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            "page": "<h2><strong>About IJERT</strong></h2>\n<p><strong><span><span>International Journal of Engineering Research &amp; Technology</span></span> (IJERT)</strong> is a peer-reviewed, open-access international journal dedicated to the publication of high-quality research in the fields of engineering, technology, and applied sciences.</p>\n<p>IJERT provides a global platform for researchers, academicians, industry professionals, and students to share innovative ideas, original research findings, and practical developments that contribute to scientific and technological advancement.</p>\n\n\n<h2><strong>Our Mission</strong></h2>\n<p>The mission of IJERT is to:</p>\n<ul>\n<li>\n<p>Promote the dissemination of original and innovative research</p>\n</li>\n<li>\n<p>Support academic excellence and ethical publishing practices</p>\n</li>\n<li>\n<p>Encourage interdisciplinary research across engineering and technology domains</p>\n</li>\n<li>\n<p>Provide unrestricted access to scholarly knowledge worldwide</p>\n</li>\n</ul>\n\n\n<h2><strong>Scope of the Journal</strong></h2>\n<p>IJERT publishes research articles, review papers, and technical notes across a broad range of disciplines, including but not limited to:</p>\n<ul>\n<li>\n<p>Computer Science &amp; Engineering</p>\n</li>\n<li>\n<p>Electrical &amp; Electronics Engineering</p>\n</li>\n<li>\n<p>Mechanical Engineering</p>\n</li>\n<li>\n<p>Civil Engineering</p>\n</li>\n<li>\n<p>Electronics &amp; Communication Engineering</p>\n</li>\n<li>\n<p>Information Technology</p>\n</li>\n<li>\n<p>Artificial Intelligence &amp; Data Science</p>\n</li>\n<li>\n<p>Emerging Technologies and Applied Sciences</p>\n</li>\n</ul>\n\n\n<h2><strong>Peer Review Process</strong></h2>\n<p>All submissions to IJERT undergo a <strong>rigorous peer-review process</strong> to ensure academic integrity, originality, and technical quality. Manuscripts are reviewed by qualified experts in the relevant field and evaluated based on:</p>\n<ul>\n<li>\n<p>Originality and significance</p>\n</li>\n<li>\n<p>Technical soundness</p>\n</li>\n<li>\n<p>Methodological rigor</p>\n</li>\n<li>\n<p>Clarity of presentation</p>\n</li>\n</ul>\n\n\n<h2><strong>Open Access Policy</strong></h2>\n<p>IJERT is an <strong>open-access journal</strong>, ensuring that all published articles are freely available to readers without subscription barriers. This policy supports the global exchange of knowledge and increases the visibility and impact of published research.</p>\n\n\n<h2><strong>Publication Ethics</strong></h2>\n<p>IJERT is committed to maintaining the highest standards of publication ethics. The journal follows established ethical guidelines to prevent:</p>\n<ul>\n<li>\n<p>Plagiarism</p>\n</li>\n<li>\n<p>Data fabrication or falsification</p>\n</li>\n<li>\n<p>Duplicate or redundant publication</p>\n</li>\n<li>\n<p>Conflicts of interest</p>\n</li>\n</ul>\n<p>Any misconduct is handled with strict corrective measures in accordance with academic best practices.</p>\n\n\n<h2><strong>Indexing &amp; Digital Archiving</strong></h2>\n<p>IJERT emphasizes long-term accessibility and preservation of scholarly work. Published articles are digitally archived and assigned persistent identifiers (DOIs) to ensure permanent discoverability and citation.</p>\n\n\n<h2><strong>Audience</strong></h2>\n<p>IJERT serves:</p>\n<ul>\n<li>\n<p>Researchers and academicians</p>\n</li>\n<li>\n<p>Industry professionals</p>\n</li>\n<li>\n<p>Graduate and postgraduate students</p>\n</li>\n<li>\n<p>Research institutions and universities</p>\n</li>\n</ul>\n\n\n<h2><strong>Why Publish with IJERT</strong></h2>\n<ul>\n<li>\n<p>International visibility</p>\n</li>\n<li>\n<p>Open-access publication</p>\n</li>\n<li>\n<p>Transparent peer-review process</p>\n</li>\n<li>\n<p>Rapid dissemination of research</p>\n</li>\n<li>\n<p>Ethical and professional editorial standards</p>\n</li>\n</ul>\n\n\n<h2><strong>Contact Information</strong></h2>\n<p><strong>International Journal of Engineering Research &amp; Technology (IJERT)</strong><br>Website: <a href=\"https://www.ijert.org\" target=\"_new\" rel=\"noopener\">https://www.ijert.org</a><br>Email: <a rel=\"noopener\">info@ijert.org</a></p>\n<p>For Submission : https://ems.ijert.org/submit-manuscript</p>",
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