مشروع البحث:
On the Efficient Design of Scalable Indoor Positioning Systems Based on Wi-Fi Fingerprinting

dc.contributor.advisorProf.D. Keivan Navaie
dc.date.accessioned2026-06-01T07:02:00Z
dc.date.available2026-06-01T07:02:00Z
dc.descriptionPositioning and navigation services have become increasingly important in our daily lives. Currently, the accessibility and affordability of Global Navigation Satellite System (GNSS) technology for outdoor positioning and navigation are at their peak. The GNSS services, such as Global Positioning System (GPS) technology, used in smartphones, provide an accurate position within approximately 4.9 metres with 95% probability in outdoor environments [3]. However, in indoor environments, GPS cannot function properly due to obstacles that block GPS Radio Frequency (RF) signals from penetrating walls and objects inside buildings.
dc.description.abstractThis thesis investigates the design and implementation of Wi-Fi fingerprintingbased Indoor Positioning Systems (IPS), with a focus on enhancing their efficiency, scalability, and accuracy. Wi-Fi fingerprinting, particularly utilising Received Signal Strength Indicator (RSSI) data, offers a cost-effective and non-intrusive method for indoor positioning. Despite its advantages, existing systems encounter challenges such as high computational complexity, the need for frequent manual updates, and difficulties in managing large datasets.
dc.identifier1186
dc.identifier.urihttps://dspace.academy.edu.ly/handle/123456789/2116
dc.subjectOn the Efficient Design of Scalable
dc.titleOn the Efficient Design of Scalable Indoor Positioning Systems Based on Wi-Fi Fingerprinting
dspace.entity.typeProject
project.endDate2024
project.funder.nameهندسة الموجات الدقيقة واﻹتصالات
project.investigatorعماد علي عبد الله اعبيد
project.startDate2023
relation.isOrgUnitOfProject6fff9416-a2ea-4ad4-89af-f1c435c6cc6d
relation.isOrgUnitOfProject.latestForDiscovery6fff9416-a2ea-4ad4-89af-f1c435c6cc6d
الملفات
الحزمة الأصلية
يظهر اﻵن 1 - 1 من 1
لا توجد صورة مصغرة متاحة
اﻻسم:
Emad_Ebaid_PhD_Thesis_2024.pdf
الحجم:
6.57 MB
التنسيق:
Adobe Portable Document Format
حزمة الترخيص
يظهر اﻵن 1 - 1 من 1
لا توجد صورة مصغرة متاحة
اﻻسم:
license.txt
الحجم:
1.71 KB
التنسيق:
Item-specific license agreed to upon submission
الوصف: