IJCRT Peer-Reviewed (Refereed) Journal as Per New UGC Rules.
ISSN Approved Journal No: 2320-2882 | Impact factor: 7.97 | ESTD Year: 2013
Scholarly open access journals, Peer-reviewed, and Refereed Journals, Impact factor 7.97 (Calculate by google scholar and Semantic Scholar | AI-Powered Research Tool) , Multidisciplinary, Monthly, Indexing in all major database & Metadata, Citation Generator, Digital Object Identifier(CrossRef DOI)
| IJCRT Journal front page | IJCRT Journal Back Page |
Paper Title: PROACTIVE AI-POWERED RAILWAY SAFETY SYSTEM
Author Name(s): Cathrin Deboral C, Dhanush D, Dhyanesh Kumar S, Prithiv Prakash A, Dhivya Lakshumi S
Published Paper ID: - IJCRTAM02022
Register Paper ID - 266440
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02022 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02022 Published Paper PDF: download.php?file=IJCRTAM02022 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02022.pdf
Title: PROACTIVE AI-POWERED RAILWAY SAFETY SYSTEM
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 125-138
Year: August 2024
Downloads: 327
E-ISSN Number: 2320-2882
Railway safety remains a critical concern worldwide, prompting the need for innovative solutions to prevent accidents and protect passengers and crew. This project proposes an AI-driven railway safety system leveraging computer vision and sensor technologies to proactively detect hazards. The system aims to revolutionize safety measures by swiftly identifying potential threats on railway tracks, such as obstacles, collisions, and derailments. By integrating advanced computer vision capabilities with sensor data analysis, the system enables real-time monitoring and prompt alerting of railway authorities. Methodologies include comprehensive data collection, AI model development, and seamless integration into existing railway infrastructure. Evaluation metrics and impact assessments will gauge the system's effectiveness in reducing accidents and enhancing safety. The ultimate goal of the project is to mitigate risks, significantly improve passenger safety, and optimize operational efficiency for railway authorities through preemptive hazard detection and rapid response protocols
Licence: creative commons attribution 4.0
PROACTIVE AI-POWERED RAILWAY SAFETY SYSTEM
Paper Title: DATA SECURITY ENHANCEMENT USING BLOCKCHAIN & MONGODB
Author Name(s): V Dharma Prakash, Ashok Kumar M, Suman T, Mathavan M
Published Paper ID: - IJCRTAM02021
Register Paper ID - 266441
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02021 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02021 Published Paper PDF: download.php?file=IJCRTAM02021 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02021.pdf
Title: DATA SECURITY ENHANCEMENT USING BLOCKCHAIN & MONGODB
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 121-124
Year: August 2024
Downloads: 262
E-ISSN Number: 2320-2882
This project introduces a wireless night lamp designed in the shape of a crescent moon, combining aesthetics with functionality. Title: Wireless Power Transmission Night Lamp with Arduino and Motion Sensors. The objective of this project is to create an energy-efficient and convenient lighting solution for nighttime illumination in various indoor settings. The system employs wireless power transmission technology to eliminate the need for traditional power cords, enhancing user convenience and safety. The core components of the system include an Arduino microcontroller, a wireless power transmitter, a receiver module, and passive infrared (PIR) motion sensors. The Arduino microcontroller serves as the central control unit, orchestrating the operation of the system based on input from the motion sensors. The wireless power transmitter, based on resonant inductive coupling, wirelessly transfers power to the receiver module, which powers the night lamp. The incorporation of motion sensors enables the system to activate the night lamp automatically in response to detected motion within a predefined range. This feature enhances energy efficiency by ensuring that the lamp only illuminates when needed, thus conserving power during periods of inactivity. Additionally, the use of motion sensors enhances user convenience by providing hands-free operation, eliminating the need for manual activation. The implementation of the wireless power transmission night lamp system involves hardware design, including circuitry for power transmission and reception, as well as software development for Arduino programming to control the system's functionality. The system's design emphasizes simplicity, affordability, and reliability, making it suitable for deployment in various indoor environments such as bedrooms and hallways. Overall, this project demonstrates the feasibility and effectiveness of utilizing Arduino microcontrollers and motion sensors to create a wireless power transmission night lamp system. The system's energy efficient operation, convenience, and ease of deployment make it a promising solution for enhancing nighttime illumination in indoor settings while minimizing energy consumption and improving user experience. The project aims to seamlessly blend artistic design with practicality, offering a unique and visually pleasing wireless night lamp that contributes to a cozy and ambient atmosphere in any room. It can be controlled through motion sensor and Arduino controller.
