Developing AI-Enhanced Forensic Tools to Combat Cognitive Cybercrimes Priya Matta, Atika Gupta, R.K. Saini, Sopan Talekar, Manjusha Tatiya Cognitive Cyber Crimes in the Era of Artificial Intelligence, 2025 Cognitive cybercrimes—crimes aimed at manipulating human cognition through social engineering, deepfakes, misinformation, and synthetic identities—pose significant risks in today's digital ecosystem. This research introduces artificial intelligence–enhanced forensic tools that integrate machine learning and natural language processing (NLP) to detect, analyze, and mitigate cognitive cyberthreats. Utilizing the RealNews dataset (45 million tokens, 120K labeled articles), the FaceForensics++ dataset (1,000+ manipulated videos), and the SYN-ID dataset (synthetically generated identity profiles), we apply an ensemble approach combining BERT-based NLP classification, XceptionNet for deepfake detection, and gradient boosted decision trees for identity fraud classification. Our hybrid model achieved an accuracy of 97.6% in identifying misinformation, 96.3% for deepfake detection, and 95.1% in synthetic identity fraud detection. New performance metrics such as the Cognitive Threat Precision Index and Forensic Intervention Efficiency are proposed to measure detection depth and system responsiveness. These tools aim to empower cybersecurity teams with real-time decision-making support.
Enhancing Energy Efficiency in IoT Networks Using Deep Learning-Based Predictive Maintenance Pragati Choudhari, Manjusha Tatiya, R V S Praveen, Harmandeep Kaur, Hari Krishna Vemuri, Montater MuhsnHasan 2025 World Skills Conference on Universal Data Analytics and Sciences Worldsuas 2025, 2025 Energy consumption has increased dramatically due to the fast growth of the Internet of Things (IoT), particularly in large-scale IoT networks. This has the potential to compromise operational efficiency and sustainability. The goal of this project is to develop predictive maintenance techniques based on deep learning and apply them to IoT networks in order to increase their energy efficiency. Predictive maintenance allows Internet of Things devices to proactively detect and fix any problems, which in turn reduces energy use and system downtime. Predicting when equipment will break down and finding the best way to distribute network resources are two of the many uses of deep learning algorithms discussed in this article. To facilitate real-time tracking and forecasting, we suggest a hybrid paradigm that combines data collected by sensors embedded in IoT devices with analytics hosted on the cloud. Reliability, accuracy of predictions, and energy usage are some of the important performance measures used to assess the model's efficacy. The model has the ability to revolutionise energy management in IoT ecosystems, as shown by the results, which reveal a significant increase in energy efficiency and decreases in energy waste of up to 30%. This research lays the groundwork for future studies on energy-efficient Internet of Things (IoT) designs and sheds light on how deep learning might imp rove the sustainability of IoT networks.
AI Applications in Tailings and Waste Management: Improving Safety, Recycling, and Water Utilization Manjusha Tatiya, Milind Manikrao Darade, Babaso A. Shinde, Mahesh Prakash Kumbhare, Rupali Dineshwar Taware, Sukhadip Mhankali Chougule, Swati Mukesh Dixit, Anant Sidhappa Kurhade Applied Chemical Engineering, 2025 Artificial Intelligence (AI) is transforming tailings and waste management in the mining sector by improving safety, enhancing recycling efficiency, and optimizing water utilization. Traditional monitoring and waste handling approaches often lack scalability, real-time responsiveness, and predictive accuracy, limiting their effectiveness in preventing environmental and operational failures. This review systematically examines AI-driven applications across tailings dam safety, waste recycling, and intelligent water management, drawing insights from over 80 recent studies. Quantitative evidence indicates that AI-based monitoring systems can detect potential dam failures up to 30–40% earlier than conventional methods, while reinforcement learning and neural-network models improve mineral recovery by 10–25% with reduced chemical consumption. In water reuse operations, machine learning optimization achieves up to 35% savings in freshwater demand through closed-loop control. The paper highlights emerging integrations of AI with Explainable AI (XAI), Federated Learning (FL), and Circular Economy (CE) models that collectively support sustainable and transparent mining practices. Persistent barriers such as poor data quality, inadequate infrastructure, and lack of regulatory clarity are also discussed, along with future research directions. The findings demonstrate AI’s potential to transition mining operations toward safer, more efficient, and environmentally responsible systems.
