Exploring the potential and limitations of Fog Computing toward efficient & scalable solutions in modern network S V Juno Bella Gracia, S. Srinivasan Journal of Integrated Science and Technology, 2026 Fog computing has emerged as a pivotal paradigm to support latency-sensitive, bandwidth-efficient, and context-aware services across diverse application domains such as healthcare, smart mobility, and industrial Internet of Things (IIoT). Unlike prior reviews that offer broad overviews, this study presents a comparative, standards-driven analysis of fog computing frameworks, uniquely categorizing them into four performance pillars: interoperability, security and privacy, latency and Quality of Service (QoS), and energy efficiency with resource management. By synthesizing recent developments from 2020 to 2024, the review uniquely maps specific frameworks to these standards and evaluates their trade-offs, limitations, and application-specific suitability. The paper further distinguishes itself by integrating advanced strategies such as federated learning, blockchain trust models, deep reinforcement learning, and edge AI and analyzing their implications in fog architectures. Summary tables and architectural illustrations enhance understanding, while key gaps—like power inefficiencies and scalability bottlenecks—are critically discussed. Finally, the review offers targeted future directions, emphasizing the role of edge intelligence, adaptive orchestration, and standardization in building resilient fog-enabled systems. This structured review provides a roadmap for researchers and practitioners aiming to develop scalable, secure, and intelligent fog computing solutions.
A novel DLDRM: Deep learning–based flood disaster risk management framework by multimodal social media data S. Sheeba Rachel, S. Srinivasan Risk Analysis, 2025 The impacted community and humanitarian organizations have used social media platforms extensively over the past 10 years to disseminate information during a disaster. Even though numerous researches have been conducted in recent times to categorize useful and non‐informational posts on social media, the majority of these studies are unimodal, that is, they separately employed documented or pictorial information to improve deep learning (DL) approaches. In this research, a multimodal DL approach will be created by integrating the complementary data offered by the text and visual Twitter posts made by members of the affected community discussing the same occurrence. For the classification of multimodal disaster data, we suggested a novel DLDRM: DL‐based disaster risk management structure. We contrast DLDRM with the most widely used bilinear multimodal models for visual question answering, including VGG 16, VGG 19, ResNet 50, DenseNet 121, and RegNet Y320. Accuracy, Precision, Recall, and F1‐score were achieved utilizing DLDRM of 99%, 92.5%, 84.08%, and 98.5%. By emphasizing more pertinent aspects of text and image tweets, the proposed DL‐based multimodal technique surpasses the present state‐of‐the‐art fusion technique on the benchmark multimodal disaster dataset.
Recognition of Identifying Malicious Cyber Attack Intention in Cyber Physical System P Vasanthan, S. Srinivasan 2025 International Conference on Computing and Communication Technologies Iccct 2025, 2025 As the threat over the cyber-attack is predominantly increasing in every aspects such as based on network traffic, spoofing, phishing attacks the intrusion detection system is used. The network layer is maliciously attacked by the intruder. The intruder tries to capture network packets of the connection between client and server. Based upon the encryption standard, the intruder tries to comprise the user system. Intrusion cannot be easily detected since it is a manual process. In this novel approach, deep learning reinforcement technique is implemented. The bidirectional end to end communication along with the Bayesian inverse reinforcement learning is used to detect the malicious cyber intention in cyber physical system. Inverse Bayesian reinforcement learning technique is initiated to identify the behavior of the pattern recognition and to resample the dataset. This deals with the risk factor and determines whether the connection is comprised. In this work, the novel application is introduced with deep reinforcement learning to identify the intruder. The intrusion detection is labeled in dataset. These dataset implements reward functions to detect the intrusion over the cps.
A Innovative Network Security Regulations Dependent on Improved Support Vector Machine from the Outlook of Modern Cities Vasanthan P, S. Srinivasan 2025 International Conference on Computing and Communication Technologies Iccct 2025, 2025 The concerns about the security created by the PC have gotten more advanced and complicated. Interruption detection is a pragmatic subject in the area of PC security whose essential target is to identify uncommon assault or attacks and to guarantee the safety of inside frameworks. This paper likewise suggests a semi-class interruption recognition strategy that joins various classifiers to mastermind exemptions and regular activities in a PC framework. In the consideration preference tree learning-iterative dichotomy 3, the maltreatment recognition method is developed and is gathered by using the cumulative knowledge based on the peculiarity detection system performed by one class- uphold vector machine. As of late, individuals have paid more thoughtfulness regarding ID/interruption avoidance framework, which is firmly identified with the insurance and use of framework the executives. A couple of AI principles including neural framework, genetic programming, and progressed uphold vector machines, Bayesian framework, multivariate adaptable backslide splines, feathery deduction systems and other analogical frameworks has been scrutinized for the layout of interruption identification framework. In this article, we suggest a combination strategy dependent on DTL-ID3 and OC-SVM assess the presentation of the extended procedure by utilizing a particular dataset and a hybrid technique to upgrade the precision of IDS/IPS when stood out from a solitary help vector machine.
Autism Spectrum Disorder Detection using Navie Bayes Tree Technique K. Raju, S. Preethi, Srinivasan S, K. Manikandan, N. Ramshankar, et al. Proceedings of 5th International Conference on Pervasive Computing and Social Networking Icpcsn 2025, 2025 Autism Spectrum Disorder (ASD) impacts the social and communicative abilities of individuals of all ages. Autism screening is a time-consuming and complicated procedure, making it difficult to discover autistic individuals. Recently, machine learning techniques have been applied to streamline the screening process and rapidly discover ASD. However, it is necessary to increase the accuracy of predictions using the limited data available. This research provides a novel approach for detecting ASD using the Nave Bayes (NB) Tree. The proposed method generates a decision tree from a data set using the naive Bayes categorizer at the nodes to assess whether or not a person has autism. The performance of the suggested technique is compared to that of the most commonly used classification algorithms, including Nave Bayes, Support Vector Machine (SVM), and Multilayer Perceptron (MLP). The results of the experiments show that the NB Tree-based technique is better than the current classification methods in terms of classification accuracy, Root Mean Squared Error (RMSE), and precision.
Network Traffic Cyber Attacks Classification using Supervised Machine Learning Techniques 15th International Conference on Advances in Computing Control and Telecommunication Technologies Act 2024, 2024
Message-optimal algorithm for detection and resolution of generalized deadlocks in distributed systems Informatica Ljubljana, 2011
RECENT SCHOLAR PUBLICATIONS
A novel DLDRM: Deep learning–based flood disaster risk management framework by multimodal social media data SS Rachel, S Srinivasan Risk Analysis 45 (10), 3256-3275 , 2025 2025 Citations: 2
Boosted sooty tern and piranhav foraging meta-heuristic optimized cluster head selection-based routing algorithm for extending network lifetime in WSNs RS Amshavalli, D Devi, S Srinivasan, R ShaliniRajan, SA Jebamani Peer-to-Peer Networking and Applications 18 (2), 66 , 2025 2025 Citations: 9
A study on AI Ml based data segregation & feature extraction methods of multimodal data during flood disaster SS Rachel, S Srinivasan AIP Conference Proceedings 3162 (1), 020018 , 2025 2025
Performance analysis of study material recommendation system to reduce dropout in online learning using optimal behavior prediction cluster and online poll bot S Sageengrana, S Selvakumar, S Srinivasan Interactive Learning Environments 32 (9), 5779-5800 , 2024 2024
Identification of Acute Myocardial Infarction from Left Ventricular Wall Rupture Using ResNet 18-Deep Active Learning Algorithms R Periyasamy, S Selvaraj Traitement du Signal 41 (5), 2495-2505 , 2024 2024
Optimized RB-RNN: Development of hybrid deep learning for analyzing student’s behaviours in online-learning using brain waves and chatbots S Sageengrana, S Selvakumar, S Srinivasan Expert Systems with Applications 248, 123267 , 2024 2024 Citations: 14
Network Traffic Cyber Attacks Classification using Supervised Machine Learning Techniques. JG Priya, S Srinivasan, C Priyanka, D Harini Grenze International Journal of Engineering & Technology (GIJET) 10 , 2024 2024
Efficient fault detection by test case prioritization via test case selection JP Rajasingh, PS Kumar, S Srinivasan Journal of Electronic Testing 39 (5), 659-677 , 2023 2023 Citations: 7
Conversion of Waste Face Mask into Carbonized Functional Materials for Environmental Applications S Srinivasan, RS Karmukhilnilavan, A Selvam, JWC Wong, K Murugesan Solid Waste 2023, 95 , 2023 2023
DAuth—Delegated Authorization Framework for Secured Serverless Cloud Computing P Padma, S Srinivasan Wireless Personal Communications 129 (3), 1563-1583 , 2023 2023 Citations: 11
Performance evaluation of classifiers for non communicable diseases S Srinivasan, S Selvakumar, PS Rani, D JayaKumar AIP Conference Proceedings 2523 (1), 020035 , 2023 2023
An incremental approach for detecting distributed deadlocks in the generalized model S Srinivasan Computing. Archives for Informatics and Numerical Computation 104 (1), 149-168 , 2022 2022 Citations: 2
AGS: a precise and efficient AI-based hybrid software effort estimation model VV Ananth, S Srinivasan International Journal of Business Intelligence and Data Mining 18 (1), 1-16 , 2021 2021 Citations: 2
Modified K-Nearest Neighbor Algorithm for Noisy Data Set SRK S.Srinivasan, P.V Rishi Kiran, N.Krishna Teja Annals of the Romanian Society for Cell Biology 25 (4), 16426 – 16433 , 2021 2021
An Eminent Spam Noticing Methodology for IOT Gadgets Using ML Techniques KYP D. Jayakumar, S. Srinivasan, G. Meghana, B. Sai Harika Revista geintec-gestao inovacao e Technologies 11 (2), 2156-2166 , 2021 2021 Citations: 2
Application of Machine Learning on Crop Yield Prediction in Agriculture Enforcement NS D. Jayakumar, S. Srinivasan ,P. Prithi, Sreelekha Vemula Revista geintec-gestao inovacao e Technologies 11 (2), 2142-2154 , 2021 2021 Citations: 6
Secure Storage of Electronic Health Records on Cloud Using Integrity Verification Auditing KDS S. Srinivasan, Kethineni Keerthi, Gummadi Tejaswi Revista geintec-gestao inovacao e Technologies 11 (2), 2132– 2141 , 2021 2021
Online Voting Using Blockchain Technology IJI Dr.S.Srinivasan, R.Lavanya, C.Lakshmi, S.Malini,” Online Voting Using ... International Journal of Innovative Research in Science, Engineering and … , 2020 2020
A Survey on Effort Estimation Techniques in Agile Software Development VVV Dr.Srinivasan Selvaraj, Dr.V.Vignaraj Anand, Bhuvaneshwari.M International Journal of Interdisciplinary Global Studies 14 (4), 91-95 , 2020 2020 Citations: 2
Cluster Based Regression Method For Software Effort Estimation MB Dr V.Vignaraj Ananth, Dr S.Srinivasan Solid State Technology 63 (6), 1696- 1707 , 2020 2020
MOST CITED SCHOLAR PUBLICATIONS
A survey on biometric based authentication in cloud computing P Padma, S Srinivasan Inventive Computation Technologies (ICICT), International Conference on 1, 1-5 , 2016 2016 Citations: 43