Licence: creative commons attribution 4.0
Portable, convenient, efficient, wireless, innovative
Paper Title: REAL-TIME MEDICAL DATA SECURITY SOLUTION FOR SMART HEALTHCARE
Author Name(s): Dharma Prakash.V, Shankar, Pushparaj
Published Paper ID: - IJCRTAM02020
Register Paper ID - 266443
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02020 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02020 Published Paper PDF: download.php?file=IJCRTAM02020 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02020.pdf
Title: REAL-TIME MEDICAL DATA SECURITY SOLUTION FOR SMART HEALTHCARE
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 117-120
Year: August 2024
Downloads: 290
E-ISSN Number: 2320-2882
The Smart healthcare systems have changed the game for doctors and patients alike by allowing for continuous data monitoring and analysis to improve diagnosis, treatment, and care overall. But there are serious worries about data security and privacy when sensitive medical information is integrated into digital platforms. In order to guarantee the safety of real-time health information in smart healthcare settings, this abstract offer a thorough solution. To protect patient information from prying eyes, our suggested system makes use of cutting-edge encryption methods. To provide end-to-end security throughout the data lifecycle, advanced encryption algorithms like RSA (Rivest-Shamir-Adleman) and AES (Advanced Encryption Standard) are used to encrypt data while it is in transit and at rest, respectively. To further reduce the likelihood of key theft and ensure that only authorized individuals have safe access to data, secure key management methods have been put in place.
Licence: creative commons attribution 4.0
REAL-TIME MEDICAL DATA SECURITY SOLUTION FOR SMART HEALTHCARE
Paper Title: ADVANCED CONVERSATION ANALYSIS IN PHONE CALLS THROUGH NATURAL LANGUAGE PROCESSING (NLP)
Author Name(s): Sowndharaiya.K, Naveen Kumar E, Praveen Kumar T, Ragul P
Published Paper ID: - IJCRTAM02019
Register Paper ID - 266444
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02019 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02019 Published Paper PDF: download.php?file=IJCRTAM02019 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02019.pdf
Title: ADVANCED CONVERSATION ANALYSIS IN PHONE CALLS THROUGH NATURAL LANGUAGE PROCESSING (NLP)
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 106-116
Year: August 2024
Downloads: 283
E-ISSN Number: 2320-2882
In today's digital communication landscape, efficient analysis of phone call conversations is imperative for various applications, including customer service enhancement and market research. This project proposes a novel approach leveraging Natural Language Processing (NLP) techniques to identify conversation threads in phone calls. The methodology encompasses preprocessing audio, converting it to text, and employing NLP algorithms such as summarization, topic modelling, and sentiment analysis for comprehensive analysis. Key components include implementing a robust speech-to-text conversion system using deep learning models fine-tuned on phone call data, followed by NLP analysis to parse and analyze transcribed text for pattern identification. Thread identification algorithms are developed based on semantic coherence and contextual cues, facilitating the segmentation of conversations into coherent threads. An intuitive user interface is designed to visualize and interact with identified conversation threads efficiently. The system's accuracy, scalability, and real-world applicability are evaluated rigorously across diverse datasets, with continual optimization to enhance performance. Evaluation metrics include precision, recall, and F1-score, providing insights into the system's effectiveness in identifying conversation topics and patterns.
Licence: creative commons attribution 4.0
Natural Language Processing (NLP), speech-to-text, scalability, metrics
Paper Title: BLOCK CHAIN-ENABLED ACADEMIC RECORD MANAGEMENT SYSTEM FOR EDUCATION SECTOR
Author Name(s): B.Anupriya, R.Bhuvaneswari, R.Mohanabharathi, R.Tamilselvi
Published Paper ID: - IJCRTAM02018
Register Paper ID - 266445
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02018 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02018 Published Paper PDF: download.php?file=IJCRTAM02018 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02018.pdf
Title: BLOCK CHAIN-ENABLED ACADEMIC RECORD MANAGEMENT SYSTEM FOR EDUCATION SECTOR
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 102-105
Year: August 2024
Downloads: 254
E-ISSN Number: 2320-2882
The Student Document Management System based on Ethereum Blockchain project aims to revolutionize the traditional approach to academic record keeping by leveraging the decentralized and secure features of block chain technology. The system seeks to provide a tamper-proof and transparent platform for the storage, verification, and accessibility of student documents. Through the integration of smart contracts on the Ethereum block chain, the project aims to ensure data security, streamline the verification process, and reduce the risk of data loss. By prioritizing user authentication, efficient document upload and verification, and a user-friendly interface, the system intends to offer a comprehensive solution for educational institutions, students, and employers, contributing to the enhancement of overall data integrity and accessibility in the academic sector. The project also emphasizes rigorous testing, scalability considerations, and thorough documentation, anticipating a positive impact on educational practices and the evolution of secure document management systems
Licence: creative commons attribution 4.0
Paper Title: AI ASSISTANT IOT SAFETY JACKET FOR RESCUE MISSION (DEFENCE)
Author Name(s): Dr. V. Muthupriya, Fatheen Khan B, Mohamed Shihan Khader M
Published Paper ID: - IJCRTAM02017
Register Paper ID - 266446
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02017 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02017 Published Paper PDF: download.php?file=IJCRTAM02017 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02017.pdf
Title: AI ASSISTANT IOT SAFETY JACKET FOR RESCUE MISSION (DEFENCE)