AI-Driven Process Control for Enhancing Safety and Efficiency in Oil Refining Manjusha Tatiya, Babaso A. Shinde, Navnath B. Pokale, Mahesh Sarada, Mahesh M. Bulhe, Govindrajan Murali, Vidhi Rajendra Kadam, Anant Sidhappa Kurhade, Shital Yashwant Waware Applied Chemical Engineering, 2025 Artificial Intelligence (AI) is reshaping the oil refining sector by improving process safety, energy efficiency, and product quality. This work evaluates real-time AI applications such as predictive maintenance, anomaly detection, and autonomous process optimization using machine learning, deep learning, reinforcement learning, and natural language processing. A systematic review of recent industrial case studies and simulations shows AI can reduce equipment downtime, emissions, and operational costs while enhancing decision-making and regulatory compliance. Despite these advantages, the adoption of AI in refineries faces challenges such as cybersecurity risks, legacy system integration, and lack of explainable models. Future research should focus on scalable and transparent AI frameworks that align with industry-specific needs.
AI-based monitoring and management in smart aquaculture for ocean fish farming systems Pramod Dhamdhere, Swati Mukesh Dixit, Manjusha Tatiya, Babaso A. Shinde, Jyoti Deone, Anant Kaulage, Yogendra Patil, Rupesh Gangadhar Mahajan, Anant Sidhappa Kurhade, Shital Yashwant Waware Applied Chemical Engineering, 2025 Background: The growing global demand for seafood and the limitations of conventional aquaculture practices have highlighted the need for sustainable and efficient alternatives. Ocean-based fish farming faces challenges such as inconsistent water quality, delayed disease detection, and inefficient feeding strategies. Artificial Intelligence (AI), integrated with the Internet of Things (IoT), computer vision, and machine learning, offers opportunities to address these issues and advance smart aquaculture systems. Methods: This review systematically synthesizes literature, industrial reports, and case studies from leading aquaculture regions including Norway, Japan, India, and Chile. The analysis focuses on AI applications in water quality monitoring, fish health management, feeding optimization, biomass estimation, and decision support. The study also evaluates commercial platforms and identifies technical, economic, and ethical challenges, alongside emerging research directions. Results: AI-based monitoring and management systems demonstrated significant improvements in aquaculture practices. Commercial solutions such as eFishery, Aquabyte, and Aquaai reported feed cost reductions of 15–30%, early disease detection leading to up to 20% lower mortality rates, and more accurate biomass estimation exceeding 90% prediction accuracy. These outcomes resulted in enhanced yield, cost savings, operational efficiency, and compliance with environmental standards. Conclusion: AI technologies have shown transformative potential in achieving sustainable, climate-resilient aquaculture. While challenges such as data scarcity, high setup costs, environmental variability, and ethical concerns persist, emerging approaches—including multimodal AI, digital twins, robotics, and explainable AI—can enhance robustness and transparency. Future research should emphasize scalable, adaptive, and standardized AI frameworks to support global seafood security and long-term sustainability in ocean-based fish farming.
Security-aware analytical framework: A mathematical model and machine learning for dynamical system control in secure environments Jaya Chandwani, Gauri Dhopavkar, Manjusha Tatiya, Nitin Chakole, Shailesh V. Kulkarni, Nilesh Shelke Journal of Discrete Mathematical Sciences and Cryptography, 2024 This study presents a Security-Aware Analytical Framework (SAAF) that is meant to make dynamic system control better in safe places. The framework uses a new mathematical model and advanced machine learning methods to make vital systems more resistant to possible security threats. The mathematical model gives a defined picture of how the system works and where its security holes are. This makes it possible to measure risks and come up with proactive control strategies. Using machine learning techniques, the system changes with changing danger scenarios, allowing for identification and reaction to threats in real time. A risk evaluation tool, a dynamic danger prediction model, and an adaptable control system are some of the most important parts of the SAAF. The risk assessment tool checks for weaknesses in the system, and the dynamic threat prediction model uses machine learning to guess when security might be broken. These guesses are used by the adaptive control method to change system settings on the fly, which improves security without lowering working efficiency. The suggested framework works well by being simulated in a number of safe settings. These settings show how it can reduce security risks and make sure that dynamic systems are strong even as threats change. This study helps to improve methods that focus on security for protecting key assets.
