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INTERNATIONAL JOURNAL OF CREATIVE RESEARCH THOUGHTS - IJCRT (IJCRT.ORG)

International Peer Reviewed & Refereed Journals, Open Access Journal

IJCRT Peer-Reviewed (Refereed) Journal as Per New UGC Rules.

ISSN Approved Journal No: 2320-2882 | Impact factor: 7.97 | ESTD Year: 2013

Call For Paper - Volume 14 | Issue 4 | Month- April 2026

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Volume 14 | Issue 4 |

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  Paper Title: Stress Analysis and Care Prediction System for Online Worker

  Author Name(s): Sheshadri, T. Pavan Kumar, K. Akash, M. Meghana, N. Mounika

  Published Paper ID: - IJCRT2604617

  Register Paper ID - 305600

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604617 and DOI :

  Author Country : Indian Author, India, 500010 , hyderabad, 500010 , | Research Area: Science and Technology

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604617
Published Paper PDF: download.php?file=IJCRT2604617
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604617.pdf

  Your Paper Publication Details:

  Title: STRESS ANALYSIS AND CARE PREDICTION SYSTEM FOR ONLINE WORKER

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Science and Technology

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f289-f296

 Year: April 2026

 Downloads: 28

  E-ISSN Number: 2320-2882

 Abstract

In recent years, the shift toward online work has increased significantly, especially after the COVID-19 pandemic. While working remotely provides flexibility, it has also led to higher stress levels due to continuous screen usage, workload pressure, and reduced social interaction. This paper presents a stress analysis and care prediction system designed for online workers. The system observes user behavior through facial expressions, typing patterns, and physiological signals to understand stress levels in real time. A combination of deep learning and machine learning techniques is used to improve the system's performance. The model is implemented using a Raspberry Pi setup, making it practical for real-world usage. Compared to traditional methods, this approach focuses on multiple inputs instead of relying on a single parameter, which helps in achieving better accuracy. The system also provides feedback to users so they can take necessary actions to manage their stress. Overall, this work aims to provide a simple and effective solution to support the well-being of people working in digital environments.


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 Keywords

Stress Detection, Machine Learning, Facial Recognition, Real-Time Monitoring, Raspberry P

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Creative Commons Attribution 4.0 and The Open Definition


  Paper Title: Secure and Transparent E-Voting System with Blockchain

  Author Name(s): Omkar Prajapati, Ravindra Sonavane, Devansh Patil, Akash Patil, Aditya Singh Thakur

  Published Paper ID: - IJCRT2604616

  Register Paper ID - 305528

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604616 and DOI :

  Author Country : Indian Author, India, 401208 , Palghar, 401208 , | Research Area: Science and Technology

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604616
Published Paper PDF: download.php?file=IJCRT2604616
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604616.pdf

  Your Paper Publication Details:

  Title: SECURE AND TRANSPARENT E-VOTING SYSTEM WITH BLOCKCHAIN

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Science and Technology

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f283-f288

 Year: April 2026

 Downloads: 27

  E-ISSN Number: 2320-2882

 Abstract

Ensuring transparency and reliability in electoral processes is essential for maintaining public trust in democratic systems. Conventional voting methods, including paper-based ballots and electronic voting machines, have raised concerns regarding security, transparency, and potential manipulation of results. This study proposes a blockchain-enabled electronic voting system designed to improve the integrity and auditability of digital elections. The system leverages Ethereum smart contracts to securely record votes on a decentralized ledger, ensuring that once a vote is submitted it cannot be modified or removed. Voter authentication is carried out through MetaMask wallet verification, which supports the enforcement of a one-voter- one-vote policy while preserving user anonymity. The architecture combines a web-based voting interface with blockchain-based smart contracts to manage vote submission and storage in an immutable ledger. Experimental implementation demonstrates that the proposed approach enhances transparency, reduces the possibility of vote tampering, and enables verifiable election results. The system can serve as a practical framework for conducting secure digital elections in educational institutions, organizational environments, and other controlled voting scenarios.


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 Keywords

lockchain, Electronic Voting, Smart Contracts, Ethereum, MetaMask.