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 93-101
Year: August 2024
Downloads: 306
E-ISSN Number: 2320-2882
The project introduces an advanced safety jacket tailored explicitly for defense and rescue missions. It incorporates cutting-edge features to enhance safety, communication, and situational awareness during operations. Central to its functionality is the seamless integration with an AI assistant, providing real-time support to soldiers and establishing connectivity with their environment. Key components include a precision GPS sensor for accurate location tracking, ensuring effective coordination in emergencies. The AI assistant acts as a crucial bridge in communication, relaying vital information like location, heart rate and voice recordings to command centers and team members. Going beyond traditional distress signals, the AI assistant offers navigational support by interpreting voice commands, assisting soldiers in unfamiliar terrain, and dynamically adjusting routes based on live data. This comprehensive system not only improves the safety and efficiency of individual soldiers but also equips commanders with valuable insights from soldiers' status and environmental conditions, facilitating informed decision-making. In essence, this adaptable safety jacket represents a significant advancement in military gear, leveraging state-of-the-art technology to safeguard and enhance the success of military personnel in diverse operational landscapes
Licence: creative commons attribution 4.0
Advanced safetyjacket, Defense and rescue missions, Cutting-edge features, Safety enhancement, Situational awareness, AI assistant integration.
Paper Title: STREET LIGHT AUTOMATION AND FAULT DETECTION
Author Name(s): M. DEVI, SAHIL DHANAJI ZIMAL, S. VIGNESH
Published Paper ID: - IJCRTAM02016
Register Paper ID - 266447
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02016 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02016 Published Paper PDF: download.php?file=IJCRTAM02016 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02016.pdf
Title: STREET LIGHT AUTOMATION AND FAULT DETECTION
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 88-92
Year: August 2024
Downloads: 1062
E-ISSN Number: 2320-2882
The Smart Street Light Automation System with Fault Detection aims to revolutionize urban lighting infrastructure by introducing an integrated solution that combines adaptive control mechanisms and proactive maintenance capabilities. Leveraging advanced light sensors, microcontrollers, and communication modules, the system autonomously adjusts street light brightness levels in response to ambient lighting conditions, ensuring optimal visibility while minimizing energy consumption. Moreover, the incorporation of fault detection sensors, including temperature and current sensors, enables real-time monitoring of street light health, facilitating the early detection of anomalies such as overheating or electrical faults. By promptly identifying and reporting faults to a centralized monitoring station, the system enables expedited maintenance interventions, thus reducing downtime and enhancing overall system reliability. Through its innovative approach to street light management, this project aims to contribute to the development of smarter and more sustainable cities, where efficient lighting infrastructure plays a crucial role in enhancing safety, comfort, and energy efficiency for residents and visitors alike
Licence: creative commons attribution 4.0
fault detection, urban lighting infrastructure, energy consumption, real-time monitoring, sustainable city, microcontrollers.
Paper Title: ECO-TECH GUARDIAN: INNOVATION IN INTELLIGENT POLLUTION MITIGATION
Author Name(s): V. Thirumani Thangam, Dr. G. B. Santhi, Afseen Fathima M, Monica S, Subalakshmi
Published Paper ID: - IJCRTAM02015
Register Paper ID - 266449
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02015 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02015 Published Paper PDF: download.php?file=IJCRTAM02015 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02015.pdf
Title: ECO-TECH GUARDIAN: INNOVATION IN INTELLIGENT POLLUTION MITIGATION
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 82-87
Year: August 2024
Downloads: 269
E-ISSN Number: 2320-2882
This Project presents an innovative vulnerabilities inherent in traditional data management systems. This project aims to bridge data security model for environmental this gap by proposing an innovative data security monitoring, integrating blockchain technology model that integrates blockchain technology with advanced cryptographic techniques. The advanced cryptographic techniques, specifically the model incorporates the Twofish algorithm for Twofish algorithm for encryption and the RSA encryption and the RSA algorithm for algorithm for decryption, along with the utilization decryption, ensuring a high level of data of smart contracts. Confidentiality and integrity by employing decentralized ledger, the system blockchain's One of the primary objectives is to enhance the enhances transparency and traceability in confidentiality and integrity of environmental data. Environmental data transactions. Smart With the exponential growth in data collection and contracts are integrated into the blockchain transmission in environmental monitoring systems, framework, automating processes and enforcing ensuring that sensitive information remains security protocols. The Twofish and RSA confidential and unaltered is paramount. By combination fortifies the protection of sensitive leveraging the Twofish algorithm for encryption, information, making it resistant to unauthorize the project aims to provide robust protection access and tampering. This comprehensive against unauthorized access and data breaches. Approach aims to address data security Twofish, known for its strong encryption challenges in environmental monitoring, capabilities, offers a formidable defense providing a robust and trustworthy solution. mechanism, thereby safeguarding sensitive. environmental data from malicious actors and cyber threats
Licence: creative commons attribution 4.0
Rivest-Shamir-Adlemen (RSA), Algorithm, Neural Network, Machine Learning, Confidentiality, Smart contracts.
