for Siemens, one of the world’s largest and most influential technology and engineering company. He currently serves as a Technical Specification Specialist at Siemens Industry Inc. in Texas, USA.
A Unique Synergy of Industry and Research
Md Al Imran is not only a skilled specialist at Siemens but also a leading global researcher in the power sector. His research papers are so widely recognized that he currently ranks among the top 0.01% of most-cited researchers in his field globally. When he designs power systems for critical national infrastructure at Siemens, his work is backed by years of rigorous scientific inquiry.
AI-Driven Autonomous Systems: A significant portion of Imran’s research involves automating power systems using AI and the Internet of Things (IoT). This technology operates on three levels: Optimization – Using AI simulation models, the system automatically determines the limits for renewable energy integration to minimize carbon emissions. Predictive Maintenance – Imran utilizes IoT sensors to maintain the efficiency of solar power plants. These sensors detect dust accumulation on panels in real-time, schedule automated cleaning, and predict potential faults. Smart Integration – His research on Building-Integrated Photovoltaics (BIPV) transforms building windows or facades into energy-generating components, where AI-driven control systems balance energy production and consumption autonomously.
Advanced Signal Processing and Fault Detection: One of the crown jewels of Imran’s research is the detection of High Impedance Faults (HIF) in power systems. To solve this complex issue, he developed a method that analyzes system data by collecting information from current flow and magnetic fields. He employs the Discrete Wavelet Transform (DWT) method, which breaks down signals into various levels to identify subtle deviations or “transients.” Furthermore, he utilizes the Hilbert Transform to analyze signal phase and amplitude. This act as a “digital stethoscope” for the power grid, effectively preventing fires and energy wastage.
Real-World Impact and Future Vision
Imran is applying his research insights through Siemens to contribute directly to the energy security of the United States and his home country. His innovations in “Self-Healing” grid technology systems that automatically correct their own faults; offer a vision of a future free from power outages.
In the words of Engineer Md Al Imran: “Engineering isn’t just about solving today’s problems; it’s about continuous innovation to create systems that endure and improve the quality of human life. My goal is to leverage Artificial Intelligence to build a power grid that is safe, affordable, and eco-friendly.”
Tech
Bangladeshi Researcher Working on AI-Enabled Resilient Power Systems and Sustainable Solar Technologies
Bangladeshi researcher Mohammad Shakhawat Hossain is conducting research on sustainable solar-energy technologies and AI-enabled resilient power systems in the United States. He is conducting research at the University of Louisiana at Lafayette, a Carnegie R1 public research university, where he focuses on developing smarter, more sustainable, and resilient energy systems for the future.
His published research primarily focuses on high-efficiency lead-free perovskite solar cells, photovoltaic performance optimization, and computational modeling for renewable-energy applications. His studies explore advanced solar-cell materials, transport-layer optimization, and multi-junction solar-cell architectures aimed at improving energy-conversion efficiency and environmentally sustainable clean-energy technologies.
Alongside his solar-energy research, Hossain is also expanding his work toward artificial intelligence-enabled power systems and resilient energy infrastructure. His ongoing research focuses on using computational modeling and AI techniques to support the integration of advanced solar technologies into resilient and sustainable power systems.
As the global transition toward renewable energy accelerates, modern power systems are facing growing challenges related to grid stability, climate-related disruptions, and the intermittent nature of renewable-energy generation. His research interests include smart-grid technologies, energy-storage systems, distributed energy resources, and AI-assisted energy management approaches to strengthen future power infrastructure.
In recent years, extreme weather events and large-scale power disruptions in different parts of the world have highlighted the need for more resilient and sustainable energy systems. Through his future research, Hossain hopes to contribute to cleaner, smarter, and more reliable power networks.
In addition to academic research, he also has professional experience related to electrical power distribution systems. He has contributed to multiple peer-reviewed journal articles and international conference publications related to perovskite solar cells, photovoltaic performance optimization, and sustainable renewable-energy technologies.
Mohammad Shakhawat Hossain believes that integrating renewable-energy technologies with artificial intelligence can play an important role in developing more sustainable, efficient, and resilient energy systems for the future.
Tech
Bangladeshi PhD Researcher Advancing AI-Based Early Breast Cancer Detection
In the modern world, the application of Artificial Intelligence (AI), machine learning, and biomedical data science has opened new possibilities for improving cancer research and early disease detection. Bangladeshi researcher Umme Habiba is contributing to this important field through her doctoral research in Mathematical and Statistical Sciences at The University of Texas Rio Grande Valley (UTRGV), USA.
Her research focuses on developing advanced statistical and machine learning frameworks for analyzing gene expression data, particularly for the early detection of breast cancer. Breast cancer remains a major public health concern across the world, including in Bangladesh, India, Pakistan, the United States, and many countries in Africa, where delayed diagnosis and unequal access to advanced diagnostic resources continue to increase the disease burden. According to the World Health Organization, breast cancer occurs in every country and was the most common cancer among women in 157 of 185 countries in 2022. Therefore, early detection remains one of the most important factors in improving treatment outcomes and reducing cancer-related suffering.
A Unique Synergy of Mathematics, Statistics, and Cancer Research
Umme Habiba’s work brings together mathematical modeling, statistical learning, machine learning, and biomedical data analysis. Her academic background in nonlinear partial differential equations, fractional differential equations, and complex systems has helped her build a strong foundation for studying high-dimensional and nonlinear biological data.
In her current research, she is applying this mathematical and statistical foundation to cancer-related gene expression data. Gene expression data show which genes are active or inactive in a biological sample. By analyzing these patterns, researchers can better understand how cancer develops and how early molecular changes may indicate disease risk.
AI-Based Gene Expression Modeling for Early Breast Cancer Detection
A major contribution of Habiba’s research is the development of machine learning-based gene expression models for early breast cancer detection. Her project aims to identify molecular patterns that may distinguish normal biological variation from early breast cancer-related changes.
To make this process more biologically meaningful, she is developing a Biologically Informed Super-Pathway Transformer Framework. In this framework, gene-level data are first mapped into known biological pathways. These pathways are then grouped into higher-level structures called super-pathways, which represent coordinated biological processes. A transformer-based AI model is then used to learn interactions among these pathways and super-pathways.
This approach moves beyond simple prediction. Instead of treating genes as isolated data points, Habiba’s model organizes them into meaningful biological structures. This may help researchers better understand which genes, pathways, and super-pathways contribute to early breast cancer risk.
Real-World Impact and Future Vision
The broader goal of Habiba’s research is to support earlier breast cancer detection and more interpretable biomedical decision-making. Early detection can help patients receive treatment at a more manageable stage of disease and may reduce the need for more aggressive and costly treatment.
Her work may also contribute to future cancer research efforts in countries such as Bangladesh, where delayed diagnosis and limited access to advanced diagnostic tools remain important challenges. By developing interpretable AI-based models for early breast cancer detection, Habiba’s research supports a broader vision of making precision oncology more data-driven, accessible, and globally relevant.
By combining mathematics, statistics, artificial intelligence, and cancer biology, Umme Habiba aims to develop computational tools that are not only accurate but also interpretable and useful for biomedical research.
Her research reflects a growing direction in modern healthcare: using AI not only to make predictions, but also to uncover meaningful biological insights that may support earlier diagnosis and improved patient outcomes.
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