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Creative Commons Attribution 4.0 and The Open Definition


  Paper Title: CHARACTERIZATION OF NOVEL ELETTARIA CARDAMOMUM LEAF MIDRIB REINFORCED POLYESTER COMPOSITES

  Author Name(s): Gnanaseviyar S, Kabilan R, Vishnu K S, Prakash P, Balasubramanian B

  Published Paper ID: - IJCRT2604615

  Register Paper ID - 305628

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604615 and DOI :

  Author Country : Indian Author, India, 639114 , Karur, 639114 , | Research Area: Science and Technology

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604615
Published Paper PDF: download.php?file=IJCRT2604615
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604615.pdf

  Your Paper Publication Details:

  Title: CHARACTERIZATION OF NOVEL ELETTARIA CARDAMOMUM LEAF MIDRIB REINFORCED POLYESTER COMPOSITES

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Science and Technology

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f276-f282

 Year: April 2026

 Downloads: 35

  E-ISSN Number: 2320-2882

 Abstract

Natural fiber reinforced polymer composites have been the subject of much research due to the growing need for environmentally friendly and sustainable products. Elettaria cardamomum leaf midrib (ECLM) fibers were isolated and used as reinforcement in polyester matrix composites in this work. To improve the interfacial adhesion between the fibers and matrix, the fibers were treated with alkali. Compression molding was used after the hand lay-up method to create composites with different fiber weight fractions. The mechanical characteristics, including hardness, tensile strength, flexural strength, and impact strength, were assessed in accordance with ASTM guidelines.


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Creative Commons Attribution 4.0 and The Open Definition

 Keywords

Elettaria cardamomum fiber, Natural fiber reinforced composites, Polyester resin, Mechanical properties, Morphological analysis

  License

Creative Commons Attribution 4.0 and The Open Definition


  Paper Title: A Machine Learning Approach for Student Academic Performance Prediction

  Author Name(s): Sweety Kumari, Gopal Khorwal

  Published Paper ID: - IJCRT2604614

  Register Paper ID - 304442

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604614 and DOI :

  Author Country : Indian Author, India, 302017 , Jaipur, 302017 , | Research Area: Science and Technology

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604614
Published Paper PDF: download.php?file=IJCRT2604614
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604614.pdf

  Your Paper Publication Details:

  Title: A MACHINE LEARNING APPROACH FOR STUDENT ACADEMIC PERFORMANCE PREDICTION

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Science and Technology

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f272-f275

 Year: April 2026

 Downloads: 41

  E-ISSN Number: 2320-2882

 Abstract

Predicting student academic performance is a growing area of interest in educational research. Traditional evaluation methods assess students only after examinations, which prevents early identification of at-risk learners. This paper proposes a simple yet effective machine learning-based prediction system that uses five basic student attributes attendance percentage, daily study hours, marks in previous examinations, assignment submission rate, and class participation score to predict whether a student will Pass, perform Averagely, or Fail in their upcoming examination. Three widely-used machine learning algorithms, namely Linear Regression, Decision Tree, and Random Forest, are trained and compared using a dataset of 200 students. Experimental results show that the Random Forest model achieves the highest prediction accuracy of 91%, followed by Decision Tree at 85% and Linear Regression at 78%. The proposed system requires no advanced infrastructure and is practical for adoption in any educational institution to enable timely academic intervention for struggling students.


Licence: creative commons attribution 4.0

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Creative Commons Attribution 4.0 and The Open Definition

 Keywords

Machine Learning, Student Performance Prediction, Decision Tree, Random Forest, Linear Regression, Educational Data Mining, Academic Analytics, Classification.

  License

Creative Commons Attribution 4.0 and The Open Definition


  Paper Title: EcoQuest: A Scalable Gamified and Adaptive Environmental Learning Platform

  Author Name(s): Arya Mahindrakar, Pravin Jaybhaye, Sahil Bhosale

  Published Paper ID: - IJCRT2604613

  Register Paper ID - 305694

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604613 and DOI :

  Author Country : Indian Author, India, 411062 , Pune, 411062 , | Research Area: Science and Technology

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604613
Published Paper PDF: download.php?file=IJCRT2604613
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604613.pdf

  Your Paper Publication Details:

  Title: ECOQUEST: A SCALABLE GAMIFIED AND ADAPTIVE ENVIRONMENTAL LEARNING PLATFORM

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Science and Technology

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f247-f271

 Year: April 2026

 Downloads: 30

  E-ISSN Number: 2320-2882

 Abstract

Increasing intensity of environmental issues like climate change, degradation of biodiversity, and depletion of resources underscores the necessity of good environmental education systems. Nonetheless, most legacy and the majority of new digital learning tools still use the same traditional models of delivering static content that cannot support user engagement or adapt to a wide variety of learning behaviors. This weakness leads to less retention of knowledge and little effect on behavior in the long term. In this study, a complete EcoQuest platform, EcoQuest, a full-stack, gamified environmental education system, is proposed to overcome these limitations by integrating adaptive learning, real-time interaction, and intelligent assistance. The system is designed to provide individualized learning by dynamically changing the difficulty of questions according to their individual user performance metrics, thus making sure that learners are challenged and motivated throughout their progress. EcoQuest requires a systematic gamification system, comprising experience points (XP), level advancement, achievement badges, streak monitoring, and leaderboards. These aspects will support the regular participation and encourage the further involvement. Moreover, the platform allows real-time multiplayer quizzes with WebSocket-based communication, allowing collaborative and competitive learning experiences, which also increase the engagement of the users. Technically, the system is deployed with a modular design based on a React-powered frontend, a Node.js/Express backend, and a MongoDB database that can store and retrieve data in a scalable way. The use of Socket.io allows real-time communication, and the assistant (EcoBot) is an AI-based one that will use context-dependent answers within environmental-related issues only, which will make it relevant and domain-specific. The design decisions determine performance-oriented, such as caching and indexing of the database, which play a role in efficient functioning of the system and decreased latency. Functional assessment states that the platform has stable real-time synchronization, data processing efficiency, and responsiveness to user interaction in normal usage conditions. The findings prove that the combination of gamification, adaptive learning practices, and AI-guided support can greatly improve engagement and learning outcomes within environmental education platforms. EcoQuest sets a realistic template of building scalable, interactive, and user-focused learning platforms in other related areas.


Licence: creative commons attribution 4.0

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Creative Commons Attribution 4.0 and The Open Definition

 Keywords

Gamified Learning, Adaptive Learning System, Environmental Education, Real-Time Multiplayer Learning, AI-Based Chatbot, Full-Stack Web Application, WebSocket Communication, MongoDB, Role-Based Access Control

  License

Creative Commons Attribution 4.0 and The Open Definition


  Paper Title: India-China Relations In The NDA Era (2014-2019): Cooperation, Competition, And Conflict

  Author Name(s): BIJAY MONDAL

  Published Paper ID: - IJCRT2604612

  Register Paper ID - 305826

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604612 and DOI :

  Author Country : Indian Author, India, 713346 , Pandaveswar, 713346 , | Research Area: Arts1 All

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604612
Published Paper PDF: download.php?file=IJCRT2604612
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604612.pdf

  Your Paper Publication Details:

  Title: INDIA-CHINA RELATIONS IN THE NDA ERA (2014-2019): COOPERATION, COMPETITION, AND CONFLICT

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Arts1 All

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f242-f246

 Year: April 2026

 Downloads: 27

  E-ISSN Number: 2320-2882

 Abstract

The India-China relation holds a unique position in the world, as cooperation and confrontation are the primary bases of their relationship. The present study focuses on the India-China relationship during the NDA period (2014-2019), under the leadership of Indian Prime Minister Narendra Modi. The objective of the paper is to examine whether the NDA era has been able to bring any changes in India's China policy, or has it merely maintained continuity. Based on the secondary sources, the paper has adopted a qualitative research method and case study approach. The study reveals that this phase portrays a measure adjustment period rather than a total rupture from the past policy. The Indian government has adopted a more assertive approach in its foreign policy during that time. This phase can be marked by a pattern of competitive coexistence.