AI-driven audio-to-video generation for dynamic content creation via stable diffusion and CNN-augmented transformers D Dharrao, M Dharrao, S Padgaonkar, S Kumari, PS Sreevaishnavi, ... Scientific Reports , 2026 2026
Deep learning-based blood cell classification from microscopic images for haematological disorder identification NS Jagtap, V Bodade, V Kadrolli, H Mahajan, PP Kale, P Pise, A Hingmire Multimedia Tools and Applications 84 (20), 21917-21944 , 2025 2025 Citations: 14
Automated Detection of Defects in Solar Images Utilizing Integrated Deep Learning Frameworks D Kulkarni, PP Kale, HB Mahajan, P Pise, S Yadav, S Desai International Conference on Computer Vision and Robotics, 241-252 , 2025 2025
Sentiment Analysis for E-Commerce Product Reviews Using CNN-LSTM P Paul, S Acharya, B Misra, S Majumder, N Dey, P Pise 2024 First International Conference for Women in Computing (InCoWoCo), 1-7 , 2024 2024 Citations: 2
White Blood Cells Classification Model using Automatic Soft Computing PP Mahale, RK Deshmukh, P Pise, SR Rangari 2024 Asia Pacific Conference on Innovation in Technology (APCIT), 1-6 , 2024 2024
Summarizing business news: evaluating BART, T5, and PEGASUS for effective information extraction. D Dharrao, M Mishra, A Kazi, M Pangavhane, P Pise, AM Bongale Revue d'Intelligence Artificielle 38 (3) , 2024 2024 Citations: 16
Disease Classification Model Using Capsule Networks Based on White Blood Cells PS Gaikwad, RK Deshmukh, P Pise, SD Bhopale 2024 5th International Conference for Emerging Technology (INCET), 1-5 , 2024 2024 Citations: 1
Efficient Feature Extraction for Classification of Alzheimer's Abnormalities Using Deep Learning MA Zope, RK Deshmukh, P Pise, SD Bhopale 2024 5th International Conference for Emerging Technology (INCET), 1-6 , 2024 2024 Citations: 1
Object Detection and Classification in Human Rescue Operations: Deep Learning Strategies for Flooded Environments. PU Nehete, DS Dharrao, P Pise, A Bongale International Journal of Safety & Security Engineering 14 (2) , 2024 2024 Citations: 14
Multi-task convolutional neural network approach for automatic Alzheimer disease classification MA Zope, RK Deshmukh, P Pise, SD Bhopale 2024 3rd International Conference for Innovation in Technology (INOCON), 1-5 , 2024 2024 Citations: 1
Automatic White Blood Cells Classification using Optimized Convulutional Neural Network PP Mahale, RK Deshmukh, P Pise, MS Gardi 2024 3rd International Conference for Innovation in Technology (INOCON), 1-6 , 2024 2024 Citations: 1
Design and Investigate the Deep Learning Models for White Blood Cell Classification PS Gaikwad, RK Deshmukh, P Pise, SD Bhopale 2024 3rd International Conference for Innovation in Technology (INOCON), 1-5 , 2024 2024
Diabetic Condition Classification using Supervised and Unsupervised Machine Learning Techniques: A Use Case for HealthTech Industry AM Bongale, S Biradar, P Pise, AP Suke, N Uke, DS Dharrao 2023 Fourth International Conference on Smart Technologies in Computing … , 2023 2023 Citations: 2
Computationally Efficient Blockchain-based Privacy Preservation Approach for Internet of Vehicle Things PK Shinde, RK Deshmukh, P Pise 2023 Global Conference on Information Technologies and Communications (GCITC … , 2023 2023
Lightweight Blockchain-based Secuirity Protocol for Internet of Vehicle Things PK Shinde, RK Deshmukh, P Pise 2023 Global Conference on Information Technologies and Communications (GCITC … , 2023 2023 Citations: 1
SEMANTIC SEGMENTATION IN MEDICAL IMAGE ANALYSIS WITH CONVOLUTIONAL NEURAL NETWORKS. SN Jain, P Pise, A Mishra ICTACT Journal on Image & Video Processing 14 (2) , 2023 2023 Citations: 1
FEATURE EXTRACTION USING AT-CONVLSTM BASED CULTURAL ALGORITHM FOR IMAGE UNDERSTANDING. SN Jain, P Pise, A Mishra ICTACT Journal on Image & Video Processing 14 (1) , 2023 2023 Citations: 1
Comparative Analysis of Alzheimer's Disease Detection Using Machine Learning Techniques DAM Shweta Nishit Jain, Dr. Priya Pise European Chemical Bulletin 12 (7), 10.48047/ecb/2023.12.si7.437 , 2023 2023
Feature Extraction Of Indicator Card Data For Sucker-Rod Pump Working Condition Diagnosis Using Machine Learning. DAKM Dr. Priya Pise, Mr. Ashish Dudhale,, Dr. Nilesh Uke Journal of Data Acquisition and Processing, 2023, 38 (3): 5060-5067 38 (3) , 2023 2023
Machine Learning And Visual Computing Observation System DAKM Dr. Priya Pise, Mr. Ashish Dudhale,, Dr. Nilesh Uke Journal of Data Acquisition and Processing, 2023, 38 (3): 5060-5067 38 (3) , 2023 2023