Paper Title: OPTIMIZING DIGITAL TRANSACTIONS: A LOOK AT CHALLENGES AND BEST PRACTICES FOR UNIFIED PAYMENT INTERFACES
Author Name(s): Mr.Mahalingam Palaniandi, Dharani S
Published Paper ID: - IJCRTAM02014
Register Paper ID - 266450
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02014 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02014 Published Paper PDF: download.php?file=IJCRTAM02014 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02014.pdf
Title: OPTIMIZING DIGITAL TRANSACTIONS: A LOOK AT CHALLENGES AND BEST PRACTICES FOR UNIFIED PAYMENT INTERFACES
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 70-81
Year: August 2024
Downloads: 303
E-ISSN Number: 2320-2882
The digital revolution has transformed the way we transact financial transactions. With smart phones and internet connectivity rising, mobile payment systems such as UPI have become increasingly popular. Developed by NPCI, UPI is an instant money transfer and payment system that allows users to make instant payments using their smartphones. However, the platform's widespread adoption and effective use come with a number of challenges. This paper systematically examines the challenges faced in the UPI domain. From security concerns to interoperability issues, user awareness issues, and technological limitations, the paper examines the best practices for optimizing UPI usage, focusing strongly on user education, strong security measures, smooth interoperability, and continuous technology development. This paper aims to provide stakeholders with valuable guidance on how to use UPI more efficiently and securely, leading to a better overall digital transaction experience.
Licence: creative commons attribution 4.0
OPTIMIZING DIGITAL TRANSACTIONS: A LOOK AT CHALLENGES AND BEST PRACTICES FOR UNIFIED PAYMENT INTERFACES
Paper Title: SATELLITE IMAGES CLASSIFICATION BY USING ARTIFICIAL INTELLIGENCE TECHNIQUES
Author Name(s): Kezia H, T. Dharanika
Published Paper ID: - IJCRTAM02013
Register Paper ID - 266451
Publisher Journal Name: IJPUBLICATION, IJCRT
DOI Member ID: 10.6084/m9.doi.one.IJCRTAM02013 and DOI :
Author Country : Indian Author, India, - , -, - , | Research Area: Science and Technology Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRTAM02013 Published Paper PDF: download.php?file=IJCRTAM02013 Published Paper PDF: http://www.ijcrt.org/papers/IJCRTAM02013.pdf
Title: SATELLITE IMAGES CLASSIFICATION BY USING ARTIFICIAL INTELLIGENCE TECHNIQUES
DOI (Digital Object Identifier) :
Pubished in Volume: 12 | Issue: 8 | Year: August 2024
Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882
Subject Area: Science and Technology
Author type: Indian Author
Pubished in Volume: 12
Issue: 8
Pages: 67-69
Year: August 2024
Downloads: 266
E-ISSN Number: 2320-2882
Satellite imagery plays a vital role in various fields, including agriculture, urban planning, disaster management, and environmental monitoring. Efficient and accurate classification of satellite images is essential for extracting valuable information and making informed decisions. In this study, we propose the use of artificial intelligence techniques for satellite image classification. A comprehensive dataset of labelled satellite images is collected, representing different land cover types or objects of interest. The dataset is pre-processed to enhance the image quality, remove noise, and normalize the data. Data augmentation techniques such as rotation, scaling, and flipping are applied to increase the dataset size and improve the model's generalization ability. Future research directions may include exploring advanced deep learning architectures, such as attention mechanisms or graph neural networks, to further improve the classification performance. Additionally, the integration of multi-sensor satellite data and temporal analysis can enhance the capabilities of the classification models for dynamic monitoring and change detection applications
Licence: creative commons attribution 4.0
SATELLITE IMAGES CLASSIFICATION BY USING ARTIFICIAL INTELLIGENCE TECHNIQUES