Licence: creative commons attribution 4.0

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Creative Commons Attribution 4.0 and The Open Definition

 Keywords

NDA Government, Strategic Competition, National interest, economic interdependence, India-China relations, Indian foreign policy, Chinese foreign policy

  License

Creative Commons Attribution 4.0 and The Open Definition


  Paper Title: The Traumas in the Lives of Zainichi Koreans in Japan

  Author Name(s): Munish Mohammad, Dr. Manoj Kumar

  Published Paper ID: - IJCRT2604611

  Register Paper ID - 305653

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604611 and DOI :

  Author Country : Indian Author, India, - , -, - , | Research Area: Arts All

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604611
Published Paper PDF: download.php?file=IJCRT2604611
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604611.pdf

  Your Paper Publication Details:

  Title: THE TRAUMAS IN THE LIVES OF ZAINICHI KOREANS IN JAPAN

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Arts All

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f236-f241

 Year: April 2026

 Downloads: 25

  E-ISSN Number: 2320-2882

 Abstract

This paper examines the historically rooted and socially reproduced traumas experienced by Zainichi Koreans--ethnic Koreans residing in Japan whose presence largely originates from migration during Japan's colonial rule of Korea (1910-1945). Drawing upon historical scholarship, contemporary academic literature, journalistic investigations, and mental-health research, the study argues that Zainichi trauma is embedded in colonial violence and sustained through postwar legal marginalization, structural discrimination, and contemporary hate speech. These traumatic experiences manifest socially and psychologically and are transmitted intergenerationally through narratives of loss, stigma, and survival. The paper analyzes major domains of trauma, including wartime forced labor and atomic bomb survivor exclusion, postwar juridical liminality, discrimination in education and employment, identity erasure, and political scapegoating. It further reviews empirical evidence linking discrimination to adverse mental-health outcomes and highlights community-based coping and resistance strategies. The paper concludes with policy recommendations emphasizing structural redress, historical acknowledgment, and culturally responsive mental-health interventions.


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Creative Commons Attribution 4.0 and The Open Definition

 Keywords

Trauma, Stigma, Resilience, Zainichi Koreans

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Creative Commons Attribution 4.0 and The Open Definition


  Paper Title: SHAKTI DEFENDER AI: INTELLIGENT MALWARE DETECTION USING MACHINE LEARNING WITH HYBRID STATIC AND DYNAMIC ANALYSIS

  Author Name(s): Pratham Dubey, VIvek Magar, Anuj Gupta, Ankit Gupta

  Published Paper ID: - IJCRT2604610

  Register Paper ID - 306038

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604610 and DOI :

  Author Country : Indian Author, India, 400079 , MUMBAI, 400079 , | Research Area: Science and Technology

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604610
Published Paper PDF: download.php?file=IJCRT2604610
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604610.pdf

  Your Paper Publication Details:

  Title: SHAKTI DEFENDER AI: INTELLIGENT MALWARE DETECTION USING MACHINE LEARNING WITH HYBRID STATIC AND DYNAMIC ANALYSIS

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Science and Technology

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f227-f235

 Year: April 2026

 Downloads: 27

  E-ISSN Number: 2320-2882

 Abstract

The rapid increase in sophisticated malware poses a significant threat to modern digital systems. Traditional signature-based detection methods are ineffective against zero-day and polymorphic attacks. This paper presents "Shakti Defender AI," an intelligent malware detection system that integrates both static and dynamic analysis using machine learning techniques. The proposed system extracts features from Portable Executable (PE) files, opcode sequences, and real-time behavioral patterns such as API calls, registry activities, and network interactions. These features are processed using an ensemble of machine learning models including XGBoost, LightGBM, Random Forest, and an LSTM-based model for sequence analysis. Experimental results demonstrate high performance with an accuracy of 99.16%, along with strong precision and recall. The system is implemented as a user-friendly desktop application supporting multiple file types with real-time scanning and threat intelligence integration. The results indicate that the hybrid approach significantly improves malware detection capability compared to traditional and single-method approaches, making it suitable for real-world cybersecurity applications.