MOST CITED SCHOLAR PUBLICATIONS
Automatic robot Manoeuvres detection using computer vision and deep learning techniques: a perspective of internet of robotics things (IoRT) HB Mahajan, N Uke, P Pise, M Shahade, VG Dixit, S Bhavsar, ... Multimedia Tools and Applications 82 (15), 23251-23276 , 2023 2023 Citations: 88
Healthcare 4.0 Enabled Lightweight Security Provisions for Medical Data Processing SH Shailaja Uke Nilesh Uke, Priya Pise, Hemant B. Mahajan Turkish Journal of Computer and Mathematics Education 12 (11), 165-173 , 2021 2021 Citations: 48
A review on hybrid encryption in cloud computing L Kumar, N Badal 2019 4th international conference on internet of things: smart innovation … , 2019 2019 Citations: 32
Summarizing business news: evaluating BART, T5, and PEGASUS for effective information extraction. D Dharrao, M Mishra, A Kazi, M Pangavhane, P Pise, AM Bongale Revue d'Intelligence Artificielle 38 (3) , 2024 2024 Citations: 16
Deep learning-based blood cell classification from microscopic images for haematological disorder identification NS Jagtap, V Bodade, V Kadrolli, H Mahajan, PP Kale, P Pise, A Hingmire Multimedia Tools and Applications 84 (20), 21917-21944 , 2025 2025 Citations: 14
Object Detection and Classification in Human Rescue Operations: Deep Learning Strategies for Flooded Environments. PU Nehete, DS Dharrao, P Pise, A Bongale International Journal of Safety & Security Engineering 14 (2) , 2024 2024 Citations: 14
Hybrid Encryption Techniques for Secure Sharing of a Sensitive Data for Banking Systems Over Cloud P More, S Chandugade, SMS Rafiq, P Pise 2018 International Conference On Advances in Communication and Computing … , 2018 2018 Citations: 14
Efficient security framework for sensitive data sharing and privacy preserving on big-data and cloud platforms PD Pise, NJ Uke Proceedings of the International Conference on Internet of things and Cloud … , 2016 2016 Citations: 14
Smart shopping cart with automatic billing system through rfid and bluetooth P Aryan, P Pise, S Tamhane, R Patil, K Pittulwar International Journal of Emerging Technology and Computer Science 1 (02), 73-76 , 2016 2016 Citations: 13
Data collection and preparation PN Mahalle, GR Shinde, PD Pise, JY Deshmukh Foundations of data science for engineering problem solving, 15-31 , 2021 2021 Citations: 10
Foundations of data science for engineering problem solving PN Mahalle, GR Shinde, PD Pise, JY Deshmukh Springer , 2022 2022 Citations: 8
Compression technique using dct & fractal compression–a survey RM Gouda, P Pise Advances in Physics Theories and Applications, ISSN, 2225-0638 , 2012 2012 Citations: 4
Secure Login System using MD5 and AES Attribute Based Encryption Algorithm S Wakhare, DP Pise, R Khalate, S Birajdar, S Survase International Journal of Innovative Technology and Exploring Engineering 9 … , 2020 2020 Citations: 3
Efficient Security Protocol for Sensitive Data Sharing on Cloud Platforms PD Pise, NJ Uke 2017 IEEE , 2017 2017 Citations: 3
Sentiment Analysis for E-Commerce Product Reviews Using CNN-LSTM P Paul, S Acharya, B Misra, S Majumder, N Dey, P Pise 2024 First International Conference for Women in Computing (InCoWoCo), 1-7 , 2024 2024 Citations: 2
Diabetic Condition Classification using Supervised and Unsupervised Machine Learning Techniques: A Use Case for HealthTech Industry AM Bongale, S Biradar, P Pise, AP Suke, N Uke, DS Dharrao 2023 Fourth International Conference on Smart Technologies in Computing … , 2023 2023 Citations: 2
Content-Based Deduplication of Data Using Erasure Technique for RTO Cloud S Pal, K More, P Pise 2018 International Conference On Advances in Communication and Computing … , 2018 2018 Citations: 2
A Mechanism for Copyrighted Video Copy Detection and Identification V Dewar, P Pise International Journal of Science and Research (IJSR) , 2013 2013 Citations: 2
Disease Classification Model Using Capsule Networks Based on White Blood Cells PS Gaikwad, RK Deshmukh, P Pise, SD Bhopale 2024 5th International Conference for Emerging Technology (INCET), 1-5 , 2024 2024 Citations: 1
Efficient Feature Extraction for Classification of Alzheimer's Abnormalities Using Deep Learning MA Zope, RK Deshmukh, P Pise, SD Bhopale 2024 5th International Conference for Emerging Technology (INCET), 1-6 , 2024 2024 Citations: 1