Resource allocation in Cloud computing using SFLA and Cuckoo search hybridization P Durgadevi, S Srinivasan International Journal of Parallel Programming 48 (3), 549-565 , 2018 2018 Citations: 40
A decentralized deadlock detection and resolution algorithm for generalized model in distributed systems S Srinivasan, R Rajaram Distributed and Parallel Databases 29 (4), 261-276 , 2011 2011 Citations: 31
Optimized RB-RNN: Development of hybrid deep learning for analyzing student’s behaviours in online-learning using brain waves and chatbots S Sageengrana, S Selvakumar, S Srinivasan Expert Systems with Applications 248, 123267 , 2024 2024 Citations: 14
DAuth—Delegated Authorization Framework for Secured Serverless Cloud Computing P Padma, S Srinivasan Wireless Personal Communications 129 (3), 1563-1583 , 2023 2023 Citations: 11
An efficient detection and resolution of generalized deadlocks in distributed systems S Selvaraj, R Ramasamy International Journal of Computer Applications 1 (19), 1-7 , 2010 2010 Citations: 11
Task scheduling using amalgamation of metaheuristics swarm optimization algorithm and cuckoo search in cloud computing environment P Durgadevi, DS Srinivasan Journal for Research 1 (9) , 2015 2015 Citations: 10
Boosted sooty tern and piranhav foraging meta-heuristic optimized cluster head selection-based routing algorithm for extending network lifetime in WSNs RS Amshavalli, D Devi, S Srinivasan, R ShaliniRajan, SA Jebamani Peer-to-Peer Networking and Applications 18 (2), 66 , 2025 2025 Citations: 9
Ant Colony Optimization Algorithm forScheduling Cloud Tasks JJ Srinivasan Selvaraj International Journal of Computer Technology & Applications 7 (3), 491-494 , 2016 2016 Citations: 9
Efficient fault detection by test case prioritization via test case selection JP Rajasingh, PS Kumar, S Srinivasan Journal of Electronic Testing 39 (5), 659-677 , 2023 2023 Citations: 7
An improved, centralised algorithm for detection and resolution of distributed deadlock in the generalised model S Srinivasan, R Rajaram International Journal of Parallel, Emergent and Distributed Systems 27 (3 … , 2012 2012 Citations: 7
Application of Machine Learning on Crop Yield Prediction in Agriculture Enforcement NS D. Jayakumar, S. Srinivasan ,P. Prithi, Sreelekha Vemula Revista geintec-gestao inovacao e Technologies 11 (2), 2142-2154 , 2021 2021 Citations: 6
Mobile Controlled Automated wheelchair for Disabilities DPE Srinivasan Selvaraj, A.Ganasekar, Pacha Shobha Rani International Journal of Innovative Technology and Exploring Engineering 9 … , 2019 2019 Citations: 6
A novel DLDRM: Deep learning–based flood disaster risk management framework by multimodal social media data SS Rachel, S Srinivasan Risk Analysis 45 (10), 3256-3275 , 2025 2025 Citations: 2
An incremental approach for detecting distributed deadlocks in the generalized model S Srinivasan Computing. Archives for Informatics and Numerical Computation 104 (1), 149-168 , 2022 2022 Citations: 2
AGS: a precise and efficient AI-based hybrid software effort estimation model VV Ananth, S Srinivasan International Journal of Business Intelligence and Data Mining 18 (1), 1-16 , 2021 2021 Citations: 2
An Eminent Spam Noticing Methodology for IOT Gadgets Using ML Techniques KYP D. Jayakumar, S. Srinivasan, G. Meghana, B. Sai Harika Revista geintec-gestao inovacao e Technologies 11 (2), 2156-2166 , 2021 2021 Citations: 2
A Survey on Effort Estimation Techniques in Agile Software Development VVV Dr.Srinivasan Selvaraj, Dr.V.Vignaraj Anand, Bhuvaneshwari.M International Journal of Interdisciplinary Global Studies 14 (4), 91-95 , 2020 2020 Citations: 2
An Optimal, Distributed Deadlock Detection and Resolution Algorithm for Generalized Model in Distributed Systems S Srinivasan, R Vidya, R Rajaram International Conference on Contemporary Computing, 70-80 , 2009 2009 Citations: 2
In vitro Callus Regeneration and Biochemical Analysis in the Medicinal Plant Phyllanthus niruri L. JJ Jeyakumar, S Srinivasan British Biomedical Bulletin , 2013 2013 Citations: 1