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Creative Commons Attribution 4.0 and The Open Definition

 Keywords

Malware Detection, Machine Learning, XGBoost, LightGBM, LSTM, Static Analysis, Dynamic Analysis, Cybersecurity

  License

Creative Commons Attribution 4.0 and The Open Definition


  Paper Title: INVISIBLE SCARS: EXPLORING GRIEF COUNSELLING FOR CHILDREN AFTER PARENTAL SEPARATION IN INDIA

  Author Name(s): DIVVYA KAUUR GILL, DR. RICHA GUPTA

  Published Paper ID: - IJCRT2604609

  Register Paper ID - 305461

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604609 and DOI :

  Author Country : Indian Author, India, - , -, - , | Research Area: Humanities All

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604609
Published Paper PDF: download.php?file=IJCRT2604609
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604609.pdf

  Your Paper Publication Details:

  Title: INVISIBLE SCARS: EXPLORING GRIEF COUNSELLING FOR CHILDREN AFTER PARENTAL SEPARATION IN INDIA

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Humanities All

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f215-f226

 Year: April 2026

 Downloads: 24

  E-ISSN Number: 2320-2882

 Abstract

INVISIBLE SCARS: EXPLORING GRIEF COUNSELLING FOR CHILDREN AFTER PARENTAL SEPARATION IN INDIA


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INVISIBLE SCARS: EXPLORING GRIEF COUNSELLING FOR CHILDREN AFTER PARENTAL SEPARATION IN INDIA

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Creative Commons Attribution 4.0 and The Open Definition


  Paper Title: Evaluation Of Low Cost Bio-Adsorbents For Fluoride Removal From Drinking Water In Kuttanadu, Kerala

  Author Name(s): Adhya Jibi K, Adil Navas, Keerthi S B, Muhsin K h, Rohith S

  Published Paper ID: - IJCRT2604608

  Register Paper ID - 304766

  Publisher Journal Name: IJPUBLICATION, IJCRT

  DOI Member ID: 10.6084/m9.doi.one.IJCRT2604608 and DOI :

  Author Country : Indian Author, India, 691502 , Kollam, 691502 , | Research Area: Science and Technology

Published Paper URL: http://ijcrt.org/viewfull.php?&p_id=IJCRT2604608
Published Paper PDF: download.php?file=IJCRT2604608
Published Paper PDF: http://www.ijcrt.org/papers/IJCRT2604608.pdf

  Your Paper Publication Details:

  Title: EVALUATION OF LOW COST BIO-ADSORBENTS FOR FLUORIDE REMOVAL FROM DRINKING WATER IN KUTTANADU, KERALA

 DOI (Digital Object Identifier) :

 Pubished in Volume: 14  | Issue: 4  | Year: April 2026

 Publisher Name : IJCRT | www.ijcrt.org | ISSN : 2320-2882

 Subject Area: Science and Technology

 Author type: Indian Author

 Pubished in Volume: 14

 Issue: 4

 Pages: f205-f214

 Year: April 2026

 Downloads: 30

  E-ISSN Number: 2320-2882

 Abstract

Fluoride contamination in groundwater is a major environmental and public health concern in parts of India, especially in Kuttanadu, Kerala. The issue arises from both natural geological sources and the excessive use of phosphate fertilizers. Prolonged exposure to high fluoride levels can lead to serious health problems such as dental and skeletal fluorosis. This study focuses on developing a low-cost and eco-friendly solution for fluoride removal using bio- adsorbents derived from locally available seaweed. Sargassum was selected due to its high availability and the presence of functional groups that enhance adsorption capacity. The raw seaweed was processed through washing, drying, and thermal activation to improve its surface area and porosity. These modifications increase the number of active binding sites, thereby enhancing its effectiveness in removing fluoride from water. Batch adsorption experiments were conducted to evaluate the performance of activated Sargassum in comparison with rice husk ash. Key parameters such as pH, contact time, and initial fluoride concentration were optimized to determine the most effective conditions for fluoride removal. The study is expected to confirm that fluoride adsorption follows pseudo-second-order kinetics and that activated Sargassum shows higher removal efficiency. This research highlights the potential of seaweed-based adsorbents as a sustainable, cost- effective alternative for water treatment, supporting community-level solutions and promoting a circular economy approach.


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Creative Commons Attribution 4.0 and The Open Definition

 Keywords

Bio-adsorbent, Defluoridation, Sargassum, Groundwater, Kuttanad, Thermal activation, Water treatment, Adsorption kinetics, Sustainable materials, Fluoride removal efficiency

  License

Creative Commons Attribution 4.0 and The Open Definition



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