AI-Driven Adaptive AML Framework with Real-Time Anomaly Detection and Deep Learning-Based Risk Profiling N.P. Ponnuviji, K. Venkatesh Guru, P. Palanisamy, J. Nirmala Gandhi Journal of Internet Services and Information Security, 2026 The elusive development of financial crime requires new Anti-Money Laundering (AML) systems. In this paper, the authors introduce the concept of an AI-Driven Adaptive AML Framework, which combines real-time detection of anomalies and deep learning-based risk profiling. Legacy rule-based systems are ineffective and not adaptable to new money laundering schemes; they produce an intolerable number of false positives (estimated at 90-95 per cent of alerts), and they cannot evolve with new schemes. The methodology provides an improvement over the traditional thresholds by using Mahalanobis distance for unsupervised real-time anomaly detection, which immediately marks transactions that are not in line with the norms. At the same time, adaptive risk profiling, which is based on deep neural networks, assigns customers and transactions with granular risk scores based on the identification of complex connections in behavioral data. The performance and performance comparison with traditional rule-based systems prove the high efficacy of the framework. The AI-based concept is much more flexible and efficient in terms of operations, with a high score of 9/10 versus 3/10 in the case of legacy systems. What is more, the framework has an impressive false positive reduction potential (scoring 8/10 vs 4/10), which results in a greater true-positive ratio and is able to adapt AML systems to emerging threats continuously. The end goal of this AI-enhanced system is to increase the accuracy of detection, decrease the cost of operations, and create a safer, more secure financial system, but with high compliance.
Cloud-Based Intrusion Detection With TFSEA: Utilizing Graylevel Radial Component Analysis and Threshold-Based Kernel Extreme Learning Machine Saravanan Selvaraj, K. Lalitha Devi, N. P. Ponnuviji, Santhi Subbaian Transactions on Emerging Telecommunications Technologies, 2026 The emergence of cloud computing has revolutionized business operations by providing effective scalability and flexibility. Security concerns have intensified due to the vast amount of data processed and stored in the cloud; hence protecting cloud infrastructure from cyber threats is crucial. Intrusion detection system plays a pivotal role in seamless monitoring of network traffic for exhibiting unauthenticated or malicious attempts. Recent advancements in IDS highlight certain issues such as low classification accuracy, high false positive rate, as well as overfitting when processing various network data. The feature extraction uses graylevel radial component analysis (GRCA) to extract salient features, while dimensionality reduction is performed by introducing the radial basis function principal component analysis. In this work, the crossover boosted dynamic cheetah optimization algorithm is employed in the feature selection process, which integrates Cheetah Optimization with dynamic evolutionary strategies to improve the overall search efficiency and tackle local optimal issues. The detection and classification of intrusion are performed by proposing a novel threshold‐based kernel extreme learning machine, which uses different thresholds to enhance generalization capability. Extensive experimental and statistical analysis is carried out, and the results exhibit that the proposed framework achieves a classification accuracy, precision, recall, F 1 score, and security rate of 98.84%, 97.22%, 97%, 97.2%, and 98.85%, respectively, compared to all other existing models. Finally, the classified data is stored in cloud infrastructure that allows third‐party monitoring services to assess and analyze critical intrusions and also provide threat analysis.
Strategic Business Transformation Through IoT: Enhancing Operational Efficiency and Business Model Innovation Sankar, P. V. Raja Suganya, R. Abitha, N. P. Ponnuviji, K. Saravanan, et al. Iot Driven Business Transformation Strategy Data Trust and Security, 2026 The Internet of Things (IoT) is transforming the strategic landscape of modern enterprises by enabling enhanced operational efficiency and driving innovation in business models. This chapter explores the foundational components of IoT, its integration into enterprise systems, and its role in real-time monitoring, automation, and predictive analytics. It highlights how IoT empowers organizations to shift from product-centric to service-oriented models, create new revenue streams, and improve customer engagement. The chapter also examines cross-industry applications, including manufacturing, healthcare, retail, and agriculture, while addressing key challenges such as data privacy, interoperability, and organizational resistance. Looking ahead, the convergence of IoT with AI, blockchain, and 5G points to a future of autonomous, ethical, and sustainable deployments.
IoT-enabled assistive technologies approach for personalized geriatric health monitoring and safety N. P. Ponnuviji, G. Elangovan, K. Sujatha, Umamageswaran Jambulingam, Indumathi Ganesan, et al. Future of AI in Biomedicine and Biotechnology, 2024 IoT is revolutionizing healthcare, especially for geriatric individuals in smart homes, prioritizing personalized, preventive, and comprehensive treatment. This research aims to create an intelligent environment for adaptable living, incorporating cutting-edge assistive technologies. The system includes features like medicine prompts, schedulers, fitness monitors, and improved fall detection, operating efficiently for up to seven days without battery replacement. To safeguard patient information, an ECDH module reduces latency by 77.78% compared to alternatives, ensuring security and efficiency. With user-friendly interfaces and adaptive functionalities, seamless user experience and accessibility are prioritized.
OpenCV Based Real-Time Traffic Analyzer C Pandi, N.P Ponnuviji, R. Srinivasan, C. Parthasarathy, P. Karthick, et al. Iccds 2024 International Conference on Computing and Data Science, 2024